Suppose there is a 2-dimensional `numpy`

array of shape `(10000, 100)`

and size `1000000`

. There is also a 1-dimensional `list`

of length `1000000`

. What would be the fastest way to assign all the values in the list to the array? My solution is:

```
my_array = np.zeros([10000, 100])
my_list = range(1000000)
length_of_list = len(my_list)
for i in range(length_of_list):
my_array.flat[i] = my_list[i]
```

Is there maybe a better one?

`my_array.flat[:] = my_list`

is possible. It avoids the for loop, But turns out to run at the same speed. – M4rtini Jun 5 '14 at 7:54