# How to count the daily number of cases with the fixed 2 month intervals?

I would like to count the daily number of cases with the fixed 2 month inverval (e.g., Jan-Feb, Mar-Apr, May-Jun, Jul-Aug, etc.). For instance,

``````import pandas as pd

d1 = pd.DataFrame({'ID': ["A", "A", "A", "B", "B", "C", "C", "C", "C", "D", "D", "D"],
"date": ["2010-12-30", "2010-02-27", "2010-02-26", "2012-01-01", "2012-01-03",
"2011-01-01", "2011-01-02", "2011-01-08", "2014-02-21", "2010-08-31", "2010-08-30", "2010-09-01"]})
``````

and the result that I would like to produce is as follows:

``````  ID        date  count
0  A  2010-01_02      2
1  A  2010-11_12      1
2  B  2012-01_02      2
3  C  2011-01_02      3
4  C  2014-01_02      1
5  D  2010-07_08      2
6  D  2010_09_10      1
``````

Do you have any ideas about how to do this? Calculating the monthly number of cases is rather stratighforward, but this issue is difficult for me. Thanks in advance!

• Answer was edited for N months groups. Dec 8, 2022 at 10:23

Use `Grouper` by frequency 2 months:

``````d1['date'] = pd.to_datetime(d1['date'])

df = (d1.groupby(['ID', pd.Grouper(freq='2m', key='date')])
.size()
.reset_index(name='count'))

m = df['date'].dt.month
df['date'] = (df['date'].dt.year.astype(str) + '-' +
m.sub(1).astype(str).str.zfill(2) + '_' +
m.astype(str).str.zfill(2))
print (df)
ID        date  count
0  A  2010-01_02      2
1  A  2010-11_12      1
2  B  2012-01_02      2
3  C  2011-01_02      3
4  C  2014-01_02      1
5  D  2010-07_08      2
6  D  2010-09_10      1
``````

Because `Grouper` working dynamically - use first datetime per group for specify groups for mapping by months use:

``````d1['date'] = pd.to_datetime(d1['date'])

N = 3 # for correct groups possible use 2,3,4,6
df1 = pd.DataFrame({'month':range(1, 13)})
df1.index = df1.index // N

df1['group'] = (df1['month'].astype(str).str.zfill(2)
.groupby(level=0)
.transform(lambda x: x.iat[0] + '_' + x.iat[-1]))
d = df1.set_index('month')['group'].to_dict()
print (d)
{1: '01_03', 2: '01_03', 3: '01_03', 4: '04_06',
5: '04_06', 6: '04_06', 7: '07_09', 8: '07_09',
9: '07_09', 10: '10_12', 11: '10_12', 12: '10_12'}

df = d1.groupby(['ID',
d1['date'].dt.strftime('%Y-').rename('Y'),
d1['date'].dt.month.map(d)]).size().reset_index(name="count")

df['date'] = df.pop('Y') + df['date']

print (df)
ID        date  count
0  A  2010-01_03      2
1  A  2010-10_12      1
2  B  2012-01_03      2
3  C  2011-01_03      3
4  C  2014-01_03      1
5  D  2010-07_09      3
``````
``````def solve(intervals):
if not intervals:
return 0
intervals.sort(key=lambda x: (x[0], -x[1]))
end_mx = float("-inf")
ans = 0
for start, end in intervals:
if end <= end_mx:
ans += 1
end_mx = max(end_mx, end)
return ans

intervals = [[2, 6],[3, 4],[4, 7],[5, 5]]
print(solve(intervals))
``````