云和多云计算:当前挑战和未来应用

D. Ardagna
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引用次数: 26

摘要

计算系统正变得越来越虚拟。我们来自这样一个世界:应用程序完全是由组织为自己的使用而开发的,可能利用第三方开发的组件和/或平台,但主要是在组织自己的IT设施上部署和执行。在面向服务的系统中,我们进入了这样一个世界:软件应用程序可以将其部分功能委托给由外部组织运行的现有软件服务。云计算的最新进展正在进一步推动虚拟:用户可以访问第三方软件组件、硬件物理资源或完整的应用程序堆栈,这些应用程序支持基于云的应用程序的执行和自动管理,并且只需为他们使用的资源付费。云计算每天都在增长,提供了一个充满活力的技术环境,可以创建创新的解决方案和服务。云承诺为最终用户提供廉价和灵活的服务,并允许小型组织和个人自己托管和提供世界规模的服务。然而,尽管已经在该领域进行了大量的研究,但仍然存在开放的挑战。具体来说,云业务模型和技术引入了关键问题,如专有api和缺乏互操作性[1]。选择匹配并充分利用底层云环境特征的应用架构也很关键[2],[3]。在基础设施层,资源竞争导致不可预测的性能[4],并且仍然需要额外的资源管理[5],自动化VM和业务迁移[6]。此外,网络经常是云计算的瓶颈,数据中心的能源管理非常关键[7]。为了应对这些挑战,许多研究人员都提倡采用多云[8],因为在多云上部署软件克服了单个提供商的不可用性,并允许构建具有成本效益的sun应用程序。此外,云计算也正在成为主流的解决方案,以按使用付费的方式提供非常大的集群来支持大数据应用[9]。许多云提供商已经在他们的产品中包含了基于MapReduce的平台(即,支持大量非结构化信息处理的最常用框架之一),如Google MapReduce框架、Microsoft HDinsight和Amazon Elastic Compute cloud。IDC预计,到2020年,近40%的大数据分析将由公有云提供支持。为了支持这样的挑战,在modclouds.com (www.modclouds.com)中开发了模型驱动开发(MDD)方法。modcloud .eu)和DICE (DICE -h2020.eu)欧洲项目将被介绍。MDD允许将范式从以代码为中心转移到以模型为中心。因此,模型是开发过程的主要工件,通过关注云问题而不是实现细节,使开发人员能够在高层次的抽象上工作[10]。模型转换有助于自动化从抽象概念到实现的工作。此外,模型还可以用于推断应用程序的QoS属性[2],并支持设计时探索,以便在满足QoS约束的情况下确定成本最低的云部署配置[3]。最后,模型还可以在运行时保持活动状态以触发动态适应[10],[5],即使在工作负载波动、虚拟化系统性能下降或故障的情况下也能提供QoS保证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cloud and Multi-cloud Computing: Current Challenges and Future Applications
Computing systems are becoming increasingly virtual. We come from a world where applications were entirely developed by organizations for their own use, possibly exploiting components and/or platforms developed by third parties, but mainly deployed and executed on the organizations own IT facilities. With Service Oriented systems, we moved into a world in which a software application may delegate part of its functionality to already existing software services run by external organizations. Recent advances in Cloud computing are pushing virtuality even further: users can access third party software components, hardware physical resources or full application stacks that support execution and automatic management of Cloud based applications, and pay only for the resources they use. Cloud computing is growing daily, providing a vibrant technical environment where innovative solutions and services can be created. The Cloud promises the capability for cheap and flexible services for end-users and allows small organizations and individuals to host and offer world-scale services, themselves. However, while there has been substantial research in the field already, there still remain open challenges. Specifically, Cloud business models and technologies introduce critical issues, such as proprietary APIs and lack of interoperability [1]. The choice of the application architecture matching and fully exploiting the characteristics of the underlying Cloud environments is also critical [2], [3]. At the infrastructural layer, resource contentions lead to unpredictable performance [4] and additional work for resource management [5], automated VM and service migration [6] is still needed. Also networks are frequently the Cloud bottleneck and data center energy management is very critical [7]. To cope with such challenges the adoption of multi-Clouds [8], has been advocated by many researchers, since deploying software on multiple Clouds overcomes single provider unavailability and allows to build cost efficient follow the sun applications. Moreover, Cloud computing is also becoming a mainstream solution to provide very large clusters in a pay per use basis to support Big data applications [9]. Many cloud providers already include in their offering MapReduce based platforms (i.e., one of the most adopted framework to support large volume unstructured information processing) such as Google MapReduce framework, Microsoft HDinsight, and Amazon Elastic Compute Cloud. IDC estimates that by 2020, nearly 40% of Big Data analyses will be supported by public cloud. To support such challenges a Model-Driven Development (MDD) approach developed within the MODAClouds (www. modaclouds.eu) and DICE (dice-h2020.eu) European projects will be presented. MDD allows shifting the paradigm from code-centric to model-centric. Models are thus the main artefacts of the development process and enable developers to work at a high level of abstraction by focusing on Cloud concerns rather than implementation details [10]. Model transformations help automating the work of going from abstract concepts to implementation. Moreover, models can also be used to reason about the QoS properties of an application [2] and to support design-time exploration in order to identify the Cloud deployment configuration of minimum cost, while satisfying QoS constraints [3]. Finally, models can be kept alive also at runtime to trigger dynamic adaptation [10], [5], providing QoS guarantees even under workload fluctuations, virtualized systems performance degradations, or failures.
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