首页> 外文会议>2018 55th ACM/ESDA/IEEE Design Automation Conference >PULP-HD: Accelerating Brain-Inspired High-Dimensional Computing on a Parallel Ultra-Low Power Platform
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PULP-HD: Accelerating Brain-Inspired High-Dimensional Computing on a Parallel Ultra-Low Power Platform

机译:PULP-HD:在并行超低功耗平台上加速大脑启发性的高维计算

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Computing with high-dimensional (HD) vectors, also referred to as hypervectors, is a brain-inspired alternative to computing with scalars. Key properties of HD computing include a well-defined set of arithmetic operations on hypervectors, generality, scalability, robustness, fast learning, and ubiquitous parallel operations. HD computing is about manipulating and comparing large patterns-binary hypervectors with 10,000 dimensions-making its efficient realization on minimalistic ultra-low-power platforms challenging. This paper describes HD computing's acceleration and its optimization of memory accesses and operations on a silicon prototype of the PULPv3 4-core platform (1.5 mmn2n, 2 mW), surpassing the state-of-the-art classification accuracy (on average 92.4%) with simultaneous 3.7× end-to-end speed-up and 2× energy saving compared to its single-core execution. We further explore the scalability of our accelerator by increasing the number of inputs and classification window on a new generation of the PULP architecture featuring bit-manipulation instruction extensions and larger number of 8 cores. These together enable a near ideal speed-up of 18.4× compared to the single-core PULPv3.
机译:使用高维(HD)向量(也称为超向量)进行计算,是从大脑启发到使用标量进行计算的替代方法。 HD计算的关键特性包括一组针对超向量的定义明确的算术运算,通用性,可伸缩性,鲁棒性,快速学习和无处不在的并行运算。高清计算是关于操纵和比较具有10,000个维的大型模式-二进制超向量-使其在极具挑战性的简约超低功耗平台上高效实现。本文介绍了HD计算的加速及其在PULPv3 4核平台的硅原型(1.5 mmn 2 n,2 mW),超过了最新的分类准确度(平均92.4%),与单核执行相比,可同时实现3.7倍的端到端加速和2倍的节能。我们通过增加具有位操作指令扩展和更多8个核的PULP架构的新一代输入和分类窗口的数量来进一步探索加速器的可扩展性。与单核PULPv3相比,这些共同实现了近18.4倍的理想加速。

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