TensorFlow does not have a native dense to sparse conversion function/helper. Given that the input array is a dense tensor, such as the one you provided, you can define a function to convert a dense tensor to a sparse tensor.

```
def dense_to_sparse(dense_tensor):
where_dense_non_zero = tf.where(tf.not_equal(dense_tensor, 0))
indices = where_dense_non_zero
values = tf.gather_nd(dense_tensor, where_dense_non_zero)
shape = dense_tensor.get_shape()
return tf.SparseTensor(
indices=indices,
values=values,
shape=shape
)
```

This helper function finds the indices and values where the Tensor is non-zero and outputs a Sparse tensor with those indices and values. Additionally, the shape is effectively copied over.

You do not want to use `tf.sparse_to_dense`

as that gives you the opposite representation. If you want your output to be `[2, 1, 0]`

instead, you'll need to index the indices. First, you'll need the indices where the array isn't 0:

`indices = tf.where(tf.not_equal(dense_tensor, 0))`

Then, you'll need to access the tensor using slicing/indicing:

`output = indices[:, 1]`

You might notice that 1 in the slice above is equivalent to the dimension of the tensor - 1. Therefore, to make these value generic, you could do something like:

`output = indices[:, len(dense_tensor.get_shape()) - 1]`

Although I'm not exactly sure what you'd do with these values (the value of the column where the value is). Hope this helped!

**EDIT**: Yaroslav's answer is better if you're looking for the indices/locations of where the input tensor if 1; it won't be extensible for tensors with non-1/0 values if that is required.

`tf.argmax(x, 1)`

– wordsforthewise Feb 21 at 0:26