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title: DeployPythonicRAG
emoji: π
colorFrom: blue
colorTo: purple
sdk: docker
pinned: false
license: apache-2.0
Deploying Pythonic Chat With Your Text File Application
In today's breakout rooms, we will be following the process that you saw during the challenge.
Today, we will repeat the same process - but powered by our Pythonic RAG implementation we created last week.
You'll notice a few differences in the app.py
logic - as well as a few changes to the aimakerspace
package to get things working smoothly with Chainlit.
NOTE: If you want to run this locally - be sure to use
uv sync
, and thenuv run chainlit run app.py
to start the application outside of Docker.
Reference Diagram (It's Busy, but it works)
Anatomy of a Chainlit Application
Chainlit is a Python package similar to Streamlit that lets users write a backend and a front end in a single (or multiple) Python file(s). It is mainly used for prototyping LLM-based Chat Style Applications - though it is used in production in some settings with 1,000,000s of MAUs (Monthly Active Users).
The primary method of customizing and interacting with the Chainlit UI is through a few critical decorators.
NOTE: Simply put, the decorators (in Chainlit) are just ways we can "plug-in" to the functionality in Chainlit.
We'll be concerning ourselves with three main scopes:
- On application start - when we start the Chainlit application with a command like
chainlit run app.py
- On chat start - when a chat session starts (a user opens the web browser to the address hosting the application)
- On message - when the users sends a message through the input text box in the Chainlit UI
Let's dig into each scope and see what we're doing!
On Application Start:
The first thing you'll notice is that we have the traditional "wall of imports" this is to ensure we have everything we need to run our application.
import os
from typing import List
from chainlit.types import AskFileResponse
from aimakerspace.text_utils import CharacterTextSplitter, TextFileLoader
from aimakerspace.openai_utils.prompts import (
UserRolePrompt,
SystemRolePrompt,
AssistantRolePrompt,
)
from aimakerspace.openai_utils.embedding import EmbeddingModel
from aimakerspace.vectordatabase import VectorDatabase
from aimakerspace.openai_utils.chatmodel import ChatOpenAI
import chainlit as cl
Next up, we have some prompt templates. As all sessions will use the same prompt templates without modification, and we don't need these templates to be specific per template - we can set them up here - at the application scope.
system_template = """\
Use the following context to answer a users question. If you cannot find the answer in the context, say you don't know the answer."""
system_role_prompt = SystemRolePrompt(system_template)
user_prompt_template = """\
Context:
{context}
Question:
{question}
"""
user_role_prompt = UserRolePrompt(user_prompt_template)
NOTE: You'll notice that these are the exact same prompt templates we used from the Pythonic RAG Notebook in Week 1 Day 2!
Following that - we can create the Python Class definition for our RAG pipeline - or chain, as we'll refer to it in the rest of this walkthrough.
Let's look at the definition first:
class RetrievalAugmentedQAPipeline:
def __init__(self, llm: ChatOpenAI(), vector_db_retriever: VectorDatabase) -> None:
self.llm = llm
self.vector_db_retriever = vector_db_retriever
async def arun_pipeline(self, user_query: str):
### RETRIEVAL
context_list = self.vector_db_retriever.search_by_text(user_query, k=4)
context_prompt = ""
for context in context_list:
context_prompt += context[0] + "\n"
### AUGMENTED
formatted_system_prompt = system_role_prompt.create_message()
formatted_user_prompt = user_role_prompt.create_message(question=user_query, context=context_prompt)
### GENERATION
async def generate_response():
async for chunk in self.llm.astream([formatted_system_prompt, formatted_user_prompt]):
yield chunk
return {"response": generate_response(), "context": context_list}
Notice a few things:
- We have modified this
RetrievalAugmentedQAPipeline
from the initial notebook to support streaming. - In essence, our pipeline is chaining a few events together:
- We take our user query, and chain it into our Vector Database to collect related chunks
- We take those contexts and our user's questions and chain them into the prompt templates
- We take that prompt template and chain it into our LLM call
- We chain the response of the LLM call to the user
- We are using a lot of
async
again!
Now, we're going to create a helper function for processing uploaded text files.
First, we'll instantiate a shared CharacterTextSplitter
.
text_splitter = CharacterTextSplitter()
Now we can define our helper.
def process_file(file: AskFileResponse):
import tempfile
import shutil
print(f"Processing file: {file.name}")
# Create a temporary file with the correct extension
suffix = f".{file.name.split('.')[-1]}"
with tempfile.NamedTemporaryFile(delete=False, suffix=suffix) as temp_file:
# Copy the uploaded file content to the temporary file
shutil.copyfile(file.path, temp_file.name)
print(f"Created temporary file at: {temp_file.name}")
# Create appropriate loader
if file.name.lower().endswith('.pdf'):
loader = PDFLoader(temp_file.name)
else:
loader = TextFileLoader(temp_file.name)
try:
# Load and process the documents
documents = loader.load_documents()
texts = text_splitter.split_texts(documents)
return texts
finally:
# Clean up the temporary file
try:
os.unlink(temp_file.name)
except Exception as e:
print(f"Error cleaning up temporary file: {e}")
Simply put, this downloads the file as a temp file, we load it in with TextFileLoader
and then split it with our TextSplitter
, and returns that list of strings!
