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Streamlit

Streamlit is a faster way to build and share data apps. Streamlit turns data scripts into shareable web apps in minutes. All in pure Python. No front‑end experience required. See more examples at streamlit.io/generative-ai.

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In this guide we will demonstrate how to use StreamlitCallbackHandler to display the thoughts and actions of an agent in an interactive Streamlit app. Try it out with the running app below using the MRKL agent:

Installation and Setup​

pip install langchain streamlit

You can run streamlit hello to load a sample app and validate your install succeeded. See full instructions in Streamlit's Getting started documentation.

Display thoughts and actions​

To create a StreamlitCallbackHandler, you just need to provide a parent container to render the output.

from langchain.callbacks import StreamlitCallbackHandler
import streamlit as st

st_callback = StreamlitCallbackHandler(st.container())

Additional keyword arguments to customize the display behavior are described in the API reference.

Scenario 1: Using an Agent with Tools​

The primary supported use case today is visualizing the actions of an Agent with Tools (or Agent Executor). You can create an agent in your Streamlit app and simply pass the StreamlitCallbackHandler to agent.run() in order to visualize the thoughts and actions live in your app.

from langchain.llms import OpenAI
from langchain.agents import AgentType, initialize_agent, load_tools
from langchain.callbacks import StreamlitCallbackHandler
import streamlit as st

llm = OpenAI(temperature=0, streaming=True)
tools = load_tools(["ddg-search"])
agent = initialize_agent(
tools, llm, agent=AgentType.ZERO_SHOT_REACT_DESCRIPTION, verbose=True
)

if prompt := st.chat_input():
st.chat_message("user").write(prompt)
with st.chat_message("assistant"):
st_callback = StreamlitCallbackHandler(st.container())
response = agent.run(prompt, callbacks=[st_callback])
st.write(response)

Note: You will need to set OPENAI_API_KEY for the above app code to run successfully. The easiest way to do this is via Streamlit secrets.toml, or any other local ENV management tool.

Additional scenarios​

Currently StreamlitCallbackHandler is geared towards use with a LangChain Agent Executor. Support for additional agent types, use directly with Chains, etc will be added in the future.

You may also be interested in using StreamlitChatMessageHistory for LangChain.