# -*- coding: utf-8 -*- """ Created on Mon Dec 25 18:18:27 2023 @author: alish """ import gradio as gr import fitz # PyMuPDF import questiongenerator as qs import random from questiongenerator import QuestionGenerator qg = QuestionGenerator() def Extract_QA(qlist): Q_All='' A_All='' for i in range(len(qlist)): question_i= qlist[i]['question'] Choices_ans= [] Choice_is_correct=[] for j in range(4): Choices_ans= Choices_ans+ [qlist[i]['answer'][j]['answer']] Choice_is_correct= Choice_is_correct+ [qlist[i]['answer'][j]['correct']] Q=f""" Q_{i+1}: {question_i} A. {Choices_ans[0]} B. {Choices_ans[1]} C. {Choices_ans[2]} D. {Choices_ans[3]} """ xs=['A','B','C','D'] result = [x for x, y in zip(xs, Choice_is_correct) if y ] A= f""" Answer_{i+1}: {result[0]} """ Q_All= Q_All+Q A_All=A_All+ A return (Q_All,A_All) def extract_text_from_pdf(pdf_file_path): # Read the PDF file global extracted_text text = [] with fitz.open(pdf_file_path) as doc: for page in doc: text.append(page.get_text()) extracted_text= '\n'.join(text) extracted_text= get_sub_text(extracted_text) return ("The pdf is uploaded Successfully from:"+ str(pdf_file_path)) qg = qs.QuestionGenerator() def get_sub_text(TXT): sub_texts= qg._split_into_segments(TXT) if isinstance(sub_texts, list): return sub_texts else: return [sub_texts] def pick_One_txt(sub_texts): global selected_extracted_text N= len(sub_texts) if N==1: selected_extracted_text= sub_texts[0] return(selected_extracted_text) # Generate a random number between low and high random_number = random.uniform(0, N) # Pick the integer part of the random number random_number = int(random_number) selected_extracted_text= sub_texts[random_number] return(selected_extracted_text) def pipeline(NoQs): global Q,A text= selected_extracted_text qlist= qg.generate(text, num_questions=NoQs, answer_style="multiple_choice") Q,A= Extract_QA(qlist) A= A + '\n'+text return (Q,A) def ReurnAnswer(): return A def GetQuestion(NoQs): NoQs=int(NoQs) pick_One_txt(extracted_text) Q,A=pipeline(NoQs) return Q with gr.Blocks() as demo: with gr.Row(): with gr.Column(scale=1): with gr.Row(): gr.Image("PupQuizAI.png") gr.Markdown(""" 🐶 **PupQuizAI** is an Artificial-Intelligence tool that streamlines the studying process. Simply input a text pdf that you need to study from. Then, PupQuiz will create 1-5 custom questions for you to study from. 🐶 Be patient! It might take minutes to run! """ ) input_file=gr.UploadButton(label='Select a file!', file_types=[".pdf"]) input_file.upload(extract_text_from_pdf, input_file) #upload_btn = gr.Button(value="Upload the pdf File.") Gen_Question = gr.Button(value="Show Questions") Gen_Answer = gr.Button(value="Show Answers") No_Qs= gr.Slider(minimum=1, maximum=5,step=1, label='Max # of Questions') gr.Markdown(""" 🐶 **Instructions:** * Start by selecting a 'pdf' text file you want to upload by clicking the "Select file" button. (PupQuiz currently only supports files that can have highlightable text) * Select the number of questions you want generated from the "# of Questions" selector. * Click "Show Questions" * Then, if you want answers to the questions, select "Show Answers" """ ) #gr.Image("PupQuizAI.png") with gr.Column(scale=2.0): #file_stat= gr.Textbox(label="File Status") question = gr.Textbox(label="Question(s)") Answer = gr.Textbox(label="Answer(s)") Gen_Question.click(GetQuestion, inputs=No_Qs, outputs=question, api_name="QuestioGenerator") Gen_Answer.click(ReurnAnswer, inputs=None, outputs=Answer, api_name="QuestioGenerator") demo.launch()