26

I have a data set like so in a pandas dataframe:

                                  score
timestamp                                 
2013-06-29 00:52:28+00:00        -0.420070
2013-06-29 00:51:53+00:00        -0.445720
2013-06-28 16:40:43+00:00         0.508161
2013-06-28 15:10:30+00:00         0.921474
2013-06-28 15:10:17+00:00         0.876710

I need to get counts for the number of measurements, that occur so I am looking for something like this:

                                    count
   timestamp
   2013-06-29                       2
   2013-06-28                       3

I do not care about the sentiment column I want the count of the occurrences per day.

24

If your timestamp index is a DatetimeIndex:

import io
import pandas as pd
content = '''\
timestamp  score
2013-06-29 00:52:28+00:00        -0.420070
2013-06-29 00:51:53+00:00        -0.445720
2013-06-28 16:40:43+00:00         0.508161
2013-06-28 15:10:30+00:00         0.921474
2013-06-28 15:10:17+00:00         0.876710
'''

df = pd.read_table(io.BytesIO(content), sep='\s{2,}', parse_dates=[0], index_col=[0])

print(df)

so df looks like this:

                        score
timestamp                    
2013-06-29 00:52:28 -0.420070
2013-06-29 00:51:53 -0.445720
2013-06-28 16:40:43  0.508161
2013-06-28 15:10:30  0.921474
2013-06-28 15:10:17  0.876710

print(df.index)
# <class 'pandas.tseries.index.DatetimeIndex'>

You can use:

print(df.groupby(df.index.date).count())

which yields

            score
2013-06-28      3
2013-06-29      2

Note the importance of the parse_dates parameter. Without it, the index would just be a pandas.core.index.Index object. In which case you could not use df.index.date.

So the answer depends on the type(df.index), which you have not shown...

  • What if my index datatype is Int64Index ? I've changed it using pd.to_datetime(df["end_time"].astype('str'), format='%Y-%m-%d %H:%M:%S') so when I do df.dtypes it correctly returns datetime datatype however when I set end_time column as index and print index it returns Int64 datatype. – Ambleu Sep 20 '19 at 2:56
18

Otherwise, using the resample function.

In [419]: df
Out[419]: 
timestamp
2013-06-29 00:52:28   -0.420070
2013-06-29 00:51:53   -0.445720
2013-06-28 16:40:43    0.508161
2013-06-28 15:10:30    0.921474
2013-06-28 15:10:17    0.876710
Name: score, dtype: float64

In [420]: df.resample('D', how={'score':'count'})

Out[420]: 
2013-06-28    3
2013-06-29    2
dtype: int64

UPDATE : with pandas 0.18+

as @jbochi pointed out, resample with how is now deprecated. Use instead :

df.resample('D').apply({'score':'count'})
  • 2
    Resample with how is now deprecated. You should use df.resample('D').apply({'score':'count'}) – jbochi Jul 16 '16 at 14:31
10
In [145]: df
Out[145]: 
timestamp
2013-06-29 00:52:28   -0.420070
2013-06-29 00:51:53   -0.445720
2013-06-28 16:40:43    0.508161
2013-06-28 15:10:30    0.921474
2013-06-28 15:10:17    0.876710
Name: score, dtype: float64

In [160]: df.groupby(lambda x: x.date).count()
Out[160]: 
2013-06-28    3
2013-06-29    2
dtype: int64
  • Huh. Do you know why df.index[0].date returns <function date>? – TomAugspurger Jul 17 '13 at 17:29
  • Hmm. I do not. @Andy? – Dan Allan Jul 17 '13 at 17:48
  • Well, date.index.date is a property on the index which is of type DatetimeIndex, while index[0] is already a Timestamp only, that does not offer the date property, but links to a method of Timestamp. – K.-Michael Aye Jul 17 '13 at 22:23

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