I think you are right -- `plt.boxplot`

ignores the mask if sent a masked array.
So it looks like you'll have to give `boxplot`

some extra help by sending it only the values which are not masked. Since each row of the array may have a different number of unmasked values, you won't be able to use a numpy array. You'll have to form a Python sequence of vectors:

```
z = [[y for y in row if y] for row in x.T]
```

For example:

```
import matplotlib.pyplot as plt
import numpy as np
fig=plt.figure()
N=20
M=10
x = np.random.random((M,N))
mask=np.random.random_integers(0,1,N*M).reshape((M,N))
x = np.ma.array(x,mask=mask)
ax1=fig.add_subplot(2,1,1)
ax1.boxplot(x)
z = [[y for y in row if y] for row in x.T]
ax2=fig.add_subplot(2,1,2)
ax2.boxplot(z)
plt.show()
```

Above, the first subplot shows a boxplot of all the data in `x`

(ignoring the mask), and the second subplot shows a boxplot of only those values which are not masked.