1

I want to fill NaN in a df using 'mean' and 'interpolate' depending on at what time of the day the NaN occur. As you can see below, the first NaN occur at 6 am and the second NaN is at 8 am.

02/03/2016 05:00    8
02/03/2016 06:00    NaN
02/03/2016 07:00    1
02/03/2016 08:00    NaN
02/03/2016 09:00    3

My df consists of thousand of days. I want to apply 'ffill' for any NaN occur before 7 am and apply 'interpolate' for those occur after 7 am. My data is from 6 am to 6 pm.

My attempt is:

df_imputed = (df.between_time("00:00:00", "07:00:00", include_start=True, include_end=False)).ffill()
df_imputed = (df.between_time("07:00:00", "18:00:00", include_start=True, include_end=True)).interpolate()   

But it cut my df down to the assigned time periods rather than filling the NaN as I want.

Edit: my df contains around 400 columns so the procedure will apply to all columns.

4

Original question: single series of values

You can define a Boolean series according to your condition, then interpolate or ffill as appropriate via numpy.where:

# setup
df = pd.DataFrame({'date': ['02/03/2016 05:00', '02/03/2016 06:00', '02/03/2016 07:00',
                            '02/03/2016 08:00', '02/03/2016 09:00'],
                   'value': [8, np.nan, 1, np.nan, 3]})
df['date'] = pd.to_datetime(df['date'])

# construct Boolean switch series
switch = (df['date'] - df['date'].dt.normalize()) > pd.to_timedelta('07:00:00')

# use numpy.where to differentiate between two scenarios
df['value'] = np.where(switch, df['value'].interpolate(), df['value'].ffill())

print(df)

                 date  value
0 2016-02-03 05:00:00    8.0
1 2016-02-03 06:00:00    8.0
2 2016-02-03 07:00:00    1.0
3 2016-02-03 08:00:00    2.0
4 2016-02-03 09:00:00    3.0

Updated question: multiple series of values

With multiple value columns, you can adjust the above solution using pd.DataFrame.where and iloc. Or, instead of iloc, you can use loc or other means (e.g. filter) of selecting columns:

# setup
df = pd.DataFrame({'date': ['02/03/2016 05:00', '02/03/2016 06:00', '02/03/2016 07:00',
                            '02/03/2016 08:00', '02/03/2016 09:00'],
                   'value': [8, np.nan, 1, np.nan, 3],
                   'value2': [3, np.nan, 2, np.nan, 6]})
df['date'] = pd.to_datetime(df['date'])

# construct Boolean switch series
switch = (df['date'] - df['date'].dt.normalize()) > pd.to_timedelta('07:00:00')

# use numpy.where to differentiate between two scenarios
df.iloc[:, 1:] = df.iloc[:, 1:].interpolate().where(switch, df.iloc[:, 1:].ffill())

print(df)

                 date  value  value2
0 2016-02-03 05:00:00    8.0     3.0
1 2016-02-03 06:00:00    8.0     3.0
2 2016-02-03 07:00:00    1.0     2.0
3 2016-02-03 08:00:00    2.0     4.0
4 2016-02-03 09:00:00    3.0     6.0
| improve this answer | |
  • thanks for your useful tips. I can use it for one column df. But, I forgot to write that my df has many columns. Please see my edit. – k.ko3n Dec 9 '18 at 23:00
  • How if column 'date' is set as index? – k.ko3n Dec 10 '18 at 10:35
  • Use df.index or promote to a column via df.reset_index(). – jpp Dec 10 '18 at 10:35
  • sorry, but first it reject 'dt', then it gives ValueError: Array conditional must be same shape as self. – k.ko3n Dec 10 '18 at 10:57
  • Can't reproduce, works fine for me. Looks like you are unable to manipulate your dataframe into the format I've defined. That's likely another question. – jpp Dec 10 '18 at 10:58

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