A locality-aware memory hierarchy for energy-efficient GPU architectures | IEEE Conference Publication | IEEE Xplore

A locality-aware memory hierarchy for energy-efficient GPU architectures


Abstract:

As GPU's compute capabilities grow, their memory hierarchy increasingly becomes a bottleneck. Current GPU memory hierarchies use coarse-grained memory accesses to exploit...Show More

Abstract:

As GPU's compute capabilities grow, their memory hierarchy increasingly becomes a bottleneck. Current GPU memory hierarchies use coarse-grained memory accesses to exploit spatial locality, maximize peak bandwidth, simplify control, and reduce cache meta-data storage. These coarse-grained memory accesses, however, are a poor match for emerging GPU applications with irregular control flow and memory access patterns. Meanwhile, the massive multi-threading of GPUs and the simplicity of their cache hierarchies make CPU-specific memory system enhancements ineffective for improving the performance of irregular GPU applications. We design and evaluate a locality-aware memory hierarchy for throughput processors, such as GPUs. Our proposed design retains the advantages of coarse-grained accesses for spatially and temporally local programs while permitting selective fine-grained access to memory. By adaptively adjusting the access granularity, memory bandwidth and energy are reduced for data with low spatial/temporal locality without wasting control overheads or prefetching potential for data with high spatial locality. As such, our locality-aware memory hierarchy improves GPU performance, energy-efficiency, and memory throughput for a large range of applications.
Date of Conference: 07-11 December 2013
Date Added to IEEE Xplore: 09 February 2017
ISBN Information:
Conference Location: Davis, CA, USA

Contact IEEE to Subscribe

References

References is not available for this document.