22
$\begingroup$

I have a dataframe that among other things, contains a column of the number of milliseconds passed since 1970-1-1. I need to convert this column of ints to timestamp data, so I can then ultimately convert it to a column of datetime data by adding the timestamp column series to a series that consists entirely of datetime values for 1970-1-1.

I know how to convert a series of strings to datetime data (pandas.to_datetime), but I can't find or come up with any solution to convert the entire column of ints to datetime data OR to timestamp data.

$\endgroup$

2 Answers 2

29
$\begingroup$

You can specify the unit of a pandas.to_datetime call.

Stolen from here:

# assuming `df` is your data frame and `date` is your column of timestamps

df['date'] = pandas.to_datetime(df['date'], unit='s')

Should work with integer datatypes, which makes sense if the unit is seconds since the epoch.

$\endgroup$
2
  • 2
    $\begingroup$ what's the revers function? $\endgroup$ Commented Jan 22, 2019 at 15:51
  • $\begingroup$ @FrancescoBoi to_timedelta $\endgroup$ Commented Sep 29, 2020 at 6:00
0
$\begingroup$

I have this Int Columns below:

import pandas as pd
import numpy as np
dplyr_1.dtypes
year             int64
 dplyr           int64
  data.table     int64
   pandas        int64
 apache-spark    int64
dtype: object

Convert the Int column to string:

dplyr_1.year = dplyr_1.year.astype(str)
dplyr_1.dtypes
year             object
 dplyr            int64
  data.table      int64
   pandas         int64
 apache-spark     int64
dtype: object

Make sure to convert the column to str or the output column will be Timestamp('1970-01-01 00:00:00.000002010')

dplyr_1.year = pd.to_datetime(dplyr_1.year)
dplyr_1.year[0]

Timestamp('2010-01-01 00:00:00')

So this is the Timestamp datatype. If you want to check all dtypes and the output column:

dplyr_1.info()
<class 'pandas.core.frame.DataFrame'>
RangeIndex: 12 entries, 0 to 11
Data columns (total 5 columns):
 #   Column         Non-Null Count  Dtype         
---  ------         --------------  -----         
 0   year           12 non-null     datetime64[ns]
 1    dplyr         12 non-null     int64         
 2     data.table   12 non-null     int64         
 3      pandas      12 non-null     int64         
 4    apache-spark  12 non-null     int64         
dtypes: datetime64[ns](1), int64(4)
memory usage: 608.0 bytes

dplyr_1.year
0    2010-01-01
1    2011-01-01
2    2012-01-01
3    2013-01-01
4    2014-01-01
5    2015-01-01
6    2016-01-01
7    2017-01-01
8    2018-01-01
9    2019-01-01
10   2020-01-01
11   2021-01-01
Name: year, dtype: datetime64[ns]
$\endgroup$

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.