Massively parallelized Quasi-Monte Carlo financial simulation on a FPGA supercomputer

Xiang Tian, K. Benkrid
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引用次数: 4

Abstract

Quasi-Monte Carlo simulation is a specialized Monte Carlo method which uses quasi-random, or low-discrepancy, numbers as the stochastic parameters. In many applications, this method has proved advantageous compared to the traditional Monte Carlo simulation method, which uses pseudo-random numbers, as it converges relatively quickly, and with a better level of accuracy. We implemented a massively parallelized Quasi-Monte Carlo simulation engine on a FPGA-based supercomputer, called Maxwell, and developed at the University of Edinburgh. Maxwell consists of 32 IBM Intel Xeon blades each hosting two Virtex-4 FPGA nodes through PCI-X interface. Real hardware implementation of our FPGA-based quasi-Monte Carlo engine on the Maxwell machine outperforms equivalent software implementations running on the Xeon processors by 3 orders of magnitude, with the speed-up figure scaling linearly with the number of processing nodes. The paper presents the detailed design and implementation of our Quasi-Monte Carlo engine in the context of financial derivatives pricing.
在FPGA超级计算机上大规模并行准蒙特卡罗金融模拟
准蒙特卡罗模拟是一种专门的蒙特卡罗方法,它使用准随机或低差异的数字作为随机参数。在许多应用中,与使用伪随机数的传统蒙特卡罗模拟方法相比,该方法已被证明具有优势,因为它收敛相对较快,并且具有更好的精度。我们在爱丁堡大学开发的基于fpga的超级计算机Maxwell上实现了一个大规模并行的准蒙特卡罗模拟引擎。Maxwell由32个IBM Intel至强刀片组成,每个刀片通过PCI-X接口承载两个Virtex-4 FPGA节点。我们基于fpga的准蒙特卡罗引擎在Maxwell机器上的实际硬件实现比在Xeon处理器上运行的等效软件实现高出3个数量级,加速图与处理节点的数量呈线性增长。本文介绍了我们的准蒙特卡罗引擎在金融衍生品定价方面的详细设计和实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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