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A 4.9 mW neural network task scheduler for congestion-minimized network-on-chip in multi-core systems

机译:用于多核系统中拥塞最小的片上网络的4.9 mW神经网络任务调度程序

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A neural network task scheduler (NNTS) is proposed for the congestion-minimized network-on-chip in multi-core systems. The NNTS is composed of a near-optimal task assignment (NOTA) algorithm and a reconfigurable precision neural network accelerator (RP-NNA). The NOTA adopting a neural network is proposed to predict and avoid the network congestion intelligently. And the RP-NNA is implemented to improve the throughput of NOTA with dynamically adjustable precision. In the case that the NNTS is integrated into a NoC-based multi-core SoC for the augmented reality applications, 79.2% prediction accuracy of NoC communication pattern is achieved and the overall latency is reduced by 24.4%. As a result, the RP-NNA consumes only 4.9 mW and improves the energy efficiency of system by 22.7%.
机译:针对多核系统中的拥塞最小化片上网络,提出了一种神经网络任务调度器(NNTS)。 NNTS由近乎最优的任务分配(NOTA)算法和可重构的精密神经网络加速器(RP-NNA)组成。提出了采用神经网络的NOTA算法来智能地预测和避免网络拥塞。 RP-NNA的实现可动态调整精度,以提高NOTA的吞吐量。如果将NNTS集成到用于增强现实应用的基于NoC的多核SoC中,则NoC通信模式的预测精度将达到79.2%,总延迟减少24.4%。结果,RP-NNA仅消耗4.9 mW,将系统的能源效率提高了22.7%。

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