GPU上的高性能反向时间迁移

Javier Cabezas, M. Araya-Polo, Isaac Gelado, N. Navarro, E. Morancho, J. Cela
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引用次数: 15

摘要

偏微分方程(PDE)是许多科学领域中大多数模拟的核心,从流体力学到天体物理学。求解偏微分方程最常用的数学方案之一是有限差分(FD)。在这项工作中,我们将称为反向时间迁移的PDE-FD算法映射到使用CUDA的GPU。这种地震成像(地球物理)算法被广泛应用于石油工业。gpu是时钟竞赛之后的天然竞争者,特别是对于高性能计算(HPC)。由于GPU的特点,并行模式从传统的线程加SIMD转变为单程序多数据(SPMD)。NVIDIA GTX 280实现的性能最高可达9倍(Intel Harpertown E5420),最高可达14倍(IBM PPC 970)。这些初步结果证实,从性能到可编程性,gpu是HPC的真正选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-Performance Reverse Time Migration on GPU
Partial Differential Equations (PDE) are the heart of most simulations in many scientific fields, from Fluid Mechanics to Astrophysics. One the most popular mathematical schemes to solve a PDE is Finite Difference (FD). In this work we map a PDE-FD algorithm called Reverse Time Migration to a GPU using CUDA. This seismic imaging (Geophysics) algorithm is widely used in the oil industry. GPUs are natural contenders in the aftermath of the clock race, in particular for High-performance Computing (HPC). Due to GPU characteristics, the parallelism paradigm shifts from the classical threads plus SIMD to Single Program Multiple Data (SPMD). The NVIDIA GTX 280 implementation outperforms homogeneous CPUs up to 9x (Intel Harpertown E5420) and up to 14x (IBM PPC 970). These preliminary results confirm that GPUs are a real option for HPC, from performance to programmability.
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