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Improve memory access for achieving both performance and energy efficiencies on heterogeneous systems

机译:改善内存访问,以实现异构系统上的性能和能源效率

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Hardware accelerators are capable of achieving significant performance improvement for many applications. In this work we demonstrate that it is critical to provide sufficient memory access bandwidth for accelerators to improve the performance and reduce energy consumption. We use the scale-invariant feature transform (SIFT) algorithm as a case study in which three bottleneck stages are accelerated on hardware logic. Based on different memory access patterns of SIFT algorithms, two different approaches are designed to accelerate different functions in SIFT on the Xilinx Zynq-7045 device. In the first approach, convolution is accelerated by designing fully customized hardware accelerator. On top of it, three interfacing methods are analyzed. In the second approach, a distributed multi-processor hardware system with its programming model is built to handle inconsecutive memory accesses. Furthermore, the last level cache (LLC) on the host processor is shared by all slaves to achieve better performance. Experiment results on the Zynq-7045 device show that the hybrid design in which two approaches are combined can achieve ~10 times and better improvement for both performance improvement and energy reduction compared with the pure software implementation for the convolution stage and the SIFT algorithm, respectively.
机译:硬件加速器能够为许多应用程序实现显着的性能改进。在这项工作中,我们证明了为加速器提供足够的内存访问带宽以提高性能和降低能耗至关重要。我们使用尺度不变特征变换(SIFT)算法作为案例研究,其中在硬件逻辑上加速了三个瓶颈阶段。基于SIFT算法的不同内存访问模式,设计了两种不同的方法来加速Xilinx Zynq-7045器件上SIFT中的不同功能。在第一种方法中,通过设计完全定制的硬件加速器来加速卷积。在此基础上,分析了三种接口方法。在第二种方法中,构建具有其编程模型的分布式多处理器硬件系统来处理不连续的内存访问。此外,主机上的最后一级缓存(LLC)由所有从机共享,以实现更好的性能。在Zynq-7045器件上进行的实验结果表明,与卷积级和SIFT算法的纯软件实现相比,两种方法相结合的混合设计在性能改进和能耗降低方面可分别实现约10倍的改进和更好的改进。 。

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