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CMix-NN: Mixed Low-Precision CNN Library for Memory-Constrained Edge Devices

机译:CMIX-NN:用于内存受限边缘设备的混合低精度CNN库

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Low-precision integer arithmetic is a necessary ingredient for enabling Deep Learning inference on tiny and resource-constrained IoT edge devices. This brief presents CMix-NN, a flexible open-sourceCMix-NN is available at https://github.com/EEESlab/CMix-NN. mixed low-precision (independent tensors quantization of weight and activations at 8, 4, 2 bits) inference library for low bitwidth Quantized Networks. CMix-NN efficiently supports both Per-Layer and Per-Channel quantization strategies of weights and activations. Thanks to CMix-NN, we deploy on an STM32H7 microcontroller a set of Mobilenet family networks with the largest input resolutions ( $224imes 224$ ) and higher accuracies (up to 68% Top1) when compressed with a mixed low precision technique, achieving up to +8% accuracy improvement concerning any other published solution for MCU devices.
机译:低精度整数算法是用于在微小和资源受限的物联网边缘设备上实现深度学习推断的必要成分。本简要介绍了CMIX-NN,可在HTTPS://github.com/eeeslab/cmix-nn获得灵活的开放酶。混合低精度(独立张量值的重量和激活8,4,2位)推理库,用于低位宽量化网络。 CMIX-NN有效地支持重量和激活的每层和每个通道量化策略。由于CMIX-NN,我们在STM32H7微控制器上部署了一套MobileNet系列网络,最大的输入分辨率(224美元224美元),并且在用混合低精度技术压缩时,更高的精度(最多68%TOP1),实现关于MCU器件的任何其他已发布的解决方案,高达+ 8%的准确性提高。

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