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"},"metadata":{}}]},{"cell_type":"code","source":"generated_essays = train_essays[train_essays['generated'] == 1]\ngenerated_essays","metadata":{"datalore":{"node_id":"PoYwJW5KtkraGRQiCmLFge","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:03.414733Z","iopub.execute_input":"2024-02-07T16:13:03.415006Z","iopub.status.idle":"2024-02-07T16:13:03.425880Z","shell.execute_reply.started":"2024-02-07T16:13:03.414982Z","shell.execute_reply":"2024-02-07T16:13:03.424958Z"},"trusted":true},"execution_count":52,"outputs":[{"execution_count":52,"output_type":"execute_result","data":{"text/plain":" id prompt_id text \\\n704 82131f68 1 This essay will analyze, discuss and prove one... \n740 86fe4f18 1 I strongly believe that the Electoral College ... \n1262 eafb8a56 0 Limiting car use causes pollution, increases c... \n\n generated text_len \n704 1 1356 \n740 1 1500 \n1262 1 1797 ","text/html":"
\n\n
\n \n
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id
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prompt_id
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text
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generated
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text_len
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\n
704
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82131f68
\n
1
\n
This essay will analyze, discuss and prove one...
\n
1
\n
1356
\n
\n
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740
\n
86fe4f18
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1
\n
I strongly believe that the Electoral College ...
\n
1
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1500
\n
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\n
1262
\n
eafb8a56
\n
0
\n
Limiting car use causes pollution, increases c...
\n
1
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1797
\n
\n \n
\n
"},"metadata":{}}]},{"cell_type":"code","source":"ax2 = sns.countplot(data=train_essays, x='prompt_id')\nax2.bar_label(ax2.containers[0])\nplt.title('Distribution of prompts');","metadata":{"datalore":{"node_id":"ylPh4tN2nxXxzTwLkufmz4","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:03.430932Z","iopub.execute_input":"2024-02-07T16:13:03.431331Z","iopub.status.idle":"2024-02-07T16:13:03.627755Z","shell.execute_reply.started":"2024-02-07T16:13:03.431287Z","shell.execute_reply":"2024-02-07T16:13:03.626923Z"},"trusted":true},"execution_count":53,"outputs":[{"output_type":"display_data","data":{"text/plain":"
"},"metadata":{}}]},{"cell_type":"markdown","source":"There is only dummy data in test_essays, after submission the text will be replaced with real text.","metadata":{"datalore":{"node_id":"eCoBMveMWE8eAs95Z2g9oA","type":"MD","hide_input_from_viewers":true,"hide_output_from_viewers":true}}},{"cell_type":"markdown","source":"### Exploring Train Prompts data","metadata":{"datalore":{"node_id":"urZA7FLe9NfAUqNoKjObON","type":"MD","hide_input_from_viewers":true,"hide_output_from_viewers":true}}},{"cell_type":"code","source":"train_prompts","metadata":{"datalore":{"node_id":"jUDH4BTi5z6rvr59VFk343","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:03.639476Z","iopub.execute_input":"2024-02-07T16:13:03.639753Z","iopub.status.idle":"2024-02-07T16:13:03.654284Z","shell.execute_reply.started":"2024-02-07T16:13:03.639730Z","shell.execute_reply":"2024-02-07T16:13:03.653356Z"},"trusted":true},"execution_count":55,"outputs":[{"execution_count":55,"output_type":"execute_result","data":{"text/plain":" prompt_id prompt_name \\\n0 0 Car-free cities \n1 1 Does the electoral college work? \n\n instructions \\\n0 Write an explanatory essay to inform fellow ci... \n1 Write a letter to your state senator in which ... \n\n source_text \n0 # In German Suburb, Life Goes On Without Cars ... \n1 # What Is the Electoral College? by the Office... ","text/html":"
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prompt_id
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Car-free cities
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Write an explanatory essay to inform fellow ci...
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Does the electoral college work?
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Write a letter to your state senator in which ...
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"},"metadata":{}}]},{"cell_type":"code","source":"train_prompts.iloc[0]['instructions']","metadata":{"datalore":{"node_id":"IhBtxcZceIE7zNVgxyRZml","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:03.655312Z","iopub.execute_input":"2024-02-07T16:13:03.655624Z","iopub.status.idle":"2024-02-07T16:13:03.665807Z","shell.execute_reply.started":"2024-02-07T16:13:03.655594Z","shell.execute_reply":"2024-02-07T16:13:03.664903Z"},"trusted":true},"execution_count":56,"outputs":[{"execution_count":56,"output_type":"execute_result","data":{"text/plain":"'Write an explanatory essay to inform fellow citizens about the advantages of limiting car usage. Your essay must be based on ideas and information that can be found in the passage set. Manage your time carefully so that you can read the passages; plan your response; write your response; and revise and edit your response. Be sure to use evidence from multiple sources; and avoid overly relying on one source. Your response should be in the form of a multiparagraph essay. Write your essay in the space provided.'"