伊辛模型
可扩展性
计算机科学
旅行商问题
随机性
能源消耗
算法
数学
统计物理学
物理
工程类
统计
数据库
电气工程
作者
Jia Si,Shuhan Yang,Yunuo Cen,Jiaer Chen,Yinde Huang,Zhaoyang Yao,Dong-Jun Kim,Kang Cai,Jerald Yoo,Xuanyao Fong,Hyunsoo Yang
标识
DOI:10.1038/s41467-024-47818-z
摘要
Abstract The growth of artificial intelligence leads to a computational burden in solving non-deterministic polynomial-time (NP)-hard problems. The Ising computer, which aims to solve NP-hard problems faces challenges such as high power consumption and limited scalability. Here, we experimentally present an Ising annealing computer based on 80 superparamagnetic tunnel junctions (SMTJs) with all-to-all connections, which solves a 70-city traveling salesman problem (TSP, 4761-node Ising problem). By taking advantage of the intrinsic randomness of SMTJs, implementing global annealing scheme, and using efficient algorithm, our SMTJ-based Ising annealer outperforms other Ising schemes in terms of power consumption and energy efficiency. Additionally, our approach provides a promising way to solve complex problems with limited hardware resources. Moreover, we propose a cross-bar array architecture for scalable integration using conventional magnetic random-access memories. Our results demonstrate that the SMTJ-based Ising computer with high energy efficiency, speed, and scalability is a strong candidate for future unconventional computing schemes.
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