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A Manycore Processor Based Multilayer Perceptron Feedforward Acceleration Framework for Embedded System

机译:基于多层处理器的Multilayer Perceptron前馈加速度加速框架,用于嵌入式系统

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Because of the complex architecture and multiple iterations algorithm, neural network is sometimes hard for traditional embedded devices to meet the needs of real-time processing speed in large scale data applications. Manycore processors are directly applicable for parallel implementation of the neural network. In this paper we present a multilayer perception feed forward acceleration framework based on power efficiency manycore processor, including network mapping strategy, data structure design and inter-core communication method. The framework is implemented on a Zynq and Epiphany combined hardware platform with OpenCL. The experimental results show that in a concrete example of character recognition, the framework with Epiphany achieves about four times feed forward acceleration than the dual-core ARM in Zynq with same prediction accuracy level.
机译:由于复杂的架构和多次迭代算法,神经网络有时对于传统的嵌入式设备很难满足大规模数据应用中实时处理速度的需要。多芯处理器直接适用于神经网络的并行实现。在本文中,我们提出了一种基于功率效率的多层感知馈送前进加速框架,包括网络映射策略,数据结构设计和核心通信方法。该框架是在Zynq和Epiphany组合硬件平台上实现,具有OpenCL。实验结果表明,在字符识别的具体示例中,与EPIphany的框架实现了比Zynq中的双芯臂具有相同预测精度水平的四倍馈送前进加速度。

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