Alioth: A Machine Learning Based Interference-Aware Performance Monitor for Multi-Tenancy Applications in Public Cloud

Tianyao Shi, Yingxuan Yang, Yunlong Cheng, Xiaofeng Gao, Zhen Fang, Yongqiang Yang
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Abstract

Multi-tenancy in public clouds may lead to co-location interference on shared resources, which possibly results in performance degradation of cloud applications. Cloud providers want to know when such events happen and how serious the degradation is, to perform interference-aware migrations and alleviate the problem. However, virtual machines (VM) in Infrastructure-as-a-Service public clouds are black boxes to providers, where application-level performance information cannot be acquired. This makes performance monitoring intensely challenging as cloud providers can only rely on low-level metrics such as CPU usage and hardware counters.We propose a novel machine learning framework, Alioth, to monitor the performance degradation of cloud applications. To feed the data-hungry models, we first elaborate interference generators and conduct comprehensive co-location experiments on a testbed to build Alioth-dataset which reflects the complexity and dynamicity in real-world scenarios. Then we construct Alioth by (1) augmenting features via recovering low-level metrics under no interference using denoising auto-encoders, (2) devising a transfer learning model based on domain adaptation neural network to make models generalize on test cases unseen in offline training, and (3) developing a SHAP explainer to automate feature selection and enhance model interpretability. Experiments show that Alioth achieves an average mean absolute error of 5.29% offline and 10.8% when testing on applications unseen in the training stage, outperforming the baseline methods. Alioth is also robust in signaling quality-of-service violation under dynamicity. Finally, we demonstrate a possible application of Alioth’s interpretability, providing insights to benefit the decision-making of cloud operators. The dataset and code of Alioth have been released on GitHub.
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Alioth:基于机器学习的干扰感知性能监视器,用于公共云中的多租户应用
公共云中的多租户可能导致共享资源的共存干扰,从而可能导致云应用程序的性能下降。云提供商希望知道此类事件何时发生以及降级的严重程度,以便执行干扰感知迁移并缓解问题。然而,对于提供商来说,基础设施即服务公共云中的虚拟机(VM)是黑盒子,无法获取应用程序级别的性能信息。这使得性能监控极具挑战性,因为云提供商只能依赖CPU使用率和硬件计数器等低级指标。我们提出了一种新的机器学习框架Alioth来监控云应用程序的性能下降。为了满足数据饥渴的模型,我们首先精心设计了干扰发生器,并在测试平台上进行了全面的协同定位实验,以构建反映现实世界场景复杂性和动态性的alioth数据集。然后,我们通过(1)使用去噪自编码器在无干扰的情况下通过恢复低级指标来增强特征,(2)设计基于领域自适应神经网络的迁移学习模型,使模型在离线训练中看不到的测试用例上泛化,以及(3)开发SHAP解释器来自动选择特征并增强模型的可解释性来构建Alioth。实验表明,Alioth在离线状态下的平均绝对误差为5.29%,在训练阶段未见过的应用程序测试时的平均绝对误差为10.8%,优于基线方法。在动态条件下,Alioth在服务质量违规信号处理方面也具有鲁棒性。最后,我们展示了Alioth的可解释性的可能应用,为云运营商的决策提供了有益的见解。Alioth的数据集和代码已经在GitHub上发布。
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