通过解决数独问题比较神经形态系统

Christoph Ostrau, Christian Klarhorst, Michael Thies, U. Rückert
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引用次数: 6

摘要

在神经形态计算领域,已经引入了几种用于脉冲神经网络的硬件加速器,但很少有研究真正比较不同的系统。这些比较研究揭示了将现有网络移植到特定系统以及预测其性能指标的困难。寻找一种适合所有目标平台的通用网络架构,同时产生良好的结果是一项重大挑战。在这篇文章中,我们展示了一个赢家通吃的启发网络结构可以用于在三种不同的硬件加速器上解决数独谜题。通过探索几种网络实现,我们测量了在一组100个不同的数独中解决的谜题的数量,以及解决的时间和精力。关于最后两个指标,我们的测量表明,将网络移植到模拟硬件系统是有益的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing Neuromorphic Systems by Solving Sudoku Problems
In the field of neuromorphic computing several hardware accelerators for spiking neural networks have been introduced, but few studies actually compare different systems. These comparative studies reveal difficulties in porting an existing network to a specific system and in predicting its performance indicators. Finding a common network architecture that is suited for all target platforms and at the same time yields decent results is a major challenge. In this contribution, we show that a winner-takes-all inspired network structure can be employed to solve Sudoku puzzles on three diverse hardware accelerators. By exploring several network implementations, we measured the number of solved puzzles in a set of 100 assorted Sudokus, as well as time and energy to solution. Concerning the last two indicators, our measurements indicate that it can be beneficial to port a network to an analogue hardware system.
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