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I have the below data set consisting of cards swiped and time when swiped. The output has to be total no of cards swiped month and year wise.

Card No Date Time
34235   9/17/2018 5:19
56438   9/17/2018 5:57
634787  9/17/2018 5:58
79749   9/17/2018 5:59
48947   9/17/2018 6:00
3776    9/17/2018 6:07
34235   9/17/2018 6:20
56438   9/17/2018 6:23
634787  9/17/2018 6:29
79749   9/17/2018 6:35
48947   9/17/2018 6:43
3776    9/17/2018 7:05
34235   9/17/2018 7:06
56438   9/20/2018 14:25
634787  9/20/2018 14:25
79749   9/20/2018 14:26
48947   9/20/2018 14:27
3776    9/20/2018 14:28
34235   9/20/2018 14:29
56438   9/20/2018 14:32
634787  9/20/2018 14:34
79749   11/21/2018 7:58
48947   11/21/2018 8:02
3776    11/21/2018 8:02
634787  11/21/2018 8:05
79749   11/21/2018 8:11
48947   11/21/2018 8:13
3776    11/21/2018 8:20
34235   12/4/2018 14:36
56438   12/4/2018 14:37
634787  12/4/2018 14:44
79749   12/4/2018 14:44
48947   12/4/2018 14:52
3776    12/4/2018 14:54

Output

Month/Year Count
Sep/2018 21
Nov/2018 7
Dec/2018 6

I have tried using groupby but not able to reach the expected output.

  df1 = pd.DataFrame(data1, columns= ['Card No','Date Time'])

df2 = df1.groupby([df1['Date Time'].dt.year.rename('year'), df1['Date Time'].dt.month.rename('month')).agg({'count'}) 

How do I include the month name?

4
  • SO does not gear towards teaching you how to start with pandas. You are essentially asking us to code your task. Please refere to the pandas tutorials online, start learning here: https://pandas.pydata.org/pandas-docs/stable/getting_started/tutorials.html – Patrick Artner Sep 21 '19 at 9:48
  • since you're looking for a heads up, check out the dt.strftime accessor for your Date_Time column good luck! – Umar.H Sep 21 '19 at 9:53
  • 1
    df2 = df1.groupby([df1['Date Time'].dt.year.rename('year'), df1['Date Time'].dt.month.rename('month')).agg({'count'}) – Abhishek Anand Sep 21 '19 at 10:12
  • @PatrickArtner I edited the question with my partial answer . I have made progress. – Abhishek Anand Sep 21 '19 at 10:16
1

Since you made an attempt - this is how I would do it for your expected output,

df['month_'] = df['Date Time'].dt.strftime('%b')
df['year_'] = df['Date Time'].dt.strftime('%Y')
new_df = df.groupby(["month_", "year_"])["Card_No"].count().reset_index().sort_values(
    "Card_No", ascending=False)
print(new_df)
    month_  year_   Card No
2   Sep 2018    21
1   Nov 2018    7
0   Dec 2018    6

https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.Series.dt.strftime.html for more information.

Edit

to sort by Month you'd need some sort of integer value to work with (although some may know better)

    df['month_'] = df['Date Time'].dt.strftime('%m') # change %b to %m
   df['year_'] = df['Date Time'].dt.strftime('%Y')
   new_df = df.groupby(["month_", "year_"])["Card_No"].count().reset_index().sort_values(
    "month_")
11
  • I would like to sort by month and year . I tried by using but its not sorting as expected. new_df = df1.groupby(["month_", "year_"])["Card_No"].count().reset_index().sort_values( ["year_","month_"], ascending=[False,False]) – Abhishek Anand Sep 21 '19 at 10:38
  • it's difficult as it's an object now and not a datetime object. not really sure how to sort by month year without – Umar.H Sep 21 '19 at 10:41
  • Yes , its sorting by name of month but ideally it should be in the order of month – Abhishek Anand Sep 21 '19 at 10:44
  • Thanks for the edit . I have one more question on this . How do I calculate the average card swipes by month. Average card swipes is equal to count of swipes for month divided by number of days in that month . – Abhishek Anand Sep 21 '19 at 10:50
  • by month or month/year? does the .mean() method not help? – Umar.H Sep 21 '19 at 10:52

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