I'm new to TensorFlow (version 1.2), but not to Python or Numpy. I am building a model to predict the shape of a protein molecule. I need to wrap TensorFlow's standard tf.losses.cosine_distance function in some extra code, because I need to stop the propagation of some NaN values into the loss calculation.
I know exactly which cells will be NaN. Whatever my machine learning system predicts for those cells does not count. I plan to turn the NaN part of the output of tf.losses.cosine_distance into zeros before summing up the loss function.
Here's a snippet of working code, using tf.scatter_nd_update for the element assignment:
def custom_distance(predict, actual):
with tf.name_scope("CustomDistance"):
loss = tf.losses.cosine_distance(predict, actual, -1,
reduction=tf.losses.Reduction.NONE)
loss = tf.Variable(loss) # individual elements can be modified
indices = tf.constant([[0,0,0],[29,1,0],[29,2,0]])
updates = tf.constant([0., 0., 0.])
loss = tf.scatter_nd_update(loss, indices, updates)
return loss
But, that only works on the one protein that I have that is 30 amino acids long. What if I have a protein of a different length? I will have many. In Numpy, I would just use Python's negative indexing, and substitute -1's for the two 29's on the indices line. Tensorflow will not accept that. If I make that substitution, I get a long traceback, but I think that the most important part of it is this:
File "/usr/local/lib/python3.5/dist-packages/tensorflow/python/framework/errors_impl.py", line 466, in raise_exception_on_not_ok_status
pywrap_tensorflow.TF_GetCode(status))
tensorflow.python.framework.errors_impl.InvalidArgumentError: Invalid indices: [0,1] = [-1, 1, 0] is not in [0, 30)
(I could also modify the predict Tensor so that the cells in question exactly match the actual Tensor before calculating the loss, but in each case the challenge is the same: to assign the values of individual elements in a TensorFlow object.)
Should I just forget about negative indexing in TensorFlow? I am poring through the TensorFlow docs to understand the correct approach to this problem. I assume that I can retrieve the length of my input Tensors long the primary axis and use that. But after seeing the strong parallels between TensorFlow and Numpy, I have to wonder whether that's clunky.
Thanks for your suggestions.