Imagine some numpy array, e.g. `x = np.linspace(1,10)`

.

`x[i:j]`

gives me a view into `x`

for the range `[i,j)`

.
I love that I can also do `x[i:-k]`

which excludes the last `k`

elements.

However, in order to include the last element I need to do `x[i:]`

.

My question is this: How do I combine these two notations if I for instance need to loop over `k`

.

Say that I want to do this:

```
l = list()
for k in [5,4,3,2,1]:
l.append(x[:-k])
l.append(x[:])
```

What annoys me is that last line. In this simple example of course it doesn't do much of a difference, but sometimes this becomes much more annoying. What I miss is something more DRY-like.

The following snippet course does NOT yield the desired result, but represents the style of code I seek:

```
l = list()
for k in [5,4,3,2,1,0]:
l.append(x[:-k])
```

Thanks in advaned.

`k=0`

, will evaluate`x[:-0]`

, which is an empty array, as opposed to`x[:]`

which is the complete array. – lxop Mar 26 '13 at 0:41`np.iinfo(np.intp).max`

, is a possible magic value. Edit: oops, of course not negative... – seberg Mar 26 '13 at 12:57