install.packages('keras')
targets
are in the top k
predictions
.x
in train phase, and alt
otherwise.axis
.indices
in the tensor reference
.variables
w.r.t. loss
.x
in test phase, and alt
otherwise.x
to zero at random, while scaling the entire tensor.x
is a placeholder.x
by n
.x
is a symbolic tensor.message
and the tensor value when evaluated.x
is a Keras tensor.x
to new_x
.x
by adding increment
.axis
.R
tensors into a rank R+1
tensor.x
by subtracting decrement
.variables
but with zero gradient w.r.t. every other variable.