云分析基准

Alexander van Renen, Viktor Leis
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引用次数: 1

摘要

云促进了向面向服务的透视图的转换。这通常会影响云原生数据管理,尤其是数据分析。终端用户无需在本地管理多节点数据库集群,只需将查询发送到托管的云数据仓库并接收结果即可。虽然这显然对最终用户非常有吸引力,但数据库系统架构师仍然必须为这种新的服务模型设计系统。目前有许多相互竞争的架构,从自托管(Presto, PostgreSQL),过度管理(Snowflake, Amazon Redshift)到查询即服务(Amazon Athena, Google BigQuery)产品。对这些体系结构方法进行基准测试目前是困难的,甚至不清楚比较的指标应该是什么。为了克服这些挑战,我们首先分析了来自Snowflake的真实查询跟踪,并将其属性与TPC-H和TPC-DS进行了比较。这样,我们就可以识别传统基准测试与实际云数据仓库工作负载之间的重要区别。在此基础上,我们提出了云分析基准(CAB)。通过结合工作负载波动和多租户,CAB允许根据以用户为中心的指标(如成本和性能)评估不同的设计。
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Cloud Analytics Benchmark
The cloud facilitates the transition to a service-oriented perspective. This affects cloud-native data management in general, and data analytics in particular. Instead of managing a multi-node database cluster on-premise, end users simply send queries to a managed cloud data warehouse and receive results. While this is obviously very attractive for end users, database system architects still have to engineer systems for this new service model. There are currently many competing architectures ranging from self-hosted (Presto, PostgreSQL), over managed (Snowflake, Amazon Redshift) to query-as-a-service (Amazon Athena, Google BigQuery) offerings. Benchmarking these architectural approaches is currently difficult, and it is not even clear what the metrics for a comparison should be. To overcome these challenges, we first analyze a real-world query trace from Snowflake and compare its properties to that of TPC-H and TPC-DS. Doing so, we identify important differences that distinguish traditional benchmarks from real-world cloud data warehouse workloads. Based on this analysis, we propose the Cloud Analytics Benchmark (CAB). By incorporating workload fluctuations and multi-tenancy, CAB allows evaluating different designs in terms of user-centered metrics such as cost and performance.
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