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CIRCUITRY FOR LOW-PRECISION DEEP LEARNING

机译:低精度深度学习电路

摘要

The present disclosure relates generally to techniques for improving the implementation of certain operations on an integrated circuit. In particular, deep learning techniques, which may use a deep neural network (DNN) topology, may be implemented more efficiently using low-precision weights and activation values by efficiently performing down conversion of data to a lower precision and by preventing data overflow during suitable computations. Further, by more efficiently mapping multipliers to programmable logic on the integrated circuit device, the resources used by the DNN topology to perform, for example, inference tasks may be reduced, resulting in improved integrated circuit operating speeds.
机译:本公开总体上涉及用于改进集成电路上某些操作的实现的技术。尤其是,可以通过使用低权重和激活值,通过有效地将数据向下转换为较低的精度并通过在适当的时候防止数据溢出来使用低精度权重和激活值更有效地实现可以使用深度神经网络(DNN)拓扑的深度学习技术计算。此外,通过将乘法器更有效地映射到集成电路设备上的可编程逻辑,可以减少DNN拓扑用于执行例如推理任务的资源,从而提高集成电路的工作速度。

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