AI RESEARCH
AgentGA: Evolving Code Solutions in Agent-Seed Space
arXiv CS.AI
•
ArXi:2604.14655v1 Announce Type: new We present AgentGA, a framework that evolves autonomous code-generation runs by optimizing the agent seed: the task prompt plus optional parent archives that initialize a fresh workspace. The outer loop searches over these reusable starting conditions rather than editing code directly. Each generation launches a fresh autonomous run from a reset workspace, while selected parent archives provide inherited artifacts that descendants can inspect and reuse.