Build LLM-powered applications using LangChain
This page introduces how to build LLM-powered applications using LangChain. The overviews on this page link to procedure guides in GitHub.
What is LangChain?
LangChain is an LLM orchestration framework that helps developers build generative AI applications or retrieval-augmented generation (RAG) workflows. It provides the structure, tools, and components to streamline complex LLM workflows.
For more information about LangChain, see the Google LangChain page. For more information about the LangChain framework, see the LangChain product documentation.
LangChain components for Bigtable
Bigtable offers the following LangChain interfaces:
Learn how to use LangChain with the LangChain Quickstart for Bigtable. This quickstart creates an application that accesses a Netflix Movie dataset so that users can interact with movie data.
Document loader for Bigtable
The document loader saves, loads, and deletes a LangChain Document
objects.
For example, you can load data for processing into embeddings and either store
it in vector store or use it as a tool to provide specific context to chains.
To load documents from document loader in Bigtable, use the
BigtableLoader
class. BigtableLoader
methods return one or more documents
from a table. Use the BigtableSaver
class to save and delete documents.
For more information, see the LangChain Document loaders topic.
Document loader procedure guide
The Bigtable guide for document loader shows you how to do the following:
- Install the integration package and LangChain
- Load documents from a table
- Add a filter to the loader
- Customize the connection and authentication
- Customize Document construction by specifying customer content and metadata
- How to use and customize a
BigtableSaver
to store and delete documents
Chat message history for Bigtable
Question and answer applications require a history of the things said in the
conversation to give the application context for answering further questions
from the user. The LangChain ChatMessageHistory
class lets the application
save messages and retrieve them when needed to formulate further
answers. A message can be a question, an answer, a statement, a greeting or any
other piece of text that the user or application gives during the conversation.
ChatMessageHistory
stores each message and chains messages together for each
conversation.
Bigtable extends this class with BigtableChatMessageHistory
.
Chat message history procedure guide
The Bigtable guide for chat message history shows you how to do the following:
- Install LangChain and authenticate to Google Cloud
- Initialize Bigtable schema
- Initialize the
BigtableChatMessageHistory
class to add and delete messages - Use a client to customize the connection and authentication