概要
AgentDB Memory Patterns provides a sophisticated framework for building intelligent agents that learn and remember across interactions. By integrating AgentDB's high-performance vector storage with ReasoningBank, it enables developers to implement complex memory architectures including session history, long-term factual storage, and reinforcement learning patterns. This skill is essential for creating autonomous workflows and conversational systems that require context persistence, rapid pattern matching, and efficient memory consolidation, all while offering 100% backward compatibility with legacy reasoning systems and sub-millisecond retrieval speeds.