Chainlit Build production-ready conversational AI applications in Python with rich UI. Installation pip install chainlit Quick Start import chainlit as cl @cl . on_message async def on_message ( message : cl . Message ) : await cl . Message ( content = f"You said: { message . content } " ) . send ( ) Run with: chainlit run app.py -w Core Concepts Concept Description Messages Text communication between user and assistant Steps Visible processing stages (LLM calls, tool use) Elements Rich UI (images, files, charts, dataframes) Actions Interactive buttons with callbacks Sessions Per-user state management Lifecycle Hooks import chainlit as cl @cl . on_chat_start async def start ( ) : cl . user_session . set ( "history" , [ ] ) await cl . Message ( content = "Hello!" ) . send ( ) @cl . on_message async def on_message ( message : cl . Message ) : await cl . Message ( content = "Got it!" ) . send ( ) @cl . on_chat_end async def end ( ) : print ( "Session ended" ) Streaming Responses from openai import AsyncOpenAI import chainlit as cl client = AsyncOpenAI ( ) cl . instrument_openai ( ) @cl . on_message async def on_message ( message : cl . Message ) : msg = cl . Message ( content = "" ) await msg . send ( ) stream = await client . chat . completions . create ( model = "gpt-4" , messages = [ { "role" : "user" , "content" : message . content } ] , stream = True ) async for chunk in stream : if token := chunk . choices [ 0 ] . delta . content : await msg . stream_token ( token ) await msg . update ( ) Steps (Chain of Thought) @cl . step ( type = "tool" ) async def search ( query : str ) : return f"Results for: { query } " @cl . step ( type = "llm" ) async def generate ( context : str ) : return await llm_call ( context ) @cl . on_message async def on_message ( message : cl . Message ) : results = await search ( message . content ) answer = await generate ( results ) await cl . Message ( content = answer ) . send ( ) User Session @cl . on_chat_start async def start ( ) : cl . user_session . set ( "counter" , 0 ) @cl . on_message async def on_message ( message : cl . Message ) : count = cl . user_session . get ( "counter" ) count += 1 cl . user_session . set ( "counter" , count ) Ask User for Input
Text input
response
await cl . AskUserMessage ( content = "What's your name?" ) . send ( ) name = response . get ( "output" ) if response else "Anonymous"
File upload
files
await cl . AskFileMessage ( content = "Upload a file" , accept = [ "text/plain" , "application/pdf" ] ) . send ( )
Action selection
response
await cl . AskActionMessage ( content = "Choose:" , actions = [ cl . Action ( name = "yes" , label = "Yes" ) , cl . Action ( name = "no" , label = "No" ) , ] ) . send ( ) UI Elements @cl . on_message async def on_message ( message : cl . Message ) : elements = [ cl . Text ( name = "code.py" , content = "print('hello')" , language = "python" ) , cl . Image ( name = "chart" , path = "./chart.png" , display = "inline" ) , cl . File ( name = "report.pdf" , path = "./report.pdf" ) , ] await cl . Message ( content = "Results:" , elements = elements ) . send ( ) Actions (Buttons) @cl . action_callback ( "approve" ) async def on_approve ( action : cl . Action ) : await action . remove ( ) await cl . Message ( content = "Approved!" ) . send ( ) @cl . on_message async def on_message ( message : cl . Message ) : actions = [ cl . Action ( name = "approve" , label = "Approve" ) ] await cl . Message ( content = "Review:" , actions = actions ) . send ( ) Reference Documentation For detailed guidance: lifecycle.md - on_chat_start, on_message, on_chat_end hooks messages.md - Message class, streaming, chat_context steps.md - Step decorator, context manager, nested steps elements.md - Text, Image, File, PDF, Audio, Video, Plotly actions.md - Action buttons, callbacks, payloads ask-user.md - AskUserMessage, AskFileMessage, AskActionMessage session.md - User session, reserved keys, state management auth.md - Password, OAuth, header authentication integrations.md - OpenAI, LangChain, LlamaIndex, Mistral patterns.md - RAG, document Q&A, multi-agent, feedback Integrations
OpenAI
cl . instrument_openai ( )
LangChain
config
RunnableConfig ( callbacks = [ cl . LangchainCallbackHandler ( ) ] )
LlamaIndex
callback_manager
CallbackManager ( [ cl . LlamaIndexCallbackHandler ( ) ] ) Configuration .chainlit/config.toml : [ project ] name = "My App" [ UI ] cot = "full"
Show chain of thought: full, hidden, tool_call
Run Commands
Development with auto-reload
chainlit run app.py -w
Production
chainlit run app.py --host 0.0 .0.0 --port 8000
Generate auth secret
chainlit create-secret Key Imports import chainlit as cl
Core
cl . Message , cl . Step , cl . Action
Elements
cl . Text , cl . Image , cl . File , cl . Pdf , cl . Audio , cl . Video cl . Plotly , cl . Dataframe , cl . TaskList
Ask User
cl . AskUserMessage , cl . AskFileMessage , cl . AskActionMessage
Decorators
@cl . on_chat_start , @cl . on_message , @cl . on_chat_end @cl . step , @cl . action_callback @cl . password_auth_callback , @cl . oauth_callback