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So I have 4,000 large gzipped text files. Because of their size, I need to sum them line by line. Ideally (I think) I want to open one and then loop through the other 3,999 and simply keep summing their values into the first one. Here is what I have so far

with'foo1.asc.gz','r') as f:
    for i in xrange(6):  # Header is 6 lines
    line = f.readline()
    foo1=map(float, line.strip().split())
    print foo1

This returns the values I need to sum for foo1; so output is a comma separated list of floats (e.g., [1.2, 6.0, 9.3...]).

So for clarity, if I were to do the same with foo2 = [1.2, 6.0...] then I could sum foo1 and foo2 to get [2.4, 12.0...], overwriting foo1. Then keep iterating through each line to overwrite foo1. Of course that needs to loop through 4k files.

If anyone can help me with the 2 loops and/or the sum operation I would be greatly appreciative.

* Update * Now using the following code:

with'foo1','r') as f:
    for line in f:
        foo1.append([float(i) for i in line.strip().split()])

with'foo2','r') as f:
    for (i, line) in enumerate(f):
        foo1[i] = [j + float(k) for (j, k) in zip(foo1[i], line.strip().split())]

which works but is sloooow. With my inputs about 11 minutes.

share|improve this question
Do you have numpy? – unutbu Sep 20 '12 at 12:07
How many floats are in one file? – unutbu Sep 20 '12 at 12:09
I do have numpy! – KennyC Sep 20 '12 at 12:10
Many thousands...Uncompressed text file = 1.3gb – KennyC Sep 20 '12 at 12:18
what is the expected output? For example if both foo1, foo2 files contain "1 2\n3 4" then the result is "2 4\n6 8" or should it be just "20"? – J.F. Sebastian Sep 20 '12 at 13:20
up vote 4 down vote accepted

In the NORMAL python way...

You are not iterating over the lines...

~ $ cat test.txt 

you could however read all the lines, and then apply float on them:

>>> with open('test.txt', 'r') as f:
...      lines = f.readlines()
...      foo1=map(float, lines)
...      print foo1
[1.0, 2.0, 3.0, 4.5, 5.0, 6.0]
>>> sum(foo1)

however, you should use NumPy!

crude solution summing all files
import numpy as np

ListofFiles = ['foo1','foo2']
# from the help of np.loadtxt
# Note that `If the filename extension is .gz or .bz2, the file is first decompressed`
# see the help for that function.
for FileName in ListofFiles:
solution to sum elements from different files
# use with caution it might hog your memory
import numpy as np

ListofFiles = ['foo1','foo2']

arrayHolder = np.loadtxt(FileName,skiprows=6)
for idx,FileName in enumerate(ListofFiles[1:]):
# see documentation for numpy.hstack and my example below.

# now you have a huge numpy array. you can do many things on it
# e.g
# sum each file if the above test.txt had an identical file named test1.txt
np.sum(arrayHolder , axis=0)
# output would be:
array([2.0, 4.0, 6.0, 9.0, 10.0, 12.0])
# sum each ith element accross files
np.sum(arrayHolder , axis=1)

# more extended
In [2]: a=np.array([1.0,2.0,3.0,4.5,5.0,6.0])
In [4]: b=np.array([1.0,2.0,3.0,4.5,5.0,6.0]) 
In [9]: c=np.vstack((a,b))  
In [10]: c
array([[ 1. , 2. , 3. , 4.5, 5. , 6. ],
[ 1. , 2. , 3. , 4.5, 5. , 6. ]])
In [11]: np.sum(c, axis=0)
Out[11]: array([ 2., 4., 6., 9., 10., 12.])
In [12]: np.sum(c, axis=1)
Out[12]: array([ 21.5, 21.5])

# as I said above this could chocke your memory, so do it gradualy, 
# dont try on all 4000 files at once !

Note that this solution will run faster for the solution that Pierre offered, since many NumPy function are written and C and are optimized. If you need to run on 4000 line, I expect the for loop to be slower...

share|improve this answer
Hi Oz, thanks for your help. I do desire an optimized solution and numpy would be fun to explore. But perhaps I should restate my question. I don't desire the sum of the floats in 1 file. I need to sum the floats of 2 files together. foo1 + foo2. Because of the size of files I'd like to do this line by line – KennyC Sep 20 '12 at 12:55
@KennyC, my solution does give you the sum of foo1 and foo2... just feed the ListOfFiles... – Oz123 Sep 20 '12 at 12:58
I see that now but can you provide a numpy solution that sums line 1 from foo1 with line 1 from foo2 resulting in a float array (line 1 of foo3 say). Piere GMs solution did work but took 11 minutes for one sum operation which would take me a month to complete the jobs. – KennyC Sep 21 '12 at 3:05
@KennyC, well. I was being a lazy programmer according to what you wrote. I now extend my answer, and I think Pierre solution IS NOT the way to go, especially if it takes on month to run ! – Oz123 Sep 21 '12 at 9:07
thank you sir! Numpy is considerably faster – KennyC Sep 24 '12 at 4:46

