AI Toolkit for Engineers
Project description
phidata
AI Toolkit for Engineers
Phidata is an AI toolkit that provides pre-built templates for LLM apps.
🚀 Run an LLM App in 3 simple steps
- Create your codebase using a template:
phi ws create
- Run your app locally:
phi ws up dev:docker
- Run your app on AWS:
phi ws up prd:aws
For example, run a RAG Chatbot built with FastApi, Streamlit and PgVector:
phi ws create -t llm-app -n llm-app # create the llm-app codebase
phi ws up # run the llm-app locally
📚 More Information:
- Read the documentation
- Chat with us on Discord
- Email us at help@phidata.com
💻 Example: Build a RAG LLM App
Let's build a RAG LLM App with GPT-4. We'll use PgVector for Knowledge Base and Storage and serve the app using Streamlit and FastApi. Read the full tutorial here.
Install docker desktop to run this app locally.
Setup
Open the Terminal
and create an ai
directory with a python virtual environment.
mkdir ai && cd ai
python3 -m venv aienv
source aienv/bin/activate
Install phidata
pip install phidata
Create your codebase
Create your codebase using the llm-app
template pre-configured with FastApi, Streamlit and PgVector. Use this codebase as a starting point for your LLM product.
phi ws create -t llm-app -n llm-app
This will create a folder named llm-app
Serve your LLM App using Streamlit
Streamlit allows us to build micro front-ends for our LLM App and is extremely useful for building basic applications in pure python. Start the app
group using:
phi ws up --group app
Press Enter to confirm and give a few minutes for the image to download (only the first time). Verify container status and view logs on the docker dashboard.
Chat with PDFs
- Open localhost:8501 to view streamlit apps that you can customize and make your own.
- Click on Chat with PDFs in the sidebar
- Enter a username and wait for the knowledge base to load.
- Choose the
RAG
Conversation type. - Ask "How do I make chicken curry?"
- Upload PDFs and ask questions
Serve your LLM App using FastApi
Streamlit is great for building micro front-ends but any production application will be built using a front-end framework like next.js
backed by a RestApi built using a framework like FastApi
.
Your LLM App comes ready-to-use with FastApi endpoints, start the api
group using:
phi ws up --group api
Press Enter to confirm and give a few minutes for the image to download.
View API Endpoints
- Open localhost:8000/docs to view the API Endpoints.
- Load the knowledge base using
/v1/pdf/conversation/load-knowledge-base
- Test the
v1/pdf/conversation/chat
endpoint with{"message": "How do I make chicken curry?"}
- The LLM Api comes pre-built with endpoints that you can integrate with your front-end.
Optional: Run Jupyterlab
A jupyter notebook is a must have for AI development and your llm-app
comes with a notebook pre-installed with the required dependencies. Enable it by updating the workspace/settings.py
file:
...
ws_settings = WorkspaceSettings(
...
# Uncomment the following line
dev_jupyter_enabled=True,
...
Start jupyter
using:
phi ws up --group jupyter
Press Enter to confirm and give a few minutes for the image to download (only the first time). Verify container status and view logs on the docker dashboard.
View Jupyterlab UI
- Open localhost:8888 to view the Jupyterlab UI. Password: admin
- Play around with cookbooks in the
notebooks
folder.
Delete local resources
Play around and stop the workspace using:
phi ws down
Run your LLM App on AWS
Read how to run your LLM App on AWS here.
📚 More Information:
- Read the documentation
- Chat with us on Discord
- Email us at help@phidata.com
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.