I have a numpy array a. I would like to select a random sample of this array as a test and training set for cross-validation. As a training set, I use slicing by selecting the entries idx. Is there a way to select a compliment of these entries? i.e. all entries that are NOT in idx.

```
# N: size of numpy array a.
idx = random.sample(np.arange(N),N/10) # select random sample
train(a[idx]) # train on this random sample
test(a[ NOT idx]) # test on the rest.
```

How to call the rest of the entries in a compact way for the last line? Thanks.

`test(a[np.setdiff1d(np.arange(N), idx)])`

works too – askewchan Apr 8 '14 at 1:54