Exascale computer architecture adjusting to the “New normal” for computing

J. Shalf
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引用次数: 1

Abstract

The current MPI+Fortran ecosystem has sustained HPC application software development for the past decade, but was architected for coarse-grained concurrency largely dominated by bulk-synchronous algorithms. The trends in computer architecture have turned our model for how to get good performance from computing systems upside-down, and will require rethinking our entire programming environment and algorithm design to be better aligned with the new cost metrics for these emerging hardware architectures. There are already promising avenues of exploration underway to mitigate these effects. Future hardware constraints on bandwidth and memory capacity, together with exponential growth in explicit on-chip parallelism will likely require a mass migration to new algorithms and software architecture that is as broad and disruptive as the migration from vector to parallel computing systems that occurred 15 years go. The challenge is to efficiently express massive parallelism and hierarchical data locality without subjecting the programmer to overwhelming complexity. The author covers how changes in hardware (governed by the fundamental physics of Silicon based CMOS technology) are breaking our existing abstract machine models, and DOE's program to overcome these obstacles to continued performance improvements. He examines potential approaches that range from revolutionary asynchronous and dataflow models of computation to evolutionary extensions to existing APIs and OpenMP directives.
百亿亿级计算机架构适应计算的“新常态”
当前的MPI+Fortran生态系统在过去的十年里一直支持着HPC应用软件的开发,但它的架构主要是为大容量同步算法所主导的粗粒度并发。计算机体系结构的趋势已经颠覆了我们如何从计算系统中获得良好性能的模型,并且需要重新思考我们的整个编程环境和算法设计,以便更好地与这些新兴硬件体系结构的新成本指标保持一致。已经有一些很有希望的探索途径正在进行中,以减轻这些影响。未来硬件对带宽和内存容量的限制,以及显式芯片上并行性的指数级增长,可能需要大规模迁移到新的算法和软件架构,这就像15年前从矢量计算系统迁移到并行计算系统一样广泛和具有破坏性。挑战在于如何有效地表达大规模并行性和分层数据局部性,同时又不让程序员承受压倒性的复杂性。作者介绍了硬件的变化(由基于硅的CMOS技术的基本物理控制)如何打破我们现有的抽象机器模型,以及能源部克服这些障碍以持续提高性能的计划。他考察了各种可能的方法,从革命性的异步和数据流计算模型到对现有api和OpenMP指令的进化扩展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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