描述数据库工作负载的资源敏感性

Rathijit Sen, Karthik Ramachandra
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引用次数: 14

摘要

实际数据库工作负载的性能在很大程度上受到可用于运行工作负载的资源的影响。因此,了解资源分配变化对工作负载的性能影响是实现可预测性能的关键。在这项工作中,我们对运行在Linux上的Microsoft SQL Server上的几个数据库工作负载对诸如内核、缓存、主存和非易失性存储等资源的敏感性进行了深入研究。我们考虑事务性、分析性和混合性工作负载,对现实世界的系统进行建模,并使用推荐的配置,如存储布局和不同规模因素的索引组织。我们的研究列出了资源敏感性的广泛范围,并得出了一些对计算机架构师、云DBaaS(数据库即服务)提供商、数据库研究人员和从业者非常有价值的发现和见解。例如,我们的结果表明,在超过临界缓存大小的情况下,更多的内核比更多的缓存提高吞吐量更多;根据工作负载的计算与I/O活动的不同,超线程在某些情况下可能是有害的。我们讨论了广泛的实验结果,并基于对查询计划和各种查询执行统计数据的综合分析提出了见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterizing Resource Sensitivity of Database Workloads
The performance of real world database workloads is heavily influenced by the resources available to run the workload. Therefore, understanding the performance impact of changes in resource allocations on a workload is key to achieving predictable performance. In this work, we perform an in-depth study of the sensitivity of several database workloads, running on Microsoft SQL Server on Linux, to resources such as cores, caches, main memory, and non-volatile storage. We consider transactional, analytical, and hybrid workloads that model real-world systems, and use recommended configurations such as storage layouts and index organizations at different scale factors. Our study lays out the wide spectrum of resource sensitivities, and leads to several findings and insights that are highly valuable to computer architects, cloud DBaaS (Database-as-a-Service) providers, database researchers, and practitioners. For instance, our results indicate that throughput improves more with more cores than with more cache beyond a critical cache size; depending upon the compute vs. I/O activity of a workload, hyper-threading may be detrimental in some cases. We discuss our extensive experimental results and present insights based on a comprehensive analysis of query plans and various query execution statistics.
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