I define a tensor like this:
x = tf.get_variable(\"x\", [100])
But when I try to print shape of tensor :
print( tf.shape(x) )
tf.shape(input, name=None) returns a 1-D integer tensor representing the shape of input.
You're looking for: x.get_shape()
that returns the TensorShape
of the x
variable.
Update: I wrote an article to clarify the dynamic/static shapes in Tensorflow because of this answer: https://pgaleone.eu/tensorflow/2018/07/28/understanding-tensorflow-tensors-shape-static-dynamic/
Similar question is nicely explained in TF FAQ:
In TensorFlow, a tensor has both a static (inferred) shape and a dynamic (true) shape. The static shape can be read using the
tf.Tensor.get_shape
method: this shape is inferred from the operations that were used to create the tensor, and may be partially complete. If the static shape is not fully defined, the dynamic shape of a Tensor t can be determined by evaluatingtf.shape(t)
.
So tf.shape() returns you a tensor, will always have a size of shape=(N,)
, and can be calculated in a session:
a = tf.Variable(tf.zeros(shape=(2, 3, 4)))
with tf.Session() as sess:
print sess.run(tf.shape(a))
On the other hand you can extract the static shape by using x.get_shape().as_list()
and this can be calculated anywhere.
Simply, use tensor.shape
to get the static shape:
In [102]: a = tf.placeholder(tf.float32, [None, 128])
# returns [None, 128]
In [103]: a.shape.as_list()
Out[103]: [None, 128]
Whereas to get the dynamic shape, use tf.shape()
:
dynamic_shape = tf.shape(a)
You can also get the shape as you'd in NumPy with your_tensor.shape
as in the following example.
In [11]: tensr = tf.constant([[1, 2, 3, 4, 5], [2, 3, 4, 5, 6]])
In [12]: tensr.shape
Out[12]: TensorShape([Dimension(2), Dimension(5)])
In [13]: list(tensr.shape)
Out[13]: [Dimension(2), Dimension(5)]
In [16]: print(tensr.shape)
(2, 5)
Also, this example, for tensors which can be eval
uated.
In [33]: tf.shape(tensr).eval().tolist()
Out[33]: [2, 5]
Just a quick example, to make things clear:
a = tf.Variable(tf.zeros(shape=(2, 3, 4)))
print('-'*60)
print("v1", tf.shape(a))
print('-'*60)
print("v2", a.get_shape())
print('-'*60)
with tf.Session() as sess:
print("v3", sess.run(tf.shape(a)))
print('-'*60)
print("v4",a.shape)
Output will be:
------------------------------------------------------------
v1 Tensor("Shape:0", shape=(3,), dtype=int32)
------------------------------------------------------------
v2 (2, 3, 4)
------------------------------------------------------------
v3 [2 3 4]
------------------------------------------------------------
v4 (2, 3, 4)
Also this should be helpful: How to understand static shape and dynamic shape in TensorFlow?
Tensorflow 2.0 Compatible Answer: Tensorflow 2.x (>= 2.0)
compatible answer for nessuno's solution is shown below:
x = tf.compat.v1.get_variable("x", [100])
print(x.get_shape())
Clarification:
tf.shape(x) creates an op and returns an object which stands for the output of the constructed op, which is what you are printing currently. To get the shape, run the operation in a session:
matA = tf.constant([[7, 8], [9, 10]])
shapeOp = tf.shape(matA)
print(shapeOp) #Tensor("Shape:0", shape=(2,), dtype=int32)
with tf.Session() as sess:
print(sess.run(shapeOp)) #[2 2]
credit: After looking at the above answer, I saw the answer to tf.rank function in Tensorflow which I found more helpful and I have tried rephrasing it here.