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Enabling Deep Learning at the LoT Edge

机译:在LoT Edge上启用深度学习

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Deep learning algorithms have demonstrated super-human capabilities in many cognitive tasks, such as image classification and speech recognition. As a result, there is an increasing interest in deploying neural networks (NNs) on low-power processors found in always-on systems, such as those based on Arm Cortex-M microcontrollers. In this paper, we discuss the challenges of deploying neural networks on microcontrollers with limited memory, compute resources and power budgets. We introduce CMSIS-NN, a library of optimized software kernels to enable deployment of NNs on Cortex-M cores. We also present techniques for NN algorithm exploration to develop light-weight models suitable for resource constrained systems, using keyword spotting as an example.
机译:深度学习算法在许多认知任务中展示了超级人类能力,例如图像分类和语音识别。结果,对在始终开启系统中的低功耗处理器上部署神经网络(NNS)的越来越感兴趣,例如基于ARM Cortex-M微控制器的那些。在本文中,我们讨论了在带有有限的微控制器上部署神经网络的挑战,计算资源和电源预算。我们介绍CMSI-NN,一个优化的软件内核库,以便在Cortex-M内核上部署NNS。我们还提供了NN算法探索的技术,以开发适合资源受限系统的轻量级模型,以便使用关键字斑点作为示例。

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