zwn22 commited on
Commit
ded3790
1 Parent(s): 0b75790

Delete Cleaned Data Processing.ipynb

Browse files
Files changed (1) hide show
  1. Cleaned Data Processing.ipynb +0 -333
Cleaned Data Processing.ipynb DELETED
@@ -1,333 +0,0 @@
1
- {
2
- "cells": [
3
- {
4
- "cell_type": "code",
5
- "execution_count": 1,
6
- "id": "711a0e17",
7
- "metadata": {},
8
- "outputs": [],
9
- "source": [
10
- "import pandas as pd\n",
11
- "import requests\n",
12
- "import zipfile\n",
13
- "import pandas as pd\n",
14
- "from io import BytesIO"
15
- ]
16
- },
17
- {
18
- "cell_type": "code",
19
- "execution_count": 8,
20
- "id": "6abd0a8c",
21
- "metadata": {},
22
- "outputs": [],
23
- "source": [
24
- "import requests\n",
25
- "import zipfile\n",
26
- "import pandas as pd\n",
27
- "from io import BytesIO\n",
28
- "\n",
29
- "# Function to handle ZIP files containing CSVs\n",
30
- "def download_and_read_zip_csv(url):\n",
31
- " with requests.get(url) as response:\n",
32
- " response.raise_for_status() \n",
33
- " with zipfile.ZipFile(BytesIO(response.content)) as zip_file:\n",
34
- " data_file_name = zip_file.namelist()[0] \n",
35
- " with zip_file.open(data_file_name) as df:\n",
36
- " data = pd.read_csv(df, low_memory=False)\n",
37
- " return data\n",
38
- "\n",
39
- "# Function to download and read an XLSX file\n",
40
- "def download_and_read_xlsx(url):\n",
41
- " with requests.get(url) as response:\n",
42
- " response.raise_for_status()\n",
43
- " data = pd.read_excel(BytesIO(response.content))\n",
44
- " return data\n",
45
- "\n",
46
- "# URLs\n",
47
- "url_chapel = \"https://huggingface.co/datasets/zwn22/NC_Crime/resolve/main/Chapel_Hill.csv.zip\"\n",
48
- "url_raleigh = \"https://huggingface.co/datasets/zwn22/NC_Crime/resolve/main/Raleigh.csv.zip\"\n",
49
- "url_cary = \"https://data.townofcary.org/api/explore/v2.1/catalog/datasets/cpd-incidents/exports/csv?lang=en&timezone=US%2FEastern&use_labels=true&delimiter=%2C\"\n",
50
- "url_durham = \"https://www.arcgis.com/sharing/rest/content/items/7132216432df4957830593359b0c4030/data\"\n",
51
- "\n",
52
- "Chapel = download_and_read_zip_csv(url_chapel)\n",
53
- "Raleigh = download_and_read_zip_csv(url_raleigh)\n",
54
- "Cary = pd.read_csv(url_cary, low_memory=False) \n",
55
- "Durham = download_and_read_xlsx(url_durham) "
56
- ]
57
- },
58
- {
59
- "cell_type": "code",
60
- "execution_count": 76,
61
- "id": "c7195730",
62
- "metadata": {},
63
- "outputs": [],
64
- "source": [
65
- "import pandas as pd\n",
66
- "from pyproj import Transformer\n",
67
- "\n",
68
- "def process_crime_data(filename, city_name):\n",
69
- " pd.options.mode.chained_assignment = None \n",
70
- "\n",
71
- " def categorize_crime(crime):\n",
72
- " for category, crimes in crime_mapping.items():\n",
73
- " if crime in crimes:\n",
74
- " return category\n",
75
- " return 'Miscellaneous'\n",
76
- " \n",
77
- " def convert_coordinates(x, y):\n",
78
- " transformer = Transformer.from_crs(\"epsg:2264\", \"epsg:4326\", always_xy=True)\n",
79
- " lon, lat = transformer.transform(x, y)\n",
80
- " return pd.Series([lat, lon])\n",
