AI RESEARCH
More Is Different: Toward a Theory of Emergence in AI-Native Software Ecosystems
arXiv CS.AI
•
ArXi:2604.19827v1 Announce Type: cross Software engineering faces a fundamental challenge: multi-agent AI systems fail in ways that defy explanation by traditional theories. While individual agents perform correctly, their interactions degrade entire ecosystems, revealing a gap in our understanding of software evolution. This paper argues that AI-native software ecosystems must be studied as complex adaptive systems (CAS), where emergent properties like architectural entropy, cascade failures, and comprehension debt arise not from individual components, but from their interactions.