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Parallel Compression of Correlated Files

机译:并行压缩相关文件

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Economy-based admission control of jobs in a grid, or migration of guest jobs from a disconnecting cluster in a grid, as well as checkpointing parallel jobs in a cluster to a central repository are demanding tasks that can exhaust essential resources such as the communication networks, due to the requirement to quickly move large amounts of data from many nodes. Compressing memory images might make these operations more efficient provided that the overall throughput is increased. Existing serial compression algorithms are not suitable for such purposes because they do not exploit interfile redundancy. This paper presents decentralized algorithms for parallel compression of correlated memory images of a job in a cluster or in a grid. The algorithms use block suppression to eliminate inter-file redundancy. They take advantage of the multiple processor environment to simultaneously map memory blocks to hash values in order to detect redundancies. It is shown that exploiting interfile redundancy of correlated files can increase the overall transfer throughput of parallel jobs. It is also shown that combining serial compression with our algorithms further increases this throughput. The paper presents the algorithms and their performance.
机译:基于网格中的作业的经济性录取,或者从网格中的断开群集的访客jobs迁移,以及检查群集中的并行作业到中央存储库是要求耗尽诸如通信网络等基本资源的任务,由于要求快速移动许多节点的大量数据。压缩存储器图像可能会使这些操作更有效,因为整个吞吐量增加了。现有的串行压缩算法不适合此目的,因为它们不会利用interfile冗余。本文呈现了分散的算法,用于在群集中或网格中的作业中的相关存储器图像的并行压缩算法。算法使用块抑制来消除文件间冗余。它们利用多个处理器环境来同时将内存块映射到哈希值以检测冗余。结果表明,利用相关文件的冗余可以提高并行作业的整体传输吞吐量。还表明,将串行压缩与我们的算法相结合,进一步增加了这种吞吐量。本文提出了算法及其性能。

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