I'm working on a project to parse out unique words from a large number of text files. I've got the file handling down, but I'm trying to refine the parsing procedure. Each file has a specific text segment that ends with certain phrases that I'm catching with a regex on my live system.
The parser should walk through each line, and check each word against 3 criteria:
- Longer than two characters
- Not in a predefined dictionary set
- Not already in the word list
The result should be a 2D array, each row a list of unique words per file, which is written to a CSV file using the
.writerow(foo) method after each file is processed.
My working code's below, but it's slow and kludgy, what am I missing?
My production system is running 2.5.1 with just the default modules (so NLTK is a no-go), can't be upgraded to 2.7+.
def process(line): line_strip = line.strip() return line_strip.translate(punct, string.punctuation) # Directory walking and initialization here report_set = set() with open(fullpath, 'r') as report: for line in report: # Strip out the CR/LF and punctuation from the input line line_check = process(line) if line_check == "FOOTNOTES": break for word in line_check.split(): word_check = word.lower() if ((word_check not in report_set) and (word_check not in dict_file) and (len(word) > 2)): report_set.append(word_check) report_list = list(report_set)
Edit: Updated my code based on steveha's recommendations.