81
- " \n",
82
- " crime_mapping = {\n",
83
- " 'Theft': [\n",
84
- " 'BURGLARY', 'MOTOR VEHICLE THEFT', 'LARCENY',\n",
85
- " 'LARCENY - AUTOMOBILE PARTS OR ACCESSORIES', 'TOWED/ABANDONED VEHICLE',\n",
86
- " 'LARCENY - FROM MOTOR VEHICLE', 'LARCENY - SHOPLIFTING', 'LOST PROPERTY',\n",
87
- " 'VANDALISM', 'LARCENY - ALL OTHER', 'LARCENY - FROM BUILDING',\n",
88
- " 'RECOVERED STOLEN PROPERTY (OTHER JURISDICTION)', 'LARCENY - POCKET-PICKING',\n",
89
- " 'LARCENY - FROM COIN-OPERATED DEVICE', 'LARCENY - PURSESNATCHING',\n",
90
- " 'LARCENY FROM MV', 'MV THEFT', 'STOLEN PROPERTY',\n",
91
- " 'THEFT/LARCENY', 'LARCENY FROM AU', 'LARCENY FROM PE', 'LARCENY OF OTHE',\n",
92
- " 'LARCENY FROM BU', 'LARCENY OF BIKE', 'LARCENY FROM RE', 'LARCENY OF AUTO'\n",
93
- " ],\n",
94
- " 'Fraud': [\n",
95
- " 'FRAUD-IDENTITY THEFT', 'EMBEZZLEMENT', 'COUNTERFEITING/FORGERY',\n",
96
- " 'FRAUD - CONFIDENCE GAMES/TRICKERY', 'FRAUD - CREDIT CARD/ATM',\n",
97
- " 'FRAUD - UNAUTHORIZED USE OF CONVEYANCE', 'FRAUD - FALSE PRETENSE',\n",
98
- " 'FRAUD - IMPERSONATION', 'FRAUD - WIRE/COMPUTER/OTHER ELECTRONIC',\n",
99
- " 'FRAUD - WORTHLESS CHECKS', 'FRAUD-FAIL TO RETURN RENTAL VEHICLE',\n",
100
- " 'FRAUD-HACKING/COMPUTER INVASION', 'FRAUD-WELFARE FRAUD', 'FRAUD', 'BRIBERY',\n",
101
- " 'FRAUD OR DECEPT'\n",
102
- " ],\n",
103
- " 'Assault': [\n",
104
- " 'SIMPLE ASSAULT', 'AGGRAVATED ASSAULT', 'ASSAULT', 'ASSAULT/SEXUAL',\n",
105
- " 'STAB GUNSHOT PE', 'ACTIVE ASSAILAN'\n",
106
- " ],\n",
107
- " 'Drugs': [\n",
108
- " 'DRUG/NARCOTIC VIOLATIONS', 'DRUG EQUIPMENT/PARAPHERNALIA', 'DRUGS',\n",
109
- " 'DRUG VIOLATIONS'\n",
110
- " ],\n",
111
- " 'Sexual Offenses': [\n",
112
- " 'SEX OFFENSE - FORCIBLE RAPE', 'SEX OFFENSE - SEXUAL ASSAULT WITH AN OBJECT',\n",
113
- " 'SEX OFFENSE - FONDLING', 'SEX OFFENSE - INDECENT EXPOSURE', 'SEX OFFENSE - FORCIBLE SODOMY',\n",
114
- " 'SEX OFFENSE - STATUTORY RAPE', 'SEX OFFENSE - PEEPING TOM', 'SEX OFFENSE - INCEST',\n",
115
- " 'SEX OFFENSES', 'SEXUAL OFFENSE'\n",
116
- " ],\n",
117
- " 'Homicide': [\n",
118
- " 'HOMICIDE-MURDER/NON-NEGLIGENT MANSLAUGHTER', 'JUSTIFIABLE HOMICIDE',\n",
119
- " 'HOMICIDE - NEGLIGENT MANSLAUGHTER', 'MURDER', 'SUICIDE ATTEMPT', 'ABUSE/ABANDOMEN',\n",
120
- " 'DECEASED PERSON'\n",
121
- " ],\n",
122
- " 'Arson': ['ARSON'],\n",
123
- " 'Kidnapping': ['KIDNAPPING/ABDUCTION', 'KIDNAPPING'],\n",
124
- " 'Weapons Violations': ['WEAPON VIOLATIONS', 'WEAPONS VIOLATION', 'WEAPON/FIREARMS'],\n",
125
- " 'Traffic Violations': [\n",
126
- " 'ALL TRAFFIC (EXCEPT DWI)', 'TRAFFIC', 'UNAUTHORIZED MOTOR VEHICLE USE',\n",
127
- " 'TRAFFIC VIOLATIONS', 'LIQUOR LAW VIOLATIONS', 'TRAFFIC STOP', 'TRAFFIC/TRANSPO',\n",
128
- " 'TRAFFIC VIOLATI', 'MVC', 'MVC W INJURY', 'MVC W INJURY AB', 'MVC W INJURY DE',\n",
129
- " 'MVC ENTRAPMENT'\n",
130
- " ],\n",
131
- " 'Disorderly Conduct': [\n",
132
- " 'DISORDERLY CONDUCT', 'DISORDERLY CONDUCT-DRUNK AND DISRUPTIVE',\n",
133
- " 'DISORDERLY CONDUCT-FIGHTING (AFFRAY)', 'DISORDERLY CONDUCT-UNLAWFUL ASSEMBLY',\n",
134
- " 'DISTURBANCE/NUI', 'DOMESTIC DISTUR', 'DISPUTE', 'DISTURBANCE', 'LOST PROPERTY',\n",
