How to convert a tensor into a numpy array when using Tensorflow with Python bindings?
TensorFlow 2.x
Eager Execution is enabled by default, so just call .numpy()
on the Tensor object.
import tensorflow as tf
a = tf.constant([[1, 2], [3, 4]])
b = tf.add(a, 1)
a.numpy()
# array([[1, 2],
# [3, 4]], dtype=int32)
b.numpy()
# array([[2, 3],
# [4, 5]], dtype=int32)
tf.multiply(a, b).numpy()
# array([[ 2, 6],
# [12, 20]], dtype=int32)
See NumPy Compatibility for more. It is worth noting (from the docs),
Numpy array may share memory with the Tensor object. Any changes to one may be reflected in the other.
Bold emphasis mine. A copy may or may not be returned, and this is an implementation detail based on whether the data is in CPU or GPU (in the latter case, a copy has to be made from GPU to host memory).
But why am I getting AttributeError: 'Tensor' object has no attribute 'numpy'
?.
A lot of folks have commented about this issue, there are a couple of possible reasons:
 TF 2.0 is not correctly installed (in which case, try reinstalling), or
 TF 2.0 is installed, but eager execution is disabled for some reason. In such cases, call
tf.compat.v1.enable_eager_execution()
to enable it, or see below.
If Eager Execution is disabled, you can build a graph and then run it through tf.compat.v1.Session
:
a = tf.constant([[1, 2], [3, 4]])
b = tf.add(a, 1)
out = tf.multiply(a, b)
out.eval(session=tf.compat.v1.Session())
# array([[ 2, 6],
# [12, 20]], dtype=int32)
See also TF 2.0 Symbols Map for a mapping of the old API to the new one.

6

26I get the following error in TF 2.0: "'Tensor' object has no attribute 'numpy'" – Will.Evo Dec 16 '19 at 16:34

10No I did not disable eager execution. Still get AttributeError: 'Tensor' object has no attribute 'numpy' – Geoffrey Anderson Feb 12 '20 at 19:36

5why do I get an AttributeError: 'Tensor' object has no attribute 'numpy' – zheyuanWang Aug 7 '20 at 9:58

1The tensor I was using had a gradient in addition to its value. I used
mytensor.detach().numpy()
. – Akhil Dec 19 '20 at 6:59
Any tensor returned by Session.run
or eval
is a NumPy array.
>>> print(type(tf.Session().run(tf.constant([1,2,3]))))
<class 'numpy.ndarray'>
Or:
>>> sess = tf.InteractiveSession()
>>> print(type(tf.constant([1,2,3]).eval()))
<class 'numpy.ndarray'>
Or, equivalently:
>>> sess = tf.Session()
>>> with sess.as_default():
>>> print(type(tf.constant([1,2,3]).eval()))
<class 'numpy.ndarray'>
EDIT: Not any tensor returned by Session.run
or eval()
is a NumPy array. Sparse Tensors for example are returned as SparseTensorValue:
>>> print(type(tf.Session().run(tf.SparseTensor([[0, 0]],[1],[1,2]))))
<class 'tensorflow.python.framework.sparse_tensor.SparseTensorValue'>

3

If eval alone suffices, what is the reason for having Session.run or InteractiveSession in all of these options? – Ceph Jul 24 '20 at 17:21

1@Ceph If you run without a session, you get the following error:
ValueError: Cannot evaluate tensor using 'eval()': No default session is registered. Use 'with sess.as_default()' or pass an explicit session to 'eval(session=sess)'
– Leland Hepworth May 13 at 15:33
To convert back from tensor to numpy array you can simply run .eval()
on the transformed tensor.

