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Install python packages on OpenShift
[ "importing python modules in openshift", "create database with sqlalchemy on openshift", "Install Node packages over Python gear in Openshift", "Using Tkinter with Openshift", "Deployment of a Pyramid App to Openshift with openshift-quickstarter", "OpenShift - Update Python and Install PIP in a Rails app", "Static files on OpenShift Django", "Django, python non-ascii character on openshift", "OpenShift, Python Application run script every 10 min", "What gets executed when running a python app on OpenShift?", "Template error in django for openshift", "Flask Project root directory on openshift", "How to configure Django on OpenShift?", "Openshift Django Scaling", "Pandas on OpenShift v3", "Cannot open a file with json in OpenShift with python", "How to use webapp2 on openshift?", "Static files on Openshift with Django", "Python Rest Http Error (Flask) with Openshift", "App installed on OpenShift won't run after adding form", "Openshift Write and Share via URL", "Python cgi on OpenShift", "OpenShift V3 set variable for project", "PassEnv variable OPENSHIFT_POSTGRESQL_DB_HOST was undefined at Openshift", "Does Openshift support selenium?", "IP binding in Openshift 3 Python", "How to debug openshift v2", "Starting Celery on openshift", "OpenShift Django project deployment fails: \"error: can't create or remove files in install directory\"", "Dependencies not being installed in Openshift [Flask]" ]
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[ 0.9361720681190491, 0.8925681710243225, 0.9495421648025513, 0.8964081406593323, 0.8873304128646851, 0.9186769723892212, 0.9088695049285889, 0.8730911016464233, 0.9110560417175293, 0.8933665752410889, 0.8885989189147949, 0.898684561252594, 0.9061131477355957, 0.8568681478500366, 0.8981717228889465, 0.8956127762794495, 0.8753228783607483, 0.9110575914382935, 0.8806318044662476, 0.8862571120262146, 0.8753253221511841, 0.9109358787536621, 0.8850953578948975, 0.8713186383247375, 0.8621833324432373, 0.8907747864723206, 0.8884172439575195, 0.859325110912323, 0.8777012825012207, 0.891971230506897 ]
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[ 0.8945326805114746, 0.7373244762420654, 0.8619413375854492, 0.7542215585708618, 0.6952794790267944, 0.823195219039917, 0.7340103983879089, 0.6773728132247925, 0.6963256597518921, 0.8328061103820801, 0.6854269504547119, 0.7500642538070679, 0.8013396859169006, 0.6972112655639648, 0.763127326965332, 0.720206618309021, 0.7231923341751099, 0.7476905584335327, 0.7194020748138428, 0.6757897138595581, 0.6786346435546875, 0.7828419208526611, 0.6521209478378296, 0.6995108127593994, 0.6985318064689636, 0.6685466170310974, 0.6946552991867065, 0.7408612966537476, 0.7310211062431335, 0.8056848049163818 ]
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How to correctly use Flask's jsonify() to return json?
[ "json.dumps vs flask.jsonify", "Flask - Using jsonify properly", "Jsonify a list of custom objects", "Flask Jsonify mongoengine query", "Flask jsonify - how to send string back?", "How to have a single backslash in JSON response using jsonify and flask?", "Flask jsonify returns weird array?", "Jsonify flask-sqlalchemy many-to-one relationship in flask", "Creating a json array with jsonify", "jsonify is not defined - Internal Server Error", "Django jsonify a single model object inside of a template", "Can't use Jsonify in Flask websocket", "Flask jsonify: how to escape characters", "Prevent Flask jsonify from sorting the data", "Can a cookie be set when using jsonify?", "Issue with jsonify while converting from Python 2.7 to 3.4", "Minified JSON in flask's jsonify()", "How to return two arrays with jsonify in Flask?", "How to compress/minimize size of JSON/Jsonify with Flask in Python?", "jsonify/pretty-print JSON for Bottle", "jsonify a SQLAlchemy result set in Flask", "What is the difference between jsonify and tojson in Flask?", "Flask, how to jsonify ONLY when return to browser", "Pass user built json encoder into Flask's jsonify", "How to use flask.jsonify and render a template in a flask route", "Using Flask's jsonify displays é as é", "Flask jsonify a list of objects", "python jsonify dictionary in utf-8", "TypeError: jsonify() argument after ** must be a mapping, not list returning JSON using Flask", "Flask jsonify: key starting with digit" ]
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[ 0.8372815847396851, 0.9302003979682922, 0.677812933921814, 0.7586554288864136, 0.8742152452468872, 0.7326160073280334, 0.8495647311210632, 0.756506085395813, 0.7240637540817261, 0.7014986276626587, 0.694474995136261, 0.8108839988708496, 0.7835667133331299, 0.7504572868347168, 0.6342195868492126, 0.7344165444374084, 0.8267751932144165, 0.8577611446380615, 0.7561619281768799, 0.6930043697357178, 0.8054696917533875, 0.8631540536880493, 0.8368992805480957, 0.79707932472229, 0.8283606767654419, 0.82069331407547, 0.8268060088157654, 0.7225497364997864, 0.8705360889434814, 0.731072723865509 ]
[ 0.8500468730926514, 0.9281027913093567, 0.756078839302063, 0.7787240147590637, 0.8921031951904297, 0.7517589926719666, 0.8591995239257812, 0.7962398529052734, 0.7737433910369873, 0.7654475569725037, 0.7468129396438599, 0.8337783813476562, 0.8056521415710449, 0.7640206813812256, 0.7224746942520142, 0.7745060920715332, 0.831730842590332, 0.8730133771896362, 0.7767884135246277, 0.7654821276664734, 0.833441436290741, 0.8668609261512756, 0.8413963317871094, 0.8077925443649292, 0.8462986350059509, 0.8255435228347778, 0.8359851837158203, 0.751727283000946, 0.880282998085022, 0.7485606670379639 ]
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How do you remove a column from a structured numpy array?
[ "How to remove a column from a structured numpy array *without copying it*?", "How can I fill a numpy structured array from a function?", "Numpy Structured Arrays by Name AND Index", "Access line by line to a numpy structured array", "Remove duplicate values from numpy structured array", "Get all columns in a numpy structured array.", "Reading structured column data with numpy", "Reading a binary file with numpy structured array", "pandas DF from numpy structured array: can't get unicode or string type for column (only object)", "Adding a field to a structured numpy array", "NumPy - Set values in structured array based on other values in structured array", "Convert structured array to regular NumPy array", "Numpy structured array with datetime", "python numpy structured array issue", "Working with NumPy structured arrays", "Adding a field to a structured numpy array (2)", "Adding columns to a structured Numpy array", "Converting a Python List into a Numpy Structured array?", "Accessing a column of a NumPy array of structured arrays", "Python numpy.where and structured (record) array", "How to initialize NumPy structured array with different default value for each column?", "How to change a structured array item size in Numpy?", "Numpy Mean Structured Array", "Apply function to single column of structured numpy array in Python", "create a numpy structured array from a list of strings", "Working with structured object arrays in NumPy", "python dict to numpy structured array", "Numpy, Add Column to existing structured array", "Shape of a structured array in numpy", "Creating a structured array from a list" ]
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How to get hard disk serial number using Python
[ "Get hard disk temperature using Python", "how to get hard disk driver's serial number in python", "Serial Port data", "Processing raw data read from serial port with Python serial library?", "Python Serial Read Not Working", "Python read from serial", "Not getting output from serial", "How to print serial data into label in python?", "Serial import python", "save serial input 1:1 in python", "When does Python write a file to disk?", "Python serial, can write but can't read", "Python does not write data to disk", "Error on Python serial import", "'Serial' object has no attribute 'is_open'", "Reading data from serial in python", "Python reading from serial", "How do I specify a serial port in the following python script using sys.argv and serial?", "Performance at serial read python", "Python Serial write function not working", "AttributeError: module 'serial' has no attribute 'Serial'", "Find the superblock on disk", "Find System Hard Disk Drive from Python?", "Python misreads serial data", "Python attributeError: module 'serial' has no attribute 'Serial'", "write on file from serial in python in windows", "'module' object has no attribute 'Serial'", "How to Target Python Server File Using Serial", "Python serial write doesn't work FIRST run", "Read Serial Python" ]
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How to see function signature in Python?
[ "How can I read a function's signature including default argument values?", "How to mock method call without signature check?", "Django - Signature of method does not match signature of base method in class", "Is there a way to check a function's signature in Python?", "PHP to Python3 HMAC signature not resulting in the same signature", "Regex question about parsing method signature", "Catch bad signature error for an specific function call", "Python argument types did not match C++ signature", "django view method signature is it possible to match GET parameters?", "Check python function signature without a call", "How do you create python methods(signature and content) in code?", "M2crypto Signature vs OpenSSL Signature", "Set function signature in Python", "What do * and ** before a variable name mean in a function signature?", "How do I dynamically create a function with the same signature as another function?", "Copy call signature to decorator", "Any way to add **kwargs to __str__()'s signature of an object?", "ImportError: cannot import name signature", "Method signature for variable length of arguments", "Get built in method signature - Python", "python 3: log function signature problem", "Removing Signature from xml", "Generic class for functions with any signature c#", "What are __signature__ and __text_signature__ used for in Python 3.4", "Python argument types C++ signature", "Signature for C-CEX API not accepted", "Request signature does not match signature provided for Amazon AWS using Python", "Wrong signature error using function types in multiple modules", "How to setup return_value for a function call with specific signature?", "How to extract signature from function reference in Python?" ]
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Replace column values based on another dataframe python pandas - better way?
[ "Pandas: replace column values based on match from another column", "pandas dataframe append values to one column based on the values in another dataframe", "Add column to a Python pandas DataFrame based on values in an other column", "How to replace a value in a pandas dataframe with column name based on a condition?", "find value in column and based on it create a new dataframe in pandas", "How to replace all values in a Pandas Dataframe not in a list?", "How to add a column to pandas dataframe based on time from another column", "Pandas - Replace values in a DataFrame Based on a Boollean DataFrame", "Pandas: Create new column in DataFrame based on other column in DataFrame", "Pandas: Replace values within particular column of one dataframe based on a column in other dataframe", "Replace specific values in a dataframe column using Pandas", "Making a pandas dataFrame based on some column values of another dataFrame", "Pandas DataFrame Add a Column Based on a String", "Python pandas: Find a value in another dataframe and replace it", "Pandas: Create dataframe column based on other dataframe", "How to replace column value based on another dataframe?", "pandas.DataFrame.replace, and for the first column", "replace each column of pandas dataframe with each value of array", "Replace value in any column in pandas dataframe", "Replace data from one pandas dataframe to another", "How to create new values in a pandas dataframe column based on values from another column", "Pandas: replace values in dataframe", "Add values to one column of a pandas dataframe based on the values in another", "Pandas DataFrame, replace value of a column by the value of an other column", "Demean column values of a pandas DataFrame", "Pandas DataFrame: replace all values in a column, based on condition", "Replace values in pandas dataframe based on column names", "Replace values in dataframe from another dataframe with Pandas", "how to replace column value with range in pandas dataframe", "Change a pandas DataFrame column value based on another column value" ]
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compiling vim with python support
[ "Getting python support in vim", "How to use a vim list in a python command?", "Python and vim on windows?", "trying to get vim to work with python", "Compiling vim with Python3 (installed via Homebrew) support?", "Running Python code in Vim", "How can you use Python in Vim?", "python omnicompletion in vim not working", "Python, VIM: How do i count the lines in a VIM register?", "How to set the correct path for a file in VIM?", "Compile vim with python 2.0 support", "How can I call Vim from Python?", "Cannot make vim support python", "Vim python support with non system python", "How do I get python.vim to work with vim?", "compiling vim with python support on Ubuntu", "Compiling vim 7.3 with python and perl support on ubuntu 11.04", "Compiling vim with statically linked python support in a non-standard path configuration", "Problem with Vim omnicomplete and system Python", "VIM: Save and Run at the same time?", "python script to edit a file in vim", "VIM: Use python 2.5 with vim 7.2", "python code in vim script", "vim : Gundo error", "How to get a Python help in vim ? just like vim to use :h", "Using both Python 2 and 3 in Vim (on Windows)", "Compile Vim with Python support on OS X", "Compiling vim with specific version of Python", "VIM/Python cannot return value to VIM", "python 2 support in vim" ]
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[ 0.9150077104568481, 0.7491325736045837, 0.8699005246162415, 0.8699222207069397, 0.9067879915237427, 0.8293412923812866, 0.8571235537528992, 0.7026656866073608, 0.6693100929260254, 0.653660774230957, 0.9362546801567078, 0.8471158742904663, 0.9049329161643982, 0.8761990070343018, 0.8739774227142334, 0.972334623336792, 0.8726243376731873, 0.8670412302017212, 0.7390302419662476, 0.6717673540115356, 0.7204821705818176, 0.8315484523773193, 0.802333414554596, 0.6724433898925781, 0.7996690273284912, 0.8130261898040771, 0.9238521456718445, 0.9073107242584229, 0.7329490780830383, 0.868360161781311 ]
[ 0.9099645614624023, 0.7066143751144409, 0.8630138635635376, 0.8633938431739807, 0.8852601647377014, 0.8218557834625244, 0.850217342376709, 0.6308854222297668, 0.6346453428268433, 0.5895018577575684, 0.9247614145278931, 0.828778862953186, 0.8918468952178955, 0.8640371561050415, 0.8624128699302673, 0.9653698801994324, 0.8476774096488953, 0.8542497158050537, 0.6849085092544556, 0.6068964004516602, 0.6922396421432495, 0.801995038986206, 0.7850822806358337, 0.6075682640075684, 0.7740480899810791, 0.7919886112213135, 0.9209898710250854, 0.9029436111450195, 0.7044079303741455, 0.8561307787895203 ]
[ 0.9134125709533691, 0.7428082823753357, 0.8650296330451965, 0.8599145412445068, 0.9010084867477417, 0.8079686164855957, 0.853341281414032, 0.6805576086044312, 0.6557807326316833, 0.6467400789260864, 0.929734468460083, 0.8360691070556641, 0.9025973081588745, 0.866910457611084, 0.8678596615791321, 0.9720829725265503, 0.8586981296539307, 0.8485825061798096, 0.7160214185714722, 0.6494381427764893, 0.7024575471878052, 0.821868360042572, 0.7803856134414673, 0.6584525108337402, 0.7950804233551025, 0.8005954027175903, 0.9267652034759521, 0.8942792415618896, 0.7265446186065674, 0.8637617826461792 ]
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When is semicolon use in Python considered "good" or "acceptable"?
[ "Python syntax trailing semicolon", "Why is semicolon allowed in this python snippet?", "Why is a double semicolon a SyntaxError in Python?", "Is this an acceptable way to use str.format()?", "Pythonic way to combine two lists with a semicolon between them", "Read a text file with tab and semicolon in python", "How to use ';' (semicolon) in urls, using Google Appengine", "How can I remove the portion of a string that comes before ; if there is more than one semicolon in the string?", "Semicolon alternative in python", "Parse non-standard semicolon separated \"JSON\"", "Why is semicolon working in python?", "Python: how to find values in a column of a pandas dataframe separated by semicolon?", "replace semicolon by newline in python code", "Why does a semicolon return an empty string in IPython?", "How to generate a dict from string separated by semicolon?", "Subtitue named variables with semicolon in Python 2.7", "What pattern i need for url with semicolon in url in django", "Match all characters except the last if it's a semicolon", "Is this an acceptable algorithm?", "Splitting semicolon separated string in Python", "I'm very new to programming. Is this acceptable?", "Python command line argument semicolon-loop error", "Read CSV file with semicolon as delimiter", "How do I put a semicolon in a value in python configparser?", "Pandas separate column containing string with a semicolon to multiple columns", "Plot a CSV file where the delimiter is '; ' (semicolon + space)", "separate list elements based on semicolon", "python + Semicolon written to file is written on the next line", "appending a semicolon to end of a line" ]
[ 0.883662223815918, 0.913345456123352, 0.8920845985412598, 0.8800311088562012, 0.8703826665878296, 0.8578757643699646, 0.8466719388961792, 0.8381729125976562, 0.891923189163208, 0.8426134586334229, 0.9134472608566284, 0.8696651458740234, 0.8717586994171143, 0.8821954131126404, 0.8658725023269653, 0.8620696067810059, 0.8666802048683167, 0.8618314266204834, 0.860335648059845, 0.8786655068397522, 0.8799959421157837, 0.8664913773536682, 0.8521710634231567, 0.8822097182273865, 0.8625220060348511, 0.8409123420715332, 0.8482155203819275, 0.8703704476356506, 0.8660033941268921 ]
[ 0.872540295124054, 0.9093272686004639, 0.8993682861328125, 0.8695895671844482, 0.8604596257209778, 0.8531345129013062, 0.8475145101547241, 0.8469000458717346, 0.8841574192047119, 0.8478841781616211, 0.9030855298042297, 0.8574005961418152, 0.8670603036880493, 0.8798033595085144, 0.8638345003128052, 0.8444190621376038, 0.8577591180801392, 0.8437856435775757, 0.8564034104347229, 0.8767163157463074, 0.8620283603668213, 0.8711801171302795, 0.8289209008216858, 0.8790348768234253, 0.8499964475631714, 0.8278976678848267, 0.8226672410964966, 0.8639564514160156, 0.850854218006134 ]
[ 0.8792734146118164, 0.9167311787605286, 0.9131892919540405, 0.8901183605194092, 0.863126814365387, 0.8673625588417053, 0.8463629484176636, 0.8564388751983643, 0.8903992772102356, 0.838162899017334, 0.913563072681427, 0.8742114305496216, 0.8605105876922607, 0.9039283990859985, 0.8642127513885498, 0.8711355924606323, 0.8626853227615356, 0.8470739126205444, 0.8513320684432983, 0.8762009143829346, 0.8773297071456909, 0.8808709383010864, 0.8292503356933594, 0.8791466951370239, 0.8450322151184082, 0.8254812359809875, 0.8407120108604431, 0.8600001931190491, 0.8568830490112305 ]
[ 0.7855503559112549, 0.8489687442779541, 0.802183985710144, 0.7023496031761169, 0.6655203700065613, 0.6506222486495972, 0.6442970037460327, 0.711553692817688, 0.8376387357711792, 0.6406125426292419, 0.8519058227539062, 0.6284066438674927, 0.7604888677597046, 0.7191604971885681, 0.6328979134559631, 0.7230626344680786, 0.6815646886825562, 0.6713696718215942, 0.5657118558883667, 0.6844513416290283, 0.5771653652191162, 0.6777932643890381, 0.6374469995498657, 0.7310962080955505, 0.6371369361877441, 0.5839858651161194, 0.6651352643966675, 0.7536478042602539, 0.7275940775871277 ]
[ 0.7629982233047485, 0.8333280086517334, 0.7851744890213013, 0.6291752457618713, 0.6259207725524902, 0.6443856954574585, 0.5563085079193115, 0.6455283761024475, 0.8361013531684875, 0.5858482718467712, 0.8503339290618896, 0.5602468252182007, 0.7352235913276672, 0.6782351136207581, 0.5790895223617554, 0.6750638484954834, 0.6048717498779297, 0.6356886625289917, 0.47932109236717224, 0.6571870446205139, 0.5031963586807251, 0.6490190029144287, 0.6035326719284058, 0.683378279209137, 0.5887399911880493, 0.5444282293319702, 0.6221228837966919, 0.7405591011047363, 0.6879560947418213 ]
[ 0.7754631042480469, 0.8460855484008789, 0.8175432682037354, 0.7142248153686523, 0.6924523711204529, 0.6762608289718628, 0.6780664920806885, 0.7293688058853149, 0.8404563665390015, 0.6810333728790283, 0.857424259185791, 0.6615411639213562, 0.7642587423324585, 0.7413477897644043, 0.6535342931747437, 0.7378299832344055, 0.7095855474472046, 0.6895960569381714, 0.6025142669677734, 0.6991779804229736, 0.5868120193481445, 0.6962879300117493, 0.6683483123779297, 0.746917188167572, 0.6659432649612427, 0.6159679889678955, 0.6830242872238159, 0.7598323822021484, 0.730840802192688 ]
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Python super() raises TypeError
[ "super() raises \"TypeError: must be type, not classobj\" for new-style class", "Optional[Type[Foo]] raises TypeError in Python 3.5.2", "import decimal raises errors", "Pandas join raises KeyError / merge raises ValueError", "is_authenticated() raises TypeError TypeError: 'bool' object is not callable", "Unit test comparing response data raises TypeError", "Object that raises exception when used in any way", "Python 3: super() raises TypeError unexpectedly", "elif raises a syntax error, but if does not", "Running \"print\" raises \"TypeError\" in Python", "Python how to use \"try:\" not stop when it raises except", "Flask-Login raises TypeError: 'int' object is not callable", "`__init__()` always raises error", "Python 3 list(dictionary.keys()) raises error. What am I doing wrong?", "SQLAlchemy raises None, causes TypeError", "POST method form in lxml raises TypeError with submit_form", "Flask view raises TypeError: 'bool' object is not callable", "sum of list of strings raises TypeError", "Flask's url_for raises TypeError: 'function' object has no attribute '__getitem__'", "Assignment raises exception for list.index", "index out of range raises in random function", "Creating SQLAlchemy model instance raises \"TypeError: __init__() takes exactly 1 argument\"", "copy.deepcopy raises TypeError on objects with self-defined __new__() method", "Detect what raises an exception", "Why no __getitem__ raises TypeError", "Multithreading in python pool.map raises TypeError: object of type 'float' has no len()", "Flask view raises TypeError got unexpected keyword argument", "Passing params into requests.Session.get raises TypeError", "SQLAlchemy raises TypeError when an INSERT returns no rows?", "Pandas Dataframe.apply() raises typeerror for providing too many arguments" ]
[ 0.9426246285438538, 0.886726975440979, 0.9001468420028687, 0.89043790102005, 0.8840440511703491, 0.8932369947433472, 0.8678697943687439, 0.9695042967796326, 0.8750708699226379, 0.9145690202713013, 0.8605175018310547, 0.8765416145324707, 0.9077632427215576, 0.8840352296829224, 0.8990585803985596, 0.87841796875, 0.8789872527122498, 0.9163424372673035, 0.8882311582565308, 0.8647944927215576, 0.8594282865524292, 0.8753970861434937, 0.9059654474258423, 0.8744618892669678, 0.9120302200317383, 0.8794221878051758, 0.8972381949424744, 0.8829332590103149, 0.8709547519683838, 0.8963382244110107 ]
[ 0.9203214645385742, 0.8859879970550537, 0.8673729300498962, 0.856117844581604, 0.8290392756462097, 0.8740068674087524, 0.8393183350563049, 0.9601068496704102, 0.8363652229309082, 0.9188162088394165, 0.8521763682365417, 0.8533430695533752, 0.8643212914466858, 0.8627490997314453, 0.8716872334480286, 0.8620115518569946, 0.8522236347198486, 0.8760374188423157, 0.8411663770675659, 0.8500959277153015, 0.8277666568756104, 0.8626770973205566, 0.876261293888092, 0.851944088935852, 0.8698081374168396, 0.8523627519607544, 0.8835459351539612, 0.8689881563186646, 0.8452032208442688, 0.8835289478302002 ]
[ 0.92118239402771, 0.8961132168769836, 0.8884952068328857, 0.8829324245452881, 0.8653308749198914, 0.8912584781646729, 0.8480045795440674, 0.9695347547531128, 0.8633056879043579, 0.9262720346450806, 0.8659727573394775, 0.8695918321609497, 0.8801155090332031, 0.8652521967887878, 0.899063766002655, 0.8762208223342896, 0.8741788864135742, 0.8949817419052124, 0.868424117565155, 0.8620112538337708, 0.8417308330535889, 0.8567116260528564, 0.9034909009933472, 0.8535435795783997, 0.8864160776138306, 0.8669908046722412, 0.8879729509353638, 0.8944157361984253, 0.872812807559967, 0.8930486440658569 ]
[ 0.8570497632026672, 0.722681999206543, 0.5911722183227539, 0.5565685629844666, 0.6016625761985779, 0.6190838813781738, 0.6420861482620239, 0.9656578302383423, 0.6324567794799805, 0.757012128829956, 0.6039427518844604, 0.6295068860054016, 0.7248846888542175, 0.6425226926803589, 0.6908608675003052, 0.639499843120575, 0.5952342748641968, 0.7087154388427734, 0.5780816674232483, 0.6297084093093872, 0.5909816026687622, 0.6267375946044922, 0.7275405526161194, 0.5371614098548889, 0.7021015882492065, 0.6352739334106445, 0.6257763504981995, 0.6745201945304871, 0.6541520357131958, 0.6675071716308594 ]
[ 0.8143152594566345, 0.6235576868057251, 0.45937058329582214, 0.4304587244987488, 0.4776626229286194, 0.4966363310813904, 0.5147178173065186, 0.9594111442565918, 0.517859935760498, 0.6874722242355347, 0.5000283122062683, 0.5109620690345764, 0.6222883462905884, 0.5275496244430542, 0.5879977941513062, 0.5167298316955566, 0.47605016827583313, 0.6030579209327698, 0.45577695965766907, 0.4980183243751526, 0.46663010120391846, 0.5022649765014648, 0.6366356611251831, 0.3788892328739166, 0.5993318557739258, 0.5104817152023315, 0.5253492593765259, 0.5563207268714905, 0.5555635690689087, 0.5626752376556396 ]
[ 0.8452582359313965, 0.7235934734344482, 0.6067123413085938, 0.5915356874465942, 0.6102498769760132, 0.637312650680542, 0.6485260128974915, 0.9578314423561096, 0.6468758583068848, 0.7783186435699463, 0.6208999156951904, 0.6320282220840454, 0.7378227114677429, 0.6544750928878784, 0.7140946388244629, 0.6553430557250977, 0.6164587140083313, 0.713788628578186, 0.5965346693992615, 0.6342722177505493, 0.6121315360069275, 0.6280949711799622, 0.7282880544662476, 0.5710214376449585, 0.7154653072357178, 0.6396306753158569, 0.6463268399238586, 0.698141872882843, 0.679817795753479, 0.6758033037185669 ]
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How to properly create and run concurrent tasks using python's asyncio module?
[ "use asyncio for parallel tasks", "Run tasks asynchrounous with Python 3.6 asyncio", "How do I list files in Asyncio?", "How to execute a function call in asyncio python", "Getting values from functions that run as asyncio tasks", "Send asyncio tasks to loop running in other thread", "python asyncio, how to create and cancel tasks from another thread", "asyncio python 3.6 code to asyncio python 3.4 code", "How does asyncio (python) work?", "Python Asyncio in Django View", "asyncio tasks getting unexpectedly defered", "How to limit the number of concurrent processes using subprocess module in asyncio python", "Python asyncio - consumer blocking with asyncio.Event()", "Python 3 asyncio how to properly close client connection", "python asyncio run event loop once?", "Read file line by line with asyncio", "How could I use requests in asyncio?", "Program structure using asyncio", "From concurrent.futures to asyncio", "Asyncio doesn't execute the tasks asynchronously", "Python3 Asyncio shared resources between concurrent tasks", "Performance of asyncio", "Proper way to shutdown asyncio tasks", "How to schedule and cancel tasks with asyncio", "While loop blocks asyncio tasks", "Python asyncio context", "Python asyncio simple example", "Passing asyncio loop by argument or using default asyncio loop", "Trying to implement 2 \"threads\" using `asyncio` module", "Make my own function as asyncio function in python" ]
[ 0.912860631942749, 0.9252973794937134, 0.8845975399017334, 0.9168176054954529, 0.9094516634941101, 0.9088729619979858, 0.93455570936203, 0.888238787651062, 0.9273827075958252, 0.8917564749717712, 0.8848683834075928, 0.9236927628517151, 0.8820438385009766, 0.8778873682022095, 0.8934218287467957, 0.8760198354721069, 0.9117286205291748, 0.8854323029518127, 0.8928396105766296, 0.8894221186637878, 0.8999245762825012, 0.8600624799728394, 0.9017269015312195, 0.917599081993103, 0.8761904239654541, 0.869745135307312, 0.8886243104934692, 0.8950968980789185, 0.91469407081604, 0.9116958379745483 ]
[ 0.9076499938964844, 0.9052189588546753, 0.8847641348838806, 0.9146150350570679, 0.8875036239624023, 0.8936338424682617, 0.9224639534950256, 0.8701257705688477, 0.9189214110374451, 0.8829365968704224, 0.8784604668617249, 0.9137040376663208, 0.8746183514595032, 0.891420841217041, 0.896195113658905, 0.8551563620567322, 0.891852617263794, 0.8916420936584473, 0.8884927034378052, 0.8817533254623413, 0.9018052220344543, 0.8535687923431396, 0.8980541229248047, 0.9089252352714539, 0.8884526491165161, 0.8743395805358887, 0.8843414783477783, 0.8698372840881348, 0.9166221022605896, 0.9021314382553101 ]
[ 0.8940618634223938, 0.8963679671287537, 0.8857372999191284, 0.9110977053642273, 0.8697521686553955, 0.8767558336257935, 0.9121121168136597, 0.8601906299591064, 0.9150691032409668, 0.8633880615234375, 0.8607878684997559, 0.9099477529525757, 0.8633537292480469, 0.8807228207588196, 0.8783104419708252, 0.8615925312042236, 0.899247407913208, 0.8668758869171143, 0.8850479125976562, 0.8764629364013672, 0.881412148475647, 0.852882981300354, 0.8850880265235901, 0.9065600633621216, 0.8718485832214355, 0.8535351157188416, 0.8641523122787476, 0.8773212432861328, 0.8941988348960876, 0.8976086378097534 ]
[ 0.8995039463043213, 0.8709675073623657, 0.7463109493255615, 0.7890541553497314, 0.7924559116363525, 0.842308759689331, 0.8476383686065674, 0.6796634197235107, 0.8340869545936584, 0.7522242069244385, 0.8092761039733887, 0.8068453073501587, 0.7662346363067627, 0.7222314476966858, 0.7796840667724609, 0.7308868169784546, 0.7964702248573303, 0.8219046592712402, 0.8413265943527222, 0.8642269372940063, 0.8559967279434204, 0.770093560218811, 0.7897946238517761, 0.8280901312828064, 0.8261089324951172, 0.7969719171524048, 0.8148048520088196, 0.7952440977096558, 0.867463231086731, 0.7653766870498657 ]
[ 0.8790377378463745, 0.8484355211257935, 0.6709104776382446, 0.7410730123519897, 0.7441062927246094, 0.8036909103393555, 0.8066072463989258, 0.6484560966491699, 0.794075608253479, 0.7078083157539368, 0.7772455215454102, 0.7629221677780151, 0.7062591314315796, 0.638167142868042, 0.7138118743896484, 0.6737930178642273, 0.7342146635055542, 0.7727519273757935, 0.8037123084068298, 0.842247724533081, 0.8415080308914185, 0.7516187429428101, 0.7401278614997864, 0.7704892158508301, 0.7851595282554626, 0.7651857137680054, 0.7738312482833862, 0.7433974742889404, 0.8256398439407349, 0.7104463577270508 ]
[ 0.8881418704986572, 0.849432110786438, 0.7358995676040649, 0.7675503492355347, 0.7797273397445679, 0.8177661895751953, 0.8342849016189575, 0.6612615585327148, 0.8270485401153564, 0.7380651831626892, 0.7833945751190186, 0.7897747755050659, 0.7518081068992615, 0.7119318246841431, 0.7588973045349121, 0.7266374826431274, 0.7840375900268555, 0.7863124012947083, 0.8326793909072876, 0.8395923376083374, 0.8423711061477661, 0.7449294924736023, 0.7829515337944031, 0.8094409704208374, 0.8089933395385742, 0.7681643962860107, 0.7896127700805664, 0.7743970155715942, 0.8465569615364075, 0.7393746972084045 ]
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How to determine whether a year is a leap year?
