1

My input tensor Data = Input(shape=(856,)) is a vector of float32 values concatenated from many different devices. I am trying to apply different TensorFlow functions to different subslices of each input chunk. Some of these functions include a 1D Convolution which requires a reshape.

slice = Data[:20]
reshape = tf.reshape(slice, (-1, 20, 1))
...

Doing this crashes after trying to fit my model. It throws the following errors:

tensorflow.python.framework.errors_impl.InvalidArgumentError:  Input to reshape is a tensor with 10272 values, but the requested shape requires a multiple of 20
         [[node model/tf.reshape_1/Reshape
 (defined at /home/.local/lib/python3.8/site-packages/keras/layers/core/tf_op_layer.py:261)
]] [Op:__inference_train_function_1858]

Errors may have originated from an input operation.
Input Source operations connected to node model/tf.reshape_1/Reshape:
In[0] model/tf.__operators__.getitem_1/strided_slice:
In[1] model/tf.reshape_1/Reshape/shape:

I am not sure how slicing 20 elements from a tensor of 856 could result in a tensor of 10272 values.

I have also tried using the tf.slice function a couple of different ways; both fail. Referencing the docs: https://www.tensorflow.org/guide/tensor_slicing

slice = tf.slice(Data, begin=[0], size=[20]) 
...

And fails, stating:

Shape must be rank 1 but is rank 2 for '{{node tf.slice/Slice}} = Slice[Index=DT_INT32, T=DT_FLOAT](Placeholder, tf.slice/Slice/begin, tf.slice/Slice/size)' with input shapes: [?,856], [1], [1].

For reference, here is what some of the values look like in the input data

array([-9.55784683e+01, -1.70557899e+01,  2.95967350e+01,  7.81378937e+00,
        9.02729130e+00,  5.49621725e+00,  4.19811630e+00,  5.84186697e+00,
        4.90438080e+00,  3.73845983e+00,  5.12300587e+00,  2.61530232e+00,
        2.67061424e+00,  3.91038632e+00,  2.31110978e+00,  4.20644665e+00,
        4.50000000e+00,  9.87345278e-01,  1.59740388e+00,  6.30727148e+00,
...
1
  • What is the shape of Data initially, what do you want to do with it?
    – Bob
    Jan 12, 2022 at 20:23

1 Answer 1

1

When you slice data like in Data[:20] it will produce a sequence with length min(20, len(Data)). So I guess your data has length less than 20.

Other message says it has rank 2, so I guess it has one of the following shapes

       1   10272
       2    5136
       3    3424
       4    2568
       6    1712
       8    1284
      12     856
      16     642

Any of those result in a tensor with 10272 elements as your first message shows, and that's not a multiple of 20.

1
  • ah, never mind. The batch_size is taking up one of the dimensions, and is causing issues. I was able to select the appropriate slice with Data[:,0:20]
    – yeb
    Jan 12, 2022 at 22:11

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.