On a CPU, is `torch.as_tensor(a)`

the same as `torch.from_numpy(a)`

for a numpy array, `a`

? If not, then why not?

From the docs for `torch.as_tensor`

if the data is an

`ndarray`

of the corresponding`dtype`

and the`device`

is the cpu, no copy will be performed.

From the docs for `torch.from_numpy`

:

The returned tensor and

`ndarray`

share the same memory. Modifications to the tensor will be reflected in the`ndarray`

and vice versa.

In both cases, any changes the resulting tensor changes the original numpy array.

```
a = np.array([[1., 2], [3, 4]])
t1 = torch.as_tensor(a)
t2 = torch.from_numpy(a)
t1[0, 0] = 42.
print(a)
# prints [[42., 2.], [3., 4.]]
t2[1, 1] = 55.
print(a)
# prints [[42., 2.], [3., 55.]]
```

Also, in both cases, attempting to resize_ the tensor results in an error.