[ "Python, leap year logic error", "Leap year with boolean", "Exclude leap year days from date_range in pandas", "Plot pandas data frame with year over year data", "Does timedelta added to date consider leap year?", "python check if year is in string", "Python Question: Year and Day of Year to date?", "Year Out Of Range In Python?", "Remove leap year day from pandas dataframe", "Year over year matplotlib with legend", "Leap-year program in Python", "Pandas calculate year over year (or any other index) change in rows", "Finding out if its a leap year and setting accordingly", "Pandas groupby year object plotting it year over year", "Leap Year Boolean Logic: Include Parentheses?", "What does python return on the leap second", "python pandas extract year from datetime --- df['year'] = df['date'].year is not working", "Leap year convention in python datetime", "Separate one year from a data value; taking care of leap years", "Date Validity and Leap Year Checker", "Using Python range and calendar to check for leap year", "How to Print next year from current year in Python", "Calculate year-on-year change in Pandas", "Int object not iterable for a leap year program", "Leap Year Calculator not printing any outputs", "Get a list of days in a year (any year) as d-m", "leap year, and the boolean logic behind it", "timestamp from year and day of year?", "Pandas: get a value from previous year for the same day of the year", "Was the year 1000 (and others) a leap year?" ]
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Problems obtaining most informative features with scikit learn?
[ "How to get most informative features for scikit-learn classifier for different class?", "How to get most informative features for scikit-learn classifiers?", "scikit-learn multi dimensional features", "ValueError while using Scikit learn. Number of features of model don't match that of input", "Obtaining value from an array", "Runtime error in Scikit-learn during import", "Web application that uses scikit-learn", "How many features can scikit-learn handle?", "Can I input strings into \"features\" for DecisionTreeClassifiers for scikit-learn?", "Object has no attribute in scikit-learn, how can I access it?", "Python scikit-learn - TypeError", "Python scikit-learn Predictionfail", "How to import csv data file into scikit-learn?", "Calling Numpy and scikit-learn from C#", "obtaining error number of an error", "Cannot import Scikit-Learn", "Startified GroupShuffleSplit in Scikit-learn", "Scikit learn (Python 3.5): Do I need to import a library to make this work?", "Error with matplotlib when running examples of scikit learn", "Python scikit learn import error", "How much text can handle scikit-learn?", "Attribute error while using scikit-learn", "Problems of installing scikit-learn in Python", "combine independent features in scikit-learn", "How do I build scikit learn on windows?", "Scikit-learn only working in python 2, not python 3", "What does \"fit\" method in scikit-learn do?", "difference between DictionaryLearning and MiniBatchDictionaryLearning in scikit-learn", "How to save the results from nltk function \"most_informative_features\" to a txt file in Python", "SciKit-Learn Python Package has Error" ]
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Using Python's Format Specification Mini-Language to align floats
[ "Using Python's Format Specification Mini-Language to specify or automatically determine column widths", "Number of floats between two floats", "I have to write mini project and don't know how to start", "How to get value after e for python floats", "Python and Floats", "Access the cpython string format specification mini language parser", "using python function any() on a list of floats", "Round, align and print list of floats with format()", "Mini-languages in Python", "Django No Mini matches the given query", "Mini-game with Python 3.2 does not work", "Aligning Floats to decimal points in Python 2.7 using the format() mini-language", "How to right align and pad number with max width using format specification mini language", "python list of floats from text file", "Python 3: How can I align the the format of this data when it prints", "Python: Parsing through XML with mini dom", "Is there a Python language specification?", "Write windows mini dumps with Python", "truncate and pad using format specification mini language", "Is there a mini python interpreter", "How can I get my program to print floats?", "Align output in python to the right using %", "Format align using a variable?", "Why Is There a ':' In All Examples of Python's format's mini-language?", "How to format an array of floats into a string", "range() for floats", "Align elements in list in python", "Print a big integer with punctions with Python3 string formatting mini-language", "Why is this mini program saying that the list index is out of range?", "How do I make two LabelFrames align with each other?" ]
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How to avoid race condition with unique checks in Django
[ "Handling race condition in model.save()", "How to prevent race condition in Django on INSERT with limiting SUM?", "Tkinter: a simple way to avoid race conditions between an event and value update?", "Return a list of race positions without the values", "Race condition in Django", "Can you race condition in Python while there is a GIL?", "Is there a race condition here and how to handle it?", "Django 1.6 transactions to avoid race conditions", "Race condition with AWS Lambda", "Avoid race condition when asserting file permissions in Python", "How to prevent race condition when using redis to implement flow control?", "Unique items in a list with condition", "How do you avoid this race condition in Python / Django / MySQL?", "Django related objects are missing from celery task (race condition?)", "How could a race condition cause p[0] to be None here?", "Possible race-condition when creating images in TKinter?", "How to avoid a race condition with makedirs?", "Race-condition creating folder in Python", "How can I avoid this race condition?", "How to prevent a race condition when multiple processes attempt to write to and then read from a file at the same time", "How does using the try statement avoid a race condition?", "Race condition in ZooKeeper and Python based message queue", "Django ArrayField append, avoid race condition", "Race Condition when reading from generator", "python multithreading data race", "Race conditions in django", "Django session race condition?", "select_for_update kind of functionality in django 1.3 to avoid race condition", "Race condition in line of Python", "Possible Race Condition in Serial read/write Code" ]
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Simple tsplot for timeseries
[ "Replacement for deprecated tsplot", "Multi-line chart with seaborn tsplot", "Seaborn tsplot subset of conditions", "pandas, python - how to select specific times in timeseries", "Python Pandas - Creating a timeseries from a csv file", "Converting row in timeseries data to column", "timeseries database to use with python", "How to show SD in seaborn.tsplot() instead of SEM?", "How to flip axes on seaborn tsplot plot?", "Convert List to Pandas Timeseries", "Seaborn tsplot does not show datetimes on x axis well", "Pandas replace values in dataframe timeseries", "Seaborn tsplot shows nothing", "Coding variables with Pandas TimeSeries", "Seaborn tsplot not showing CI bands", "Storage of timeseries data in python", "Seaborn tsplot not showing data", "How can I set multiple markers with tsplot?", "Draw line with matplotlib (timeseries)", "Timeseries average with python", "How to convert TimeSeries object in pandas into integer?", "Why does dataframe object convert to TimeSeries Object", "Color underplot of tsplot", "tsplot out of bounds error in Python seaborn", "datetime from timeseries data in multiple columns", "Can't convert a Python List to timeSeries", "pandas timeseries with relative time", "Seaborn tsplot change labels on x-axis", "Adding hetrogenous TimeSeries to a DataFrame", "How can I convert from Pandas DataFrame to TimeSeries?" ]
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[ 0.8970012664794922, 0.8851314783096313, 0.8759921789169312, 0.8698932528495789, 0.8687731027603149, 0.8806678056716919, 0.8870168924331665, 0.8503463268280029, 0.8571734428405762, 0.8488104343414307, 0.8762050867080688, 0.8657420873641968, 0.857872486114502, 0.8851727247238159, 0.8600587844848633, 0.890596866607666, 0.8709050416946411, 0.8422251343727112, 0.887808084487915, 0.8806139230728149, 0.853866696357727, 0.8516631722450256, 0.893701434135437, 0.853265106678009, 0.8660098314285278, 0.854383111000061, 0.8755457401275635, 0.8802112340927124, 0.8742693066596985, 0.8538246154785156 ]
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How to count specific substrings using slice notation
[ "Understanding slice notation", "How to remove specific substrings from a set of strings in Python?", "Regarding Python's slice notation", "Substrings from string in python", "Find all substrings in list of strings and create a new list of matching substrings. in Python", "Python Slice Notation with Comma/List", "Slice notation in Scala?", "match a substing in a list of substrings", "Implementing python slice notation", "How to split a string and match its substrings to a list of substrings? - Python", "Count number of substrings found in string", "Find substrings in string using python", "Python list of substrings in list of strings", "Why does Python's slice notation go from [m,n-1]?", "Get all substrings inside string python", "find() with multiple substrings - Python", "What does the slice() function do in Python? (compared to slice notation)", "Python slice notation to take only the start and the end part of a list?", "Slice substrings from long string to a list in python", "replace substrings in list", "How does [...,::-1] work in slice notation?", "Creating a \"slice notation\" style list from a set of numbers in Python", "How to see if a string contains all substrings from a list? [Python]", "NumPy slice notation in a dictionary", "Python: How to check a string for substrings from a list?", "Slice notation isn't creating a new copy in memory", "Create a list of substrings from string", "Find string between two substrings", "Reverse last n characters from string using slice notation", "Tinier string between two substrings" ]
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Asking "is hashable" about a Python value
[ "Using non-hashable Python objects as keys in dictionaries", "Making a list subclass hashable", "Python hashable dicts", "Make a hashable id for all subclasses of base class", "Django: Return render hashable error", "Immutable objects are not hashable in python?", "How to make an object properly hashable?", "Are Django Model instances Hashable?", "Why aren't Python sets hashable?", "Comparison of hashable objects", "Why is this python class instance hashable?", "Is there any hashable built-in object is mutable in python?", "What's the point of an immutable-but-non-hashable container class?", "A hashable, flexible identifier in python", "Hashable, immutable", "List unhashable, but tuple hashable?", "Interaction of a hashable class with Enum in Python", "How to make a subclass of tuple hashable in Python?", "Set of non hashable objects in python", "Find common key: value pair in dict for non hashable keys and values", "Why are slice objects not hashable in python", "In Python, why is a tuple hashable but not a list?", "Is there another way to avoid duplication of large hashable objects?", "Type hint for \"hashable\"", "Is there something simple like a set for un-hashable objects?", "Why and how are Python functions hashable?", "Make a list of ints hashable in python", "Pool of hashable objects", "What does \"hashable\" mean in Python?", "Automatically making a class hashable" ]
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[ 0.756011962890625, 0.7584846615791321, 0.797386646270752, 0.6869214773178101, 0.7038974165916443, 0.7758367657661438, 0.8022412061691284, 0.7581790685653687, 0.8189776539802551, 0.7928988933563232, 0.8127582669258118, 0.8041945695877075, 0.6937870979309082, 0.7614015936851501, 0.7813825607299805, 0.7762051820755005, 0.7868733406066895, 0.7719870805740356, 0.7501266598701477, 0.7531373500823975, 0.7830033898353577, 0.7702093124389648, 0.7139753103256226, 0.8155408501625061, 0.791267454624176, 0.8004059791564941, 0.7905949354171753, 0.7137433290481567, 0.8678132891654968, 0.7811881303787231 ]
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[ 0.7551413774490356, 0.7616280317306519, 0.7987427711486816, 0.6987606287002563, 0.7264318466186523, 0.7874820232391357, 0.8054275512695312, 0.776654839515686, 0.8319404125213623, 0.7932713031768799, 0.8154389262199402, 0.8036177158355713, 0.7182410359382629, 0.7611172199249268, 0.7887345552444458, 0.7860528230667114, 0.778831422328949, 0.7758293151855469, 0.7475404739379883, 0.7551575899124146, 0.787104606628418, 0.7855356931686401, 0.7191314697265625, 0.8065517544746399, 0.7967178225517273, 0.8200294971466064, 0.7896236181259155, 0.7156505584716797, 0.8757405281066895, 0.7803553938865662 ]
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How to extract an arbitrary line of values from a numpy array?
[ "Arbitrary image slice with python/numpy", "Using Numpy to replace values in place in arbitrary axis", "Arbitrary command line arguments in python", "How to Extract Columns from Numpy", "arbitrary operation on list", "What is an arbitrary element in Python?", "python: arbitrary order by", "Extract information from Numpy Array", "python create empty object of arbitrary type?", "Extract array from list in python", "Python: Boolean return if arbitrary element is in arbitrary list", "Can't set an arbitrary attribute in an instance of an object", "How to run arbitrary string as command", "Array in python with arbitrary index", "Python and arbitrary command line options", "Numpy array, removing one arbitrary element per row", "How to extract values from list python?", "How to use default values and arbitrary arguments at one function call in Python?", "Arbitrary functions", "arbitrary number of arguments in a python function", "Arbitrary string to valid Python name", "Python: extract list of data in dict in numpy array", "Extract an array from a numpy array", "Sort arbitrary values given from command line", "Extract values from a string with Python", "python sum a array which length is arbitrary", "How to create a numpy array of arbitrary length strings?", "Import arbitrary python source file. (Python 3.3+)", "Is it possible to add arbitrary data to an ObjectifiedElement instance?", "Filling a numpy array using an arbitrary function" ]
[ 0.8910000324249268, 0.9012154340744019, 0.8970736861228943, 0.8992939591407776, 0.8341753482818604, 0.879153847694397, 0.8456250429153442, 0.9211215972900391, 0.8629100322723389, 0.9103385806083679, 0.8787475228309631, 0.8399205207824707, 0.8750424981117249, 0.9054837226867676, 0.8654195070266724, 0.9065742492675781, 0.9166965484619141, 0.8863741755485535, 0.8374956846237183, 0.8884129524230957, 0.8836709260940552, 0.9101501107215881, 0.9351018667221069, 0.8931071162223816, 0.8976287245750427, 0.8918092250823975, 0.9358612298965454, 0.8507159352302551, 0.8437659740447998, 0.9213401675224304 ]
[ 0.8808547258377075, 0.8937501907348633, 0.88514244556427, 0.9035680294036865, 0.8356708288192749, 0.8666483759880066, 0.8487308621406555, 0.9091708064079285, 0.8472186326980591, 0.8889687061309814, 0.8656980991363525, 0.8298498392105103, 0.8673519492149353, 0.9001257419586182, 0.868109941482544, 0.88859623670578, 0.8880478739738464, 0.8858668804168701, 0.8503133654594421, 0.8777884244918823, 0.8588662147521973, 0.8964412808418274, 0.9222100973129272, 0.8940153121948242, 0.8767145872116089, 0.8677012920379639, 0.9269366264343262, 0.8573219180107117, 0.8502159118652344, 0.9154921174049377 ]
[ 0.8737911581993103, 0.8818765878677368, 0.8445714116096497, 0.9154386520385742, 0.8204078674316406, 0.8570641875267029, 0.8366187810897827, 0.9199016690254211, 0.8301870226860046, 0.89757239818573, 0.8450088500976562, 0.8170363903045654, 0.8284587860107422, 0.8731193542480469, 0.8446232676506042, 0.8906846046447754, 0.9134608507156372, 0.8651365041732788, 0.8281534910202026, 0.8431318998336792, 0.8269695043563843, 0.9012020826339722, 0.923629641532898, 0.8504319190979004, 0.8909241557121277, 0.8491744995117188, 0.9148879051208496, 0.836753785610199, 0.8391973972320557, 0.8856999278068542 ]
[ 0.7412881851196289, 0.6684145927429199, 0.6220146417617798, 0.7549986839294434, 0.6613099575042725, 0.6710116863250732, 0.6908676028251648, 0.8297463655471802, 0.59532630443573, 0.7918024659156799, 0.6338024139404297, 0.502496600151062, 0.5564016103744507, 0.759781539440155, 0.5610474348068237, 0.7600860595703125, 0.785620391368866, 0.6253923177719116, 0.6146746873855591, 0.6655852794647217, 0.562586784362793, 0.7674827575683594, 0.8477723598480225, 0.6707488298416138, 0.7462384700775146, 0.7082844972610474, 0.7835114002227783, 0.5568267703056335, 0.4870290458202362, 0.7482084035873413 ]
[ 0.6684038639068604, 0.5901535153388977, 0.5471143126487732, 0.7093143463134766, 0.570121705532074, 0.5944437980651855, 0.6112088561058044, 0.78872150182724, 0.4901725649833679, 0.7573562264442444, 0.5234071016311646, 0.3766557276248932, 0.4484887719154358, 0.7045382261276245, 0.49064934253692627, 0.6960018277168274, 0.7379482984542847, 0.537105917930603, 0.5165280699729919, 0.578717827796936, 0.4630242586135864, 0.7226486802101135, 0.8212590217590332, 0.5721902847290039, 0.6925593614578247, 0.6181455254554749, 0.7096133232116699, 0.4439486563205719, 0.37134110927581787, 0.6781490445137024 ]
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Numpy 8-bits images conversion to 16/32-bits images before cvtColor() in opencv
[ "Numpy 8/16/32 bits image data type after cvtColor() conversion to HSV colorspace", "working on images with openCV and python", "using numpy to convert an int to an array of bits", "How do I convert an integer to a list of bits in Python", "Using Python How can I read the bits in a byte?", "python 2.7 and opencv code gives cvtcolor error", "easy way of getting number of bits from a numpy type?", "How to copy last X bits?", "Bits list to integer in Python", "Why does my Python read more bits than I have set?", "How to read bits from a file?", "Writing bits as bits to a file", "How to print bytes and bits in python", "Get the \"bits\" of a float in Python?", "How to create an array of bits in Python?", "Numpy 8 and 32 bits image data type after cvtColor() conversion to LAB colorspace", "Python : Generate a string of bits.", "Python Bits and bytes", "Load 64-bits Dll on Python2.2(32-bits)", "Adding images in OpenCV", "Concatenate two 32 bit int to get a 64 bit long in Python", "Sequence of 1's and 0's python bits", "from python 32 bits to python 64 bits", "What is the best way to check if all bits are 1?", "Using bits directly in python", "python keep 60 right most bits out of 64 bits - type error", "How to Count Bits from multiple Hexadecimals", "How to change bits in byte with python?", "Parsing of list of bits in python", "bits to string python" ]
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[ 0.9391006827354431, 0.873928427696228, 0.8751447200775146, 0.8479372262954712, 0.843959629535675, 0.8751329183578491, 0.8570512533187866, 0.8247726559638977, 0.857317328453064, 0.8324946165084839, 0.8120099306106567, 0.8535994291305542, 0.8359584808349609, 0.8398151993751526, 0.8319742679595947, 0.9337506890296936, 0.8404204249382019, 0.8456172943115234, 0.8653308153152466, 0.871688961982727, 0.87269127368927, 0.8328097462654114, 0.8909319043159485, 0.8024797439575195, 0.8595556020736694, 0.8662844896316528, 0.8231774568557739, 0.848596453666687, 0.8382747173309326, 0.8546700477600098 ]
[ 0.9298906326293945, 0.862978458404541, 0.870911717414856, 0.8301647901535034, 0.8070778846740723, 0.8717087507247925, 0.835811197757721, 0.8036731481552124, 0.8382519483566284, 0.8124122619628906, 0.7707493305206299, 0.8057174682617188, 0.8222189545631409, 0.8149219155311584, 0.8058629035949707, 0.9345179200172424, 0.8141850829124451, 0.8111189007759094, 0.8476337790489197, 0.8457261323928833, 0.8659087419509888, 0.8144111037254333, 0.8654176592826843, 0.7814580798149109, 0.8388631343841553, 0.8302586674690247, 0.8097108602523804, 0.8252726197242737, 0.8362029790878296, 0.8381861448287964 ]
[ 0.899948239326477, 0.7312281131744385, 0.6637557744979858, 0.5895874500274658, 0.547998309135437, 0.7854079008102417, 0.6754970550537109, 0.6048153638839722, 0.5524665117263794, 0.5991265773773193, 0.569283127784729, 0.5883538126945496, 0.5393199920654297, 0.6066706776618958, 0.6025638580322266, 0.8861438035964966, 0.5636819005012512, 0.549718976020813, 0.564042329788208, 0.6983460187911987, 0.5672502517700195, 0.5729472041130066, 0.6209833025932312, 0.5301104784011841, 0.6030640602111816, 0.6533307433128357, 0.533449649810791, 0.5977518558502197, 0.5688602924346924, 0.5426814556121826 ]
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[ 0.8972107172012329, 0.698636531829834, 0.6723792552947998, 0.6077566742897034, 0.5613172054290771, 0.781285285949707, 0.6870055198669434, 0.6225623488426208, 0.5662106275558472, 0.6125307679176331, 0.5758047103881836, 0.5956716537475586, 0.549030065536499, 0.6201077699661255, 0.6164439916610718, 0.8849851489067078, 0.5709144473075867, 0.5601388216018677, 0.6006353497505188, 0.6605308055877686, 0.5809299945831299, 0.5799733400344849, 0.654222309589386, 0.5631599426269531, 0.6118411421775818, 0.6669930815696716, 0.5526951551437378, 0.6111425757408142, 0.5822540521621704, 0.5460661053657532 ]
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Get network address and network mask in Python
[ "Retrieving network mask in Python", "python connect to server on same network", "Check if a network is part of bigger network using Python", "What's the best way to send an object over a network in Python?", "How do I check if a network is contained in another network in Python?", "Creating a network in Python using XML data", "Python Hopfield Network: Training network - error with weights", "How to create a simple network connection in Python?", "Python: Graph a Network from Data", "python: send a list/dict over network", "How to create network data from lists", "How do you get the IP address of a given network interface?", "Replace network address with host address in python", "Using Python, how do I close a file in use by another user over a network?", "How to send an object over network", "IP address/network parsing from text file using python", "Python network convert byte", "Python: How to use threads in network?", "How to get the next network address given the starting network address in python", "How do you get a mac address from an IP address on your network?", "Python Parsing Network", "Why does ~email return a network path?", "Python - Check network map", "How to copy file from a network using Python", "Python R/W to text file network", "Python over a network share", "Time server network", "Network programming in Python", "How to increment and get the next IPv6 network address from the current network address", "Send strings over the network" ]
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[ 0.9582020044326782, 0.8619098663330078, 0.8845441341400146, 0.8261648416519165, 0.8668567538261414, 0.8709667921066284, 0.8094668984413147, 0.856554388999939, 0.8737078905105591, 0.8534290194511414, 0.8333636522293091, 0.8595285415649414, 0.9018787145614624, 0.8330461978912354, 0.8178635835647583, 0.8892906904220581, 0.8575971722602844, 0.8525056838989258, 0.902835488319397, 0.8397443294525146, 0.8422444462776184, 0.8305898904800415, 0.8906916975975037, 0.8729624152183533, 0.8519413471221924, 0.848427414894104, 0.7756541967391968, 0.8832826018333435, 0.8586004972457886, 0.8240954875946045 ]
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[ 0.899855375289917, 0.6011941432952881, 0.5915929079055786, 0.5621899366378784, 0.645025372505188, 0.5829324126243591, 0.3905144929885864, 0.619636595249176, 0.5788224935531616, 0.575914740562439, 0.6175991296768188, 0.6966503262519836, 0.7228785157203674, 0.4887142777442932, 0.494674414396286, 0.7053031921386719, 0.6206908226013184, 0.5434378981590271, 0.7345098257064819, 0.6751675605773926, 0.6000920534133911, 0.47981733083724976, 0.6714025139808655, 0.6015281677246094, 0.5141682624816895, 0.5748383402824402, 0.43927034735679626, 0.6843317747116089, 0.6308760643005371, 0.5212113857269287 ]
[ 0.924886167049408, 0.6438907384872437, 0.6563875675201416, 0.629118025302887, 0.7070966958999634, 0.6499866247177124, 0.5048388242721558, 0.6647708415985107, 0.6560108661651611, 0.6366524696350098, 0.6837460994720459, 0.7502076625823975, 0.767301082611084, 0.5773400068283081, 0.5832966566085815, 0.7483258247375488, 0.666123628616333, 0.6078843474388123, 0.7587020397186279, 0.7383817434310913, 0.6885926723480225, 0.5670537948608398, 0.7267776727676392, 0.6594427824020386, 0.5952777862548828, 0.6105356216430664, 0.5448287725448608, 0.714364767074585, 0.7017319202423096, 0.6140317320823669 ]
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Persistence of urllib.request connections to a HTTP server
[ "Python3 urllib.request will not close connections immediately", "How to get HTTP return code from python urllib's urlopen?", "Error when using the .split() function with urllib.request", "Create new TCP Connections for every HTTP request in python", "urllib does not have the request attribute", "python error while using urllib module", "Cannot import urllib.request and urllib.parse", "Can't \"import urllib.request, urllib.parse, urllib.error\"", "python 3.x and urllib", "python urllib error", "Why this error from urllib?", "Python object persistence", "What thread-safe data persistence objects are available in Python for data persistence?", "Python 2.7 cannot find module Request from urllib.request", "Sending HTTP GET request using urllib", "python 3 - urllib issue", "Problem with python urllib", "HTTP Error when using urllib.request", "Why am I able to read a HEAD http request in python 3 urllib.request?", "How am I to get all the connections?", "Urllib Request only working for one user", "urllib error when using Python 3", "Python data persistence", "Python 3.3 - urllib.request - import error", "How to read one line with urllib.request", "urllib.request in Python 2.7", "Request object persistence between class methods", "Python - make a POST request using Python 3 urllib", "Urllib in python 3", "Python and urllib" ]
[ 0.915724515914917, 0.8795977830886841, 0.897480845451355, 0.8863127827644348, 0.8967322111129761, 0.8899561166763306, 0.8926068544387817, 0.8725345134735107, 0.8758392333984375, 0.8894580602645874, 0.8833673596382141, 0.879836916923523, 0.8530794382095337, 0.8745273351669312, 0.9146571159362793, 0.892112672328949, 0.9058215618133545, 0.9263834953308105, 0.8837552070617676, 0.8391296863555908, 0.8969571590423584, 0.8822121024131775, 0.8861696124076843, 0.8856121301651001, 0.893561601638794, 0.9037554264068604, 0.8961310982704163, 0.882206380367279, 0.8602864146232605, 0.872955322265625 ]
[ 0.9100996255874634, 0.8487777709960938, 0.8761386871337891, 0.874695897102356, 0.8861603736877441, 0.8583546876907349, 0.8776732087135315, 0.867188572883606, 0.8648203611373901, 0.8601227402687073, 0.8526270389556885, 0.8683071136474609, 0.8357009887695312, 0.8746018409729004, 0.8957105875015259, 0.8636052012443542, 0.872809648513794, 0.9100934267044067, 0.8607473373413086, 0.7876641750335693, 0.878498911857605, 0.8591592311859131, 0.8693665266036987, 0.8767203092575073, 0.886176347732544, 0.8946083188056946, 0.8952376842498779, 0.8759740591049194, 0.8586287498474121, 0.8678367137908936 ]
[ 0.902879536151886, 0.8556786775588989, 0.870823323726654, 0.873731255531311, 0.8714011907577515, 0.8618364334106445, 0.8596067428588867, 0.8456277251243591, 0.866355836391449, 0.8527449369430542, 0.861578643321991, 0.8653661012649536, 0.8271036744117737, 0.8603283166885376, 0.902550220489502, 0.8609181642532349, 0.8765379190444946, 0.8962244987487793, 0.8623820543289185, 0.7901568412780762, 0.8769305348396301, 0.8627364039421082, 0.8619052171707153, 0.8629575967788696, 0.873408854007721, 0.8857478499412537, 0.8728604316711426, 0.8765831589698792, 0.8594932556152344, 0.8608906865119934 ]
[ 0.8231549263000488, 0.6833746433258057, 0.595474123954773, 0.7741026282310486, 0.7092487812042236, 0.6027487516403198, 0.641213059425354, 0.6222161054611206, 0.6577545404434204, 0.5986150503158569, 0.6535405516624451, 0.6962807178497314, 0.6677075624465942, 0.6776190996170044, 0.715045690536499, 0.625026524066925, 0.6136305928230286, 0.7256122827529907, 0.7402926683425903, 0.5622530579566956, 0.6869503259658813, 0.6059545278549194, 0.6969183683395386, 0.6313899159431458, 0.6749845147132874, 0.7125134468078613, 0.6255525350570679, 0.6390163898468018, 0.6258183717727661, 0.659555971622467 ]
[ 0.7843030095100403, 0.6042976975440979, 0.5308113694190979, 0.7422334551811218, 0.6620606184005737, 0.5660040378570557, 0.5811115503311157, 0.5557988882064819, 0.6172959208488464, 0.5612026453018188, 0.6084919571876526, 0.6247395277023315, 0.581758975982666, 0.6274807453155518, 0.677486777305603, 0.5936338901519775, 0.5871639847755432, 0.698432207107544, 0.6888090372085571, 0.48376113176345825, 0.6313439607620239, 0.5598787069320679, 0.6276617050170898, 0.5757471323013306, 0.6252197623252869, 0.6930685043334961, 0.5320888757705688, 0.5788282155990601, 0.6002771854400635, 0.6367019414901733 ]
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Python: get default gateway for a local interface/ip address in linux
[ "How can I get the default gateway IP with Python?", "Change IP settings using Python on Linux", "Setting Variable to Gateway IP", "Check if user's IP address is in a range of IP's", "Why there is no any standard Gateway Interface for languages C and/or C++ as WSGI for Python?", "Python: Get local IP-Address used to send IP data to a specific remote IP-Address", "How do I get user IP address in django?", "How to assign IP address to interface in python?", "Django url with IP address", "requests - Gateway Timeout", "How do you get the IP address of a given network interface?", "How to send HTTP request using virtual IP address in Linux?", "Is there a way to make a http request in python using another gateway than the system default?", "Get response from an ip address in python", "Boto3: how to create and tag Virtual Private Gateway [create_vpn_gateway()]", "Find IP and Gateway using Python Script", "How to change IP address of wifi interface using python in linux?", "How to read list of ip address from a text file and print it out", "how to get unique ip address from list of ip address present in log file using python?", "Function call with IP address as argument", "Get IP address of url in python?", "Python program not displaying gateway and network ip", "How can I find the IP address in a string", "How to write each IP address in a different line of a text file?", "IP address regex python", "How to get the physical interface IP address from an interface", "Python Server on different IP address", "Python: get MAC address of default gateway", "Writing raw IP data to an interface (linux)", "Python Store IP address in a variable" ]
[ 0.9438436031341553, 0.9020276665687561, 0.864614725112915, 0.8569943904876709, 0.8648897409439087, 0.9317851066589355, 0.8723342418670654, 0.9044108390808105, 0.8759183883666992, 0.8204716444015503, 0.8922502994537354, 0.8633579015731812, 0.892568826675415, 0.8970044851303101, 0.8666198253631592, 0.90555739402771, 0.9040658473968506, 0.8575922846794128, 0.8709449768066406, 0.864958643913269, 0.8849145770072937, 0.9041728973388672, 0.8663202524185181, 0.8617897033691406, 0.8728999495506287, 0.8947514295578003, 0.8987038135528564, 0.9440374374389648, 0.8820674419403076, 0.8839653134346008 ]
[ 0.9274299740791321, 0.9008933305740356, 0.868696928024292, 0.8507699966430664, 0.8413340449333191, 0.91242516040802, 0.8561745882034302, 0.8900842666625977, 0.8653818368911743, 0.83231520652771, 0.8608160018920898, 0.8702305555343628, 0.8801135420799255, 0.8925443291664124, 0.8623738884925842, 0.8970891833305359, 0.8965523838996887, 0.8565645217895508, 0.8677281141281128, 0.8548256754875183, 0.8661503791809082, 0.9025130867958069, 0.850814700126648, 0.8382008075714111, 0.8724081516265869, 0.8788807392120361, 0.877262532711029, 0.9332055449485779, 0.874056339263916, 0.8770312070846558 ]
[ 0.9232728481292725, 0.8825252056121826, 0.8360579013824463, 0.8369645476341248, 0.857836902141571, 0.8945642709732056, 0.8388444185256958, 0.8735374212265015, 0.8393814563751221, 0.8293712139129639, 0.8629113435745239, 0.8391773700714111, 0.8848458528518677, 0.8881494998931885, 0.8559795618057251, 0.8867006301879883, 0.8794921040534973, 0.8339467644691467, 0.8616553544998169, 0.844469428062439, 0.863996148109436, 0.8915280103683472, 0.8328663110733032, 0.8219696283340454, 0.8518428802490234, 0.8667469024658203, 0.8490986227989197, 0.9442066550254822, 0.8691411018371582, 0.8628078103065491 ]
[ 0.9056448936462402, 0.7486385703086853, 0.7367876768112183, 0.6139388084411621, 0.6483728885650635, 0.7547487020492554, 0.6457969546318054, 0.7531135082244873, 0.6335906982421875, 0.6407134532928467, 0.7681372761726379, 0.6951802968978882, 0.756363034248352, 0.700552225112915, 0.6248636245727539, 0.805281400680542, 0.7535397410392761, 0.6159801483154297, 0.6483373641967773, 0.6865546703338623, 0.7317205667495728, 0.7544390559196472, 0.6240406632423401, 0.6124243140220642, 0.6037166118621826, 0.747452437877655, 0.6521639823913574, 0.8708930611610413, 0.7190873026847839, 0.6630675792694092 ]
[ 0.8840099573135376, 0.6948275566101074, 0.6753204464912415, 0.512457013130188, 0.6074453592300415, 0.702013373374939, 0.5812874436378479, 0.7060715556144714, 0.5738525390625, 0.5570357441902161, 0.7135636806488037, 0.613207221031189, 0.6965000033378601, 0.6401177644729614, 0.5438255667686462, 0.7565255165100098, 0.6887444853782654, 0.5274910926818848, 0.5787593126296997, 0.613442063331604, 0.6727080941200256, 0.6941690444946289, 0.5497825741767883, 0.525623619556427, 0.5558077096939087, 0.6772831678390503, 0.6017415523529053, 0.8381327390670776, 0.636245608329773, 0.5896193981170654 ]
[ 0.9049617052078247, 0.7301868796348572, 0.7262012958526611, 0.5955742597579956, 0.6741506457328796, 0.7437226176261902, 0.6579553484916687, 0.7534722685813904, 0.6291237473487854, 0.6417905688285828, 0.7765894532203674, 0.6799047589302063, 0.7568039894104004, 0.6886478066444397, 0.6138359308242798, 0.7835389375686646, 0.7446032762527466, 0.6173064708709717, 0.6443939208984375, 0.6736798286437988, 0.7233971357345581, 0.7305521965026855, 0.6185719966888428, 0.6205506324768066, 0.5953580141067505, 0.7482250332832336, 0.6296993494033813, 0.8675415515899658, 0.7157210111618042, 0.6504602432250977 ]
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Convert csv to JSON tree structure?
