In-Memory Annealing Unit (IMAU): Energy-Efficient (2000 TOPS/W) Combinatorial Optimizer for Solving Travelling Salesman Problem

2021 IEEE International Electron Devices Meeting (IEDM)(2021)

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摘要
An in-memory annealing unit (IMAU) as an energy-efficient combinatorial optimizer for solving the travelling salesman problem (TSP) has been demonstrated for the first time. A hardware-algorithm co-optimization approach is adopted to overcome the challenges of solving TSP using IMAU, such as large problem size, insufficient weight precision, and inaccurate analog computing. The high-capacity (1152x1024) binary RRAM-based IMAU with an embedded simulated annealing (SA) function achieves an extremely high throughput of 90 TOPS and energy efficiency of 2000 TOPS/W. A new multi-step SA algorithm is proposed to solve the otherwise floating-point TSP using merely 5-level (2.3 bit) weights and achieves the floating point-equivalent shortest route for the 10-city TSP in IMAU.
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关键词
10-city TSP,embedded simulated annealing function,energy efficiency,energy-efficient combinatorial optimizer,floating point-equivalent shortest route,floating-point TSP,hardware-algorithm co-optimization approach,high-capacity binary RRAM-based IMAU,in-memory annealing unit,multistep SA algorithm,travelling salesman problem
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