I found pandas read_csv method to be faster than numpy loadtxt. Unfortunatly now I find myself in a situation where I have to go back to numpy because loadtxt has the option of setting
comments=['#','@']. Pandas read_csv method can only take one comment string like
comment='#' as far as I can tell from the help site. Any suggestions or workarounds that could make my life easier and make me not pivot back to numpy? Also why does pandas not support multiple comment indicators?
# save this in test.dat @ bla # bla 1 2 3 4
# does work, but only one type of comment is accounted for df = pd.read_csv('test.dat', index_col=0, header=None, comment='#') # does not work (not suprising reading the help) df = pd.read_csv('test.dat', index_col=0, header=None, comment=['#','@']) # does work but is slow df = np.loadtxt('test.dat', comments=['#','@'])