容器镜像配置及其对启动时间影响的实证研究

Martin Straesser, A. Bauer, Robert Leppich, N. Herbst, K. Chard, I. Foster, Samuel Kounev
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引用次数: 1

摘要

应用程序容器的一个核心卖点是,与虚拟机等其他虚拟化方法相比,它们的启动时间更快。可预测和快速的容器启动时间对于改进和保证容器化云、无服务器和边缘应用程序的性能至关重要。虽然以前的工作已经研究了容器启动,但仍然缺乏对不同容器配置的启动时间如何变化的理解。我们通过展示和分析大约200,000个开源Docker Hub映像的数据集来解决这个缺点,这些映像具有不同的映像配置(例如,映像大小和暴露的端口)。利用这个数据集,我们研究了两种环境中容器的启动时间,并确定了最具影响力的特征。我们的实验表明,在相同的环境中,容器启动时间可能在数百毫秒到数十秒之间变化。此外,我们得出结论,没有单一的主导配置特征决定容器的启动时间,必须同时考虑硬件和软件参数才能进行准确的评估。
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An Empirical Study of Container Image Configurations and Their Impact on Start Times
A core selling point of application containers is their fast start times compared to other virtualization approaches like virtual machines. Predictable and fast container start times are crucial for improving and guaranteeing the performance of containerized cloud, serverless, and edge applications. While previous work has investigated container starts, there remains a lack of understanding of how start times may vary across container configurations. We address this shortcoming by presenting and analyzing a dataset of approximately 200,000 open-source Docker Hub images featuring different image configurations (e.g., image size and exposed ports). Leveraging this dataset, we investigate the start times of containers in two environments and identify the most influential features. Our experiments show that container start times can vary between hundreds of milliseconds and tens of seconds in the same environment. Moreover, we conclude that no single dominant configuration feature determines a container's start time, and hardware and software parameters must be considered together for an accurate assessment.
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