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import os |
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import chainlit as cl |
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from dotenv import load_dotenv |
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from operator import itemgetter |
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from langchain_huggingface import HuggingFaceEndpoint |
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from langchain_community.document_loaders import TextLoader |
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from langchain_text_splitters import RecursiveCharacterTextSplitter |
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from langchain_community.vectorstores import FAISS |
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from langchain_huggingface import HuggingFaceEndpointEmbeddings |
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from langchain_core.prompts import PromptTemplate |
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from langchain.schema.output_parser import StrOutputParser |
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from langchain.schema.runnable import RunnablePassthrough |
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from langchain.schema.runnable.config import RunnableConfig |
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""" |
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This function will load our environment file (.env) if it is present. |
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NOTE: Make sure that .env is in your .gitignore file - it is by default, but please ensure it remains there. |
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""" |
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load_dotenv() |
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""" |
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We will load our environment variables here. |
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""" |
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HF_LLM_ENDPOINT = os.environ["HF_LLM_ENDPOINT"] |
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HF_EMBED_ENDPOINT = os.environ["HF_EMBED_ENDPOINT"] |
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HF_TOKEN = os.environ["HF_TOKEN"] |
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""" |
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1. Load Documents from Text File |
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2. Split Documents into Chunks |
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3. Load HuggingFace Embeddings (remember to use the URL we set above) |
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4. Index Files if they do not exist, otherwise load the vectorstore |
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""" |
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document_loader = TextLoader("./data/paul_graham_essays.txt") |
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documents = document_loader.load() |
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text_splitter = RecursiveCharacterTextSplitter(chunk_size=1000, chunk_overlap=30) |
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split_documents = text_splitter.split_documents(documents) |
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hf_embeddings = HuggingFaceEndpointEmbeddings( |
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model=HF_EMBED_ENDPOINT, |
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task="feature-extraction", |
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huggingfacehub_api_token=HF_TOKEN, |
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) |
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if os.path.exists("./data/vectorstore"): |
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vectorstore = FAISS.load_local( |
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"./data/vectorstore", |
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hf_embeddings, |
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allow_dangerous_deserialization=True |
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) |
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hf_retriever = vectorstore.as_retriever() |
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print("Loaded Vectorstore") |
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else: |
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print("Indexing Files") |
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os.makedirs("./data/vectorstore", exist_ok=True) |
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for i in range(0, len(split_documents), 32): |
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if i == 0: |
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vectorstore = FAISS.from_documents(split_documents[i:i+32], hf_embeddings) |
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continue |
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vectorstore.add_documents(split_documents[i:i+32]) |
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vectorstore.save_local("./data/vectorstore") |
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hf_retriever = vectorstore.as_retriever() |
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""" |
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1. Define a String Template |
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2. Create a Prompt Template from the String Template |
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""" |
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RAG_PROMPT_TEMPLATE = """\ |
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<|start_header_id|>system<|end_header_id|> |
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You are a helpful assistant. You answer user questions based on provided context. If you can't answer the question with the provided context, say you don't know.<|eot_id|> |
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<|start_header_id|>user<|end_header_id|> |
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User Query: |
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{query} |
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Context: |
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{context} |
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<|eot_id|><|start_header_id|>assistant<|end_header_id|> |
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""" |
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rag_prompt = PromptTemplate.from_template(RAG_PROMPT_TEMPLATE) |
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""" |
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1. Create a HuggingFaceEndpoint for the LLM |
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""" |
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hf_llm = HuggingFaceEndpoint( |
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endpoint_url=HF_LLM_ENDPOINT, |
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max_new_tokens=512, |
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top_k=10, |
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top_p=0.95, |
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typical_p=0.95, |
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temperature=0.01, |
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repetition_penalty=1.03, |
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huggingfacehub_api_token=HF_TOKEN, |
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) |
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@cl.author_rename |
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def rename(original_author: str): |
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""" |
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This function can be used to rename the 'author' of a message. |
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In this case, we're overriding the 'Assistant' author to be 'Paul Graham Essay Bot'. |
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""" |
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rename_dict = { |
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"Assistant" : "Paul Graham Essay Bot" |
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} |
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return rename_dict.get(original_author, original_author) |
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@cl.on_chat_start |
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async def start_chat(): |
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""" |
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This function will be called at the start of every user session. |
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We will build our LCEL RAG chain here, and store it in the user session. |
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The user session is a dictionary that is unique to each user session, and is stored in the memory of the server. |
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""" |
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lcel_rag_chain = ( |
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{"context": itemgetter("query") | hf_retriever, "query": itemgetter("query")} |
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| rag_prompt | hf_llm |
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) |
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cl.user_session.set("lcel_rag_chain", lcel_rag_chain) |
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@cl.on_message |
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async def main(message: cl.Message): |
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""" |
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This function will be called every time a message is recieved from a session. |
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We will use the LCEL RAG chain to generate a response to the user query. |
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The LCEL RAG chain is stored in the user session, and is unique to each user session - this is why we can access it here. |
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""" |
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lcel_rag_chain = cl.user_session.get("lcel_rag_chain") |
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msg = cl.Message(content="") |
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async for chunk in lcel_rag_chain.astream( |
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{"query": message.content}, |
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config=RunnableConfig(callbacks=[cl.LangchainCallbackHandler()]), |
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): |
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await msg.stream_token(chunk) |
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await msg.send() |