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

                        GSR-EDA100C-MRI
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
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Try this

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

this should isolate the 38.96

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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)

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