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 a directory of 1,000 files. Each file has many lines where each line is an ngram varying from 4 - 8 bytes. I'm trying to parse all files to get the distinct ngrams as a header row, then for each file, I want to write a row that has the frequency of that ngram sequence occurring within the file.

The following code made it through gathering the headers, but hit a memory error when trying to write the headers to the csv file. I was running it on an Amazon EC2 instance with 30GB of RAM. Can anyone provide recommendations for optimizations of which I'm unaware?

#Note: A combination of a list and a set is used to maintain order of metadata
#but still get performance since non-meta headers do not need to maintain order
header_list = []
header_set = set()
header_list.extend(META_LIST)
for ngram_dir in NGRAM_DIRS:
  ngram_files = os.listdir(ngram_dir)
  for ngram_file in ngram_files:      
      with open(ngram_dir+ngram_file, 'r') as file:
        for line in file:
          if not '.' in line and line.rstrip('\n') not in IGNORE_LIST:
            header_set.add(line.rstrip('\n'))

header_list.extend(header_set)#MEMORY ERROR OCCURRED HERE

outfile = open(MODEL_DIR+MODEL_FILE_NAME, 'w')
csvwriter = csv.writer(outfile)
csvwriter.writerow(header_list)

#Convert ngram representations to vector model of frequencies
for ngram_dir in NGRAM_DIRS:
  ngram_files = os.listdir(ngram_dir)
  for ngram_file in ngram_files:      
      with open(ngram_dir+ngram_file, 'r') as file:
        write_list = []
        linecount = 0
        header_dict = collections.OrderedDict.fromkeys(header_set, 0)
        while linecount < META_FIELDS: #META_FIELDS = 3
          line = file.readline()
          write_list.append(line.rstrip('\n'))
          linecount += 1 
        file_counter = collections.Counter(line.rstrip('\n') for line in file)
        header_dict.update(file_counter)
        for value in header_dict.itervalues():
          write_list.append(value)
        csvwriter.writerow(write_list)

outfile.close() 
share|improve this question

1 Answer 1

Just don't extend that list then. Use chain from itertools to chain the list and set instead.

Instead of this:

header_list.extend(header_set)#MEMORY ERROR OCCURRED HERE

Do this (assuming csvwriter.writerow accepts any iterator):

headers = itertools.chain(header_list, header_set)
...
csvwriter.writerow(headers)

That should at least avoid the memory issue you're currently seeing.

share|improve this answer

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.