Recent advancements in ultra-low-power machine learning (TinyML) hardware promises to unlock an entirely new class of smart applications. However, continued progress is limited by the lack of a widely accepted benchmark for these systems. Benchmarking allows us to measure and thereby systematically compare, evaluate, and improve the performance of systems and is therefore fundamental to a field reaching maturity. In this position paper, we present the current landscape of TinyML and discuss the challenges and direction towards developing a fair and useful hardware benchmark for TinyML workloads. Furthermore, we present our four benchmarks and discuss our selection methodology. Our viewpoints reflect the collective thoughts of the TinyMLPerf working group that is comprised of over 30 organizations.
翻译:超低功率机器学习硬件(TinyML)最近的进展有望打开全新的智能应用程序,然而,由于这些系统缺乏广泛接受的基准,持续的进展受到限制。基准使我们得以衡量并从而系统地比较、评价和改进系统性能,因此对于一个领域达到成熟至关重要。在本立场文件中,我们介绍了目前TinyML的格局,并讨论了为TinyML工作量制定公平而有用的硬件基准的挑战和方向。此外,我们提出了四个基准,并讨论了我们的选择方法。我们的观点反映了由30多个组织组成的TinyMLPerf工作组的集体想法。