},"metadata":{}}]},{"cell_type":"markdown","source":"**Prompt_id = 0**\\\n**prompt_name = Car-free cities**\\\n'Write an explanatory essay to inform fellow citizens about the advantages of limiting car usage. Your essay must be based on ideas and information that can be found in the passage set. Manage your time carefully so that you can read the passages; plan your response; write your response; and revise and edit your response. Be sure to use evidence from multiple sources; and avoid overly relying on one source. Your response should be in the form of a multiparagraph essay. Write your essay in the space provided.'","metadata":{"datalore":{"node_id":"YBADwMdIO4pNpI8MUskJT7","type":"MD","hide_input_from_viewers":true,"hide_output_from_viewers":true}}},{"cell_type":"code","source":"train_prompts.iloc[1]['instructions']","metadata":{"datalore":{"node_id":"slJneLtnk2LCqrwBUMShys","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:03.666700Z","iopub.execute_input":"2024-02-07T16:13:03.666924Z","iopub.status.idle":"2024-02-07T16:13:03.676438Z","shell.execute_reply.started":"2024-02-07T16:13:03.666904Z","shell.execute_reply":"2024-02-07T16:13:03.675611Z"},"trusted":true},"execution_count":57,"outputs":[{"execution_count":57,"output_type":"execute_result","data":{"text/plain":"'Write a letter to your state senator in which you argue in favor of keeping the Electoral College or changing to election by popular vote for the president of the United States. Use the information from the texts in your essay. Manage your time carefully so that you can read the passages; plan your response; write your response; and revise and edit your response. Be sure to include a claim; address counterclaims; use evidence from multiple sources; and avoid overly relying on one source. Your response should be in the form of a multiparagraph essay. Write your response in the space provided.'"},"metadata":{}}]},{"cell_type":"markdown","source":"**Prompt_id = 1**\\\n**prompt_name = Does the electoral college work?**\\\n'Write a letter to your state senator in which you argue in favor of keeping the Electoral College or changing to election by popular vote for the president of the United States. Use the information from the texts in your essay. Manage your time carefully so that you can read the passages; plan your response; write your response; and revise and edit your response. Be sure to include a claim; address counterclaims; use evidence from multiple sources; and avoid overly relying on one source. Your response should be in the form of a multiparagraph essay. Write your response in the space provided.'","metadata":{"datalore":{"node_id":"KFNcrRCeP8O0rBaXUUMvFi","type":"MD","hide_input_from_viewers":true,"hide_output_from_viewers":true}}},{"cell_type":"markdown","source":"## 3. Loading external dataset","metadata":{"datalore":{"node_id":"jD4ZTKf0EQNPKEX9ic8a5l","type":"MD","hide_input_from_viewers":true,"hide_output_from_viewers":true}}},{"cell_type":"markdown","source":"Since there are only 3 AI generated essays, I need extra dataset with AI generated text.\\\nLuckily there is such data on Kaggle.","metadata":{"datalore":{"node_id":"Yy2tKqV4xjtf2WiwpLJNx5","type":"MD","hide_input_from_viewers":true,"hide_output_from_viewers":true}}},{"cell_type":"code","source":"external_essays = pd.read_csv('/kaggle/input/daigt-v2-train-dataset/train_v2_drcat_02.csv')","metadata":{"datalore":{"node_id":"IoEuwVB0cfQC5DSC41JG0V","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:03.677497Z","iopub.execute_input":"2024-02-07T16:13:03.677760Z","iopub.status.idle":"2024-02-07T16:13:04.747705Z","shell.execute_reply.started":"2024-02-07T16:13:03.677738Z","shell.execute_reply":"2024-02-07T16:13:04.746628Z"},"trusted":true},"execution_count":58,"outputs":[]},{"cell_type":"code","source":"external_essays.head(10)","metadata":{"datalore":{"node_id":"ZNPA0op16zbCTzBLwFuwmD","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:04.748974Z","iopub.execute_input":"2024-02-07T16:13:04.749308Z","iopub.status.idle":"2024-02-07T16:13:04.761456Z","shell.execute_reply.started":"2024-02-07T16:13:04.749281Z","shell.execute_reply":"2024-02-07T16:13:04.760478Z"},"trusted":true},"execution_count":59,"outputs":[{"execution_count":59,"output_type":"execute_result","data":{"text/plain":" text label \\\n0 Phones\\n\\nModern humans today are always on th... 0 \n1 This essay will explain if drivers should or s... 0 \n2 Driving while the use of cellular devices\\n\\nT... 0 \n3 Phones & Driving\\n\\nDrivers should not be able... 0 \n4 Cell Phone Operation While Driving\\n\\nThe abil... 0 \n5 Cell phone use should not be legal while drivi... 0 \n6 Phones and Driving\\n\\nDriving is a good way to... 0 \n7 PHONES AND DRIVING\\n\\nIn this world in which w... 0 \n8 People are debating whether if drivers should ... 0 \n9 Texting and driving\\n\\nOver half of drivers in... 0 \n\n prompt_name source RDizzl3_seven \n0 Phones and driving persuade_corpus False \n1 Phones and driving persuade_corpus False \n2 Phones and driving persuade_corpus False \n3 Phones and driving persuade_corpus False \n4 Phones and driving persuade_corpus False \n5 Phones and driving persuade_corpus False \n6 Phones and driving persuade_corpus False \n7 Phones and driving persuade_corpus False \n8 Phones and driving persuade_corpus False \n9 Phones and driving persuade_corpus False ","text/html":"
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Phones\\n\\nModern humans today are always on th...
