I'm working on a convolutional neural network in tensorflow and I have a problem. The problem is the input image I read through tfrecords contains a certain number of nan values. The cause of this is the image represents a depthmap which has some infinite values in it, and in the process of encoding it in the tfrecord and then decoding to feed it to the net these infinite values become nan values.

Now, since in my situation replacing the infinite values in the original image before encoding it in the tfrecors is not an option, there is any way I can replace the nan values in my image tensor as an operation to do before I feed it to the net?

  • I tried input_clean = tf.map_fn(lambda x: x if x == x else 0.0, input), but it doesn't remove the NaNs... And this: cleaned = tf.map_fn(lambda x: 0.0 if math.isnan(x) else 2*x, input) - raises TypeError: a float is required... Commented Feb 4, 2017 at 18:49

5 Answers 5


A combination of tf.where and tf.is_nan should work:

import tensorflow as tf
with tf.Session():
    has_nans = tf.constant([float('NaN'), 1.])
    print(tf.where(tf.is_nan(has_nans), tf.zeros_like(has_nans), has_nans).eval())

Prints (using TensorFlow 0.12.1):

[ 0.  1.]
  • 1
    Any faster option as compared to tf.where()? We are having to use this number of times in our codebase and tf.where is quickly becoming the bottleneck here.
    – optimist
    Commented Apr 9, 2018 at 10:35
  • 1
    I don't know of any fused op for this; theoretically you could write one, or maybe get XLA to fuse it for you. Do you know where the NaNs are coming from? Ideally this shouldn't be necessary in very many places, if at all. add_check_numerics_ops or tfdbg may be helpful for tracking them down. Commented Apr 9, 2018 at 16:45

If someone is looking for the solution in Tensorflow 2.0, the adapted code of Allen Lavoie is :

import tensorflow as tf
with tf.compat.v1.Session():
    has_nans = tf.constant([float('NaN'), 1.])
    print(tf.where(tf.math.is_nan(has_nans), tf.zeros_like(has_nans), has_nans).eval())

Clip by value made NaN infinity and where was overkill for one variable. I used this to convert a single value to 0 if it's NaN:

value_not_nan = tf.dtypes.cast(tf.math.logical_not(tf.math.is_nan(value)), dtype=tf.float32)
tf.math.multiply_no_nan(value, value_not_nan)

A much easier approach, compatible with TF2.0, is to just use tf.clip_by_value, which mirrors np.clip and removes NaNs (see here):

no_nans = tf.clip_by_value(has_nans, -1e12, 1e12)

Some caveats: 1) this also removes infs 2) Depending on your application you may need to set the clip value to a high value to avoid losing info.

  • 1
    What does it do with the NaNs? Map them to zero? Commented Jan 18, 2022 at 18:49
  • 2
    This doesn't work in tensorflow 2.8.
    – Taw
    Commented Apr 26, 2022 at 5:10
  • Doesn't to work with TF 2.7. NaNs come out unchanged
    – Ivelin
    Commented Jan 17 at 22:13

In tensorflow 2.0 you can do it with tf.math.is_nan and tf.tensor_scatter_nd_update:

tensor_with_nan = tf.convert_to_tensor([[np.nan,1.],[0.,np.nan]])
new_value = 9.

indices = tf.where(tf.math.is_nan(tensor_with_nan))
tensor_without_nan = tf.tensor_scatter_nd_update(
  • Cleanest way, in my opinion. Made my day!
    – P. Navarro
    Commented Oct 10, 2022 at 15:45

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