Stochastic programming provides an effective framework for addressing decision prob-lems under uncertainty in diverse fields. Stochastic programs incorporate many possible contingencies so as to proactively account for randomness in their input data; thus, they inevitably lead to very large optimization programs. Consequently, efficient algorithms that can exploit the capabilities of advanced computing technologies – including multiprocessor computers – become imperative to solve large-scale stochastic programs. This paper surveys the state-of-the-art in parallel algorithms for stochastic programming. Algorithms are reviewed, classified and compared. Qualitative comparisons are based on the applicability, scope, ease of implementation, robu...
We study different parallelization schemes for the stochastic dual dynamic programming (SDDP) algori...
This paper presents a parallel computation approach for the efficient solution of very large multist...
The paper discusses the parallelization of Stochastic Evolution metaheuristic, identifying effective...
Testing the performance scalability of parallel programs can be a time consuming task, involving man...
We develop scalable algorithms for two-stage stochastic program optimizations. We propose performanc...
Testing the performance scalabilityof parallelprograms can be a time consuming task, involving many ...
In many practical cases, the data available for the formulation of an optimization model are known o...
AbstractStochastic dynamic programs suffer from the so called curse of dimensionality whereby the nu...
The optimization algorithms for stochastic functions are desired specically for real-world and simul...
Stochastic programming is the subfield of mathematical programming that considers optimization in th...
Stochastic programming is a subfield of mathematical programming concerned with optimization problem...
The paper discusses the parallelization of Stochastic Evolution metaheuristic, identifying effective...
The paper examines the parallel implementation of iteration type global illumination al-gorithms. Th...
This paper proposes a data parallel procedure for randomly generating test problems for two-stage qu...
We study different parallelization schemes for the stochastic dual dynamic programming (SDDP) algori...
This paper presents a parallel computation approach for the efficient solution of very large multist...
The paper discusses the parallelization of Stochastic Evolution metaheuristic, identifying effective...
Testing the performance scalability of parallel programs can be a time consuming task, involving man...
We develop scalable algorithms for two-stage stochastic program optimizations. We propose performanc...
Testing the performance scalabilityof parallelprograms can be a time consuming task, involving many ...
In many practical cases, the data available for the formulation of an optimization model are known o...
AbstractStochastic dynamic programs suffer from the so called curse of dimensionality whereby the nu...
The optimization algorithms for stochastic functions are desired specically for real-world and simul...
Stochastic programming is the subfield of mathematical programming that considers optimization in th...
Stochastic programming is a subfield of mathematical programming concerned with optimization problem...
The paper discusses the parallelization of Stochastic Evolution metaheuristic, identifying effective...
The paper examines the parallel implementation of iteration type global illumination al-gorithms. Th...
This paper proposes a data parallel procedure for randomly generating test problems for two-stage qu...
We study different parallelization schemes for the stochastic dual dynamic programming (SDDP) algori...
This paper presents a parallel computation approach for the efficient solution of very large multist...
The paper discusses the parallelization of Stochastic Evolution metaheuristic, identifying effective...