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Phones and driving
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"},"metadata":{}}]},{"cell_type":"code","source":"external_essays['text_len'] = external_essays['text'].apply(len)\nexternal_essays = external_essays.sort_values('text_len')\nexternal_essays","metadata":{"datalore":{"node_id":"HUEkPkK7SPKGYXJXY3XqOc","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:04.762834Z","iopub.execute_input":"2024-02-07T16:13:04.763088Z","iopub.status.idle":"2024-02-07T16:13:04.815853Z","shell.execute_reply.started":"2024-02-07T16:13:04.763066Z","shell.execute_reply":"2024-02-07T16:13:04.814908Z"},"trusted":true},"execution_count":60,"outputs":[{"execution_count":60,"output_type":"execute_result","data":{"text/plain":" text label \\\n41204 In recent years, there has been a growing trend 1 \n40767 Dear Senator,\\n\\nI am writing in support of k... 1 \n41168 Car usage has long been a significant factor ... 1 \n41167 Limiting car usage is a concept that has gain... 1 \n34960 Passage 1:\\n\\nPassage 2:\\n\\nPassage 3:\\n\\nPass... 1 \n... ... ... \n8895 The author did not do a good job at supporting... 0 \n19290 Dear Senator,\\n\\nI favoring of keeping the Ele... 0 \n1772 This passage is about a germany mom from the s... 0 \n2549 Imagen the streets with no cars empty with onl... 0 \n1517 if we look back at time in the united states y... 0 \n\n prompt_name source \\\n41204 Distance learning mistralai/Mistral-7B-Instruct-v0.1 \n40767 Does the electoral college work? mistralai/Mistral-7B-Instruct-v0.1 \n41168 Car-free cities mistralai/Mistral-7B-Instruct-v0.1 \n41167 Car-free cities mistralai/Mistral-7B-Instruct-v0.1 \n34960 Seeking multiple opinions falcon_180b_v1 \n... ... ... \n8895 Exploring Venus persuade_corpus \n19290 Does the electoral college work? persuade_corpus \n1772 Car-free cities persuade_corpus \n2549 Car-free cities persuade_corpus \n1517 Car-free cities persuade_corpus \n\n RDizzl3_seven text_len \n41204 False 48 \n40767 True 272 \n41168 True 273 \n41167 True 304 \n34960 False 314 \n... ... ... \n8895 True 9980 \n19290 True 10309 \n1772 True 11641 \n2549 True 18125 \n1517 True 18322 \n\n[44868 rows x 6 columns]","text/html":"
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In recent years, there has been a growing trend
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Distance learning
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mistralai/Mistral-7B-Instruct-v0.1
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40767
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Dear Senator,\\n\\nI am writing in support of k...
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"},"metadata":{}}]},{"cell_type":"code","source":"df.head()","metadata":{"datalore":{"node_id":"ItJikExfedJp3LE8X7Srha","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:05.254735Z","iopub.execute_input":"2024-02-07T16:13:05.255590Z","iopub.status.idle":"2024-02-07T16:13:05.265677Z","shell.execute_reply.started":"2024-02-07T16:13:05.255533Z","shell.execute_reply":"2024-02-07T16:13:05.264692Z"},"trusted":true},"execution_count":67,"outputs":[{"execution_count":67,"output_type":"execute_result","data":{"text/plain":" text generated\n0 In recent years, there has been a growing trend 1\n1 Dear Senator,\\n\\nI am writing in support of k... 1\n2 Car usage has long been a significant factor ... 1\n3 Limiting car usage is a concept that has gain... 1\n4 Passage 1:\\n\\nPassage 2:\\n\\nPassage 3:\\n\\nPass... 1","text/html":"
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text
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generated
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In recent years, there has been a growing trend
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Dear Senator,\\n\\nI am writing in support of k...
"},"metadata":{}}]},{"cell_type":"markdown","source":"**Clean text**","metadata":{"datalore":{"node_id":"8978uMqZOlfcnT3mHvQZp1","type":"MD","hide_input_from_viewers":true,"hide_output_from_viewers":true}}},{"cell_type":"code","source":"df.iloc[7][['text','generated']]","metadata":{"datalore":{"node_id":"3b3ir2r9QMkiwmxPnJ0E5l","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:05.267026Z","iopub.execute_input":"2024-02-07T16:13:05.267368Z","iopub.status.idle":"2024-02-07T16:13:05.279580Z","shell.execute_reply.started":"2024-02-07T16:13:05.267338Z","shell.execute_reply":"2024-02-07T16:13:05.278553Z"},"trusted":true},"execution_count":68,"outputs":[{"execution_count":68,"output_type":"execute_result","data":{"text/plain":"text After researching extensively into different p...