I need to evaluate levenshtein edit distance on unicode strings, which means that two strings containing identical content will need to be normalized to avoid biasing the edit distance.
Here is how I generate random unicode strings for my tests:
def random_unicode(length=10): ru = lambda: unichr(random.randint(0, 0x10ffff)) return ''.join([ru() for _ in xrange(length)])
And here is the simple test case that is failing:
import unicodedata uni = random_unicode() unicodedata.normalize(uni, 'NFD')
And here is the error:
UnicodeEncodeError: 'ascii' codec can't encode characters in position 0-9: ordinal not in range(128)
I checked to make sure that
uni was, indeed, a unicode object:
Can someone enlighten me?