In high-performance computing (HPC), workflow-based workloads are usually data intensive for exploratory analysis of a scientific computation problem that may involve a large parameter space. To achieve the best performance, storage resource constraint is always a pragmatic concern in reality as the potential problem space scale, especially in big data science, as well as its required dataset are ever growing to outpace any increasing rate of storage capacity. Therefore, the workflow computation in a HPC environment with finite storage resources is still a practical topic that is worthwhile studying. To this end, we propose a novel scheduling framework that enhances the scheduling policies of Versioned Name Space and Overwrite-Safe Concurre...
Resource abundance is apparent in today's multicore era. Workflow applications common in science and...
Effective scheduling is a key concern for the execution of performance driven cloud applications. We...
The analysis of the trace graphs generated by dataflow program executions has been shown to be an ef...
Scientific workflows are often used to automate large-scale data analysis pipelines on clusters, gri...
Many breakthroughs in scientific and industrial research are supported by simulations and calculatio...
UnrestrictedIn recent years, scientific communities have increasingly adopted computational workflow...
Data intensive computing holds the promise of major scientific breakthroughs and discoveries from th...
Scientific workflows in High Performance Computing ( HPC ...
Data-intensive workflows stage large amounts of data in and out of compute resources. The data stagi...
Scientific workflows enable scientists to undertake analysis on large datasets and perform complex s...
The scale of scientific applications becomes increasingly large not only in computation, but also in...
Abstract: This paper examines the argument for dataflow architectures in “Two Fundamental Issues in ...
International audienceScientific insights in the coming decade will clearly depend on the effective ...
In this paper we examine the issue of optimizing disk usage and of scheduling large-scale scientific...
International audienceExecuting Big Data workloads upon High Performance Computing (HPC) infrastract...
Resource abundance is apparent in today's multicore era. Workflow applications common in science and...
Effective scheduling is a key concern for the execution of performance driven cloud applications. We...
The analysis of the trace graphs generated by dataflow program executions has been shown to be an ef...
Scientific workflows are often used to automate large-scale data analysis pipelines on clusters, gri...
Many breakthroughs in scientific and industrial research are supported by simulations and calculatio...
UnrestrictedIn recent years, scientific communities have increasingly adopted computational workflow...
Data intensive computing holds the promise of major scientific breakthroughs and discoveries from th...
Scientific workflows in High Performance Computing ( HPC ...
Data-intensive workflows stage large amounts of data in and out of compute resources. The data stagi...
Scientific workflows enable scientists to undertake analysis on large datasets and perform complex s...
The scale of scientific applications becomes increasingly large not only in computation, but also in...
Abstract: This paper examines the argument for dataflow architectures in “Two Fundamental Issues in ...
International audienceScientific insights in the coming decade will clearly depend on the effective ...
In this paper we examine the issue of optimizing disk usage and of scheduling large-scale scientific...
International audienceExecuting Big Data workloads upon High Performance Computing (HPC) infrastract...
Resource abundance is apparent in today's multicore era. Workflow applications common in science and...
Effective scheduling is a key concern for the execution of performance driven cloud applications. We...
The analysis of the trace graphs generated by dataflow program executions has been shown to be an ef...