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I would like to fill gaps in a column in my DataFrame using a cubic spline. If I were to export to a list then I could use the numpy's interp1d function and apply this to the missing values.

Is there a way to use this function inside pandas?

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I'm surprised you accepted the answer so fast (no offense, hayden ;) because I thought you especially wanted to interpolate time series, but I guess you didn't mean exactly pandas.TimeSeries. I am interested in exactly these topics as well, currently. See stackoverflow.com/questions/13941472/… –  K.-Michael Aye Dec 19 '12 at 8:37

1 Answer 1

up vote 4 down vote accepted

Most numpy/scipy function require the arguments only to be "array_like", iterp1d is no exception. Fortunately both Series and DataFrame are "array_like" so we don't need to leave pandas:

import pandas as pd
import numpy as np
from scipy.interpolate import interp1d

df = pd.DataFrame([np.arange(1, 6), [1, 8, 27, np.nan, 125]]).T

In [5]: df
   0    1
0  1    1
1  2    8
2  3   27
3  4  NaN
4  5  125

df2 = df.dropna() # interpolate on the non nan
f = interp1d(df2[0], df2[1], kind='cubic')
#f(4) == array(63.9999999999992)

df[1] = df[0].apply(f)

In [10]: df
   0    1
0  1    1
1  2    8
2  3   27
3  4   64
4  5  125

Note: I couldn't think of an example off the top of my head to pass in a DataFrame into the second argument (y)... but this ought to work too.

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Ahhh. I see. How would you do it if your X values in the interp1d function were the dataframe index values? –  user1911866 Dec 18 '12 at 12:30
You can set x = df.index and then pd.Series(f(x), index=x). :) –  Andy Hayden Dec 18 '12 at 12:43
OK thanks for your help! and last thing I hope. I have multiple columns each containing NaN data. Sol the df.dropna() drops too many rows. How do you apply that to one column only (i.e. 'data1') –  user1911866 Dec 18 '12 at 12:48
@user1911866 .dropna(subset=list_of_cols_to_drop) (see here) –  Andy Hayden Dec 18 '12 at 12:57
I'm so glad that I came up with the exact same method as hayden suggest: 1. dropna, 2. use x = df.index and 3. create a pd.Series(f(x), index=x). I think I finally see my pandas muscles growing.. ;) –  K.-Michael Aye Dec 19 '12 at 8:39

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