# rank array in python while ignoring missing values

I'd like to rank a numpy array without getting the number positions changed. I was able to do it using the numpy function below but it keeps ranking the 'NaN' values as well, how can I get it to ignore them and just rank the real number values instead. Any help is much appreciated! Thanks!

Here is my code:

``````import numpy as np

hr=[]
for line in open('file.txt' ,'r'):
hr.append(line.strip().split('\t'))

tf=[]
for i in range(1,len(hr)):
print hr[i][1:13]
tf.append(hr[i][1:13])

for rows in range(0,len(tf)):
array = np.array([tf[rows]],dtype(float))
print array
order = array.argsort()
ranks = order.argsort()
print ranks
``````

Here, each array line is something like this from tf:

`array=['NaN', '20', '383.333', 'NaN', 'NaN', 'NaN', '5', '100', '129', '122.5', 'NaN', 'NaN']`

Desired output:

`ranks=array['NaN', 1, 5, 'NaN', 'NaN', 'NaN', 0, 2, 4, 3, 'NaN', 'NaN']`

Actual output with code above:

`ranks=array([ 6, 3, 4, 7, 8, 9, 5, 0, 2, 1, 10, 11])`

I'm new to python so any help is appreciated!

-

If you have scipy, mstats.rankdata basically does what you want:

``````import scipy.stats.mstats as mstats
import numpy as np

array = np.array(map(float, ['NaN', '20', '383.333', 'NaN', 'NaN', 'NaN', '5', '100', '129', '122.5', 'NaN', 'NaN']))
``````

`np.ma.masked_invalid` masks the `nan` values. `mstats.rankdata` ranks the non-masked values, and assigns 0 to the masked values.

``````ranks = mstats.rankdata(np.ma.masked_invalid(array))
print(ranks)
# [ 0.  2.  6.  0.  0.  0.  1.  3.  5.  4.  0.  0.]
``````

Now we just spruce it up a bit to get the desired output:

``````ranks[ranks == 0] = np.nan
ranks -= 1
print(ranks)
# [ nan   1.   5.  nan  nan  nan   0.   2.   4.   3.  nan  nan]
``````
-
+1 for a proper use of masked arrays... –  Pierre GM Sep 20 '12 at 21:10