Toward building highly available and scalable OpenStack clouds


OpenStack® (the leading open supply platform for public and private infrastructure-as-a-service clouds) consists of a set of loosely coupled and rapidly evolving comes that support a good set of technologies and configuration choices. Deciding how to mix and configure such projects is the determining issue on the general quality of the cloud, in terms of performance, scalability, and availability. During this paper, we present a methodical framework and empirical analysis to help both cloud suppliers and users optimize their style and deployment selections. Cloud suppliers will depend upon this framework to pick out an acceptable configuration of their cloud for a given service-level agreement. Users developing and running applications on a cloud will better work virtual resources to their workloads. We demonstrate the ability of this framework using many eventualities collected by our CloudBench® tool using application benchmarks running on actual clouds.

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