5

18I get
ValueError: Cannot evaluate tensor using 'eval()': No default session is registered. Use 'with sess.as_default()' or pass an explicit session to 'eval(session=sess)'
Is this usable only during a tensoflow session? – Eduardo Pignatelli Apr 26 '18 at 11:16 
@EduardoPignatelli It works for me in Theano with no extra work. Not sure about tf. – BallpointBen May 9 '18 at 15:27

5@EduardoPignatelli you need to run the
.eval()
method call from inside a session:sess = tf.Session(); with sess.as_default(): print(my_tensor.eval())
– duhaime Oct 23 '18 at 15:16 
By using this I am getting error as AttributeError: 'Tensor' object has no attribute 'eval' – Aakash aggarwal Feb 4 '19 at 20:39
You need to:
 encode the image tensor in some format (jpeg, png) to binary tensor
 evaluate (run) the binary tensor in a session
 turn the binary to stream
 feed to PIL image
 (optional) displaythe image with matplotlib
Code:
import tensorflow as tf
import matplotlib.pyplot as plt
import PIL
...
image_tensor = <your decoded image tensor>
jpeg_bin_tensor = tf.image.encode_jpeg(image_tensor)
with tf.Session() as sess:
# display encoded back to image data
jpeg_bin = sess.run(jpeg_bin_tensor)
jpeg_str = StringIO.StringIO(jpeg_bin)
jpeg_image = PIL.Image.open(jpeg_str)
plt.imshow(jpeg_image)
This worked for me. You can try it in a ipython notebook. Just don't forget to add the following line:
%matplotlib inline
Maybe you can try，this method:
import tensorflow as tf
W1 = tf.Variable(tf.random_uniform([1], 1.0, 1.0))
init = tf.global_variables_initializer()
sess = tf.Session()
sess.run(init)
array = W1.eval(sess)
print (array)
I have faced and solved the tensor>ndarray conversion in the specific case of tensors representing (adversarial) images, obtained with cleverhans library/tutorials.
I think that my question/answer (here) may be an helpful example also for other cases.
I'm new with TensorFlow, mine is an empirical conclusion:
It seems that tensor.eval() method may need, in order to succeed, also the value for input placeholders.
Tensor may work like a function that needs its input values (provided into feed_dict
) in order to return an output value, e.g.
array_out = tensor.eval(session=sess, feed_dict={x: x_input})
Please note that the placeholder name is x in my case, but I suppose you should find out the right name for the input placeholder.
x_input
is a scalar value or array containing input data.
In my case also providing sess
was mandatory.
My example also covers the matplotlib image visualization part, but this is OT.
A simple example could be,
import tensorflow as tf
import numpy as np
a=tf.random_normal([2,3],0.0,1.0,dtype=tf.float32) #sampling from a std normal
print(type(a))
#<class 'tensorflow.python.framework.ops.Tensor'>
tf.InteractiveSession() # run an interactive session in Tf.
n now if we want this tensor a to be converted into a numpy array
a_np=a.eval()
print(type(a_np))
#<class 'numpy.ndarray'>
As simple as that!
I was searching for days for this command.
This worked for me outside any session or somthing like this.
# you get an array = your tensor.eval(session=tf.compat.v1.Session())
an_array = a_tensor.eval(session=tf.compat.v1.Session())
https://kite.com/python/answers/howtoconvertatensorflowtensortoanumpyarrayinpython
You can use keras backend function.
import tensorflow as tf
from tensorflow.python.keras import backend
sess = backend.get_session()
array = sess.run(< Tensor >)
print(type(array))
<class 'numpy.ndarray'>
I hope it helps!
If you see there is a method _numpy(), e.g for an EagerTensor simply call the above method and you will get an ndarray.
You can convert a tensor in tensorflow
to numpy
array in the following ways.
First:
Use np.array(your_tensor)
Second:
Use your_tensor.numpy

1np.array(your_tensor) didnot work. NotImplementedError: Cannot convert a symbolic Tensor (truediv:0) to a numpy array. This error may indicate that you're trying to pass a Tensor to a NumPy call, which is not supported – Sreeragh A R Mar 30 at 9:22