Hybrid unary-binary design for multiplier-less printed ML classifiers

1 month ago 10

[Submitted on 18 Sep 2025]

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Abstract:Printed Electronics (PE) provide a flexible, cost-efficient alternative to silicon for implementing machine learning (ML) circuits, but their large feature sizes limit classifier complexity. Leveraging PE's low fabrication and NRE costs, designers can tailor hardware to specific ML models, simplifying circuit design. This work explores alternative arithmetic and proposes a hybrid unary-binary architecture that removes costly encoders and enables efficient, multiplier-less execution of MLP classifiers. We also introduce architecture-aware training to further improve area and power efficiency. Evaluation on six datasets shows average reductions of 46% in area and 39% in power, with minimal accuracy loss, surpassing other state-of-the-art MLP designs.

Submission history

From: Giorgos Armeniakos [view email]
[v1] Thu, 18 Sep 2025 18:02:24 UTC (232 KB)

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