import logging import os from typing import Optional, Tuple import gradio as gr import pandas as pd from buster.completers import Completion from buster.utils import extract_zip import cfg from cfg import setup_buster # Create a handler to control where log messages go (e.g., console, file) handler = ( logging.StreamHandler() ) # Console output, you can change it to a file handler if needed # Set the handler's level to INFO handler.setLevel(logging.INFO) logging.basicConfig(level=logging.INFO) # Check if an openai key is set as an env. variable if os.getenv("OPENAI_API_KEY") is None: print( "Warning: No openai key detected. You can set it with 'export OPENAI_API_KEY=sk-...'." ) # Typehint for chatbot history ChatHistory = list[list[Optional[str], Optional[str]]] buster = setup_buster(cfg.buster_cfg) def add_user_question( user_question: str, chat_history: Optional[ChatHistory] = None ) -> ChatHistory: """Adds a user's question to the chat history. If no history is provided, the first element of the history will be the user conversation. """ if chat_history is None: chat_history = [] chat_history.append([user_question, None]) return chat_history def format_sources(matched_documents: pd.DataFrame) -> str: if len(matched_documents) == 0: return "" matched_documents.similarity_to_answer = ( matched_documents.similarity_to_answer * 100 ) # drop duplicate pages (by title), keep highest ranking ones matched_documents = matched_documents.sort_values( "similarity_to_answer", ascending=False ).drop_duplicates("title", keep="first") documents_answer_template: str = "📝 Here are the sources I used to answer your question:\n\n{documents}\n\n{footnote}" document_template: str = "[🔗 {document.title}]({document.url}), relevance: {document.similarity_to_answer:2.1f} %" documents = "\n".join( [ document_template.format(document=document) for _, document in matched_documents.iterrows() ] ) footnote: str = "I'm a bot 🤖 and not always perfect." return documents_answer_template.format(documents=documents, footnote=footnote) def add_sources(history, completion): if completion.answer_relevant: formatted_sources = format_sources(completion.matched_documents) history.append([None, formatted_sources]) return history def chat(chat_history: ChatHistory) -> Tuple[ChatHistory, Completion]: """Answer a user's question using retrieval augmented generation.""" # We assume that the question is the user's last interaction user_input = chat_history[-1][0] # Do retrieval + augmented generation with buster completion = buster.process_input(user_input) # Stream tokens one at a time to the user chat_history[-1][1] = "" for token in completion.answer_generator: chat_history[-1][1] += token yield chat_history, completion demo = gr.Blocks() with demo: with gr.Row(): gr.Markdown("

RAGTheDocs

") chatbot = gr.Chatbot() with gr.Row(): question = gr.Textbox( label="What's your question?", placeholder="Type your question here...", lines=1, ) submit = gr.Button(value="Send", variant="secondary") examples = gr.Examples( examples=[ "How can I install the library?", "How do I deal with noisy data?", "How do I deal with noisy data in 2 words?", ], inputs=question, ) gr.Markdown( "This application uses GPT to search the docs for relevant info and answer questions." ) response = gr.State() # fmt: off submit.click( add_user_question, inputs=[question], outputs=[chatbot] ).then( chat, inputs=[chatbot], outputs=[chatbot, response] ).then( add_sources, inputs=[chatbot, response], outputs=[chatbot] ) question.submit( add_user_question, inputs=[question], outputs=[chatbot], ).then( chat, inputs=[chatbot], outputs=[chatbot, response] ).then( add_sources, inputs=[chatbot, response], outputs=[chatbot] ) # fmt: on demo.queue(concurrency_count=16) demo.launch(share=False)