I am trying to remove some outliers from a data series using quantiles but I can't get DataFrame.quantile() to work if my data has NaNs.

I've read some other people having similar issues with DataFrame.describe(), but this is not an issue for me.

I would appreciate if anyone has some ideas to get around this.

df_temp
    Out[21]: 
                     StrmTemp
    Date/Time                    
    2017-05-09 00:00:00     7.057
    2017-05-09 00:30:00     7.057
    2017-05-09 01:00:00     7.057
    2017-05-09 01:30:00     6.555
    2017-05-09 02:00:00     7.057
    2017-05-09 02:30:00     6.555
    2017-05-09 03:00:00     6.555
    2017-05-09 03:30:00     6.555
    2017-05-09 04:00:00     6.555
    2017-05-09 04:30:00     6.555
                          ...
    2017-10-22 09:00:00       NaN
    2017-10-22 09:30:00       NaN
    2017-10-22 10:00:00       NaN

My code:

def remove_outlier(df_in, col_name):
        q1 = df_in[col_name].quantile(0.25)
        q3 = df_in[col_name].quantile(0.75)
        iqr = q3-q1 #Interquartile range
        fence_low  = q1-1.5*iqr
        fence_high = q3+1.5*iqr
        df_out = df_in.loc[(df_in[col_name] > fence_low) & (df_in[col_name] < 
                           fence_high)]
        return df_out   

    df_clean_outlier = remove_outlier(df_temp,'StrmTemp')
C:\Program Files\Anaconda3\lib\site-packages\numpy\lib\function_base.py:3834: RuntimeWarning: Invalid value encountered in percentile
  RuntimeWarning)

My output:

df_temp.describe()
Out[28]: 
          StrmTemp
count  8014.000000
mean     12.046193
std       7.561696
min     -41.364000
25%       8.562000
50%      10.569000
75%      13.076000
max      86.208000

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