[ "Create a json tree from csv list in python", "How to read specific file in a tree structure?", "How to convert this data structure in python", "Convert map array json to csv", "NVD - JSON to CSV with Python", "json tree in python", "csv to json in python", "From JSON file to CSV file", "Python convert JSON to CSV", "convert data structure into csv", "How to convert a JSON string into a Python data structure", "JSON to CSV in python convert issue", "What is the best way to implement a Tree Structure in python", "python convert one json structure to a nested structure", "Filesytem tree to json", "How to convert CSV file to multiline JSON?", "How to convert JSON data into a tree image?", "loop over tree like structure", "data convert to data structure", "JSON to CSV for Python", "CSV file to JSON file in Python", "CSV to JSON with Python", "Looking for a good Python Tree data structure", "Convert JSON to CSV with Python 3", "How to convert a json tree data into dataframe in Python?", "Convert JSON to CSV using Pandas", "How to convert a csv file, that has array data, into a json file?", "How to create a json tree structure from SQLalchemy model", "List directory tree structure in python?", "Python json to CSV" ]
[ 0.923755407333374, 0.8891881704330444, 0.8776774406433105, 0.910925030708313, 0.8741828799247742, 0.9014137387275696, 0.9065228700637817, 0.9049557447433472, 0.9169461727142334, 0.9255281090736389, 0.9115399122238159, 0.9127905964851379, 0.8660463094711304, 0.9084066152572632, 0.8904931545257568, 0.919133722782135, 0.9360790252685547, 0.8598341941833496, 0.8862626552581787, 0.9017618298530579, 0.8986611366271973, 0.9019403457641602, 0.8859644532203674, 0.9049324989318848, 0.9208639860153198, 0.9104633927345276, 0.9234837293624878, 0.9079607129096985, 0.8819272518157959, 0.9021611213684082 ]
[ 0.9158051013946533, 0.8828641772270203, 0.870984673500061, 0.9049621224403381, 0.8726066946983337, 0.8947042226791382, 0.904756486415863, 0.9126392602920532, 0.9141852855682373, 0.9107773900032043, 0.905872642993927, 0.9115939140319824, 0.8600217700004578, 0.8963003158569336, 0.8987173438072205, 0.9204955101013184, 0.9371926784515381, 0.8276622295379639, 0.8768196105957031, 0.9035568237304688, 0.9030051231384277, 0.9029090404510498, 0.8691670894622803, 0.900320291519165, 0.9195008277893066, 0.9064344763755798, 0.916004478931427, 0.8915514945983887, 0.8708879947662354, 0.908539891242981 ]
[ 0.9115832448005676, 0.8769679665565491, 0.8744446039199829, 0.9114356637001038, 0.8774510622024536, 0.8849972486495972, 0.8929236531257629, 0.9013996720314026, 0.891910970211029, 0.9064537882804871, 0.902761697769165, 0.8931961059570312, 0.8568131923675537, 0.8944317102432251, 0.8927600383758545, 0.8996622562408447, 0.9238690137863159, 0.8302955031394958, 0.8725720643997192, 0.8900715708732605, 0.8919851779937744, 0.892804741859436, 0.8713073134422302, 0.8941503763198853, 0.9092879295349121, 0.8922867178916931, 0.9077937602996826, 0.8914265632629395, 0.8778548240661621, 0.887007474899292 ]
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[ 0.8932620286941528, 0.5623489618301392, 0.6046252250671387, 0.6533375978469849, 0.6572158336639404, 0.7950026988983154, 0.8185497522354126, 0.7122440338134766, 0.7263509035110474, 0.7240959405899048, 0.6551634073257446, 0.6886780858039856, 0.667251467704773, 0.6921401023864746, 0.6896014213562012, 0.7645636796951294, 0.7213367819786072, 0.6384257078170776, 0.631084680557251, 0.7489731907844543, 0.7776316404342651, 0.8062995076179504, 0.675502359867096, 0.7067285180091858, 0.7382882833480835, 0.6831820011138916, 0.7771469354629517, 0.692894697189331, 0.6168198585510254, 0.740034818649292 ]
[ 0.8999890089035034, 0.6577914357185364, 0.6829202175140381, 0.7117043733596802, 0.7099578976631165, 0.8136728405952454, 0.824871838092804, 0.7387605905532837, 0.7419731616973877, 0.7692786455154419, 0.7116472125053406, 0.6977763175964355, 0.7397931218147278, 0.7482543587684631, 0.7604633569717407, 0.8021560907363892, 0.7839574813842773, 0.7133145928382874, 0.7072737812995911, 0.7599582672119141, 0.8000553846359253, 0.8133689165115356, 0.7470457553863525, 0.7339476346969604, 0.7758645415306091, 0.7089065313339233, 0.807986855506897, 0.7775373458862305, 0.7165597081184387, 0.7383695840835571 ]
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How to easily print ascii-art text?
[ "Text-to-ASCII art generator in Python", "Python Curses - Printing Ascii Art", "could not read ascii file", "Ascii art that is continually replaced", "How to match ASCII art segments within ASCII art?", "extract cover art from remote mp3", "Displaying ASCII-art in TKinter", "How to check if a string in Python is in ASCII?", "Python: Printing ASCII Art Problems", "Print full ascii art", "converting plain ascii math or ascii art to mathml / latex", "Making ASCII art print on the same line", "ASCII art in the optparse description", "How to create an array from an ascii file with python", "What is the most state-of-the-art, pure python, XML parser available?", "Making diamond ASCII art with Python", "Asterisk art in python", "How do I use the ascii function in Python 3?", "Write a file ascii ordened", "What's the state-of-the-art in Python programming in Windows?", "Vertically flip ASCII art with Python", "Why isn't this ASCII art printing on multiple lines despite being a multiline string?", "Python tools/libraries for Semantic Web: state of the art?", "Add Custom Art to ToolBar", "Printing ASCII art from a file", "Ascii Art in Python not printing in one line", "including ascii art in python", "ASCII Art With Letters", "is there any way to pass parameter for art_work for t300x300 image?", "How do I make this program work with spaces? (Text to ASCII and ASCII to text)" ]
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[ 0.8371329307556152, 0.8197524547576904, 0.6695021390914917, 0.789593517780304, 0.7527621388435364, 0.5510454773902893, 0.7905340194702148, 0.7055634260177612, 0.8842991590499878, 0.9164726734161377, 0.7551959753036499, 0.851094126701355, 0.7156492471694946, 0.6614092588424683, 0.48327699303627014, 0.7765914797782898, 0.7150250673294067, 0.7221701145172119, 0.6971675157546997, 0.4553111493587494, 0.7442516088485718, 0.8023524284362793, 0.37533774971961975, 0.5175479054450989, 0.8929030895233154, 0.8188947439193726, 0.8215764164924622, 0.8232038021087646, 0.6205030679702759, 0.7154708504676819 ]
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How to clear items from a ttk.Treeview widget?
[ "How to clear an entire Treeview with Tkinter", "how to get text element of column #0 of ttk.Treeview", "python 3 - tkinter - ttk treeview: see column text", "ttk.Treeview - Can't change row height", "Command for clicking on the items of a Tkinter Treeview widget?", "python3 - ttk treeview... extract values from specific column into a function", "Python 3.3.2 tkinter ttk TreeView per-column sorting only sorts by last column?", "Format individual cell/item rather than entire row in tkinter ttk treeview", "how to UNSELECT row in a ttk.Treeview in tkinter", "ttk Treeview: How to select a row?", "How to change ttk.Treeview column width and weight in Python 3.3", "Why does my ttk.Treeview click handler return the wrong item on tree.focus()?", "How to get column 0 text from a ttk.Treeview's item", "Get the text of a treeview item using it's Id - Treeview Tkinter", "Item . not found with ttk.Treeview().insert()", "How to fully change the background color on a tkinter.ttk Treeview", "Retrieving ttk.Treeview item's 'open' option as boolean", "Connect an Object to an item in a Treeview Widget", "How to make ttk.Treeview's rows editable?", "How to edit the style of a heading in Treeview (Python ttk)", "How to add pictures to a Tkinter Treeview as values?", "Can you retrieve/set the ttk.Treeview widget's margin value?", "How to align text to the right in ttk Treeview widget?", "Expand/collapse ttk Treeview branch", "ttk treeview: alternate row colors", "Different tkinter binding for any ttk treeview row", "How to prevent ttk.Treeview item from opening when double clicked", "ttk Treeview selection_set can't accept spaces", "How to make a ttk treeview row/item act as a button?", "python ttk treeview sort numbers" ]
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SSL error using Python Requests to access Shibboleth authenticated server
[ "Logging into SAML/Shibboleth authenticated server using python", "SSL Error on Python GET Request", "SSL Error On Python Request", "Django if user.is_authenticated not working", "SSL connection using requests module", "Django and SSL Server", "Authenticated but user.is_authenticated remains false", "how to know if https server is one way ssl or two way ssl", "How to use SSL in Python?", "Python requests SSL error [SSL: UNKNOWN_PROTOCOL] while getting https://www.nfm.com", "xpath on authenticated page in Python", "python, difference between import ssl and import _ssl", "SSL InsecurePlatform error when using Requests package", "django request.user.is_authenticated is always true?", "SSL error using python(2.7) requests", "Make my test_user pass is_authenticated", "How to import _ssl in python 2.7.6?", "Check if user is authenticated in urls.py", "not show field in form if user is authenticated", "Python SSL import error", "django user authenticated (not authenticated )", "Python requests lib with SSL version 3", "using request.user.is_authenticated() in Django project", "Display Shibboleth Attributes in Pyramid", "Using 'is_authenticated' with Django 1.5 Custom User Models", "The template doesn't know if User is authenticated, why?", "Using python requests module to create an authenticated session in Github", "Access authenticated page using Python Requests", "How to get the authenticated user name under apache while in python code?", "How do I send authenticated https requests using Python?" ]
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[ 0.7742999792098999, 0.7622784376144409, 0.7979880571365356, 0.40083545446395874, 0.7692136764526367, 0.6744670867919922, 0.4546041488647461, 0.5892837047576904, 0.7424260377883911, 0.6561477780342102, 0.4933794140815735, 0.6079393625259399, 0.7428568005561829, 0.47817742824554443, 0.8107720613479614, 0.46840012073516846, 0.6786270141601562, 0.508060097694397, 0.3574010729789734, 0.7083874940872192, 0.4651760756969452, 0.7503252029418945, 0.5094519853591919, 0.4178393483161926, 0.383730411529541, 0.42059341073036194, 0.6208364367485046, 0.6851359605789185, 0.5078169107437134, 0.782555341720581 ]
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Publishing Flask Web App on Azure
[ "Publishing MVC app that uses python script", "How to connect to Azure MySQL from Azure Functions by Python", "Create Azure web site with Django and SQL server", "Azure Web-App Maximum Execution Time Issue", "Does the azure python sdk support the azure resource manager api?", "Azure Table Take(N) method in Python", "How to connect python to SQL Azure?", "Azure runbook using python to connect to Sql databae", "Python Azure GetSharedAccessSignature", "Using Python 3 in Azure Functions", "Azure blob storage to JSON in azure function using SDK", "How to run a Python shell in azure app service", "Getting server error upon publishing django application to azure", "How to get all columns in azure table using python?", "Failed to create Azure table using Python", "Error: Do you have azure>=2.0.0 installed?", "Django Database List is empty even after publishing. DjangoGirls Tutorial", "Azure Flask HTTP Error 500.0 - INTERNAL SERVER ERROR", "Creating an Azure Web App with Postgresql database (is that possible?)", "Azure Flask Deployment - WSGI Interface", "Flask generator not streaming in Azure web app", "Upload a file in azure", "Python Flask Website on Azure (You do not have permission to view this directory or page.)", "Flask app fails to render when deploying code to Azure Web with a database connection, but works fine from local server", "subunit2sql configuration for Azure database", "Azure Python Web App Internal Server Error", "How to manage Azure Backup with Azure Python SDK or Azure Cli", "Add python modules to Azure", "Can't find `FlaskWebProject` files in Azure set-up" ]
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[ 0.7183144688606262, 0.6664947271347046, 0.7222274541854858, 0.6378542184829712, 0.7307722568511963, 0.5513285398483276, 0.7229276895523071, 0.6615079641342163, 0.6024235486984253, 0.7070831060409546, 0.6069608926773071, 0.6838439106941223, 0.7687928676605225, 0.5691736936569214, 0.6772860288619995, 0.6349116563796997, 0.5195647478103638, 0.7745978832244873, 0.7182714939117432, 0.8135379552841187, 0.8074121475219727, 0.6490194797515869, 0.8151170611381531, 0.8302238583564758, 0.5726296901702881, 0.7744683623313904, 0.6799145936965942, 0.754854679107666, 0.8161914348602295 ]
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How to run tests in django using database with data?
[ "How can I specify a database for Django Tests to use instead of having it build it every time?", "boilerplateless tests", "How to use AssertRaisesMessage() in Django tests", "Django: tests.py as a module", "Why does django not see my tests?", "Basic Tests in Django", "Get view used in Django tests", "Does Django automatically add tests to my application?", "How to run django tests in Eclipse to make debugging possible, but on test database", "Which database to use with Django?", "Django, Tests and multidatabases", "How to run all tests in a python file from a python script?", "How to run a method before all tests in all classes?", "Django user not in request object when running tests", "Create a Django Database", "Django tests that should not run automatically", "Django Tests User Object", "How to run tests django rest framework tests?", "How can I run Django application tests together with other tests?", "Why are my App tests not being recognized by Django tests?", "Problems to make tests on Django", "Django Package tests not found", "I don't understand tests in Django, Can you help me please?", "How to run tests with `DEBUG=TRUE` in Django", "Print Data from database in django", "Django run all tests at once", "Django App Tests Won't Run Specifically (But Will Run With All Tests)", "What kind of tests should one write in Django", "Django tests - patch object in all tests", "Django and tests in docfiles" ]
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How to enable Python support in gVim on Windows?
[ "Executing Python with Gvim", "Enable one script to be run by multiple Python versions", "gVim ImportErrror: module not found, even though module is in same folder as script", "Prebuilt GVim 7.3. binaries with +python support", "Install GVIM on windows with Python3 support?", "Neovim python host failed after installing Vim and Gvim", "How to enable cookiemiddleware in scrapy in python", "Vim syntax highlighting not working (but works in gvim?)", "Enable Python Class to support for loop through an internal iterable member variable", "python support in gvim but not console vim", "GVIM crashes when running python", "Performance of running code in stani python editor vs IDLE/terminal/gvim", "How to enable Windows console QuickEdit Mode from python?", "PyQt4 enable button on text entry, connect windows", "How to enable a method in template of google-app-engine", "How do I swap the left hand and right hand sides of a C/C++ assignment statement in gvim?", "Is it possible to write a python program that will enable you to sort the content of a text file in python", "How can I add \"-with-python\" options by building gvim/vim from source code in Windows", "Enable module's logger", "How can i get correct indentation in gvim for python?", "Are the official gVim Windows binaries precompiled to work with Python 3?", "Touchbar support in python", "Difference in solarized gvim theme", "How to enable dependencies with python?", "gVim and multiple programming languages", "How to enable cookie support with pyWebKit?", "How to enable ASLR of an exe file", "Python: open tab in MacVim or gvim", "Scrapy does not enable my FilePipeline", "Compiling gVim with Python 3 support" ]
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Principal Component Analysis (PCA) in Python
[ "How to get the 1st Principal Component by PCA using Python?", "PCA analysis using python scikit-learn - type error", "adding a point to a PCA model", "Different results between Orange PCA and scikit-learn PCA", "Need to perform Principal component analysis on a dataframe collection in python using numpy or sklearn", "PCA with sklearn. Unable to figure out feature selection with PCA", "Principal component analysis using sklearn and panda", "Pca analysis with PySpark", "Apply pca to the test data", "Scikit-learn principal component analysis (PCA) for dimension reduction", "how to find the pca of an image using python and opencv?", "Python - Principal component analysis (PCA) error", "Principal Component Analysis not working", "running PCA analysis matplotlib results print <matplotlib.mlab.PCA instance at 0xffa4ee6c>", "What's wrong with my PCA?", "Principal Component Analysis in Python: Analytical Mistake", "PCA with missing values in Python", "select k in PCA python skitlearn", "Principal Component Analysis (PCA) - accessing shape", "Calculate PCA using numpy", "Principal Component Analysis in face recognition - python/java", "Principal component analysis (PCA) compute mean using python", "How to use a python function with the principal python script", "Principal component analysis in Python", "Why the number of PCA's changed?", "Principal Component Analysis doesn't work", "Basic example for PCA with matplotlib", "Project variables in PCA plot in Python", "Retain specific component in PCA", "Principal Component Analysis (PCA) using python" ]
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[ 0.851089358329773, 0.836856484413147, 0.6779575943946838, 0.7676143050193787, 0.8193913698196411, 0.7653504610061646, 0.8878567218780518, 0.7897106409072876, 0.7907580137252808, 0.8796494603157043, 0.8430222272872925, 0.8843039274215698, 0.8060723543167114, 0.7120949625968933, 0.7249423265457153, 0.855882465839386, 0.8224777579307556, 0.6766211986541748, 0.7921586036682129, 0.8308918476104736, 0.8444764614105225, 0.8504228591918945, 0.4742714762687683, 0.9755194187164307, 0.6526037454605103, 0.7789657115936279, 0.8382587432861328, 0.7559292316436768, 0.7017590403556824, 0.989162802696228 ]
[ 0.8388209342956543, 0.8074098825454712, 0.7306366562843323, 0.7754209041595459, 0.8257076740264893, 0.786285400390625, 0.9009957313537598, 0.8224033117294312, 0.8215663433074951, 0.8797277808189392, 0.8630895614624023, 0.8739369511604309, 0.8319108486175537, 0.6996376514434814, 0.7416378259658813, 0.8427431583404541, 0.832042396068573, 0.7098013162612915, 0.8125482797622681, 0.8438094854354858, 0.8673646450042725, 0.8528236746788025, 0.561500072479248, 0.9751882553100586, 0.6628788709640503, 0.8157304525375366, 0.8418250679969788, 0.7539503574371338, 0.7367153167724609, 0.9848113059997559 ]
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How to ensure that a python dict keys are lowercase?
[ "Dictionary to lowercase in Python", "Lowercase django query", "Where can I find the dict_keys class?", "Python list integrateUpper/Lowercase check?", "'ascii_lowercase' is not defined", "How to add value for same keys in a dict in python", "convert all lines in file to lowercase then write to new file", "dict.keys()[0] on Python 3", "Python re: how to lowercase some words", "Python Dict From List With Keys", "How to make everything in a string lowercase", "How do I lowercase a string in Python?", "python 2.7 lowercase", "Python how to delete lowercase words from a string that is in a list", "How do I make part of a string lowercase in python?", "Lowercase in loop doesn't work", "python json boolean to lowercase string", "Why use dict.keys?", "How to lowercase a pandas dataframe string column if it has missing values?", "pandas convert index values to lowercase", "Lowercase columns by name using dataframe method", "Python: If dict keys in line", "Why does Python's dict.keys() return a list and not a set?", "how to delete lowercase words from a string in python", "python: how to make list with all lowercase?", "How to use map to lowercase strings in a dictionary?", "Change all text in file to lowercase", "Python - need to change a list with uppercase and lowercase words into all lowercase", "lowercase first n characters", "Using the lowercase function with CSV rows" ]
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How to use python numpy.savetxt to write strings and float number to an ASCII file?
