소개
AgentDB Learning enables the creation of self-improving autonomous agents through a versatile library of nine reinforcement learning algorithms. It provides a robust framework for capturing agent experiences and training models via WASM-accelerated inference for significant performance gains. Whether you are implementing offline learning from historical data with Decision Transformers or real-time optimization with Actor-Critic, this skill facilitates sophisticated behavioral tuning and decision-making capabilities within agentic workflows.