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DYNAMIC QUANTIZATION FOR DEEP NEURAL NETWORK INFERENCE SYSTEM AND METHOD

机译:深度神经网络推理系统和方法的动态量化

摘要

A method for dynamically quantizing feature maps of a received image. The method includes convolving an image based on a predicted maximum value, a predicted minimum value, trained kernel weights and the image data. The input data is quantized based on the predicted minimum value and predicted maximum value. The output of the convolution is computed into an accumulator and re-quantized. The re-quantized value is output to an external memory. The predicted min value and the predicted max value are computed based on the previous max values and min values with a weighted average or a pre-determined formula. Initial min value and max value are computed based on known quantization methods and utilized for initializing the predicted min value and predicted max value in the quantization process.
机译:一种动态地量化接收图像的特征映射的方法。该方法包括基于预测的最大值,预测的最小值,训练的内核权重和图像数据卷积图像。基于预测的最小值和预测的最大值来量化输入数据。将卷积的输出计算成累加器并重新呈现。重新量化值输出到外部存储器。基于以加权平均值或预定公式的先前的最大值和最小值计算预测的最小值和预测的最大值。基于已知的量化方法计算初始MIN值和最大值,并用于初始化预测的MIN值和预测量化过程中的最大值。

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