Publication | Closed Access
Energy-Aware Data Transfer Tuning
37
Citations
41
References
2014
Year
Unknown Venue
Cluster ComputingEngineeringEnergy EfficiencyComputer ArchitectureData Center NetworkData SciencePerformance TuningInternet Of ThingsParallel ComputingPower-aware SoftwarePower ManagementPower-aware ComputingComputer EngineeringEnergyPower ConsumptionEdge ComputingCloud ComputingAnnual ElectricityPower-efficient ComputingEnergy-efficient Networking
The annual electricity consumed by data transfers in the U.S. is estimated to be 20 Terawatt hours, which translates to around 4 billion U.S. Dollars per year. There has been considerable amount of prior work looking at power management and energy efficiency in hardware and software systems, and more recently in power-aware networking. Despite the growing body of research in power management techniques for the networking infrastructure, there has been no prior work (to the best of our knowledge), focusing on saving energy at the end systems(sender and receiver nodes) during the data transfer. We argue that although network-only approaches are part of the solution, the end-system power management is a key in optimizing energy efficiency of the data transfers, which has been long ignored. In this paper, we analyze various factors that will affect the power consumption in end-to-end data transfers, such as the level of parallelism, concurrency and pipelining. Our results show that significant amount of energy savings can be achieved at the end-systems during data transfer with no or minimal performance penalty.
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