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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", 
           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?

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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.

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