# How can I convert a tensor into a numpy array in TensorFlow?

How to convert a tensor into a numpy array when using Tensorflow with Python bindings?

• If you are using tensorflow 2.0, then eager execution is enabled by default, so you can just call `tensor.numpy()` to get a NumPy array as shown in this answer. – cs95 Jun 12 at 19:10

## 7 Answers

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]],,[1,2]))))
<class 'tensorflow.python.framework.sparse_tensor.SparseTensorValue'>
``````

To convert back from tensor to numpy array you can simply run `.eval()` on the transformed tensor.

• to clarify: yourtensor.eval() – mrk Nov 20 '17 at 17:02
• I 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
• @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 at 20:39

You need to:

1. encode the image tensor in some format (jpeg, png) to binary tensor
2. evaluate (run) the binary tensor in a session
3. turn the binary to stream
4. feed to PIL image
5. (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
``````

# TensorFlow 2.0

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)

tf.multiply(a, b).numpy()
# array([[ 2,  6],
#        [12, 20]], dtype=int32)
``````

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.

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.

Maybe you can try，this method:

``````import tensorflow as tf
W1 = tf.Variable(tf.random_uniform(, -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!

• `//` is not for commenting in python. Please edit your answer. – Vlad Mar 17 at 12:58

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