### Import Section ### """ IMPORTS HERE """ import os import uuid from dotenv import load_dotenv from langchain_text_splitters import RecursiveCharacterTextSplitter from langchain_community.document_loaders import PyMuPDFLoader from qdrant_client import QdrantClient from qdrant_client.http.models import Distance, VectorParams from langchain_openai.embeddings import OpenAIEmbeddings from langchain.storage import LocalFileStore from langchain_qdrant import QdrantVectorStore from langchain.embeddings import CacheBackedEmbeddings from langchain_core.prompts import ChatPromptTemplate from chainlit.types import AskFileResponse from langchain_core.globals import set_llm_cache from langchain_openai import ChatOpenAI from langchain_core.caches import InMemoryCache from operator import itemgetter from langchain_core.runnables.passthrough import RunnablePassthrough import chainlit as cl from langchain_core.runnables.config import RunnableConfig from langchain_community.llms import HuggingFaceEndpoint from langchain_huggingface.embeddings import HuggingFaceEndpointEmbeddings from langchain_core.prompts import PromptTemplate import numpy as np from numpy.linalg import norm load_dotenv() ### Global Section ### """ GLOBAL CODE HERE """ RAG_PROMPT_TEMPLATE = """\ <|start_header_id|>system<|end_header_id|> 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|> <|start_header_id|>user<|end_header_id|> User Query: {query} Context: {context}<|eot_id|> <|start_header_id|>assistant<|end_header_id|> """ text_splitter = RecursiveCharacterTextSplitter(chunk_size=1000, chunk_overlap=100) hf_llm = HuggingFaceEndpoint( endpoint_url=f"{os.environ["YOUR_LLM_ENDPOINT_URL"]}", max_new_tokens=512, top_k=10, top_p=0.95, typical_p=0.95, temperature=0.01, repetition_penalty=1.03, huggingfacehub_api_token=os.environ["HF_TOKEN"] ) hf_embeddings = HuggingFaceEndpointEmbeddings( model=os.environ["YOUR_EMBED_MODEL_URL"], task="feature-extraction", huggingfacehub_api_token=os.environ["HF_TOKEN"], ) rag_prompt = PromptTemplate.from_template(RAG_PROMPT_TEMPLATE) rag_chain = rag_prompt | hf_llm def cosine_similarity(phrase_1, phrase_2): vec_1 = hf_embeddings.embed_documents([phrase_1])[0] vec2_2 = hf_embeddings.embed_documents([phrase_2])[0] return np.dot(vec_1, vec2_2) / (norm(vec_1) * norm(vec2_2)) def process_file(file: AskFileResponse): import tempfile with tempfile.NamedTemporaryFile(mode="w", delete=False) as tempfile: with open(tempfile.name, "wb") as f: f.write(file.content) Loader = PyMuPDFLoader loader = Loader(tempfile.name) documents = loader.load() docs = text_splitter.split_documents(documents) for i, doc in enumerate(docs): doc.metadata["source"] = f"source_{i}" return docs ### On Chat Start (Session Start) Section ### @cl.on_chat_start async def on_chat_start(): """ SESSION SPECIFIC CODE HERE """ files = None while files == None: # Async method: This allows the function to pause execution while waiting for the user to upload a file, # without blocking the entire application. It improves responsiveness and scalability. files = await cl.AskFileMessage( content="Please upload a PDF file to begin!", accept=["application/pdf"], max_size_mb=20, timeout=180, max_files=1 ).send() file = files[0] msg = cl.Message( content=f"Processing `{file.name}`...", ) await msg.send() docs = process_file(file) # Typical QDrant Client Set-up collection_name = f"pdf_to_parse_{uuid.uuid4()}" client = QdrantClient(":memory:") client.create_collection( collection_name=collection_name, vectors_config=VectorParams(size=1536, distance=Distance.COSINE), ) # Adding cache! store = LocalFileStore("./cache/") cached_embedder = CacheBackedEmbeddings.from_bytes_store( hf_embeddings, store, namespace=hf_embeddings.model ) # Typical QDrant Vector Store Set-up vectorstore = QdrantVectorStore( client=client, collection_name=collection_name, embedding=cached_embedder) for i in range(0, len(docs), 32): if i == 0: vectorstore = docs.from_documents(docs[i:i+32], hf_embeddings) continue vectorstore.add_documents(docs[i:i+32]) retriever = vectorstore.as_retriever(search_type="mmr", search_kwargs={"k": 3}) retrieval_augmented_qa_chain = ( {"context": itemgetter("question") | retriever, "question": itemgetter("question")} | RunnablePassthrough.assign(context=itemgetter("context")) | rag_prompt | hf_llm ) # Let the user know that the system is ready msg.content = f"Processing `{file.name}` done. You can now ask questions!" await msg.update() cl.user_session.set("chain", retrieval_augmented_qa_chain) ### Rename Chains ### @cl.author_rename def rename(orig_author: str): """ RENAME CODE HERE """ rename_dict = {"ChatOpenAI": "the Generator...", "VectorStoreRetriever": "the Retriever..."} return rename_dict.get(orig_author, orig_author) ### On Message Section ### @cl.on_message async def main(message: cl.Message): """ MESSAGE CODE HERE """ runnable = cl.user_session.get("chain") msg = cl.Message(content="") # Async method: Using astream allows for asynchronous streaming of the response, # improving responsiveness and user experience by showing partial results as they become available. async for chunk in runnable.astream( {"question": message.content}, config=RunnableConfig(callbacks=[cl.LangchainCallbackHandler()]), ): await msg.stream_token(chunk.content) await msg.send()