You can always use multiplication if you don't immediately recall the `.empty`

or `.full`

methods:

```
>>> np.nan * np.ones(shape=(3,2))
array([[ nan, nan],
[ nan, nan],
[ nan, nan]])
```

Of course it works with any other numerical value as well:

```
>>> 42 * np.ones(shape=(3,2))
array([[ 42, 42],
[ 42, 42],
[ 42, 42]])
```

But the @u0b34a0f6ae's accepted answer is 3x faster (CPU cycles, not brain cycles to remember numpy syntax ;):

```
$ python -mtimeit "import numpy as np; X = np.empty((100,100));" "X[:] = np.nan;"
100000 loops, best of 3: 8.9 usec per loop
(predict)laneh@predict:~/src/predict/predict/webapp$ master
$ python -mtimeit "import numpy as np; X = np.ones((100,100));" "X *= np.nan;"
10000 loops, best of 3: 24.9 usec per loop
```

`np.nan`

goes wrong when converted to int. – smci Jul 28 '13 at 3:31