135
- " 'TRESPASSING/UNW', 'REFUSAL TO LEAV', 'SUSPICIOUS COND', 'STRUCTURE FIRE'\n",
136
- " ],\n",
137
- " 'Gambling': [\n",
138
- " 'GAMBLING - OPERATING/PROMOTING/ASSISTING', 'GAMBLING - BETTING/WAGERING', 'GAMBLING'\n",
139
- " ],\n",
140
- " 'Animal-related Offenses': ['ANIMAL CRUELTY', 'ANIMAL BITE', 'ANIMAL', 'ANIMAL CALL'],\n",
141
- " 'Prostitution-related Offenses': [\n",
142
- " 'PROSTITUTION', 'PROSTITUTION - ASSISTING/PROMOTING', 'PROSTITUTION - PURCHASING'\n",
143
- " ],\n",
144
- " 'Miscellaneous': [\n",
145
- " 'MISCELLANEOUS', 'ALL OTHER OFFENSES', '<Null>', 'SUSPICIOUS/WANT', 'MISC OFFICER IN',\n",
146
- " 'INDECENCY/LEWDN', 'PUBLIC SERVICE', 'TRESPASSING', 'UNKNOWN PROBLEM', 'LOUD NOISE',\n",
147
- " 'ESCORT', 'ABDUCTION/CUSTO', 'THREATS', 'BURGLAR ALARM', 'DOMESTIC', 'PROPERTY FOUND',\n",
148
- " 'FIREWORKS', 'MISSING/RUNAWAY', 'MENTAL DISORDER', 'CHECK WELL BEIN', 'PSYCHIATRIC',\n",
149
- " 'OPEN DOOR', 'ABANDONED AUTO', 'HARASSMENT THRE', 'JUVENILE RELATE', 'ASSIST MOTORIST',\n",
150
- " 'HAZARDOUS DRIVI', 'GAS LEAK FIRE', 'ASSIST OTHER AG', 'DOMESTIC ASSIST', 'SUSPICIOUS VEHI',\n",
151
- " 'UNKNOWN LE', 'ALARMS', '911 HANGUP', 'BOMB/CBRN/PRODU', 'STATIONARY PATR', 'LITTERING',\n",
152
- " 'HOUSE CHECK', 'CARDIAC', 'CLOSE PATROL', 'BOMB FOUND/SUSP', 'INFO FOR ALL UN', 'UNCONCIOUS OR F',\n",
153
- " 'LIFTING ASSISTA', 'ATTEMPT TO LOCA', 'SICK PERSON', 'HEAT OR COLD EX', 'CONFINED SPACE',\n",
154
- " 'TRAUMATIC INJUR', 'DROWNING', 'CITY ORDINANCE', 'JUVENILE', 'MISSING PERSON',\n",
155
- " 'PUBLIC SERVICE', 'PUBLICE SERVICE'\n",
156
- " ],\n",
157
- " 'Robbery': ['ROBBERY'],\n",
158
- " 'Extortion': ['EXTORTION'],\n",
159
- " 'Human Trafficking': ['HUMAN TRAFFICKING']\n",
160
- " }\n",
161
- " \n",
162
- " crime_severity_mapping = {\n",
163
- " 'Miscellaneous': 'Minor',\n",
164
- " 'Disorderly Conduct': 'Minor',\n",
165
- " 'Traffic Violations': 'Minor',\n",
166
- " 'Animal-related Offenses': 'Minor',\n",
167
- " 'Prostitution-related Offenses': 'Minor',\n",
168
- " 'Gambling': 'Minor',\n",
169
- " 'Public Service': 'Minor',\n",
170
- " 'Juvenile': 'Minor',\n",
171
- " 'Fraud': 'Moderate',\n",
172
- " 'Theft': 'Moderate',\n",
173
- " 'Drugs': 'Moderate',\n",
174
- " 'Assault': 'Moderate',\n",
175
- " 'Sexual Offenses': 'Moderate',\n",
176
- " 'Weapons Violations': 'Moderate',\n",
177
- " 'Vandalism': 'Moderate',\n",
178
- " 'Burglary': 'Moderate',\n",
179
- " 'Robbery': 'Moderate',\n",
180
- " 'Kidnapping': 'Severe',\n",
181
- " 'Homicide': 'Severe',\n",
182
- " 'Arson': 'Severe',\n",
183
- " 'Extortion': 'Severe',\n",
184
- " 'Human Trafficking': 'Severe',\n",
185
- " 'Murder': 'Severe'\n",
186
- " }\n",
187
- "\n",
188
- " df = pd.DataFrame() # Initialize an empty DataFrame for generic use\n",
189
- " \n",
190
- " \n",
191
- " \n",
192
- " if city_name == 'Durham':\n",
193
- " df = pd.read_excel(filename)\n",
194
- " df['Weapon'] = df['Weapon'].replace(['(blank)', 'Not Applicable/None', 'Unknown/Not Stated'], None) \n",
195
