LangChain and Elasticsearch: Building LangGraph retrieval agent template

Elasticsearch and LangChain collaborate on a new retrieval agent template for LangGraph for agentic apps

Elasticsearch has native integrations with the industry-leading Gen AI tools and providers. Check out our webinars on going Beyond RAG Basics, or building prod-ready apps with the Elastic vector database.

To build the best search solutions for your use case, start a free cloud trial or try Elastic on your local machine now.

The new LangGraph retrieval agent template is designed to simplify the development of Generative AI (GenAI) agentic applications that require agents to use Elasticsearch for agentic retrieval. This template comes pre-configured to use Elasticsearch, allowing developers to build agents with LangChain and Elasticsearch quickly.

To get started right away, access the project on Github: https://github.com/langchain-ai/retrieval-agent-template

What is LangGraph?

LangGraph helps developers build stateful, multi-actor applications with LLMs, used to create agent and multi-agent workflows. There are a few new concepts to learn, like cycles, branching, and persistence – these allow developers to implement loops, conditions, and error handling mechanisms in applications. This makes LangGraph a great choice for creating complex workflows, where agents can pause for user input or correction. For more details you can check the Intro to LangGraph course on LangChain Academy.

The new Retrieval Agent Template focuses on question-answering tasks by leveraging knowledge retrieval with Elasticsearch. Users can set up agents capable of retrieving relevant information based on natural language queries. The template provides an easy, configurable interface to Elasticsearch, making it a great starting point for developers looking to build search retrieval-based agents​.

About LangGraph’s default Elasticsearch template

Elasticsearch Vector Database Capabilities: The template leverages Elasticsearch’s Vector Storage and Search capabilities to enable more precise and relevant knowledge retrieval.

Retrieval Agent Capability: This enables an agent to use Retrieval-Augmented Generation (RAG), helping Large Language Models (LLMs) provide more accurate and context-rich answers by retrieving the most relevant information from data stored within Elasticsearch.

Integration with LangGraph Studio: With LangGraph Studio, developers can better understand and build complex agentic applications. It provides intuitive visualization and debugging tools in a user-friendly interface, making it easier to develop, optimize, and troubleshoot AI applications.

Start building with LangGraph retrieval agent template

Elastic and LangChain are excited to give developers a headstart building the next generation of intelligent, knowledge-driven AI agents using this template.

Access the retrieval agent template on GitHub, or visit Search Labs for cookbooks using Elasticsearch and LangChain. Happy searching agenting!

자주 묻는 질문

What is LangGraph?

LangGraph helps developers build stateful, multi-actor applications with LLMs, used to create agent and multi-agent workflows.

관련 콘텐츠

최첨단 검색 환경을 구축할 준비가 되셨나요?

충분히 고급화된 검색은 한 사람의 노력만으로는 달성할 수 없습니다. Elasticsearch는 여러분과 마찬가지로 검색에 대한 열정을 가진 데이터 과학자, ML 운영팀, 엔지니어 등 많은 사람들이 지원합니다. 서로 연결하고 협력하여 원하는 결과를 얻을 수 있는 마법 같은 검색 환경을 구축해 보세요.

직접 사용해 보세요