# Slicing tensor with list - TensorFlow

Is there a way to accomplish this method of slicing in Tensorflow (example shown using numpy)?

``````z = np.random.random((3,7,7,12))
x = z[...,[0,5]]
``````

such that

``````x_hat = np.concatenate([z[...,[0]], z[...,[5]]], 3)
assert np.all(x == x_hat)
x.shape # (3, 7, 7, 2)
``````

in Tensorflow, this operation

``````tfz = tf.constant(z)
i = np.array([0,5] dtype=np.int32)
tfx = tfz[...,i]
``````

throws the error

``````ValueError: Shapes must be equal rank, but are 0 and 1
From merging shape 0 with other shapes. for 'strided_slice/stack_1' (op: 'Pack') with input shapes: [], [2].
``````

You need a reshape to make the result of concatenation consistent with the original shape (the first 3 dimensions).

``````z = np.arange(36)
tfz = tf.reshape(tf.constant(z), [2, 3, 2, 3])
slice1 = tf.reshape(tfz[:,:,:,1], [2, 3, -1, 1])
slice2 = tf.reshape(tfz[:,:,:,2], [2, 3, -1, 1])
slice = tf.concat([slice1, slice2], axis=3)

with tf.Session() as sess:
print sess.run([tfz, slice])

> [[[[ 0,  1,  2],
[ 3,  4,  5]],

[[ 6,  7,  8],
[ 9, 10, 11]],

[[12, 13, 14],
[15, 16, 17]]],

[[[18, 19, 20],
[21, 22, 23]],

[[24, 25, 26],
[27, 28, 29]],

[[30, 31, 32],
[33, 34, 35]]]]

# Get the last two columns
> [[[[ 1,  2],
[ 4,  5]],

[[ 7,  8],
[10, 11]],

[[13, 14],
[16, 17]]],

[[[19, 20],
[22, 23]],

[[25, 26],
[28, 29]],

[[31, 32],
[34, 35]]]]
``````

It is a shape error like greeness said. Unfortunately, there doesn't seem to be a simple way of doing it like I hoped, but this is the generalized solution I came up with:

``````def list_slice(tensor, indices, axis):
"""
Args
----
tensor (Tensor) : input tensor to slice
indices ( [int] ) : list of indices of where to perform slices
axis (int) : the axis to perform the slice on
"""

slices = []

## Set the shape of the output tensor.
# Set any unknown dimensions to -1, so that reshape can infer it correctly.
# Set the dimension in the slice direction to be 1, so that overall dimensions are preserved during the operation
shape = tensor.get_shape().as_list()
shape[shape==None] = -1
shape[axis] = 1

nd = len(shape)

for i in indices:
_slice = [slice(None)]*nd
_slice[axis] = slice(i,i+1)
slices.append(tf.reshape(tensor[_slice], shape))

return tf.concat(slices, axis=axis)

z = np.random.random(size=(3, 7, 7, 12))
x = z[...,[0,5]]
tfz = tf.constant(z)
tfx_hat = list_slice(tfz, [0, 5], axis=3)
x_hat = tfx_hat.eval()

assert np.all(x == x_hat)
``````
• I like your generalization. – greeness Oct 25 '17 at 18:12

``````x = tf.stack([tfz[..., i] for i in [0,5]], axis=-1)
``````

This works for me:

``````z = np.random.random((3,7,7,12))
tfz = tf.constant(z)
x = tf.stack([tfz[..., i] for i in [0,5]], axis=-1)

x_hat = np.concatenate([z[...,[0]], z[...,[5]]], 3)

with tf.Session() as sess:
x_run = sess.run(x)

assert np.all(x_run == x_hat)
``````