Taming Server Memory TCO with Multiple Software-Defined Compressed Tiers

Sandeep Kumar, Aravinda Prasad, Sreenivas Subramoney
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Abstract

Memory accounts for 33 - 50% of the total cost of ownership (TCO) in modern data centers. We propose a novel solution to tame memory TCO through the novel creation and judicious management of multiple software-defined compressed memory tiers. As opposed to the state-of-the-art solutions that employ a 2-Tier solution, a single compressed tier along with DRAM, we define multiple compressed tiers implemented through a combination of different compression algorithms, memory allocators for compressed objects, and backing media to store compressed objects. These compressed memory tiers represent distinct points in the access latency, data compressibility, and unit memory usage cost spectrum, allowing rich and flexible trade-offs between memory TCO savings and application performance impact. A key advantage with ntier is that it enables aggressive memory TCO saving opportunities by placing warm data in low latency compressed tiers with a reasonable performance impact while simultaneously placing cold data in the best memory TCO saving tiers. We believe our work represents an important server system configuration and optimization capability to achieve the best SLA-aware performance per dollar for applications hosted in production data center environments. We present a comprehensive and rigorous analytical cost model for performance and TCO trade-off based on continuous monitoring of the application's data access profile. Guided by this model, our placement model takes informed actions to dynamically manage the placement and migration of application data across multiple software-defined compressed tiers. On real-world benchmarks, our solution increases memory TCO savings by 22% - 40% percentage points while maintaining performance parity or improves performance by 2% - 10% percentage points while maintaining memory TCO parity compared to state-of-the-art 2-Tier solutions.
利用多个软件定义的压缩层降低服务器内存总拥有成本
在现代数据中心中,内存占总拥有成本(TCO)的 33 - 50%。我们提出了一种新颖的解决方案,通过新颖地创建和明智地管理多个软件定义的压缩内存层来降低内存总拥有成本。与采用 2 层解决方案、单一压缩层和 DRAM 的最先进解决方案不同,我们通过结合不同的压缩算法、压缩对象的内存分配器以及存储压缩对象的后备介质,定义了多个压缩层。这些压缩内存层代表了访问延迟、数据可压缩性和单位内存使用成本光谱中的不同点,允许在内存总拥有成本节省和应用性能影响之间进行灵活的权衡。ntier 的一个关键优势是,它可以将热数据放在对性能有合理影响的低延迟压缩层中,同时将冷数据放在最佳内存 TCO 节约层中,从而提供积极的内存 TCO 节约机会。我们相信,我们的工作代表了一种重要的服务器系统配置和优化能力,可为托管在生产数据中心环境中的应用实现最佳的 SLA 感知性能。我们基于对应用程序数据访问情况的持续监控,为性能和总拥有成本的权衡提出了一个全面而严谨的分析成本模型。在该模型的指导下,我们的放置模型采取明智的行动,动态管理多个软件定义的压缩层之间的应用数据放置和迁移。在实际基准测试中,与最先进的 2 层解决方案相比,我们的解决方案在保持性能均等的同时,将内存 TCO 节省率提高了 22% - 40% 个百分点,或在保持内存 TCO 均等的同时,将性能提高了 2% - 10% 个百分点。
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