Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

i wrote this block of code to get tons of blast results but it seems little slow because i use two 'for' loops to iterate over two files.So i'm wondering if theres a faster,greedy way to narrow down the iteration.

Here's the code

for tf_line in SeqIO.parse('deneme2.txt','fasta'):
    tf_line.description=tf_line.description.split()
    tempfile=open('tempfile.txt','w')
    for cd_line in SeqIO.parse('Mus_musculus.GRCm38.74.cdna.all.fa','fasta'):
        if cd_line.id==tf_line.description[1]:
            tempfile.write('>'+cd_line.id+'\n'+
                str(cd_line.seq)[int(tf_line.description[2])-100:
                                 int(tf_line.description[3])+100])
            tempfile.close()
            os.system('makeblastdb -in tempfile.txt -dbtype nucl '
                      '-out tempfile.db -title \'tempfile\'')
            cline = NcbiblastnCommandline(query='SRR029153.fasta' ,
                                          db="tempfile.db",
                                          outfmt=7,
                                          out=(tf_line.description[0]+' '+
                                               tf_line.description[1]))
            stdout,stderr=cline()

'deneme.txt' is 30 Mb big and something like this:

SRR029153.93098 ENSMUST00000103567 999 1147 TCAGGCCAAGTTTCTCTC

SRR029153.83280 ENSMUST00000181483 151 425 CAGGTTGAC

SRR029153.108993 ENSMUST00000184883 174 1415 TGGCACCTTTGC .....

'Mus_musculus.GRCm38.74.cdna.all.fa' file is 170 Mb big and something like this:

ENSMUST00000181483 ACACTGAAGAT.....

ENSMUST00000184883 ATCTTTTTTCTTTCAGGG.....

'Mus_musculus.GRCm38.74.cdna.all.fa' file has some sequence id's(ENSMUST...).I must find the matches between 'deneme.txt' file and 'Mus_musculus.GRCm38.74.cdna.all.fa.

It should take 4-5 hours but with this code it takes at least 10 hours

Any help would be appreciated because i must get rid of brutal algorithms like this and be greedier. Thanks

share|improve this question
    
How big is the Mus_musculus.GRCm38.74.cdna.all.fa? Seems like instead of reading that each time and looking for a match, you could cache the data into a hash structure (using the id for keys) before parsing deneme2.txt, and do a lookup against the tf_line.description[1]? – ernie Feb 19 '14 at 19:53
    
General advice: If you haven't profiled your script, please do so, so you know which commands use the most time. (Just run python -m cProfile myscript.py.) – Carsten Feb 19 '14 at 19:55
    
Help others to help you. Describe the task in plain English (it might allow to use an algorithm with better time complexity): what is input? how large is it? What is the expected result? Measure time performance. Provide standalone self-sufficient benchmark code that others can try (it allows to test correctness and time performance). Set goal: how fast is fast enough. – J.F. Sebastian Feb 19 '14 at 20:01
    
It's 170 Mb big but i'm kinda beginner,its only been several months since i started learning python and i didn't use dictionaries that much so can you be more expositive please. – mehmet Feb 19 '14 at 20:02
up vote 1 down vote accepted

I think this is still producing the same blasts but should be much faster. Read the comments in the code to to some more optimizing:

tf_data = {key: (int(val1), int(val2)) for key, val1, val2 in
           (line.description.split() for line in
            SeqIO.parse('deneme2.txt','fasta'))}

for cd_line in SeqIO.parse('Mus_musculus.GRCm38.74.cdna.all.fa','fasta'):
    if cd_line.id in tf_data;
        tempfile=open('tempfile.txt','w')

        tf_val1, tf_va2 = tf_data[cd_line.id]

        #If it is likely that the same tf_data-record is used many times
        #move the math to the first line, if on the other hand it is
        #very likely that most records won't be used in tf_data then
        #move the int-casts back to the line below
        tempfile.write('>{0}\n{1}'.format(
            cd_line.id,
            str(cd_line.seq)[tf_val1 - 100: tf_val2 + 100]))

        tempfile.close()
        os.system('makeblastdb -in tempfile.txt -dbtype nucl '
                  '-out tempfile.db -title \'tempfile\'')
        cline = NcbiblastnCommandline(
            query='SRR029153.fasta',
            db="tempfile.db",
            outfmt=7,
            out=("{0} {1}".format(tf_val1, tf_val2)))

        #Since not using stderr and stdout don't assign variables
        cline()
share|improve this answer
    
Thanks a lot.Thats a good approach for dividing the problem and getting rid of all the unnecessary iterations. – mehmet Feb 20 '14 at 0:00
    
You could probably speed up the first loop by parsing the file manually with regular expressions but I think most time is now spent on blasting. So to improve you would need multiprocessing. Anyways, if you're happy with the solution you should accept it ;) – deinonychusaur Feb 20 '14 at 12:54
    
Parsing isn't the problem here,its finding the proper match but using dictionaries will speed up the code.Multiproccessing is another thing :).Thanks again for your time. – mehmet Feb 20 '14 at 21:32
    
What I meant is that SeqIO.parse is probably slower than a specific re.search but that what you gain will probably only be in the range of a minute tops which isn't worth it for a 4h run – deinonychusaur Feb 20 '14 at 21:36
    
and accepting you do by clicking the sign to the left of the zero at the top of my answer (if you think my answer is correct / good) – deinonychusaur Feb 20 '14 at 21:37

Your Answer

 
discard

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.