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An Experimental Evaluation of Datacenter Workloads On Low-Power Embedded Micro Servers

机译:低功耗嵌入式微型服务器数据中心工作负载的实验评估

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This paper presents a comprehensive evaluation of an ultralow power cluster, built upon the Intel Edison based micro servers. The improved performance and high energy efficiency of micro servers have driven both academia and industry to explore the possibility of replacing conventional brawny servers with a larger swarm of embedded micro servers. Existing attempts mostly focus on mobile-class micro servers, whose capacities are similar to mobile phones. We, on the other hand, target on sensor-class micro servers, which are originally intended for uses in wearable technologies, sensor networks, and Internet-of-Things. Although sensor-class micro servers have much less capacity, they are touted for minimal power consumption (< 1 Watt), which opens new possibilities of achieving higher energy efficiency in datacenter workloads. Our systematic evaluation of the Edison cluster and comparisons to conventional brawny clusters involve careful workload choosing and laborious parameter tuning, which ensures maximum server utilization and thus fair comparisons. Results show that the Edison cluster achieves up to 3.5x improvement on work-done-per-joule for web service applications and data-intensive MapReduce jobs. In terms of scalability, the Edison cluster scales linearly on the throughput of web service workloads, and also shows satisfactory scalability for MapReduce workloads despite coordination overhead.
机译:本文介绍了基于英特尔爱迪生的微型服务器的超级电力集群综合评估。微服务器的提高性能和高能量效率驱动了学术界和工业,探讨了更换传统BRAWNY服务器的可能性,具有较大的嵌入式微服务器。现有尝试主要集中在移动级微服务器上,其能力类似于移动电话。另一方面,我们对传感器类的微服务器进行了目标,最初用于用于可穿戴技术,传感器网络和互联网的用途。虽然传感器级微型服务器的容量较少,但它们被吹捧,以实现最小的功耗(<1瓦),其开启了在数据中心工作负载中实现更高能源效率的新可能性。我们对Edish Cluster的系统评估和传统的Brawny集群的比较涉及仔细工作量选择和费力的参数调整,可确保最大的服务器利用率,从而进行公平的比较。结果表明,爱迪生集群在Web服务应用程序和数据密集的MapReduce作业上实现了高达3.5倍的工作。在可伸缩性方面,Edison群集在Web服务工作负载的吞吐量上线性缩放,并且仍显示MapReduce工作负载的令人满意的可扩展性,尽管开销是协调的。

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