I want to replicate the `torch.gather()`

function in TensorFlow 2.X.
I have a Tensor **A** (shape: `[2, 4, 3]`

) and a corresponding Index-Tensor **I** (shape: `[2,2,3]`

).
Using `torch.gather()`

yields the following:

```
A = torch.tensor([[[10,20,30], [100,200,300], [1000,2000,3000]],
[[50,60,70], [500,600,700], [5000,6000,7000]]])
I = torch.tensor([[[0,1,0], [1,2,1]],
[[2,1,2], [1,0,1]]])
torch.gather(A, 1, I)
>
tensor([[[10, 200, 30], [100, 2000, 300]],
[5000, 600, 7000], [500, 60, 700]]])
```

I have tried using `tf.gather()`

, but this did not yield pytorch-like results. I also tried to play around with `tf.gather_nd()`

, but I could not find a suitable solution.

I found this StackOverflow post, but this seems not to work for me.

Edit:
When using `tf.gather_nd(A, I)`

, I get the following result:

```
tf.gather_nd(A, I)
>
[[100, 6000],
[ 0, 60]]
```

The result for `tf.gather(A, I)`

is rather lengthy. It has the shape of `[2, 2, 3, 4, 3]`

`tf.gather()`

and`tf.gather_nd()`

.