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A Highly Efficient Implementation on GPU Clusters of PDE-Based Pricing Methods for Path-Dependent Foreign Exchange Interest Rate Derivatives

机译:基于PDE的路径依赖型外汇利率衍生产品定价方法在GPU群集上的高效实现

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We present a highly efficient parallelization of the computation of the price of exotic cross-currency interest rate derivatives with path-dependent features via a Partial Differential Equation (PDE) approach. In particular, we focus on the parallel pricing on Graphics Processing Unit (GPU) clusters of long-dated foreign exchange (FX) interest rate derivatives, namely Power-Reverse Dual-Currency (PRDC) swaps with FX Target Redemption (FX-TARN) features under a three-factor model. Challenges in pricing these derivatives via a PDE approach arise from the high-dimensionality of the model PDE, as well as from the path-dependency of the FX-TARN feature. The PDE pricing framework for FX-TARN PRDC swaps is based on partitioning the pricing problem into several independent pricing sub-problems over each time period of the swap's tenor structure, with possible communication at the end of the time period. Finite difference methods on non-uniform grids are used for the spatial discretization of the PDE, and the Alternating Direction Implicit (ADI) technique is employed for the time discretization. Our implementation of the pricing procedure on a GPU cluster involves (ⅰ) efficiently solving each independent sub-problem on a GPU via a parallelization of the ADI timestepping technique, and (ⅱ) utilizing MPI for the communication between pricing processes at the end of the time period of the swap's tenor structure. Numerical results showing the efficiency of the parallel methods are provided.
机译:我们通过偏微分方程(PDE)方法,对具有路径依赖特征的奇异交叉货币利率衍生产品的价格进行了高效并行化处理。特别是,我们重点关注长期外汇(FX)利率衍生产品的图形处理单元(GPU)集群的并行定价,即具有FX Target Redemption(FX-TARN)的Power-reverse Dual-Currency(PRDC)掉期三因素模型下的特征。通过PDE方法对这些衍生产品定价的挑战来自模型PDE的高维性以及FX-TARN功能的路径依赖性。 FX-TARN PRDC掉期的PDE定价框架基于在掉期期限结构的每个时间段内将定价问题划分为几个独立的定价子问题,并可能在该时间段结束时进行沟通。非均匀网格上的有限差分方法用于PDE的空间离散化,而交替方向隐式(ADI)技术用于时间离散化。我们在GPU集群上实施定价程序的过程包括(ⅰ)通过ADI时间步技术的并行化有效解决GPU上的每个独立子问题,以及(ⅱ)在最后阶段利用MPI进行定价过程之间的通信掉期期限结构的时间段。数值结果显示了并行方法的效率。

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