I have a 2D pytorch tensor of shape n by m. I want to index the second dimension using a list of indices (which could be done with torch.gather) then **then also set new values** to the result of the indexing.

Example:

```
data = torch.tensor([[0,1,2], [3,4,5], [6,7,8]]) # shape (3,3)
indices = torch.tensor([1,2,1], dtype=torch.long).unsqueeze(-1) # shape (3,1)
# data tensor:
# tensor([[0, 1, 2],
# [3, 4, 5],
# [6, 7, 8]])
```

I want to select the specified indices per row (which would be `[1,5,7]`

but then also set these values to another number - e.g. 42

I can select the desired columns row wise by doing:

```
data.gather(1, indices)
tensor([[1],
[5],
[7]])
data.gather(1, indices)[:] = 42 # **This does NOT work**, since the result of gather
# does not use the same storage as the original tensor
```

which is fine, but I would like to change these values now, and have the change also affect the `data`

tensor.

I can do what I want to achieve using this, but it seems to be very un-pythonic:

```
max_index = torch.max(indices)
for i in range(0, max_index + 1):
mask = (indices == i).nonzero(as_tuple=True)[0]
data[mask, i] = 42
print(data)
# tensor([[ 0, 42, 2],
# [ 3, 4, 42],
# [ 6, 42, 8]])
```

Any hints on how to do that more elegantly?