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  • A Java framework for orchestrating AI workflows as directed graphs with LLM integration and tool calls.
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    What is LangGraph4j?
    LangGraph4j represents AI agent operations—LLM calls, function invocations, data transforms—as nodes in a directed graph, with edges modeling data flow. You create a graph, add nodes for chat, embeddings, external APIs or custom logic, connect them, and execute. The framework manages execution order, handles caching, logs inputs and outputs, and lets you extend with new node types. It supports synchronous and asynchronous processing, making it ideal for chatbots, document QA, and complex reasoning pipelines.
    LangGraph4j Core Features
    • Graph-based orchestration of AI pipelines
    • LLM integration (OpenAI, Hugging Face)
    • Function and tool node support
    • Data transform and custom node APIs
    • Execution logging and caching
    • Synchronous and asynchronous execution
    LangGraph4j Pro & Cons

    The Cons

    No explicit pricing or commercial support information available.
    Primarily targeted for Java developers, may not be suitable for other ecosystems.
    Requires familiarity with multi-agent systems and AI workflows, which might present a learning curve.

    The Pros

    Supports stateful, multi-agent applications with LLMs.
    Built for Java developers and integrates well with Langchain4j and Spring AI.
    Offers asynchronous and streaming support for scalable workflows.
    Includes graph visualization and debugging tools.
    Provides checkpoint and breakpoint support to pause and resume workflows.
    Visual builder tool improves clarity and development experience.
    Open source with active GitHub repository and Discord community support.
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