© 2017 IEEE. Large data analysis problems often involve a large number of variables, and the corresponding analysis algorithms may examine all variable combinations to find the optimal solution. For example, to model the time required to complete a scientific workflow, we need to consider the impact of dozens of parameters. To reduce the model building time and reduce the likelihood of overfitting, we look to variable selection methods to identify the critical variables for the performance model. In this work, we create a combination of variable selection and performance prediction methods that is as effective as the exhaustive search approach when the exhaustive search could be completed in a reasonable amount of time. To handle the cases ...
Performance analysis tools are essential to the maintenance of efficient parallel execution of scie...
We consider the problem of selecting the best variable-value strategy for solving a given problem in...
Modeling the performance behavior of parallel applications to predict the execution times of the app...
© 2017 IEEE. Large data analysis problems often involve a large number of variables, and the corresp...
© 2018 The Author(s). Porting scientific key algorithms to HPC architectures requires a thorough und...
In multiprocessor systems, data parallelism is the execution of the same task on data distributed ac...
Introduction In general, a parallel computer is a computer that has multiple processors connected b...
A compile-time prediction technique is outlined that yields approximate, yet low-cost, analytical pe...
In this paper we studied performance predictions for parallel scientific applications on a homogeneo...
Introduction In general, a parallel computer is a computer that has multiple processors connected b...
The increase in the use of parallel distributed architec-tures in order to solve large-scale scienti...
The authors present a technique for deriving predictions for the run times of parallel applications ...
Various layers of the parallel I/O subsystem offer tunable parameters for improving I/O performance ...
In order to measure the performance of a parallel machine, a set of application kernels as benchmark...
We explore the adaptation of a ranking and selection procedure, originally designed for a sequential...
Performance analysis tools are essential to the maintenance of efficient parallel execution of scie...
We consider the problem of selecting the best variable-value strategy for solving a given problem in...
Modeling the performance behavior of parallel applications to predict the execution times of the app...
© 2017 IEEE. Large data analysis problems often involve a large number of variables, and the corresp...
© 2018 The Author(s). Porting scientific key algorithms to HPC architectures requires a thorough und...
In multiprocessor systems, data parallelism is the execution of the same task on data distributed ac...
Introduction In general, a parallel computer is a computer that has multiple processors connected b...
A compile-time prediction technique is outlined that yields approximate, yet low-cost, analytical pe...
In this paper we studied performance predictions for parallel scientific applications on a homogeneo...
Introduction In general, a parallel computer is a computer that has multiple processors connected b...
The increase in the use of parallel distributed architec-tures in order to solve large-scale scienti...
The authors present a technique for deriving predictions for the run times of parallel applications ...
Various layers of the parallel I/O subsystem offer tunable parameters for improving I/O performance ...
In order to measure the performance of a parallel machine, a set of application kernels as benchmark...
We explore the adaptation of a ranking and selection procedure, originally designed for a sequential...
Performance analysis tools are essential to the maintenance of efficient parallel execution of scie...
We consider the problem of selecting the best variable-value strategy for solving a given problem in...
Modeling the performance behavior of parallel applications to predict the execution times of the app...