# -*- coding: utf-8 -*- """assessment3_Mark_Hayden.ipynb Automatically generated by Colab. Original file is located at https://colab.research.google.com/drive/1gTZtBnC7kvWELzlIiTOkRd1aJaeXxJtm Hello professor, I was able to deploy the app to HuggingFace but ran into an issue that I think is on HuggingFace/Gradio side: /usr/local/lib/python3.10/site-packages/gradio/blocks.py:626: UserWarning: Cannot load dark-grass. Caught Exception: 404 Client Error: Not Found for url: https://huggingface.co/api/spaces/dark-grass (Request ID: Root=1-661c106f-039767d826b7f84a6a7b4ac4;63fe1a3b-5196-4853-925d-fe96a80c1756). There is documentation on this that I can see, and the interface runs in the notebook so I don't believe it's a code/library issue but I left the Space up so you can see. Gradio Space: https://huggingface.co/spaces/MHayden/enron_qa **Part 1:** This section of the notebook is used for pulling the Enron dataset down from Kaggle. It contains the preprocessing steps I used. I have saved the output as a pickle file for Part 2 below. """ import pandas as pd import numpy as np import pickle from transformers import pipeline import gradio as gr with open('file.pkl', 'rb') as file: # Call load method to deserialze df = pickle.load(file) # QA pipeline setup from transformers import AutoTokenizer, TFAutoModelForQuestionAnswering model = TFAutoModelForQuestionAnswering.from_pretrained("bert-large-uncased-whole-word-masking-finetuned-squad",return_dict=False) tokenizer = AutoTokenizer.from_pretrained("bert-large-uncased-whole-word-masking-finetuned-squad") nlp = pipeline("question-answering", model=model, tokenizer=tokenizer) df['bankrupt'] = df['emails'].str.lower().str.contains(r'\bbankrupt\b') df['litigation'] = df['emails'].str.lower().str.contains(r'\blitigation\b') df['fraud'] = df['emails'].str.lower().str.contains(r'\bfraud\b') df['talking_points'] = df['emails'].str.lower().str.contains(r'\btalking\spoint\b') df['shutdown'] = df['emails'].str.lower().str.contains(r'\bshutdown\b') # Creating dataframe for Gradio gradio_df = df.loc[(df['bankrupt'] == True) | (df['litigation'] == True) | (df['fraud'] == True) | (df['talking_points'] == True) | (df['shutdown'] == True)] example_questions = {} tags = {} for i in range(gradio_df.shape[0]): example_questions['example_' + str(i+1)] = gradio_df['emails'].iloc[i] tags['tag' + str(i+1)] = gradio_df[['bankrupt', 'litigation', 'fraud', 'talking_points','shutdown']].iloc[i] import gradio as gr # creating the function def func(context, question,tags): result = nlp(question = question, context=context,tags = tags) return result['answer'] question = 'Search for a keyword/phrase using Tags to guide you' # creating the interface app = gr.Interface(fn=func, inputs = ['textbox', 'text','text'], outputs = 'textbox', title = 'Question Answering bot', description = 'Please choose an example below. You can write a question and recieve an answer, please use tags to guide you.', examples = [[example_questions['example_1'],question,tags['tag1']],[example_questions['example_2'],question,tags['tag2']],[example_questions['example_3'],question,tags['tag3']],[example_questions['example_4'],question,tags['tag4']],[example_questions['example_5'],question,tags['tag5']],[example_questions['example_6'],question,tags['tag6']],[example_questions['example_7'],question,tags['tag7']],[example_questions['example_8'],question,tags['tag8']],[example_questions['example_9'],question,tags['tag9']],[example_questions['example_10'],question,tags['tag10']],[example_questions['example_11'],question,tags['tag11']],[example_questions['example_12'],question,tags['tag12']],[example_questions['example_13'],question,tags['tag13']],[example_questions['example_14'],question,tags['tag14']],[example_questions['example_15'],question,tags['tag15']],[example_questions['example_16'],question,tags['tag16']],[example_questions['example_17'],question,tags['tag17']],[example_questions['example_18'],question,tags['tag18']],[example_questions['example_19'],question,tags['tag19']],[example_questions['example_20'],question,tags['tag20']],[example_questions['example_21'],question,tags['tag21']],[example_questions['example_22'],question,tags['tag22']],[example_questions['example_23'],question,tags['tag23']],[example_questions['example_24'],question,tags['tag24']],[example_questions['example_25'],question,tags['tag25']],[example_questions['example_26'],question,tags['tag26']],[example_questions['example_27'],question,tags['tag27']],[example_questions['example_28'],question,tags['tag28']],[example_questions['example_29'],question,tags['tag29']],[example_questions['example_30'],question,tags['tag30']],[example_questions['example_31'],question,tags['tag31']],[example_questions['example_32'],question,tags['tag32']],[example_questions['example_33'],question,tags['tag33']],[example_questions['example_34'],question,tags['tag34']],[example_questions['example_35'],question,tags['tag35']],[example_questions['example_36'],question,tags['tag36']],[example_questions['example_37'],question,tags['tag37']],[example_questions['example_38'],question,tags['tag38']],[example_questions['example_39'],question,tags['tag39']],[example_questions['example_40'],question,tags['tag40']],[example_questions['example_41'],question,tags['tag41']],[example_questions['example_42'],question,tags['tag42']],[example_questions['example_43'],question,tags['tag43']],[example_questions['example_44'],question,tags['tag44']],[example_questions['example_45'],question,tags['tag45']],[example_questions['example_46'],question,tags['tag46']],[example_questions['example_47'],question,tags['tag47']],[example_questions['example_48'],question,tags['tag48']],[example_questions['example_49'],question,tags['tag49']],[example_questions['example_50'],question,tags['tag50']],[example_questions['example_51'],question,tags['tag51']],[example_questions['example_52'],question,tags['tag52']],[example_questions['example_53'],question,tags['tag53']],[example_questions['example_54'],question,tags['tag54']],[example_questions['example_55'],question,tags['tag55']],[example_questions['example_56'],question,tags['tag56']],[example_questions['example_57'],question,tags['tag57']],[example_questions['example_58'],question,tags['tag58']],[example_questions['example_59'],question,tags['tag59']],[example_questions['example_60'],question,tags['tag60']],[example_questions['example_61'],question,tags['tag61']],[example_questions['example_62'],question,tags['tag62']],[example_questions['example_63'],question,tags['tag63']],[example_questions['example_64'],question,tags['tag64']],[example_questions['example_65'],question,tags['tag65']],[example_questions['example_66'],question,tags['tag66']],[example_questions['example_67'],question,tags['tag67']],[example_questions['example_68'],question,tags['tag68']],[example_questions['example_69'],question,tags['tag69']],[example_questions['example_70'],question,tags['tag70']],[example_questions['example_71'],question,tags['tag71']],[example_questions['example_72'],question,tags['tag72']],[example_questions['example_73'],question,tags['tag73']],[example_questions['example_74'],question,tags['tag74']],[example_questions['example_75'],question,tags['tag75']],[example_questions['example_76'],question,tags['tag76']],[example_questions['example_77'],question,tags['tag77']],[example_questions['example_78'],question,tags['tag78']],[example_questions['example_79'],question,tags['tag79']],[example_questions['example_80'],question,tags['tag80']],[example_questions['example_81'],question,tags['tag81']]] ) # launching the app app.launch(debug=True) app.close()