加速无线信道仿真的非均匀DFT FPGA实现(仅摘要)

Srinivas Siripurapu, Aman Gayasen, P. Gopalakrishnan, N. Chandrachoodan
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引用次数: 0

摘要

fpga在学习、搜索、基因组学、信号处理、压缩、分析等领域都被用作加速器。近年来,高级合成等工具和流程的可用性使得在fpga上加速各种高性能计算应用变得更加容易。在本文中,我们提出了一种系统的方法来优化加速块的性能,使用计算强度的概念来指导高级合成中的优化。我们在非均匀离散傅里叶变换(NUDFT)的FPGA实现上证明了我们的方法的有效性,该方法用于将无线信道模型从时域转换到频域。这种特殊计算的加速可以用来提高无线信道仿真的性能和容量,在无线网络的系统级设计和性能评估中有着广泛的应用。我们的结果表明,通过加速块的吞吐量测量,我们的FPGA实现的性能分别比卸载到gpu和cpu上的相同代码高1.6倍和10倍。与gpu和cpu相比,每瓦特的性能提升分别为15.6倍和41.5倍。
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FPGA Implementation of Non-Uniform DFT for Accelerating Wireless Channel Simulations (Abstract Only)
FPGAs have been used as accelerators in a wide variety of domains such as learning, search, genomics, signal processing, compression, analytics and so on. In recent years, the availability of tools and flows such as high-level synthesis has made it even easier to accelerate a variety of high-performance computing applications onto FPGAs. In this paper we propose a systematic methodology for optimizing the performance of an accelerated block using the notion of compute intensity to guide optimizations in high-level synthesis. We demonstrate the effectiveness of our methodology on an FPGA implementation of a non-uniform discrete Fourier transform (NUDFT), used to convert a wireless channel model from the time-domain to the frequency domain. The acceleration of this particular computation can be used to improve the performance and capacity of wireless channel simulation, which has wide applications in the system level design and performance evaluation of wireless networks. Our results show that our FPGA implementation outperforms the same code offloaded onto GPUs and CPUs by 1.6x and 10x respectively, in performance as measured by the throughput of the accelerated block. The gains in performance per watt versus GPUs and CPUs are 15.6x and 41.5x respectively.
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