18

I'm trying to implement a simple logistic regression model trained with my own set of images, but I am getting this error when I try to train the model:

Traceback (most recent call last):
File "main.py", line 26, in <module>
model.entrenar_modelo(sess, training_images, training_labels)
File "/home/jr/Desktop/Dropbox/Machine_Learning/TF/Míos/Hip/model_log_reg.py", line 24, in entrenar_modelo
train_step.run({x: batch_xs, y_: batch_ys})
File "/home/jr/.local/lib/python2.7/site-packages/tensorflow/python/framework/ops.py", line 1267, in run
_run_using_default_session(self, feed_dict, self.graph, session)
File "/home/jr/.local/lib/python2.7/site-packages/tensorflow/python/framework/ops.py", line 2763, in _run_using_default_session
session.run(operation, feed_dict)
File "/home/jr/.local/lib/python2.7/site-packages/tensorflow/python/client/session.py", line 334, in run
np_val = np.array(subfeed_val, dtype=subfeed_t.dtype.as_numpy_dtype)
ValueError: setting an array element with a sequence.

The data I'm feeding to train_step.run({x: batch_xs, y_: batch_ys}) is like this:

  • batch_xs: list of tensor objects representing images of 100x100 (10,000 long tensors)
  • batch_ys: list of labels as floats (1.0 or 0.0)

What am I doing wrong?

Edits

It seems the problem was that I had to evaluate the tensors in batch_xs before passing them to train_step.run(...). I thought the run method would take care of that, but I guess I was wrong? Anyway, so once I did this before calling the function:

for i, x in enumerate(batch_xs):
    batch_xs[i] = x.eval()
    #print batch_xs[i].shape
    #assert all(x.shape == (100, 100, 3) for x in batch_xs)
# Now I can call the function

I had several issues even after doing what is suggested in the answers below. I finally fixed everything by ditching tensors and using numpy arrays.

35

This particular error is coming out of numpy. Calling np.array on a sequence with a inconsistant dimensions can throw it.

>>> np.array([1,2,3,[4,5,6]])

ValueError: setting an array element with a sequence.

It looks like it's failing at the point where tf ensures that all the elements of the feed_dict are numpy.arrays.

Check your feed_dict.

2
  • 1
    Thanks! I was having this issue using image data from an hdf5 data set where each image was a different shape. – James L. Dec 1 '17 at 18:53
  • For me the issue was also the fact that the images had different shapes. – Mike Wise Jul 25 '18 at 21:02
9

The feed_dict argument to Operation.run() (also Session.run() and Tensor.eval()) accepts a dictionary mapping Tensor objects (usually tf.placeholder() tensors) to a numpy array (or objects that can be trivially converted to a numpy array).

In your case, you are passing batch_xs, which is a list of numpy arrays, and TensorFlow does not know how to convert this to a numpy array. Let's say that batch_xs is defined as follows:

batch_xs = [np.random.rand(100, 100),
            np.random.rand(100, 100),
            ...,                       # 29 rows omitted.
            np.random.rand(100, 100)]  # len(batch_xs) == 32.

We can convert batch_xs into a 32 x 100 x 100 array using the following:

# Convert each 100 x 100 element to 1 x 100 x 100, then vstack to concatenate.
batch_xs = np.vstack([np.expand_dims(x, 0) for x in batch_xs])
print batch_xs.shape
# ==> (32, 100, 100) 

Note that, if batch_ys is a list of floats, this will be transparently converted into a 1-D numpy array by TensorFlow, so you should not need to convert this argument.

EDIT: mdaoust makes a valid point in the comments: If you pass a list of arrays into np.array (and therefore as the value in a feed_dict), it will automatically be vstacked, so there should be no need to convert your input as I suggested. Instead, it sounds like you have a mismatch between the shapes of your list elements. Try adding the following:

assert all(x.shape == (100, 100) for x in batch_xs)

...before the call to train_step.run(), and this should reveal whether you have a mismatch.

7
  • np auto-stacks array-lists like this, so I'm still betting on size a inconsistency. p=tf.placeholder(tf.float32,[2,10,10]); q = tf.identity(p); q.eval(feed_dict={p:[np.random.randn(10,10),np.random.randn(10,10)]})‌​.shape #==> (2, 10, 10) – mdaoust Dec 8 '15 at 18:04
  • 1
    @mrry Is there any way to feed TF tensors to feed_dict? As you know I read_and_decode images purely in TF and now having the same problem when feeding – Hamed MP Dec 8 '15 at 18:21
  • @HamedMP: There's currently no way to feed a (symbolic) Tensor as the value in a feed_dict. The three main choices here are: (i) evaluate the tensor and pass its value, (ii) construct the graph so that you use the value of the Tensor in the original expression, or (iii) use a "queue" as an indirection, evaluate the Tensor and enqueue it; then define the original expression as a function of dequeue rather than a placeholder. – mrry Dec 9 '15 at 7:56
  • Thanks @mrry, I'm using 1st method. The data is images and tensor images are shown correctly in the tensroboard, but when I evaluate them the become corrupted and neither train nor validation improves from 10% (worse than my pervious implementation with tf.Variable where at least train was improving.) I even tried casting to np.uin32, transposing channels,.. but none worked – Hamed MP Dec 9 '15 at 9:58
  • @HamedMP: It would probably be best to move this to a new question. Can you post details of what you've tried? – mrry Dec 9 '15 at 10:01

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.