IaaS云中的语义感知虚拟机映像管理

Nishant Saurabh, Julian Remmers, Dragi Kimovski, R. Prodan, Jorge G. Barbosa
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引用次数: 4

摘要

基础设施即服务(IaaS)云同时容纳不同的用户请求集,需要一种有效的策略来大规模存储和检索虚拟机映像(vmi)。VMI存储管理需要处理多个VMI,通常以千兆字节为单位,这导致了VMI扩展问题,阻碍了弹性资源管理和供应。然而,促进VMI管理的现有技术忽略了VMI语义(即在基本映像和软件包级别),要么识别和提取可重用功能的可能性有限,要么VMI发布和检索开销较高。在本文中,我们设计、实现和评估了Expelliarmus,这是一个新的VMI管理系统,有助于最大限度地减少存储、发布和检索开销。为了实现这一目标,除你武器结合了三个互补的特点。首先,利用语义图建模的vmi来加快多个vmi之间的相似度计算;其次,Expelliarmus提供语义感知的VMI分解和基础图像选择,提取和存储非冗余的基础图像和软件包。第三,Expelliarmus还可以根据用户要求,根据所需软件包组装VMIs。我们在真实的测试平台上通过一组具有代表性的合成云vmi来评估Expelliarmus。实验结果表明,与最先进的系统(例如IBM的Mirage和Hemera)相比,我们以语义为中心的方法能够优化存储库大小2.2-16倍,并显著提高VMI发布和检索性能。
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Semantics-Aware Virtual Machine Image Management in IaaS Clouds
Infrastructure-as-a-service (IaaS) Clouds concurrently accommodate diverse sets of user requests, requiring an efficient strategy for storing and retrieving virtual machine images (VMIs) at a large scale. The VMI storage management require dealing with multiple VMIs, typically in the magnitude of gigabytes, which entails VMI sprawl issues hindering the elastic resource management and provisioning. Nevertheless, existing techniques to facilitate VMI management overlook VMI semantics (i.e at the level of base image and software packages) with either restricted possibility to identify and extract reusable functionalities or with higher VMI publish and retrieval overheads. In this paper, we design, implement and evaluate Expelliarmus, a novel VMI management system that helps to minimize storage, publish and retrieval overheads. To achieve this goal, Expelliarmus incorporates three complementary features. First, it makes use of VMIs modelled as semantic graphs to expedite the similarity computation between multiple VMIs. Second, Expelliarmus provides a semantic aware VMI decomposition and base image selection to extract and store non-redundant base image and software packages. Third, Expelliarmus can also assemble VMIs based on the required software packages upon user request. We evaluate Expelliarmus through a representative set of synthetic Cloud VMIs on the real test-bed. Experimental results show that our semantic-centric approach is able to optimize repository size by 2.2-16 times compared to state-of-the-art systems (e.g. IBM's Mirage and Hemera) with significant VMI publish and retrieval performance improvement.
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