Since this is Py2, using str
, it looks like you don't need to consider the full Unicode range; since you're doing this more than once, you can slightly improve on polku's answer using str.translate
:
# Create a translation table once, up front, that replaces non-digits with
import string
nondigits = ''.join(c for c in map(chr, range(256)) if not c.isdigit())
nondigit_to_space_table = string.maketrans(nondigits, ' ' * len(nondigits))
# Then, when you need to extract integers use the table to efficiently translate
# at C layer in a single function call:
xp = '93% (9774/10500)'
intstrs = xp.translate(nondigit_to_space_table).split() # ['93', '9774', 10500]
myints = map(int, intstrs) # Wrap in `list` constructor on Py3
Performance-wise, for the test string on my 64 bit Linux 2.7 build, using translate
takes about 374 nanoseconds to run, vs. 2.76 microseconds for the listcomp and join
solution; the listcomp+join
takes >7x longer. For larger strings (where the fixed overhead is trivial compared to the actual work), the listcomp+join
solution takes closer to 20x longer.
Main advantage to polku's solution is that it requires no changes on Py3 (on which it should seamlessly support non-ASCII strings), where str.translate
builds the translation table a different way there (str.translate
) and it would be impractical to make a translation table that handled all non-digits in the whole Unicode space.
xp
variable?split("%")
andsplit("/")
and trim away the parentheses and you should be set.