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Many-core CPUs can deliver scalable performance to stochastic simulations of large-scale biochemical reaction networks

机译:许多核心CPU可以为大规模生化反应网络的随机模拟提供可扩展性能

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Stochastic simulation of large-scale biochemical reaction networks is becoming essential for Systems Biology. It enables the in-silico investigation of complex biological system dynamics under different conditions and intervention strategies, while also taking into account the inherent “biological noise” especially present in the low species count regime. It is however a great computational challenge since in practice we need to execute many repetitions of a complex simulation model to assess the average and extreme cases behavior of the dynamical system it represents. The problem's work scales quickly, with the number of repetitions required and the number of reactions in the bio-model. The worst case scenario s when there is a need to run thousands of repetitions of a complex model with thousands of reactions. We have developed a stochastic simulation software framework for many- and multi-core CPUs. It is evaluated using Intel's experimental many-cores Single-chip Cloud Computer (SCC) CPU and the latest generation consumer grade Core i7 multi-core Intel CPU, when running Gillespie's First Reaction Method exact stochastic simulation algorithm. It is shown that emerging many-core NoC processors can provide scalable performance achieving linear speedup as simulation work scales in both dimensions.
机译:大型生化反应网络的随机模拟正在成为系统生物学至关重要。它使不同的条件和干预策略下复杂的生物系统动力学在计算机芯片的调查,同时也考虑到固有的“生物噪音”低品种尤其是目前算制度。然而,这是因为在实践中,我们需要执行一个复杂的仿真模型的多次重复,以评估它代表了动力系统的平均和极端情况下的行为有很大的计算挑战。这个问题的工作扩展迅速,需要与重复次数和生物模型反应的数量。当有需要与成千上万的反应运行成千上万的复杂模型的重复最坏的情况秒。我们已经制定了多对一和多核心CPU的随机模拟软件框架。它采用英特尔的实验众核单芯片云计算机(SCC),CPU和新一代消费级酷睿i7多核心的Intel CPU,运行吉莱斯皮的第一反应法精确随机模拟算法时评估。结果表明,新兴的多核心处理器的片上网络能够提供可扩展的性能获得线性的加速在两个维度模拟工作的鳞片。

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