someone pointed me to a function in pandas.algos a couple of days ago (see http://stackoverflow.com/a/17705498/2565842) and I can't find any documentation on this. When I type "algos" or "is_monotonic_float64" (the function in question) in the pandas search box on http://pandas.pydata.org/pandas-docs/dev/, I don't get any results. Similarly, when I ask Google I don't get anything useful either.
The reason why I am looking for the docs is that I am having trouble with the types the function accepts. I have written two functions like this:
def is_monotonic(time_series, cols): return time_series.loc[:,cols].apply(lambda x: pandas.algos.is_monotonic_float64(x) if is_type(x, float) else "non_numeric data", axis=1) def is_type(series, t): return series.apply(lambda x: type(x) == t).all()
I run this on the following dataframe
0 1 2 3 4 A t t t t t B 0.2583974 0.3311106 0.933452 NaN 0.1908287 C 0.4400121 0.9548238 0.2953693 0.7027355 0.6149148 D 0.4049013 0.5930965 0.7073495 0.3801416 0.4931772
but then get as error
ValueError: ("Buffer dtype mismatch, expected 'float64_t' but got Python object"
When I check the types in the dataframe, the first row is strings, the others of type 'float'. Do I need to do some sort of type conversion to numpy.float64 here?