I am new to Python and I have imported a dataframe with the first column of this df looking as follows (type float64):

2019-05-10 15:59:34.004378    38.967896
2019-05-10 15:59:34.004478    38.964844
2019-05-10 15:59:34.004578    38.966370
2019-05-10 15:59:34.004678    38.964844

As you can see, this column includes a combination of the date, the time as well as the value I am interested in (38.96...). Is there a way to split up this column into three single columns displaying 'date', 'time', and 'value' and attach it to the existing data frame?

(All suggestions I tried [e.g. df.str.split or df.str.extract] did not work with the float64 datatype since they are based in string characters).

All help is much appreciated!

  • df[["date", "time", "value"]] = df["GSR-EDA100C-MRI"].str.split(expand=True) ? – Rakesh Jun 19 at 18:13
  • How can a float data type column looks like what you show? – Quang Hoang Jun 19 at 18:18
  • The first suggestion unfortunately does not work, I get the error "AttributeError: Can only use .str accessor with string values, which use np.object_ dtype in pandas" Also, if I run "df.dtypes" I get GSR-EDA100C-MRI float64. – Fke4 Jun 19 at 18:22

Try this

df = df.split(' ')[-1]

this should isolate the 38.96


It does not make sense that your column is a float! But you could try casting it to string(object) and then split

df[["date", "time", "value"]] = df["GSR-EDA100C-MRI"].astype(str).str.split(expand=True)

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.