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首页> 外文期刊>Neuroinformatics >Understanding Computational Costs of Cellular-Level Brain Tissue Simulations Through Analytical Performance Models
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Understanding Computational Costs of Cellular-Level Brain Tissue Simulations Through Analytical Performance Models

机译:了解通过分析性能模型来了解细胞级脑组织模拟的计算成本

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Computational modeling and simulation have become essential tools in the quest to better understand the brain's makeup and to decipher the causal interrelations of its components. The breadth of biochemical and biophysical processes and structures in the brain has led to the development of a large variety of model abstractions and specialized tools, often times requiring high performance computing resources for their timely execution. What has been missing so far was an in-depth analysis of the complexity of the computational kernels, hindering a systematic approach to identifying bottlenecks of algorithms and hardware. If whole brain models are to be achieved on emerging computer generations, models and simulation engines will have to be carefully co-designed for the intrinsic hardware tradeoffs. For the first time, we present a systematic exploration based on analytic performance modeling. We base our analysis on three in silico models, chosen as representative examples of the most widely employed modeling abstractions: current-based point neurons, conductance-based point neurons and conductance-based detailed neurons. We identify that the synaptic modeling formalism, i.e. current or conductance-based representation, and not the level of morphological detail, is the most significant factor in determining the properties of memory bandwidth saturation and shared-memory scaling of in silico models. Even though general purpose computing has, until now, largely been able to deliver high performance, we find that for all types of abstractions, network latency and memory bandwidth will become severe bottlenecks as the number of neurons to be simulated grows. By adapting and extending a performance modeling approach, we deliver a first characterization of the performance landscape of brain tissue simulations, allowing us to pinpoint current bottlenecks for state-of-the-art in silico models, and make projections for future hardware and software requirements.
机译:计算建模和模拟已成为寻求更好地理解大脑的化妆和破译其组件的因果关系的基本工具。大脑中生化和生物物理过程和结构的广度导致了各种模型抽象和专业工具的发展,通常需要高性能计算资源的及时执行。到目前为止缺少的是对计算内核的复杂性的深入分析,阻碍了识别算法和硬件瓶颈的系统方法。如果在新兴计算机代表上实现全脑模型,模型和仿真发动机必须仔细共同设计用于内在硬件权衡。我们首次提出了基于分析性能建模的系统探索。我们基于三个在三种硅模型分析,选择为最广泛使用的建模抽象的代表性实例:基于目前的点神经元,基于电导的点神经元和基于电导的细节神经元。我们确定突触模拟形式主义,即基于电流或导电的代表,而不是形态细节的水平,是确定在Silico模型中的内存带宽饱和度和共享存储器缩放的性能最重要的因素。尽管通用计算具有,直到现在,在很大程度上都能够提供高性能,我们发现对于所有类型的抽象,网络潜伏期和内存带宽将成为严重的瓶颈,因为要模拟的神经元数量的数量会变得严重。通过调整和扩展性能建模方法,我们提供脑组织模拟性能景观的第一次表征,允许我们在Silico模型中查明最先进的电流瓶颈,并为未来的硬件和软件要求进行预测。

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