We study test-time scaling (TTS) methods for self-improving and self-adapting agents, advancing a new paradigm of artificial intelligence in which autonomous systems do not merely act, but evolve reliably through learning from experience, refining behavior in real time, and autonomously modifying their own learning mechanisms.