A Non-Volatile All-Spin Non-Binary Matrix Multiplier: An Efficient Hardware Accelerator for Machine Learning
Rahnuma Rahman, Supriyo Bandyopadhyay

TL;DR
This paper introduces a compact, non-volatile all-spin matrix multiplier that efficiently performs multiply-and-accumulate operations, significantly reducing device count and enabling edge AI applications with fast, energy-efficient processing.
Contribution
It presents a novel all-spin, non-volatile matrix multiplier architecture that requires fewer devices and retains data without power, suitable for advanced machine learning hardware.
Findings
Performs MAC in ~5 ns per operation
Consumes ~60 nJ per operation, scalable with matrix size
Requires only 2N^2 devices, fewer than traditional methods
Abstract
We propose and analyze a compact and non-volatile nanomagnetic (all-spin) non-binary matrix multiplier performing the multiply-and-accumulate (MAC) operation using two magnetic tunnel junctions - one activated by strain to act as the multiplier, and the other activated by spin-orbit torque pulses to act as a domain wall synapse that performs the operation of the accumulator. It has two advantages over the usual crossbar-based electronic non-binary matrix multiplier. First, while the crossbar architecture requires N3 devices to multiply two matrices, we require only 2N2 devices. Second, our matrix multiplier is non-volatile and retains the information about the product matrix after being powered off. Here, we present an example where each MAC operation can be performed in ~5 ns and the maximum energy dissipated per operation is ~60Nmax aJ, where Nmax is the largest matrix size. This…
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