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I am very new in Pandas and hope that somebody at least can point me in the right direction.

Here comes the actual question:

df:

           time               Area      lon        lat      mode         ID
    1993-08-01 00:34:28          A  45.627800  34.733400     false       3183
    1993-08-01 00:34:28          A  45.699600  34.639300     false       3183
    1993-08-01 00:34:28          A  45.603800  34.730600     false       3183
    1992-03-21 01:13:18          A  45.686400  34.548100      false      3184
    1992-03-21 01:13:18          A  45.702400  34.554300     false       3184
    1992-03-21 01:13:18          B  45.304784  34.626540      NaN        3184
    1992-03-21 16:13:20          A  45.633800  34.709700     false       3185
    1992-03-21 16:13:20          A  45.643400  34.709000     true        3185
    1992-03-21 16:13:20          A  45.634600  34.959500     true        3185

I want to filter out all instances of ’ID’ that just has data from one ’Area’ (either A or B). The ’ID’ s I want must therefore have at least one instance of ’A’ AND ’B’ to be stored in a new data frame.

From df presented above only the entires presented below fits the constrain:

    1992-03-21 01:13:18          A  45.686400  34.548100      false      3184
    1992-03-21 01:13:18          A  45.702400  34.554300     false       3184
    1992-03-21 01:13:18          B  45.304784  34.626540      NaN        3184

Right now I’m about to try to do a regular for loop with if statements and a list to temporary store ’Area’ attributes for each ’ID’. This feels like a very bad approach and there must be some idiomatic pandas way of doing this.

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  • Why in output is missing 1992-03-21 01:13:18 A 45.686400 34.548100 false 3184 ?
    – jezrael
    Sep 28, 2016 at 7:52
  • I dont understand what you mean? The last two rows is the ones desired, as they is the only entries that shares a unique 'ID' and includes both Area A and B
    – PigFoot
    Sep 28, 2016 at 7:57
  • Hmm, but area A have 2 rows with ID=3184 and B only one. So why in output is only one row from category A and not both as in my answer below?
    – jezrael
    Sep 28, 2016 at 7:59
  • You are absolutely correct! I have now added the missing output value. I did a stupid mistake!
    – PigFoot
    Sep 28, 2016 at 8:03

2 Answers 2

0

I think you need pivot_table with dropna for removing all values which are not in all groups:

print (df.pivot_table(index='Area', columns='ID', values='lat').dropna(axis=1))
ID        3184
Area          
A     34.55120
B     34.62654

vals = df.pivot_table(index='Area', columns='ID', values='lat').dropna(axis=1).columns
print (vals)
Int64Index([3184], dtype='int64', name='ID')

Last use boolean indexing with isin:

print (df[df.ID.isin(vals)])
                  time Area        lon       lat   mode    ID
3  1992-03-21 01:13:18    A  45.686400  34.54810  False  3184
4  1992-03-21 01:13:18    A  45.702400  34.55430  False  3184
5  1992-03-21 01:13:18    B  45.304784  34.62654    NaN  3184
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  • Thank you very much! It works perfect and fast with the full dataset that has over 2 million rows.
    – PigFoot
    Oct 2, 2016 at 8:34
0

You can take a look at the following :

In [24]: df
Out[24]:
  area    id
0    A  3183
1    A  3183
2    A  3184
3    B  3184
4    A  3185
5    A  3185

In [25]: df[df.groupby('id')['area'].transform('nunique') > 1]
Out[25]:
  area    id
2    A  3184
3    B  3184

I reduced my example to the only 2 relevant columns (id and area), but this would work without problem with your full DataFrame.

I basically count the number of different areas for every ID, and filter out those with only one area.

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  • I tried your approach but it did not work for me. Perhaps I did something wrong. Thank you for the help anyway!
    – PigFoot
    Oct 2, 2016 at 8:36

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