def do_it(data, a, b, c, d, e):
gender = data[:, 0]
weight = data[:, 1]
height = data[:, 2]
assert (len(data) == len(gender) == len(weight) == len(height))
where_are_nans = numpy.isnan(gender)
# gender[where_are_nans] = get_random_value()
test_calculate_probability()
logging.debug(where_are_nans)
for row in data[where_are_nans]:
zero = calculate_probability(
0, row[2], row[1], a, b, c, d, e)
one = calculate_probability(
1, row[2], row[1], a, b, c, d, e)