[ "Which argument is required for np.savetxt to output float data?", "Delimiter of numpy.savetxt", "How do I get rid of the symbol # in the header of the saved file?", "numpy beginner: writing an array using numpy.savetxt", "How to make file name a variable using np.savetxt in python?", "Numpy savetxt TypeErrror", "Numpy.savetxt() function", "savetxt to file giving error", "savetxt save only last loop data", "How to round numpy values in savetxt?", "numpy savetxt not working", "IO error in savetxt while using numpy", "Change line when using numpy.savetxt", "Python savetxt write as int", "How to use numpy.savetxt at the top of a file", "Using savetxt in numpy with custom data types", "problems with numpy.savetxt", "savetxt two columns in python,numpy", "How to save complex data as rows with numpy savetxt?", "numpy.savetxt \"tuple index out of range\"?", "Write numpy structured array using savetxt", "value error when using numpy.savetxt", "python numpy savetxt", "Incorrect header from numpy savetxt", "Numpy savetxt to a string", "np.savetxt - using variable for file name", "numpy savetxt: save a matrix as row", "savetxt & close file + python + numpy", "Setting a path for numpy.savetxt - file name contains loop variable", "Create Folder with Numpy Savetxt" ]
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Plotting of 2D data : heatmap with different colormaps
[ "Increasing Number of Rows in Python 2D Heatmap", "Plotting sorted heatmap keeping (x,y) value colors", "Sorted data while plotting heatmap", "How do I get my data in my heatmap?", "Python Plotting: Heatmap from dataframe with fixed colors in case of strings", "Save 2D histogram as heatmap in python", "Using Colormaps to set color of line in matplotlib", "Making heatmap from pandas DataFrame", "How to use multiple colormaps in seaborn on same plot", "Plotting a heatmap of temperatures", "Two different color colormaps in the same imshow matplotlib", "Create a heatmap using python", "TypeError when plotting heatmap with seaborn", "Plotting sort of a heatmap whose colors are a result of a function x,y -> r,g,b", "How to use colormaps to color plots of Pandas DataFrames", "Plotting only upper/lower triangle of a heatmap", "Plotting 3 cols of pandas dataframe as heatmap", "X Y Z array data to heatmap", "How to view all colormaps available in matplotlib 1.5?", "Heatmap from List", "stacking colormaps", "Modifying python colormaps to single value beyond a specific point", "Merge colormaps in matplotlib", "Join two colormaps in imshow", "Combining two matplotlib colormaps", "Matplotlib - two different colormaps with different ranges", "Retrieving and plotting ordered, 2D heatmap data from a SQLite database", "How to add a new color in matplotlib graph (or use colormaps)?", "Plotting heatmap for 3 columns in python with seaborn", "Heatmap on top of image" ]
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filtering dropdown values in django admin
[ "Adding data in django admin filtering", "Filtering a list in Python", "Filtering objects in django admin", "Filtering by foreign key in dropdown", "Default for dropdown menu in Django admin", "Python - filtering in Django", "Django Filtering error", "Django: show value of dictionary in dropdown", "Time filtering in django model", "How to pre-select dropdown on Django?", "django admin site - filtering available objects for user", "Django - How to show dropdown value instead object?", "django form dropdown list of numbers", "django Javascript dropdown", "Filtering in Django", "Filtering Django Admin by Null/Is Not Null", "Django admin foreign key dropdown with custom value", "Values of a dict in a dropdown django", "Django filtering based on list value", "How to get value from dropdown list", "How to display/use a dropdown in the django admin", "Filtering in Django by a set of String", "list filtering in python", "Django - filtering by user", "Django admin - Limit the choices in dropdown", "Filtering dropdown queryset in Django view", "Django - How to filter dropdown based on user id?", "Not getting the Dropdown's data in Django view", "Filtering data in python", "How to create grouped dropdown list in django admin?" ]
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Error closing wget subprocess in Python
[ "Python equivalent of a given wget command", "Use wget from python with Popen", "Python wget saves a file. how to get data in variable", "url is not accessible through wget e or script", "How to download with wget in Python using variables?", "Wget download files using lins in a file and rename", "How to do a wget call via proxy with python?", "Wget problems using python subprocess", "Get wget output in python variable", "Subprocess Popen not capturing wget --spider command result", "only download new files (wget -N) in python", "python pass variables with wget and check result", "Executing wget from python", "Parse wget log file in python", "Help \"Install\" Module for Python using WGET", "Using wget with subprocess", "Proper way of re-using and closing a subprocess object", "How to get filename of the file downloaded by wget", "Python capture output from wget?", "windows wget & being cut off", "Python - wget check when process has completed", "Fail to pass user input to wget in python", "facing issue with \"wget\" in python", "wget creating empty file", "wget with python time limit", "Python: Subprocess call with wget - Scheme Missing", "How to check results of wget/urllib2 in Python?", "KeyError in a wget call using python", "How to download using wget one by one in a loop in python", "Wget and Python download manager?" ]
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Wrapping std::vector of boost::shared_ptr in SWIG for Python
[ "How to expose std::vector<int> as a Python list using SWIG?", "How to use a Python list to assign a std::vector in C++ using SWIG?", "Wrap std::vector of std::vectors, C++ SWIG Python", "How to avoid memory leak with shared_ptr and SWIG", "SWIG argument error when using \"using std::vector\" in python", "Wrapping a template function with boost.python", "Wrapping return vector<T> on swig", "How to make python not to create/copy pyobject from boost::shared_ptr during iteration on std::vector via boost::python?", "wrapping boost::ublas with swig", "SWIG: Using std::map accessors with a shared_ptr?", "How to properly wrap std::vector<std::size_t> with SWIG for Python? Problems with std::size_t", "Instantiate shared_ptr objects from SWIG in Python", "SWIG Installation Boost Errors", "How to handle unique_ptr's with SWIG", "Inheritance and shared_ptr ref parameters with Boost.Python", "Swig Python not wrapping methods", "using unique_ptr with boost python - boost::shared_ptr works but unique_ptr doesnt", "Creating a boost::python::object from a std::function", "boost::python and swig integration", "SWIG equivalent of storing a boost::python::object", "Boost.Python: How to expose std::unique_ptr", "Good way to dereference boost::shared_ptr in swig interface", "Wrapping arrays in Boost Python", "boost::python: Python list to std::vector", "conversion of boost::shared_ptr in boost::python function call", "swig shared_ptr results in an opaque object", "SWIG, boost shared pointers and inheritance", "Wrapping an std::vector using boost::python vector_indexing_suite", "SWIG c++ vector access in python", "How to wrap a C++ class with a constructor that takes a std::map or std::vector argument with Boost.Python?" ]
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Install mysqldb on snow leopard
[ "Django + MySQL on Mac OS 10.6.2 Snow Leopard", "PyODBC on Snow Leopard - Install Error", "Python on Snow Leopard, how to open >255 sockets?", "Django and PIL on Snow Leopard", "Set Snow Leopard to use python 2.5 rather than 2.6", "How to install EasyGUI on Mac OS X 10.6 (Snow Leopard)?", "How do I install scipy, numpy and scikit-learn on snow leopard?", "Python IDLE crash on mac Snow Leopard", "How to install iPython on Snow Leopard", "how to install multiple python versions on snow leopard?", "How to update Numpy on Mac OS X Snow Leopard?", "How can I capture iSight frames with Python in Snow Leopard?", "WxPython Incompatible With Snow Leopard?", "Installing numpy on mac osx (snow leopard)", "PIL with Python 2.6.5 on Snow Leopard Install Issues", "Selenium and Python on Snow Leopard", "Can't configure node.js for make install on OS X (Snow Leopard)", "How to revert compiled Python 2.6.4 to system default on Snow Leopard?", "MySQL_Python on Snow Leopard", "Problems with Snow Leopard, Django & PIL", "Problems installing MYSQL-python-1.2.3 for Python 2.7 on Snow Leopard", "Good looking Python GUI toolkit for Snow Leopard(64 bit)", "MacPorts on Snow Leopard: Python install seems to succeed but doesn't install a non-system Python", "can't install lxml (python 2.6.3, osx 10.6 snow leopard)", "OpenGL in Python with Snow Leopard?", "Python Build Problem on Mac OS 10.6 / Snow Leopard", "pycurl module not available after installation on Snow Leopard", "Compile Matplotlib for Python on Snow Leopard", "Building mod_wsgi using python 2.5 on Snow Leopard", "Snow Leopard Python 2.6 problems getting PIL to work" ]
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passing selenium response url to scrapy
[ "selenium with scrapy for dynamic page", "Scrapy - dynamic wait for page to load - selenium + scrapy", "XPath working in scrapy but not in selenium", "Scrapy different number of url return", "Scrapy Example: example.com/page.aspx?id=1", "How to use Scrapy", "Python, Passing data in Scrapy", "ReactorAlreadyRunning Scrapy", "Scrapy.request does not get the new url", "Call a method in Python using Selenium and Scrapy", "Scrapy on a JSON response", "My scrapy can't get valid response", "Python Selenium not working inside scrapy", "Djangoitem in scrapy", "Scrapy error NotSupported", "How to loop over a response element in Scrapy?", "Can't get any data with Scrapy", "deployment of scrapy selenium project", "Using selenium with scrapy", "Scrapy passing custom values", "How use Scrapy encodage", "Scrapy: Passing item between methods", "Scrapy / Selenium - response url not being passed to web browser", "Using Selenium + Scrapy", "scrapy can't get right response", "Passing method as parameter in Python (Scrapy) - syntax", "Scrapy python change url", "How to get Scrapy Response in Scrapy Shell", "Passing list as arguments in Scrapy", "How to convert string into response object in scrapy?" ]
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Py.test No module named *
[ "py.test doesn't find module", "ZeroVM import error: No module named thread", "Python import error: 'No module named'", "No module named index", "How to load function from string named module?", "img2pdf.py \"no module named Image\"", "No module named <module>", "py.test can't import my module", "Django: No module named 'app'", "No module named pymindwave", "No module named (import error Python 2.7)", "no module named... when running this python code", "No module named Image", "Error was: No module named Random", "Python - No module named", "Python Package \"No module named...\"", "I am trying to import a models.py method, but get error no module named", "no module named HelloTemplate Import Error", "Module named \"make_problem\" in Python", "No module named rest_authusers error", "Python glmnet \"No module named _glmnet\"", "Python - No module named foo", "Import Error: No module named numpy", "Import Error Python 2.7. No module named:", "ERROR : No module named \"\"", "Import Error: No module named django", "No module named for requests", "Can't import package file (no module named...) (Python)", "No module named owslib.wmts", "Can't import any functions from module named 'code'" ]
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Open explorer on a file
[ "Use a Python Module to Open Explorer on a file", "Tree tk (file explorer)", "Building a Windows Explorer Extension", "My API doesn't show in the explorer and the logs just shows 500", "Tkinter - way to open a directory window in Windows Explorer", "Something like Explorer's icon grid view in a Python GUI", "Python throws error when deleting a directory that is open with windows explorer", "explorer right click context menu with python?", "Python: Open a modules source code in Finder/Windows explorer", "python open windows explorer", "How can set Windows Explorer startup path with python", "Zip File with Python Shutil like File Explorer", "Django: Issue with JSON and Internet Explorer", "PyDev package explorer", "How to get python to read a file that has been opened through File Explorer?", "Open and Select Item in Windows Explorer (Unicode) - Python", "Show Explorer's properties dialog for a file in Windows", "Open windows explorer at a specific network location in Python", "Python Requests gives different page text than Internet Explorer", "Python 3.5.2 internet explorer control", "how to get internet explorer address bar for python", "Package Not Found Error in Console when i Run my .py file from Explorer", "How to retrieve data from API Explorer?", "In python is there a way to use the windows explorer to create a file path which can then be returned as a string?", "Calling ubuntu file browser (explorer) in python", "spyder python how to re-open Variable Explorer", "How to find element Internet Explorer, using selenium and Python", "Selenium python internet explorer", "Use Windows explorer to get the path to a file in python", "Open file from explorer onto python application" ]
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Saving a Numpy array as an image (instructions)
[ "Saving a Numpy array as an image", "Saving image in python", "Python: saving numpy array to ROOT file", "Saving PairedRDD as a text file", "Saving numpy array into dictionary using loop", "Django image form isn't saving the image", "Django: Saving an image file from a form", "Saving numpy.ndarray in python as an image", "Render image without saving", "Saving to a file issue", "Saving an image into user model", "Converting 3x32x32 size numpy image array to 32x32x3 and saving to actual image in Python", "Saving python data for an application", "Saving a path for Python", "Saving data into a text file", "Saving values in a list of lists (Numpy)", "saving array in pandas", "Saving numpy array to a binary file", "Error in saving a text file in NumPy", "Saving numpy array to file in a single line?", "array not saving input", "Saving Output as List", "python : error while saving image from url", "Saving Image to Django, the correct way ?", "image saving in python (matplotlib)", "Python - Saving an image from a url", "Saving file python", "Python tkinter saving image name", "Django Image is not saving in database", "Saving output in python" ]
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Simple URL GET/POST function in Python
[ "making a simple GET/POST with url Encoding python", "Is this the right way to write a POST function in Python?", "how to test a url with POST-arguments?", "PHP post to url", "Django POST URL error", "post method not working", "How would I make a simple URL extracter in Python?", "SImple http post using python", "Simple list function in Python", "Simple function error", "How to get a file from curled url", "Django Post URL from Browser", "How to POST dictionary from python script to django url?", "How to get POST/GET data in python", "python simple function error?", "How can I unshorten a URL?", "Why use `url_for`?", "Python and POST data", "Make a POST in Python", "Where should I post my python code?", "Python - Get post data", "Simple Python Function", "What is the difference between HTTP Post URL with /post and without using Python requests module?", "How to replace url with link to that url in post with Flask?", "calling post method of one class from another class's post method", "POST with Python not working", "Python POST not working", "Get only URL from string - Python", "Django - Get POST data from other URL", "How do I url unencode in Python?" ]
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Finding intersection of two lists of strings in python
[ "Intersection of Two Lists Of Strings", "Find intersection of two nested lists?", "Getting intersection of two lists in python", "Finding intersection/difference between python lists", "Remove intersection from two lists in python", "Finding the intersection between two series in Pandas", "How to select elements in the intersection of two lists in Python", "Python -Intersection of multiple lists?", "Not in list error while using intersection", "Intersection of lists which are values in a dictionary", "Find intersection of large number of lists in python", "Intersection of variable number of lists", "Intersection of the lists in a list (list of lists) in python", "Python: intersection of lists/sets", "Sum intersection of two lists in Python", "In Python, how can I get the intersection of two lists, preserving the order of the intersection?", "Intersection of lists, look for on length", "Intersection between list and first element of list of lists", "Python: Intersection of two lists of lists", "How to find list intersection?", "Get intersection between two lists", "Python - Intersection of two lists of lists", "Finding the intersection between two series in Pandas using index", "Intersection in Python List", "Delete intersection between two lists", "Intersection between two list of strings python", "Getting Intersection Between 2 Lists in Python 3", "Python: Finding corresponding indices for an intersection of two lists", "How to get intersection of each element of two nested lists in python?", "Python 3.4 set intersection" ]
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Specify image filling color when rotating in python with PIL and setting expand argument to true
[ "Rotating a square in PIL", "How to get string data from a python PIL image object?", "pygame rotating a line", "Rotating images doesn't work", "filling desired color while rotating the image in scipy", "Trying to open image with PIL", "Filling an array from a list", "Filling up a list in python", "Function for rotating 2d objects?", "Rotating image increases its size?", "Rotating an object by the own axis?", "filling up a list python", "How to read an image name with PIL", "PIL thumbnail is rotating my image?", "Rotating logger in python", "Log Rotating into a Directory using Python", "Filling out a list with for loop", "How to switch image represantion in numpy without rotating the image", "Trouble rotating matrix with python", "Rotating list not working?", "Python logging is not rotating files", "python color not filling in properly", "rotating only a part of the image in python", "How do I stop PIL from swapping height/width when rotating an image 90°?", "How to preserve Image Quality when rotating with PIL", "Rotating values in a list [Python]", "Filebeat prevents python rotating log from rotating files in windows os", "PIL - Images not rotating", "Rotating an image in OpenCV", "Rotating line in Python,Tkinter" ]
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How do you execute multiple commands in a single session in Paramiko? (Python)
[ "Python paramiko module using multiple commands", "Paramiko: how to ensure data is received between commands", "What is a good replacement for paramiko in python 3 ? Or is there a port of paramiko for python 3?", "How to set password on first call for command from paramiko?", "How can i install paramiko module?", "Commands in Paramiko block due to script execution time", "Timeout in paramiko (python)", "Python, Paramiko: How to do a \"ssh -n user@host cmd\" using paramiko?", "Nested SSH session with Paramiko", "Using Paramiko for server", "Long-running ssh commands in python paramiko module (and how to end them)", "using python commands within paramiko", "How to check paramiko version installed?", "Does paramiko close ssh connection on a non-paramiko exception", "py2exe - paramiko, ImportError: No module named paramiko", "how to call function in paramiko", "How to use Pageant with Paramiko on Windows?", "How to use paramiko logging?", "Using paramiko on a android python App", "How to run multi-commands in root using python (paramiko)", "Paramiko and \"remote python\"", "Why can't paramiko run this command? (Python)", "How to get private key from paramiko in string?", "Execute remote commands as root using Python and paramiko", "Running interactive commands in Paramiko", "Paramiko connection issue", "Upload a file-like object with Paramiko?", "Can I enable TCPKeepAlive with paramiko?", "Python Paramiko log output of commands to a file", "how to use paramiko to execute remote commands" ]
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Reverse complement of DNA strand using Python
[ "Plot a graph of sequences and their reverse complement", "More pythonic way to find a complementary DNA strand", "Python bitarray reverse complement", "How to get fragments from a DNA sequence", "Complement of a regex in python", "Python in-place complement operator", "Two's Complement Binary in Python?", "DNA find all matching items from a list in a string (python 2.7)", "Python: Check if list item has a complement", "Convert binary string into two's complement", "two's complement of numbers in python", "2`s complement error in python", "Two's Complement algorithm in Python", "DNA sequence into feature", "Key error in dna complement", "Bitwise Not in Python disconsidering 2's complement", "Django: Getting complement of queryset", "Python - Most effective way to implement two's complement?", "transcribe mRNA code from DNA strand", "Getting complement of a character", "How to create a strand count?", "Two Complement's Python (with as least bits as possible)", "Two's complement of Hex number in Python", "how to find the complement of two dataframes", "How to reverse the exon numbers on the minus strand?", "Complement of list comprehension in python", "Python: How to encode DNA sequence using binary values?", "Algorithm to collapse forward and reverse complement of a DNA sequence in python?", "all combinations of DNA characters in a string of length 4", "Regex: Complement a group of characters (Python)" ]
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asyncio.ensure_future vs. BaseEventLoop.create_task vs. simple coroutine?
[ "What's the difference between loop.create_task, asyncio.async/ensure_future and Task?", "Python is vs ==", "multiprocessing vs multithreading vs asyncio in Python 3.4", "ensure_future not available in module asyncio", "Python - Return vs Print", "Python plyfile vs pymesh", "Python method vs function", "Difference between coroutine and future/task in Python 3.5?", "Python in vs ==. Which to Use in this case?", "Syncronous sleep into asyncio coroutine", "Why run_in_executor placed in BaseEventLoop?", "Why do we need the asyncio.coroutine decorator?", "`from ... import` vs `import .`", "Python asyncio: function or coroutine, which to use?", "how to add a coroutine to a running asyncio loop?", "Python if not == vs if !=", "Python If vs. While?", "Python: data vs. text?", "Running asyncio coroutine out of the event flow", "Python Asyncio blocked coroutine", "Can Python's asyncio.coroutine be thought of as a generator?", "Using try vs if in python", "Python asyncio: return vs set_result", "Asyncio.gather vs asyncio.wait", "What's the difference between () vs [] vs {}?", "Class vs. Type in Python", "List use of : vs. ::", "all vs and AND any vs or", "@asyncio.coroutine vs async def", "Python - Timer with asyncio/coroutine" ]
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Numpy: use reshape or newaxis to add dimensions
[ "np.reshape(x, (-1,1)) vs x[:, np.newaxis]", "How to reshape this array with numpy?", "Unshape and reshape a numpy array?", "Reshape array in numpy", "numpy newaxis does not always append new axis where I want to", "Can't reshape array with numpy", "How does numpy reshape works?", "Store multidimensional numpy array slice with newaxis to object", "How to remove dimensions in numpy array?", "How to reshape an array in NumPy?", "Can't reshape numpy array", "How to check dimensions of a numpy array?", "Numpy reshape preserving some dimensions", "Why \"None\" has the same effect as \"np.newaxis\"?", "reshape an array using python/numpy", "How do you reshape numpy array when the resulting 2 dimensions are unknown?", "Python: Can not reshape numpy.array", "Reshape 1-D Numpy Array to 2-D", "when to reshape numpy array like (3,)", "Numpy array dimensions", "Numpy reshape on view", "Reshape numpy array", "Using numpy.reshape in python", "How to reshape numpy image?", "How to reshape only last dimensions in numpy?", "numpy dimensions", "Python Numpy Reshape Error", "Numpy: Should I use newaxis or None?", "Reshape an array in NumPy", "Inserting newaxis at variable position in NumPy arrays" ]
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[ 0.7766927480697632, 0.7540194988250732, 0.7479028105735779, 0.7464108467102051, 0.750465989112854, 0.7551214694976807, 0.7299031615257263, 0.7689679861068726, 0.7635681629180908, 0.7622848749160767, 0.7427971363067627, 0.7230981588363647, 0.8131386041641235, 0.5909339785575867, 0.7409456968307495, 0.8061419129371643, 0.7336016893386841, 0.7605897188186646, 0.7292006015777588, 0.7471075654029846, 0.7680360078811646, 0.7315050959587097, 0.795296311378479, 0.7628053426742554, 0.8015334606170654, 0.7971166372299194, 0.7200146317481995, 0.7704156637191772, 0.7560727000236511, 0.7636361122131348 ]
[ 0.7388113737106323, 0.7120542526245117, 0.6993194818496704, 0.7084965705871582, 0.7101431488990784, 0.7073481678962708, 0.7032949328422546, 0.7163548469543457, 0.6996978521347046, 0.7220414876937866, 0.6952962875366211, 0.6520403623580933, 0.7909374237060547, 0.48759493231773376, 0.6965509653091431, 0.7653918266296387, 0.6760083436965942, 0.7131563425064087, 0.676817774772644, 0.6982146501541138, 0.7195778489112854, 0.6964322328567505, 0.7628262042999268, 0.7170587778091431, 0.7730852961540222, 0.7543297410011292, 0.6989030241966248, 0.7098094820976257, 0.7178574204444885, 0.7159720063209534 ]
[ 0.7858791947364807, 0.7354397773742676, 0.7454268932342529, 0.7361831665039062, 0.7469960451126099, 0.7504104375839233, 0.7328215837478638, 0.7702484130859375, 0.7629979848861694, 0.7591621279716492, 0.738418698310852, 0.7284889817237854, 0.7988903522491455, 0.6135740280151367, 0.7332125902175903, 0.7989673018455505, 0.7260122895240784, 0.746587872505188, 0.7205277681350708, 0.7395899295806885, 0.7548077702522278, 0.7201063632965088, 0.7817733883857727, 0.7527897953987122, 0.797931969165802, 0.7835153341293335, 0.7091234922409058, 0.7775942087173462, 0.7469875812530518, 0.7605149745941162 ]
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Get timer ticks in Python
[ "What is python equivalent of C#'s system.datetime.Ticks()?", "Timer Python 3,3", "Python - put several ticks in one place", "Using back-ticks in Python subprocess", "Timer in Python(simultany)", "Axis don't show the ticks I want", "Change the ticks of x-axis", "change X ticks in matplotlib plot", "Use DataFrame index as x-axis ticks", "change ticks number on a subplot", "Change x-axis ticks to custom strings", "How to set axis ticks", "Force matplotlib to use n ticks", "Set size of ticks in all subplots", "Two y-axes ticks for one set of data, aligning both sets of ticks", "reducing number of plot ticks", "Change ticks of y-axis in python", "How to create a timer in python", "Error when using Timer in python?", "How to create a timer on python", "Defining x ticks in pandas", "Using datetime as ticks in Matplotlib", "Format the x-axis ticks", "Convert date column in dataframe to ticks in python", "How do i change the number of ticks?", "ticks format of an axis in matplotlib", "How to hide ticks label in python but keep the ticks in place?", "How to convert ticks to datetime in Python?", "place labels between ticks", "How can I create a timer?" ]
[ 0.8869446516036987, 0.8763463497161865, 0.8980929851531982, 0.906014621257782, 0.9139995574951172, 0.8418074250221252, 0.8682562708854675, 0.9009732007980347, 0.8789792060852051, 0.890974223613739, 0.8799020051956177, 0.8904268741607666, 0.892147421836853, 0.8756783604621887, 0.8545807600021362, 0.8622909188270569, 0.914375901222229, 0.9378535151481628, 0.8987933397293091, 0.937126874923706, 0.8722190856933594, 0.9150551557540894, 0.8826583623886108, 0.9086290001869202, 0.8796273469924927, 0.8987958431243896, 0.8846251964569092, 0.9258214831352234, 0.8748846054077148, 0.879733681678772 ]
[ 0.881268322467804, 0.871625542640686, 0.8777419328689575, 0.891431450843811, 0.9087030291557312, 0.8426848649978638, 0.8672076463699341, 0.8925871253013611, 0.8677490949630737, 0.8579095602035522, 0.8695743680000305, 0.8769809007644653, 0.8937929272651672, 0.8635342121124268, 0.8515525460243225, 0.8669158220291138, 0.9063916802406311, 0.9181570410728455, 0.8797979354858398, 0.918238639831543, 0.8706845045089722, 0.9046136140823364, 0.8780053853988647, 0.8940870761871338, 0.8449761867523193, 0.895013689994812, 0.8823962211608887, 0.9147549867630005, 0.8649024963378906, 0.8478027582168579 ]
[ 0.8785110712051392, 0.8705246448516846, 0.8721553087234497, 0.8765922784805298, 0.8948413133621216, 0.8445596694946289, 0.837525486946106, 0.871910810470581, 0.856128454208374, 0.849297285079956, 0.8397994041442871, 0.8507199287414551, 0.8746224641799927, 0.8422471284866333, 0.8359066843986511, 0.8328884840011597, 0.8975253701210022, 0.902106523513794, 0.8805882334709167, 0.9013019800186157, 0.8576047420501709, 0.900914192199707, 0.8531628847122192, 0.9018310904502869, 0.8450632691383362, 0.880800724029541, 0.8629410266876221, 0.9006436467170715, 0.8539003133773804, 0.8449004292488098 ]
[ 0.8056224584579468, 0.7516571879386902, 0.7323131561279297, 0.7123758792877197, 0.7609196901321411, 0.6591612696647644, 0.6448901891708374, 0.641564130783081, 0.6288268566131592, 0.6022284030914307, 0.6419409513473511, 0.6518613696098328, 0.6236129403114319, 0.564070999622345, 0.5976239442825317, 0.6134566068649292, 0.6858752965927124, 0.7980539798736572, 0.726294755935669, 0.79448401927948, 0.6488081216812134, 0.7223166227340698, 0.6555290222167969, 0.710726261138916, 0.6587551236152649, 0.6790969371795654, 0.6790293455123901, 0.7817970514297485, 0.6615414619445801, 0.7258126139640808 ]
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[ 0.8020709753036499, 0.7310839891433716, 0.7194138169288635, 0.7152623534202576, 0.7476859092712402, 0.6649726033210754, 0.6404174566268921, 0.6462264060974121, 0.6341269016265869, 0.6042146682739258, 0.6441311836242676, 0.657825231552124, 0.6270473599433899, 0.5763895511627197, 0.607149064540863, 0.6247209310531616, 0.6877598166465759, 0.7864927053451538, 0.7181746959686279, 0.7801154851913452, 0.6630327701568604, 0.7212311029434204, 0.6589387655258179, 0.7196367979049683, 0.6702803373336792, 0.6873424053192139, 0.6872411966323853, 0.7824393510818481, 0.6574757099151611, 0.7259648442268372 ]
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Find duplicate items within a list of list of tuples Python
[ "Find duplicate values in list of tuples in Python", "How to use list.index() on a list with duplicate items?", "How to get list from list of list of tuples in python", "How can I delete items from my list of tuples?", "Python : Find Duplicate Items", "Remove duplicate items from list", "2 items from a list of tuples", "how to add list items to tuples inside list of tuples", "How can I extract duplicate tuples within a list in Python?", "Python - list of tuples from file", "List of tuples in Python", "List of Tuples to List of List of Tuples", "tuples for list - python", "remove duplicate items in list", "Python: Remove Duplicate Tuples from List if They are Exactly the Same Including Order Of Items", "Find string in a List of Tuples", "Python: How to remove all duplicate items from a list", "List with tuples in python", "How to remove duplicate items in multiple tuples of a dictionary?", "Delete duplicate tuples from list of list in Python", "Finding Duplicate element in list of tuples", "removing duplicate tuples in python", "Python list of tuples", "List of unique items in a list of tuples", "Python - How to remove duplicate tuples in a list of lists?", "python find index of the first duplicate within a list", "list of (string, some_list) tuples to list of [string, <items from some_list>] lists", "How to create a list within a list of duplicate files?", "Python list tuples", "Looking for algorithm to merge tuples containing duplicate fields, within list of tuples" ]
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[ 0.9807223081588745, 0.9085981845855713, 0.9270997643470764, 0.8811236619949341, 0.9221059083938599, 0.9113059639930725, 0.8923121094703674, 0.8966444134712219, 0.94800865650177, 0.8954252600669861, 0.9071460962295532, 0.8754397630691528, 0.8994463682174683, 0.9071733951568604, 0.9242995977401733, 0.9235432744026184, 0.9047108888626099, 0.9287542104721069, 0.9160147905349731, 0.9547725915908813, 0.9493153095245361, 0.9269583225250244, 0.9177109003067017, 0.9232742786407471, 0.9366426467895508, 0.9268312454223633, 0.885583758354187, 0.9021852016448975, 0.9244437217712402, 0.9094530940055847 ]
[ 0.9783687591552734, 0.9019159078598022, 0.9212207198143005, 0.8791297674179077, 0.9267687201499939, 0.8893298506736755, 0.8919042348861694, 0.9117766618728638, 0.9319225549697876, 0.9036179780960083, 0.9006986021995544, 0.8792065382003784, 0.9057536125183105, 0.8915113806724548, 0.9248549938201904, 0.9205907583236694, 0.9147416949272156, 0.9233800768852234, 0.9093620777130127, 0.9516693353652954, 0.9604111909866333, 0.9317081570625305, 0.9133111238479614, 0.9112918376922607, 0.9418668150901794, 0.9338504076004028, 0.8585823774337769, 0.891740083694458, 0.9050947427749634, 0.9070464372634888 ]
[ 0.945695698261261, 0.763404130935669, 0.7532034516334534, 0.7396465539932251, 0.8806651830673218, 0.7892135977745056, 0.7848765850067139, 0.7555409669876099, 0.8998659253120422, 0.6959189176559448, 0.7666678428649902, 0.732160747051239, 0.7242106199264526, 0.7944369316101074, 0.8604117631912231, 0.770356297492981, 0.8219451904296875, 0.723129153251648, 0.8570945262908936, 0.8661987781524658, 0.9262843728065491, 0.8591058254241943, 0.7571649551391602, 0.8550779819488525, 0.8877967000007629, 0.7902266979217529, 0.7151103615760803, 0.6944392323493958, 0.726349413394928, 0.8316234946250916 ]
[ 0.9314194917678833, 0.6947284936904907, 0.7064080238342285, 0.6666397452354431, 0.857107400894165, 0.7418886423110962, 0.7327046990394592, 0.688806414604187, 0.8679022789001465, 0.6208159923553467, 0.7283615469932556, 0.6710847616195679, 0.679728627204895, 0.7450919151306152, 0.8216270804405212, 0.700061559677124, 0.7791935801506042, 0.6759589910507202, 0.8126885294914246, 0.8410098552703857, 0.9122650623321533, 0.8279944658279419, 0.7257189750671387, 0.8130227327346802, 0.8617845177650452, 0.7276166677474976, 0.613466739654541, 0.6236950159072876, 0.6980836391448975, 0.7853825092315674 ]
[ 0.9348310232162476, 0.7558720111846924, 0.7448210716247559, 0.7337719202041626, 0.8682206869125366, 0.777654767036438, 0.7687090635299683, 0.7532393932342529, 0.8919638395309448, 0.6914891600608826, 0.746917188167572, 0.7261570692062378, 0.6916112899780273, 0.7807613611221313, 0.8452041745185852, 0.754127562046051, 0.805329442024231, 0.684999942779541, 0.853305995464325, 0.8580019474029541, 0.9157994985580444, 0.8471417427062988, 0.7277350425720215, 0.8424986600875854, 0.8783447742462158, 0.7795318365097046, 0.6976202726364136, 0.7164320945739746, 0.7006652355194092, 0.8354317545890808 ]
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Format numbers as currency in Python
[ "Currency formatting in Python", "Parse currency into numbers in Python", "python: how to convert currency to decimal?", "converting currency with $ to numbers in Python pandas", "Currency with 3 decimal digits in python", "Python how to format currency string", "Currency with specific format", "How can I convert currency symbol to code?", "A way to display currency?", "Python - Convert currency code to its sign", "How do I display floats as currency with negative sign before currency", "python locale set currency at end of string", "How do I convert a currency string to a floating point number in Python?", "Python Regular Expression to match specific currency format", "Extract currency amount from string in Python", "What is regex for currency symbol?", "Simple Python plot -currency and dates", "python locale currency and negative numbers", "How does one find the currency value in a string?", "Api to get currency code for country code/name", "Replace currency symbol by word in Python", "Simple currency conversion function", "How can I convert from string to currency when the format is not known?", "Python currency calculation with API JSON", "how to convert currency in python file", "Currency Conversion in django", "Problems trying to format currency with Python (Django)", "Currency conversion in pandas", "Python - Validate currency", "Print currency symbol properly" ]
[ 0.9614850282669067, 0.953247606754303, 0.9235720634460449, 0.9315822720527649, 0.926871657371521, 0.9611183404922485, 0.9100015163421631, 0.8982985615730286, 0.8920471668243408, 0.9235796928405762, 0.8854342699050903, 0.9132026433944702, 0.9274046421051025, 0.9242171049118042, 0.9245294332504272, 0.8739079236984253, 0.8989824652671814, 0.9164469242095947, 0.9001803398132324, 0.8782027363777161, 0.9177079200744629, 0.894023597240448, 0.8913928866386414, 0.9175832867622375, 0.9346500039100647, 0.8865494728088379, 0.9218595027923584, 0.8740493655204773, 0.9161090850830078, 0.9079235792160034 ]
[ 0.9527404308319092, 0.9376568794250488, 0.8963649272918701, 0.9220022559165955, 0.9082322120666504, 0.9288638234138489, 0.8879449367523193, 0.8507245779037476, 0.8613219857215881, 0.9045214056968689, 0.8536660075187683, 0.8879827857017517, 0.8920702934265137, 0.9100117087364197, 0.893641471862793, 0.8250465393066406, 0.8825732469558716, 0.8984864950180054, 0.8377244472503662, 0.8497359156608582, 0.8953753709793091, 0.8689225912094116, 0.8650487661361694, 0.8944759368896484, 0.9047159552574158, 0.8930530548095703, 0.911634087562561, 0.8783785700798035, 0.9015455842018127, 0.8775923848152161 ]
[ 0.9634968042373657, 0.9418810606002808, 0.891694188117981, 0.9263979196548462, 0.9078966379165649, 0.9478336572647095, 0.8890749216079712, 0.8405550718307495, 0.8604154586791992, 0.8994878530502319, 0.8664640188217163, 0.9001864194869995, 0.8866328001022339, 0.9104207754135132, 0.9028869271278381, 0.833223819732666, 0.8860189318656921, 0.904999852180481, 0.8440843224525452, 0.8560048341751099, 0.916153073310852, 0.8824278116226196, 0.8646995425224304, 0.9024048447608948, 0.9187896251678467, 0.9015809297561646, 0.9160186052322388, 0.8970463275909424, 0.9038553237915039, 0.8794623017311096 ]
[ 0.9231047034263611, 0.8911007642745972, 0.8513597249984741, 0.8243913650512695, 0.8374853134155273, 0.9094066023826599, 0.8303024768829346, 0.7562631964683533, 0.749782919883728, 0.8233227133750916, 0.7833580374717712, 0.7650905847549438, 0.8423420786857605, 0.7857551574707031, 0.809054970741272, 0.6894795894622803, 0.7245005369186401, 0.7832218408584595, 0.7333071231842041, 0.6921906471252441, 0.7914044857025146, 0.7847139835357666, 0.810858428478241, 0.7664247751235962, 0.8295688033103943, 0.7356225252151489, 0.8191360235214233, 0.7588204145431519, 0.780592143535614, 0.7733960151672363 ]
[ 0.912038266658783, 0.8516076803207397, 0.8177701830863953, 0.7568731307983398, 0.7911639213562012, 0.8933200836181641, 0.7683693766593933, 0.6746842861175537, 0.6611253619194031, 0.7634062767028809, 0.7090969085693359, 0.7206729650497437, 0.799161434173584, 0.74221271276474, 0.7415139079093933, 0.6061011552810669, 0.6724252700805664, 0.7327281832695007, 0.6459614038467407, 0.600380003452301, 0.7271838188171387, 0.6827194690704346, 0.7430221438407898, 0.7216013073921204, 0.801295280456543, 0.6683282256126404, 0.7992141842842102, 0.6941081285476685, 0.7136246562004089, 0.695179283618927 ]
[ 0.9145991802215576, 0.8784795999526978, 0.8467742204666138, 0.8200881481170654, 0.8096097111701965, 0.8988129496574402, 0.8218610286712646, 0.7632371783256531, 0.7548410892486572, 0.8007465600967407, 0.7708886861801147, 0.7554003000259399, 0.8312547206878662, 0.7793828248977661, 0.7953868508338928, 0.7019283175468445, 0.720298171043396, 0.7655021548271179, 0.7355644702911377, 0.7001894116401672, 0.7707934379577637, 0.7732465267181396, 0.8101845383644104, 0.7628918886184692, 0.8238672018051147, 0.7422972321510315, 0.8178881406784058, 0.7552840709686279, 0.7760710716247559, 0.7651371955871582 ]
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Offline heat map with map background
[ "Basemap Heat error / empty map", "Heat map of binary data using R or Python", "Heat Map of Spatial Data in Python", "heat map using matplotlib", "How to plot a function as a heat map in python?", "How to plot the heat map for a given function in Python", "How can I create a heat map based values (not frequencies)?", "Single column heat map in python", "Heat World Map with MatPlotLib", "Transition line in heat map - python", "Show \"Heat Map\" image with alpha values - Matplotlib / Python", "Label groups in a heat map", "Attempting to use a Real-Time Heat Map w/ MongoDB", "How can I use a pre-made color map for my heat map in matplotlib?", "Generating a heat map using 3D data in matplotlib", "Calculate RGB value for a range of values to create heat map", "Heat map of features and weights", "Don't show zero values on 2D heat map", "Heat map from data points", "Drawing heat map in python", "Fill polygon by heat map", "2D heat map using python and matplotlib", "Plot cross section through heat map", "python matplotlib making heat map out of tuples (x,y,value)", "Matplotlib heat map, vertical bottom label", "How to plot heat map with matplotlib?", "multi colored Heat Map error Python", "Heat map on unit sphere", "Heat Map Python", "Single row (or column) heat map in python" ]
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Animate quadratic grid changes (matshow)
[ "Animate matshow function in matplotlib", "quadratic formula function python", "Empty space with rectangular array and matshow", "How can I see the scale bar in matshow?", "matplotlib matshow labels", "Quadratic timecomplexity: why is the following code calculated this way?", "Matplotlib imshow/matshow display values on plot", "Custom colors in matplotlib when using matshow", "Inserting gaps between rows and/or columns with matshow", "'re-sort' / adapt ticks of matshow matrix plot", "Matplotlib animate over an image", "How to change colour of certain elements of a matrix in matplotlib matshow?", "Plot quadratic function / model with matplotlib", "Matplotlib's matshow not aligned with grid", "Matplotlib how to change figsize for matshow", "something like plt.matshow but with triangles", "matplotlib matshow: How to change each row height based on a scaling vector?", "Python Writing Quadratic Formula", "What is wrong with the following quadratic equation code?", "How animate multiple elements (matshow and line) at the same time with matplotlib?", "Extra space around a matshow/imshow plot after scaling", "Matplotlib matshow with many string labels", "Simple Matplotlib animate not working", "Can matshow display an image as imshow with PIL or another library?", "matshow with sparse matrices", "Heatmap with matplotlib using matshow", "Need Help for Quadratic formula on python", "How to animate matplotlib's drawgreatcircle function?", "python: changing the size of ax.matshow in matplotlib", "Python Script to animate a set of lines in a class" ]
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Pandas 0.20.2 to_sql() using MySQL
[ "Writing to MySQL database with pandas using SQLAlchemy, to_sql", "Python and MySQL", "Using Python with MySQL", "using Python and SQL", "Problem with Python and MySQL", "Mysql, python, SQL not executing", "Python MySQL data import", "Python and MySQL", "Pandas Insert data into MySQL", "MYSQL and python error", "Writing a Pandas Dataframe to MySQL", "How do I replace the current working MySQL database with a .sql file?", "SQL Syntax error while using python to import values into MySQL Database", "mySQL Error from Python Code", "pandas to sql seriver", "Python pandas to_sql 'append'", "Python 3.1 and MySQL?", "Write pandas dataframe to MySQL", "Output SQL as string from pandas.DataFrame.to_sql", "Python MySQL won't work", "Python Mysql Class error", "Use SQL 'like' in Pandas with input()", "Python and MySQL - which to use more?", "Python/MySQL mathmatic", "pandas DataFrame to_sql Python", "Python mysql error", "Write Pandas DataFrame in to MySQL database", "Not all parameters were used in the SQL statement (Python, MySQL)", "Multiqueries with python/mysql", "Python/MySQL error" ]
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How to run a Tcl Script in a folder in Python?
