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Predicting in-memory database performance for automating cluster management tasks

机译:预测内存数据库性能以自动执行集群管理任务

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In Software-as-a-Service, multiple tenants are typically consolidated into the same database instance to reduce costs. For analytics-as-a-service, in-memory column databases are especially suitable because they offer very short response times. This paper studies the automation of operational tasks in multi-tenant in-memory column database clusters. As a prerequisite, we develop a model for predicting whether the assignment of a particular tenant to a server in the cluster will lead to violations of response time goals. This model is then extended to capture drops in capacity incurred by migrating tenants between servers. We present an algorithm for moving tenants around the cluster to ensure that response time goals are met. In so doing, the number of servers in the cluster may be dynamically increased or decreased. The model is also extended to manage multiple copies of a tenant's data for scalability and availability. We validated the model with an implementation of a multi-tenant clustering framework for SAP's in-memory column database TREX.
机译:在“软件即服务”中,通常将多个租户合并到同一数据库实例中以降低成本。对于分析即服务,内存列数据库特别适合,因为它们提供了非常短的响应时间。本文研究了多租户内存列数据库集群中操作任务的自动化。作为前提,我们开发了一个模型,用于预测将特定租户分配给群集中的服务器是否会导致违反响应时间目标。然后扩展该模型以捕获由于在服务器之间迁移租户而导致的容量下降。我们提出了一种在集群中移动租户的算法,以确保满足响应时间目标。这样,可以动态增加或减少集群中服务器的数量。该模型还扩展为管理租户数据的多个副本,以实现可伸缩性和可用性。我们通过针对SAP内存列数据库TREX的多租户群集框架的实现验证了该模型。

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