正在进行的工作:使机器学习实时可预测

Hang Xu, F. Mueller
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引用次数: 4

摘要

边缘计算设备上的机器学习(ML)作为使控制系统更加智能和自主的一种手段,在行业中越来越流行。新的趋势是利用嵌入式边缘设备,因为它们拥有比以前更高的计算能力和更大的内存,来执行以前仅限于云托管部署的机器学习任务。在这项工作中,我们通过比较传统云服务和基于边缘的云服务来评估实时可预测性,并考虑数据隐私问题,以完成某些数据分析任务。我们通过调查机器学习问题是否会为一组广泛使用的机器学习库提供实时可预测的服务,来确定适合边缘设备的机器学习问题子集。我们特别增强了Caffe库,使其更适合实时可预测性。然后,我们在嵌入式系统上部署具有高精度分数的机器学习模型,将其暴露于来自现场的工业传感器数据,以证明其对实时处理的有效性和适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Work-in-Progress: Making Machine Learning Real-Time Predictable
Machine learning (ML) on edge computing devices is becoming popular in the industry as a means to make control systems more intelligent and autonomous. The new trend is to utilize embedded edge devices, as they boast higher computational power and larger memories than before, to perform ML tasks that had previously been limited to cloud-hosted deployments. In this work, we assess the real-time predictability and consider data privacy concerns by comparing traditional cloud services with edge-based ones for certain data analytics tasks. We identify the subset of ML problems appropriate for edge devices by investigating if they result in real-time predictable services for a set of widely used ML libraries. We specifically enhance the Caffe library to make it more suitable for real-time predictability. We then deploy ML models with high accuracy scores on an embedded system, exposing it to industry sensor data from the field, to demonstrates its efficacy and suitability for real-time processing.
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