Scalable almost-linear dynamical Ising machines

Aditya Shukla, Mikhail Erementchouk,Pinaki Mazumder

Natural Computing(2024)

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摘要
The past decade has seen the emergence of Ising machines targeting hard combinatorial optimization problems by minimizing the Ising Hamiltonian with spins represented by continuous dynamical variables. However, capabilities of these machines at larger scales are yet to be fully explored. We introduce and investigate an almost-linear Ising machine, a machine based on a network of analog spins with piece-wise linear coupling. We show that such networks leverage the computational resource similar to that of the semidefinite positive relaxation of the Ising model. We estimate the expected performance of the almost-linear machine and benchmark it on a set of { 0, 1} -weighted graphs. We show that the running time of the investigated machine scales polynomially (linearly with the number of edges in the connectivity graph). As an example of the physical realization of the machine, we present a CMOS-compatible implementation comprising an array of vertices efficiently storing the continuous spins on charged capacitors and communicating externally via analog current.
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关键词
Analog spins,Combinatorial optimization,Dynamical computations,Ising machines,Mixed-signal computing
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