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Efficient and Adaptive Stateful Replication for Stream Processing Engines in High-Availability Cluster

机译:高可用性集群中流处理引擎的高效,自适应状态复制

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摘要

Stateful stream process engines in high availability clusters (HACs) track a large number of concurrent flow states and replicate them to backups to provide reliable functionality. Under high traffic loads, existing solutions in such HACs are expensive owing to precise stateful replication. This work presents two novel methods to address this issue: randomization on replication representation and a replication scheme designed for when system becomes overloaded. A hashing structure called Multilevel Counting Bloom Filter (MLCBF) is proposed as a low resource-consuming solution of stateful replication. Its performance and tradeoffs are then evaluated based on theoretic analysis and extensive trace-based tests. Trace-based simulation reveals that MLCBF reduces network and memory requirements of replication typically by over 90 percent for URL categorization. Most importantly, MLCBF is quite as simple and practical for implementation and maintenance. Moreover, an adaptive scheme called dynamic lazy insertion is designed to prevent replication from overloading system continuously and optimize the throughput of HAC. Testbed evaluation demonstrates its feasibility and effectiveness in an overloaded HAC.
机译:高可用性群集(HAC)中的有状态流处理引擎会跟踪大量并发流状态,并将它们复制到备份中以提供可靠的功能。在高流量负载下,由于精确的状态复制,此类HAC中的现有解决方案非常昂贵。这项工作提出了两种新颖的方法来解决此问题:复制表示形式的随机化和为系统过载而设计的复制方案。提出了一种称为多级计数布隆过滤器(MLCBF)的哈希结构,作为状态复制的一种低资源消耗解决方案。然后基于理论分析和大量基于跟踪的测试来评估其性能和折衷。基于跟踪的仿真显示,对于URL分类,MLCBF通常将复制的网络和内存需求降低90%以上。最重要的是,MLCBF对于实施和维护非常简单实用。此外,设计了一种称为动态惰性插入的自适应方案,以防止复制连续导致系统超载并优化HAC的吞吐量。测试平台评估证明了其在超负荷HAC中的可行性和有效性。

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