在容错分布式流处理系统中最小化延迟

Andrey Brito, C. Fetzer, P. Felber
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引用次数: 22

摘要

事件流处理(ESP)应用程序的目标是实时处理大量数据。事件遍历流处理操作符的图,从中提取感兴趣的信息。随着这些应用程序的普及,对可伸缩性、可用性和可靠性的需求也在增加。就可靠性和可用性而言,许多应用程序需要精确的恢复,即保证在恢复期间和之后的输出与触发恢复的故障从未发生过一样。现有的精确恢复解决方案要么需要连续的检查点或日志记录(在被动复制方法中),要么需要执行相同操作的副本之间的完美同步(在主动复制方法中),从而导致了过高的延迟成本。与传统方法相比,我们引入了一种新技术,可以保证ESP应用的精确恢复,同时最大限度地降低延迟成本。该技术通过在分布式系统中推测执行来最小化延迟。在可伸缩性方面,我们的方法的关键组件是修改后的软件事务性内存,它不仅提供推测能力,而且为昂贵的操作提供乐观并行化。
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Minimizing Latency in Fault-Tolerant Distributed Stream Processing Systems
Event stream processing (ESP) applications target the real-time processing of huge amounts of data. Events traverse a graph of stream processing operators where the information of interest is extracted. As these applications gain popularity, the requirements for scalability, availability, and dependability increase. In terms of dependability and availability, many applications require a precise recovery, i.e., a guarantee that the outputs during and after a recovery would be the same as if the failure that triggered recovery had never occurred. Existing solutions for precise recovery induce prohibitive latency costs, either by requiring continuous checkpoint or logging (in a passive replication approach) or perfect synchronization between replicas executing the same operations (in an active replication approach). We introduce a novel technique to guarantee precise recovery for ESP applications while minimizing the latency costs as compared to traditional approaches. The technique minimizes latencies via speculative execution in a distributed system. In terms of scalability, the key component of our approach is a modified software transactional memory that provides not only the speculation capabilities but also optimistic parallelization for costly operations.
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