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I have an input to tensorflow of shape [None, 9, 2] (where the None is batch).

To perform further actions (e.g. matmul) on it I need to transform it to [None, 18] shape. How to do it?

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3 Answers 3

46

You can do it easily with tf.reshape() without knowing the batch size.

x = tf.placeholder(tf.float32, shape=[None, 9,2])
shape = x.get_shape().as_list()        # a list: [None, 9, 2]
dim = numpy.prod(shape[1:])            # dim = prod(9,2) = 18
x2 = tf.reshape(x, [-1, dim])           # -1 means "all"

The -1 in the last line means the whole column no matter what the batchsize is in the runtime. You can see it in tf.reshape().


Update: shape = [None, 3, None]

Thanks @kbrose. For the cases where more than 1 dimension are undefined, we can use tf.shape() with tf.reduce_prod() alternatively.

x = tf.placeholder(tf.float32, shape=[None, 3, None])
dim = tf.reduce_prod(tf.shape(x)[1:])
x2 = tf.reshape(x, [-1, dim])

tf.shape() returns a shape Tensor which can be evaluated in runtime. The difference between tf.get_shape() and tf.shape() can be seen in the doc.

I also tried tf.contrib.layers.flatten() in another . It is simplest for the first case, but it can't handle the second.

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  • This works well if you know the size of all the other dimensions, but does not if the other dimensions have unknown size. E.g. x = tf.placeholder(tf.float32, shape=[None, 9, None])
    – kbrose
    Mar 29, 2017 at 22:03
  • 1
    thanks @kbrose. I've updated the answer for the case.
    – weitang114
    Mar 30, 2017 at 6:08
  • @weitang114 Awesome!
    – kbrose
    Mar 30, 2017 at 13:08
  • i was stuck with reshape, tf.reduce_prod did the trick for me. Thank you very much!
    – fr_andres
    Aug 28, 2017 at 12:53
  • 1
    This doesn't seem to work if x2 is later passed into a dynamic_rnn. Produces ValueError: Input size (depth of inputs) must be accessible via shape inference, but saw value None.
    – naktinis
    Oct 31, 2017 at 10:32
18
flat_inputs = tf.layers.flatten(inputs)
3

You can use dynamic reshaping to get value of batch dimension through tf.batch during runtime, calculate the whole set of new dimensions into tf.reshape. Here's an example of reshaping flat list into square matrix without knowing list length.

tf.reset_default_graph()
sess = tf.InteractiveSession("")
a = tf.placeholder(dtype=tf.int32)
# get [9]
ashape = tf.shape(a)
# slice the list from 0th to 1st position
ashape0 = tf.slice(ashape, [0], [1])
# reshape list to scalar, ie from [9] to 9
ashape0_flat = tf.reshape(ashape0, ())
# tf.sqrt doesn't support int, so cast to float
ashape0_flat_float = tf.to_float(ashape0_flat)
newshape0 = tf.sqrt(ashape0_flat_float)
# convert [3, 3] Python list into [3, 3] Tensor
newshape = tf.pack([newshape0, newshape0])
# tf.reshape doesn't accept float, so convert back to int
newshape_int = tf.to_int32(newshape)
a_reshaped = tf.reshape(a, newshape_int)
sess.run(a_reshaped, feed_dict={a: np.ones((9))})

You should see

array([[1, 1, 1],
       [1, 1, 1],
       [1, 1, 1]], dtype=int32)
1
  • I do not see any method tf.batch in this solution or in Tensorflow...
    – muneeb
    Feb 28, 2017 at 8:01

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