β QUESTION #1:
Why do we want to support streaming? What about streaming is important, or useful?
- Enhanced responsiveness: streaming allows applications to display output progressively reducing perceived latency
- Reduced wait times: LLMs can take several seconds to generate full responses; streaming enables users to see partial results as they are produced
- Real-time interactions: streaming allows for real-time interactions efficiently while providing a smoother and more engaging user experience.
On Chat Start:
The next scope is where "the magic happens". On Chat Start is when a user begins a chat session. This will happen whenever a user opens a new chat window, or refreshes an existing chat window.
You'll see that our code is set-up to immediately show the user a chat box requesting them to upload a file.
while files == None:
files = await cl.AskFileMessage(
content="Please upload a Text or PDF file to begin!",
accept=["text/plain", "application/pdf"],
max_size_mb=2,
timeout=180,
).send()
Once we've obtained the text file - we'll use our processing helper function to process our text!
After we have processed our text file - we'll need to create a VectorDatabase
and populate it with our processed chunks and their related embeddings!
vector_db = VectorDatabase()
vector_db = await vector_db.abuild_from_list(texts)
Once we have that piece completed - we can create the chain we'll be using to respond to user queries!
retrieval_augmented_qa_pipeline = RetrievalAugmentedQAPipeline(
vector_db_retriever=vector_db,
llm=chat_openai
)
Now, we'll save that into our user session!
NOTE: Chainlit has some great documentation about User Session.
β QUESTION #2:
Why are we using User Session here? What about Python makes us need to use this? Why not just store everything in a global variable?
- User Session:
- Allows for stateful applications: User sessions enable applications to maintain state between requests, which is crucial for chat applications where context is important.
- Supports concurrent users: User sessions allow multiple users to interact with the application concurrently, which is essential for chat applications.
- Provides a clean interface: User sessions provide a clean interface for managing application state, making it easier to develop and maintain applications.
On Message
First, we load our chain from the user session:
chain = cl.user_session.get("chain")
Then, we run the chain on the content of the message - and stream it to the front end - that's it!
msg = cl.Message(content="")
result = await chain.arun_pipeline(message.content)
async for stream_resp in result["response"]:
await msg.stream_token(stream_resp)
π
With that - you've created a Chainlit application that moves our Pythonic RAG notebook to a Chainlit application!
Deploying the Application to Hugging Face Space
Due to the way the repository is created - it should be straightforward to deploy this to a Hugging Face Space!
NOTE: If you wish to go through the local deployments using
uv run chainlit run app.py
and Docker - please feel free to do so!
Creating a Hugging Face Space
- Navigate to the
Spaces
tab.
- Click on
Create new Space
- Create the Space by providing values in the form. Make sure you've selected "Docker" as your Space SDK.
Adding this Repository to the Newly Created Space
- Collect the SSH address from the newly created Space.
NOTE: The address is the component that starts with
[email protected]:spaces/
.
- Use the command:
git remote add hf HF_SPACE_SSH_ADDRESS_HERE
- Use the command:
git pull hf main --no-rebase --allow-unrelated-histories -X ours
- Use the command:
git add .
- Use the command:
git commit -m "Deploying Pythonic RAG"
- Use the command:
git push hf main
- The Space should automatically build as soon as the push is completed!
NOTE: The build will fail before you complete the following steps!
Adding OpenAI Secrets to the Space
- Navigate to your Space settings.
- Navigate to
Variables and secrets
on the Settings page and clickNew secret
:
- In the
Name
field - inputOPENAI_API_KEY
in theValue (private)
field, put your OpenAI API Key.
- The Space will begin rebuilding!
π
You just deployed Pythonic RAG!
Try uploading a text file and asking some questions!
β Discussion Question #1:
Upload a PDF file of the recent DeepSeek-R1 paper and ask the following questions:
What is RL and how does it help reasoning?
- Reinforcement Learning (RL) is a type of machine learning that involves an agent learning to make decisions by interacting with an environment and receiving rewards or punishments for its actions. RL helps reasoning by allowing an agent to learn from its experiences and improve its decision-making over time.
What is the difference between DeepSeek-R1 and DeepSeek-R1-Zero? TLDR: the training process is different. DeepSeek-R1-Zero has powerful and intriguing reasoning behaviors. However, it encounters challenges such as poor readability, and language mixing. To address these issues and further enhance reasoning performance, DeepSeek-R1 was introduced, which incorporates multi-stage training and cold-start data before RL.
DeepSeek-R1 achieves performance comparable to OpenAI-o1-1217 on reasoning tasks.
What is this paper about?
- This paper is about the DeepSeek-R1 model, a model trained via large-scale reinforcement learning (RL) without supervised fine-tuning (SFT) as a preliminary step.
Does this application pass your vibe check? Are there any immediate pitfalls you're noticing?
π§ CHALLENGE MODE π§
For the challenge mode, please instead create a simple FastAPI backend with a simple React (or any other JS framework) frontend.
You can use the same prompt templates and RAG pipeline as we did here - but you'll need to modify the code to work with FastAPI and React.
Deploy this application to Hugging Face Spaces!