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arxiv: 2109.00846 · v1 · pith:QGJR4HORnew · submitted 2021-09-02 · 📡 eess.SP · cs.LG

Self-timed Reinforcement Learning using Tsetlin Machine

classification 📡 eess.SP cs.LG
keywords designasynchronoushardwaretsetlinanalysisapplicationsdatapathenergy
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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, dual-rail 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.

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