Demonstration of Decentralized, Physics-Driven Learning
Sam Dillavou, Menachem Stern, Andrea J. Liu, and Douglas J. Durian

TL;DR
This paper demonstrates a decentralized, physics-driven contrastive learning system using variable resistors that trains itself locally without a central processor, showing robustness and scalability for physical neural networks.
Contribution
It introduces a novel hardware implementation of contrastive learning in physical resistor networks, enabling autonomous training based on local responses without external computation.
Findings
Successfully trained resistor networks for classification tasks
System is robust to damage and manufacturing defects
Scalable to large and nonlinear networks
Abstract
In typical artificial neural networks, neurons adjust according to global calculations of a central processor, but in the brain neurons and synapses self-adjust based on local information. Contrastive learning algorithms have recently been proposed to train physical systems, such as fluidic, mechanical, or electrical networks, to perform machine learning tasks from local evolution rules. However, to date such systems have only been implemented in silico due to the engineering challenge of creating elements that autonomously evolve based on their own response to two sets of global boundary conditions. Here we introduce and implement a physics-driven contrastive learning scheme for a network of variable resistors, using circuitry to locally compare the response of two identical networks subjected to the two different sets of boundary conditions. Using this innovation, our system…
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