DeepPerf: Performance Prediction for Configurable Software with Deep Sparse Neural Network

Huong Ha, Hongyu Zhang
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引用次数: 68

Abstract

Many software systems provide users with a set of configuration options and different configurations may lead to different runtime performance of the system. As the combination of configurations could be exponential, it is difficult to exhaustively deploy and measure system performance under all possible configurations. Recently, several learning methods have been proposed to build a performance prediction model based on performance data collected from a small sample of configurations, and then use the model to predict system performance under a new configuration. In this paper, we propose a novel approach to model highly configurable software system using a deep feedforward neural network (FNN) combined with a sparsity regularization technique, e.g. the L1 regularization. Besides, we also design a practical search strategy for automatically tuning the network hyperparameters efficiently. Our method, called DeepPerf, can predict performance values of highly configurable software systems with binary and/or numeric configuration options at much higher prediction accuracy with less training data than the state-of-the art approaches. Experimental results on eleven public real-world datasets confirm the effectiveness of our approach.
基于深度稀疏神经网络的可配置软件性能预测
许多软件系统为用户提供了一组配置选项,不同的配置可能导致系统的不同运行时性能。由于配置组合可能呈指数级增长,因此很难在所有可能的配置下详尽地部署和测量系统性能。近年来,人们提出了几种学习方法,基于从小样本配置中收集的性能数据建立性能预测模型,然后使用该模型预测新配置下的系统性能。在本文中,我们提出了一种利用深度前馈神经网络(FNN)结合稀疏正则化技术(如L1正则化)来建模高度可配置软件系统的新方法。此外,我们还设计了一种实用的搜索策略,可以有效地自动调整网络超参数。我们的方法,称为DeepPerf,可以预测具有二进制和/或数字配置选项的高度可配置软件系统的性能值,与最先进的方法相比,使用更少的训练数据,预测精度更高。在11个公开的真实数据集上的实验结果证实了我们方法的有效性。
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