Deploy Large-Scale Deep Neural Networks in Resource Constrained IoT Devices with Local Quantization Region

24 May 2018 Yi Yang Andy Chen Xiaoming Chen Jiang Ji Zhenyang Chen Yan Dai

Implementing large-scale deep neural networks with high computational complexity on low-cost IoT devices may inevitably be constrained by limited computation resource, making the devices hard to respond in real-time. This disjunction makes the state-of-art deep learning algorithms, i.e. CNN (Convolutional Neural Networks), incompatible with IoT world... (read more)

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