架构边缘的治理:神经AI与神经形态系统的监管 / Governance at the Edge of Architecture: Regulating NeuroAI and Neuromorphic Systems
1️⃣ 一句话总结
这篇论文指出,当前基于传统硬件和静态神经网络的AI治理框架已不适用于新兴的、受大脑启发的神经形态计算系统,因此需要发展新的评估和监管方法,使其与这类系统的物理特性和学习动态相匹配。
Current AI governance frameworks, including regulatory benchmarks for accuracy, latency, and energy efficiency, are built for static, centrally trained artificial neural networks on von Neumann hardware. NeuroAI systems, embodied in neuromorphic hardware and implemented via spiking neural networks, break these assumptions. This paper examines the limitations of current AI governance frameworks for NeuroAI, arguing that assurance and audit methods must co-evolve with these architectures, aligning traditional regulatory metrics with the physics, learning dynamics, and embodied efficiency of brain-inspired computation to enable technically grounded assurance.
架构边缘的治理:神经AI与神经形态系统的监管 / Governance at the Edge of Architecture: Regulating NeuroAI and Neuromorphic Systems
这篇论文指出,当前基于传统硬件和静态神经网络的AI治理框架已不适用于新兴的、受大脑启发的神经形态计算系统,因此需要发展新的评估和监管方法,使其与这类系统的物理特性和学习动态相匹配。
源自 arXiv: 2602.01503