\ngenerated 1\nName: 7, dtype: object"},"metadata":{}}]},{"cell_type":"code","source":"def clean_text(text):\n #delete non-alphanumeric characters\n text = re.sub(r\"[^A-Za-z0-9\\s]\", \"\", text)\n #delete extra whitespaces\n text = re.sub(r\"\\s+\", \" \", text)\n #convert to lowercase\n text = text.lower()\n\n return text","metadata":{"datalore":{"node_id":"N1DjNMEJW5CsHvDCHngtmn","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:05.280640Z","iopub.execute_input":"2024-02-07T16:13:05.280937Z","iopub.status.idle":"2024-02-07T16:13:05.289950Z","shell.execute_reply.started":"2024-02-07T16:13:05.280914Z","shell.execute_reply":"2024-02-07T16:13:05.289146Z"},"trusted":true},"execution_count":69,"outputs":[]},{"cell_type":"code","source":"df['text'] = df['text'].map(clean_text)","metadata":{"datalore":{"node_id":"qjp0S2zUgdmaJANVSOwwXv","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:05.291016Z","iopub.execute_input":"2024-02-07T16:13:05.291337Z","iopub.status.idle":"2024-02-07T16:13:16.672977Z","shell.execute_reply.started":"2024-02-07T16:13:05.291313Z","shell.execute_reply":"2024-02-07T16:13:16.672155Z"},"trusted":true},"execution_count":70,"outputs":[]},{"cell_type":"code","source":"df.iloc[7]['text']","metadata":{"execution":{"iopub.status.busy":"2024-02-07T16:13:16.678991Z","iopub.execute_input":"2024-02-07T16:13:16.679353Z","iopub.status.idle":"2024-02-07T16:13:16.685339Z","shell.execute_reply.started":"2024-02-07T16:13:16.679328Z","shell.execute_reply":"2024-02-07T16:13:16.684457Z"},"trusted":true},"execution_count":71,"outputs":[{"execution_count":71,"output_type":"execute_result","data":{"text/plain":"'after researching extensively into different potential career paths i have shortlisted my top 5 options i have read up on the various qualifications responsibilities and other important aspects of each one and weighed them up against my skills and experience now i am planning to discuss my top 5 with my parents and teachers to get their opinions on which one could potentially benefit me the best'"},"metadata":{}}]},{"cell_type":"markdown","source":"## 4. Tokenizing","metadata":{"datalore":{"node_id":"2Tt8LbIyZKzdQgMtl7VNhK","type":"MD","hide_input_from_viewers":true,"hide_output_from_viewers":true}}},{"cell_type":"code","source":"# checkpoint = '../input/transformers/distilbert-base-uncased'\ncheckpoint = 'distilbert/distilbert-base-uncased-finetuned-sst-2-english'","metadata":{"datalore":{"node_id":"SrkC7QpLgPn1I0cIx9UaA0","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:16.686480Z","iopub.execute_input":"2024-02-07T16:13:16.686807Z","iopub.status.idle":"2024-02-07T16:13:16.698985Z","shell.execute_reply.started":"2024-02-07T16:13:16.686776Z","shell.execute_reply":"2024-02-07T16:13:16.698299Z"},"trusted":true},"execution_count":72,"outputs":[]},{"cell_type":"code","source":"batch_size = 25","metadata":{"execution":{"iopub.status.busy":"2024-02-07T16:13:16.700077Z","iopub.execute_input":"2024-02-07T16:13:16.700702Z","iopub.status.idle":"2024-02-07T16:13:16.711065Z","shell.execute_reply.started":"2024-02-07T16:13:16.700670Z","shell.execute_reply":"2024-02-07T16:13:16.710157Z"},"trusted":true},"execution_count":73,"outputs":[]},{"cell_type":"code","source":"tokenizer = AutoTokenizer.from_pretrained(checkpoint)","metadata":{"datalore":{"node_id":"2X59C8t23MfaAuhJcGqTAB","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:16.712051Z","iopub.execute_input":"2024-02-07T16:13:16.712349Z","iopub.status.idle":"2024-02-07T16:13:16.874897Z","shell.execute_reply.started":"2024-02-07T16:13:16.712325Z","shell.execute_reply":"2024-02-07T16:13:16.874159Z"},"trusted":true},"execution_count":74,"outputs":[]},{"cell_type":"code","source":"def tokenize_and_split(text):\n encoding = tokenizer(\n text[\"text\"],\n truncation=True,\n padding=True,\n max_length=512,\n return_overflowing_tokens=True,\n )\n # Extract mapping between new and old indices\n sample_map = encoding.pop(\"overflow_to_sample_mapping\")\n for key, values in text.items():\n encoding[key] = [values[i] for i in sample_map]\n return encoding","metadata":{"datalore":{"node_id":"Np01F6IxXptsTFbJEtQcVi","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:16.875924Z","iopub.execute_input":"2024-02-07T16:13:16.876226Z","iopub.status.idle":"2024-02-07T16:13:16.881595Z","shell.execute_reply.started":"2024-02-07T16:13:16.876202Z","shell.execute_reply":"2024-02-07T16:13:16.880686Z"},"trusted":true},"execution_count":75,"outputs":[]},{"cell_type":"code","source":"raw_ds = datasets.Dataset.from_pandas(df)\nraw_ds = raw_ds.train_test_split(test_size=0.2)\nraw_ds","metadata":{"datalore":{"node_id":"ok2iNWqKhS3Xr6BgnS8XKL","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:16.882783Z","iopub.execute_input":"2024-02-07T16:13:16.883139Z","iopub.status.idle":"2024-02-07T16:13:17.133386Z","shell.execute_reply.started":"2024-02-07T16:13:16.883084Z","shell.execute_reply":"2024-02-07T16:13:17.132340Z"},"trusted":true},"execution_count":76,"outputs":[{"execution_count":76,"output_type":"execute_result","data":{"text/plain":"DatasetDict({\n train: Dataset({\n