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'
    'Category': ['A','A','B','B','B','B','B'], 
    'SubCategory': ['X','Y','Y','Y','Z','Q','Y'], 
    'counter': [1,1,1,1,1,1,1]


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)
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

Your Answer


By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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