I'm trying to pad an array with `np.nan`

```
import numpy as np
print np.version.version
# 1.10.2
combine = lambda real, theo: np.vstack((theo, np.pad(real, (0, theo.shape[0] - real.shape[0]), 'constant', constant_values=np.nan)))
real = np.arange(20)
theoretical = np.linspace(0, 20, 100)
result = combine(real, theoretical)
np.any(np.isnan(result))
# False
```

Inspecting `result`

, it seems instead of `np.nan`

, the array is getting padded with `-9.22337204e+18`

. What's going on here? How can I get `np.nan`

?

`real = np.arange(20, dtype=float)`

.`np.pad(real, (0, theo.shape[0] - real.shape[0]), 'constant', constant_values=np.nan)`

when`real`

is anintegerarray.`real`

was an integer array. Why does this behaviour happen with integers?`np.nan`

is a float.