소개
This skill provides a comprehensive suite of nine reinforcement learning (RL) algorithms—including Decision Transformer, Q-Learning, and Actor-Critic—integrated directly into the AgentDB ecosystem. It enables developers to build self-learning agents capable of optimizing their behavior based on historical logs or real-time interaction, leveraging WASM-accelerated neural inference for high-speed performance. By combining traditional RL with vector-based reasoning, it allows for the creation of robust, adaptive AI systems that handle complex decision-making tasks across diverse domains like gaming, robotics, and workflow automation.