All rights reserved. As a new emerging service provider, cloud computing, exhibiting advantages and disadvantages when executing the scientific data flows, is getting more and more attention. One of the main factors that constitute the performance bottleneck is there are many homogeneous and concurrent task packages in cloud. This paper focuses on optimizing the scheduling process in dataflow and transforming the optimization objectives into user metrics (makespan and economic cost) and indicators of cloud systems (network bandwidth, storage constraints and system fairness). An efficient multi-objective game algorithm (MOG) is proposed by formulating the optimization problem as a new cooperative game. The MOG method is able to optimize the ...
This paper focuses on the task scheduling algorithms based on comprehensive QoS and constraint of ex...
Scientific workflows have become a prevailing means of achieving significant scientific advances at ...
Thanks to the exponential growth of data that needs to be processed in cloud datacenters, data paral...
Scheduling multiple large-scale parallel workflow applications on heterogeneous computing systems li...
Efficient task and workflow scheduling are very important for improving resource management and redu...
Providing resources and services from multiple clouds is becoming an increasingly promising paradigm...
Distributed computing, such as cloud computing, provides promising platforms to execute multiple wor...
Cloud computing provides high-end computing capabilities so that users can access data and applicati...
Scheduling problems in cloud computing environment are mostly influenced by multi-objective optimiza...
Cloud computing is an emerging high performance computing environment with a large scale, heterogene...
Scientific workflows benefit from the cloud computing paradigm, which offers access to virtual resou...
ABSTRACT The task scheduling is a key process in large-scale distributed systems like cloud comput...
International audienceThe increasing demand of cloud computing motivates researchers to make cloud e...
The cloud has been widely used as a distributed computing platform for running scientific workflow a...
Cloud computing has emerged as a high-performance computing environment with a large pool of abstrac...
This paper focuses on the task scheduling algorithms based on comprehensive QoS and constraint of ex...
Scientific workflows have become a prevailing means of achieving significant scientific advances at ...
Thanks to the exponential growth of data that needs to be processed in cloud datacenters, data paral...
Scheduling multiple large-scale parallel workflow applications on heterogeneous computing systems li...
Efficient task and workflow scheduling are very important for improving resource management and redu...
Providing resources and services from multiple clouds is becoming an increasingly promising paradigm...
Distributed computing, such as cloud computing, provides promising platforms to execute multiple wor...
Cloud computing provides high-end computing capabilities so that users can access data and applicati...
Scheduling problems in cloud computing environment are mostly influenced by multi-objective optimiza...
Cloud computing is an emerging high performance computing environment with a large scale, heterogene...
Scientific workflows benefit from the cloud computing paradigm, which offers access to virtual resou...
ABSTRACT The task scheduling is a key process in large-scale distributed systems like cloud comput...
International audienceThe increasing demand of cloud computing motivates researchers to make cloud e...
The cloud has been widely used as a distributed computing platform for running scientific workflow a...
Cloud computing has emerged as a high-performance computing environment with a large pool of abstrac...
This paper focuses on the task scheduling algorithms based on comprehensive QoS and constraint of ex...
Scientific workflows have become a prevailing means of achieving significant scientific advances at ...
Thanks to the exponential growth of data that needs to be processed in cloud datacenters, data paral...