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Performance Analysis of a Multi-tenant In-Memory Data Grid

机译:METER METER数据网格中多租户的性能分析

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Distributed key-value stores have become indispensable for large scale low latency applications. Many cloud services have deployed in-memory data grids for their enterprise infrastructures and support multi-tenancy services. But it is still difficult to provide consistent performance to all tenants for fluctuating workloads that need to scale out. Many popular key-value stores suffer from performance problems at scale and different tenant requirements. To this front, we present our study with Hazelcast, a popular open source data grid, and provide insights to contention and performance bottlenecks. Through experimental analysis, this paper uncovers scenarios of performance degradation followed by optimized performance via end-point multiplexing. Our study suggests that processing increasing number of client requests spawning fewer number of threads help improve performance.
机译:分布式键值存储在大规模的低延迟应用程序中已成为必不可少的。许多云服务已为其企业基础架构部署内存数据网格,并支持多租户服务。但仍然很难为所有租户提供一致的性能,以波动需要扩展的工作负载。许多流行的钥匙价商店患有规模和不同租户要求的性能问题。在这方面,我们向Hazelcast,一个流行的开源数据网提供了我们的研究,并为争用和性能瓶颈提供了见解。通过实验分析,本文通过终点复用,揭示了性能下降的场景,然后通过终点复用优化性能。我们的研究表明,处理越来越多的客户端请求产卵较少数量的线程有助于提高性能。

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