To compare tensors you can do element wise:

`torch.eq`

is element wise:

```
torch.eq(torch.tensor([[1., 2.], [3., 4.]]), torch.tensor([[1., 1.], [4., 4.]]))
tensor([[True, False], [False, True]])
```

Or `torch.equal`

for the whole tensor exactly:

```
torch.equal(torch.tensor([[1., 2.], [3, 4.]]), torch.tensor([[1., 1.], [4., 4.]]))
# False
torch.equal(torch.tensor([[1., 2.], [3., 4.]]), torch.tensor([[1., 2.], [3., 4.]]))
# True
```

But then you may be lost because at some point there are small differences you would like to ignore. For instance floats `1.0`

and `1.0000000001`

are pretty close and you may consider these are equal. For that kind of comparison you have `torch.allclose`

.

```
torch.allclose(torch.tensor([[1., 2.], [3., 4.]]), torch.tensor([[1., 2.000000001], [3., 4.]]))
# True
```

At some point may be important to check element wise how many elements are equal, comparing to the full number of elements. If you have two tensors `dt1`

and `dt2`

you get number of elements of `dt1`

as `dt1.nelement()`

And with this formula you get the percentage:

```
print(torch.sum(torch.eq(dt1, dt2)).item()/dt1.nelement())
```