Instruction level energy model for the Adapteva Epiphany multi-core processor

Gabriel Ortiz, L. Svensson, Erik Alveflo, P. Larsson-Edefors
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引用次数: 2

Abstract

Processor energy models can be used by developers to estimate, without the need of hardware implementation or additional measurement setups, the power consumption of software applications. Furthermore, these energy models can be used for energy-aware compiler optimization. This paper presents a measurement-based instruction-level energy characterization for the Adapteva Epiphany processor, which is a 16-core shared-memory architecture connected by a 2D network-on-chip. Based on a number of microbenchmarks, the instruction-level characterization was used to build an energy model that includes essential Epiphany instructions such as remote memory loads and stores. To validate the model, an FFT application was developed. This validation showed that the energy estimated by the model is within 0.4% of the measured energy.
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Adapteva Epiphany多核处理器的指令级能量模型
开发人员可以使用处理器能量模型来估计软件应用程序的功耗,而不需要硬件实现或额外的测量设置。此外,这些能量模型可用于能量感知的编译器优化。本文介绍了Adapteva Epiphany处理器的基于测量的指令级能量表征,该处理器是一个16核共享内存架构,通过2D片上网络连接。基于许多微基准测试,使用指令级表征来构建能量模型,该模型包括基本的顿悟指令,如远程内存负载和存储。为了验证该模型,开发了一个FFT应用程序。验证表明,模型估算的能量与实测能量的误差在0.4%以内。
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