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Unpacks the given dimension of a rank-R tensor into rank-(R-1) tensors.
tf.unstack(
value, num=None, axis=0, name='unstack'
)
Unpacks tensors from value by chipping it along the axis dimension.
x = tf.reshape(tf.range(12), (3,4)) p, q, r = tf.unstack(x) p.shape.as_list() [4]
i, j, k, l = tf.unstack(x, axis=1) i.shape.as_list() [3]
This is the opposite of stack.
x = tf.stack([i, j, k, l], axis=1)
More generally if you have a tensor of shape (A, B, C, D):
A, B, C, D = [2, 3, 4, 5] t = tf.random.normal(shape=[A, B, C, D])
The number of tensor returned is equal to the length of the target axis:
axis = 2 items = tf.unstack(t, axis=axis) len(items) == t.shape[axis] True
The shape of each result tensor is equal to the shape of the input tensor, with the target axis removed.
items[0].shape.as_list() # [A, B, D] [2, 3, 5]
The value of each tensor items[i] is equal to the slice of input across axis at index i:
for i in range(len(items)): slice = t[:,:,i,:] assert tf.reduce_all(slice == items[i])
With eager execution you can unstack the 0th axis of a tensor using python's iterable unpacking:
t = tf.constant([1,2,3]) a,b,c = t
unstack is still necessary because Iterable unpacking doesn't work in a @tf.function: Symbolic tensors are not iterable.
You need to use tf.unstack here:
@tf.function def bad(t): a,b,c = t return a bad(t) Traceback (most recent call last): OperatorNotAllowedInGraphError: ...
@tf.function def good(t): a,b,c = tf.unstack(t) return a good(t).numpy() 1
Eager tensors have concrete values, so their shape is always known. Inside a tf.function the symbolic tensors may have unknown shapes. If the length of axis is unknown tf.unstack will fail because it cannot handle an unknown number of tensors:
@tf.function(input_signature=[tf.TensorSpec([None], tf.float32)]) def bad(t): tensors = tf.unstack(t) return tensors[0] bad(tf.constant([1,2,3])) Traceback (most recent call last): ValueError: Cannot infer argument `num` from shape (None,)
If you know the axis length you can pass it as the num argument. But this must be a constant value.
If you actually need a variable number of tensors in a single tf.function trace, you will need to use exlicit loops and a tf.TensorArray instead.
| Args | |
|---|---|
value | A rank R > 0 Tensor to be unstacked. |
num | An int. The length of the dimension axis. Automatically inferred if None (the default). |
axis | An int. The axis to unstack along. Defaults to the first dimension. Negative values wrap around, so the valid range is [-R, R). |
name | A name for the operation (optional). |
| Returns | |
|---|---|
The list of Tensor objects unstacked from value. |
| Raises | |
|---|---|
ValueError | If axis is out of the range [-R, R). |
ValueError | If num is unspecified and cannot be inferred. |
InvalidArgumentError | If num does not match the shape of value. |
© 2022 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 4.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/versions/r2.9/api_docs/python/tf/unstack