I am trying to implement my own custom class to store data. I want to make it compatible with NumPy, so that I can call NumPy functions on it like this:

np.sin(my_object)

I know that there is a dictionary called __array_interface__, however I am getting lots of strange errors when trying to use it.

import numpy as np
import pandas as pd

class TDF:
    __array_interface__ = {'typestr': '|i1', 'version': 1}

    def __init__(self):
        self.ddata = pd.DataFrame([1, 2, 3])
        self.shape = self.ddata.shape

    def __iter__(self):
        return iter(self.ddata)

    def __len__(self):
        return len(self.ddata)

    def __getitem__(self, key):
        return self.ddata.__getitem__(key)

if __name__ == '__main__':
    tdf1 = TDF()
    tdf = np.sin(tdf1)

The code above gives me a run-time error:

ValueError: setting an array element with a sequence.

What am I missing? On the other hand the source code for pandas (which classes are NumPy compatible) does not explicitly use the array_interface dict...

up vote 1 down vote accepted

A simple fix would be to implement

def __array__(self):
    return self.ddata
  • 1
    Thanks. Yes - that is what was needed. And if you want to have the result of a numpy function be of your custom type, you also have to add the method array_wrap. – Tomasz R Apr 20 '17 at 15:10
  • And sometimes __array_prepare__ too. Coming soon to a numpy near you: __array_ufunc__, which does a better job of what __array_wrap__ does – Eric Apr 20 '17 at 16:37

You are not accessing the data you stored in the object. The variable tdf1 is just the TDF instance, but the data is stored in tdf1.ddata. Try calling np.sin(tdf1.ddata)

  • very well. That is indeed the fix – kmario23 Apr 19 '17 at 13:30
  • 1
    But the whole point is to access the data stored in the object seamlessly, without directly pointing to it. When you use numpy functions on pandas objects, you do not need to specify the variable that pandas stores data internally – Tomasz R Apr 19 '17 at 14:17
  • @Tomasz R: Try def __array__(self): return np.array(self.ddata) – stovfl Apr 19 '17 at 15:51
  • 1
    @Grr: If you have a __array_interface__ attribut, __array__ is never called. But, realized this is not what @Tomasz R want, it's only TypeCasting from pandas.column to np.array. As for now I think it's the nearest solution to come. – stovfl Apr 20 '17 at 12:13
  • 1
    Thanks, all. Yes, array is enough and it must not be put together with array_interface. And if you want the returned value to be of your custom type, you have to also implement array_wrap – Tomasz R Apr 20 '17 at 15:11

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