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引用次数: 7

摘要

作者提出了虚拟时间数据并行机来异步执行SIMD(单指令多数据)程序。它们首先说明了异步执行如何比同步执行更有效。对于一个简单的模型,他们表明异步执行比同步执行的性能大约高出(ln N)倍,其中N是系统中的处理器数量。然后探讨如何在不违反SIMD语义的情况下异步执行SIMD程序。他们设计了一个先进先出(FIFO)优先级缓存,每个处理元素一个,以记录所有变量的最近历史。缓存(堆叠在处理器和内存之间)有效地支持硬件中的异步执行,并透明地保留软件的SIMD语义。分析和仿真结果表明,当处理器数量较大时,虚拟时间数据并行机可以实现计算密集型数据并行程序的线性加速
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The virtual-time data-parallel machine
The authors propose the virtual-time data-parallel machine to execute SIMD (single instruction multiple data) programs asynchronously. They first illustrate how asynchronous execution is more efficient than synchronous execution. For a simple model, they show that asynchronous execution outperforms synchronous execution roughly by a factor of (ln N), where N is the number of processors in the system. They then explore how to execute SIMD programs asynchronously without violating the SIMD semantics. They design a first in, first out (FIFO) priority cache, one for each processing element, to record the recent history of all variables. The cache, which is stacked between the processor and the memory, supports asynchronous execution in hardware efficiently and preserves the SIMD semantics of the software transparently. Analysis and simulation results indicate that the virtual-time data-parallel machine can achieve linear speed-up for computation-intensive data-parallel programs when the number of processors is large.<>
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