I would like to construct an extension of `pandas.DataFrame`

— let's call it `SPDF`

— which could do stuff above and beyond what a simple `DataFrame`

can:

```
import pandas as pd
import numpy as np
def to_spdf(func):
"""Transform generic output of `func` to SPDF.
Returns
-------
wrapper : callable
"""
def wrapper(*args, **kwargs):
res = func(*args, **kwargs)
return SPDF(res)
return wrapper
class SPDF:
"""Special-purpose dataframe.
Parameters
----------
df : pandas.DataFrame
"""
def __init__(self, df):
self.df = df
def __repr__(self):
return repr(self.df)
def __getattr__(self, item):
res = getattr(self.df, item)
if callable(res):
res = to_spdf(res)
return res
if __name__ == "__main__":
# construct a generic SPDF
df = pd.DataFrame(np.eye(4))
an_spdf = SPDF(df)
# call .diff() to obtain another SPDF
print(an_spdf.diff())
```

Right now, methods of `DataFrame`

that return another `DataFrame`

, such as `.diff()`

in the MWE above, return me another `SPDF`

, which is great. However, I would also like to trick chained methods such as `.resample('M').last()`

or `.rolling(2).mean()`

into producing an `SPDF`

in the very end. I have failed so far because `.rolling()`

and the like are of type `callable`

, and my wrapper `to_spdf`

tries to construct an `SPDF`

from their output without 'waiting' for `.mean()`

or any other last part of the expression. Any ideas how to tackle this problem?

Thanks.

`SPDF`

. What it will give you a regular`DataFrame`

is incapable of?`SPDF`

"in the very end" and getting the expected result (i.e.`isinstance(an_spdf.rolling(2).mean(), SPDF)`

returns`True`

)