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A 2 GOPS quad-mean shift processor with early termination for machine learning applications

机译:具有提前终止功能的2 GOPS四均值移位处理器,适用于机器学习应用

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This paper proposes a 2 GOPS quad-mean shift processor (Q-MSP) architecture for data clustering and machine learning applications. By exploiting the linear approximation approach and early termination mechanism, the proposed algorithm can reduce 70% and 40% computational complexity, respectively. Moreover, 4 mean shift processor cores are integrated into the proposed architecture to support parallel processing to further improve system performance. Implemented in Xilinx Virtex-7 FPGA, this architecture occupies 65k LUTs and 3.3MB block memory to achieve 2 GOPS throughput operated at 125MHz.
机译:本文提出了一种用于数据聚类和机器学习应用的2 GOPS四均值移位处理器(Q-MSP)架构。通过利用线性逼近方法和提前终止机制,该算法可以分别降低70%和40%的计算复杂度。此外,将4个均值移位处理器内核集成到建议的体系结构中,以支持并行处理,以进一步提高系统性能。该架构在Xilinx Virtex-7 FPGA中实现,占用65k LUT和3.3MB块存储器,以125MHz的频率实现2 GOPS的吞吐量。

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