I'm not sure where to start with this so apologies for my lack of an attempt.

This is the initial shape of my data:

df = pd.DataFrame({
    'Year-Mth': ['1900-01'
                 ,'1901-02'
                 ,'1903-02'
                 ,'1903-03'
                 ,'1903-04'
                 ,'1911-08'
                 ,'1911-09'], 
    'Category': ['A','A','B','B','B','B','B'], 
    'SubCategory': ['X','Y','Y','Y','Z','Q','Y'], 
    'counter': [1,1,1,1,1,1,1]
})

df

This is the result I'd like to get to - the Mth-Year in the below has been resampled to 4 year buckets:

enter image description here

If possible I'd like to do this via a process that makes 'Year-Mth' resamplable - so I can easily switch to different buckets.

up vote 3 down vote accepted
cols = [df.SubCategory, pd.to_datetime(df['Year-Mth']), df.Category]
df1 = df.set_index(cols).counter

df1.unstack('Year-Mth').T.resample('60M', how='sum').stack(0).swaplevel(0, 1).sort_index().fillna('')

enter image description here

  • 4
    Compared to ayhan's answer, let's call this approach "rubikscubing your dataframe" – Boud Sep 9 '16 at 18:57
  • 1
    @Boud that gave me a good laugh... too true! – piRSquared Sep 9 '16 at 18:59
  • 2
    why the 60M? is that the same as using 5A, or would the other code need amending in order to use 5A? – whytheq Sep 9 '16 at 19:05
  • 1
    Honest answer... I saw @ayhan posted his answer already and I thought to myself "you better hurry up now!" and then I forgot what the yearly string was, I tried "5Y", that failed. I asked myself "should I look it up or just use '60M'"... and you know what I concluded. – piRSquared Sep 9 '16 at 19:07
  • pandas is an elegant thing - I need to keep playing and try to level-up ! – whytheq Sep 9 '16 at 21:05

Here's my attempt:

df['Year'] = pd.cut(df['Year-Mth'].str[:4].astype(int), 
                    bins=np.arange(1900, 1920, 5), right=False)
df.pivot_table(index=['SubCategory', 'Year'], columns='Category', 
               values='counter', aggfunc='sum').dropna(how='all').fillna(0)
Out: 
Category                    A    B
SubCategory Year                  
Q           [1910, 1915)  0.0  1.0
X           [1900, 1905)  1.0  0.0
Y           [1900, 1905)  1.0  2.0
            [1910, 1915)  0.0  1.0
Z           [1900, 1905)  0.0  1.0

The year column is not parameterized as pandas (or numpy) does not offer a cut option with step size, as far as I know. But I think it can be done with a little arithmetic on minimums/maximums. Something like:

df['Year'] = pd.to_datetime(df['Year-Mth']).dt.year
df['Year'] = pd.cut(df['Year'], bins=np.arange(df['Year'].min(), 
                    df['Year'].max() + 5, 5), right=False)

This wouldn't create nice bins like Excel does, though.

  • thanks for this answer - as you mention this doesn't create nice bins like xl - but if you get the data into a for where it is possible to use the resample function then I think it is more powerful than xl. – whytheq Sep 9 '16 at 19:02
  • Yeah but resample and similar methods are generally used with groupby. I don't know if that's possible with pivot_table. Similar to piRSquared's approach, you can use df.groupby(['SubCategory', pd.Grouper(key='Year', freq='5A'), 'Category'])['counter'].sum().unstack('Category').fillna(0) where 'Year' is a datetime type column (df['Year'] = pd.to_datetime(df['Year-Mth'])). – ayhan Sep 9 '16 at 19:29

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