Tenant placement in over-subscribed database-as-a-service clusters

Author:

König Arnd Christian1,Shan Yi1,Ziegler Tobias2,Kakaraparthy Aarati3,Lang Willis1,Moeller Justin1,Kalhan Ajay1,Narasayya Vivek1

Affiliation:

1. Microsoft Corporation

2. TU Darmstadt

3. University of Wisconsin-Madison

Abstract

Relational cloud Database-as-a-Service offerings run on multi-tenant infrastructure consisting of clusters of nodes, with each node hosting multiple tenant databases. Such clusters may be over-subscribed to increase resource utilization and improve operational efficiency. When resources are over-subscribed, it is possible that anode has insufficient resources to satisfy the resource demands of all databases on it, making it necessary to move databases to other nodes. Such moves can significantly impact database performance and availability. Therefore, it is important to reduce the likelihood of such resource shortages through judicious placement of databases in the cluster. We propose a novel tenant placement approach that leverages historical traces of tenant resource demands to estimate the probability of resource shortages and leverages these estimates in placement. We have prototyped our techniques in the Service Fabric cluster manager. Experiments using production resource traces from Azure SQL DB and an evaluation on a real cluster deployment show significant improvements over the state-of-the-art.

Publisher

Association for Computing Machinery (ACM)

Subject

General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development

Reference39 articles.

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2. Microsoft Azure. 2021. Service Fabric Cluster Resource Manager. https://docs.microsoft.com/en-us/azure/service-fabric/service-fabric-cluster-resource-manager-cluster-description. Last accessed: 2022-07-13. Microsoft Azure. 2021. Service Fabric Cluster Resource Manager. https://docs.microsoft.com/en-us/azure/service-fabric/service-fabric-cluster-resource-manager-cluster-description. Last accessed: 2022-07-13.

3. Microsoft Azure. 2022. Create a Service Fabric Cluster. https://docs.microsoft.com/en-us/azure/service-fabric/scripts/service-fabric-powershell-create-secure-cluster-cert. Accessed: 2022-07-13. Microsoft Azure. 2022. Create a Service Fabric Cluster. https://docs.microsoft.com/en-us/azure/service-fabric/scripts/service-fabric-powershell-create-secure-cluster-cert. Accessed: 2022-07-13.

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