features: ['text', 'generated'],\n num_rows: 36996\n })\n test: Dataset({\n features: ['text', 'generated'],\n num_rows: 9250\n })\n})"},"metadata":{}}]},{"cell_type":"code","source":"tokenized_ds = raw_ds.map(tokenize_and_split, batched=True)","metadata":{"datalore":{"node_id":"MDZBrC9YPCTvp51uU2TETh","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:17.134367Z","iopub.execute_input":"2024-02-07T16:13:17.136441Z","iopub.status.idle":"2024-02-07T16:13:57.609413Z","shell.execute_reply.started":"2024-02-07T16:13:17.136406Z","shell.execute_reply":"2024-02-07T16:13:57.608495Z"},"trusted":true},"execution_count":77,"outputs":[{"output_type":"display_data","data":{"text/plain":"Map: 0%| | 0/36996 [00:00, ? examples/s]","application/vnd.jupyter.widget-view+json":{"version_major":2,"version_minor":0,"model_id":"f76e65463f8941b9b07cb4edde985210"}},"metadata":{}},{"output_type":"display_data","data":{"text/plain":"Map: 0%| | 0/9250 [00:00, ? examples/s]","application/vnd.jupyter.widget-view+json":{"version_major":2,"version_minor":0,"model_id":"1caf000576754e73b46a2b4837aad091"}},"metadata":{}}]},{"cell_type":"code","source":"tokenized_ds","metadata":{"datalore":{"node_id":"Kogb1E8iCGSyKM1a5tqNKr","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:57.610798Z","iopub.execute_input":"2024-02-07T16:13:57.611188Z","iopub.status.idle":"2024-02-07T16:13:57.619303Z","shell.execute_reply.started":"2024-02-07T16:13:57.611153Z","shell.execute_reply":"2024-02-07T16:13:57.618451Z"},"trusted":true},"execution_count":78,"outputs":[{"execution_count":78,"output_type":"execute_result","data":{"text/plain":"DatasetDict({\n train: Dataset({\n features: ['text', 'generated', 'input_ids', 'attention_mask'],\n num_rows: 45367\n })\n test: Dataset({\n features: ['text', 'generated', 'input_ids', 'attention_mask'],\n num_rows: 11267\n })\n})"},"metadata":{}}]},{"cell_type":"code","source":"data_collator = DataCollatorWithPadding(tokenizer=tokenizer, return_tensors=\"tf\")","metadata":{"datalore":{"node_id":"ZiedoYlNkJO38MDwbBtk1D","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:57.620367Z","iopub.execute_input":"2024-02-07T16:13:57.620634Z","iopub.status.idle":"2024-02-07T16:13:57.634232Z","shell.execute_reply.started":"2024-02-07T16:13:57.620611Z","shell.execute_reply":"2024-02-07T16:13:57.633273Z"},"trusted":true},"execution_count":79,"outputs":[]},{"cell_type":"markdown","source":"## 5. Modelling","metadata":{"datalore":{"node_id":"PNCf05cZxmkj4mYnNrH1e6","type":"MD","hide_input_from_viewers":true,"hide_output_from_viewers":true}}},{"cell_type":"code","source":"tf_train_dataset = tokenized_ds['train'].to_tf_dataset(\n columns=[\"attention_mask\", \"input_ids\"],\n label_cols=[\"generated\"],\n shuffle=True,\n collate_fn=data_collator,\n batch_size=batch_size,\n)\n\ntf_test_dataset = tokenized_ds['test'].to_tf_dataset(\n columns=[\"attention_mask\", \"input_ids\"],\n label_cols=[\"generated\"],\n shuffle=False,\n collate_fn=data_collator,\n batch_size=batch_size,\n)","metadata":{"datalore":{"node_id":"59cwxcIVF1G0FQQI583weB","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:57.635235Z","iopub.execute_input":"2024-02-07T16:13:57.635464Z","iopub.status.idle":"2024-02-07T16:13:57.782092Z","shell.execute_reply.started":"2024-02-07T16:13:57.635444Z","shell.execute_reply":"2024-02-07T16:13:57.781228Z"},"trusted":true},"execution_count":80,"outputs":[{"name":"stderr","text":"/opt/conda/lib/python3.10/site-packages/datasets/arrow_dataset.py:399: FutureWarning: The output of `to_tf_dataset` will change when a passing single element list for `labels` or `columns` in the next datasets version. To return a tuple structure rather than dict, pass a single string.\nOld behaviour: columns=['a'], labels=['labels'] -> (tf.Tensor, tf.Tensor) \n : columns='a', labels='labels' -> (tf.Tensor, tf.Tensor) \nNew behaviour: columns=['a'],labels=['labels'] -> ({'a': tf.Tensor}, {'labels': tf.Tensor}) \n : columns='a', labels='labels' -> (tf.Tensor, tf.Tensor) \n warnings.warn(\n","output_type":"stream"}]},{"cell_type":"code","source":"num_epochs = 2","metadata":{"execution":{"iopub.status.busy":"2024-02-07T16:13:57.783312Z","iopub.execute_input":"2024-02-07T16:13:57.783569Z","iopub.status.idle":"2024-02-07T16:13:57.787307Z","shell.execute_reply.started":"2024-02-07T16:13:57.783547Z","shell.execute_reply":"2024-02-07T16:13:57.786339Z"},"trusted":true},"execution_count":81,"outputs":[]},{"cell_type":"code","source":"model = TFAutoModelForSequenceClassification.from_pretrained(checkpoint, num_labels=2, from_pt=True)","metadata":{"datalore":{"node_id":"N0KmKqUgQAhDA3T22hXvH0","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:57.788362Z","iopub.execute_input":"2024-02-07T16:13:57.788638Z","iopub.status.idle":"2024-02-07T16:13:58.918881Z","shell.execute_reply.started":"2024-02-07T16:13:57.788614Z","shell.execute_reply":"2024-02-07T16:13:58.917823Z"},"trusted":true},"execution_count":82,"outputs":[{"name":"stderr","text":"All PyTorch model weights were used when initializing TFDistilBertForSequenceClassification.