5

I want to convert the DatetimeIndex in my DataFrame to float format,which can be analysed in my model.Could someone tell me how to do it? Do I need to use date2num()function? Many thanks!

8

Convert to Timedelta and extract the total seconds from dt.total_seconds:

df

        date
0 2013-01-01
1 2013-01-02
2 2013-01-03
3 2013-01-04
4 2013-01-05
5 2013-01-06
6 2013-01-07
7 2013-01-08
8 2013-01-09
9 2013-01-10

pd.to_timedelta(df.date).dt.total_seconds()

0    1.356998e+09
1    1.357085e+09
2    1.357171e+09
3    1.357258e+09
4    1.357344e+09
5    1.357430e+09
6    1.357517e+09
7    1.357603e+09
8    1.357690e+09
9    1.357776e+09
Name: date, dtype: float64

Or, maybe, the data would be more useful presented as an int type:

pd.to_timedelta(df.date).dt.total_seconds().astype(int)

0    1356998400
1    1357084800
2    1357171200
3    1357257600
4    1357344000
5    1357430400
6    1357516800
7    1357603200
8    1357689600
9    1357776000
Name: date, dtype: int64
  • Try df.date.values.astype(float) once – Bharath Sep 30 '17 at 13:06
  • @Bharathshetty cannot astype a datetimelike from [datetime64[ns]] to [float64] – cs95 Sep 30 '17 at 13:06
  • 1
    I think you got a wrong solution try pd.to_datetime(pd.to_timedelta(df.date).dt.total_seconds().values[0]) Its giving 1970 ... – Bharath Sep 30 '17 at 13:11
  • @Bharathshetty that's just how the function works. it doesn't understand that the number is the epochs. The solution isn't wrong. You should understand that the epoch time of 1970 is 0, that's when the Unix OS was developed at bell labs - hence the name "Unix Timestamp". – cs95 Sep 30 '17 at 13:13
  • I just thought op wanted the float representation of the datetime . I dont know what OP wants in reality. Lets see when he come back – Bharath Sep 30 '17 at 13:14
5

Use astype float i.e if you have a dataframe like

df = pd.DataFrame({'date': ['1998-03-01 00:00:01', '2001-04-01 00:00:01','1998-06-01 00:00:01','2001-08-01 00:00:01','2001-05-03 00:00:01','1994-03-01 00:00:01'] })
df['date'] = pd.to_datetime(df['date'])
df['x'] = list('abcdef')
df = df.set_index('date')

Then

df.index.values.astype(float)

array([  8.88710401e+17,   9.86083201e+17,   8.96659201e+17,
     9.96624001e+17,   9.88848001e+17,   7.62480001e+17])

pd.to_datetime(df.index.values.astype(float))

DatetimeIndex(['1998-03-01 00:00:01', '2001-04-01 00:00:01',
           '1998-06-01 00:00:01', '2001-08-01 00:00:01',
           '2001-05-03 00:00:01', '1994-03-01 00:00:01'],
          dtype='datetime64[ns]', freq=None)
  • Note that seconds since the epoch as of 2017 are of the order 10e9, so 10e17 is incorrect. See stackoverflow.com/a/46502880/4909087 and run stackoverflow.com/questions/4548684/… – cs95 Sep 30 '17 at 12:51
  • But when you convert it back to pd.to_datetime original date is returned na – Bharath Sep 30 '17 at 13:00
  • Yes, but I presume OP wants to work with the epoch time. I don't know what astype gives, but it seems like a bug? It's definitely not the epoch time. – cs95 Sep 30 '17 at 13:01
  • I get AttributeError when I use timedelta – Bharath Sep 30 '17 at 13:02
  • Oh, sorry. I started off with a datetime column. Let me modify. – cs95 Sep 30 '17 at 13:04
1

I found another solution:

df['date'] = df['date'].astype('datetime64').astype(int).astype(float)
  • I've checked it and it works for me. Can u say more about your problem? For me df['date'] has dtype: object, because I read it from csv. Maybe this is the difference. U can try this: df['date'].astype(int).astype(float) – Tomek Tajne Jul 28 '19 at 21:27

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