I have seen several solutions that come close to solving my problem
but they have not helped me succeed thus far.
I believe that the following solution is what I need, but continue to get an error (and I don't have the reputation points to comment/question on it): link
(I get the following error, but I don't understand where to .copy()
or add an "inplace=True
" when administering the following command df2=df.groupby('install_site').transform(replace)
:
SettingWithCopyWarning:
A value is trying to be set on a copy of a slice from a DataFrame.
Try using .loc[row_indexer,col_indexer] = value
instead
See the the caveats in the documentation: link
SO, I have attempted to come up with my own version, but I keep getting stuck. Here goes.
I have a data frame indexed by time with columns for site (string values for many different sites) and float values.
time_index site val
I would like to go through the 'val' column, grouped by site, and replace any outliers (those +/- 3 standard deviations from the mean) with a NaN (for each group).
When I use the following function, I cannot index the data frame with my vector of True/Falses:
def replace_outliers_with_nan(df, stdvs):
dfnew=pd.DataFrame()
for i, col in enumerate(df.sites.unique()):
dftmp = pd.DataFrame(df[df.sites==col])
idx = [np.abs(dftmp-dftmp.mean())<=(stdvs*dftmp.std())] #boolean vector of T/F's
dftmp[idx==False]=np.nan #this is where the problem lies, I believe
dfnew[col] = dftmp
return dfnew
In addition, I fear the above function will take a very long time on 7 million+ rows, which is why I was hoping to use the groupby function option.