Selective GPU caches to eliminate CPU-GPU HW cache coherence

Neha Agarwal, D. Nellans, Eiman Ebrahimi, T. Wenisch, John Danskin, S. Keckler
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引用次数: 42

Abstract

Cache coherence is ubiquitous in shared memory multiprocessors because it provides a simple, high performance memory abstraction to programmers. Recent work suggests extending hardware cache coherence between CPUs and GPUs to help support programming models with tightly coordinated sharing between CPU and GPU threads. However, implementing hardware cache coherence is particularly challenging in systems with discrete CPUs and GPUs that may not be produced by a single vendor. Instead, we propose, selective caching, wherein we disallow GPU caching of any memory that would require coherence updates to propagate between the CPU and GPU, thereby decoupling the GPU from vendor-specific CPU coherence protocols. We propose several architectural improvements to offset the performance penalty of selective caching: aggressive request coalescing, CPU-side coherent caching for GPU-uncacheable requests, and a CPU-GPU interconnect optimization to support variable-size transfers. Moreover, current GPU workloads access many read-only memory pages; we exploit this property to allow promiscuous GPU caching of these pages, relying on page-level protection, rather than hardware cache coherence, to ensure correctness. These optimizations bring a selective caching GPU implementation to within 93% of a hardware cache-coherent implementation without the need to integrate CPUs and GPUs under a single hardware coherence protocol.
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选择性GPU缓存,消除CPU-GPU HW缓存一致性
缓存一致性在共享内存多处理器中无处不在,因为它为程序员提供了一个简单、高性能的内存抽象。最近的工作建议扩展CPU和GPU之间的硬件缓存一致性,以帮助支持CPU和GPU线程之间紧密协调共享的编程模型。然而,在具有离散cpu和gpu的系统中实现硬件缓存一致性尤其具有挑战性,这些系统可能不是由单一供应商生产的。相反,我们建议选择性缓存,其中我们不允许GPU缓存任何需要在CPU和GPU之间传播一致性更新的内存,从而将GPU与供应商特定的CPU一致性协议解耦。我们提出了几个架构改进来抵消选择性缓存的性能损失:积极的请求合并,cpu端对gpu不可缓存请求的一致缓存,以及CPU-GPU互连优化以支持可变大小的传输。此外,当前的GPU工作负载访问许多只读内存页面;我们利用这个属性来允许这些页面的混杂GPU缓存,依赖于页面级保护,而不是硬件缓存一致性,以确保正确性。这些优化使选择性缓存GPU实现在硬件缓存一致性实现的93%以内,而不需要在单个硬件一致性协议下集成cpu和GPU。
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