- " df['crime_major_category'] = df['Offense'].apply(categorize_crime)\n",
196
- " \n",
197
- " # Apply coordinate conversion and categorization\n",
198
- " coordinates = df.apply(lambda row: convert_coordinates(row['X'], row['Y']), axis=1)\n",
199
- " df['latitude'], df['longitude'] = coordinates[0], coordinates[1]\n",
200
- "\n",
201
- " new_df = pd.DataFrame({\n",
202
- " \"year\": pd.to_datetime(df['Report Date']).dt.year,\n",
203
- " \"city\": \"Durham\",\n",
204
- " \"crime_major_category\": df['crime_major_category'],\n",
205
- " \"crime_detail\": df['Offense'].str.title(),\n",
206
- " \"latitude\": df['latitude'],\n",
207
- " \"longitude\": df['longitude'],\n",
208
- " \"occurance_time\": pd.to_datetime(df['Report Date'].astype(str) + ' ' + df['Report Time'], errors='coerce').dt.strftime('%Y/%m/%d %H:%M:%S'),\n",
209
- " \"clear_status\": df['Status'],\n",
210
- " \"incident_address\": df['Address'],\n",
211
- " \"notes\": df['Weapon'].apply(lambda x: f\"Weapon: {x}\" if pd.notnull(x) else \"No Data\")\n",
212
- " }).fillna(\"No Data\")\n",
213
- "\n",
214
- " \n",
215
- " elif city_name == 'Raleigh':\n",
216
- " df = pd.read_csv(filename, low_memory=False)\n",
217
- " new_df = pd.DataFrame({\n",
218
- " \"year\": df['reported_year'],\n",
219
- " \"city\": \"Raleigh\",\n",
220
- " \"crime_major_category\": df['crime_category'].apply(categorize_crime),\n",
221
- " \"crime_detail\": df['crime_description'],\n",
222
- " \"latitude\": df['latitude'].round(5).fillna(0),\n",
223
- " \"longitude\": df['longitude'].round(5).fillna(0),\n",
224
- " \"occurance_time\": pd.to_datetime(df['reported_date'].str.replace(r'\\+\\d{2}$', '', regex=True), errors='coerce').dt.strftime('%Y/%m/%d %H:%M:%S'),\n",
225
- " \"clear_status\": None,\n",
226
- " \"incident_address\": df['reported_block_address'] + ', ' + df['district'] + ', Raleigh',\n",
227
- " \"notes\": 'District: '+ df['district'].str.title()\n",
228
- " }).fillna(\"No Data\")\n",
229
- " \n",
230
- " elif city_name == 'Cary':\n",
231
- " df = pd.read_csv(filename, low_memory=False).dropna(subset=['Year'])\n",
232
- " new_df = pd.DataFrame({\n",
233
- " \"year\": df[\"Year\"].astype(int),\n",
234
- " \"city\": \"Cary\",\n",
235
- " \"crime_major_category\": df['Crime Category'].apply(categorize_crime).str.title(),\n",
236
- " \"crime_detail\": df['Crime Type'].str.title(),\n",
237
- " \"latitude\": df['Lat'].fillna(0).round(5).fillna(0),\n",
238
- " \"longitude\": df['Lon'].fillna(0).round(5).fillna(0),\n",
239
- " \"occurance_time\": pd.to_datetime(df['Begin Date Of Occurrence'] + ' ' + df['Begin Time Of Occurrence']).dt.strftime('%Y/%m/%d %H:%M:%S'),\n",
240
- " \"clear_status\": None,\n",
241
- " \"incident_address\": df['Geo Code'],\n",
242
- " \"notes\": 'District: '+ df['District'].str.title() + ' Violent Property: ' + df['Violent Property'].str.title()\n",
243
- " }).fillna(\"No Data\")\n",
244
- " \n",
245
- " elif city_name == 'Chapel Hill':\n",
246
- " df = pd.read_csv(filename, low_memory=False)\n",
247
- " replace_values = {'<Null>': None, 'NONE': None}\n",
248
