
Energy efficiency is an area of growing importance in datacenters. While the energy proportionality wall poses a challenge to further improve the dynamic power range of servers, heterogeneous systems offer a new opportunity to achieve higher energy efficiency by improving the match between application workload demands on the large heterogeneous system configuration space. This paper proposes a model-driven energy proportionality analysis of heterogeneous clusters consisting of server nodes with different performance-to-power ratio (PPR). Our analysis shows that inter-node heterogeneity has a positive effect of scaling the energy proportionality wall by exposing configurations with sub-linear energy proportionality. Secondly, analysis of these sub-linear configurations on the 95th percentile response time shows that heterogeneity is beneficial in workloads where the PPR of wimpy nodes is higher than brawny nodes.
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