[ "Call different interpreter for Tcl in python", "Call Python functions from TCL script with arguments", "how to load from Python a dll file written in tcl", "Python Tkinter - Tcl Error", "Using matplotlib *without* TCL", "Logging output of TCL script into Tkinter text widget", "Running TCL code (on an existing TCL shell) from Python", "Need to run TCL script from python server", "Using Python functions in Tkinter.Tcl()", "How to run commands on same TCL shell using Python", "python and TCL: how to run scripts that need a console", "How to install tkinter or Tcl for python 2.7 on windows 7?", "How to call the python function from TCL script by passing an argument?", "Tcl_AsyncDelete error on Ubuntu in Python", "How to Call TCL Procedure using Python", "Using Numpy creates a tcl folder when using py2exe", "tcl Error in Tkinter", "Parsing TCL lists in Python", "Translate Tcl List to Python List", "Is it possible to define a Tcl procedure in Python?", "How do I get stdout from tcl into a python string variable when using tkinter?", "Change the version of Tcl when 'import tkinter' in Python", "Tcl error : invalid command name tcl_findLibrary", "TCL in Python: can't find package", "Supporting both Tcl and Python?", "Tcl Error in Tkinter \"Invalid command name\"", "TCL parsing a list of arguments to an external call", "Passing a Variable from Python script to tcl shell", "Running TCL code from Python", "WinCVS - Python - TCL" ]
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CParserError: Error tokenizing data
[ "Python Pandas Error tokenizing data", "Tokenizing complex input", "how to define tokenizing rules", "Tokenizing in Python", "tokenizing sentences and counting the number in a pandas data frame", "Python - tokenizing, replacing words", "tokenizing and parsing with python", "Error with pandas: pandas.io.common.CParserError: Error tokenizing data", "Token names and keywords when tokenizing Python source file (in Python)", "Tokenizing User Input in Python", "Tokenizing non English Text in Python", "Pandas - Tokenizing Data Expected 1 field saw multiple", "Question regarding regex and tokenizing", "Python: Tokenizing with phrases", "Error in Reading a csv file in pandas[CParserError: Error tokenizing data. C error: Buffer overflow caught - possible malformed input file.]", "Tokenizing first and last name as one token", "Error tokenizing data. C error: EOF following escape character", "regular expression for tokenizing a white-space-delimitated string", "Tokenizing with different delimiters", "Tokenizing unicode using nltk", "Pandas.read_csv error tokenizing data", "Parsing/Tokenizing a String Containing a SQL Command", "Tokenizing blocks of code in Python", "Tokenizing a string gives some words merged", "Error tokenizing data with Pandas from a tsv file", "CParserError: Error tokenizing data. when reading book-crossing dataset", "Tokenizing words into a new column in a pandas dataframe", "Tokenizing tweets in Python", "Tokenizing a string into a list of nested arrays with Python", "Why do I get several lists when tokenizing in python?" ]
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[ 0.9270018339157104, 0.8607317209243774, 0.8573387265205383, 0.8602347373962402, 0.8472340106964111, 0.8640087842941284, 0.8653419017791748, 0.9492365121841431, 0.8396377563476562, 0.8599535226821899, 0.8579460978507996, 0.8752508759498596, 0.8694262504577637, 0.8864849805831909, 0.8998655676841736, 0.8537505269050598, 0.9177602529525757, 0.8545234203338623, 0.8563449382781982, 0.8594746589660645, 0.9161727428436279, 0.8516269326210022, 0.8491243124008179, 0.8706921339035034, 0.9049800038337708, 0.9391197562217712, 0.8479411602020264, 0.854310154914856, 0.8562707901000977, 0.8600677847862244 ]
[ 0.7704858779907227, 0.7147052884101868, 0.6359824538230896, 0.6988012194633484, 0.6164588928222656, 0.634096622467041, 0.7076389789581299, 0.8808093667030334, 0.6882438659667969, 0.7097259759902954, 0.6228659749031067, 0.707948625087738, 0.6531281471252441, 0.6628796458244324, 0.7352792024612427, 0.615007758140564, 0.7688817977905273, 0.646784782409668, 0.6927457451820374, 0.6649333238601685, 0.7682033777236938, 0.691010057926178, 0.6633151769638062, 0.6663064360618591, 0.731866717338562, 0.8808766603469849, 0.6060060858726501, 0.6205633878707886, 0.6603564620018005, 0.6562693119049072 ]
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How to execute a Javascript function in python with selenium
[ "Running javascript in Selenium using Python", "Getting the return value of Javascript code in Selenium", "Can't turn off Javascript using Selenium", "How to use javascript with selenium python", "How to execute a JavaScript function defined in the website script with Selenium?", "Python Selenium: How to get text generated by JavaScript in input field", "Javascript with Selenium", "How can I execute JavaScript code from Python?", "click javascript button using selenium Python", "Call back Selenium from JavaScript", "How can I execute a Python script from Javascript?", "Unable to execute javascript in onclick using selenium", "Javascript execute python file", "How to click Javascript button using selenium and python?", "How can I execute JavaScript in Selenium and grab data?", "How do I get javascript results using selenium?", "Selenium and Javascript", "creating and executing a Javascript function with Selenium", "Unable to execute onClick javascript selenium - python", "Selenium Webdriver: execute_script can't execute custom methods and external javascript files", "Get JavaScript function call value using Selenium", "Upload image python selenium javascript", "What is the class of this javascript button for use with selenium?", "Execute Selenium Python Code in a For Loop", "Python Selenium Javascript Login", "Select Javascript created element in Selenium Python", "Pass value to a javascript function using Selenium in python", "How can I get html content written by JavaScript with Selenium/Python", "How to execute javascript after filling in a form using selenium?", "Click on a javascript link with selenium" ]
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pyspark import user defined module or .py files
[ "Pyspark import .py file not working", "Cannot create dataframe from list: pyspark", "Pyspark: global name is not defined", "How can I add a value to a row in pyspark?", "python, pyspark : get sum of a pyspark dataframe column values", "Split with pyspark", "User Defined Function breaks pyspark dataframe", "Input and Output of function in pyspark", "pyspark: Save schemaRDD as json file", "Is it possible to do a loop and case in Pyspark?", "Read range of files in pySpark", "Problems with pySpark Columnsimilarities", "How do I flattern a pySpark dataframe ?", "inner defined functions in pyspark", "pyspark returns a no module named error for a custom module", "PySpark sampleBy using multiple columns", "Count in pyspark", "countApproxDistinctByKey in PySpark", "How to run a script in PySpark", "Pyspark: Remove UTF null character from pyspark dataframe", "In Pyspark how to add all values in a list?", "pyspark: couldn't find the local file", "How to extract time from string in pyspark", "How do I get Python libraries in pyspark?", "Pyspark String and list of objects", "Function input() in pyspark", "How to read specific column in pyspark?", "PySpark LogisticRegressionWithLBFGS Import error", "Error while running PySpark command", "How to create a new column in pyspark?" ]
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[ 0.8400222063064575, 0.6551904678344727, 0.7190165519714355, 0.607930064201355, 0.5848503112792969, 0.6421366333961487, 0.7299097776412964, 0.6698920130729675, 0.7077088952064514, 0.6143969297409058, 0.6731625199317932, 0.627682626247406, 0.6868839263916016, 0.7110406756401062, 0.8141671419143677, 0.6121116876602173, 0.574541449546814, 0.5470856428146362, 0.7323432564735413, 0.5870367884635925, 0.5867012739181519, 0.7597815990447998, 0.5861542224884033, 0.8142446279525757, 0.6390362977981567, 0.6624544858932495, 0.6442592144012451, 0.697741687297821, 0.6381545662879944, 0.6401052474975586 ]
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Getting a legend in a seaborn FacetGrid heatmap plot
[ "Python - Seaborn: Modifying the heatmap legend", "Add Legend to Seaborn point plot", "How to make heatmap square in Seaborn FacetGrid", "How can I change the font size using seaborn FacetGrid?", "Seaborn/Matplotlib: how to access line values in FacetGrid?", "Seaborn FacetGrid keyerror", "how to set readable xticks in seaborn's facetgrid?", "How to change boxplot size in seaborn FacetGrid object", "Scatter plot over seaborn heatmap", "Seaborn Heatmap Key Words", "Seaborn - polar plot - how to change degrees in the FacetGrid", "How to move the legend in Seaborn FacetGrid outside of the plot?", "seaborn heatmap using pandas dataframe", "Cannot store full labels of my Seaborn (heatmap) plot", "Show dates on seaborn heatmap", "How to pass weights to a Seaborn FacetGrid", "How to put the legend on first subplot of seaborn.FacetGrid?", "HTTP Error 404: Not Found Seaborn FacetGrid", "Using seaborn heatmap", "How do I add a title to Seaborn Heatmap?", "FacetGrid Data Label in Seaborn", "generate a heatmap from a dataframe with python and seaborn", "Plotting time series using Seaborn FacetGrid", "Seaborn/Matplotlib - Only Showing Certain X Values in FacetGrid", "Pandas Seaborn Heatmap Error", "Add a legend to my heatmap plot", "Discrete legend in seaborn heatmap plot", "Python, Seaborn FacetGrid change titles", "Changing the axis of a seaborn heatmap", "Custom Annotation Seaborn Heatmap" ]
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[ 0.9144972562789917, 0.9167471528053284, 0.9275575876235962, 0.8659519553184509, 0.9005237817764282, 0.9042102098464966, 0.8760681748390198, 0.886928915977478, 0.9132970571517944, 0.8888117671012878, 0.9020631313323975, 0.9166287183761597, 0.9121932983398438, 0.8826078772544861, 0.9089981317520142, 0.9083107709884644, 0.9249736666679382, 0.8999223709106445, 0.9266160130500793, 0.897323727607727, 0.9193570613861084, 0.9073508977890015, 0.9244979023933411, 0.901543915271759, 0.8667824268341064, 0.9168286323547363, 0.9360941648483276, 0.8877166509628296, 0.9227375984191895, 0.9047800302505493 ]
[ 0.9114021062850952, 0.918810248374939, 0.9069873094558716, 0.8525538444519043, 0.8751230239868164, 0.8727169632911682, 0.8608529567718506, 0.873689591884613, 0.9123513102531433, 0.8773999810218811, 0.8868655562400818, 0.9146067500114441, 0.914361834526062, 0.8894193172454834, 0.8997336030006409, 0.8812747001647949, 0.9204790592193604, 0.8898568153381348, 0.9184094667434692, 0.877817690372467, 0.9117975831031799, 0.9123505353927612, 0.9136626720428467, 0.8766573667526245, 0.8667660355567932, 0.9139240384101868, 0.944823145866394, 0.8541797399520874, 0.9056878685951233, 0.8962647914886475 ]
[ 0.8137047290802002, 0.7993131875991821, 0.825027585029602, 0.7354509234428406, 0.7871512174606323, 0.7324148416519165, 0.7688327431678772, 0.7238667011260986, 0.7619689702987671, 0.7345497608184814, 0.7222038507461548, 0.8250054121017456, 0.7332760095596313, 0.7040358781814575, 0.6954236030578613, 0.7685259580612183, 0.8354191184043884, 0.7085832953453064, 0.7542271018028259, 0.7719163298606873, 0.7951235175132751, 0.7523784041404724, 0.7871472835540771, 0.7812361717224121, 0.7009324431419373, 0.839258074760437, 0.8480942845344543, 0.7412874698638916, 0.7230422496795654, 0.7659083008766174 ]
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[ 0.8071618676185608, 0.7870807647705078, 0.8141660690307617, 0.7265233993530273, 0.7784433960914612, 0.7293844223022461, 0.756064772605896, 0.7137135863304138, 0.7415156364440918, 0.72146075963974, 0.7158070802688599, 0.8164249658584595, 0.7148269414901733, 0.6960272192955017, 0.6833407878875732, 0.7635201215744019, 0.8243876099586487, 0.7101591229438782, 0.7308640480041504, 0.7604957818984985, 0.7835830450057983, 0.7451068758964539, 0.7721854448318481, 0.7687037587165833, 0.6855752468109131, 0.8319509029388428, 0.8375027179718018, 0.7285668849945068, 0.7096935510635376, 0.7549190521240234 ]
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How to parallelize list-comprehension calculations in Python?
[ "Parallelize this list comprehension in Python", "Parallelize pandas apply", "Proper way to parallelize this Python structure", "How to parallelize functions that return values in python?", "How do I parallelize a `map` function on a pandas Series object?", "Parallelize calling of object methods", "Parallelize for loops in python", "How to Parallelize my python code", "Parallelize a loop in python 2.4", "How to parallelize 2 loops in python", "How to parallelize this nested loop in python", "How to parallelize a for in python inside a class?", "how do I parallelize a simple python def with multiple argument", "How can I parallelize method calls on an array of objects?", "how to parallelize big for loops in python", "python, return calculations with %d", "Parallelize operations in python", "Parallelize requests threatment python", "Python how to parallelize loops", "parallelize recursion python", "How can you parallelize a regex search of one long string?", "how to parallelize a function in python", "Parallelize this nested for loop in python", "How can I parallelize this Python for-loop?", "How to parallelize the \"**for-loop**\" that run many executbles in order in python?", "Parallelize method calls to modify objects", "Need help to parallelize a loop in python", "Parallelize loop over numpy rows", "Parallelize for-loop in python", "How do I parallelize a simple Python loop?" ]
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[ 0.9403027892112732, 0.8616507053375244, 0.8893835544586182, 0.9200612902641296, 0.9007276892662048, 0.8677773475646973, 0.8999180793762207, 0.9156433343887329, 0.879401683807373, 0.9112796783447266, 0.908417820930481, 0.9078631401062012, 0.9002441167831421, 0.8963179588317871, 0.8967879414558411, 0.8403371572494507, 0.9010841846466064, 0.869929850101471, 0.9172444343566895, 0.8997753262519836, 0.876922607421875, 0.9122425317764282, 0.8873938322067261, 0.9095569252967834, 0.8982729911804199, 0.8547714948654175, 0.9078379273414612, 0.8804556727409363, 0.8969401121139526, 0.9146327972412109 ]
[ 0.9434762001037598, 0.8686275482177734, 0.8959872722625732, 0.9186384081840515, 0.8962813019752502, 0.8634748458862305, 0.9122136235237122, 0.9137401580810547, 0.8949252367019653, 0.9111288785934448, 0.9143638610839844, 0.9160864353179932, 0.8880952000617981, 0.8791691064834595, 0.9031810164451599, 0.8468098044395447, 0.9082002639770508, 0.8604736328125, 0.9121316075325012, 0.8914638757705688, 0.8731130361557007, 0.9110904932022095, 0.8989883661270142, 0.918671190738678, 0.8943367600440979, 0.8480907082557678, 0.9039540886878967, 0.8896806836128235, 0.9114465713500977, 0.9112920761108398 ]
[ 0.9357208013534546, 0.7465258836746216, 0.7873175740242004, 0.8190001845359802, 0.7717046141624451, 0.7084407806396484, 0.8419660329818726, 0.803420901298523, 0.7830584049224854, 0.7865558862686157, 0.8180219531059265, 0.7498236894607544, 0.760489821434021, 0.7309994697570801, 0.8277097940444946, 0.5661195516586304, 0.8223639726638794, 0.7042790651321411, 0.8193193078041077, 0.8259797096252441, 0.7484067678451538, 0.7994891405105591, 0.8178038597106934, 0.845310628414154, 0.8003928661346436, 0.6837718486785889, 0.7948741912841797, 0.7574515342712402, 0.8240657448768616, 0.813377857208252 ]
[ 0.9236146211624146, 0.6787956953048706, 0.7364657521247864, 0.75922030210495, 0.6848498582839966, 0.6084455847740173, 0.7964141368865967, 0.760802149772644, 0.7421229481697083, 0.7424247860908508, 0.7631652355194092, 0.6748577952384949, 0.687084436416626, 0.6294803023338318, 0.7801927924156189, 0.49071937799453735, 0.7746046185493469, 0.6506714820861816, 0.783238410949707, 0.7863596677780151, 0.6540346145629883, 0.7534754872322083, 0.7567964792251587, 0.7968875169754028, 0.7398964166641235, 0.5843995809555054, 0.7539117336273193, 0.6793010830879211, 0.7784785628318787, 0.7608885765075684 ]
[ 0.9171082973480225, 0.757621169090271, 0.7744652628898621, 0.8170449137687683, 0.7756633162498474, 0.7239547967910767, 0.8319799900054932, 0.7929035425186157, 0.7765777111053467, 0.7810376286506653, 0.7988414764404297, 0.7486751675605774, 0.7513368129730225, 0.7457175850868225, 0.8148723840713501, 0.587277889251709, 0.8086783289909363, 0.702322244644165, 0.8121809959411621, 0.8219144344329834, 0.7509863376617432, 0.7934494614601135, 0.7980039119720459, 0.8365353345870972, 0.7946832180023193, 0.707192063331604, 0.7778058052062988, 0.7543948888778687, 0.8168153166770935, 0.8129576444625854 ]
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Cannot import scipy though already installed
[ "Can't install scipy", "Installed Python libraries scipy and matplotlib but can't import", "Save scipy object to file", "Python - Scipy error", "Error when testing SciPy", "Scipy: Difference between ellipk and ellipkm1", "Python (scipy) import time from text file", "Scipy won't import in python program", "SciPy medfilt wrong result", "C# Nmath to Python SciPy", "Install scipy for both python 2 and python 3", "Scipy gmean with missing values", "What is `scipy.i`?", "Scikit install asks for Scipy even though it is installed", "Meijer G-function in Python and scipy", "How to start using `scipy`", "I want to use NumPy/SciPy. Should I use Python 2 or 3?", "Python SciPy giving error with pip install scipy", "How to import Scipy and Numpy in Python?", "Inatalling numpy and scipy", "How to check the version of scipy", "No module named scipy.stats - Why despite scipy being installed", "Pandas installation instalsl numpy and scipy too, which I have already installed from source", "Python scipy not installed", "how to install scipy for python?", "Error when trying to install scipy", "Can't start scipy's solve_bvp", "Numpy, Scipy and matplotlib cannot be installed in python 3", "How to run a specific scipy test", "Python Scipy Error" ]
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[ 0.9404414892196655, 0.9271565675735474, 0.8438403606414795, 0.8852107524871826, 0.8942912817001343, 0.8166486024856567, 0.84792160987854, 0.9296486973762512, 0.8652222752571106, 0.8396033048629761, 0.889792799949646, 0.865753173828125, 0.8605507612228394, 0.894821047782898, 0.8304992914199829, 0.8647705316543579, 0.836689293384552, 0.9117448329925537, 0.8825531005859375, 0.8605558276176453, 0.852882981300354, 0.9042059183120728, 0.8752679228782654, 0.9374610781669617, 0.8791375160217285, 0.9117251634597778, 0.8905061483383179, 0.8928506374359131, 0.8494192361831665, 0.8651126027107239 ]
[ 0.9275280237197876, 0.9240081310272217, 0.8544175028800964, 0.8773865699768066, 0.9023781418800354, 0.8121272921562195, 0.8639031648635864, 0.9295625686645508, 0.8693965673446655, 0.8561105132102966, 0.884948194026947, 0.8622487783432007, 0.8642266392707825, 0.913997232913971, 0.838788628578186, 0.8724229335784912, 0.8339716792106628, 0.9126111268997192, 0.8788302540779114, 0.8921384811401367, 0.8633443713188171, 0.9026108980178833, 0.8751829862594604, 0.9241094589233398, 0.8853693604469299, 0.9134454727172852, 0.8992048501968384, 0.8848010301589966, 0.8633240461349487, 0.8668550252914429 ]
[ 0.8779531717300415, 0.863385796546936, 0.6641284227371216, 0.7390208840370178, 0.740310549736023, 0.5525381565093994, 0.6163923144340515, 0.8592331409454346, 0.5457960367202759, 0.5911823511123657, 0.8183056116104126, 0.547881007194519, 0.6581670045852661, 0.8423901796340942, 0.5373512506484985, 0.7884767055511475, 0.6615751385688782, 0.8144559860229492, 0.8270898461341858, 0.7658309936523438, 0.7303419709205627, 0.8173302412033081, 0.7770718336105347, 0.8633740544319153, 0.845529317855835, 0.8614025115966797, 0.6886903047561646, 0.7792922258377075, 0.6318976879119873, 0.7518584728240967 ]
[ 0.8532147407531738, 0.8516843318939209, 0.5993525385856628, 0.7109344005584717, 0.6824394464492798, 0.4626358151435852, 0.5844867825508118, 0.8476072549819946, 0.4895945191383362, 0.5175360441207886, 0.7642464637756348, 0.46261075139045715, 0.5925061702728271, 0.7879092693328857, 0.46207329630851746, 0.7485138177871704, 0.6141475439071655, 0.785555362701416, 0.8132742047309875, 0.7022535800933838, 0.6845166087150574, 0.7614424228668213, 0.7168605923652649, 0.8324869871139526, 0.8205739259719849, 0.8370988965034485, 0.6251273155212402, 0.7219147682189941, 0.5680748224258423, 0.7140164971351624 ]
[ 0.8658573031425476, 0.8560850620269775, 0.6574304103851318, 0.705769419670105, 0.7289849519729614, 0.5595522522926331, 0.6274490356445312, 0.8496078252792358, 0.5514801740646362, 0.5991895198822021, 0.8139834403991699, 0.5449228882789612, 0.6678980588912964, 0.8385905027389526, 0.5370181798934937, 0.786898136138916, 0.6756041049957275, 0.80037522315979, 0.8327369093894958, 0.7563581466674805, 0.7248353958129883, 0.8010311722755432, 0.783654510974884, 0.8534631729125977, 0.8471755385398865, 0.8460651636123657, 0.6767507791519165, 0.7709933519363403, 0.6345146894454956, 0.72983717918396 ]
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How to check Django version
[ "Get the version of Django for application", "How to know what django version i use? is it 1.0, 1.1, or 1.2?", "Django FormPreview - What is it for?", "Django ForeignModels", "Django with VirtualEnvironments", "Django on Strato webspace", "Django DisallowedHost error", "ZipExtFile to Django File", "Point Django at different Python version", "Django: DisallowedHost in the new version of Django", "Multiproccessing with django", "Django webrequests", "Daterangepicker for Django", "Is twistedweb with django recommeneded", "Django - ResolutionError and DistributionError", "Should I check the Python version?", "What do you like about Django?", "Which version of Django should I be using?", "Python and Django version issue", "Django NoReverMatch at /", "How do I update my version of Django?", "What is the Django way to do this?", "ManyToOneField in Django", "Django running wrong version", "Django/Python version of Premailer?", "Django: inlineformsets", "Django get domain.com/username", "NoMigrations error in Django", "Django LowerCaseCharField", "What Python 3 version for my Django project" ]
[ 0.9279959201812744, 0.9188982248306274, 0.8671660423278809, 0.8618438243865967, 0.8769793510437012, 0.8578671216964722, 0.8773407936096191, 0.8703049421310425, 0.89799964427948, 0.8705095648765564, 0.8678478002548218, 0.8842355012893677, 0.8783740997314453, 0.8565390110015869, 0.8648300170898438, 0.9092041254043579, 0.8272360563278198, 0.9167588949203491, 0.908664345741272, 0.8516634106636047, 0.9245826005935669, 0.8878496885299683, 0.8541156053543091, 0.9162399172782898, 0.8635822534561157, 0.8430172204971313, 0.8699367046356201, 0.8615251183509827, 0.8546353578567505, 0.8928250074386597 ]
[ 0.924384355545044, 0.9042389392852783, 0.8590743541717529, 0.8491458296775818, 0.8678939342498779, 0.8544951677322388, 0.8712339401245117, 0.8498702049255371, 0.9160580635070801, 0.861279308795929, 0.8574305772781372, 0.8688648343086243, 0.8578707575798035, 0.8319854736328125, 0.860573410987854, 0.9028799533843994, 0.8321852684020996, 0.9012203216552734, 0.9150950908660889, 0.8422619104385376, 0.9137444496154785, 0.8767714500427246, 0.850996732711792, 0.9083390235900879, 0.8568572998046875, 0.846407949924469, 0.8690808415412903, 0.876074492931366, 0.8503143787384033, 0.9037185907363892 ]
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[ 0.8863368630409241, 0.8756906986236572, 0.5690017938613892, 0.5204905271530151, 0.5880316495895386, 0.6134136915206909, 0.5834280848503113, 0.5791687965393066, 0.817684531211853, 0.6378585696220398, 0.574822187423706, 0.6025161743164062, 0.5977585315704346, 0.5712657570838928, 0.6179378032684326, 0.7957857251167297, 0.518333911895752, 0.8264822959899902, 0.8001704216003418, 0.6107989549636841, 0.8343868255615234, 0.6452001929283142, 0.49027779698371887, 0.8061519265174866, 0.6278954744338989, 0.5022786855697632, 0.5923058986663818, 0.5572674870491028, 0.5586476922035217, 0.7911812663078308 ]
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Creating the Cartesian Product of a set of Vectors in Python?