- " df['Weapon_Description'] = df['Weapon_Description'].replace(replace_values)\n",
249
- " new_df = pd.DataFrame({\n",
250
- " \"year\": pd.to_datetime(df['Date_of_Occurrence']).dt.year,\n",
251
- " \"city\": \"Chapel Hill\",\n",
252
- " \"crime_major_category\": df['Reported_As'].apply(categorize_crime),\n",
253
- " \"crime_detail\": df['Offense'].str.title(),\n",
254
- " \"latitude\": df['X'].round(5).fillna(0),\n",
255
- " \"longitude\": df['Y'].round(5).fillna(0),\n",
256
- " \"occurance_time\": pd.to_datetime(df['Date_of_Occurrence'].str.replace(r'\\+\\d{2}$', '', regex=True)).dt.strftime('%Y/%m/%d %H:%M:%S'),\n",
257
- " \"clear_status\": None,\n",
258
- " \"incident_address\": df['Street'].str.replace(\"@\", \" \"),\n",
259
- " \"notes\": df['Weapon_Description'].apply(lambda x: f\"Weapon: {x}\" if pd.notnull(x) else \"Weapon: None\").str.title()\n",
260
- " }).fillna(\"No Data\")\n",
261
- " indices_to_switch = new_df.loc[(new_df['latitude'].between(-82, -75)) & (new_df['longitude'].between(35, 40))].index\n",
262
- " for idx in indices_to_switch:\n",
263
- " new_df.at[idx, 'latitude'], new_df.at[idx, 'longitude'] = new_df.at[idx, 'longitude'], new_df.at[idx, 'latitude']\n",
264
- "\n",
265
- " \n",
266
- " new_df = new_df[new_df['year'] >= 2015]\n",
267
- " new_df = new_df.loc[(new_df['latitude'].between(35, 40)) & (new_df['longitude'].between(-82, -75))]\n",
268
- " new_df['crime_severity'] = new_df['crime_major_category'].map(crime_severity_mapping)\n",
269
- " return new_df\n",
270
- "\n",
271
- "# Example usage\n",
272
- "Cary_new = process_crime_data(\"Cary.csv\", \"Cary\")\n",
273
- "Chapel_new = process_crime_data(\"Chapel_hill.csv\", \"Chapel Hill\")\n",
274
- "Durham_new = process_crime_data(\"Durham.xlsx\", \"Durham\")\n",
275
- "Raleigh_new = process_crime_data(\"Raleigh.csv\", \"Raleigh\")\n"
276
- ]
277
- },
278
- {
279
- "cell_type": "code",
280
- "execution_count": 77,
281
- "id": "cfd5d140",
282
- "metadata": {},
283
- "outputs": [],
284
- "source": [
285
- "NC_v1 = pd.concat([Durham_new, Chapel_new, Cary_new, Raleigh_new], ignore_index=True)\n",
286
- "NC_v1.to_csv('NC_v1.csv', index=False)"
287
- ]
288
- },
289
- {
290
- "cell_type": "code",
291
- "execution_count": 5,
292
- "id": "8186c46a",
293
- "metadata": {},
294
- "outputs": [
295
- {
296
- "data": {
297
- "text/plain": [
298
- "(585886, 11)"
299
- ]
300
- },
301
- "execution_count": 5,
302
- "metadata": {},
303
- "output_type": "execute_result"
304
- }
305
- ],
306
- "source": [
307
- "NC_v1 = pd.read_csv(\"NC_v1.csv\")\n",
308
- "NC_v1.shape"
309
- ]
310
- }
311
- ],
312
- "metadata": {
313
- "kernelspec": {
314
- "display_name": "Python 3 (ipykernel)",
315
- "language": "python",
316
- "name": "python3"
317
- },
318
- "language_info": {
319
- "codemirror_mode": {
320
- "name": "ipython",
321
- "version": 3
322
- },
323
- "file_extension": ".py",
324
- "mimetype": "text/x-python",
325
- "name": "python",
326
- "nbconvert_exporter": "python",
327
- "pygments_lexer": "ipython3",
328
- "version": "3.11.5"
329
- }
330
- },
331
- "nbformat": 4,
332
- "nbformat_minor": 5
333
- }