I am interested in the quickest way to pull column header data from a file for later use. Below I tried two different methods: Subprocess/head and DictReader. The results were multiple magnitudes different.
import subprocess from csv import DictReader def head_test(): pipe = subprocess.Popen(['head','-n','1','file_data.txt'],stdout=subprocess.PIPE, universal_newlines=True) for row in pipe.stdout: fields = row.strip().split('\t') def dictreader_test(): with open('file_data.txt') as f: f_info = DictReader(f,delimiter='\t') fields = f_info.fieldnames def fopen_test(): with open('file_data.txt') as f: fields = next(f).strip().split('\t') def rstrip_test(): with open('file_data.txt') as f: fields = next(f).rstrip().split('\t') if __name__ == '__main__': import timeit print(timeit.timeit('head_test()', setup='from __main__ import head_test', number=10000)) print(timeit.timeit('dictreader_test()', setup='from __main__ import dictreader_test', number=100000)) print(timeit.timeit('fopen_test()', setup='from __main__ import fopen_test', number=100000)) print(timeit.timeit('rstrip_test()', setup='from __main__ import rstrip_test', number=100000))
Additional Results with last 3 tests bumped up to 100k:
1.85791897774 0.983640909195 0.973639011383
Even when the entire for loop in head_test is commented out it only accounts for about 20% of the time.
Two questions: - Is there an even quick way to obtain column header data? - What account for the major performance difference between these two methods?
Update: Added in additional tests from response suggestions