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Poster
in
Workshop: Machine Learning with New Compute Paradigms

Contrastive power-efficient physical learning in resistor networks

Menachem Stern · Sam Dillavou · Dinesh Jayaraman · Douglas Durian · Andrea Liu


Abstract:

The prospect of substantial reductions in the power consumption of AI is a major motivation for the development of neuromorphic hardware. Less attention has been given to the complementary research of power-efficient learning rules for such systems. Here we study self-learning physical systems trained by local learning rules based on contrastive learning. We show how the physical learning rule can be biased toward finding power-efficient solutions to learning problems, and demonstrate in simulations and laboratory experiments the emergence of a trade-off between power-efficiency and task performance.

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