Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

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)[0] if is_type(x, float) else "non_numeric data", 

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?

share|improve this question
these are not public functions and are used (currently only on indexes); that said these could be used (in your pointed to example) on data as well, just not implemented; why don't you open an issue to request is_monotonic on columns (pretty easy to do), what are you trying to do? –  Jeff Jul 19 '13 at 18:12
you can figure this out btw, by sorting by a column (or columns), then calling is_monotonic on the index –  Jeff Jul 19 '13 at 18:17
Thanks @Jeff. This might be a silly question, but how/where/who with would I issue a request? –  Anne Jul 19 '13 at 20:16
not silly at all! pandas.pydata.org/pandas-docs/dev click on issues....also many goodies in the docs...so checkout the cookbook and 10min to pandas –  Jeff Jul 19 '13 at 20:27

1 Answer 1

Not sure about the algos documentation. If something is undocumented you can always, find it in the source code. This function is written is Cython for high performance, so it's a particularly dense example.

But about that ValueError, as you might expect, each column's datatype has to be general enough to accomodate all of its data. Override that by executing df.convert_objects(convert_numeric). Anything that is not a number (e.g., t) will be replaced with NaN. All numbers should become float64 type, and I would then expect is_monotonic_float64 for work.

Alternatively, I see there is also a pd.algos.is_monotonic_object, but I'm not sure how it behavies, e.g. how it compares t to 0.25823974.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.