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Random Tensor Initialization
For many deep learning procedures, such as initializing the parameters of neural networks, tensor elements must be sampled randomly and independently from a specific probability distribution. A common programmatic operation is to generate a tensor of a given shape where the values are drawn from a standard Gaussian (normal) distribution, which has a mean of and a standard deviation of .
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Tensor Element Summation
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Random Tensor Initialization
Programmatic Construction of Tensors from Nested Lists
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