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My data contains 700,00 rows

I have tried using a for-loop which took 30 hours. Please let me know faster way to get the result.

I am attaching the sample data set. Each row is unique with respective to Columns[period, dimname, facility, serv, cpt]. I want to find average for rolling months of column(gcr) against columns[period-dimname-facility-cpt]. (Last column(avg6month) contains desired result). For better understanding attached filter result set in JPEG format.

data.sort_values(by='period', inplace=True, ascending=True)
for fa in data.loc[(data.dimname == 'fac_cpt'), ].facility.dropna().unique():
    for pr in data.loc[(data.dimname == 'fac_cpt') & (data.facility == fa), ].cpt.dropna().unique():
        data.loc[(data.dimname == 'fac_cpt') & (data.facility == fa) & (data.cpt == pr), ['avg6monthgcr']]=round(data.loc[(data.dimname == 'fac_cpt') & (data.facility == fa) & (data.cpt == pr), ].gcr.rolling(6, min_periods=1).mean(), 4)

Sample_Data:

sample_data

Samples_Results:

result1 result2

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I managed to get what you need with vector operations, so it should be the fastest way possible.

import pandas as pd

data = pd.DataFrame({
    "period": [
        '3/1/2017', '3/1/2017', '3/1/2017', '3/1/2017', '3/1/2017', '3/1/2017', '3/1/2017',
        '4/1/2017', '4/1/2017', '4/1/2017', '4/1/2017', '4/1/2017', '4/1/2017', '4/1/2017'
    ],
    "dimname": [
        'fac_cpt', 'fac_cpt', 'fac_cpt', 'fac_cpt', 'fac_cpt', 'ser_cpt', 'ser_cpt',
        'fac_cpt', 'fac_cpt', 'fac_cpt', 'fac_cpt', 'fac_cpt', 'ser_cpt', 'ser_cpt'
    ],
    "facility": ['a', 'a', 'a', 'b', 'b', None, None, 'a', 'a', 'a', 'b', 'b', None, None],
    "cpt": ['p1', 'p2', 'p3', 'p1', 'p2', 'p1', 'p2', 'p1', 'p2', 'p3', 'p1', 'p2', 'p1', 'p1'],
    "ser": [None, None, None, None, None, 'c', 'c', None, None, None, None, None, 'd', 'd'],
    "gcr": [1, 10, 2, 3, 8, 12, 4, 4, 10, 2, 4, 11, 6, 2]
})
data.period = data.period.apply(pd.to_datetime)

data[["period", "dimname", "facility", "cpt", "gcr"]].groupby(
    ['dimname', 'facility', 'cpt']
).rolling(6, min_periods=1, on='period').mean().reset_index(
    3, drop=True
).reset_index().rename(columns={'gcr': 'avg6monthgcr'})
# Output:
  | dimname | facility | cpt | avg6monthgcr | period
----------------------------------------------------
0 | fac_cpt |        a |  p1 |          1.0 | 2017-03-01
1 | fac_cpt |        a |  p1 |          2.5 | 2017-04-01
2 | fac_cpt |        a |  p2 |         10.0 | 2017-03-01
3 | fac_cpt |        a |  p2 |         10.0 | 2017-04-01
4 | fac_cpt |        a |  p3 |          2.0 | 2017-03-01
5 | fac_cpt |        a |  p3 |          2.0 | 2017-04-01
6 | fac_cpt |        b |  p1 |          3.0 | 2017-03-01
7 | fac_cpt |        b |  p1 |          3.5 | 2017-04-01
8 | fac_cpt |        b |  p2 |          8.0 | 2017-03-01
9 | fac_cpt |        b |  p2 |          9.5 | 2017-04-01

I timed it on your dataset, but there was only a marginal gain, probably because all the initialization took the majority of the time, not the calculation, so you should give it a try on the full dataset.

# your method:
27.6 ms ± 1.85 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
# my method:
24.9 ms ± 2.03 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
  • Thank you for the response. Sorry it is not giving any results. Please reread my problem, I have rewritten my problem statement. – Raghavendra S Jan 15 at 2:36
  • I added my results when I run the above code, and it is giving exactly what you need. Could you add why it is not giving results for you? Is there an exception? – Hodossy Szabolcs Jan 15 at 7:26
  • I have Columns [period, dimname, facility, ser, cpt, gcr] and I need Column[avg6month]<-average of 6 month gcr(column name). To get avg6month I used for-loop which is taking huge time. Now I need other method which can do in much faster way. Thank you – Raghavendra S Jan 16 at 4:46
  • I have not bothered with the rename, but I have the gcr column containing the averages. I have updated the answer. – Hodossy Szabolcs Jan 16 at 9:13
  • Thank you so much. I got it. Could you please help to append the same(average of 6 months) at the end of the dataframe(As new column) – Raghavendra S 2 days ago

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