1

I have problem with converting pandas Series to datetime.datetime.

I got DataFrame - df, with column Timestamp of type: pandas._libs.tslibs.timestamps.Timestamp and column Timestamp-end of type: pandas._libs.tslibs.timedeltas.Timedelta enter image description here

I found that topic on SO: Converting pandas.tslib.Timestamp to datetime python but the suggestions on this topic did not work.

Is there any possibility to convert it into datetime? If no, how can I subtract Timestamp-end from Timestamp column of type to get date and time into Timestamp and Timedelta type?

How I created Timestamp column:

import adodbapi
import pandas as pd
import numpy as np
import datetime as dt

cursor = myConn.cursor()
cursor.execute(query)
# every row in query_list is type of SQLrow
query_list = [row for row in cursor]
df = pd.DataFrame({'TagAddress':[row[0] for row in query_list], 'Timestamp':[row[1] for row in query_list], 'Value':[row[3] for row in query_list]})

Timestamp-end column:

df['Timestamp-end'] = pd.NaT
# in for loop, dict values are type of timestamps.Timestamp
df['Timestamp-end'].iloc[i] = df['Timestamp'].iloc[i] - current_errors_timestamp[curr_fault_key]

My expected output (column Result):

I just want to subtract Timedelta from Timestamp to get new column Timestamp. With type datetime.datetime I can do it without any problems.

Timestamp               ErrorValue  Machine Station FAULT   Timestamp-end           Result
2020-06-20 08:01:09.562 370         T1      R1      1       0 days 00:00:06         2020-06-20 08:01:03
2020-06-20 08:01:21.881 370         T1      R1      0       0 days 00:00:12.319000  2020-06-20 08:01:09
2020-06-20 08:07:06.708 338         T1      R1      0       0 days 00:00:24.623000  2020-06-20 08:06:42
2020-06-20 08:07:31.041 338         T1      R1      0       0 days 00:00:18.333000  2020-06-20 08:07:13

1 Answer 1

2

I beleive you need convert column to dates:

df['Timestamp1'] = df['Timestamp'].dt.date

Or beter should be remove times, set them to 00:00:00:

df['Timestamp1'] = df['Timestamp'].dt.normalize()

And then subtract.

EDIT: You can subtract values and then use Series.dt.floor for seconds:

df['Timestamp-end'] = pd.to_timedelta(df['Timestamp-end'])
df['Result'] = df['Timestamp'].sub(df['Timestamp-end']).dt.floor('S')
print (df)
                Timestamp  ErrorValue Machine Station  FAULT   Timestamp-end  \
0 2020-06-20 08:01:09.562         370      T1      R1      1        00:00:06   
1 2020-06-20 08:01:21.881         370      T1      R1      0 00:00:12.319000   
2 2020-06-20 08:07:06.708         338      T1      R1      0 00:00:24.623000   
3 2020-06-20 08:07:31.041         338      T1      R1      0 00:00:18.333000   

               Result  
0 2020-06-20 08:01:03  
1 2020-06-20 08:01:09  
2 2020-06-20 08:06:42  
3 2020-06-20 08:07:12  
12
  • I need date and time into one column.
    – aozk
    Aug 17, 2020 at 6:46
  • Not understand, is possible create some sample data, 4-5 rows and expected output?
    – jezrael
    Aug 17, 2020 at 6:47
  • @aozk - Is possible edit question with input data, output data, becasue bad formatiing in comments?
    – jezrael
    Aug 19, 2020 at 5:48
  • I added expected output into question.
    – aozk
    Aug 19, 2020 at 5:52
  • 1
    My fault! i used to_datetime instead of to_timedelta, now everything works fine, I got everything I wanted. Thank you for your help!
    – aozk
    Aug 19, 2020 at 10:39

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.