优化嵌入式机器学习的资源管理

Lei Xun, Long Tran-Thanh, B. Al-Hashimi, G. Merrett
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引用次数: 8

摘要

由于在延迟、隐私和连接性方面的明显优势,机器学习推理越来越多地在移动和嵌入式平台上本地执行。在本文中,我们提出了异构多核系统中在线资源管理的方法,并展示了如何将它们应用于优化机器学习工作负载的性能。性能可以使用平台相关(例如速度、能量)和平台无关(准确性、置信度)指标来定义。特别是,我们展示了深度神经网络(DNN)如何动态扩展以权衡这些不同的性能指标。在不同的平台上执行时实现一致的性能是必要的,但也具有挑战性,因为所提供的资源和它们的能力不同,并且在与其他工作负载一起执行时,它们的可用性随时间变化。管理可用硬件资源(通常数量众多且性质各异)、软件需求和用户体验之间的接口变得越来越复杂。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimising Resource Management for Embedded Machine Learning
Machine learning inference is increasingly being executed locally on mobile and embedded platforms, due to the clear advantages in latency, privacy and connectivity. In this paper, we present approaches for online resource management in heterogeneous multi-core systems and show how they can be applied to optimise the performance of machine learning work-loads. Performance can be defined using platform-dependent (e.g. speed, energy) and platform-independent (accuracy, confidence) metrics. In particular, we show how a Deep Neural Network (DNN) can be dynamically scalable to trade-off these various performance metrics. Achieving consistent performance when executing on different platforms is necessary yet challenging, due to the different resources provided and their capability, and their time-varying availability when executing alongside other workloads. Managing the interface between available hardware resources (often numerous and heterogeneous in nature), software requirements, and user experience is increasingly complex.
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