Session

Comparing Agentic AI Frameworks for Java

Agentic AI marks a shift from passive, prompt-driven interactions to autonomous systems that can reason, plan, and execute work. On the JVM, several frameworks are emerging to support this new paradigm, but they take very different approaches.

In this session, we compare frameworks such as Spring AI, LangChain4j, and Embabel on how they implement core agent capabilities such as reasoning loops, tool invocation, memory, and orchestration. We also look at how the Model Context Protocol (MCP) helps standardize access to data and tools across agents.

Through practical examples, attendees will gain a clear understanding of the trade-offs between these frameworks and guidance on choosing the right one to evolve JVM applications from simple LLM integrations into truly autonomous, agentic systems.

Sandra Ahlgrimm

Senior Developer Advocate, working for Java and AI

Berlin, Germany

Actions

Please note that Sessionize is not responsible for the accuracy or validity of the data provided by speakers. If you suspect this profile to be fake or spam, please let us know.

Jump to top