CNTK学习笔记 -- Computation Network part 1 -- Forward and Backward Algorithm
2016-08-24 13:34
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本文介绍了CNTK中如何确定神经网络中节点在正向传播两种更新方法(同步和异步)中的计算步骤,如何避免反向传播过程中重复计算高维度梯度数据的方法。
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