Self-timed Reinforcement Learning using Tsetlin Machine

A. Wheeldon, A. Yakovlev, R. Shafik
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引用次数: 6

Abstract

We present a hardware design for the learning datapath of the Tsetlin machine algorithm, along with a latency analysis of the inference datapath. In order to generate a low energy hardware which is suitable for pervasive artificial intelligence applications, we use a mixture of asynchronous design techniques—including Petri nets, signal transition graphs, dualrail and bundled-data. The work builds on previous design of the inference hardware, and includes an in-depth breakdown of the automaton feedback, probability generation and Tsetlin automata. Results illustrate the advantages of asynchronous design in applications such as personalized healthcare and battery-powered internet of things devices, where energy is limited and latency is an important figure of merit. Challenges of static timing analysis in asynchronous circuits are also addressed.
使用Tsetlin机器的自定时强化学习
我们提出了Tsetlin机器算法的学习数据路径的硬件设计,以及推理数据路径的延迟分析。为了生成适合于普及人工智能应用的低能耗硬件,我们使用了异步设计技术的混合-包括Petri网,信号转换图,双轨和捆绑数据。这项工作建立在先前的推理硬件设计的基础上,包括对自动机反馈、概率生成和Tsetlin自动机的深入分解。结果说明了异步设计在个性化医疗保健和电池供电的物联网设备等应用中的优势,在这些应用中,能量有限,延迟是一个重要的优点。本文还讨论了异步电路中静态时序分析的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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