The langchain-postgres
package implementations of core LangChain abstractions using Postgres
.
The package is released under the MIT license.
Feel free to use the abstraction as provided or else modify them / extend them as appropriate for your own application.
The package currently only supports the psycogp3 driver.
pip install -U langchain-postgres
0.0.6:
- Remove langgraph as a dependency as it was causing dependency conflicts.
- Base interface for checkpointer changed in langgraph, so existing implementation would've broken regardless.
The chat message history abstraction helps to persist chat message history in a postgres table.
PostgresChatMessageHistory is parameterized using a table_name
and a session_id
.
The table_name
is the name of the table in the database where
the chat messages will be stored.
The session_id
is a unique identifier for the chat session. It can be assigned
by the caller using uuid.uuid4()
.
import uuid
from langchain_core.messages import SystemMessage, AIMessage, HumanMessage
from langchain_postgres import PostgresChatMessageHistory
import psycopg
# Establish a synchronous connection to the database
# (or use psycopg.AsyncConnection for async)
conn_info = ... # Fill in with your connection info
sync_connection = psycopg.connect(conn_info)
# Create the table schema (only needs to be done once)
table_name = "chat_history"
PostgresChatMessageHistory.create_tables(sync_connection, table_name)
session_id = str(uuid.uuid4())
# Initialize the chat history manager
chat_history = PostgresChatMessageHistory(
table_name,
session_id,
sync_connection=sync_connection
)
# Add messages to the chat history
chat_history.add_messages([
SystemMessage(content="Meow"),
AIMessage(content="woof"),
HumanMessage(content="bark"),
])
print(chat_history.messages)
See example for the PGVector vectorstore here
Google Cloud provides Vector Store, Chat Message History, and Data Loader integrations for AlloyDB and Cloud SQL for PostgreSQL databases via the following PyPi packages:
Using the Google Cloud integrations provides the following benefits:
- Enhanced Security: Securely connect to Google Cloud databases utilizing IAM for authorization and database authentication without needing to manage SSL certificates, configure firewall rules, or enable authorized networks.
- Simplified and Secure Connections: Connect to Google Cloud databases effortlessly using the instance name instead of complex connection strings. The integrations creates a secure connection pool that can be easily shared across your application using the
engine
object.
Vector Store | Metadata filtering | Async support | Schema Flexibility | Improved metadata handling | Hybrid Search |
---|---|---|---|---|---|
Google AlloyDB | ✓ | ✓ | ✓ | ✓ | ✗ |
Google Cloud SQL Postgres | ✓ | ✓ | ✓ | ✓ | ✗ |