I am really new of Pandas and I have a problem how to calculate the average value of a set of time.

I have a csv file with columns: Date, Time, Outside temperature

I imported and modify it as:

df = pd.read_csv("./file.csv", parse_dates=[0], dayfirst=True)
df["Date"] = pd.to_datetime(df["Date"])
df["Time"] = pd.to_datetime(df["Time"]).dt.time

I prefer to have the date and time separate in two different columns and not use them as index.

I already extracted the part I need and obtaining something like this:

           Date      Time  Outside Temperature
4343 2006-06-30  13:00:00                 15.9
4344 2006-06-30  13:10:00                 15.9
4345 2006-06-30  13:20:00                 15.9
4346 2006-06-30  13:30:00                 15.9
4347 2006-06-30  13:40:00                 15.9

as you can see at same temperature I have different time, I would like to have the average value of the time, something like: 13:22:34

How can I do it?

I checked other questions as: Average time for datetime list, I tried several way to access to the time, for example:


but I obtain the error:

AttributeError: Can only use .dt accessor with datetimelike values

I think I make a mistake in the conversion to timestamp.

Do you have any suggestion?

I am using python3.5 and pandas 0.20.2

Thanks a lot



The original csv file for the time has the format hh:mm without the seconds.


I think you can use timedelatas by to_timedelta, then convert to ns, get mean and convert back:

df = pd.read_csv("./file.csv", parse_dates=[0], dayfirst=True)

a = pd.to_timedelta(df["Time"] + ':00').mean()
print (a)
0 days 13:20:00

a = pd.to_timedelta(pd.to_timedelta(df["Time"] + ':00').values.astype(np.int64).mean())
print (a)
0 days 13:20:00

If need average time for each unique dates:

df['td']= pd.to_timedelta(df["Time"] + ':00').values.astype(np.int64)
df1 = pd.to_timedelta(df.groupby('Date')['td'].mean()).reset_index()
print (df1)
        Date       td
0 2006-06-30 13:20:00

... or for unique temperature:

df['td']= pd.to_timedelta(df["Time"] + ':00').values.astype(np.int64)
df1 = pd.to_timedelta(df.groupby('Outside Temperature')['td'].mean()).reset_index()
print (df1)
   Outside Temperature       td
0                 15.9 13:20:00

...or mean of temperature and times:

df['Time']= pd.to_timedelta(df["Time"]).values.astype(np.int64)
df1 = df.groupby('Date', as_index=False).mean()
df1['Time']= pd.to_timedelta(df1["Time"])
print (df1)
        Date     Time  Outside Temperature
0 2006-06-30 13:20:00                 15.9
  • thanks for the answer but I obtain this error: TypeError: object of type 'datetime.time' has no len() During handling of the above exception, another exception occurred: ValueError: Invalid type for timedelta scalar: <class 'datetime.time'> – cicciodevoto Jul 7 '17 at 7:14
  • You cannot convert to times not to datetimes, because column date is converted in read_csv by parse_date parameter. And type of time column need string. I add to answer read_csv. Need remove df["Date"] = pd.to_datetime(df["Date"]) df["Time"] = pd.to_datetime(df["Time"]).dt.time – jezrael Jul 7 '17 at 7:22
  • Yes sorry I saw later your other answer. The problem is the csv file doesn't have seconds is in the format: hh:mm, and when I run it wants the format hh:mm:ss Is there a way to avoid it? – cicciodevoto Jul 7 '17 at 7:31
  • Then need df['td']= pd.to_timedelta(df["Time"] + ':00').values.astype(np.int64) – jezrael Jul 7 '17 at 7:33
  • 1
    Thanks a lot! Your answer was perfect! – cicciodevoto Jul 7 '17 at 9:48

To take mean of time you convert time series to timedelta type and take mean. To get average of time and temperature for a perticular date use groupby


If Time column only contains hh:mm you need to add secs in it

df['Time'] = pd.to_timedelta(df["Time"] + ':00')


         Date     Time  Outside Temperature
0  2006-06-30 13:00:00                 15.9
1  2006-06-30 13:10:00                 15.9
2  2006-06-30 13:20:00                 15.9
3  2006-06-30 13:30:00                 15.9
4  2006-06-30 13:40:00                 15.9

Convert Time to int so that it can be used in groupby

df['Time'] = df['Time'].astype(int)

Group by date column and get mean of time and Outside Temperature

df = df.groupby(['Date'])['Time', 'Outside Temperature'].mean()

Now again convert time series to Timedelta type

df['Time'] = pd.to_timedelta(df['Time'])


               Time  Outside Temperature
2006-06-30 13:20:00                 15.9
  • What pandas version do you use? – jezrael Jul 7 '17 at 7:29
  • @jezrael its 0.19.1 and python version 3.4.3. Installing newest version 0.20.1. – Akshay Kandul Jul 7 '17 at 7:31
  • for me in 0.20.2 it does not work...I use windows and you? – jezrael Jul 7 '17 at 7:42
  • @jezrael, just updated my pandas package to 0.20.2 it still works on that. Btw am using ubuntu. – Akshay Kandul Jul 7 '17 at 8:40
  • Hmm, so there is difference. Thanks. – jezrael Jul 7 '17 at 8:41

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.