SSDKeeper: Self-Adapting Channel Allocation to Improve the Performance of SSD Devices

Renping Liu, Xianzhang Chen, Yujuan Tan, Runyu Zhang, Liang Liang, Duo Liu
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引用次数: 11

Abstract

Solid state drives (SSDs) have been widely deployed in high performance data center environments, where multiple tenants usually share the same hardware. However, traditional SSDs distribute the users’ incoming data uniformly across all SSD channels, which leads to numerous access conflicts. Meanwhile, SSDs that statically allocate one or several channels to one tenant sacrifice device parallelism and capacity. When SSDs are shared by tenants with different access patterns, inappropriate channel allocation results in SSDs performance degradation. In this paper, we propose a self-adapting channel allocation mechanism, named SSDKeeper, for multiple tenants to share one SSD. SSDKeeper employs a machine learning assisted algorithm to take full advantage of SSD parallelism while providing performance isolation. By collecting multi-tenant access patterns and training a model, SSDKeeper selects an optimal channel allocation strategy for multiple tenants with the lowest overall response latency. Experimental results show that SSDKeeper improves the overall performance by 24% with negligible overhead.
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SSDKeeper:自适应通道分配,提高SSD设备的性能
固态硬盘(ssd)已广泛部署在高性能数据中心环境中,其中多个租户通常共享相同的硬件。然而,传统SSD将用户的传入数据统一分布在所有SSD通道上,这导致了大量的访问冲突。同时,静态地将一个或多个通道分配给一个租户的ssd会牺牲设备的并行性和容量。当使用不同访问模式的租户共享ssd时,通道分配不当会导致ssd性能下降。在本文中,我们提出了一种自适应的通道分配机制,命名为SSDKeeper,用于多个租户共享一个SSD。SSDKeeper采用机器学习辅助算法,在提供性能隔离的同时充分利用SSD并行性。通过收集多租户访问模式并训练模型,SSDKeeper为多个租户选择具有最低总体响应延迟的最佳通道分配策略。实验结果表明,SSDKeeper的总体性能提高了24%,开销可以忽略不计。
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