Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

So I am new to python and have searched for this answer but most responses are over my head. I have a list like this:

right point point 1.76999998093
right fear fear 1.62700009346
right sit sit 1.46899986267
right chord chord 1.47900009155
right speed speeed 1.71300005913
right system system 1.69799995422
right hard hard 1.4470000267
right excite excite 2.93799996376
right govern govern 1.85800004005
right record record 1.62400007248

I am trying to split the list into columns and find the mean/sum/std dev of the numbers. So basically i am just trying to get the last into an array form I can use np.mean, np.sum, etc with. The data is in a file called 'right' Here is what I have so far:

right=open('right.txt').readlines()
for line in right: 
    l=line.split()
    righttime=l[3]
    print righttime

rightsum=np.sum(righttime)
rightmean=np.mean(righttime)

Then I get this error: "TypeError: cannot perform reduce with flexible type" I have tried it tons of ways and keep getting errors. This is another way I tried that seemed promising:

def TimeSum(data):
    for line in data: 
        l=line.split()
        righttime=l[3]
        print righttime
    return righttime

rightsum=np.sum(TimeSum(right))

But I had the same error. Does anyone know how to do this?

share|improve this question
add comment

2 Answers

up vote 3 down vote accepted

We generated a list and sum the elements:

import numpy as np

right = open('right.txt').readlines()
mylist = []

for line in right:
    l = line.split()  
    mylist.append(float(l[3])) # add to list "mylist"   

rightsum = np.sum(mylist)
print rightsum

Or, alternatively

mylist = [float(line.split()[3]) for line in right] # generate numbers list
print np.sum(mylist) # sum numbers
share|improve this answer
    
you the man felip. Thanks! –  Evan Brown Nov 29 '12 at 0:28
    
@EvanBrown Think nothing of it! ;) –  felipsmartins Nov 29 '12 at 0:34
add comment

You should specify (yes, explicitly) the data type, in this case, float (or int, whatever!):

rightsum=np.sum(float(righttime))
rightmean=np.mean(float(righttime))

Remember, you must provide a structure "array-like" for numpy.sum():

>>>import numpy as np
>>>
>>> mylist = [1, 5, 2]
>>> a = np.asarray(mylist)
>>> a.sum()
8

Alternatively:

>>> np.sum([1,5,2])
8
share|improve this answer
    
I guess that is part of my question also. I have now isolated the column of numbers but they are not structured: 1.06500005722 1.27900004387 1.29099988937 1.64499998093 1.86100006104 1.35100007057 2.07699990273 1.54999995232 1.58100008965 It is just a vertical column of numbers. I have tried doing r=np.array(thelist) and r=np.asarray(thelist) etc. with no luck I just keep getting errors when I try to do the sum and mean. –  Evan Brown Nov 29 '12 at 0:03
    
you want to sum all the numbers? –  felipsmartins Nov 29 '12 at 0:06
    
yes all of the numbers in the last column? –  Evan Brown Nov 29 '12 at 0:12
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.