I would like to do something like this piece of Numpy code, just in TensorFlow:

```
a = np.zeros([5, 2])
idx = np.random.randint(0, 2, (5,))
row_idx = np.arange(5)
a[row_idx, idx] = row_idx
```

meaning indexing all rows of a 2D tensor with another tensor and then assigning a tensor to that. I am absolutely clueless on how to achieve this.

What I can do so far in Tensorflow is the following

```
a = tf.Variable(tf.zeros((5, 2)))
idx = tf.constant([0, 1, 1, 0, 1])
row_idx = tf.range(5)
indices = tf.transpose([row_idx, idx])
r = tf.gather_nd(a, indices)
tf.assign(r, row_idx) # This line does not work
```

When I try to execute this, I get the following error in the last line:

```
AttributeError: 'Tensor' object has no attribute 'assign'
```

Is there a way around this? There must be some nice way to do this, I don't want to iterate with for loops over the data and manually assign this on a per-element basis. I know that right now array-indexing is not as advanced as Numpy's functionality, but this should still be possible somehow.