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LOW PRECISION DEEP NEURAL NETWORK ENABLED BY COMPENSATION INSTRUCTIONS

机译:通过补偿指令实现的低精度深层神经网络

摘要

A compensated deep neural network (compensated-DNN) is provided. A first vector having a set of components and a second vector having a set of corresponding components are received. A component of the first vector includes a first quantized value and a first compensation instruction,and a corresponding component of the second vector includes a second quantized value and a second compensation instruction. The first quantized value is multiplied with the second quantized value to compute a raw product value. The raw product value is compensated for a quantization error according to the first and second compensation instructions to produce a compensated product value. The compensated product value is added into an accumulated value for the dot product. The accumulated value is converted into an output vector of the dot product. The output vector includes an output quantized value and an output compensation instruction.
机译:提供了一种补偿的深度神经网络(compensated-DNN)。接收具有一组分量的第一矢量和具有一组相应分量的第二矢量。第一向量的分量包括第一量化值和第一补偿指令,第二向量的对应分量包括第二量化值和第二补偿指令。将第一量化值与第二量化值相乘以计算原始产品值。根据第一和第二补偿指令对原始产品值进行量化误差补偿,以产生补偿后的产品值。补偿的乘积值被加到点乘积的累加值中。累加值转换为点积的输出向量。输出向量包括输出量化值和输出补偿指令。

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