基于异构计算平台的显式三维空间复杂生化途径过程模拟

Jie Li, A. Salighehdar, N. Ganesan
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引用次数: 1

摘要

生物途径通常由数十种化学物质和数百个描述生物系统内反应的方程组成。由于系统的复杂性和相互作用的性质,在显式过程空间中对这种生物途径进行建模和模拟是一项计算密集型的工作。这种生物学途径在多种基本细胞过程中表现出相当大的行为复杂性。因此,迫切需要新的底层仿真算法以及更新的计算平台、系统和技术。在这项工作中,我们提出了一个新的异构计算平台,以加速三维反应过程空间中复杂生化途径的模拟研究。模拟研究中涉及的几个任务已经被仔细地划分为在可重构硬件和大规模并行处理器(如GPU)的组合上运行。本文还提出了一种实现,以加速计算最密集的任务之一-筛选反应空间以确定反应粒子。最后,我们提出了一种集成FPGA和GPU的新型异构计算框架,以加速计算并获得比使用任何单一平台更好的性能。与单一gpu平台相比,该平台实现了5倍的总加速。此外,可扩展架构具有足够的通用性,可以用于研究各种生物途径,从而更深入地了解生物分子系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Process Simulation of Complex Biochemical Pathways in Explicit 3D Space Enabled by Heterogeneous Computing Platform
Biological pathways typically consist of dozens of reacting chemical species and hundreds of equations describing reactions within the biological system. Modeling and simulation of such biological pathways in explicit process space is a computationally intensive due to the size of the system complexity and nature of the interactions. Such biological pathways exhibit considerable behavioral complexity in multiple fundamental cellular processes. Hence, there is a strong need for new underlying simulation algorithms as well as need for newer computing platforms, systems and techniques. In this work we present a novel heterogeneous computing platform to accelerate the simulation study of such complex biochemical pathways in 3D reaction process space. Several tasks involved in the simulation study has been carefully partitioned to run on a combination of reconfigurable hardware and a massively parallel processor, such as the GPU. This paper also presents an implementation to accelerate one of the most compute intensive tasks - sifting through the reaction space to determine reacting particles. Finally, we present the new heterogeneous computing framework integrating a FPGA and GPU to accelerate the computation and obtain better performance over the use of any single platform. The platform achieves 5x total speedup when compared to a single GPU-only platform. Besides, the extensible architecture is general enough to be used to study a variety of biological pathways in order to gain deeper insights into biomolecular systems.
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