MLPP: Exploring Transfer Learning and Model Distillation for Predicting Application Performance

J. Gunasekaran, Cyan Subhra Mishra
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Abstract

Performance prediction for applications is quintessential towards detecting malicious hardware and software vulnerabilities. Typically application performance is predicted using the profiling data generated from hardware tools such as linux perf. By leveraging the data, prediction models, both machine learning (ML) based and non ML-based have been proposed. However a majority of these models suffer from either loss in prediction accuracy, very large model sizes, and/or lack of general applicability to different hardware types such as wearables, handhelds, desktops etc. To address the aforementioned inefficiencies, in this paper we proposed MLPP, a machine learning based performance prediction model which can accurately predict application performance, and at the same time be easily transferable to a wide both mobile and desktop hardware platforms by leveraging transfer learning technique. Furthermore, MLPP incorporates model distillation techniques to significantly reduce the model size. Through our extensive experimentation and evaluation we show that MLPP can achieve up to 92.5% prediction accuracy while reducing the model size by up to 3.5 ×.
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MLPP:应用程序性能预测的迁移学习和模型蒸馏探索
应用程序的性能预测是检测恶意硬件和软件漏洞的关键。通常使用硬件工具(如linux perf)生成的分析数据来预测应用程序性能。通过利用这些数据,提出了基于机器学习和非机器学习的预测模型。然而,这些模型中的大多数要么在预测精度上存在损失,要么模型尺寸非常大,要么缺乏对不同硬件类型(如可穿戴设备、手持设备、台式电脑等)的普遍适用性。为了解决上述低效率问题,本文提出了基于机器学习的性能预测模型MLPP,该模型可以准确预测应用程序的性能,同时利用迁移学习技术可以很容易地转移到广泛的移动和桌面硬件平台。此外,MLPP结合了模型蒸馏技术,显著减小了模型尺寸。通过我们广泛的实验和评估,我们表明MLPP可以达到高达92.5%的预测精度,同时将模型大小减少高达3.5倍。
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