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I have a CSV data set, 40 columns by 800 ish rows. But as an example lets say its looks like this:

Ref  X  Y
11   1  10 
11   2  9
11   3  8
11   4  7
12   5  6 
12   6  5
12   7  4
13   8  3
13   9  2

How would you define a function that returns a list of the average X and Y values for each Ref? i.e to yield something like:

Ref_list = [11,12,13]        
Av_X = [2.5,6,12.5]

I doubt this is the best way to approach it, but I've written the following code:

my_data = genfromtxt('somedata.csv', delimiter=',',skiprows=1) 

X=[]
for i in my_data:
    X.append(i[0])
    counter=collections.Counter(X)
    keys=np.sort((counter.keys())) #find and sort ref key values

def getdata():
    X , Y = [], []
    for i in my_data:
       if i[0] == refs:
           X.append(i[1])
           Y.append(i[2])
    AV_X=np.average(X)
    AV_Y=np.average(X)
    return AV_X, AV_Y

for refs in keys: # run function over key range 
    AV_X, AV_Y = getdata()

here i get stuck, i was trying iterate the function over the range of ref no. (keys) and append the returned values. But other than errors, i can only get the values for the last Ref. in keys.

I imagine there is a better way to do this, but i'm still a newbie to this stuff. Many thanks in advance for any suggestions

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5 Answers 5

up vote 5 down vote accepted

You can use the brilliant pandas library for those kind of jobs:

from StringIO import StringIO
import pandas as pd

df = pd.read_csv(StringIO('your_data'),
        delim_whitespace=True)

df.groupby('Ref').mean()

       X    Y
Ref          
11   2.5  8.5
12   6.0  5.0
13   8.5  2.5

As you can see in the last row, you miscalculated in your question...

You can likewise ask for median, sum, max, etc..

share|improve this answer
    
+1,beat me to it. the cleanest solution. –  root Jan 7 '13 at 18:26
    
That makes it so easy, cheers! –  user1665220 Jan 7 '13 at 18:36
    
also, you can cut the StringIO and replace it with the file path. df = read_csv('test.csv',delim_whitespace=True) df.groupby('Ref').mean() –  root Jan 7 '13 at 18:50
    
@root yes, correct, thanks ... initially I had the input from above in a string, but then I decided to skip those line for clarity –  Theodros Zelleke Jan 7 '13 at 18:53
import csv, collections, operator
def j(): return dict(X=[], Y=[])
def mean(inlist): return operator.truediv(sum(inlist),len(inlist))
a = collections.defaultdict(j)
# get all the data
for line in csv.DictReader(open(myfile, 'r')):
    a[line['Ref']]['X'].append(line['X'])
    a[line['Ref']]['Y'].append(line['Y'])


# now, for the averages themselves

def get_avgs(inputlist, xy):
    return [mean(a[item][xy]) for item in inputlist]

Use:

get_avgs([11,12,13], 'X')
# returns:
[2.5,6,12.5]
share|improve this answer
>>> A=np.array([[11,1,10,],[11,2,9],[11,3,8],[11,4,7],[12,5,6,],[12,6,5],[12,7,4],[13,8,3],[13,9,2]])
>>> A
array([[11,  1, 10],
       [11,  2,  9],
       [11,  3,  8],
       [11,  4,  7],
       [12,  5,  6],
       [12,  6,  5],
       [12,  7,  4],
       [13,  8,  3],
       [13,  9,  2]])
#Slice the data
>>> A[:,0]
array([11, 11, 11, 11, 12, 12, 12, 13, 13])
>>> refs=np.unique(A[:,0])
#Unique value of all references.
>>> refs
array([11, 12, 13])
#To get the average of each column
>>> np.average(A,axis=0)
array([ 11.77777778,   5.        ,   6.        ])

I think you want this though?

#Create a mask
>>> A[:,0]==11
array([ True,  True,  True,  True, False, False, False, False, False], dtype=bool)
>>> Mask=A[:,0]==11
>>> A[Mask]
array([[11,  1, 10],
       [11,  2,  9],
       [11,  3,  8],
       [11,  4,  7]])
>>> np.average(A[Mask],axis=0)
array([ 11. ,   2.5,   8.5])
>>> np.vstack([np.average(A[A[:,0]==x],axis=0) for x in ref])
array([[ 11. ,   2.5,   8.5],
       [ 12. ,   6. ,   5. ],
       [ 13. ,   8.5,   2.5]])

So in the end you can just have:

>>> refs=np.unique(A[:,0])
array([11, 12, 13])
>>> np.vstack([np.average(A[A[:,0]==x],axis=0) for x in ref])
array([[ 11. ,   2.5,   8.5],
       [ 12. ,   6. ,   5. ],
       [ 13. ,   8.5,   2.5]])

There is a better way to do it by introducing higher dimensional matrices so you can avoid list comprehension.

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You could do it all in one pass, without sorting first, if you wanted to.

counts = {}
averages = {}
for line in data_file:
    ref = line[0]
    data = map(float, line[1:])
    if ref not in counts:
        counts[ref] = 1
        averages[ref] = data
    else:
        counts[ref] += 1
        averages[ref] = map(lambda running, new: ((running * (counts[ref] - 1)) + new) / counts[ref], averages[ref], data)

You could use defaultdict for counts and averages, but I think that it doesn't really help with clarity or brevity enough in this case to warrant it.

It would probably be more efficient though if you did it in 2 passes, though still without sorting.

counts = {}
totals = {}
for line in data_file:
    ref = line[0]
    data = map(float, line[1:])
    if ref not in counts:
        counts[ref] = 1
        totals[ref] = data
    else:
        counts[ref] += 1
        totals[ref] = map(lambda running, new: running + new, averages[ref], data)
averages = {ref : map(lambda total: total / counts[ref], totals[ref]) for ref in counts}
share|improve this answer

I wouldn't even bother with numpy for anything below a few hundred thousand rows... why not just use this:

#assuming your data is a list of lists and you want the average of the 2nd column
avg = sum(x[1] for x in mydata) / len(mydata)

Of course if you only want the average of all items matching some expression, use a list comprehension to filter the data and then calculate the average over the resulting list:

my_specific_data = [x[1] for x in mydata if x[0] == refs]
#... avg as above
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