Solving Boltzmann optimization problems with deep learning

Fiona Knoll, John Daly, Jess Meyer
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Abstract

Decades of exponential scaling in high-performance computing (HPC) efficiency is coming to an end. Transistor-based logic in complementary metal-oxide semiconductor (CMOS) technology is approaching physical limits beyond which further miniaturization will be impossible. Future HPC efficiency gains will necessarily rely on new technologies and paradigms of computing. The Ising model shows particular promise as a future framework for highly energy-efficient computation. Ising systems are able to operate at energies approaching thermodynamic limits for energy consumption of computation. Ising systems can function as both logic and memory. Thus, they have the potential to significantly reduce energy costs inherent to CMOS computing by eliminating costly data movement. The challenge in creating Ising-based hardware is in optimizing useful circuits that produce correct results on fundamentally nondeterministic hardware. The contribution of this paper is a novel machine learning approach, a combination of deep neural networks and random forests, for efficiently solving optimization problems that minimize sources of error in the Ising model. In addition, we provide a process to express a Boltzmann probability optimization problem as a supervised machine learning problem.

Abstract Image

用深度学习解决波尔兹曼优化问题
数十年来,高性能计算(HPC)效率的指数级增长即将结束。互补金属氧化物半导体(CMOS)技术中以晶体管为基础的逻辑正在接近物理极限,超过这一极限将无法进一步小型化。未来 HPC 效率的提高将必然依赖于新的计算技术和模式。作为未来的高能效计算框架,伊辛模型显示出特别的前景。伊辛系统能够在接近热力学能耗极限的能量下运行。伊辛系统既可作为逻辑系统,也可作为存储器。因此,通过消除昂贵的数据移动,它们有可能显著降低 CMOS 计算所固有的能源成本。创建基于 Ising 系统的硬件所面临的挑战在于如何优化有用的电路,使其在基本非确定性硬件上产生正确的结果。本文的贡献在于结合了深度神经网络和随机森林的新型机器学习方法,可高效解决优化问题,最大限度地减少伊辛模型中的误差源。此外,我们还提供了一种将玻尔兹曼概率优化问题表达为有监督机器学习问题的过程。
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