first of all I'm new to python and programming but you guys already helped me a lot, so thanks a lot! But I've come to a problem I haven't found an answer so far:

I have the data of several plates where the data represents the pressure on each plate at a large number of different spots. The thing is, these plates aren't perfectly round because of the sensors measuring the pressure and sometimes these sensors even produce an error so I don't have any data at a spot within the plate.

When I just have to plot one plate, I'll do it like that:

``````import numpy.ma as ma

for x in range(len(plate.X)):
matrix[(plate.Y[x],plate.X[x])]=data.index(plate.measurementname[x])
image.pcolormesh(matrix,min,max)
``````

This works fine. Now that I have several plates I'd like to plot the mean pressure on each spot. Because I don't know any mean function, I thought of adding all plates together and divide by the number of plates...I tried following:

``````import numpy.ma as ma

for plate in plateslist:
for x in range(len(plate.X)):
matrix[(plate.Y[x],plate.X[x])]=data.index(plate.measurementname[x])
meanmatrix+=matrix
meanmatrix=meanmatrix/len(plateslist)
image.pcolormesh(meanmatrix,min,max)
``````

This works pretty good but there's one problem I can't solve. As I said sometimes some plates didn't get all data, therefore there's a "hole" at some spots in the plot. Now my meanmatrix has a whole where ever one of the plates had a whole even if all others had data at that spot.

How can I make sure I won't get these holes or is there even a smoother way of getting my "meanmatrix"?? (I hope my question is clear enough...)

Edit:

The problem is not that I don't get the mean of the data, this actually works (well I don't like how I did it but it works), the problem is that I get these "holes" I described before. That's what bothers me.

-

EDIT: Sorry, I misinterpreted the question. Try this:

``````allplates = ma.masked_all((160, 65, numplates))
# fill in allplates
meanplate = allplates.mean(axis=2)
``````

This will compute the mean over the last dimension of the array, i.e., average the plates together. Missing values are ignored.

Earlier answer: You can take the mean of a masked array, and it will ignore the missing values:

``````>>> X = ma.masked_all((160, 65))
>>> X.mean()
>>> X[0, 0] = 1
>>> X.mean()
1.0
``````

Try to avoid using `matrix` as a variable name, though, because it also refers to a NumPy data structure.

-
Welcome to Python and to programming! Here's how I found the answer using IPython autocomplete and documentation. `X.<tab>` will reveal all of the methods associated with X. Once you have found `mean`, then `X.mean?` will show the documentation for `mean`. Same goes for `ma`, `masked_array`, etc. –  Steve Tjoa Aug 25 '11 at 8:53
Thanks but unfortunately it didn't work, I get an error: "File "C:\Python26\lib\site-packages\numpy\ma\core.py", line 1695, in _check_mask_axis return mask.all(axis=axis) ValueError: axis(=2) out of bounds" And if I set axis=1 or don't pass any argument pcolormesh fails. And I actually think that the mistake is at filling allplates... –  Danny Aug 25 '11 at 9:03
And also thank you for your trick. I just edited my question, hope I made it a little clearer. –  Danny Aug 25 '11 at 9:13

``````import numpy.ma as ma