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()