Publication | Open Access
Tempo
24
Citations
51
References
2016
Year
Cluster ComputingEngineeringComputer ArchitectureDatabase ScalabilityData ScienceDatabase SupportData-intensive PlatformManagementData IntegrationData ManagementRm Configuration SettingsRms TodayComputer ScienceInformation ManagementDatabase TuningDatabase TechnologyCloud ComputingResource ManagerSystem Software
Multi-tenant database systems have a component called the Resource Manager, or RM that is responsible for allocating resources to tenants. RMs today do not provide direct support for performance objectives such as: "Average job response time of tenant A must be less than two minutes", or "No more than 5% of tenant B's jobs can miss the deadline of 1 hour." Thus, DBAs have to tinker with the RM's low-level configuration settings to meet such objectives. We propose a framework called Tempo that brings simplicity , self-tuning , and robustness to existing RMs. Tempo provides a simple interface for DBAs to specify performance objectives declaratively, and optimizes the RM configuration settings to meet these objectives. Tempo has a solid theoretical foundation which gives key robustness guarantees. We report experiments done on Tempo using production traces of data-processing workloads from companies such as Facebook and Cloudera. These experiments demonstrate significant improvements in meeting desired performance objectives over RM configuration settings specified by human experts.
| Year | Citations | |
|---|---|---|
Page 1
Page 1