\n\nAll the weights of TFDistilBertForSequenceClassification were initialized from the PyTorch model.\nIf your task is similar to the task the model of the checkpoint was trained on, you can already use TFDistilBertForSequenceClassification for predictions without further training.\n","output_type":"stream"}]},{"cell_type":"code","source":"# The number of training steps is the number of samples in the dataset, divided by the batch size then multiplied\n# by the total number of epochs. Note that the tf_train_dataset here is a batched tf.data.Dataset,\n# not the original Hugging Face Dataset, so its len() is already num_samples // batch_size.\nnum_train_steps = len(tf_train_dataset) * num_epochs\nlr_scheduler = PolynomialDecay(\n initial_learning_rate=5e-5, end_learning_rate=0.0, decay_steps=num_train_steps\n)\n\nopt = Adam(learning_rate=lr_scheduler)\n\nloss = tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True)\n\nes = EarlyStopping(monitor='val_loss', patience=1, verbose=1, mode='auto', restore_best_weights=True)\n\ncallback = PushToHubCallback(\n \"LLM_generated_text_detector\", save_strategy=\"no\", tokenizer=tokenizer\n)","metadata":{"datalore":{"node_id":"KgCP6HcT4sIzhVUP361LJt","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:58.920321Z","iopub.execute_input":"2024-02-07T16:13:58.920593Z","iopub.status.idle":"2024-02-07T16:13:59.156543Z","shell.execute_reply.started":"2024-02-07T16:13:58.920568Z","shell.execute_reply":"2024-02-07T16:13:59.155652Z"},"trusted":true},"execution_count":83,"outputs":[{"name":"stderr","text":"/opt/conda/lib/python3.10/site-packages/huggingface_hub/utils/_deprecation.py:131: FutureWarning: 'Repository' (from 'huggingface_hub.repository') is deprecated and will be removed from version '1.0'. Please prefer the http-based alternatives instead. Given its large adoption in legacy code, the complete removal is only planned on next major release.\nFor more details, please read https://huggingface.co/docs/huggingface_hub/concepts/git_vs_http.\n warnings.warn(warning_message, FutureWarning)\n/kaggle/working/LLM_generated_text_detector is already a clone of https://huggingface.co/Wintersmith/LLM_generated_text_detector. Make sure you pull the latest changes with `repo.git_pull()`.\n","output_type":"stream"}]},{"cell_type":"code","source":"model.compile(optimizer=opt, loss=loss, metrics=[\"accuracy\"])","metadata":{"datalore":{"node_id":"FWsaXd4PpT0LElBgYMitIc","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:59.157601Z","iopub.execute_input":"2024-02-07T16:13:59.157864Z","iopub.status.idle":"2024-02-07T16:13:59.169580Z","shell.execute_reply.started":"2024-02-07T16:13:59.157840Z","shell.execute_reply":"2024-02-07T16:13:59.168698Z"},"trusted":true},"execution_count":84,"outputs":[]},{"cell_type":"code","source":"model.fit(tf_train_dataset, validation_data=tf_test_dataset, epochs=num_epochs, callbacks=[es, callback])","metadata":{"datalore":{"node_id":"Q57EJS3MbWm5NXRe9pHyM6","type":"CODE","hide_input_from_viewers":true,"hide_output_from_viewers":true},"execution":{"iopub.status.busy":"2024-02-07T16:13:59.170764Z","iopub.execute_input":"2024-02-07T16:13:59.171079Z","iopub.status.idle":"2024-02-07T17:47:39.001846Z","shell.execute_reply.started":"2024-02-07T16:13:59.171049Z","shell.execute_reply":"2024-02-07T17:47:39.000824Z"},"trusted":true},"execution_count":85,"outputs":[{"name":"stdout","text":"Epoch 1/2\n1815/1815 [==============================] - 2812s 2s/step - loss: 0.0579 - accuracy: 0.9809 - val_loss: 0.0272 - val_accuracy: 0.9920\nEpoch 2/2\n1815/1815 [==============================] - 2790s 2s/step - loss: 0.0082 - accuracy: 0.9974 - val_loss: 0.0191 - val_accuracy: 0.9941\n","output_type":"stream"},{"output_type":"display_data","data":{"text/plain":"Upload file tf_model.h5: 0%| | 1.00/256M [00:00, ?B/s]","application/vnd.jupyter.widget-view+json":{"version_major":2,"version_minor":0,"model_id":"8131a47329644fd8a4adaeb6488e0e43"}},"metadata":{}},{"name":"stderr","text":"To https://huggingface.co/Wintersmith/LLM_generated_text_detector\n 9aa28a0..f4838f7 main -> main\n\n","output_type":"stream"},{"execution_count":85,"output_type":"execute_result","data":{"text/plain":""},"metadata":{}}]},{"cell_type":"code","source":"#model.save_pretrained(\"/kaggle/working/model_trained\", saved_model=True)\n","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:47:39.003003Z","iopub.execute_input":"2024-02-07T17:47:39.003387Z","iopub.status.idle":"2024-02-07T17:47:39.007252Z","shell.execute_reply.started":"2024-02-07T17:47:39.003360Z","shell.execute_reply":"2024-02-07T17:47:39.006371Z"},"trusted":true},"execution_count":86,"outputs":[]},{"cell_type":"markdown","source":"## 