I have a dataframe where I store orders and the time at which they are received

order_id   time_placed
A1         2019-08-01 06:09:55.670712
A2         2019-08-01 06:09:55.687803
A3         2019-08-01 07:27:21.236759
A4         2019-08-01 07:27:21.256607
A5         2019-08-01 07:27:21.272751

There are may orders but the dataframe contains orders for the month. I want to know which hour I receive the most orders during the month. I tried creating a series like this.

  orders = pd.Series(order_list['order_id'].tolist(), index=order_list['time_placed'])

So that I could group by hour like this


But it doesn't make sense because I want to get the hour where I receive the most orders. How would I achieve this?


I want to get the hour where I receive the most orders

Here is nice use Series.value_counts, because by default sorting by counts.

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

s = df.time_placed.dt.hour.value_counts()
print (s)
7    3
6    2
Name: time_placed, dtype: int64

So for top hour select first index value:

h = s.index[0]
print (h)

And for top value select first value of Series:

no = s.iat[0]
print (no)
  • 1
    no means number of times the value appears right? – Wasswa Samuel Sep 4 at 10:36
  • @WasswaSamuel - it means top1 count – jezrael Sep 4 at 10:36
  • 1
    @WasswaSamuel - it means 3 orders are in 7 hour and it is top hour. – jezrael Sep 4 at 10:38

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.