Streamlit
Streamlit is an open-source Python library that makes it easy to create and share beautiful, custom web apps for machine learning and data science.
This notebook goes over how to store and use chat message history in a
Streamlit
app. StreamlitChatMessageHistory
will store messages in
Streamlit session
state at
the specified key=
. The default key is "langchain_messages"
.
- Note,
StreamlitChatMessageHistory
only works when run in a Streamlit app. - You may also be interested in StreamlitCallbackHandler for LangChain.
- For more on Streamlit check out their getting started documentation.
The integration lives in the langchain-community
package, so we need
to install that. We also need to install streamlit
.
pip install -U langchain-community streamlit
You can see the full app example running here, and more examples in github.com/langchain-ai/streamlit-agent.
from langchain_community.chat_message_histories import (
StreamlitChatMessageHistory,
)
history = StreamlitChatMessageHistory(key="chat_messages")
history.add_user_message("hi!")
history.add_ai_message("whats up?")
API Reference:
history.messages
We can easily combine this message history class with LCEL Runnables.
The history will be persisted across re-runs of the Streamlit app within
a given user session. A given StreamlitChatMessageHistory
will NOT be
persisted or shared across user sessions.
# Optionally, specify your own session_state key for storing messages
msgs = StreamlitChatMessageHistory(key="special_app_key")
if len(msgs.messages) == 0:
msgs.add_ai_message("How can I help you?")
from langchain_core.prompts import ChatPromptTemplate, MessagesPlaceholder
from langchain_core.runnables.history import RunnableWithMessageHistory
from langchain_openai import ChatOpenAI
prompt = ChatPromptTemplate.from_messages(
[
("system", "You are an AI chatbot having a conversation with a human."),
MessagesPlaceholder(variable_name="history"),
("human", "{question}"),
]
)
chain = prompt | ChatOpenAI()
chain_with_history = RunnableWithMessageHistory(
chain,
lambda session_id: msgs, # Always return the instance created earlier
input_messages_key="question",
history_messages_key="history",
)
Conversational Streamlit apps will often re-draw each previous chat
message on every re-run. This is easy to do by iterating through
StreamlitChatMessageHistory.messages
:
import streamlit as st
for msg in msgs.messages:
st.chat_message(msg.type).write(msg.content)
if prompt := st.chat_input():
st.chat_message("human").write(prompt)
# As usual, new messages are added to StreamlitChatMessageHistory when the Chain is called.
config = {"configurable": {"session_id": "any"}}
response = chain_with_history.invoke({"question": prompt}, config)
st.chat_message("ai").write(response.content)