The document centers on ASI-ARCH, an AI system designed to autonomously discover and develop novel neural network architectures. It highlights the concept of a "scaling law for scientific discovery", suggesting that breakthroughs in AI architecture can be scaled computationally, moving beyond human limitations. The system operates through a closed-loop framework involving Researcher, Engineer, and Analyst modules, which propose, evaluate, and learn from new designs. The paper presents empirical evidence of ASI-ARCH's success in finding superior architectures and details its methodology, evaluation protocols, and design principles, emphasizing its potential for achieving scientific superintelligence in AI research.