I want to build a matrix from series but before that I have to resample those series. However, to avoid processing the whole matrix twice with replace(np.nan, 0.0)
I want to append the dataframes to a collecting dataframe and then remove NaN
values in one pass.
So instead of
user_activities = user.groupby(["DOC_ACC_DT", "DOC_ACTV_CD"]).agg("sum")["SUM_DOC_CNT"].unstack().resample("1D").replace(np.nan, 0)
df = df.append(user_activities[activity].rename(user_id))
I want
user_activities = user.groupby(["DOC_ACC_DT", "DOC_ACTV_CD"]).agg("sum")["SUM_DOC_CNT"].unstack().resample("1D")
df = df.append(user_activities[activity].rename(user_id))
but that is not working because user_activities
is not a dataframe after resample()
.
The error suggests that I try apply()
but that method expects a parameter:
/usr/local/lib/python2.7/dist-packages/pandas/core/groupby.pyc in _make_wrapper(self, name)
507 "using the 'apply' method".format(kind, name,
508 type(self).__name__))
--> 509 raise AttributeError(msg)
510
511 # need to setup the selection
AttributeError: Cannot access callable attribute 'rename' of 'SeriesGroupBy' objects, try using the 'apply' method
How can I solve this issue?
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