You'll probably have to keep one list in memory, the one storing the lines of your first file.

with as f:
    foo1 = [[float(i) for i in line.strip().split()] for line in f]
  • Note: here, we're building the list at once, meaning that the whole content of f is loaded in memory. That can be an issue if the file is large. In that case, just do:

    foo1 = []
    with as f:
        for line in f:
            foo1.append([float(i) for i in line.strip().split()])

Then, you could open a second file, loop on its lines and add the values to the corresponding entry of foo:

with as f:
    for (i, line) in enumerate(f):
        foo1[i] = [j + float(k) for (j, k) in zip(foo1[i], line.strip().split())]

There shouldn't be much problem, unless you have a different number of columns in your files.

If your file are really large, memory can be an issue. In that case, you may want to work by chunks: read only a few hundred lines from the first file and store them in a list, then proceed as described, using as many lines as you read in the first file, then start again for another few hundred lines...


Given the computation times you describe in the edit, this solution is clearly suboptimal. You can't load a whole file in memory, so you'll have to work by chunk. It might be better to follow a workflow as:

  1. Create an empty list foo1.
  2. Open the first file, read a given chunk of lines, transform these lines into a numpy ndarray and append this array to foo1.
  3. Repeat step two for another chunk of lines, till you read the whole input file

At this point, you should have a foo1 list with as many entries as chunks you defined, each entry being a numpy array. Now

  1. Open the second file, read as many lines as you did in step #2, transform these lines into a numpy array foo2_tmp
  2. Add foo2_tmp to foo_1[0], in place: that is, do foo_1[0] += foo2_tmp. Remember, foo_1[0] is your first chunk, a ndarray.
  3. Repeat step 5. for another chunk of lines, and update the corresponding entry in foo_1
  4. Repeat step 6. till you read your second file
  5. Repeat steps 4.-7. for your third file
share|improve this answer
My columns and rows are the same for all inputs. However, when executing your suggestion I get a memory error on the foo1= line in your first block. Ideas? – KennyC Sep 20 '12 at 16:59
Mmh, that could be the case if your file is large. Cf edit. – Pierre GM Sep 20 '12 at 17:07
I have edited OP to show your suggestion. I am now getting an I/O error – KennyC Sep 20 '12 at 20:47
@KennyC: the foo1.append(...) line of the new OP is a bit off, please check it. Nevertheless, you can try to use a list(...) to impose a copy. Otherwise, sorry, I can't see why the IOError... – Pierre GM Sep 20 '12 at 21:01
thank-you. If I use the line in question foo1.append verbatim as you posted: I get NameError: name 'line' is not defined – KennyC Sep 20 '12 at 21:17

This is untested. Note that it's probably in-efficient (and may not even be allowed) to attempt to have 4,000 filehandles open at once, so the file at a time approach is the most practical. Below uses a defaultdict which allows for mis-matching numbers of rows in each file, but still enables summing of overlapping row numbers.

from itertools import islice
from collections import defaultdict
from glob import iglob

def sum_file(filename, dd):
    file_total = 0.0
    with as fin:
        for lineno, line in enumerate(islice(fin, 6, None)): # skip headers
            row_total = map(float, line.split())                
            dd[lineno] += row_total
            file_total += row_total
    return file_total

dd = defaultdict(float)
for filename in iglob('foo*.asc.gz'):
    print 'processed', filename, 'which had a total of', sum_file(filename, dd)

print 'There were', len(dd), 'rows in total'
for lineno in sorted(dd.keys()):
    print lineno, 'had a total of', dd[lineno]
share|improve this answer
yes your solution as well as Pierre's will be horribly slow for large amount of data. I would seriously use NumPy here. – Oz123 Sep 20 '12 at 12:37
@Oz123 I think we've interpreted the question differently. I've read it as there will be 1..n elements of sums where n is max(number_of_rows), and where sum[n] = total of all columns of row[1] for file1..4000 – Jon Clements Sep 20 '12 at 12:43
the OP has added info, the size of his data is 1.3GB... I think that either way, 4000 lines or 4000 files, numpy will be faster, to sum all the float in each file and in all the files. – Oz123 Sep 20 '12 at 12:54
@Oz123: NumPy is definitely faster, provided you can fit two arrays in memory. If not, you're stuck. – Pierre GM Sep 20 '12 at 21:26

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