5

Take the following toy DataFrame:

data = np.arange(35, dtype=np.float32).reshape(7, 5)
data = pd.concat((
    pd.DataFrame(list('abcdefg'), columns=['field1']),
    pd.DataFrame(data, columns=['field2', '2014', '2015', '2016', '2017'])),
    axis=1)

data.iloc[1:4, 4:] = np.nan
data.iloc[4, 3:] = np.nan

print(data)
  field1  field2  2014  2015  2016  2017
0      a     0.0   1.0   2.0   3.0   4.0
1      b     5.0   6.0   7.0   NaN   NaN
2      c    10.0  11.0  12.0   NaN   NaN
3      d    15.0  16.0  17.0   NaN   NaN
4      e    20.0  21.0   NaN   NaN   NaN
5      f    25.0  26.0  27.0  28.0  29.0
6      g    30.0  31.0  32.0  33.0  34.0

I'd like to replace the "year" columns (2014-2017) with two fields: the most recent non-null observation, and the corresponding year of that observation. Assume field1 is a unique key. (I'm not looking to do any groupby ops, just 1 row per record.) I.e.:

  field1  field2   obs  date
0      a     0.0   4.0  2017
1      b     5.0   7.0  2015
2      c    10.0  12.0  2015
3      d    15.0  17.0  2015
4      e    20.0  21.0  2014
5      f    25.0  29.0  2017
6      g    30.0  34.0  2017

I've gotten this far:

pd.melt(data, id_vars=['field1', 'field2'], 
        value_vars=['2014', '2015', '2016', '2017'])\
    .dropna(subset=['value'])

   field1  field2 variable  value
0       a     0.0     2014    1.0
1       b     5.0     2014    6.0
2       c    10.0     2014   11.0
3       d    15.0     2014   16.0
4       e    20.0     2014   21.0
5       f    25.0     2014   26.0
6       g    30.0     2014   31.0
# ...

But am struggling with how to pivot back to desired format.

4

Maybe:

d2 = data.melt(id_vars=["field1", "field2"], var_name="date", value_name="obs").dropna(subset=["obs"])
d2["date"] = d2["date"].astype(int)
df = d2.loc[d2.groupby(["field1", "field2"])["date"].idxmax()]

which gives me

   field1  field2  date   obs
21      a     0.0  2017   4.0
8       b     5.0  2015   7.0
9       c    10.0  2015  12.0
10      d    15.0  2015  17.0
4       e    20.0  2014  21.0
26      f    25.0  2017  29.0
27      g    30.0  2017  34.0
3

what about the following apporach:

In [160]: df
Out[160]:
  field1  field2  2014  2015  2016  2017
0      a     0.0   1.0   2.0   3.0 -10.0
1      b     5.0   6.0   7.0   NaN   NaN
2      c    10.0  11.0  12.0   NaN   NaN
3      d    15.0  16.0  17.0   NaN   NaN
4      e    20.0  21.0   NaN   NaN   NaN
5      f    25.0  26.0  27.0  28.0  29.0
6      g    30.0  31.0  32.0  33.0  34.0

In [180]: df.groupby(lambda x: 'obs' if x.isdigit() else x, axis=1) \
     ...:   .last() \
     ...:   .assign(date=df.filter(regex='^\d{4}').loc[:, ::-1].notnull().idxmax(1))
Out[180]:
  field1  field2   obs  date
0      a     0.0 -10.0  2017
1      b     5.0   7.0  2015
2      c    10.0  12.0  2015
3      d    15.0  17.0  2015
4      e    20.0  21.0  2014
5      f    25.0  29.0  2017
6      g    30.0  34.0  2017
  • 2
    I'm not sure about this one -- IIUC, the OP wants the most recent valid value, not the maximum. In the given dataset, they're the same, but if (e.g.) a for 2017 was -10, I think that's what we should return. – DSM Dec 12 '17 at 22:33
  • @DSM, thank you for the clarification! I think if i will replace max() with last() it'll do the trick... – MaxU Dec 12 '17 at 22:35
  • 1
    But now you're using the last obs but the maximum date (so 2016, not 2017). [To clarify, I mean "the date at which the maximum is reached", I'm just lazy to the point of being wrong.] You need the equivalent of idxlast() (which doesn't exist, but YKWIM.) – DSM Dec 12 '17 at 22:41
2

last_valid_index + agg('last')

A=data.iloc[:,2:].apply(lambda x : x.last_valid_index(),1)
B=data.groupby(['value'] * data.shape[1], 1).agg('last')
data['date']=A
data['obs']=B

data
Out[1326]: 
  field1  field2  2014  2015  2016  2017  date   obs
0      a     0.0   1.0   2.0   3.0   4.0  2017   4.0
1      b     5.0   6.0   7.0   NaN   NaN  2015   7.0
2      c    10.0  11.0  12.0   NaN   NaN  2015  12.0
3      d    15.0  16.0  17.0   NaN   NaN  2015  17.0
4      e    20.0  21.0   NaN   NaN   NaN  2014  21.0
5      f    25.0  26.0  27.0  28.0  29.0  2017  29.0
6      g    30.0  31.0  32.0  33.0  34.0  2017  34.0

By using assign we can push them into one line as blow

data.assign(date=data.iloc[:,2:].apply(lambda x : x.last_valid_index(),1),obs=data.groupby(['value'] * data.shape[1], 1).agg('last'))
Out[1340]: 
  field1  field2  2014  2015  2016  2017  date   obs
0      a     0.0   1.0   2.0   3.0   4.0  2017   4.0
1      b     5.0   6.0   7.0   NaN   NaN  2015   7.0
2      c    10.0  11.0  12.0   NaN   NaN  2015  12.0
3      d    15.0  16.0  17.0   NaN   NaN  2015  17.0
4      e    20.0  21.0   NaN   NaN   NaN  2014  21.0
5      f    25.0  26.0  27.0  28.0  29.0  2017  29.0
6      g    30.0  31.0  32.0  33.0  34.0  2017  34.0
1

Also another possibility by using sort_values and drop_duplicates:

data.melt(id_vars=["field1", "field2"], var_name="date", 
          value_name="obs")\
    .dropna(subset=['obs'])\
    .sort_values(['field1', 'date'], ascending=[True, False])\
    .drop_duplicates('field1', keep='first')

which gives you

   field1  field2  date   obs
21      a     0.0  2017   4.0
8       b     5.0  2015   7.0
9       c    10.0  2015  12.0
10      d    15.0  2015  17.0
4       e    20.0  2014  21.0
26      f    25.0  2017  29.0
27      g    30.0  2017  34.0
  • @bradsolomon, life is always better with options – DJK Dec 13 '17 at 2:18

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.