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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 then `uv run chainlit run app.py` to start the application outside of Docker. | |
## Reference Diagram (It's Busy, but it works) | |
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### Anatomy of a Chainlit Application | |
[Chainlit](https://docs.chainlit.io/get-started/overview) 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](https://blog.hubspot.com/website/decorators-in-python). | |
> 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: | |
1. On application start - when we start the Chainlit application with a command like `chainlit run app.py` | |
2. On chat start - when a chat session starts (a user opens the web browser to the address hosting the application) | |
3. 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. | |
```python | |
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. | |
```python | |
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: | |
```python | |
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: | |
1. We have modified this `RetrievalAugmentedQAPipeline` from the initial notebook to support streaming. | |
2. In essence, our pipeline is *chaining* a few events together: | |
1. We take our user query, and chain it into our Vector Database to collect related chunks | |
2. We take those contexts and our user's questions and chain them into the prompt templates | |
3. We take that prompt template and chain it into our LLM call | |
4. We chain the response of the LLM call to the user | |
3. 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`. | |
```python | |
text_splitter = CharacterTextSplitter() | |
``` | |
Now we can define our helper. | |
```python | |
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? | |
### 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. | |
```python | |
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! | |
```python | |
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! | |
```python | |
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](https://docs.chainlit.io/concepts/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? | |
### On Message | |
First, we load our chain from the user session: | |
```python | |
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! | |
```python | |
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! | |
<details> | |
<summary>Creating a Hugging Face Space</summary> | |
1. Navigate to the `Spaces` tab. | |
 | |
2. Click on `Create new Space` | |
 | |
3. Create the Space by providing values in the form. Make sure you've selected "Docker" as your Space SDK. | |
 | |
</details> | |
<details> | |
<summary>Adding this Repository to the Newly Created Space</summary> | |
1. Collect the SSH address from the newly created Space. | |
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> NOTE: The address is the component that starts with `[email protected]:spaces/`. | |
2. Use the command: | |
```bash | |
git remote add hf HF_SPACE_SSH_ADDRESS_HERE | |
``` | |
3. Use the command: | |
```bash | |
git pull hf main --no-rebase --allow-unrelated-histories -X ours | |
``` | |
4. Use the command: | |
```bash | |
git add . | |
``` | |
5. Use the command: | |
```bash | |
git commit -m "Deploying Pythonic RAG" | |
``` | |
6. Use the command: | |
```bash | |
git push hf main | |
``` | |
7. The Space should automatically build as soon as the push is completed! | |
> NOTE: The build will fail before you complete the following steps! | |
</details> | |
<details> | |
<summary>Adding OpenAI Secrets to the Space</summary> | |
1. Navigate to your Space settings. | |
 | |
2. Navigate to `Variables and secrets` on the Settings page and click `New secret`: | |
 | |
3. In the `Name` field - input `OPENAI_API_KEY` in the `Value (private)` field, put your OpenAI API Key. | |
 | |
4. The Space will begin rebuilding! | |
</details> | |
## 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: | |
1. What is RL and how does it help reasoning? | |
2. What is the difference between DeepSeek-R1 and DeepSeek-R1-Zero? | |
3. What is this paper about? | |
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! | |