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I have the following part input file (has over 500 lines):

L1, a, b, 10, 20, pass,
L1, c, d, 11, 21, pass,
L1, e, f, 12, 22, pass,
L1, a, b, 13, 23, pass,
L1, e, f, 14, 34, pass,

I would like to get the average's of the duplicates i.e. the output as follows:

(where for L1, a, b, 11.5 = (10+13)/2, 21.5 = (20+23)/2)

L1, a, b, 11.5, 21.5
L1, c, d, 11, 21
L1, e, f, 13, 28

My current beginner python code is as follows- still working to tweak it better

 import csv
 from collections import defaultdict
 import numpy as np

 dd = defaultdict(list)
 with open("mean.csv") as input_file:
 for row in csv.reader(input_file):
            dd[tuple(row[:3])].append(float(row[3]))
            dd[tuple(row[:3])].append(float(row[4]))

 for k, v, m in dd.iteritems():
      if len(v) > 1:
           print (' '.join(k), np.mean(v), np.mean(m))

The error I get is:

   Traceback (most recent call last):
   File "average.py", line 11, in <module>
      for k, v, m in dd.iteritems():
   ValueError: need more than 2 values to unpack
share|improve this question
    
You want to use the code snippet mtrw posted to my answer - and keep for k, v in... as it was... –  Jon Clements Jul 25 '12 at 16:00

2 Answers 2

Untested, but something like this as base can be adapted for the other column... as this just does one at the moment.

import csv
from collections import defaultdict
import numpy as np

dd = defaultdict(list)
with open('in.csv') as fin:
    for row in csv.reader(fin):
        dd[tuple(row[:3])].append(float(row[3]))

for k, v in dd.iteritems():
    if len(v) > 1:
        print ' '.join(k), np.mean(v)
share|improve this answer
2  
To match the question, wouldn't you want your print to be something like print ' '.join(k), np.mean(v)? –  Sam Mussmann Jul 24 '12 at 23:24
    
@SamMussmann So it should - good catch - thanks. –  Jon Clements Jul 24 '12 at 23:28
3  
+1 - you can have numpy do all the work if you want by doing dd[tuple(row[:3])].append([row(3), row(4)]) and then np.mean(np.array(v, dtype='float'), axis=0). Not as easy to read, but might be faster. –  mtrw Jul 25 '12 at 0:56
    
@mtrw Nice one! I have to admit that didn't occur to me... –  Jon Clements Jul 25 '12 at 6:29
    
So I have some follow up questions: I added a dd[tuple(row[:3])].append(float(row[4])) to calculate the 2nd mean column but i got a need more than 2 values to unpack error. –  user1504774 Jul 25 '12 at 15:14

With pandas this would be very short (and it should be fast).

You can do something like this (don't know the meaning or naming of your columns, so it depends what you want to use as the index of your DataFrame):

In [1]: df = pd.read_csv('mean.csv', delimiter=',', header=None)

In [2]: df
Out[2]: 
  X.1 X.2 X.3  X.4  X.5
0  L1   a   b   10   20
1  L1   c   d   11   21
2  L1   e   f   12   22
3  L1   a   b   13   23
4  L1   e   f   14   34

In [3]: df.groupby(['X.1', 'X.2', 'X.3']).mean()
Out[3]: 
              X.4   X.5
X.1 X.2 X.3            
L1   a   b   11.5  21.5
     c   d   11.0  21.0
     e   f   13.0  28.0
share|improve this answer
    
I don't have much experience with pandas but I will give this a shot too. –  user1504774 Jul 26 '12 at 22:13
    
I had a look at your profile and saw that you asked a question tagged pandas before. although there are only two lines to solve your problems it's not that easy as you should learn something about numpy first and than some of the pandas api. However I think it is worth to do it! –  bmu Jul 28 '12 at 6:10

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