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import gradio as gr |
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import pandas as pd |
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import os |
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import json |
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import uuid |
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import tiktoken |
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from openai import OpenAI |
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from langchain.text_splitter import RecursiveCharacterTextSplitter |
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from langchain_core.documents import Document |
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from langchain_community.document_loaders import PyPDFDirectoryLoader |
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from langchain_community.embeddings.sentence_transformer import ( |
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SentenceTransformerEmbeddings |
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) |
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from langchain_community.vectorstores import Chroma |
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from langchain_community.chat_models import ChatOpenAI |
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from huggingface_hub import CommitScheduler |
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from pathlib import Path |
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anyscale_api_key = os.getenv('anyscale_apiKey') |
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client = OpenAI(base_url="https://api.endpoints.anyscale.com/v1", |
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api_key=anyscale_api_key |
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) |
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model_name = "mlabonne/NeuralHermes-2.5-Mistral-7B" |
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embedding_model = SentenceTransformerEmbeddings(model_name="thenlper/gte-large") |
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persisted_vectordb_location = './finsightsdb' |
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collection_name = 'finsights_grey-10k' |
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vectorstore_persisted = Chroma( |
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collection_name=collection_name, |
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persist_directory=persisted_vectordb_location, |
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embedding_function=embedding_model |
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) |
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log_file = Path("logs/") / f"data_{uuid.uuid4()}.json" |
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log_folder = log_file.parent |
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scheduler = CommitScheduler( |
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repo_id="MJackman-Project3-logs", |
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repo_type="dataset", |
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folder_path=log_folder, |
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path_in_repo="data", |
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every=2 |
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) |
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qna_system_message = """ |
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You are an assistant to a financial services firm. Your task is to determine the most effective platform to support the generation by the firm of advanced analytics and insights for investment management and financial planning. |
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User input will include the necessary context for you to answer their questions. This context will begin with the token: ###Context. |
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The context contains references to specific portions of documents relevant to the user's query, along with source links. |
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The source for a context will begin with the token ###Source |
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When crafting your response: |
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1. Select only context relevant to answer the question. |
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2. Include the source links in your response. |
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3. Include the page number of the source links where the answer was found in your response. |
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4. User questions will begin with the token: ###Question. |
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5. If the question is irrelevant to the firm's business respond with - "I am an AI assistant for Finsights Grey Inc. I can only help you with questions related to financial analytics." |
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Please adhere to the following guidelines: |
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- Your response should only be about the question asked and nothing else. |
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- Answer only using the context provided. |
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- Do not mention anything about the context in your final answer. |
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- If the answer is not found in the context, it is very very important for you to respond with "I don't know. Please check the docs @ 'https://docs.finsights.io/'" |
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- Always quote the source when you use the context. Cite the relevant source at the end of your response under the section - Source: |
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- Always provide the relevant page number(s) where the answer was found in the cited source. Cite the relevant page number at the end of your response under the section - Page Number: |
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- 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. |
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Here is an example of how to structure your response: |
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Answer: |
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[Answer] |
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Source: |
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[Source] |
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Page Number(s): |
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[Page Number] |
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""" |
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qna_user_message_template = """ |
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###Context |
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Here are some documents and their source links that are relevant to the question mentioned below. |
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{context} |
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###Question |
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{question} |
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""" |
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def predict(user_input,company): |
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company_filter = "/content/drive/MyDrive/Dataset-10k/" + str(company) + "-10-k-2023.pdf" |
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relevant_document_chunks = vectorstore_persisted.similarity_search(user_input, k=5, filter={"source":company_filter}) |
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context_list = [d.page_content + "\n Page number: " + str(d.metadata['page']) + "\n ###Source: " + d.metadata['source'] + "\n\n " for d in relevant_document_chunks] |
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context_for_query = ". ".join(context_list) |
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prompt = [ |
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{'role':'system', 'content': qna_system_message}, |
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{'role': 'user', 'content': qna_user_message_template.format( |
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context=context_for_query, |
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question=user_input |
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) |
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} |
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] |
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try: |
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response = client.chat.completions.create( |
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model=model_name, |
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messages=prompt, |
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temperature=0 |
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) |
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prediction = response.choices[0].message.content.strip() |
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except Exception as e: |
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prediction = f'Sorry, I encountered the following error: \n {e}' |
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print(prediction) |
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with scheduler.lock: |
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with log_file.open("a") as f: |
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f.write(json.dumps( |
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{ |
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'user_input': user_input, |
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'retrieved_context': context_for_query, |
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'model_response': prediction |
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} |
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)) |
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f.write("\n") |
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return prediction |
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textbox = gr.Textbox(label="Enter your question:") |
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company = gr.Radio(choices=['aws', 'google', 'Meta', 'msft', 'IBM'], label="Select a company:") |
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model_output = gr.Label(label='Answer to your qestion') |
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demo = gr.Interface( |
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fn=predict, |
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inputs=[textbox,company], |
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outputs=model_output, |
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title="AI-Powered Question Answering") |
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demo.queue() |
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demo.launch() |
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