EvoLP: Self-Evolving Latency Predictor for Model Compression in Real-Time Edge Systems

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Embedded Systems Letters Pub Date : 2023-10-02 DOI:10.1109/LES.2023.3321599
Shuo Huai;Hao Kong;Shiqing Li;Xiangzhong Luo;Ravi Subramaniam;Christian Makaya;Qian Lin;Weichen Liu
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Abstract

Edge devices are increasingly utilized for deploying deep learning applications on embedded systems. The real-time nature of many applications and the limited resources of edge devices necessitate latency-targeted neural network compression. However, measuring latency on real devices is challenging and expensive. Therefore, this letter presents a novel and efficient framework, named EvoLP, to accurately predict the inference latency of models on edge devices. This predictor can evolve to achieve higher latency prediction precision during the network compression process. Experimental results demonstrate that EvoLP outperforms previous state-of-the-art approaches by being evaluated on three edge devices and four model variants. Moreover, when incorporated into a model compression framework, it effectively guides the compression process for higher model accuracy while satisfying strict latency constraints. We open-source EvoLP at https://github.com/ntuliuteam/EvoLP .
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EvoLP:用于实时边缘系统模型压缩的自进化延迟预测器
在嵌入式系统上部署深度学习应用时,越来越多地使用边缘设备。许多应用具有实时性,而边缘设备的资源有限,因此有必要针对延迟进行神经网络压缩。然而,在真实设备上测量延迟具有挑战性且成本高昂。因此,这封信提出了一个名为 EvoLP 的新型高效框架,用于准确预测边缘设备上模型的推理延迟。这种预测器可以在网络压缩过程中不断发展,以实现更高的延迟预测精度。实验结果表明,通过在三种边缘设备和四种模型变体上进行评估,EvoLP 的性能优于以前的先进方法。此外,当将 EvoLP 纳入模型压缩框架时,它能有效地指导压缩过程,在满足严格的时延限制的同时提高模型精度。我们在 https://github.com/ntuliuteam/EvoLP 上开源了 EvoLP。
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来源期刊
IEEE Embedded Systems Letters
IEEE Embedded Systems Letters Engineering-Control and Systems Engineering
CiteScore
3.30
自引率
0.00%
发文量
65
期刊介绍: The IEEE Embedded Systems Letters (ESL), provides a forum for rapid dissemination of latest technical advances in embedded systems and related areas in embedded software. The emphasis is on models, methods, and tools that ensure secure, correct, efficient and robust design of embedded systems and their applications.
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