# Import the necessary Libraries import os import uuid import json import gradio as gr from openai import OpenAI from langchain_community.embeddings.sentence_transformer import SentenceTransformerEmbeddings from langchain_community.vectorstores import Chroma from huggingface_hub import CommitScheduler from pathlib import Path from dotenv import load_dotenv # Create Client load_dotenv() os.environ["Project_3_api_fierworks"]=os.getenv("Project_3_api_fierworks") client = OpenAI( base_url="https://api.fireworks.ai/inference/v1", api_key=os.environ['Project_3_api_fierworks'] ) embedding_model = SentenceTransformerEmbeddings(model_name='thenlper/gte-large') # Define the embedding model and the vectorstore collection_name = 'report-10k-2024' vectorstore_persisted = Chroma( collection_name=collection_name, persist_directory='./report_10kdb', embedding_function=embedding_model ) # Load the persisted vectorDB retriever = vectorstore_persisted.as_retriever( search_type='similarity', search_kwargs={'k': 5} ) # Prepare the logging functionality log_file = Path("logs/") / f"data_{uuid.uuid4()}.json" log_folder = log_file.parent scheduler = CommitScheduler( repo_id="RAG-investment-recommendation-log", repo_type="dataset", folder_path=log_folder, path_in_repo="data", every=2 ) # Define the Q&A system message qna_system_message = """ You are an assistant to a researcher. Your task is to provide relevant information about The 10K reports repository. User input will include the necessary context for you to answer their questions. This context will begin with the token: ###Context. The context contains references to specific portions of documents relevant to the user's query, along with source links. The source for a context will begin with the token ###Source When crafting your response: 1. Select the most relevant context or contexts to answer the question. 2. Include the source links in your response. 3. User questions will begin with the token: ###Question. 4. If the question is irrelevant to 10k report respond with - "Apologies, I can only help you with questions related to the 10k Reports." Please adhere to the following guidelines: - Answer only using the context provided. If you do not know the answer say 'Sorry,I do not know.' - Do not mention anything about the context in your final answer. - If the answer is not found in the context, it is very important for you to respond with "I don't know. Please check the docs found in the report repository." - Always quote the source when you use the context. Cite the relevant source at the end of your response under the section - Sources: - Do not make up sources. Use the links provided in the sources section of the context and nothing else. You are prohibited from providing other links/sources or general knowledge about people not in the 10k reports. Here is an example of how to structure your response: Answer: [Answer] Source [Source] """ # Define the user message template qna_user_message_template = """ ###Context Here are some documents that are relevant to the question. {context} ``` {question} ``` """ # Define the predict function that runs when 'Submit' is clicked or when a API request is made def predict(user_input,company): filter = "dataset/"+company+"-10-k-2023.pdf" relevant_document_chunks = vectorstore_persisted.similarity_search(user_input, k=5, filter={"source":filter}) # Create context_for_query context_list = [d.page_content for d in relevant_document_chunks] context_for_query = ".".join(context_list) # Create messages prompt = [ {'role':'system', 'content': qna_system_message}, {'role': 'user', 'content': qna_user_message_template.format( context=context_for_query, question=user_input ) } ] # Get response from the LLM try: response = client.chat.completions.create( model='accounts/fireworks/models/mixtral-8x7b-instruct', messages=prompt, temperature=0 ) prediction = response.choices[0].message.content except Exception as e: prediction = e # While the prediction is made, log both the inputs and outputs to a local log file # While writing to the log file, ensure that the commit scheduler is locked to avoid parallel # access with scheduler.lock: with log_file.open("a") as f: f.write(json.dumps( { 'user_input': user_input, 'retrieved_context': context_for_query, 'model_response': prediction } )) f.write("\n") return prediction examples = [ ["What are the AWS policies and frameworks regarding AI ethics, governance, and responsible AI use as detailed in their 10-K reports?", "AWS"], ["What are the primary business segments of AWS, and how does each segment contribute to the overall revenue and profitability?", "AWS"], ["What are the key risk factors identified in the 10-K report that could potentially impact the AWS business operations and financial performance?", "AWS"], ["Has the company made any significant acquisitions in the AI space, and how are these acquisitions being integrated into the company's strategy?", "Microsoft"], ["How much capital has been allocated towards AI research and development?","Google"], ["What initiatives has IBM implemented to address ethical concerns surrounding AI, such as fairness, accountability, and privacy?","IBM"], ["How does Meta plan to differentiate itself in the AI space relative to competitors?","Meta"] ] def get_predict(question, company): # Implement your prediction logic here if company == "AWS": # Perform prediction for AWS selectedCompany = "aws" elif company == "IBM": # Perform prediction for IBM selectedCompany = "IBM" elif company == "Google": # Perform prediction for Google selectedCompany = "Google" elif company == "Meta": # Perform prediction for Meta selectedCompany = "meta" elif company == "Microsoft": # Perform prediction for Microsoft selectedCompany = "msft" else: return "Invalid company selected" output = predict(question, company) return output # Set-up the Gradio UI # Add text box and radio button to the interface # The radio button is used to select the company 10k report in which the context needs to be retrieved. # Create the interface # For the inputs parameter of Interface provide [textbox,company] with gr.Blocks(theme="Taithrah/Minimal@>=0.0.1,<0.1.0") as demo: with gr.Row(): company = gr.Radio(["AWS", "IBM", "Google", "Meta", "Microsoft"], label="Select a company") with gr.Row(): question = gr.Textbox(label="Enter your question") submit = gr.Button("Submit") output = gr.Textbox(label="Output") submit.click( fn=get_predict, inputs=[question, company], outputs=output ) examples_component = gr.Examples(examples=examples, inputs=[question, company]) demo.queue() demo.launch()