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I have Pandas Series we'll call approved_fields which I'd like to use to filter a df by:

approved_field(['Field1','Field2','Field3')]

df
    Field
0   Field1
1   Field4
2   Field2
3   Field5
4   Field2

After applying the approved_field filter, the resulting df should look like:

    Field
0   Field1
1   Field2
2   Field2

Thanks!

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2 Answers 2

up vote 4 down vote accepted

You can use isin and boolean indexing:

>>> import pandas as pd
>>> df = pd.DataFrame({"Field": "Field1 Field4 Field2 Field5 Field2".split()})
>>> approved_fields = "Field1", "Field2", "Field3"
>>> df['Field'].isin(approved_fields)
0     True
1    False
2     True
3    False
4     True
Name: Field, dtype: bool
>>> df[df['Field'].isin(approved_fields)]
    Field
0  Field1
2  Field2
4  Field2
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Note that you indices in your expected solution are off

In [16]: approved_field = ['Field1','Field2','Field3']

In [17]: df = DataFrame(dict(Field = ['Field1','Field4','Field2','Field5','Field2']))

In [18]: df
Out[18]: 
    Field
0  Field1
1  Field4
2  Field2
3  Field5
4  Field2

In [19]: df[df.Field.isin(approved_field)]
Out[19]: 
    Field
0  Field1
2  Field2
4  Field2
share|improve this answer
    
Thanks Jeff, I fixed this in my OP –  ChrisArmstrong Jun 11 '13 at 14:49
    
Correct answer, DSM just beat you by 2 minutes! –  ChrisArmstrong Jun 11 '13 at 14:54
    
that's what they say about the hare and the rabbit :) –  Jeff Jun 11 '13 at 14:55
    
Not sure I'm sold on the dict(a=) notation, but anyway... –  Andy Hayden Jun 11 '13 at 16:49

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