As we march towards the age of ubiquitous intelligence, we note that AI and intelligence are progressively moving from the cloud to the edge. The success of Edge-AI is pivoted on innovative circuits and hardware that can enable inference and limited learning in resource-constrained edge autonomous systems. This paper introduces a series of ultra-low-power accelerator and system designs on enabling the intelligence in edge robotic platforms, including reinforcement learning neuromorphic control, swarm intelligence, and simultaneous mapping and localization. We put an emphasis on the impact of the mixed-signal circuit, neuro-inspired computing system, benchmarking and software infrastructure, as well as algorithm-hardware co-design to realize the most energy-efficient Edge-AI ASICs for the next-generation intelligent and autonomous systems.
翻译:当我们向无处不在的智能时代迈进时,我们注意到AI和情报正逐渐从云层向边缘移动。Edge-AI的成功依靠创新电路和硬件,能够在资源紧缺的边缘自主系统中进行推论和有限的学习。本文介绍了一系列超低功率加速器和系统设计,用于在边缘机器人平台上提供情报,包括强化学习神经形态控制、群状智能、同时绘图和本地化。我们强调混合信号电路、神经激励计算系统、基准和软件基础设施以及算法硬件共同设计的影响,以实现下一代智能和自主系统最节能的Edge-AI ASIC。