import gradio as gr import numpy as np from datetime import date from predictors import predict_bc_scores, predict_mc_scores from predictors import update,update_main, correct_text, split_text from analysis import depth_analysis from predictors import predict_quillbot from plagiarism import plagiarism_check, build_date, html_highlight from highlighter import analyze_and_highlight from utils import extract_text_from_pdf, len_validator import yaml from functools import partial np.set_printoptions(suppress=True) with open("config.yaml", "r") as file: params = yaml.safe_load(file) model_list = params["MC_OUTPUT_LABELS"] analyze_and_highlight_bc = partial(analyze_and_highlight, model_type="bc") analyze_and_highlight_quillbot = partial( analyze_and_highlight, model_type="quillbot" ) def ai_generated_test(option, bias_buster_selected, input, models): if bias_buster_selected: input = update(input) if option == "Human vs AI": return predict_bc_scores(input), None elif option == "Human vs AI Source Models": return predict_bc_scores(input), predict_mc_scores(input, models) return None, None # COMBINED def main( ai_option, plag_option, input, models, year_from, month_from, day_from, year_to, month_to, day_to, domains_to_skip, source_block_size, ): # formatted_tokens = plagiarism_check( # plag_option, # input, # year_from, # month_from, # day_from, # year_to, # month_to, # day_to, # domains_to_skip, # ) formatted_tokens = html_highlight( plag_option, input, year_from, month_from, day_from, year_to, month_to, day_to, domains_to_skip, source_block_size, ) depth_analysis_plot = depth_analysis(input) bc_score = predict_bc_scores(input) mc_score = predict_mc_scores(input, models) quilscore = predict_quillbot(input) return ( bc_score, mc_score, formatted_tokens, depth_analysis_plot, quilscore, ) # START OF GRADIO title = "AI Detection and Source Analysis" months = { "January": "01", "February": "02", "March": "03", "April": "04", "May": "05", "June": "06", "July": "07", "August": "08", "September": "09", "October": "10", "November": "11", "December": "12", } with gr.Blocks() as demo: today = date.today() # dd/mm/YY d1 = today.strftime("%d/%B/%Y") d1 = d1.split("/") domain_list = ["com", "org", "net", "int", "edu", "gov", "mil"] gr.Markdown( """ # AI Detection and Source Analysis """ ) with gr.Row(): input_text = gr.Textbox(label="Input text", lines=6, placeholder="") file_input = gr.File(label="Upload PDF") file_input.change( fn=extract_text_from_pdf, inputs=file_input, outputs=input_text ) char_count = gr.Textbox(label="Minumum Character Limit Check") input_text.change(fn=len_validator, inputs=input_text, outputs=char_count) with gr.Row(): btn = gr.Button("Bias Buster") out = gr.Textbox(label="Bias Corrected Full Input", interactive=False) corrections_output = gr.Textbox(label="Bias Corrections", interactive=False) btn.click(fn=update_main, inputs=input_text, outputs=[out, corrections_output]) with gr.Row(): models = gr.Dropdown( model_list, value=model_list, multiselect=True, label="Models to test against", ) with gr.Row(): with gr.Column(): ai_option = gr.Radio( [ "Human vs AI", "Human vs AI Source Models", # "Human vs AI Source Models (1 on 1)", ], label="Choose an option please.", ) with gr.Column(): bias_buster_selected = gr.Checkbox(label="Bias Remover") with gr.Column(): plag_option = gr.Radio( ["Standard", "Advanced"], label="Choose an option please." ) with gr.Row(): source_block_size = gr.Dropdown( choices=["Sentence", "Paragraph"], label="Source Check Granularity", value="Sentence", interactive=True, ) with gr.Row(): with gr.Column(): only_ai_btn = gr.Button("AI Check") with gr.Column(): only_plagiarism_btn = gr.Button("Source Check") with gr.Column(): quillbot_check = gr.Button("Humanized Text Check") with gr.Row(): with gr.Column(): bc_highlighter_button = gr.Button("Human vs. AI Highlighter") with gr.Column(): quillbot_highlighter_button = gr.Button("Humanized Highlighter") with gr.Row(): depth_analysis_btn = gr.Button("Detailed Writing Analysis") with gr.Row(): full_check_btn = gr.Button("Full Check") gr.Markdown( """ ## Output """ ) with gr.Row(): with gr.Column(): bcLabel = gr.Label(label="Source") with gr.Column(): mcLabel = gr.Label(label="Creator") with gr.Row(): with gr.Column(): bc_highlighter_output = gr.HTML(label="Human vs. AI Highlighter") # with gr.Column(): # mc1on1Label = gr.Label(label="Creator(1 on 1 Approach)") with gr.Row(): with gr.Column(): QLabel = gr.Label(label="Humanized") with gr.Row(): quillbot_highlighter_output = gr.HTML(label="Humanized Highlighter") with gr.Group(): with gr.Row(): month_from = gr.Dropdown( choices=months, label="From Month", value="January", interactive=True, ) day_from = gr.Textbox(label="From Day", value="01") year_from = gr.Textbox(label="From Year", value="2000") # from_date_button = gr.Button("Submit") with gr.Row(): month_to = gr.Dropdown( choices=months, label="To Month", value=d1[1], interactive=True, ) day_to = gr.Textbox(label="To Day", value=d1[0]) year_to = gr.Textbox(label="To Year", value=d1[2]) # to_date_button = gr.Button("Submit") with gr.Row(): domains_to_skip = gr.Dropdown( domain_list, multiselect=True, label="Domain To Skip", ) with gr.Row(): with gr.Column(): sentenceBreakdown = gr.HTML( label="Source Detection Sentence Breakdown", value="Source Detection Sentence Breakdown", ) with gr.Row(): with gr.Column(): writing_analysis_plot = gr.Plot(label="Writing Analysis Plot") with gr.Column(): interpretation = """