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`?

• Try `real = np.arange(20, dtype=float)`. Commented Feb 19, 2016 at 21:10
• Look at the result produced by `np.pad(real, (0, theo.shape[0] - real.shape[0]), 'constant', constant_values=np.nan)` when `real` is an integer array. Commented Feb 19, 2016 at 21:12
• Thanks - forgot `real` was an integer array. Why does this behaviour happen with integers? Commented Feb 19, 2016 at 21:27
• `np.nan` is a float. Commented Feb 19, 2016 at 21:29

The result of `pad` has the same type as the input. `np.nan` is a float

``````In [874]: np.pad(np.ones(2,dtype=int),1,mode='constant',constant_values=(np.nan,))
Out[874]: array([-2147483648,           1,           1, -2147483648])

The int pad is `np.nan` cast as an integer:
``````In [878]: np.array(np.nan).astype(int)
• Is there an integer version of `np.nan`? Commented Feb 23, 2016 at 4:55
• Masked arrays use `999999` as the default `fill_value`, but values like that don't propagate through calculations in the same way that `np.nan` does. Talk about `nan` often references `IEEE-754` floating point standard. Commented Feb 23, 2016 at 6:46