概要
This skill enables developers to build agents that autonomously improve their own code and logic through evolutionary cycles. By utilizing Darwin Gödel Machine (DGM) architectures, the skill manages an archive of agent versions, selects high-performing candidates, and applies LLM-driven mutations to enhance capabilities over time. It is an essential framework for creating agents that need to adapt to complex environments or solve increasingly difficult tasks through iterative benchmarking and long-term memory integration.