The example below is odd to me. Arrays `a`

and `c`

are different, but at modification of the first element of `a`

, the first element of `c`

changes as well. Why is the `numpy`

array implemented like this? If `a`

is assigned as a list, changing the first element of `a`

does not change the first element of `c`

. I cannot think of any example where the behavior of the `numpy`

array would be desired.

```
import numpy as np
a = np.arange(3,5)
#a = [3, 4]
b = a
c = a[:]
d = a.copy()
print(a is b) # True
print(a is c) # False
print(a is d) # False
print(a, b, c, d) #[3 4] [3 4] [3 4] [3 4]
a[0] = -11.
print(a, b, c, d) #[-11 4] [-11 4] [-11 4] [3 4] HUH?!
```

`a[:]`

is different for lists and arrays; the`__getitem__`

indexing methods are different.