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GPU based sparse grid technique for solving multidimensional options pricing PDEs

机译:基于GPU的稀疏网格技术,用于解决多维选项定价PDES

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It has been shown that the sparse grid combination technique can be a practical tool to solve high dimensional PDEs arising in multidimensional option pricing problems in finance. Hierarchical approximation of these problems leads to linear systems that are smaller in size compared to those arising from standard finite element or finite difference discretizations. However, these systems are still excessively demanding in terms of memory for direct methods and challenging to solve by iterative methods. In this paper we address iterative solutions via preconditioned Krylov subspace based methods, such as Stabilized BiConjugate Gradient (BiCGStab) and CG Squared (CGS), with the main focus on the design of such iterative solvers to harness massive parallelism of general purpose Graphics Processing Units (GPGPU)s. We discuss data structures and efficient implementation of iterative solvers. We also present a number of performance results to demonstrate the scalability of these solvers on the NVIDIA's CUDA platform.
机译:已经表明,稀疏的网格组合技术可以是解决金融中多维期权定价问题中产生的高维PDE的实用工具。与标准有限元或有限差异离散化相比,这些问题的分层近似导致线性系统尺寸较小。然而,这些系统在内存方面仍然过于苛刻,以便通过迭代方法具有挑战性地解决。本文通过基于基于Krylov子空间的方法来解决迭代解决方案,例如稳定的Biconjugate梯度(BICGSTAB)和CG平方(CGS),主要关注这种迭代求解器的设计,以满足通用图形处理单元的巨大平行性(GPGPU)。我们讨论数据结构和高效实施迭代求解器。我们还提出了许多绩效结果,以证明这些求解器在NVIDIA的CUDA平台上的可扩展性。

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