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.

I have an input file consisting of lines with numbers and word sequences, structured like this:

number   w1    number
number   w2    number
number   w1 w2   number
number   w1 w3   number
number   w2 w3   number

I want to store the word sequences (so-called n-grams) in such a way that I can easily retrieve both numbers for each unique n-gram. What I do now, is the following:

all = {}
ngrams = {}
for line in open(file):
    m = re.search('\\\([1-9])-grams:',line.strip()) # find nr of words in sequence
    if m != None:
        n = int(m.group(1))
        ngrams = {} # reinitialize dict for new n
        m = re.search('(-[0-9]+?[\.]?[0-9]+)\t([^\t]+)\t?(-[0-9]+\.[0-9]+)?',line.strip()) #find numbers and word sequence
        if m != None:
            ngrams[m.group(2)] = '{0}|{1}'.format(m.group(1), m.group(3))
        elif "\end\\" == line.strip():
            all[int(n)] = ngrams

In this way I can easily and quite quickly find the numbers for e.g. the sequence s='w1 w2' this way:


The problem is that this storage procedure is rather slow, especially when there are a lot (>100k) of n-grams and I'm wondering whether there is a faster way to achieve the same result without having a decrease in access speed. Am I doing something suboptimal here? Where can I improve?

Thanks in advance,


share|improve this question
all is a built in function. don't reuse this name. –  Elazar Jun 27 '13 at 14:35
Which is slow: loading the data from disk, or using it? Both? –  Jason Orendorff Jun 27 '13 at 14:38
Using the data is slow. I didn't know there were ways to optimize "for l in open(f)" ?! –  niefpaarschoenen Jun 27 '13 at 14:41
@Elazar: yes, bad practice, I agree. –  niefpaarschoenen Jun 27 '13 at 14:46
@niefpaarschoenen: I meant to ask: which is slow, the code you posted that parses the data and puts it into the dictionaries; or the code that uses the dictionaries after that? –  Jason Orendorff Jun 27 '13 at 15:50

3 Answers 3

up vote 5 down vote accepted

I would try doing fewer regexp searches.

It's worth considering a few other things:

  • Storing all the data in a single dictionary may speed things up; a data hierarchy with extra layers doesn't help, perhaps counterintuitively.

  • Storing a tuple lets you avoid calling .format().

  • In CPython, code in functions is faster than global code.

Here's what it might look like:

def load(filename):
    ngrams = {}
    for line in open(filename):
        if line[0] == '\\':
            pass  # just ignore all these lines
            first, rest = line.split(None, 1)
            middle, last = rest.rsplit(None, 1)
            ngrams[middle] = first, last
    return ngrams

ngrams = load("ngrams.txt")

I would want to store int(first), int(last) rather than first, last. That would speed up access, but slow down load time. So it depends on your workload.

I disagree with johnthexii: doing this in Python should be much faster than talking to a database, even sqlite, as long as the data set fits in memory. (If you use a database, that means you can do the load once and not have to repeat it, so sqlite may end up being exactly what you want—but you can't do that with a :memory: database.)

share|improve this answer
A very good answer, but I'd change the if/else block to simply if not line[0] == '\\':, which saves two lines of code :) –  l4mpi Jun 27 '13 at 15:21
@l4mpi You're probably right! I wrote it like this because the comment on pass explains a pretty big difference between this and the original code. It seemed worth putting that up front. –  Jason Orendorff Jun 27 '13 at 16:02
Nice answer indeed, testing your suggestions right now. Will give feedback asap. –  niefpaarschoenen Jun 27 '13 at 20:04
I can already say though that for my purpose, storing the string is preferable to storing the number (float actually, not int, but I didn't specify that), because parsing is slow and access is ok. –  niefpaarschoenen Jun 27 '13 at 20:05
I managed to reduce my processing time with around 50%, mostly by getting rid of the regular expressions. Using a single dictionary actually slows it down quite a bit! And using a tuple doesn't help; if anything it was on average a little slower than the string format. Frustrating though that a C implementation that reads these same files is still 10 times faster. –  niefpaarschoenen Jun 27 '13 at 21:42

Regarding optimization of your code.

1) compile the regular expressions before loop. See help for re.compile.

2) Avoid regular expressions whenever it's possible. For example "-grams" string prepended with number can be checked by simple string comparison

share|improve this answer
This made a huge difference! –  niefpaarschoenen Jun 27 '13 at 21:18

Personally I would move to a database (sqllite3 is built in to python) with indexes. Indexes make queries go fast. Python also supports in memory sqllite databases.

You can also supply the special name :memory: to create a database in RAM.

share|improve this answer

Your Answer


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.