2

I have 1000 files each having one million lines. Each line has the following form:

a number,a text

I want to remove all of the numbers from the beginning of every line of every file. including the ,

Example:

14671823,aboasdyflj -> aboasdyflj

What I'm doing is:

os.system("sed -i -- 's/^.*,//g' data/*")

and it works fine but it's taking a huge amount of time.

What is the fastest way to do this?

I'm coding in python.

  • 3
    I can't say what the best method is, but in terms of regex, you can reduce the number of steps taken. Use ^[^,]*, instead. Better yet, use ^\d+, – ctwheels Jan 4 '18 at 19:42
  • 2
    I'm not sure I'd call making calls to external programs "coding in Python", but ultimately, that's probably as fast as you can make it unless you can tweak the matching in sed to do less work... other than that - it's going to be dependent on your system load and how fast your drives are. – Jon Clements Jan 4 '18 at 19:43
  • that's not coding in python. Coding that in python would probably be slower. – Jean-François Fabre Jan 4 '18 at 19:44
  • "sed -i -- 's/^.*,//' data/*" would be slightly faster (dropping the g) – Jean-François Fabre Jan 4 '18 at 19:44
  • is there number in the second field? – Jean-François Fabre Jan 4 '18 at 19:45
5

This is much faster:

cut -f2 -d ',' data.txt > tmp.txt && mv tmp.txt data.txt

On a file with 11 million rows it took less than one second.

To use this on several files in a directory, use:

TMP=/pathto/tmpfile
for file in dir/*; do
    cut -f2 -d ',' "$file" > $TMP && mv $TMP "$file"
done

A thing worth mentioning is that it often takes much longer time to do stuff in place rather than using a separate file. I tried your sed command but switched from in place to a temporary file. Total time went down from 26s to 9s.

  • I don't understand why you don't do cut -f2 -d ',' "$file" > tmp.txt && mv tmp.txt "$file" – yukashima huksay Jan 5 '18 at 15:49
  • 1
    @yukashimahuksay You could do that, but what if you have a file whose actual name is tmp.txt? If you want it to work that way, then just change the first line to TMP=tmp.txt or something. – klutt Jan 5 '18 at 15:54
2

I would use GNU awk (to leverage the -i inplace editing of file) with , as the field separator, no expensive Regex manipulation:

awk -F, -i inplace '{print $2}' file.txt

For example, if the filenames have a common prefix like file, you can use shell globbing:

awk -F, -i inplace '{print $2}' file*

awk will treat each file as different argument while applying the in-place modifications.


As a side note, you could simply run the shell command in the shell directly instead of wrapping it in os.system() which is insecure and deprecated BTW in favor of subprocess.

2

that's probably pretty fast & native python. Reduced loops and using csv.reader & csv.writer which are compiled in most implementations:

import csv,os,glob
for f1 in glob.glob("*.txt"):
    f2 = f1+".new"
    with open(f1) as fr, open(f2,"w",newline="") as fw:
        csv.writer(fw).writerows(x[1] for x in csv.reader(fr))
    os.remove(f1)
    os.rename(f2,f1)  # move back the newfile into the old one

maybe the writerows part could be even faster by using map & operator.itemgetter to remove the inner loop:

csv.writer(fw).writerows(map(operator.itemgetter(1),csv.reader(fr)))

Also:

  • it's portable on all systems including windows without MSYS installed
  • it stops with exception in case of problem avoiding to destroy the input
  • the temporary file is created in the same filesystem on purpose so deleting+renaming is super fast (as opposed to moving temp file to input across filesystems which would require shutil.move & would copy the data)
1

You can take advantage of your multicore system, along with the tips of other users on handling a specific file faster.

FILES = ['a', 'b', 'c', 'd']
CORES = 4

q = multiprocessing.Queue(len(FILES))

for f in FILES:
    q.put(f)

def handler(q, i):
    while True:
        try:
            f = q.get(block=False)
        except Queue.Empty:
            return
        os.system("cut -f2 -d ',' {f} > tmp{i} && mv tmp{i} {f}".format(**locals()))

processes = [multiprocessing.Process(target=handler, args=(q, i)) for i in range(CORES)]

[p.start() for p in processes]
[p.join() for p in processes]

print "Done!"
  • 1
    Can you edit your answer to be in python3? I think most of the people who are going to read this in the future won't use python2. – yukashima huksay Jan 4 '18 at 20:08
  • Does multiprocessing really make a difference? I suspect that the IO is the most demanding part here. – klutt Jan 4 '18 at 20:09
  • [p.start() for p in processes] is unpythonic: don't use listcomps for side effects – Jean-François Fabre Jan 4 '18 at 20:09
  • @klutt: no need to bother multiprocessing. Multithreading does the same thing as system creates a new process anyway. – Jean-François Fabre Jan 4 '18 at 20:17
  • 1
    @Jean-FrançoisFabre Yes, but either way it seems to just add complexity and is possibly even slower. – klutt Jan 4 '18 at 20:19

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