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I'm reindexing a dataframe in the standard way, i.e.

df.reindex(newIndex,method='ffill')

But realized I need to handle missing data differently on a column-by-column basis. That is, for some columns I want to ffill, but for others I want to missing values recorded as NAs.

For simplicity, let's say I have column X that I want ffilled, and column Y that I want NA-filled. How can I call .reindex to accomplish this?

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Can't you call it twice? With columns=[Y] argument and columns=[X] argument? –  jaor Oct 31 '13 at 0:03
    
@jaor So you mean doing two separate indexes, and then merging the two resulting dataframes? –  moustachio Oct 31 '13 at 0:08
    
I guess. Parameter columns affect only specified columns. It's all in here I guess pandas.pydata.org/pandas-docs/stable/generated/… –  jaor Oct 31 '13 at 0:16
    
reindex, then fillna on individual columns as needed –  Jeff Oct 31 '13 at 1:07

1 Answer 1

up vote 3 down vote accepted

You can reindex() first, and then call ffill() for columns:

import pandas as pd
df = pd.DataFrame({"A":[10, 20, 30], "B":[100, 200, 300], 
                   "C":[100, 200, 300]}, index=[2, 6, 8])
df2 = df.reindex([2,4,6,8,10])

for col in ["A", "B"]:
    df2[col].ffill(inplace=True)
print df2

output:

    A    B    C
2   10  100  100
4   10  100  NaN
6   20  200  200
8   30  300  300
10  30  300  NaN
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