作者
Johannes Brumm, Dmitry Mikushin, Simon Scheidegger, Olaf Schenk
发表日期
2015/11/1
期刊
Journal of Computational Science
卷号
11
页码范围
12-25
出版商
Elsevier
简介
We present a highly parallelizable and flexible computational method to solve high-dimensional stochastic dynamic economic models. Solving such models often requires the use of iterative methods, like time iteration or dynamic programming. By exploiting the generic iterative structure of this broad class of economic problems, we propose a parallelization scheme that favors hybrid massively parallel computer architectures. Within a parallel nonlinear time iteration framework, we interpolate policy functions partially on GPUs using an adaptive sparse grid algorithm with piecewise linear hierarchical basis functions. GPUs accelerate this part of the computation one order of magnitude thus reducing overall computation time by 50%. The developments in this paper include the use of a fully adaptive sparse grid algorithm and the use of a mixed MPI-Intel TBB-CUDA/Thrust implementation to improve the interprocess …
引用总数
201620172018201920202021202220232024432323211
学术搜索中的文章
J Brumm, D Mikushin, S Scheidegger, O Schenk - Journal of Computational Science, 2015