6. Evaluation","metadata":{}},{"cell_type":"code","source":"preds = model.predict(tf_test_dataset)[\"logits\"]\n\ny_pred = np.argmax(preds, axis=1)\nprint(preds.shape, y_pred.shape)\n\ny_pred\n\n#y_true = np.concatenate([y for x, y in tf_test_dataset], axis=0)\n# https://stackoverflow.com/questions/56226621/how-to-extract-data-labels-back-from-tensorflow-dataset","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:47:39.008525Z","iopub.execute_input":"2024-02-07T17:47:39.009205Z","iopub.status.idle":"2024-02-07T17:51:20.348390Z","shell.execute_reply.started":"2024-02-07T17:47:39.009171Z","shell.execute_reply":"2024-02-07T17:51:20.347443Z"},"trusted":true},"execution_count":87,"outputs":[{"name":"stdout","text":"451/451 [==============================] - 221s 486ms/step\n(11267, 2) (11267,)\n","output_type":"stream"},{"execution_count":87,"output_type":"execute_result","data":{"text/plain":"array([1, 0, 0, ..., 1, 1, 0])"},"metadata":{}}]},{"cell_type":"code","source":"def get_probabilities(input_text):\n logits_pred = model.predict(input_text)['logits']\n probs = tf.nn.sigmoid(logits_pred)\n class_1_probability = probs[:, 1].numpy()\n return class_1_probability","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:51:20.349613Z","iopub.execute_input":"2024-02-07T17:51:20.349921Z","iopub.status.idle":"2024-02-07T17:51:20.355158Z","shell.execute_reply.started":"2024-02-07T17:51:20.349892Z","shell.execute_reply":"2024-02-07T17:51:20.354154Z"},"trusted":true},"execution_count":88,"outputs":[]},{"cell_type":"code","source":"y_prob = get_probabilities(tf_test_dataset)\ny_prob","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:51:20.356452Z","iopub.execute_input":"2024-02-07T17:51:20.356843Z","iopub.status.idle":"2024-02-07T17:54:59.830689Z","shell.execute_reply.started":"2024-02-07T17:51:20.356797Z","shell.execute_reply":"2024-02-07T17:54:59.829525Z"},"trusted":true},"execution_count":89,"outputs":[{"name":"stdout","text":"451/451 [==============================] - 219s 486ms/step\n","output_type":"stream"},{"execution_count":89,"output_type":"execute_result","data":{"text/plain":"array([0.9966794 , 0.01150257, 0.01455727, ..., 0.99643433, 0.99624926,\n 0.03235682], dtype=float32)"},"metadata":{}}]},{"cell_type":"code","source":"y_true = np.concatenate([y for x, y in tf_test_dataset], axis=0)","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:54:59.831848Z","iopub.execute_input":"2024-02-07T17:54:59.832147Z","iopub.status.idle":"2024-02-07T17:55:02.179651Z","shell.execute_reply.started":"2024-02-07T17:54:59.832104Z","shell.execute_reply":"2024-02-07T17:55:02.178681Z"},"trusted":true},"execution_count":90,"outputs":[]},{"cell_type":"code","source":"def evaluate_model(y_true, y_pred):\n print(ConfusionMatrixDisplay.from_predictions(y_true, y_pred))\n print(classification_report(y_true, y_pred))\n print('F1 score:', f1_score(y_true, y_pred))","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:02.181096Z","iopub.execute_input":"2024-02-07T17:55:02.181519Z","iopub.status.idle":"2024-02-07T17:55:02.186565Z","shell.execute_reply.started":"2024-02-07T17:55:02.181485Z","shell.execute_reply":"2024-02-07T17:55:02.185529Z"},"trusted":true},"execution_count":91,"outputs":[]},{"cell_type":"code","source":"evaluate_model(y_true=y_true, y_pred=y_pred)","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:02.187803Z","iopub.execute_input":"2024-02-07T17:55:02.188185Z","iopub.status.idle":"2024-02-07T17:55:02.500352Z","shell.execute_reply.started":"2024-02-07T17:55:02.188150Z","shell.execute_reply":"2024-02-07T17:55:02.499174Z"},"trusted":true},"execution_count":92,"outputs":[{"name":"stdout","text":"\n precision recall f1-score support\n\n 0 1.00 0.99 1.00 7613\n 1 0.99 0.99 0.99 3654\n\n accuracy 0.99 11267\n macro avg 0.99 0.99 0.99 11267\nweighted avg 0.99 0.99 0.99 11267\n\nF1 score: 0.9908457439540921\n","output_type":"stream"},{"output_type":"display_data","data":{"text/plain":"
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"},"metadata":{}}]},{"cell_type":"markdown","source":"## 7. Submitting predictions on test set","metadata":{}},{"cell_type":"code","source":"test_essays\n","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:02.501599Z","iopub.execute_input":"2024-02-07T17:55:02.501910Z","iopub.status.idle":"2024-02-07T17:55:02.513693Z","shell.execute_reply.started":"2024-02-07T17:55:02.501884Z","shell.execute_reply":"2024-02-07T17:55:02.512625Z"},"trusted":true},"execution_count":93,"outputs":[{"execution_count":93,"output_type":"execute_result","data":{"text/plain":" id prompt_id text\n0 0000aaaa 2 Aaa bbb ccc.\n1 1111bbbb 3 Bbb ccc ddd.\n2 2222cccc 4 CCC ddd eee.","text/html":"
\n\n
\n \n
\n
\n
id
\n
prompt_id
\n
text
\n
\n \n \n
\n
0
\n
0000aaaa
\n
2
\n
Aaa bbb ccc.
\n
\n
\n
1
\n
1111bbbb
\n
3
\n
Bbb ccc ddd.
\n
\n
\n
2
\n
2222cccc
\n
4
\n
CCC ddd eee.