[ "Get the cartesian product of a series of lists?", "Power set and Cartesian Product of a set python", "Cartesian product of different size", "series containing cartesian product into table", "Cartesian product of a list of sets in python", "Cartesian product of a pandas dataframe with itself", "Why doesnt my cartesian product function work?", "How to set index to an existing dataframe in the form of cartesian product?", "Cartesian product generic function in Python", "Cartesian Product in Tensorflow", "reverse numpy reference cartesian product", "Cartesian product of a dictionary of lists", "How to iterate in a cartesian product of lists", "Cartesian Product for two dictionaries python", "Cartesian product of dictionaries", "Creating a dataframe from the full cartesian product of a dictionary", "Python cartesian product and conditions?", "Cartesian product of two 2d arrays", "Compute cartesian product of two lists without elements at same index", "Cartesian product using python without itertools", "Python cartesian product in nested dict", "How to do a Cartesian product for words in a list using Python", "python: single-line cartesian product for-loop", "How to pass a matrix as a list of vectors in a cartesian product in python", "cartesian product in pandas", "Python Cartesian Product", "How to index a Cartesian product", "Cartesian product giving a dictionary", "Spark cartesian product", "python: how can I achieve a cartesian product of all the lists in a list?" ]
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Reportlab generate multiple tables
[ "ReportLab LayoutError: too large on page", "Generating a pdf of long tables with reportlab", "how to use reportlab with google app engine", "How to make a simple table in ReportLab", "How can I create a table with reportlab using objects in an existing list", "Reportlab new line in a long line", "Reportlab Table split", "How do I find out what version of reportlab I'm running?", "Python and ReportLab: add a string at the end of every page", "Reportlab: header with data from page", "Reportlab: FrameBreak() creating a new page?", "ReportLab - error when creating a table", "python wrap text and reportlab", "Multiple pages using Reportlab - Django", "reportlab borderRadius is not working", "Python Reportlab Page Break", "Wrap text in a table reportlab?", "Installation: Reportlab: \"ImportError: No module named reportlab.lib\"", "Reportlab error: 'Table' object has no attribute '_colpositions'", "Reportlab Wrapper", "how to know the end of a frame to create a new one reportlab", "Python pip install reportlab error", "Reportlab Error after page break", "Generate pdf with reportlab", "Generate PDF from HTML using Django and Reportlab", "Parameter to reportlab header using Django", "Add figure and tables list to Table of Content using reportlab", "reportlab different next page", "Python Reportlab multiple lines", "setting width to textobject in reportlab" ]
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[ 0.5743695497512817, 0.7902244329452515, 0.6242733001708984, 0.7470303773880005, 0.7475857734680176, 0.5690592527389526, 0.7515172958374023, 0.5320242047309875, 0.566721498966217, 0.6077560782432556, 0.6050504446029663, 0.7763763666152954, 0.5503316521644592, 0.7191518545150757, 0.4936068654060364, 0.609538197517395, 0.6648279428482056, 0.4743134379386902, 0.6935104727745056, 0.6861631870269775, 0.5332191586494446, 0.49342381954193115, 0.6083844900131226, 0.7342937588691711, 0.6306918859481812, 0.5676220655441284, 0.6972032785415649, 0.657148003578186, 0.6617387533187866, 0.5341907739639282 ]
[ 0.6225045919418335, 0.7983657121658325, 0.6692360639572144, 0.7620518207550049, 0.7822148203849792, 0.6296179890632629, 0.7823518514633179, 0.5899882316589355, 0.6440932750701904, 0.6678258180618286, 0.6699365377426147, 0.785006046295166, 0.6214110851287842, 0.7762024402618408, 0.5735104084014893, 0.6608194708824158, 0.7041789889335632, 0.5673298835754395, 0.7286686897277832, 0.7181670665740967, 0.6071816086769104, 0.5621135234832764, 0.6593962907791138, 0.7682536840438843, 0.6815993785858154, 0.6410083770751953, 0.7245951890945435, 0.7123980522155762, 0.7316780686378479, 0.5961776375770569 ]
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How to convert specific CSV format to JSON using Python
[ "How to convert CSV file to multiline JSON?", "converting a csv file to json + python with specific json format", "I can't convert a JSON format file into a python format file", "how to convert a string of json into a table format in csv using python code or libraries?", "NVD - JSON to CSV with Python", "csv to json in python", "Convert CSV to JSON (in specific format) using Python", "From JSON file to CSV file", "Python convert JSON to CSV", "How to read data from json file and convert it to csv using pandas?", "JSON to CSV in python convert issue", "Convert CSV to specific format using JavaScript?", "Convert file from one CSV format to another", "CSV to JSON using python 3", "csv to json in specific format python", "How to Convert the text into Json Format using Python", "Parsing through CSV file to convert to JSON format file", "How to print data into a specific json format in python", "Python json to CSV", "how to convert a list of object to json format in python", "How to convert text to json format", "JSON to CSV for Python", "CSV file to JSON file in Python", "CSV to JSON with Python", "Convert JSON to CSV with Python 3", "Convert text file into csv format", "Convert JSON to CSV using Pandas", "CSV to JSON with Specific format", "How to convert a csv file, that has array data, into a json file?", "Convert following data to JSON format in python" ]
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[ 0.9297498464584351, 0.968380331993103, 0.911992073059082, 0.9196364283561707, 0.9306037425994873, 0.940945565700531, 0.9809489846229553, 0.931380569934845, 0.9687915444374084, 0.9279152750968933, 0.9550541639328003, 0.9115556478500366, 0.8898385763168335, 0.9447042346000671, 0.9643561244010925, 0.9430376291275024, 0.9437441229820251, 0.9446510672569275, 0.9557638764381409, 0.9205787181854248, 0.9123073220252991, 0.9593849182128906, 0.9607174396514893, 0.9648106694221497, 0.9582461714744568, 0.883553147315979, 0.9478555917739868, 0.9523950219154358, 0.9184784889221191, 0.9288970828056335 ]
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how to install PIL on python shell on OS X 10.9.5
[ "How to install PIL to Python 3.5 on a mac?", "PIL install with jpeg", "Cannot import PIL Image", "How can I install PIL on mac os x 10.7.2 Lion", "How to get string data from a python PIL image object?", "Getting an error when install PIL", "Can't Save PIL Image From Shell Command (PHP)", "Python PIL with variable", "python image size function in PIL", "Trying to open image with PIL", "Is it possible to use variables in PIL (python)?", "Can't get PIL to work on Mac OS X", "How to get the format of image with PIL?", "Error by sudo pip install pil on Mac 10.9.1", "how to install PIL for python3?", "How can I save an image with PIL?", "How to read an image name with PIL", "Trying to Print With Python (and PIL)", "Python: Colorbands in the PIL-Module", "Install PIL 1.1.7 failed on python 2.7.10 on MAC OS X", "Django - how to Install Python Image Library (PIL)", "About \"PIL\" error, NameError: name 'PIL' is not defined", "Can't install PIL after Mac OS X 10.9", "from PIL import Image - ImportError: No module named PIL", "How to convert a PIL Image into a numpy array?", "Get error when try to install PIL", "Can someone help me with my PIL function?", "Multicolored text with PIL", "PIL attribute error", "Importing PIL, more specifically Image from PIL, isn't working" ]
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Custom post install script not running with pip
[ "Run custom task when call `pip install`", "Install python module on synology - pip error", "Using pip to install a program while running", "how to install python pip on python 2.7", "install python project using PIP", "How to install pip with Python 3?", "Pip help install", "How do I install pip in python 2.7?", "How to install pyclamd with pip", "vollib issue after pip install", "Pip install error. Setuptools.command not found", "Python 3.4 pip install", "Pip install pynrrd", "How to use/install pip", "How to install pip for python 2.6?", "Pip install error", "Python pip install error", "pip install pyemd error?", "Error when install pip", "Error: pip install pycapnp", "Python- pip install googleplaces", "Issue with pip install", "What's the difference between \"pip install\" and \"python -m pip install\"?", "how do i install pip on python 3.5.2?", "i am getting error while i run pip install pokitdok?", "I can't install 'pip' for python", "Can't install module python pip", "Error with pip install", "Install Python 3.5.2, but pip for Python 2.6", "PIP install and Python path" ]
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How to pass a list as a function's arguments
[ "Pass elements of a list as arguments to a function in python", "function arguments in python", "When I create an object, what do I pass as the arguments?", "Arguments in Python", "list_display with a function, how to pass arguments?", "Function with arguments from other function", "Time function with arguments in python", "How to pass multiple arguments into function", "Python function sort and manipulate based on Arguments", "Python 3: How to call function from another file and pass arguments to that function ?", "run a python function with arguments", "pd.apply(pd.Series.interpolate) with more arguments", "How to pass list elements as arguments", "python function arguments", "Pass list as one of function's arguments", "Python asks for 3 arguments when I pass 2 and 2 arguments when I pass 3", "How to pass a list and other values as command line arguments?", "Python - change string into arguments and pass it to a function", "How do I pass arguments to after_request?", "function with arguments in python", "python: pass multiple arguments from one function to another", "Pass all arguments of a function to another function", "Python: How to pass arguments to the __code__ of a function?", "How can I pass arguments inside that method?", "Python arguments in function", "How to pass arguments to a custom class in python?", "Does Python have a way to pass arguments through a function", "How to promulgate a list of arguments for a python function?", "Function with arguments autostarts", "List as Function Arguments in Python" ]
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How to disable authentication altogether for Django admin
[ "Django Admin without Authentication", "FIWARE Authentication in Python", "Django Admin - Disable the 'Add' action for a specific model", "Disable choice list in Django admin, only for editing", "Separate Admin/User authentication system in Django", "SSHCommandClientEndpoint. How to disable verifyHostKey?", "Disable link to edit object in django's admin (display list only)?", "Python authentication", "Using the django authentication system", "Authentication in django", "disable a block in django", "How can I require authentication for anything under /admin path?", "Disable DSUSP in Python", "Yggdrasil authentication with Python", "User Authentication in Django", "make django model field read only or disable in admin while saving the object first time", "Django: Permalinks for Admin", "Django admin authentication failure", "Django admin change list view disable sorting for some fields", "Using an alternative authentication backend for Django admin", "User authentication in Django", "How does authentication in python work?", "Django: how to disable locale in admin app", "How can I disable the Django Celery admin modules?", "How disable django admin pagination?", "How does Django Admin Authentication work?", "Python Authentication", "how to use user authentication in django", "Django's admin does not login after custom authentication", "Using Django Admin Page to Add Users with other AUTHENTICATION_BACKEND" ]
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Unable to login to admin interface in Django Nonrel
[ "Can't login to Django /admin interface", "django-nonrel for AppEngine on Windows", "Django Nonrel Groups Issue", "Library for OAUTH2.0 provider with Django-nonrel on Google AppEngine", "unable to access /admin/ in Django app", "Error in django-nonrel settings TypeError: __init__() takes exactly 1 argument (2 given)", "'Not connected to the database' on Django admin site with MongoDB through django-nonrel", "Django Admin - login", "Django lookup types (\"iexact\", \"icontains\", \"month\", etc.) not working in Django nonrel (using dbindexer)", "Can I use django-nonrel and a custom auth backend?", "getting \"database error\" (using django, djangotoolbox, mongodbengine of Django-nonrel)", "Exception AttributeError message when using manage.py in django-nonrel for Google app engine", "Saving entities in django-nonrel with google appengine", "Django nonrel Query confusion", "Django-Nonrel(mongo-backend):Model instance modification tracking", "Want to split user name in django-nonrel", "What SHOULDN'T Django's admin interface be used for?", "module import error on django-nonrel using app engine sdk", "Is it possible to get an object by its primary key in django-nonrel / Google App Engine?", "django-nonrel specify MongoDB BSON element name to model attributes", "Django nonrel development server doesn't import amazon.api", "How to use Django-nonrel's MongoDB mapreduce?", "Django (nonrel), App engine and asynchronous database calls", "Do Django-nonrel and Django-SocialAuth play together nicely?", "Django: admin login with parameter", "Django-nonrel broke after installing new version of Google App Engine SDK", "Broken pipe error in Django Nonrel when loading localhost", "Installing Python 2.5 on Mac 10.6, for GAE/Django-nonrel (and i'm a new mac user)", "Django signals on GAE with django-nonrel", "Django admin login" ]
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Best practices for adding .gitignore file for Python projects?
[ "Openshift django should i add setup.py install generated files to gitignore?", "what should be in gitignore, and how do I put env folder to gitignore and is my folder structure correct?", "Recommended way to handle exceptions?", "Recommended way to do a basic search", "How to import functions from other projects in Python?", "Recommended Django setup?", "What is the recommended way to run a script X times in a row (one at a time)", "Recommended way to install a simple Py library using Make", "Is Python good for highload web projects?", ".gitignore style fnmatch()", "Should I be adding the Django migration files in the .gitignore file?", "numpy.i is missing. What is the recommended way to install it?", "Recommended way to initialize variable in if block", "How to exclude gitignore files from cx_Freeze distribution", "Python, how to implement something like .gitignore behavior", "Working with different projects in eclipse", "Are multiple classes in a single file recommended?", "Python: What is the recommended way to set configuration settings for a module when you import it?", "What is the difference between \"py[cod]\" and \"pyc\" in .gitignore notation?", "Python package contains both MANIFEST and MANIFEST.in - do I gitignore MANIFEST?", "Project structure for python projects", ".gitignore not ignoring the files Django", "I cannot ignore pycache and db.sqlite on Django even though it refers them at .gitignore", "How can I exclude files in my .gitignore when packaging a Python egg?", "How to use Travis CI with some files in gitignore?", "Recommended Django Deployment", "Visual Studio Code not honoring .gitignore in git tab", "Including .gitignore in setup? - Error: doesn't exist or not a regular file", "What type files should be put into .gitignore file in Django project", "Recommended way to represent my data with numpy" ]
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Document topical distribution in Gensim LDA
[ "gensim LDA module : Always getting uniform topical distribution while predicting", "Understanding LDA implementation using gensim", "how to remove numbers and symbols from output of LDA while using Gensim package?", "How can I run this gensim code? Do I need some text files?", "Passing Term-Document Matrix to Gensim LDA Model", "How to predict the topic of a new query using a trained LDA model using gensim?", "How to get a complete topic distribution for a document using gensim LDA?", "Getting error while using gensim model in python", "Can we use a self made corpus for training for LDA using gensim?", "python IndexError using gensim for LDA Topic Modeling", "How to monitor convergence of Gensim LDA model?", "Topic distribution: How do we see which document belong to which topic after doing LDA in python", "Printing topic distribution after LDA using gensim", "Fails to fix the seed value in LDA model in gensim", "LDA gensim implementation, distance between two different docs", "gensim file not found error", "Python, LDA : How to get the id of keywords instead of the keywords themselves with Gensim?", "Use scikit-learn TfIdf with gensim LDA", "infer topic distributions on new, unseen documents with LDA and Gensim", "Index Error when running LDA in gensim", "Gensim LDA - Default number of iterations", "Gensim get topic for a document (seen document)", "Getting topic-word distribution from LDA in scikit learn", "How to print out the full distribution of words in an LDA topic in gensim?", "Gensim: How to save LDA model's produced topics to a readable format (csv,txt,etc)?", "Python Gensim: how to calculate document similarity using the LDA model?", "Can't install gensim", "LDA for Html Documents in Genism", "Which gensim corpora class should I use to load an LDA transformed corpus? - Python", "How to install gensim" ]
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SQLAlchemy upsert
[ "SQLAlchemy - performing a bulk upsert (if exists, update, else insert) in postgresql", "How to make SQLAlchemy insert work with Postgres multiprocessing-proof upsert trigger?", "find_and_modify with upsert using Python-EVE", "Mongo DB, Python : Upsert for every 10000 records.", "How to use PostgreSQL's \"INSERT...ON CONFLICT\" (UPSERT) feature with flask_sqlalchemy?", "pymongo- upsert not able to perform insertion with $set operation", "Mongoengine update_one+upsert vs. deprecated get_or_create", "pandas DataFrame concat / update (\"upsert\")?", "Mongodb: Getting upsert result in pymongo", "Bulk upsert not working pymongo", "MongoDB - Upsert with increment", "How can I do this in SQLAlchemy?", "How to use bulk upsert in a loop?", "mongoengine bulk upsert a batch of record?", "Why does upsert a record using update_one raise ValueError?", "Using OR in SQLAlchemy", "sqlalchemy: ObjectdereferencedError", "pymongo update_one(), upsert=True without using $ operators", "PyMongo upsert throws \"upsert must be an instance of bool\" error", "Upsert and Multi flag in pymongo", "MongoDB and PyMongo: Upsert multiple values", "Bulk upsert with SQLAlchemy", "Can mongodb \"upsert\" in this way?", "Using pysqlcipher with SqlAlchemy?", "SQLAlchemy autocommiting?", "How to do a proper upsert using sqlalchemy on postgresql?", "Mongodb update with upsert fails", "How to TABLESAMPLE with SQLAlchemy?", "SQLAlchemy PostgreSQL UPSERT array of values raises UnsupportedCompilationError", "how to use python Elasticsearch client upsert api" ]
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Weird timezone issue with pytz
[ "Python pytz timezone function returns a timezone that is off by 9 minutes", "pytz.timezone shows weird results for Asia/Calcutta?", "pytz - Converting UTC and timezone to local time", "Python pytz timezone conversion returns values that differ from timezone offset for different dates", "Issue with python/pytz Converting from local timezone to UTC then back", "Using pytz to convert from a known timezone to local", "pytz timezone conversion performance", "Timezone Information Missing in pytz?", "How can I remove a pytz timezone from a datetime object?", "Datetime Timezone conversion using pytz", "Weird behavior on when replacing timezone using pytz timezones vs timezone strings", "Timezone issue with pyExchange", "python incorrect timezone conversion using pytz", "pytz timezone tags to adjust date printed in templates", "Create New Timezone in pytz", "Python pytz Converting a timestamp (string format) from one timezone to another", "pandas, pytz - simple timezone convert", "Pytz Python Timezone Conversion Not Working", "Python timezone issue?", "Get locale from timezone -python, django, pytz", "when does `datetime.now(pytz_timezone)` fail?", "First call to pytz.timezone is slow in virtualenv", "Is there a simplified pytz common_timezone list?", "How to get system timezone setting and pass it to pytz.timezone?", "python timezone conversion issues using pytz", "Python datetime not including DST when using pytz timezone", "Get country code for timezone using pytz?", "Python pytz timezone gives just same as UTC time", "python: pytz package installation issue: ImportError: No module named pytz", "Python: Weird behavior with signs of pytz timezones" ]
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TensorFlow MNIST example not running with fully_connected_feed.py
[ "import input_data MNIST tensorflow not working", "TensorFlow select Labels from mnist dataset", "How to print the value of a tensor in tensorflow mnist_softmax.py", "tensorflow mnist example accuracy does not increase", "Predict with TensorFlow MNIST for Experts", "TensorFlow MNIST example error - should I have to update?", "Tensorflow MNIST (Weight and bias variables)", "Having error with Tensorflow Mnist", "Entropy of a MNIST image with Tensorflow", "How to get weights from tensorflow fully_connected", "Dillema with prediction with TensorFlow on MNIST set", "How do I install Sugyan-Tensorflow-MNIST?", "How to get predicted class labels in TensorFlow's MNIST example?", "How to define a fix sequence of MNIST training images with TensorFlow?", "Getting mnist import error in tensorflow", "MNIST tensorflow - cant figure out whats wrong", "Using gpu vs cpu in tensorflow deep mnist example", "Training a fully connected network with one hidden layer on MNIST in Tensorflow", "Tensorflow - About mnist.train.next_batch()", "tensorflow memory MNIST tutorial", "Changing Tensorflow MNIST code with interactive session into session", "Running mnist_softmax.py on Tensorflow Installed with Docker", "Windows Tensorflow with Python unable to read mnist data due to permissions", "Tensorflow MNIST tutorial code error", "TensorFlow - Tflearning error feed_dict", "Tensorflow feed_dict issue", "Reading MNIST by byte with python", "Issues with implementing TensorFlow's MNIST example without feed_dict using a queue", "Tensorflow MNIST - accuracy of particular test image", "Tensorflow MNIST tutorial - Test Accuracy very low" ]
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struct.error: unpack requires a string argument of length 4
[ "struct.error: unpack requires a string argument of length 16", "struct.unpack_from in Java", "Convert python's struct.unpack code to java", "How to unpack variable length data in python struct", "I don't understand struct.unpack", "unpack requires a string argument of length 24", "Unpack Requires A String Argument of Length: Windows Issue?", "How can I struct.unpack many numbers at once", "How does struct.unpack and struct.pack works?", "python struct.unpack in Java", "Speed up python's struct.unpack", "python struct unpack", "Reading 4 bytes with struct.unpack", "Python error: unpack requires a string argument of length 4, but it is?", "python tarfile error: struct.error: unpack requires a string argument of length 4", "Unpack requires a string argument of length 44 python", "Struct.unpack and Length of Byte Object", "Python struct.unpack binary file", "how to convert python struct.unpack to java", "struct.error: unpack requires a string argument of length 4 - audio file", "Python struct.unpack not working", "python struct unpack into a dict", "Understanding struct.unpack python", "python struct \"unpack requires a bytes object of length 8\" while converting binay to float", "How to unpack c struct in python 3.2?", "struct: unpack Requires String Argument of Length 16", "pyinstaller struct.error: unpack requires a bytes object of length 16", "Regarding struct.unpack() in python", "How to unpack a struct in Python?", "Error unpack requires a string argument of length 16" ]
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Python Git Module experiences?
[ "Getting started with Git Python", "git status with python", "Experiences of creating Social Network site in Django", "git log -- <file_name> works correct on terminal, but doing g.log(file_name) in git python shows error", "'Correct' way to use git project", "Is there a python interface to git shortlog?", "Using python sh module with git", "How to manage git-like version control for a text file in Python without using git?", "Parse a git URL like 'ssh://git@gitlab.org.net:3333/org/repo.git'?", "Windows 7 and git: how to invoke git from a system() call in a script", "requirement for \"pip install git+[git repo]\"?", "Any experiences with Protocol Buffers?", "Can't run python in git terminal?", "trying to execute git command using python script", "Getting git fetch output to file through python", "Git Python seems not work", "Git add through python subprocess", "How to build and run emesene on OS X using Git", "Python: catch git error", "How to check if a git repo was updated without using a git command", "pip tries to use git when git is not installed", "Python / Git / Module structure best practice", "getting last git commit date via passing git command to subprocess in python", "Parse git - log file with python", "git on command line using github git", "Django Projects and git", "Why does this error message display each time I try to import git", "git show not working with python check_output", "Python - A Git module which doesn't depend on the git binary file", "How to get path to the installed GIT in Python?" ]
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python how to convert datetime dates to decimal years
[ "decimal years to datetime in python", "Add values for different years", "How to convert datetime", "Convert String to Decimal in Python", "Get the difference between dates in the form of list years and months", "Matplotlib dates in datetime format", "How can I add decimal.Decimal values in Django?", "How would I convert decimal years in to years and days", "Compare dates in Python with datetime", "Python decimal.Decimal id not the same", "Convert a string to integer with decimal in Python", "How to Convert to DateTime", "How to parse list containing decimal and datetime.datetime?", "How do you get a decimal in python?", "Python 3.5.0 decimal", "calculate the difference between two datetime.date() dates in years and months", "how to import dates in python", "Using \"Decimal\" in Python", "Python Decimal", "Convert integer to dates in python", "Decimal error in list", "Filter and return dates with datetime", "Get all years between two dates in python", "Convert time decimal to datetime object python", "Convert string to list of dates", "Python get a list of years", "Python convert decimal number in a string without \".\"", "How do I join integers, Decimal() and datetime.datetime() in a list?", "Python Decimal to String" ]
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new pythonic style for shared axes square subplots in matplotlib?
[ "Pyplot: Shared axes and no space between subplots", "Merge matplotlib subplots with shared x-axis", "Python Subplots with shared axis loop", "matplotlib/python: force axes to same length for multiple subplots", "How do I change x and y axes in matplotlib?", "Why do matplotlib subplots start with 1", "matplotlib change size of subplots", "Matplotlib subplots inside a for loop", "Shared x axes in Pandas Python", "Matplotlib: create two subplots in line with two y axes each", "Create subplots in Matplotlib in a loop?", "How to get rid of extra white space on subplots with shared axes?", "Disproportionate image subplots in matplotlib", "matplotlib: subplots of same size?", "more than 9 subplots in matplotlib", "matplotlib: change axes", "Creating subplots with matplotlib", "Turn off axes in subplots", "Python Matplotlib How to create subplots?", "matplotlib: reduce axes width in subplots", "Pandas and Matplotlib plotting df as subplots with 2 y-axes", "extra numbers showing up on my axes when i do multiple subplots in matplotlib", "Pythonic code style", "How do I get multiple subplots in matplotlib?", "Matplotlib different size subplots", "Python - different size subplots in matplotlib", "How to add axes to subplots?", "Matplotlib several subplots and axes", "Two subplots in Python (matplotlib)", "Creating square subplots (of equal height and width) in matplotlib" ]
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How do i detect duplicates and then among them cross check if two columns have similar values?
[ "Detect Duplicates in certain columns in a DataFrame & Perform operations on these", "Pandas Drop Duplicates Between Two Columns", "I have duplicates values in my database how to get only one", "Simple cross import in python", "list of duplicates on python", "How do you cross-check a dictionary with a list in Python?", "Python: looking for duplicates in list", "Remove duplicates based on the content of two columns not the order", "How to find duplicates values in list Python", "Remove duplicates in dataframe pandas based on values of two columns", "return duplicates in a list", "Python: detect duplicates using a set", "Remove duplicates from the list", "pandas append duplicates as columns", "Remove duplicates", "Check 4 strings if there are duplicates", "How to remove duplicates in a csv file based on two columns?", "Remove duplicates with few columns and sum the other columns", "What is the easiest way to detect a cross-over in values of 1d list?", "Find duplicates in string, and return single result for only duplicates", "How to check for duplicates in a string but not replace them?", "How to remove these duplicates in a list (python)", "Remove duplicates from list python", "python range() with duplicates?", "How to make duplicates of values in a list python", "Create duplicates in the list", "How do I find the duplicates in a list and create another list with them?", "Python methods to find duplicates", "Remove duplicates and similar values from a list in Python?", "Pandas: unable to detect duplicates from two columns" ]
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What to do if I want 3D spline/smooth interpolation of random unstructured data?
[ "Multivariate spline interpolation in python/scipy?", "Python Keep points in spline interpolation", "Read unstructured CSV", "Parsing links and strings from unstructured HTML data", "How to collect unstructured data from a database?", "Storing large unstructured list in Python", "cubic spline to get smooth python line curve", "How to create structured array out of unstructured HTML using python", "how to find unstructured date and time from a sentence in python?", "Smooth line with spline + datetime objects doesn't work", "Parsing unstructured text in Python", "Spline Interpolation with Python", "Interpolation of 3D data in Python", "Down sampling in pandas and spline interpolation", "Unstructured Text/Number merge", "Interpolation over 2d unstructured grid data", "How can I set, rather than fit, the co-efficients of a spline interpolation using scipy?", "BeautifulSoup parse unstructured html", "Read through an unstructured xls file", "Python interpolation of 3D data set", "How to read unstructured csv in pandas", "How can I smooth a set of 3D points?", "Python spline interpolation with two different dataset", "Difference of spline interpolation in IDL and Python", "Parsing unstructured json into csv", "How to perform cubic spline interpolation in python?", "Python : How to project a 3D unstructured mesh to 2D?", "coefficients of spline interpolation in scipy", "Sort by (unstructured) dates in Pandas DataFrame", "Python interpolation of 3D points" ]
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Python 3.x validate date and time format (with timezone)
[ "Setting timezone in Python", "Timezone for server", "Is Python's time.time() timezone specific?", "date format with timezone", "How to set the timezone in Django?", "How does Django Timezone Work?", "python validate date format or blank", "Timezone issue with pyExchange", "How can I run python in a given timezone (change timezone from outside)?", "Parse a date in a specific timezone with Python", "How to convert string date with timezone to datetime?", "How to parse timezone data?", "How to get the timezone of a server?", "Why python datetime replace timezone is returning different timezone?", "Getting current time with timezone in python?", "How can i change timezone data Python", "Django view objects filter with timezone.now().date or timezone.now().time-> expected string or bytes-like object", "Python timezone issue?", "Timezone not available in python, but the system timezone is properly set", "list value validate in python", "What is the local timezone", "Validate a name in Python", "How can I validate a date in Python 3.x?", "string to date with Timezone in python 3.3", "Change Timezone for Date object Python", "How to validate time format?", "Python - Trying to get a different timezone", "how to validate a date in python", "How do I validate a date string format in python?" ]
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Best python XMPP / Jabber client library?
