In this paper, we address energy-aware online scheduling of jobs with resource contention. We propose an optimization model and present new approach to resource allocation with job concentration taking into account types of applications and heterogeneous workloads that could include CPU-intensive, diskintensive, I/O-intensive, memory-intensive, network-intensive, and other applications. When jobs of one type are allocated to the same resource, they may create a bottleneck and resource contention either in CPU, memory, disk or network. It may result in degradation of the system performance and increasing energy consumption. We focus on energy characteristics of applications, and show that an intelligent allocation strategy can further improv...
Many systems today are heterogeneous in that they consist of a mix of different types of processing ...
Abstract-Energy related costs are becoming one of the largest contributors to the overall cost of op...
Large-scale distributed computing systems (LDSs), such as grids and clouds are primarily designed to...
peer reviewedIn this paper, we address energy-aware online scheduling of jobs with resource contenti...
By scheduling multiple applications with complemen-tary resource requirements on a smaller number of...
Cloud computing offers several types of on-demand and scalable access to software, computing resourc...
Energy Aware Scheduling for Green Cloud Computing Graduate Student: Anusha Kothapally Supervisor: He...
Cloud computing is an emerging Internet-based computing paradigm that aims to provide many on-demand...
Online flow-time scheduling is a fundamental problem in computer science and has been extensively st...
To improve performance and meet power constraints, vendors are introducing heterogeneous multicores ...
The energy consumption of under-utilized resources, particularly in a cloud environment, accounts fo...
International audienceWith the advent of new computing technologies, such as cloud computing and con...
none5siThis paper presents a power-aware scheduling algorithm based on efficient distribution of the...
In multicore systems, shared resources such as caches or the memory subsystem can lead to contention...
Abstract—With the advent of energy-aware scheduling al-gorithms, it is now possible to find solution...
Many systems today are heterogeneous in that they consist of a mix of different types of processing ...
Abstract-Energy related costs are becoming one of the largest contributors to the overall cost of op...
Large-scale distributed computing systems (LDSs), such as grids and clouds are primarily designed to...
peer reviewedIn this paper, we address energy-aware online scheduling of jobs with resource contenti...
By scheduling multiple applications with complemen-tary resource requirements on a smaller number of...
Cloud computing offers several types of on-demand and scalable access to software, computing resourc...
Energy Aware Scheduling for Green Cloud Computing Graduate Student: Anusha Kothapally Supervisor: He...
Cloud computing is an emerging Internet-based computing paradigm that aims to provide many on-demand...
Online flow-time scheduling is a fundamental problem in computer science and has been extensively st...
To improve performance and meet power constraints, vendors are introducing heterogeneous multicores ...
The energy consumption of under-utilized resources, particularly in a cloud environment, accounts fo...
International audienceWith the advent of new computing technologies, such as cloud computing and con...
none5siThis paper presents a power-aware scheduling algorithm based on efficient distribution of the...
In multicore systems, shared resources such as caches or the memory subsystem can lead to contention...
Abstract—With the advent of energy-aware scheduling al-gorithms, it is now possible to find solution...
Many systems today are heterogeneous in that they consist of a mix of different types of processing ...
Abstract-Energy related costs are becoming one of the largest contributors to the overall cost of op...
Large-scale distributed computing systems (LDSs), such as grids and clouds are primarily designed to...