Phase-Binarized Spintronic Oscillators for Combinatorial Optimization, and Comparison with Alternative Classical and Quantum Methods
Neha Garg, Sanyam Singhal, Nakul Aggarwal, Aniket Sadashiva, Pranaba, K. Muduli, Debanjan Bhowmik

TL;DR
This paper demonstrates that an array of spin Hall nano oscillators can implement phase-binarized oscillators for solving MaxCut problems, showing comparable or superior performance to classical and quantum algorithms, with potential advantages in solution time scalability.
Contribution
The paper introduces a spintronic oscillator-based implementation of PBOs for MaxCut, comparing its performance with classical and quantum methods, highlighting scalability and efficiency benefits.
Findings
Spintronic oscillators effectively solve MaxCut on small graphs.
PBOs show approximation ratios comparable to classical algorithms.
Solution time for PBOs does not increase with graph size in tested instances.
Abstract
Solving combinatorial optimization problems efficiently through emerging hardware by converting the problem to its equivalent Ising model and obtaining its ground state is known as Ising computing. Phase-binarized oscillators (PBO), modeled through the Kuramoto model, have been proposed for Ising computing, and various device technologies have been used to experimentally implement such PBOs. In this paper, we show that an array of four dipole-coupled uniform-mode spin Hall nano oscillators (SHNOs) can be used to implement such PBOs and solve the NP-Hard combinatorial problem MaxCut on 4-node complete weighted graphs. We model the spintronic oscillators through two techniques: an approximate model for coupled magnetization dynamics of spin oscillators, and Landau Lifshitz Gilbert Slonckzweski (LLGS) equation-based more accurate magnetization dynamics modeling of such oscillators. Next,…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Ferroelectric and Negative Capacitance Devices · Quantum Computing Algorithms and Architecture