[ "ImportError: No module named jabber:python", "Python-XMPP traceback from xtalk.py", "python xmpp simple client error", "jabber messages for file transfer", "Python-xmpp HostUnknown error during connect", "XMPP send message not working", "Getting a Jabber status via Python", "xmpp with python: xmpp.protocol.InvalidFrom: (u'invalid-from', '')", "Python Jabber/XMPP client library for Twisted", "How to test xmpp/jabber on local machine?", "XMPP server in python", "What's the difference between xmpp.protocol.Message and xmpp.Message?", "Best way to parse XMPP-like XML streams?", "How do I set a Jabber status with python-xmpp?", "XMPP connecting to server (Python)", "Python XMPP server library", "Python xmpp jabber client in tornado web application", "What Jabber/XMPP libraries are available for PyS60 (Python for Symbian S60) interpreter?", "Does Wokkel (XMPP Library) support following features?", "How can I transfer a file via XMPP using Python?", "xmpp client using Google App Engine", "How can I get a response with XMPP client in Python", "Set/Get user information from a xmpp server: python", "Send an XMPP message with Python", "XMPP server for Python", "python does not connect to local XMPP server", "How to send message using xmpppy to a jabber client?", "Send a xmpp message using xmmp python library and google app engine", "Python twisted event based jabber/xmpp/email/irc/chat client that listens and responds to messages", "Online status for Jabber bot" ]
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Joining all rows of a CSV file that have the same 1st column value in Python
[ "joining all rows of a csv file that have the same first column with python", "joining-all-rows-of-a-csv-file-that-have-the-same-1st-column-value", "Python joining a string with a list format", "Joining two list in one array in python", "Strings not joining in Python", "CSV joining based on keys", "Joining two csv files in Python", "Joining CSV or Tables", "Joining elements in list in python", "Joining values to a string - error", "Joining 2 lists ,Python", "Joining elements of list: Python", "Pandas - joining rows with same value, write to csv", "Joining a list into a string in python", "Python: Joining files in a list", "Python CSV joining columns", "Joining multiple iteratorars by a key", "Joining 2 list of different size in Python", "joining string to next string in list", "Joining CSV fields", "Python Joining csv files where key is first column value", "Joining column values in a table - pandas", "joining string and long in python", "Joining elements in a list to a new list in Python", "Joining strings in Python", "Get 1st column values on .csv file on python", "python joining two csv files", "Python joining strings", "Joining of strings in a list", "Joining rows based on value conditions" ]
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Timer shows negative time elapsed
[ "Measuring elapsed time in python", "Printing time in Python multiprocessing script return negative time elapsed", "Timer Python 3,3", "Advice on GUI timer to display background thread's elapsed time?", "Calculate the elapsed time in python", "Show elapsed time(frame number) in matplotlib", "Decorator for elapsed time flask", "Timer in Python(simultany)", "Django check elapsed time", "Calculating time elapsed on a groupby object", "Python - How to calculate the elapsed time since X date?", "How to convert pandas time series into numpy array of total elapsed time?", "How to set a timer & clear a timer in python?", "Measuring Elapsed time using Python 2.7 time module", "Break function and move on after certain time has elapsed - Python", "How to count elapsed time on Python", "How to create a timer in python", "Error when using Timer in python?", "How to create a timer on python", "Python - convert elapsed time to seconds when format is not consistent", "Measuring elapsed time with the Time module", "Detecting if set time has elapsed since date in Django model", "How to tell the hours elapsed in a csv file?", "Increment list size based on elapsed time", "Confusion while counting elapsed time in python?", "most negative value for python", "How does python threading.Timer determine elapsed time?", "Pandas: number of days elapsed since a certain date", "Calculate elapsed time", "How can I create a timer?" ]
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python library or code to read already open Excel file
[ "Access data in Excel - Reuter from python", "Open a read-only Excel file using Python", "How can make excel file using text file?", "Python: text file to Excel file", "Write a list into Excel", "Read data in Excel column into Python list", "How to write to an open Excel file using Python?", "Open two excel files", "How to read an excel column into a list?", "Filter an Excel file and output the result into another Excel", "Read Excel File in Python", "How to get read excel data into an array with python", "How to read and edit excel files with python", "Unprotect an Excel file programmatically", "Python - Read Excel file and print output to another file", "Get code from module in Excel", "Add list data into Excel with Python", "'Run Excel File From Python' Error", "Read Excel lines into Python", "Change values in excel file from values of other excel using python", "pywintypes.com_error in Python during Excel import", "How to read data from excel and set data type", "Python wriring data from Excel File", "How to read an excel file in Python?", "Have no idea with python-excel read data file", "Save open excel file using python", "Python and Excel - check if file is open", "How can I import this Excel file into Python?", "Print output to Excel", "How to write data to an excel file?" ]
[ 0.8886131048202515, 0.9382111430168152, 0.8653168082237244, 0.898675262928009, 0.857738196849823, 0.902805745601654, 0.9210185408592224, 0.8970532417297363, 0.8720366954803467, 0.856529176235199, 0.9259675741195679, 0.9007748365402222, 0.9245727062225342, 0.865004301071167, 0.9196681976318359, 0.8627935647964478, 0.8760772943496704, 0.9016237258911133, 0.9169777035713196, 0.8844890594482422, 0.8721798062324524, 0.8745360374450684, 0.9096449017524719, 0.9225199818611145, 0.9011866450309753, 0.9239914417266846, 0.9303001165390015, 0.894933819770813, 0.8627175688743591, 0.8695427775382996 ]
[ 0.866511881351471, 0.9094784259796143, 0.8293830156326294, 0.8808540105819702, 0.8315021991729736, 0.8851966857910156, 0.8935695290565491, 0.8684374094009399, 0.8437947034835815, 0.846688449382782, 0.9010353088378906, 0.8876059651374817, 0.8954537510871887, 0.8595582246780396, 0.8935184478759766, 0.851739764213562, 0.8672667741775513, 0.8816301822662354, 0.8923357725143433, 0.8763400316238403, 0.8629298210144043, 0.8575151562690735, 0.8846601843833923, 0.9010874629020691, 0.888672947883606, 0.9099869728088379, 0.9091114401817322, 0.8802536725997925, 0.8389976024627686, 0.8350088596343994 ]
[ 0.8681818842887878, 0.904498815536499, 0.7838031053543091, 0.8715548515319824, 0.820188581943512, 0.895619809627533, 0.8782238364219666, 0.8489344716072083, 0.8364353179931641, 0.8326665759086609, 0.9172794818878174, 0.8907243013381958, 0.8949620723724365, 0.8417767286300659, 0.9080815315246582, 0.8355274200439453, 0.8666871786117554, 0.8808659315109253, 0.9046884179115295, 0.8733971118927002, 0.8719165325164795, 0.8446395397186279, 0.8851287364959717, 0.8992912173271179, 0.8805286884307861, 0.897324800491333, 0.9099557399749756, 0.8755929470062256, 0.8065741658210754, 0.80988609790802 ]
[ 0.7570606470108032, 0.8450561165809631, 0.6445330381393433, 0.6900495290756226, 0.6051317453384399, 0.7301169633865356, 0.7763943672180176, 0.7544287443161011, 0.6942160129547119, 0.6892747282981873, 0.8557949066162109, 0.7339502573013306, 0.8074685335159302, 0.7110209465026855, 0.7282694578170776, 0.7053171396255493, 0.6449738144874573, 0.6945674419403076, 0.8069807291030884, 0.677731990814209, 0.6033864617347717, 0.6845833659172058, 0.7404343485832214, 0.8540268540382385, 0.7908576726913452, 0.8354375958442688, 0.8293517231941223, 0.7543925046920776, 0.6220644116401672, 0.637238621711731 ]
[ 0.6796953082084656, 0.8100630044937134, 0.5766623020172119, 0.616521954536438, 0.4817444682121277, 0.6627181768417358, 0.7350115776062012, 0.7082366347312927, 0.6093930006027222, 0.5916752815246582, 0.8184876441955566, 0.6726824045181274, 0.7633605599403381, 0.6163357496261597, 0.6694599986076355, 0.6207242012023926, 0.5677490830421448, 0.6373862028121948, 0.756848931312561, 0.6236934661865234, 0.5398152470588684, 0.6021525859832764, 0.6940855979919434, 0.817668080329895, 0.7356307506561279, 0.8076462745666504, 0.8002830743789673, 0.7029141187667847, 0.5240890979766846, 0.5432099103927612 ]
[ 0.7335198521614075, 0.83542799949646, 0.6528681516647339, 0.6766178607940674, 0.6028808951377869, 0.7180569171905518, 0.7833328247070312, 0.7566825151443481, 0.6987936496734619, 0.6901102066040039, 0.8387271165847778, 0.7274289131164551, 0.7923736572265625, 0.7100887298583984, 0.7204582691192627, 0.6958118677139282, 0.636615514755249, 0.6865684390068054, 0.7866250276565552, 0.676266610622406, 0.5900335907936096, 0.6766074299812317, 0.713676929473877, 0.8422292470932007, 0.7665866613388062, 0.8289507627487183, 0.8241515159606934, 0.7417812347412109, 0.6137701272964478, 0.6408128142356873 ]
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Emit websocket message from a view
[ "Send WebSocket message from Flask view", "How can I send a message down a websocket running in a thread from tkinter?", "how to get around a websocket call blocking other websocket calls", "Websocket client library for Python 2.4?", "Python websocket create connection", "WebSocket - python server is not working with javascript", "How to emit websocket message from outside a websocket endpoint?", "WebSocket: Error during WebSocket handshake: Sent non-empty 'Sec-WebSocket-Protocol' header but no response was received", "How to emit Qtsignal from one class which results to emit Qtsignal from its parent class in pyqt", "Convert python client server to websocket", "Host a Python based Websocket server", "Reading From a WebSocket in Python (Data from Javascript WebSocket)", "Using python websocket client with tkinter", "How do I format a websocket request?", "Creating login for a websocket application?", "websocket server for django application", "websocket server on python.problems", "How do I get this websocket example to work with Flask?", "How to build Apache WebSocket module?", "pyqt and websocket client. listen websocket in background", "Python WebSocket not working", "Sending / receiving WebSocket message over Python socket / WebSocket Client", "Python WebSocket Decoding Message", "Python websocket object has no attribute 'write_message' error", "Check URL of websocket client - python", "Sending websocket message to client with parameter", "error while using Django-websocket", "Python Websocket - with time and message limit", "Calling an API with a websocket", "Can't Access Class Variable From WebSocket Server" ]
[ 0.9353617429733276, 0.880203127861023, 0.8830702304840088, 0.865005373954773, 0.8880144953727722, 0.8698304295539856, 0.9252593517303467, 0.8668479323387146, 0.8379029035568237, 0.883356511592865, 0.8843359351158142, 0.8841468095779419, 0.8783197999000549, 0.8871738910675049, 0.882805585861206, 0.887704610824585, 0.8818492293357849, 0.8886956572532654, 0.8640629053115845, 0.8922241926193237, 0.8786917924880981, 0.8953626155853271, 0.8980761766433716, 0.8674942255020142, 0.8769949078559875, 0.9109281301498413, 0.8936216831207275, 0.8896256685256958, 0.9094377756118774, 0.8636599779129028 ]
[ 0.9286527633666992, 0.8610439300537109, 0.8482693433761597, 0.8434891104698181, 0.870761513710022, 0.8592925071716309, 0.8964834809303284, 0.8502076864242554, 0.8165878653526306, 0.8748190402984619, 0.8840029239654541, 0.8714539408683777, 0.8614988923072815, 0.8582202196121216, 0.8540663719177246, 0.8779280185699463, 0.8694788813591003, 0.8537229299545288, 0.8517565727233887, 0.8667179346084595, 0.8692651987075806, 0.9028341770172119, 0.8893740773200989, 0.8602340221405029, 0.8803931474685669, 0.9089866876602173, 0.877781867980957, 0.8705493211746216, 0.8871239423751831, 0.8530117273330688 ]
[ 0.9268494844436646, 0.8699693083763123, 0.8369343280792236, 0.8326809406280518, 0.855739951133728, 0.8336818218231201, 0.9021076560020447, 0.8435643911361694, 0.8201959133148193, 0.86481112241745, 0.8650741577148438, 0.8657122254371643, 0.8500248789787292, 0.8405489921569824, 0.8475288152694702, 0.8624266386032104, 0.8496121764183044, 0.850924015045166, 0.844738781452179, 0.8465185165405273, 0.8513023853302002, 0.8722195625305176, 0.8757679462432861, 0.8589167594909668, 0.8394726514816284, 0.8945620059967041, 0.8656947016716003, 0.8661767244338989, 0.8732126951217651, 0.8464115858078003 ]
[ 0.8797231912612915, 0.7670720815658569, 0.6971607208251953, 0.6983505487442017, 0.7150452136993408, 0.6993845105171204, 0.851241409778595, 0.658149242401123, 0.5821593999862671, 0.7273712754249573, 0.6430948376655579, 0.7532157301902771, 0.7122724056243896, 0.7544311285018921, 0.7284843325614929, 0.7383790612220764, 0.6829681396484375, 0.7283328175544739, 0.7330961227416992, 0.7339772582054138, 0.7288738489151001, 0.7722339630126953, 0.719319224357605, 0.7369391322135925, 0.7140287756919861, 0.7677644491195679, 0.7108038067817688, 0.7097113132476807, 0.754241943359375, 0.6973580121994019 ]
[ 0.8411492109298706, 0.7023224830627441, 0.6173873543739319, 0.6292603015899658, 0.6555357575416565, 0.6374062299728394, 0.8172555565834045, 0.5668661594390869, 0.47577211260795593, 0.6591047048568726, 0.5788443088531494, 0.7080926299095154, 0.6442292928695679, 0.6976820826530457, 0.650249719619751, 0.6907064914703369, 0.6447153091430664, 0.675530731678009, 0.6743793487548828, 0.6556642055511475, 0.6781482696533203, 0.7155306339263916, 0.6988785266876221, 0.6772697567939758, 0.636550784111023, 0.6999512314796448, 0.6751625537872314, 0.6618858575820923, 0.6850564479827881, 0.6425480842590332 ]
[ 0.8805570602416992, 0.7568409442901611, 0.6784447431564331, 0.6922169327735901, 0.70243239402771, 0.6816083192825317, 0.8445906639099121, 0.6223714351654053, 0.5763458609580994, 0.7216235399246216, 0.6367272734642029, 0.7400215864181519, 0.6943784952163696, 0.7514904737472534, 0.7141003608703613, 0.7286680936813354, 0.6667522192001343, 0.7252647280693054, 0.7274999618530273, 0.7225174307823181, 0.7138689160346985, 0.7615724802017212, 0.7131556272506714, 0.734900951385498, 0.697229266166687, 0.7502384781837463, 0.6937448978424072, 0.7018424868583679, 0.7350207567214966, 0.6891516447067261 ]
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Convert tab-delimited txt file into a csv file using Python
[ "changing the format of a tab delimited csv file", "Python - Convert tab delimited file into csv in a specific manner", "Convert Float to Integer During xcel to Tab Delimited File Conversion", "Python: Indexing a file that is tab delimited", "parsing tab delimited values from text file to variables", "Read a distributed Tab delimited CSV", "Loop for Parsing complex tab delimited/csv files in Python", "How to change tab delimited in to comma delimited in pandas", "Add headers and a new column to a tab-delimited file", "generator object into tab delimited text", "Parsing CSV / tab-delimited txt file with Python", "What is the easiest way to read the text file delimited by tab in python?", "how to convert xlsx to tab delimited files", "Python - print tab delimited two-word set", "What's missing to have this script compare tab delimited csv files?", "How do I load a delimited CSV file into Python?", "Convert Excel range into csv or tab-delimited file", "Parsing tab or space/s delimited file using Python", "Reading tab delimited csv into numpy array with different data types", "Python | delimited text file to csv format", "Python Search function in a tab delimited column file", "Python - Nested List to Tab Delimited File?", "Insert tab-delimited values into database", "Dictionary of lists from tab delimited file", "Import TAB delimited csv in python and strip /n and , from description field", "Add column with a header to a tab-delimited text file?", "Create a python dictionary from a tab delimited file that is not 1:1", "Tab-delimited file into dictionary (python)", "Writing a tab delimited file as json object in python", "How can I check that a column in a tab-delimited file has valid values?" ]
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[ 0.9328892230987549, 0.9708267450332642, 0.8881992101669312, 0.9098120331764221, 0.9142532348632812, 0.9066224098205566, 0.9265613555908203, 0.9008902907371521, 0.8906208276748657, 0.8776063919067383, 0.9625304937362671, 0.9064762592315674, 0.9053307771682739, 0.8816537857055664, 0.8949993848800659, 0.9098843932151794, 0.932652473449707, 0.9139679670333862, 0.9190428256988525, 0.9288009405136108, 0.9066583514213562, 0.9020233154296875, 0.8903554677963257, 0.8936866521835327, 0.9168318510055542, 0.8935117721557617, 0.8984453082084656, 0.9182658195495605, 0.9141801595687866, 0.8788793087005615 ]
[ 0.9186574816703796, 0.9527946710586548, 0.8794384002685547, 0.9083852767944336, 0.9059687852859497, 0.9020675420761108, 0.9165902137756348, 0.9071736335754395, 0.892819881439209, 0.882578432559967, 0.9571593403816223, 0.8995303511619568, 0.8979533910751343, 0.8932675719261169, 0.8802358508110046, 0.8863255977630615, 0.9225127696990967, 0.9267563819885254, 0.9094947576522827, 0.9344040155410767, 0.9185477495193481, 0.9105291962623596, 0.8996416926383972, 0.8901572823524475, 0.9017519354820251, 0.8891985416412354, 0.8992158770561218, 0.9288322925567627, 0.9300953149795532, 0.8695296049118042 ]
[ 0.820138156414032, 0.941247820854187, 0.6777814626693726, 0.7602355480194092, 0.7809967398643494, 0.7252228856086731, 0.7919387817382812, 0.7200006246566772, 0.7446863651275635, 0.671055793762207, 0.8704311847686768, 0.7932770252227783, 0.7604182958602905, 0.7029327154159546, 0.753333330154419, 0.7656082510948181, 0.8101897239685059, 0.7773385047912598, 0.7749992609024048, 0.8970380425453186, 0.6718626022338867, 0.8074383735656738, 0.6632452607154846, 0.7591056823730469, 0.7588493227958679, 0.7330802083015442, 0.7669649124145508, 0.8034461140632629, 0.7886092662811279, 0.7167038917541504 ]
[ 0.7821210026741028, 0.9234948754310608, 0.6214592456817627, 0.6889635920524597, 0.7271866798400879, 0.6567977666854858, 0.7468944787979126, 0.6607829928398132, 0.656307578086853, 0.6011824607849121, 0.848617434501648, 0.7416650056838989, 0.6922299861907959, 0.6276455521583557, 0.6807039976119995, 0.7045570611953735, 0.768897533416748, 0.7053966522216797, 0.7164281606674194, 0.8748703002929688, 0.6108936667442322, 0.7509539723396301, 0.57904052734375, 0.6864997148513794, 0.6800844073295593, 0.6420637965202332, 0.7000796794891357, 0.7481147050857544, 0.7386950254440308, 0.6349774599075317 ]
[ 0.8290499448776245, 0.9389578700065613, 0.6885104179382324, 0.7638592720031738, 0.7844705581665039, 0.72955322265625, 0.7947210669517517, 0.7303769588470459, 0.7470061779022217, 0.6920186877250671, 0.8733618259429932, 0.7980257272720337, 0.7630212306976318, 0.6985749006271362, 0.7660185098648071, 0.7627389430999756, 0.8200976848602295, 0.7677770853042603, 0.7807776927947998, 0.8812829256057739, 0.6868371963500977, 0.8054324984550476, 0.6990683078765869, 0.7583022117614746, 0.7530473470687866, 0.7349346876144409, 0.7635557651519775, 0.8023086190223694, 0.7993262410163879, 0.727208137512207 ]
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remove Key in dictionary python
[ "How to remove a key from a Python dictionary?", "Python: List as a key in dictionary -", "How to remove a list value from a dictionary?", "How to get the key from value in a dictionary in Python?", "How to remove all 0 from a dictionary in python?", "List as key in dictionary", "Remove elements from key in Python dictionary", "Python dictionary key error", "How to get a value and its key from a dictionary", "python 2.7 : remove a key from a dictionary by part of key", "Key error in dictionary - python", "how to get key of dictionary in python", "How to print a dictionary's key?", "Remove dictionary key when the multiple values are the same", "remove certain key from a dictionary in python?", "Remove key from dictionary in Python returning new dictionary", "Get a value from a dictionary key in Python", "Python: remove dictionary from list", "Problem with dictionary key in Python", "How can I remove the last two values in each key in a dictionary?", "Get key from dictionary", "Get key by value in dictionary", "Python key error - for key in dictionary: dictionary[key]", "How to remove values from Specific Dictionary Key Python", "A list as a key for a dictionary", "python: dictionary from \"key=value\"", "Fliping dictionary key value Python", "How do you print a key of a dictionary in Python?", "How do I remove \\n from my python dictionary?", "Dictionary be a Key in a Dictionary Python" ]
[ 0.9602380394935608, 0.8910685777664185, 0.9116412997245789, 0.9033969044685364, 0.9044582843780518, 0.8973629474639893, 0.963718056678772, 0.9420315623283386, 0.893436074256897, 0.9484906792640686, 0.9389011263847351, 0.9278132915496826, 0.903346061706543, 0.9256319999694824, 0.9634672999382019, 0.9580402374267578, 0.9012411832809448, 0.9281030893325806, 0.9384251236915588, 0.9179612398147583, 0.9150844812393188, 0.9083161354064941, 0.926695704460144, 0.9352057576179504, 0.8821560144424438, 0.9146488308906555, 0.9123573303222656, 0.9042041301727295, 0.8991336822509766, 0.9254927635192871 ]
[ 0.9580525755882263, 0.8956165313720703, 0.9089300036430359, 0.90327388048172, 0.9124722480773926, 0.8996065258979797, 0.9606907963752747, 0.9197418689727783, 0.8806474804878235, 0.9375144243240356, 0.918976366519928, 0.9158653616905212, 0.8882788419723511, 0.9018181562423706, 0.9574470520019531, 0.9521753787994385, 0.9101307392120361, 0.9465362429618835, 0.9243590831756592, 0.8894293904304504, 0.9126695394515991, 0.9080626964569092, 0.9096828103065491, 0.9357929229736328, 0.8779069185256958, 0.8801888823509216, 0.9085559844970703, 0.9023627042770386, 0.9081466794013977, 0.9164894223213196 ]
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[ 0.9568270444869995, 0.7017925381660461, 0.8555289506912231, 0.7571061849594116, 0.786043643951416, 0.7026147842407227, 0.9060935974121094, 0.7840915322303772, 0.7188471555709839, 0.8522217273712158, 0.7793152332305908, 0.7767337560653687, 0.7429174184799194, 0.8600623607635498, 0.9436028003692627, 0.8642264604568481, 0.7554528713226318, 0.8642693758010864, 0.808025598526001, 0.81053626537323, 0.7934642434120178, 0.7268628478050232, 0.7398186922073364, 0.8765705823898315, 0.7102462649345398, 0.7023065686225891, 0.7207821607589722, 0.7516610622406006, 0.766486406326294, 0.7441712617874146 ]
[ 0.96337890625, 0.6375468969345093, 0.8432066440582275, 0.7239009737968445, 0.7549022436141968, 0.6251431703567505, 0.8947356939315796, 0.7427560091018677, 0.6674240827560425, 0.8367510437965393, 0.7409374713897705, 0.7390697002410889, 0.6867903470993042, 0.8424675464630127, 0.9499403834342957, 0.8555947542190552, 0.7045931816101074, 0.8667315244674683, 0.7818168997764587, 0.7875956296920776, 0.739313006401062, 0.6625916957855225, 0.6978203058242798, 0.8712624311447144, 0.6343338489532471, 0.6412886381149292, 0.6586384773254395, 0.7067974805831909, 0.739745020866394, 0.6866921782493591 ]
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Measure border overlap between numpy 2d regions
[ "Determine adjacent regions in numpy array", "find the \"overlap\" between 2 python lists", "Confidence regions of 1sigma for a 2D plot", "How to find range overlap in python?", "Finding the overlap of numpy images", "Fast random to unique relabeling of numpy 2d regions (without loops)", "Python Numpy One Hot to Regions", "Slicing array in regions - Python", "Slice border of 2D numpy array by integer value", "In opencv how do I get a list of segemented regions", "Find max overlap in list of lists", "Sikulli: Passing Regions to setROI() function", "finding a regions in python list", "Measure time of a function with arguments in Python", "Time measure script in python", "python-measure function time", "Measure directory size with Python", "How can i remove overlap in list?", "Is it possible to use Python to measure response time?", "numpy measure time - syntax error", "Python numpy array -- close smallest regions", "Numpy array and change value regions", "python time measure for every function", "Python time measure function", "In Python: the center of mass of specific regions of values in a 2D numpy array", "Identify contiguous regions in 2D numpy array", "Buttons overlap each other", "Find date range overlap in python", "Window overlap in Pandas", "Measure-Command: measure python script execution time" ]
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[ 0.8952818512916565, 0.8941428661346436, 0.8535640239715576, 0.8945632576942444, 0.9132013320922852, 0.8643882274627686, 0.8626864552497864, 0.8613394498825073, 0.9018566608428955, 0.8378803730010986, 0.8685662746429443, 0.8509071469306946, 0.8666244745254517, 0.8365380167961121, 0.8269007205963135, 0.8281493186950684, 0.8536192178726196, 0.8138708472251892, 0.7991767525672913, 0.8351483941078186, 0.8757839202880859, 0.8826285600662231, 0.8132080435752869, 0.8368074893951416, 0.865729808807373, 0.9106048941612244, 0.8400275111198425, 0.8939547538757324, 0.8622211813926697, 0.8208826780319214 ]
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[ 0.7569843530654907, 0.7068575620651245, 0.577332615852356, 0.7368046641349792, 0.7692232728004456, 0.6351842880249023, 0.6555191278457642, 0.5924663543701172, 0.706876814365387, 0.5925320982933044, 0.6641284823417664, 0.5413328409194946, 0.6267753839492798, 0.43766066431999207, 0.476039320230484, 0.4727723002433777, 0.4905526340007782, 0.5999420881271362, 0.4272799789905548, 0.48837152123451233, 0.658308207988739, 0.6064191460609436, 0.4591256082057953, 0.4837610125541687, 0.6073626279830933, 0.7521579265594482, 0.5506641864776611, 0.6798839569091797, 0.6407672166824341, 0.4387779235839844 ]
[ 0.7981229424476624, 0.7652482986450195, 0.6745624542236328, 0.7843927145004272, 0.8201536536216736, 0.7102357149124146, 0.7038861513137817, 0.6654691696166992, 0.7623222470283508, 0.6670595407485962, 0.7420339584350586, 0.6149618625640869, 0.680263340473175, 0.5483564734458923, 0.5702253580093384, 0.576463520526886, 0.5946682691574097, 0.6685830950737, 0.5473776459693909, 0.5691717863082886, 0.7119181156158447, 0.6645256876945496, 0.5755600929260254, 0.5724812746047974, 0.6946408748626709, 0.7967830896377563, 0.6069230437278748, 0.729295551776886, 0.7123098373413086, 0.5571164488792419 ]
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Get Feeds from FeedParser and Import to Pandas DataFrame
[ "How can I parse multiple URLs in feedparser (Python)?", "Python and FeedParser question", "feedparser attribute error", "Speed up feedparser", "feedparser and Google News", "Python feedparser can not read WordPress custom feeds", "Python 2.7 encoding and feedparser", "Feedparser to Parse Specific Text in Entries", "Feedparser newbie questions", "feedparser - various errors", "Using feedparser with Google App Engine", "parse xml feed using python feedparser", "feedparser cannot get namespace values", "Application based on feedparser", "How to parse the \"<media:group>\" using feedparser?", "Understanding python 2.7 email.feedparser Feedparser __init__ function", "python feedparser custom namespaces", "Why feedparser for Python does not see all elements in the feed", "How to install Feedparser 5.1 for Python 3.2 Windows 64 bit.", "Basic Django Feeds", "feedparser with timeout", "Python 3.6: Feedparser issue getting sub-attributes", "python feedparser ImportError: No module named feedparser", "Feedparser stopped working", "AttributeError: module 'feedparser' has no attribute 'FeedParserDict'", "python feedparser", "Python Feedparser and Multi-threading", "adding the feedparser module to python", "Using feedparser to get streaming data", "Updating Feedparser Feeds in Django" ]
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[ 0.8772887587547302, 0.9081929326057434, 0.8736322522163391, 0.886123538017273, 0.8809446692466736, 0.8804802894592285, 0.8992145657539368, 0.9063819646835327, 0.8877689838409424, 0.8591479063034058, 0.8900341391563416, 0.9096895456314087, 0.8757819533348083, 0.8744344711303711, 0.8683933019638062, 0.8931494951248169, 0.8909739851951599, 0.8788617849349976, 0.8906322121620178, 0.8547971248626709, 0.8766454458236694, 0.8828122615814209, 0.8907063007354736, 0.8742209672927856, 0.8663068413734436, 0.9131529331207275, 0.8908374905586243, 0.9214397072792053, 0.9067816138267517, 0.9224626421928406 ]
[ 0.8719155788421631, 0.9093189239501953, 0.8697460889816284, 0.883116602897644, 0.8966928720474243, 0.8688545227050781, 0.8969355225563049, 0.8988561034202576, 0.8713431358337402, 0.8628371357917786, 0.8935528993606567, 0.9220134019851685, 0.8817449808120728, 0.8792212009429932, 0.8673756122589111, 0.88588947057724, 0.874655544757843, 0.8719772100448608, 0.875009298324585, 0.8394308090209961, 0.8725490570068359, 0.8725384473800659, 0.9023357629776001, 0.8615648746490479, 0.8698829412460327, 0.9013103246688843, 0.8881707787513733, 0.9065080881118774, 0.9182696342468262, 0.8836957812309265 ]
[ 0.7726858258247375, 0.8151977062225342, 0.7451468110084534, 0.7544982433319092, 0.7246286273002625, 0.7039312720298767, 0.7191153168678284, 0.7704367637634277, 0.7852584719657898, 0.7613442540168762, 0.7562223076820374, 0.7726991176605225, 0.75099116563797, 0.7689674496650696, 0.6972322463989258, 0.6445443630218506, 0.7318423390388489, 0.7612347602844238, 0.7312359809875488, 0.7190951108932495, 0.7211839556694031, 0.7575651407241821, 0.7757272720336914, 0.7221059799194336, 0.7898464202880859, 0.8147978782653809, 0.7567671537399292, 0.8185709118843079, 0.8157608509063721, 0.7670893669128418 ]
[ 0.7117783427238464, 0.7839738130569458, 0.6930122375488281, 0.6989462971687317, 0.6653556823730469, 0.6329910755157471, 0.6653040647506714, 0.7059733867645264, 0.744953453540802, 0.7127546072006226, 0.698685348033905, 0.7234364151954651, 0.6892068386077881, 0.7196540832519531, 0.6050093770027161, 0.5689740180969238, 0.6840689182281494, 0.7016923427581787, 0.6951987743377686, 0.6506577730178833, 0.6474241018295288, 0.6965838670730591, 0.7323635220527649, 0.6753770709037781, 0.7302869558334351, 0.7897241115570068, 0.7028380036354065, 0.7751181721687317, 0.7596094012260437, 0.7080637216567993 ]
[ 0.7632538080215454, 0.8078632950782776, 0.7412163019180298, 0.7498424053192139, 0.7291487455368042, 0.7078206539154053, 0.7199047803878784, 0.7536104917526245, 0.7829703092575073, 0.7463670372962952, 0.7625217437744141, 0.7649639248847961, 0.7567245960235596, 0.7490352392196655, 0.693021833896637, 0.6538654565811157, 0.7369472980499268, 0.7484480142593384, 0.7324252724647522, 0.713442325592041, 0.7231043577194214, 0.7544920444488525, 0.7735495567321777, 0.7160578966140747, 0.7823631167411804, 0.8075278997421265, 0.7534118294715881, 0.8151624798774719, 0.8098542094230652, 0.770207941532135 ]
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A more complex version of "How can I tell if a string repeats itself in Python?"
