Cloud SQL for PostgreSQL for LangChain
The Cloud SQL for PostgreSQL for LangChain package provides a first class experience for connecting to Cloud SQL instances from the LangChain ecosystem while providing the following benefits:
Simplified & Secure Connections: easily and securely create shared connection pools to 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.
Improved performance & Simplified management: use a single-table schema can lead to faster query execution, especially for large collections.
Improved metadata handling: store metadata in columns instead of JSON, resulting in significant performance improvements.
Clear separation: clearly separate table and extension creation, allowing for distinct permissions and streamlined workflows.
Quick Start
In order to use this library, you first need to go through the following steps:
Installation
Install this library in a virtual environment using venv. venv is a tool that creates isolated Python environments. These isolated environments can have separate versions of Python packages, which allows you to isolate one project’s dependencies from the dependencies of other projects.
With venv, it’s possible to install this library without needing system install permissions, and without clashing with the installed system dependencies.
Supported Python Versions
Python >= 3.9
Mac/Linux
pip install virtualenv
virtualenv <your-env>
source <your-env>/bin/activate
<your-env>/bin/pip install langchain-google-cloud-sql-pg
Windows
pip install virtualenv
virtualenv <your-env>
<your-env>\Scripts\activate
<your-env>\Scripts\pip.exe install langchain-google-cloud-sql-pg
Example Usage
Code samples and snippets live in the samples/ folder.
Vector Store Usage
Use a Vector Store to store embedded data and perform vector search.
from langchain_google_cloud_sql_pg import PostgresVectorstore, PostgresEngine
from langchain.embeddings import VertexAIEmbeddings
engine = PostgresEngine.from_instance("project-id", "region", "my-instance", "my-database")
engine.init_vectorstore_table(
table_name="my-table",
vector_size=768, # Vector size for `VertexAIEmbeddings()`
)
embeddings_service = VertexAIEmbeddings(model_name="textembedding-gecko@003")
vectorstore = PostgresVectorStore.create_sync(
engine,
table_name="my-table",
embeddings=embedding_service
)
See the full Vector Store tutorial.
Document Loader Usage
Use a document loader to load data as Documents.
from langchain_google_cloud_sql_pg import PostgresEngine, PostgresLoader
engine = PostgresEngine.from_instance("project-id", "region", "my-instance", "my-database")
loader = PostgresSQLLoader.create_sync(
engine,
table_name="my-table-name"
)
docs = loader.lazy_load()
See the full Document Loader tutorial.
Chat Message History Usage
Use Chat Message History to store messages and provide conversation history to LLMs.
from langchain_google_cloud_sql_pg import PostgresChatMessageHistory, PostgresEngine
engine = PostgresEngine.from_instance("project-id", "region", "my-instance", "my-database")
engine.init_chat_history_table(table_name="my-message-store")
history = PostgresChatMessageHistory.create_sync(
engine,
table_name="my-message-store",
session_id="my-session_id"
)
See the full Chat Message History tutorial.
Contributions
Contributions to this library are always welcome and highly encouraged.
See CONTRIBUTING for more information how to get started.
Please note that this project is released with a Contributor Code of Conduct. By participating in this project you agree to abide by its terms. See Code of Conduct for more information.
Disclaimer
This is not an officially supported Google product.