首页> 外文会议>Parallel, Distributed and Network-Based Processing (PDP), 2010 >A Parallel Preconditioned Conjugate Gradient Solver for the Poisson Problem on a Multi-GPU Platform
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A Parallel Preconditioned Conjugate Gradient Solver for the Poisson Problem on a Multi-GPU Platform

机译:多GPU平台上泊松问题的并行预处理共轭梯度求解器

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We present a parallel conjugate gradient solver for the Poisson problem optimized for multi-GPU platforms. Our approach includes a novel heuristic Poisson preconditioner well suited for massively-parallel SIMD processing. Furthermore, we address the problem of limited transfer rates over typical data channels such as the PCI-express bus relative to the bandwidth requirements of powerful GPUs. Specifically, naive communication schemes can severely reduce the achievable speedup in such communication-intense algorithms. For this reason, we employ overlapping memory transfers to establish a high level of concurrency and to improve scalability. We have implemented our model on a high-performance workstation with multiple hardware accelerators. We discuss the mathematical principles, give implementation details, and present the performance and the scalability of the system.
机译:我们针对针对多GPU平台优化的Poisson问题提出了一个并行共轭梯度求解器。我们的方法包括一种非常适合大规模并行SIMD处理的新颖启发式Poisson预处理器。此外,相对于功能强大的GPU的带宽要求,我们解决了在典型数据通道(例如PCI-express总线)上传输速率受限的问题。具体而言,幼稚的通信方案会严重降低这种通信密集算法中可实现的加速。因此,我们使用重叠的内存传输来建立高级别的并发性并提高可伸缩性。我们已经在具有多个硬件加速器的高性能工作站上实现了我们的模型。我们讨论了数学原理,给出了实现细节,并介绍了系统的性能和可扩展性。

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