select the rows without `nan`

```
from pylab import isnan
boolind = ~isnan(y).any(1)
```

then do

```
plot(x[boolind], y[boolind])
```

if you want a value from linear interpolation to substitute that `nan`

, you simply record the position of that `nan`

and do the interpolation using adjacent points, but I think for plotting purposes, simply eliminating `nan`

data points is enough - the code will do the linear interpolation for you anyway.

btw: presumably your `y = rand((10, 50))`

should be `y = rand(10, 50)`

, although I am not sure why you wanna plot a 2D array against a 1D.

**EDIT**

for your particular question, you can simply plot the two columns of `y`

separately

```
from pylab import *
x = linspace(0,1,10)
y = rand(10,2)
y[5:8,1] = nan
boolind = ~isnan(y)
plot(x[boolind[:,0]],y[boolind[:,0], 0],'.-')
plot(x[boolind[:,1]],y[boolind[:,1], 1],'.-')
show()
```