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Moving big data to the cloud

机译:将大数据迁移到云

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Cloud computing, rapidly emerging as a new computation paradigm, provides agile and scalable resource access in a utility-like fashion, especially for the processing of big data. An important open issue here is how to efficiently move the data, from different geographical locations over time, into a cloud for effective processing. The de facto approach of hard drive shipping is not flexible, nor secure. This work studies timely, cost-minimizing upload of massive, dynamically-generated, geo-dispersed data into the cloud, for processing using a MapReduce-like framework. Targeting at a cloud encompassing disparate data centers, we model a cost-minimizing data migration problem, and propose two online algorithms, for optimizing at any given time the choice of the data center for data aggregation and processing, as well as the routes for transmitting data there. The first is an online lazy migration (OLM) algorithm achieving a competitive ratio of as low as 2.55, under typical system settings. The second is a randomized fixed horizon control (RFHC) algorithm achieving a competitive ratio of 1+ 1/l+1 κ/λ with a lookahead window of l, where κ and λ are system parameters of similar magnitude.
机译:云计算作为一种新的计算范例正在迅速兴起,它以一种类似于实用程序的方式提供了敏捷和可扩展的资源访问,特别是对于大数据的处理。这里一个重要的开放问题是如何有效地将数据随时间从不同地理位置移到云中以进行有效处理。硬盘运输的实际方法既不灵活也不安全。这项工作研究了及时,以最小的成本将大量动态生成的,地理分散的数据上传到云中,以便使用类似MapReduce的框架进行处理。针对包含不同数据中心的云,我们对成本最小化的数据迁移问题进行了建模,并提出了两种在线算法,用于在任何给定时间优化数据中心用于数据聚合和处理以及传输路径的选择那里的数据。第一种是在线懒惰迁移(OLM)算法,在典型的系统设置下,其竞争比低至2.55。第二种是一种随机固定水平视野控制(RFHC)算法,其竞争比为1 + 1 / l + 1κ/λ,超前窗口为l,其中κ和λ是相似幅度的系统参数。

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