Abstract—MapReduce has become a popular framework for Big Data applications. While MapReduce has received much praise for its scalability and efficiency, it has not been thoroughly evaluated for power consumption. Our goal with this paper is to explore the possibility of scheduling in a power-efficient manner without the need for expensive power monitors on every node. We begin by considering that no cluster is truly homogeneous with respect to energy consumption. From there we develop a MapReduce framework that can evaluate the current status of each node and dynamically react to estimated power usage. In so doing, we shift power consumption work toward more energy efficient nodes which are currently consuming less power. Our work shows th...
The energy-performance optimization of datacenters becomes ever challenging, due to heterogeneous wo...
With the continuous growth of online services, energy consumption has become a significant fraction ...
Most common huge volume data processing programs do counting, sorting, merging etc. Such programs re...
The efficient use of energy is essential to address concerns of cost and sustainability. Many data c...
Abstract—The majority of large-scale data intensive appli-cations executed by data centers are based...
The majority of large-scale data intensive applications carried out by information centers are based...
Abstract—The majority of large-scale data intensive applications executed by data centers are based ...
With the recent emergence of cloud computing based services on the Inter-net, MapReduce and distribu...
ARM-CC held in Conjunction with ACM Symposium on Principles of Distributed Computing (PODC)Internati...
The growing expenses of power in data centers as compared to the operation costs has been a concern ...
Worldwide data centers consume about 300 billion kWh of energy per year, which accounts for 2% of to...
MapReduce is a framework proposed by Google for processing huge amounts of data in a distributed env...
International audienceWith increasingly inexpensive storage and growing processing power, the cloud ...
The majority of large-scale data intensive applications executed by data centers are based on MapRed...
This dissertation presents the techniques for adaptation of MapReduce frameworks to incorporate hete...
The energy-performance optimization of datacenters becomes ever challenging, due to heterogeneous wo...
With the continuous growth of online services, energy consumption has become a significant fraction ...
Most common huge volume data processing programs do counting, sorting, merging etc. Such programs re...
The efficient use of energy is essential to address concerns of cost and sustainability. Many data c...
Abstract—The majority of large-scale data intensive appli-cations executed by data centers are based...
The majority of large-scale data intensive applications carried out by information centers are based...
Abstract—The majority of large-scale data intensive applications executed by data centers are based ...
With the recent emergence of cloud computing based services on the Inter-net, MapReduce and distribu...
ARM-CC held in Conjunction with ACM Symposium on Principles of Distributed Computing (PODC)Internati...
The growing expenses of power in data centers as compared to the operation costs has been a concern ...
Worldwide data centers consume about 300 billion kWh of energy per year, which accounts for 2% of to...
MapReduce is a framework proposed by Google for processing huge amounts of data in a distributed env...
International audienceWith increasingly inexpensive storage and growing processing power, the cloud ...
The majority of large-scale data intensive applications executed by data centers are based on MapRed...
This dissertation presents the techniques for adaptation of MapReduce frameworks to incorporate hete...
The energy-performance optimization of datacenters becomes ever challenging, due to heterogeneous wo...
With the continuous growth of online services, energy consumption has become a significant fraction ...
Most common huge volume data processing programs do counting, sorting, merging etc. Such programs re...