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# HACK AI MAKERSPACE PREPR | |
# Date: 2024-5-16 | |
# Basic Imports & Setup | |
import os | |
from openai import AsyncOpenAI | |
# Using Chainlit for our UI | |
import chainlit as cl | |
from chainlit.prompt import Prompt, PromptMessage | |
from chainlit.playground.providers import ChatOpenAI | |
# Getting the API key from the .env file | |
from dotenv import load_dotenv | |
load_dotenv() | |
# RAG pipeline imports and setup code | |
# Get the DeveloperWeek PDF file (future implementation: direct download from URL) | |
from langchain.document_loaders import PyMuPDFLoader | |
# Adjust the URL to the direct download format | |
file_id = "1JeA-w4kvbI3GHk9Dh_j19_Q0JUDE7hse" | |
direct_url = f"https://drive.google.com/uc?export=download&id={file_id}" | |
# Now load the document using the direct URL | |
docs = PyMuPDFLoader(direct_url).load() | |
import tiktoken | |
def tiktoken_len(text): | |
tokens = tiktoken.encoding_for_model("gpt-3.5-turbo").encode( | |
text, | |
) | |
return len(tokens) | |
# Split the document into chunks | |
from langchain.text_splitter import RecursiveCharacterTextSplitter | |
text_splitter = RecursiveCharacterTextSplitter( | |
chunk_size = 500, # 500 tokens per chunk, experiment with this value | |
chunk_overlap = 50, # 50 tokens overlap between chunks, experiment with this value | |
length_function = tiktoken_len, | |
) | |
split_chunks = text_splitter.split_documents(docs) | |
# Load the embeddings model | |
from langchain_openai.embeddings import OpenAIEmbeddings | |
embedding_model = OpenAIEmbeddings(model="text-embedding-3-small") | |
# Load the vector store and retriever from Qdrant | |
from langchain_community.vectorstores import Qdrant | |
qdrant_vectorstore = Qdrant.from_documents( | |
split_chunks, | |
embedding_model, | |
location=":memory:", | |
collection_name="Prepr", | |
) | |
qdrant_retriever = qdrant_vectorstore.as_retriever() | |
from langchain_openai import ChatOpenAI | |
openai_chat_model = ChatOpenAI(model="gpt-3.5-turbo") | |
from langchain_core.prompts import ChatPromptTemplate | |
RAG_PROMPT = """ | |
SYSTEM: | |
You are a professional personal assistant. | |
You are a helpful personal assistant who provides information about conferences. | |
You like to provide helpful responses to busy professionals who ask questions about conferences. | |
You can have a long conversation with the user about conferences. | |
When to talk with the user about conferences, it can be a "transactional conversation" with a prompt-response format with one prompt from the user followed by a response by you. | |
Here is an example of a transactional conversation: | |
User: When is the conference? | |
You: The conference is on June 1st, 2024. What else would you like to know? | |
It can also be a chain of questions and answers where you and the user continues the chain until they say "Got it". | |
Here is an example of a transactional conversation: | |
User: What sessions should I attend? | |
You: You should attend the keynote session by Bono. Would you like to know more? | |
User: Yes | |
You: The keynote session by Bono is on June 1st, 2024. What else would you like? | |
If asked a question about a sessions, you can provide detailed information about the session. | |
If there are multiple sessions, you can provide information about each session. | |
The format of session related replies is: | |
Title: | |
Description: | |
Speaker: | |
Background: | |
Date: | |
Topics to Be Covered: | |
Questions to Ask: | |
CONTEXT: | |
{context} | |
QUERY: | |
{question} | |
Most questions are about the date, location, and purpose of the conference. | |
You may be asked for fine details about the conference regarding the speakers, sponsors, and attendees. | |
You are capable of looking up information and providing detailed responses. | |
When asked a question about a conference, you should provide a detailed response. | |
After completing your response, you should ask the user if they would like to know more about the conference by asking "Hope that helps". | |
If the user says "yes", you should provide more information about the conference. If the user says "no", you should say "Goodbye! or ask if they would like to provide feedback. | |
If you are asked a question about Cher, you should respond with "Rock on With Your Bad Self!". | |
If you can not answer the question, you should say "I am sorry, I do not have that information, but I am always here to help you with any other questions you may have.". | |
""" | |
rag_prompt = ChatPromptTemplate.from_template(RAG_PROMPT) | |
from operator import itemgetter | |
from langchain.schema.output_parser import StrOutputParser | |
from langchain.schema.runnable import RunnablePassthrough | |
retrieval_augmented_qa_chain = ( | |
{"context": itemgetter("question") | qdrant_retriever, "question": itemgetter("question")} | |
| RunnablePassthrough.assign(context=itemgetter("context")) | |
| {"response": rag_prompt | openai_chat_model, "context": itemgetter("context")} | |
) | |
# Chainlit App | |
async def start_chat(): | |
settings = { | |
"model": "gpt-3.5-turbo", | |
"temperature": 0, | |
"max_tokens": 500, | |
"top_p": 1, | |
"frequency_penalty": 0, | |
"presence_penalty": 0, | |
} | |
cl.user_session.set("settings", settings) | |
async def main(message: cl.Message): | |
chainlit_question = message.content | |
#chainlit_question = "What was the total value of 'Cash and cash equivalents' as of December 31, 2023?" | |
response = retrieval_augmented_qa_chain.invoke({"question": chainlit_question}) | |
chainlit_answer = response["response"].content | |
msg = cl.Message(content=chainlit_answer) | |
await msg.send() | |