\n
\n \n
\n
"},"metadata":{}}]},{"cell_type":"code","source":"test_essays['text'] = test_essays['text'].map(clean_text)\n","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:02.516021Z","iopub.execute_input":"2024-02-07T17:55:02.516980Z","iopub.status.idle":"2024-02-07T17:55:02.537197Z","shell.execute_reply.started":"2024-02-07T17:55:02.516927Z","shell.execute_reply":"2024-02-07T17:55:02.535910Z"},"trusted":true},"execution_count":94,"outputs":[]},{"cell_type":"code","source":"raw_final_ds = datasets.Dataset.from_pandas(test_essays)\nraw_final_ds","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:02.538476Z","iopub.execute_input":"2024-02-07T17:55:02.538853Z","iopub.status.idle":"2024-02-07T17:55:02.556050Z","shell.execute_reply.started":"2024-02-07T17:55:02.538825Z","shell.execute_reply":"2024-02-07T17:55:02.554954Z"},"trusted":true},"execution_count":95,"outputs":[{"execution_count":95,"output_type":"execute_result","data":{"text/plain":"Dataset({\n features: ['id', 'prompt_id', 'text'],\n num_rows: 3\n})"},"metadata":{}}]},{"cell_type":"code","source":"tokenized_test_dataset = raw_final_ds.map(tokenize_and_split, batched=True)\ntokenized_test_dataset","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:02.557634Z","iopub.execute_input":"2024-02-07T17:55:02.558575Z","iopub.status.idle":"2024-02-07T17:55:02.611994Z","shell.execute_reply.started":"2024-02-07T17:55:02.558522Z","shell.execute_reply":"2024-02-07T17:55:02.610964Z"},"trusted":true},"execution_count":96,"outputs":[{"output_type":"display_data","data":{"text/plain":"Map: 0%| | 0/3 [00:00, ? examples/s]","application/vnd.jupyter.widget-view+json":{"version_major":2,"version_minor":0,"model_id":"2935bcca138c4ede9876e51cb63fd1d5"}},"metadata":{}},{"execution_count":96,"output_type":"execute_result","data":{"text/plain":"Dataset({\n features: ['id', 'prompt_id', 'text', 'input_ids', 'attention_mask'],\n num_rows: 3\n})"},"metadata":{}}]},{"cell_type":"code","source":"tf_final_dataset = tokenized_test_dataset.to_tf_dataset(\n columns=[\"attention_mask\", \"input_ids\"],\n #label_cols=[\"target\"],\n shuffle=False,\n collate_fn=data_collator,\n batch_size=batch_size,\n)","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:02.613469Z","iopub.execute_input":"2024-02-07T17:55:02.613883Z","iopub.status.idle":"2024-02-07T17:55:02.683005Z","shell.execute_reply.started":"2024-02-07T17:55:02.613845Z","shell.execute_reply":"2024-02-07T17:55:02.682161Z"},"trusted":true},"execution_count":97,"outputs":[]},{"cell_type":"code","source":"class_1_final_probability = get_probabilities(tf_final_dataset)","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:02.684201Z","iopub.execute_input":"2024-02-07T17:55:02.684505Z","iopub.status.idle":"2024-02-07T17:55:04.305151Z","shell.execute_reply.started":"2024-02-07T17:55:02.684479Z","shell.execute_reply":"2024-02-07T17:55:04.304117Z"},"trusted":true},"execution_count":98,"outputs":[{"name":"stdout","text":"1/1 [==============================] - 2s 2s/step\n","output_type":"stream"}]},{"cell_type":"code","source":"sample_submission[\"generated\"] = class_1_final_probability","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:04.306598Z","iopub.execute_input":"2024-02-07T17:55:04.306963Z","iopub.status.idle":"2024-02-07T17:55:04.311697Z","shell.execute_reply.started":"2024-02-07T17:55:04.306929Z","shell.execute_reply":"2024-02-07T17:55:04.310770Z"},"trusted":true},"execution_count":99,"outputs":[]},{"cell_type":"code","source":"sample_submission.to_csv(\"/kaggle/working/submission.csv\", index=False)","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:04.313079Z","iopub.execute_input":"2024-02-07T17:55:04.313775Z","iopub.status.idle":"2024-02-07T17:55:04.334285Z","shell.execute_reply.started":"2024-02-07T17:55:04.313692Z","shell.execute_reply":"2024-02-07T17:55:04.333453Z"},"trusted":true},"execution_count":100,"outputs":[]},{"cell_type":"markdown","source":"## 8. Predict one sentence","metadata":{}},{"cell_type":"code","source":"# sequence_text = input your own text\nsequence_text = raw_ds['test']['text'][15]\nprint(f\"Label: {raw_ds['test']['generated'][15]}\")\nprint(f\"Text:\\n {sequence_text}\")","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:04.335269Z","iopub.execute_input":"2024-02-07T17:55:04.335504Z","iopub.status.idle":"2024-02-07T17:55:04.471992Z","shell.execute_reply.started":"2024-02-07T17:55:04.335477Z","shell.execute_reply":"2024-02-07T17:55:04.471135Z"},"trusted":true},"execution_count":101,"outputs":[{"name":"stdout","text":"Label: 0\nText:\n to principal students should not be able to have or do community service if they where not convicted of a crime they committed in school of on school grounds community service is understandable to me but its not fair to have students help out others if they werent convicted of bad behavior an example to that u cant order a student to do community service for himher for picking up trash another student dropped in the hallway in addition to that students have the rite to do community service if not given to himher but if community service is given then heshe should be punished for there actions but what did they do to deserve community service some students should be punished for bad behavior talking back even just being plan out disrespectful to one another but what they shouldnt have community service for is helping out another person when they are caught in the act of someone else being mean to himher also being a good character to the school classmates teachers staff and custodians if someone is not so you can show that person how to be respectful an how some should act at all times maybe staff and teachers like to punish us because of a ruff past they had growing up as a child thats not rite so they want to give us community service make us there little pets but that shouldnt be the answer to none of there problems sencirley studentname\n","output_type":"stream"}]},{"cell_type":"code","source":"sequence = sequence_text\nmodel_input = tokenizer(sequence, max_length=512, padding=True, truncation=True, return_tensors='tf')\nmodel_input = dict(model_input)","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:04.473129Z","iopub.execute_input":"2024-02-07T17:55:04.473403Z","iopub.status.idle":"2024-02-07T17:55:04.478948Z","shell.execute_reply.started":"2024-02-07T17:55:04.473379Z","shell.execute_reply":"2024-02-07T17:55:04.478053Z"},"trusted":true},"execution_count":102,"outputs":[]},{"cell_type":"code","source":"get_probabilities(model_input)","metadata":{"execution":{"iopub.status.busy":"2024-02-07T17:55:04.479877Z","iopub.execute_input":"2024-02-07T17:55:04.480184Z","iopub.status.idle":"2024-02-07T17:55:06.157918Z","shell.execute_reply.started":"2024-02-07T17:55:04.480160Z","shell.execute_reply":"2024-02-07T17:55:06.157147Z"},"trusted":true},"execution_count":103,"outputs":[{"name":"stdout","text":"1/1 [==============================] - 2s 2s/step\n","output_type":"stream"},{"execution_count":103,"output_type":"execute_result","data":{"text/plain":"array([0.01741369], dtype=float32)"},"metadata":{}}]}]}
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