Flame:异构移动处理器的自适应自动标记系统

Jie Liu, Jiawen Liu, Zhen Xie, Dong Li
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引用次数: 4

摘要

如何准确有效地标记移动设备上的数据对于在移动设备上训练机器学习模型的成功至关重要。在移动设备上自动标记数据是具有挑战性的,因为数据是增量生成的,并且在新数据中可能存在未知标签。此外,移动设备上丰富的硬件异质性为有效执行自动标记工作负载带来了挑战。在本文中,我们介绍了一个自动标记系统Flame,它可以用未知的标签标记动态生成的数据。Flame包含一个执行引擎,可以在异构移动处理器上有效地调度和执行自动标记工作负载。在两台移动设备上使用6个数据集对Flame进行评估,结果表明Flame的标注准确率分别比最先进的标注方法、迁移学习、半监督学习和增强方法高11.8%、16.1%、18.5%和25.2%。在三星S9和谷歌Pixel2上标记500个数据实例时,Flame的能耗分别为328.65mJ和414.84mJ。此外,在移动设备上运行Flame只会带来0.75 ms的额外帧延迟,这是用户无法察觉的。
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Flame: A Self-Adaptive Auto-Labeling System for Heterogeneous Mobile Processors
How to accurately and efficiently label data on a mobile device is critical for the success of training machine learning models on mobile devices. Auto-labeling data on mobile devices is challenging, because data is incrementally generated and there is a possibility of having unknown labels among new coming data. Furthermore, the rich hardware heterogeneity on mobile devices creates challenges on efficiently executing the auto-labeling workload. In this paper, we introduce Flame, an auto-labeling system that can label dynamically generated data with unknown labels. Flame includes an execution engine that efficiently schedules and executes auto-labeling workloads on heterogeneous mobile processors. Evaluating Flame with six datasets on two mobile devices, we demonstrate that the labeling accuracy of Flame is 11.8%, 16.1%, 18.5%, and 25.2% higher than a state-of-the-art labeling method, transfer learning, semi-supervised learning, and boosting methods respectively. Flame is also energy efficient, it consumes only 328.65mJ and 414.84mJ when labeling 500 data instances on Samsung S9 and Google Pixel2 respectively. Furthermore, running Flame on mobile devices only brings about 0.75 ms additional frame latency which is imperceivable by the users.
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