Wimpy node clusters: what about non-wimpy workloads?

Willis Lang, J. Patel, S. Shankar
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引用次数: 87

Abstract

The high cost associated with powering servers has introduced new challenges in improving the energy efficiency of clusters running data processing jobs. Traditional high-performance servers are largely energy inefficient due to various factors such as the over-provisioning of resources. The increasing trend to replace traditional high-performance server nodes with low-power low-end nodes in clusters has recently been touted as a solution to the cluster energy problem. However, the key tacit assumption that drives such a solution is that the proportional scale-out of such low-power cluster nodes results in constant scaleup in performance. This paper studies the validity of such an assumption using measured price and performance results from a low-power Atom-based node and a traditional Xeon-based server and a number of published parallel scaleup results. Our results show that in most cases, computationally complex queries exhibit disproportionate scaleup characteristics which potentially makes scale-out with low-end nodes an expensive and lower performance solution.
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弱节点集群:非弱工作负载呢?
与服务器供电相关的高成本在提高运行数据处理作业的集群的能源效率方面带来了新的挑战。传统的高性能服务器由于各种因素(如资源的过度供应)在很大程度上是能源效率低下的。最近,用低功耗的低端节点取代传统的高性能服务器节点成为解决集群能源问题的一种方法。然而,驱动这种解决方案的关键隐含假设是,这种低功耗集群节点的比例向外扩展会导致性能的持续扩展。本文使用基于低功耗atom节点和传统xeon服务器的测量价格和性能结果以及许多已发布的并行扩展结果来研究这种假设的有效性。我们的结果表明,在大多数情况下,计算复杂的查询表现出不成比例的扩展特征,这可能使低端节点的横向扩展成为一种昂贵且性能较低的解决方案。
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