1

I have a question about a pandas issue:

So I have a dataframe that looks like the following:

timestamp     user     exercises
2018-01-01    John         7
2018-01-01    Mary         9
2018-02-01    John         3
2018-02-01    Mary         2
2018-03-01    John         1
2018-03-01    Mary         5
2019-01-01    John         3
2019-01-01    Mary         4
2019-02-01    John         2
2019-02-01    Mary         5
2020-01-01    John         6
2020-01-01    Mary         2
2020-02-01    John         1
2020-02-01    Mary         2

And I need to get an output dataframe which is a subset of the given one, but it must only keep the data for the year 2018, like this:

    timestamp     user     exercises
    2018-01-01    John         7
    2018-01-01    Mary         9
    2018-02-01    John         3
    2018-02-01    Mary         2
    2018-03-01    John         1
    2018-03-01    Mary         5

Any ideas on how could I get this output dataframe from the given dataframe?

Thank you very much in advance.

Any help will be appreciated.

1
  • 1
    is timestamp a string or date type?
    – jose_bacoy
    May 3 '19 at 17:56
1

Try:

import pandas as pd
import datetime as dt

df = pd.DataFrame({"timestamp": ['2018-01-01',
                                 '2018-01-01',
                                 '2019-01-01',
                                 '2020-01-01'],
                   "user": ['john', 'mary', 'john', 'mary'],
                   'exercises': [7,9,3,2]},)


df['timestamp'] = pd.to_datetime(df['timestamp'])

df[df['timestamp'].dt.year == 2018]

input

    timestamp   user    exercises
0   2018-01-01  john    7
1   2018-01-01  mary    9
2   2019-01-01  john    3
3   2020-01-01  mary    2

output

timestamp   user    exercises
0   2018-01-01  john    7
1   2018-01-01  mary    9
0

Use Series.dt.year to select only the year 2018:

# df['timestamp'] = pd.to_datetime(df['timestamp'])

df_new = df[df['timestamp'].dt.year == 2018]

print(df_new)
   timestamp  user  exercises
0 2018-01-01  John          7
1 2018-01-01  Mary          9
2 2018-02-01  John          3
3 2018-02-01  Mary          2
4 2018-03-01  John          1
5 2018-03-01  Mary          5
0

If you are fond of lambdas, you can use below:

if timestamp is string:

df.loc[lambda df: df.timestamp.str[:4] == '2018']

if timestamp is date:

df.loc[lambda df: (pd.to_datetime(df.timestamp)).dt.year == 2018]
0
 import pandas as pd

 /* Convert the date column to Datetime format */

 data['DATE'] = pd.to_datetime(data['DATE'])

 /* Create mask for the required condition */

 mask = data['DATE'] <= '31-12-2018'

 /* apply mask to the data */

 data = data.loc[mask]

Try something like this and let me know if this helps.

0

Is your index is a DatetimeIndex? If so, you can call data.loc["2018"]. Internally, pandas will treat "2018" as the year 2018 and, because .loc slicing is inclusive on both edges, select all data in that year.

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.