流应用性能优化的逐步自动分析方法

Xunyun Liu, A. V. Dastjerdi, R. Calheiros, Chenhao Qu, R. Buyya
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引用次数: 23

摘要

数据流管理系统(DSMSs)是可扩展、高可用性和容错的系统,可以聚合和分析运动中的实时数据。为了在流中持续执行动态分析,最先进的dsss将流应用程序作为一组相互连接的操作符托管,每个操作符封装特定操作的语义。为了在特定平台上并行执行,需要在多个实例中适当地复制这些操作符,这些实例可以同时拆分和处理工作负载。由于操作符的划分方式会影响流应用程序的最终性能,因此dsm必须有一种方法来比较不同的操作符并做出整体复制决策,以避免性能瓶颈和资源浪费。为此,我们提出了一种逐步分析方法来优化给定执行平台上的应用程序性能。它根据应用程序特性和所配置资源的处理能力自动扩展流上的分布式计算,并构建所配置资源和应用程序性能指标之间的关系,以评估结果配置的效率。实验结果证实,该方法以最小的分析开销成功地实现了其目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Stepwise Auto-Profiling Method for Performance Optimization of Streaming Applications
Data stream management systems (DSMSs) are scalable, highly available, and fault-tolerant systems that aggregate and analyze real-time data in motion. To continuously perform analytics on the fly within the stream, state-of-the-art DSMSs host streaming applications as a set of interconnected operators, with each operator encapsulating the semantic of a specific operation. For parallel execution on a particular platform, these operators need to be appropriately replicated in multiple instances that split and process the workload simultaneously. Because the way operators are partitioned affects the resulting performance of streaming applications, it is essential for DSMSs to have a method to compare different operators and make holistic replication decisions to avoid performance bottlenecks and resource wastage. To this end, we propose a stepwise profiling approach to optimize application performance on a given execution platform. It automatically scales distributed computations over streams based on application features and processing power of provisioned resources and builds the relationship between provisioned resources and application performance metrics to evaluate the efficiency of the resulting configuration. Experimental results confirm that the proposed approach successfully fulfills its goals with minimal profiling overhead.
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