I have the following code (i.e. it's just a dummy code to demonstrate my problem)

```
#!/usr/bin/python
import numpy as np
#define array, -999 being a missing value
a=np.array([5.,-999.,7.,8.])
print "array:"
print a
print
a=np.ma.masked_values(a,-999.)
print "masked array:"
print a
print
#define new missing value
bad=1e30
a.set_fill_value(bad)
#roll array
a=np.roll(a,1,axis=0)
#plug-in new missing value
a=a.filled()
print "array after rolling with new missing value (1e30):"
print a
```

On my 32 bit machine with numpy 1.4.1, I get the expected output:

```
array:
[ 5. -999. 7. 8.]
masked array:
[5.0 -- 7.0 8.0]
array after rolling with new missing value (1e30):
[ 8.00000000e+00 5.00000000e+00 1.00000000e+30 7.00000000e+00]
```

On my 64 bit machine with numpy 1.6.1 I get

```
[ 5. -999. 7. 8.]
masked array:
[5.0 -- 7.0 8.0]
array after rolling with new missing value (1e30):
[ 8.00000000e+00 5.00000000e+00 1.00000000e+20 7.00000000e+00]
```

So, my fill value for the masked array of 1e30 changed to 1e20 after rolling the array. I'm I doing something wrong, or is this a known bug?

Raphael