MeT: NoSQL的工作负载感知弹性

F. Cruz, Francisco Maia, M. Matos, R. Oliveira, J. Paulo, J. Pereira, R. Vilaça
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引用次数: 73

摘要

NoSQL数据库管理由现代Web应用程序(如社交网络)产生的大量数据。这源于它们能够将数据分区并传播到所有可用节点,从而允许NoSQL系统进行扩展。不幸的是,当前解决方案的横向扩展忽略了底层的数据访问模式,从而导致节点之间的负载高度倾斜和节点配置不理想。在本文中,我们首先展示了考虑到数据访问模式而明智地放置HBase分区可以将总体吞吐量提高35%。接下来,我们将通过以下方式超越目前仅限于不知情副本添加和删除的最先进的弹性系统:i)根据访问模式重新配置现有副本;ii)添加专门配置为预期访问模式的副本。MeT是一个支持云的框架的原型,它可以单独使用,也可以与OpenStack结合使用,用于HBase部署的自动和异构重构。我们使用YCSB工作负载生成器和TPC-C工作负载进行的评估表明,MeT能够i)自主实现手动配置集群的性能,ii)根据不可预测的工作负载变化快速重新配置集群。
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MeT: workload aware elasticity for NoSQL
NoSQL databases manage the bulk of data produced by modern Web applications such as social networks. This stems from their ability to partition and spread data to all available nodes, allowing NoSQL systems to scale. Unfortunately, current solutions' scale out is oblivious to the underlying data access patterns, resulting in both highly skewed load across nodes and suboptimal node configurations. In this paper, we first show that judicious placement of HBase partitions taking into account data access patterns can improve overall throughput by 35%. Next, we go beyond current state of the art elastic systems limited to uninformed replica addition and removal by: i) reconfiguring existing replicas according to access patterns and ii) adding replicas specifically configured to the expected access pattern. MeT is a prototype for a Cloud-enabled framework that can be used alone or in conjunction with OpenStack for the automatic and heterogeneous reconfiguration of a HBase deployment. Our evaluation, conducted using the YCSB workload generator and a TPC-C workload, shows that MeT is able to i) autonomously achieve the performance of a manual configured cluster and ii) quickly reconfigure the cluster according to unpredicted workload changes.
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