Affiliation:
1. Friedrich-Alexander-Universität Erlangen-Nürnberg
2. Technische Universität München
Abstract
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.
Publisher
Association for Computing Machinery (ACM)
Subject
General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development
Reference36 articles.
1. Collin Bennett Robert L. Grossman David Locke Jonathan Seidman and Steve Vejcik. 2010. Malstone: towards a benchmark for analytics on large data clouds. In KDD. Collin Bennett Robert L. Grossman David Locke Jonathan Seidman and Steve Vejcik. 2010. Malstone: towards a benchmark for analytics on large data clouds. In KDD.
2. Carsten Binnig Donald Kossmann Tim Kraska and Simon Loesing. 2009. How is the weather tomorrow?: towards a benchmark for the cloud. In DBTest. Carsten Binnig Donald Kossmann Tim Kraska and Simon Loesing. 2009. How is the weather tomorrow?: towards a benchmark for the cloud. In DBTest.
3. Peter A. Boncz Thomas Neumann and Orri Erling. 2013. TPC-H Analyzed: Hidden Messages and Lessons Learned from an Influential Benchmark. In TPCTC. 61--76. Peter A. Boncz Thomas Neumann and Orri Erling. 2013. TPC-H Analyzed: Hidden Messages and Lessons Learned from an Influential Benchmark. In TPCTC. 61--76.
4. Rajkumar Buyya , Chee Shin Yeo , Srikumar Venugopal, James Broberg, and Ivona Brandic. 2009 . Cloud computing and emerging IT platforms: Vision, hype, and reality for delivering computing as the 5th utility. Future Gener. Comput. Syst . (2009). Rajkumar Buyya, Chee Shin Yeo, Srikumar Venugopal, James Broberg, and Ivona Brandic. 2009. Cloud computing and emerging IT platforms: Vision, hype, and reality for delivering computing as the 5th utility. Future Gener. Comput. Syst. (2009).
5. Yanpei Chen , Archana Ganapathi , Rean Griffith , and Randy Katz . 2011 . The case for evaluating mapreduce performance using workload suites . In IEEE international symposium on modelling, analysis, and simulation of computer and telecommunication systems. Yanpei Chen, Archana Ganapathi, Rean Griffith, and Randy Katz. 2011. The case for evaluating mapreduce performance using workload suites. In IEEE international symposium on modelling, analysis, and simulation of computer and telecommunication systems.
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