LangChain provides create_agent: a minimal, highly configurable agent harness. Compose exactly the agent your use case needs from model, tools, prompt, and middleware.
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Agent = Model + Harness. LangChain provides create_agent: a minimal, highly configurable harness. The harness is everything around the model loop: the prompt, the tools, and any middleware that shapes behavior. Start with the primitives and compose exactly what your use case needs. Supports OpenAI, Anthropic, Google, and more.
LangChain vs. LangGraph vs. Deep AgentsStart with Deep Agents for a “batteries-included” agent with features like automatic context compression, a virtual filesystem, and subagent-spawning. Deep Agents are built on LangChain agents which you can also use directly.Use LangChain (create_agent) for a highly customizable harness, easily tailored to your use case and data.Use LangGraph, our low-level orchestration framework, for advanced needs combining deterministic and agentic workflows.Use LangSmith to trace, debug, and evaluate agents built with any of these frameworks. Follow the tracing quickstart to get set up.
The LangSmith Engine detects issues in your LangChain agent traces and proposes fixes. You can open a pull request with the proposed fix directly from the Engine tab.
Different providers have unique APIs for interacting with models, including the format of responses. LangChain standardizes how you interact with models so that you can seamlessly swap providers and avoid lock-in.
Highly configurable harness
create_agent is a minimal harness: model, tools, prompt, loop. Extend it with middleware: each piece handles one concern and composes freely. Build exactly the agent your use case needs, nothing more.
Built on top of LangGraph
LangChain’s agents are built on top of LangGraph. This allows us to take advantage of LangGraph’s durable execution, human-in-the-loop support, persistence, and more.
Debug with LangSmith
Gain deep visibility into complex agent behavior with visualization tools that trace execution paths, capture state transitions, and provide detailed runtime metrics.
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