I was working on a script which reading a folder of files(each of size ranging from 20 MB to 100 MB), modifies some data in each line, and writes back to a copy of the file.

with open(inputPath, 'r+') as myRead:
     my_list = myRead.readlines()
     new_my_list = clean_data(my_list)
with open(outPath, 'w+') as myWrite:
     tempT = time.time()
     myWrite.writelines('\n'.join(new_my_list) + '\n')
     print(time.time() - tempT)
print(inputPath, 'Cleaning Complete.')

On running this code with a 90 MB file (~900,000 lines), it printed 140 seconds as the time taken to write to the file. Here I used writelines(). So I searched for different ways to improve file writing speed, and in most of the articles that I read, it said write() and writelines() should not show any difference since I am writing a single concatenated string. I also checked the time taken for only the following statement:

new_string = '\n'.join(new_my_list) + '\n'

And it took only 0.4 seconds, so the large time taken was not because of creating the list. Just to try out write() I tried this code:

with open(inputPath, 'r+') as myRead:
     my_list = myRead.readlines()
     new_my_list = clean_data(my_list)
with open(outPath, 'w+') as myWrite:
     tempT = time.time()
     myWrite.write('\n'.join(new_my_list) + '\n')
     print(time.time() - tempT)
print(inputPath, 'Cleaning Complete.')

And it printed 2.5 seconds. Why is there such a large difference in the file writing time for write() and writelines() even though it is the same data? Is this normal behaviour or is there something wrong in my code? The output file seems to be the same for both cases, so I know that there is no loss in data.

  • 2
    upvote for finding a twisted way of using writelines with expected result and finding an unexpected caveat. – Jean-François Fabre Jun 15 '17 at 7:09
  • Also my clean_data() function strips each row, so extra newlines are removed. – Arjun Balgovind Jun 15 '17 at 7:16

file.writelines() expects an iterable of strings. It then proceeds to loop and call file.write() for each string in the iterable. In Python, the method does this:

def writelines(self, lines)
    for line in lines:

You are passing in a single large string, and a string is an iterable of strings too. When iterating you get individual characters, strings of length 1. So in effect you are making len(data) separate calls to file.write(). And that is slow, because you are building up a write buffer a single character at a time.

Don't pass in a single string to file.writelines(). Pass in a list or tuple or other iterable instead.

You could send in individual lines with added newline in a generator expression, for example:

 myWrite.writelines(line + '\n' for line in new_my_list)

Now, if you could make clean_data() a generator, yielding cleaned lines, you could stream data from the input file, through your data cleaning generator, and out to the output file without using any more memory than is required for the read and write buffers and however much state is needed to clean your lines:

with open(inputPath, 'r+') as myRead, open(outPath, 'w+') as myWrite:
    myWrite.writelines(line + '\n' for line in clean_data(myRead))

In addition, I'd consider updating clean_data() to emit lines with newlines included.

  • myWrite.writelines('\n'.join(my_list) + '\n') could just be myWrite.writelines("{}\n".format(x) for x in my_list) so that would be even faster; no list to build. – Jean-François Fabre Jun 15 '17 at 7:05
  • @Jean-FrançoisFabre: which is why I state to pass in a list or tuple or other iterable. :-) – Martijn Pieters Jun 15 '17 at 7:06
  • @Jean-FrançoisFabre: it may just be a memory-saving measure however, as the buffer still concatenates those lines until it is full. It would help if clean_data() was a generator. – Martijn Pieters Jun 15 '17 at 7:09
  • Thanks @MartijnPieters I think I've got a much better understanding of what python considers as iterables now. As of now my clean_data takes a list of all the rows from the input file, makes changes to each row, and returns a list of modified rows. Would it be more efficient to clean each row and write it immediately, or collect the rows into a list and write them all together as I am currently doing in my code? – Arjun Balgovind Jun 15 '17 at 7:26
  • @ArjunBalgovind: it'd be more memory efficient to clean each row as you read it, then use yield to pass on the result to the next step. Memory efficiency can translate into overall performance improvement if the file is large enough (as memory allocations take time too, and you want to avoid memory contention), and I/O slowness smoothes over the performance difference for small files. – Martijn Pieters Jun 15 '17 at 7:28

as a complement to Martijn answer, the best way would be to avoid to build the list using join in the first place

Just pass a generator comprehension to writelines, adding the newline in the end: no unnecessary memory allocation and no loop (besides the comprehension)

myWrite.writelines("{}\n".format(x) for x in my_list)

'write(arg)' method expects string as its argument. So once it calls, it will directly writes. this is the reason it is much faster. where as if you are using writelines() method, it expects list of string as iterator. so even if you are sending data to writelines, it assumes that it got iterator and it tries to iterate over it. so since it is an iterator it will take some time to iterate over and write it.

Is that clear ?

  • But its still a single string isn't it? It will iterate over 1 value? How will that affect write speed? – Arjun Balgovind Jun 15 '17 at 7:04
  • 1
    Yeah, you might want to suggest something like myWrite.writelines(['\n'.join(my_list) + '\n']) – mgilson Jun 15 '17 at 7:04
  • 4
    @ArjunBalgovind: a single string is an iterable of separate characters. – Martijn Pieters Jun 15 '17 at 7:07
  • @mgilson myWrite.writelines(['\n'.join(my_list) + '\n']) worked just as good, as myWrite.write(). I understand now why writelines was so slow. – Arjun Balgovind Jun 15 '17 at 7:22

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