for loops are quite expensive when it comes to execution time. I am building a correction algorithm and I've used peter norvig's code of spell correction . I modified it a bit and realized it is taking too long to execute the optimization on thousands of words.
The algorithm checks for 1 and 2 edit distance and corrects it. I've made it 3 . So that might increase the time (I am not sure). Here is a part of the end where the highest occurring words are used as reference:
def correct(word): candidates = (known([word]).union(known(edits1(word)))).union(known_edits2(word).union(known_edits3(word)) or [word]) # this is where the problem is candidate_new =  for candidate in candidates: #this statement isnt the problem if soundex(candidate) == soundex(word): candidate_new.append(candidate) return max(candidate_new, key=(NWORDS.get))
And it looks like the statement
for candidate in candidates is increasing the execution time. You could easily have a look at the code of peter norvig, Click here.
I've figured out the problem. It's in the statement
candidates = (known([word]).union(known(edits1(word))) ).union(known_edits2(word).union(known_edits3(word)) or [word])
def known_edits3(word): return set(e3 for e1 in edits1(word) for e2 in edits1(e1) for e3 in edits1(e2) if e3 in NWORDS)
It can be seen that there are 3 for loops inside
edits3 which increases execution time 3 fold.
edits2 has 2 for loops . so this is the culprit.
How do I minimize this expression?
itertools.repeat help out with this one??