[ "How can I tell if a string repeats itself in Python?", "Python - Class Repeats Twice When Called Once", "non-prime factorings with some repeats", "Number of repeats in a regex in python", "Python for loop repeats", "How do I add a number to another everytime a loop repeats", "Python Recursively check for repeats", "How do I loop through a list in Python to make sure there are no repeats?", "Return a list containing the number with most repeats from a list of numbers", "If column A repeats, sum column 2", "Python random.choice method without repeats?", "Find repeats with certain length within a string using python", "python's regular expression that repeats", "Python: Random from multiple lists, no repeats", "Count character repeats in Python", "Python code repeats 8 times when not necessary", "Python Append List Repeats Last Element?", "Python output repeats even though it should break", "Python Random's with no repeats", "Testing a loop that repeats itself every 10 seconds", "How do i randomly select a line from my code without repeats", "Python For loop repeats second loop", "Deleting repeats in a list python", "How do I return a random element from 2 numpy array without repeats?", "how to tell an infinite loop to end once one number repeats twice in a row (in python 3.4)", "Sort text file by first column and count repeats python", "Python if loop doesn't function/repeats ineffectively", "Number list with no repeats and ordered", "Iterate over a list of dictionaries in python without repeats?", "iterating over yeardatescalendar repeats dates" ]
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[ 0.9235329627990723, 0.8564272522926331, 0.8221824765205383, 0.8768773078918457, 0.8699023127555847, 0.8551496267318726, 0.8830760717391968, 0.8719884157180786, 0.8358708620071411, 0.8475041389465332, 0.8623514175415039, 0.8878171443939209, 0.8691393136978149, 0.8594150543212891, 0.8744251132011414, 0.8529711365699768, 0.8521658182144165, 0.8634696006774902, 0.8457921147346497, 0.8701038360595703, 0.8557661771774292, 0.8635655641555786, 0.8465043306350708, 0.8500819802284241, 0.8745236992835999, 0.8692862391471863, 0.8731846809387207, 0.8184276819229126, 0.8641362190246582, 0.8358926177024841 ]
[ 0.9292038679122925, 0.8536009192466736, 0.8234497904777527, 0.884382963180542, 0.8695212006568909, 0.8562220335006714, 0.8855041861534119, 0.8750839829444885, 0.8302278518676758, 0.8545079231262207, 0.8642234206199646, 0.8863317966461182, 0.8795052170753479, 0.8420329689979553, 0.8841161727905273, 0.8650414347648621, 0.865715503692627, 0.8689495921134949, 0.8450936079025269, 0.86735600233078, 0.8539953827857971, 0.8630739450454712, 0.844879150390625, 0.8358947038650513, 0.8708770275115967, 0.8377585411071777, 0.8667107820510864, 0.8164148330688477, 0.8563296794891357, 0.8403303623199463 ]
[ 0.9668896794319153, 0.7089681029319763, 0.603882372379303, 0.7751505374908447, 0.7505785226821899, 0.6618839502334595, 0.846589982509613, 0.799392819404602, 0.6866036653518677, 0.6585440635681152, 0.6796796321868896, 0.8279123902320862, 0.8009375333786011, 0.6713236570358276, 0.8185049295425415, 0.7529264688491821, 0.7158043384552002, 0.7397269606590271, 0.7056602835655212, 0.7597981691360474, 0.6882556676864624, 0.7214475870132446, 0.7259362936019897, 0.6595810651779175, 0.7584940195083618, 0.6717178225517273, 0.7461876273155212, 0.6418664455413818, 0.6970697641372681, 0.6160777807235718 ]
[ 0.963416337966919, 0.6484580636024475, 0.49804699420928955, 0.7207512259483337, 0.7251473665237427, 0.580400824546814, 0.824254035949707, 0.7436606287956238, 0.5934485197067261, 0.5839425325393677, 0.606969952583313, 0.7921048402786255, 0.7684590220451355, 0.6066967844963074, 0.7847214341163635, 0.7013653516769409, 0.659915566444397, 0.7036953568458557, 0.6568981409072876, 0.6862473487854004, 0.6139450073242188, 0.6833230257034302, 0.6715030074119568, 0.5692617893218994, 0.7023060321807861, 0.6114976406097412, 0.7088918089866638, 0.5371227264404297, 0.6465786099433899, 0.5214916467666626 ]
[ 0.9689773321151733, 0.7272026538848877, 0.6259744167327881, 0.7630674839019775, 0.7533694505691528, 0.6699180006980896, 0.8444808721542358, 0.8044707775115967, 0.6741650104522705, 0.6804665327072144, 0.7024942636489868, 0.8119524717330933, 0.8067589402198792, 0.6951156854629517, 0.8096885681152344, 0.7607176899909973, 0.724799633026123, 0.7495585680007935, 0.7182559967041016, 0.7785248756408691, 0.7023000717163086, 0.7195113897323608, 0.7226572036743164, 0.6869866847991943, 0.7626246213912964, 0.6804639101028442, 0.7673425674438477, 0.6563361883163452, 0.7186980247497559, 0.6371442079544067 ]
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Getting ImportError: No module named azure.storage.blob when doing python manage.py syncdb
[ "Install Azure Python api on linux: importError: No module named storage.blob", "Django manage.py syncdb error", "manage.py syncdb fails on Windows 7", "Django manage.py syncdb not creating models", "Python - Django Manage.py Syncdb Failure?", "Error doing Django manage.py syncdb", "Return blob from azure blob storage without saving it", "Download all blobs files locally from azure container using python", "python manage.py syncdb errors", "PowerShell: run Python script from Azure blob storage", "Azure blob storage to JSON in azure function using SDK", "error when running python manage.py syncdb", "Use python running in HDI to access blob storage", "manage.py syncdb doesn't add tables for some models", "xml.etree error when importing azure.storage.blob", "manage.py - ImportError: No module named django", "Import azure.storage error", "Python: How to move or copy Azure Blob from one container to another", "python manage.py syncdb not creating tables", "Python manage.py ImportError: No module named django", "python manage.py syncdb error", "Can't create azure storage container with python", "Django python manage.py syncdb", "How to Download a Blob Image from Python Azure Storage and create an Image object out of it?", "Can't create container in Azure blob storage with the same name as a deleted container", "ImportError: No module named manage Django", "syncdb error in django when trying to run python manage.py syncdb", "How create table with command python manage.py syncdb with simple name?", "Azure blob: upload directory content using a loop in Python", "Can't get python.manage.py syncdb to work" ]
[ 0.9531809687614441, 0.9089274406433105, 0.9067039489746094, 0.9053164720535278, 0.9094371795654297, 0.9228335022926331, 0.8843345046043396, 0.8896202445030212, 0.9127426147460938, 0.8925194144248962, 0.8752495050430298, 0.9256477952003479, 0.8697035908699036, 0.905714750289917, 0.9239422082901001, 0.9293439388275146, 0.9046923518180847, 0.8880594968795776, 0.9079914093017578, 0.930736780166626, 0.9114794135093689, 0.9122977256774902, 0.8864991664886475, 0.879787802696228, 0.891913652420044, 0.9302421808242798, 0.9284886121749878, 0.8785712122917175, 0.874022364616394, 0.9236639142036438 ]
[ 0.9539515972137451, 0.9003691673278809, 0.8940387964248657, 0.896102786064148, 0.8921444416046143, 0.9060040712356567, 0.8932601809501648, 0.8995667695999146, 0.9013651013374329, 0.8882026076316833, 0.8877145648002625, 0.9160664081573486, 0.8735805749893188, 0.8944551944732666, 0.9315605163574219, 0.9034746289253235, 0.9183365106582642, 0.8763516545295715, 0.901606559753418, 0.9076746106147766, 0.9110629558563232, 0.9046846628189087, 0.8776812553405762, 0.8910978436470032, 0.8760826587677002, 0.9018189311027527, 0.903325617313385, 0.8720425963401794, 0.8790485262870789, 0.9018079042434692 ]
[ 0.9447235465049744, 0.888670802116394, 0.889190673828125, 0.87474524974823, 0.8829696178436279, 0.8941484689712524, 0.8510065078735352, 0.8808008432388306, 0.8838686347007751, 0.895902693271637, 0.840717613697052, 0.9069204926490784, 0.8704422116279602, 0.8665169477462769, 0.9129317998886108, 0.8954793214797974, 0.9001794457435608, 0.8733178973197937, 0.8696715831756592, 0.8958941102027893, 0.8896430730819702, 0.8841982483863831, 0.8673325777053833, 0.8823872208595276, 0.8485022187232971, 0.8973859548568726, 0.8919842839241028, 0.8416024446487427, 0.8851814270019531, 0.8904805183410645 ]
[ 0.8577250242233276, 0.7669697999954224, 0.7669342756271362, 0.7102837562561035, 0.7490521669387817, 0.7646592855453491, 0.6275140643119812, 0.6870853304862976, 0.7922248840332031, 0.7246564030647278, 0.6912205815315247, 0.7900813221931458, 0.6776878833770752, 0.7136601209640503, 0.7505396604537964, 0.6562976837158203, 0.8104790449142456, 0.7240511178970337, 0.7361876964569092, 0.6594680547714233, 0.8055490851402283, 0.7812000513076782, 0.7533700466156006, 0.7072620391845703, 0.6826087236404419, 0.6661540269851685, 0.7671377658843994, 0.693320631980896, 0.6967440247535706, 0.805378794670105 ]
[ 0.8498860597610474, 0.7282113432884216, 0.7248652577400208, 0.6507821083068848, 0.7034231424331665, 0.7279747724533081, 0.5431561470031738, 0.621778666973114, 0.7579247951507568, 0.6902767419815063, 0.6296476125717163, 0.7592950463294983, 0.6221611499786377, 0.6485318541526794, 0.6981964111328125, 0.6350122690200806, 0.7726330757141113, 0.666390597820282, 0.68000328540802, 0.6393753290176392, 0.7737665176391602, 0.7352228164672852, 0.7097896933555603, 0.6390486359596252, 0.5816024541854858, 0.6458849906921387, 0.7300658226013184, 0.6197627782821655, 0.630082905292511, 0.7750951051712036 ]
[ 0.8551027178764343, 0.7706780433654785, 0.7689474821090698, 0.7162337303161621, 0.7575931549072266, 0.7645937204360962, 0.6334530115127563, 0.6768115758895874, 0.7882909774780273, 0.725861668586731, 0.6961106657981873, 0.7820685505867004, 0.6756352782249451, 0.7050554752349854, 0.7434070110321045, 0.6625450253486633, 0.7952539920806885, 0.7155483365058899, 0.7330540418624878, 0.6655705571174622, 0.7993142604827881, 0.7726963758468628, 0.7573400735855103, 0.7067069411277771, 0.6814758777618408, 0.6722252368927002, 0.7677567005157471, 0.6919977068901062, 0.6880372762680054, 0.7977433204650879 ]
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file permissions in Windows 10 with Python
[ "Setting folder permissions in Windows using Python", "Permissions on my Model for Django", "python user permissions", "Paths and permissions in Windows", "Heirarchies of permissions in Django - inheriting from models and from other permissions", "Remove file permissions on windows with python", "Python - Test directory permissions", "View permissions in Django", "How to get user permissions?", "Java file permissions for threads", "How to copy directory permissions", "Are my permissions set correctly? (python)", "How can I make a directory with Python using default permissions?", "Django and file permissions problems", "How can I change the file permissions in Python?", "How do you create in python a file with permissions other users can write", "give user permissions to database", "Permissions for a site only", "Object-level Permissions", "Execution permissions in Python", "Check the permissions of a file in python", "Object level permissions django", "User permissions for Django module", "Running python with different permissions", "Django Custom Permissions", "creating permissions on shared windows folder with python", "How to set folder write permissions for application add-on with python", "Django default user permissions", "Custom django-revproxy permissions", "Write file with specific permissions in Python" ]
[ 0.9422266483306885, 0.870048463344574, 0.9151735901832581, 0.8979875445365906, 0.8563048243522644, 0.9518483281135559, 0.8929255604743958, 0.8711606860160828, 0.8521404266357422, 0.8691619038581848, 0.8730579018592834, 0.8853849172592163, 0.8978741765022278, 0.8972791433334351, 0.9228900671005249, 0.9039844274520874, 0.8532696962356567, 0.8313134908676147, 0.8270397186279297, 0.9222586750984192, 0.9189949631690979, 0.8592482805252075, 0.8822888731956482, 0.9152933955192566, 0.8516134023666382, 0.9358327984809875, 0.9033458232879639, 0.8718726634979248, 0.8539362549781799, 0.9360150098800659 ]
[ 0.9328427314758301, 0.8682443499565125, 0.905927300453186, 0.8919968605041504, 0.8619104623794556, 0.9421400427818298, 0.8907639980316162, 0.8857556581497192, 0.8405793905258179, 0.8801533579826355, 0.8649154901504517, 0.8748782277107239, 0.8808931708335876, 0.9014246463775635, 0.9069088697433472, 0.8962233066558838, 0.8481369614601135, 0.8236009478569031, 0.8402053117752075, 0.9117625951766968, 0.9264506697654724, 0.8689678311347961, 0.8809012174606323, 0.9011321663856506, 0.8558557033538818, 0.9303675293922424, 0.8867291212081909, 0.8691476583480835, 0.8741215467453003, 0.919514000415802 ]
[ 0.9257413148880005, 0.851997971534729, 0.8897720575332642, 0.8725894689559937, 0.8469692468643188, 0.9224883317947388, 0.8796080350875854, 0.8671483397483826, 0.8256973028182983, 0.8686587810516357, 0.8503150343894958, 0.8529362678527832, 0.8593202829360962, 0.8820754289627075, 0.88248610496521, 0.8709189891815186, 0.8235267400741577, 0.8240396976470947, 0.851105809211731, 0.9066168069839478, 0.9116767048835754, 0.8630139231681824, 0.8630850315093994, 0.8920257091522217, 0.8460089564323425, 0.9200186729431152, 0.8798912763595581, 0.8609131574630737, 0.8409568667411804, 0.9086720943450928 ]
[ 0.8962705135345459, 0.6081249713897705, 0.7752513885498047, 0.8086358308792114, 0.5711956024169922, 0.8671640157699585, 0.7547039985656738, 0.6573840379714966, 0.6643551588058472, 0.6820565462112427, 0.7255734205245972, 0.7554792761802673, 0.7630939483642578, 0.7589964866638184, 0.8568100333213806, 0.7655910849571228, 0.6222034692764282, 0.6077173948287964, 0.6451417207717896, 0.721352219581604, 0.7774797677993774, 0.6157425045967102, 0.636042594909668, 0.7473690509796143, 0.6452128291130066, 0.8657951354980469, 0.7994841933250427, 0.6208997964859009, 0.5944201946258545, 0.7850281000137329 ]
[ 0.8810460567474365, 0.5485314726829529, 0.7582036256790161, 0.7606079578399658, 0.5206941366195679, 0.8509066700935364, 0.7203706502914429, 0.6119942665100098, 0.6228268146514893, 0.6174159049987793, 0.67103111743927, 0.7400934100151062, 0.7248691320419312, 0.7348726391792297, 0.840333104133606, 0.7301127314567566, 0.5537042021751404, 0.55084228515625, 0.582018256187439, 0.7046691179275513, 0.7525280714035034, 0.5625448226928711, 0.5844513773918152, 0.7319161891937256, 0.600418210029602, 0.8439271450042725, 0.7415035367012024, 0.5732823610305786, 0.535280168056488, 0.7479807734489441 ]
[ 0.8854438662528992, 0.6306266784667969, 0.7697790861129761, 0.8007329702377319, 0.5919227600097656, 0.8630296587944031, 0.7476077079772949, 0.6715766787528992, 0.6845439672470093, 0.7005179524421692, 0.7295201420783997, 0.7528888583183289, 0.7556614875793457, 0.7737731337547302, 0.8587884902954102, 0.7649736404418945, 0.6380782127380371, 0.6160697937011719, 0.6462621092796326, 0.7238969802856445, 0.7746556997299194, 0.6327317953109741, 0.6538295149803162, 0.7425960898399353, 0.6655312180519104, 0.8517249822616577, 0.7799115777015686, 0.6348705291748047, 0.6133043766021729, 0.781583309173584 ]
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How to create multiple class objects with a loop in python?
[ "create multiple objects of a class with different arguments", "Create a list of objects", "python create multiple json objects", "Make loop for a list of multiple list", "loop multiple variables in python", "Loop through and create array of objects", "Create multiple classes or multiple objects in Python?", "How to add loop to handle multiple object and multiple file in Python?", "Python: How to use multiple list with a for loop", "what is a for loop doing on file objects?", "How to create multiple class with same function", "Multiple Objects of the same class in Python", "Return multiple \"while\" loop results", "Multiple variables for loop python", "python loop through list with multiple list", "python about multiple %s in a string", "How do i create objects of data in a file ?? python", "Loop through objects and change their values", "What's going on in here? Python for loop with multiple in's", "Python - multiple %s string", "Create objects in for loop", "Multiple streamhandlers", "Multiple 'or' on while loop", "Is it possible to import multiple files with a loop in python?", "How to loop through objects", "How to add Objects to Class with a loop in Python?", "Python create objects in for loop", "How to get multiple values from a for loop?", "Create list from objects in Python", "Having multiple objects in a dictionary" ]
[ 0.9195666313171387, 0.8638736605644226, 0.9114429950714111, 0.9077603816986084, 0.9250414371490479, 0.8906653523445129, 0.9562369585037231, 0.9334214925765991, 0.9130704402923584, 0.8644882440567017, 0.9141024351119995, 0.9275165796279907, 0.8641791343688965, 0.9124535322189331, 0.9053448438644409, 0.8622475862503052, 0.8886720538139343, 0.8702161312103271, 0.8933466076850891, 0.8548779487609863, 0.9127594232559204, 0.793215274810791, 0.8710702061653137, 0.9113450050354004, 0.8969826698303223, 0.9576540589332581, 0.9271895885467529, 0.9074472784996033, 0.8971761465072632, 0.8768333196640015 ]
[ 0.8980013132095337, 0.8518038988113403, 0.8987702131271362, 0.8790261745452881, 0.9145520925521851, 0.8941750526428223, 0.9426782131195068, 0.9451525211334229, 0.8908984661102295, 0.8590242862701416, 0.8999348282814026, 0.899943470954895, 0.8388750553131104, 0.9098824858665466, 0.8963002562522888, 0.8418030738830566, 0.8951514363288879, 0.8728779554367065, 0.8885653614997864, 0.8421932458877563, 0.9020165205001831, 0.7981373071670532, 0.854362964630127, 0.9080311059951782, 0.8898578882217407, 0.9641339778900146, 0.9234529733657837, 0.8950306177139282, 0.8849868774414062, 0.8517297506332397 ]
[ 0.8819609880447388, 0.8504483103752136, 0.8963050842285156, 0.8647069931030273, 0.8894913196563721, 0.876094400882721, 0.9576059579849243, 0.9322749376296997, 0.888335645198822, 0.8446835875511169, 0.8874092102050781, 0.8986852169036865, 0.8292104005813599, 0.8748990893363953, 0.8752986192703247, 0.837746262550354, 0.8906368017196655, 0.8524181842803955, 0.864051342010498, 0.8360292911529541, 0.878815770149231, 0.7810059785842896, 0.8469727039337158, 0.899336576461792, 0.8719756007194519, 0.9513250589370728, 0.9042035341262817, 0.8780863285064697, 0.888916015625, 0.8458062410354614 ]
[ 0.8700991868972778, 0.7570003271102905, 0.7807305455207825, 0.7273397445678711, 0.7438575029373169, 0.7683544158935547, 0.8608953952789307, 0.7888262271881104, 0.7583149671554565, 0.6309272050857544, 0.7630717158317566, 0.8653267621994019, 0.6438987851142883, 0.6962535381317139, 0.7050100564956665, 0.5303610563278198, 0.7465710639953613, 0.7389768362045288, 0.6376467347145081, 0.564354419708252, 0.8428806662559509, 0.5130690336227417, 0.6177642345428467, 0.6798118352890015, 0.7847008109092712, 0.8987675905227661, 0.8621729612350464, 0.7030580043792725, 0.7537364363670349, 0.7553789019584656 ]
[ 0.822388768196106, 0.6858289837837219, 0.7429840564727783, 0.6615958213806152, 0.6998127698898315, 0.7016546130180359, 0.8608555793762207, 0.737484335899353, 0.6947646737098694, 0.5342217683792114, 0.6896146535873413, 0.8386841416358948, 0.5318849086761475, 0.655673623085022, 0.662289023399353, 0.43446651101112366, 0.6888817548751831, 0.6632863283157349, 0.5507434010505676, 0.4843251705169678, 0.7833777666091919, 0.38186872005462646, 0.4906430244445801, 0.6009858250617981, 0.7302559614181519, 0.8686858415603638, 0.8366613388061523, 0.6002223491668701, 0.7050217986106873, 0.6975136995315552 ]
[ 0.858323335647583, 0.7530455589294434, 0.7936503291130066, 0.7275638580322266, 0.7452504634857178, 0.765944242477417, 0.8614482879638672, 0.7873460054397583, 0.7634696960449219, 0.6398090124130249, 0.7539990544319153, 0.8379373550415039, 0.6686646342277527, 0.6916571855545044, 0.7119256854057312, 0.5660266876220703, 0.7434823513031006, 0.7235299348831177, 0.6360626220703125, 0.6022223830223083, 0.8217867612838745, 0.5457368493080139, 0.6406510472297668, 0.7014158368110657, 0.7699664831161499, 0.8910093903541565, 0.8435894250869751, 0.7150540351867676, 0.7439242601394653, 0.7488908767700195 ]
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How to deploy a Scrapy spider on Heroku cloud
[ "Is it possible to run scrapy on heroku?", "update scrapy spider while running", "How to use Request function in a Scrapy Spider?", "Scrapy Spider Doesn't Return Any Information", "if statement not working for spider in scrapy", "scrapy how spider returns value to another spider", "How does Scrapy find Spider class by its name?", "running a python script once on deploy on heroku", "Scrapy - running spider from a python script", "Scrapy error: Spider not Found", "Scrapy cannot find spider", "Scrapy spider index error", "Python: Scrapy spider doesn't return results?", "Can't deploy python code to heroku", "Can't deploy Django application in Heroku cloud", "How to add try exception in scrapy spider?", "Scrapy : spider which doesn't work", "Python scrapy spider", "Scrapy Import Method from another Spider", "Scrapy spider not found error", "scrapy spider code check", "Why does my Scrapy spider not run as expected?", "Why is a spider object needed in spider.py for scrapy?", "How to start a Scrapy spider from another one", "Scrapy : Create csv file with spider name", "How to call Scrapy Spider through a Django App", "Scrapy Could not find spider Error", "Scrapy on the Cloud", "Import Error when trying to import scrapy spider into django", "Requirements error while trying to deploy to Scrapy Cloud" ]
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How to iterate over Unicode characters in Python 3?
[ "iterate through unicode strings and compare with unicode in python dictionary", "How should I convert a string containing unicode characters to unicode?", "Python doesn't save file with unicode characters", "Remove unicode characters", "How to filter out unicode characters in Python?", "How do I read an image from a path with Unicode characters?", "python's string is unicode characters", "python replace unicode characters", "Getting number of characters in a unicode string in python", "How can I replace Unicode characters in Python?", "How to use Unicode characters in a python string", "how to have unicode characters in django url?", "Iterate over a string 2 (or n) characters at a time in Python", "Make regex from string with unicode characters", "Python write unicode characters wrong", "Print a run of unicode characters in order", "Iterate dictionary when the value is unicode", "Iterate over a string in Python and add some new characters", "How to iterate a Unicode string in Python?", "How can I print all unicode characters?", "Python Iterate through characters", "regex unicode characters", "Getting the unicode characters of a string", "How to iterate over successively-increasing-length slices of the characters in a string?", "How to properly iterate over unicode characters in Python", "Unicode characters and regex", "have unicode characters in url", "Writing unicode characters to file in Python", "how to convert characters like these,\"a³ a¡ a´a§\" in unicode, using python?", "Replace unicode characters only once in Python" ]
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how to split column of tuples in pandas dataframe?
[ "Pandas: plot a dataframe containing a column of tuples", "Convert a list of lists of tuples to pandas dataframe", "Convert pandas dataframe to list of tuples", "Split a column data using another column data in Pandas Dataframe", "Split a list of tuples in a column of dataframe to columns of a dataframe", "How to split dataframe in pandas", "Pandas split a dataframe column", "Pandas convert dataframe to array of tuples", "Replace values in Pandas DataFrame column with integer lists / tuples", "Pandas dataframe of tuples?", "Split pandas dataframe by column variable", "Pandas Dataframe to the dict of list with tuples", "Pandas dataframe to list of tuples", "Python - Pandas dataframe with tuples", "Pandas dataframe create new column based on list of tuples", "count the tuples of a pandas Dataframe", "split string into list of tuples?", "Split strings in tuples into columns, in Pandas", "How to query a pandas DataFrame using an array of tuples ?", "Pandas split DataFrame by column value", "How to convert tuple of tuples to pandas.DataFrame in Python?", "Python Pandas Series Tuples dataframe", "creating a dataframe from a dictionary of tuples in pandas", "Python Pandas Dataframe to Nested Tuples", "Python dict with values as tuples to pandas DataFrame", "How to convert multiple tuples into a dataframe in pandas", "Pandas Split DataFrame", "pandas DataFrame to dict with values as tuples", "Python: Pandas DataFrame for tuples", "Create new pandas dataframe and add values stored in an array of tuples" ]
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SWIG wrapped vector of vectors (C++ to python) - how to recognise the inner vector as a proxy object?
[ "Wrap std::vector of std::vectors, C++ SWIG Python", "How can I get vector from the saved vector text file?", "How to use a Python list to assign a std::vector in C++ using SWIG?", "Using SWIG to wrap C++ for Python. 'vector' not declared", "Using intel's __attribute__((vector)) with swig", "How to use scipy.interpolate.interp2d for a vector of data?", "SWIG argument error when using \"using std::vector\" in python", "Wrapping return vector<T> on swig", "How does this vector work?", "Python; Append vector to an array", "Python Vector Class", "Vector Class Adding", "I have a SWIG-wrapped vector. How can I tell which type it contains?", "How do you write a SWIG interface file for a function that uses vector<string>?", "Add a vector to array", "vector< vector <double> > argument with swig and python", "Python array to 1-D Vector", "Apply Up Vector to look at vector", "How to get a vector from a list in list in python?", "Is it possible to get scipy.integrate.odeint to work with a pair of vectors (or vector of vectors)", "Swig: interface simple C++ class that returns vector", "Python swig-wrapped vector of vector of doubles appears as Tuple", "SWIG c++ vector access in python", "vector script in python 3", "Read Vector from Text File", "Find Closest Vector from a List of Vectors | Python", "C++ vector to Python 3.3", "Return vector<string> by reference", "Pythonic way to create empty map of vector of vector of vector", "Extract vector of numbers from a string-vector" ]
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Optional get parameters in django?
[ "Django - regex optional function parameters in URL", "django 1.3 - Correct way to define optional parameters for a class based view", "Two or more than two optional parameters in django url", "Calling or Passing Optional Parameters to Function", "Optional variables in Python", "Is there a way to pass optional parameters to a function?", "Using optional parameters in python functions", "Optional parameters in Python functions and their default values", "django url fails with optional parameters", "Multiple URL key-value pair parameters that are optional in Django", "Django URLs: matching a fixed number of optional parameters?", "Python - Create object from JSON with optional key/value parameters", "Python: More elegant way to add optional parameters to method call", "How can I define a function with default parameter values and optional parameters in Python?", "How to work with optional parameters that are set to None", "django - regex for optional url parameters", "Django filtering based on optional parameters", "How to build a decorator with optional parameters?", "Can Flask have optional URL parameters?", "How to call python function with optional parameters", "How to specify which optional parameters to use in a method call?", "Python constructor with many optional parameters", "Make an input optional in Python", "how to pass optional parameters into a function in python?", "Optional Default Values", "Python Optional Parameters Censoring", "Optional parameters in python dict", "What is the most pythonic way to call a method with optional parameters?", "Django: Optional model form field", "Optional Parameters in Python with List Append" ]
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