Characterising the Role of Pre-Processing Parameters in Audio-based Embedded Machine Learning

Wiebke Toussaint, Akhil Mathur, A. Ding, F. Kawsar
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引用次数: 6

Abstract

When deploying machine learning (ML) models on embedded and IoT devices, performance encompasses more than an accuracy metric: inference latency, energy consumption, and model fairness are necessary to ensure reliable performance under heterogeneous and resource-constrained operating conditions. To this end, prior research has studied model-centric approaches, such as tuning the hyperparameters of the model during training and later applying model compression techniques to tailor the model to the resource needs of an embedded device. In this paper, we take a data-centric view of embedded ML and study the role that pre-processing parameters in the data pipeline can play in balancing the various performance metrics of an embedded ML system. Through an in-depth case study with audio-based keyword spotting (KWS) models, we show that pre-processing parameter tuning is a remarkable tool that model developers can adopt to trade-off between a model's accuracy, fairness, and system efficiency, as well as to make an embedded ML model resilient to unseen deployment conditions.
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表征预处理参数在基于音频的嵌入式机器学习中的作用
在嵌入式和物联网设备上部署机器学习(ML)模型时,性能不仅仅包括精度指标:推断延迟、能耗和模型公平性是确保在异构和资源受限的操作条件下可靠性能所必需的。为此,先前的研究已经研究了以模型为中心的方法,例如在训练期间调整模型的超参数,然后应用模型压缩技术来定制模型以满足嵌入式设备的资源需求。在本文中,我们采用了以数据为中心的嵌入式机器学习观点,并研究了数据管道中的预处理参数在平衡嵌入式机器学习系统的各种性能指标方面所起的作用。通过对基于音频的关键字识别(KWS)模型的深入案例研究,我们表明预处理参数调优是模型开发人员可以采用的一种出色的工具,可以在模型的准确性、公平性和系统效率之间进行权衡,并使嵌入式ML模型能够适应未知的部署条件。
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