Energy-efficient cluster computing with FAWN: workloads and implications

e-Energy '10: Proceedings of the 1st International Conference on Energy-Efficient Computing and Networking(2010)

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摘要
This paper presents the architecture and motivation for a cluster-based, many-core computing architecture for energy-efficient, data-intensive computing. FAWN, a Fast Array of Wimpy Nodes, consists of a large number of slower but efficient nodes coupled with low-power storage. We present the computing trends that motivate a FAWN-like approach, for CPU, memory, and storage. We follow with a set of microbenchmarks to explore under what workloads these "wimpy nodes" perform well (or perform poorly). We conclude with an outline of the longer-term implications of FAWN that lead us to select a tightly integrated stacked chip-and-memory architecture for future FAWN development.
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关键词
fast array,data-intensive computing,chip-and-memory architecture,efficient node,wimpy nodes,energy-efficient cluster computing,fawn-like approach,many-core computing architecture,future fawn development,computing trend,low-power storage,measurement,design,data intensive computing,performance,cluster computing,computer architecture,energy efficiency,energy efficient,chip
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