実行環境
- Python 3.10.2
- pandas 1.4.1
やりたいこと
以下のpandas.DataFrame
に対して、user
ごとにcount
を1週間単位で集計したいです。
In [1]: df=pandas.DataFrame({"count":[1,2,3], "working_hours":[6,7,8], "user":["alice","alice","bob"],
...: "date": pandas.date_range('2022-03-13', periods=3, freq='D')})
In [2]: df
Out[2]:
count working_hours user date
0 1 6 alice 2022-03-13
1 2 7 alice 2022-03-14
2 3 8 bob 2022-03-15
エラー発生
以下のコードを実行したら、KeyError: 'The grouper name date is not found'
が発生しました。
In [2]: df.groupby("user").resample("W",on="date",label="left",closed="left")[["count"]].sum()
---------------------------------------------------------------------------
KeyError Traceback (most recent call last)
Input In [137], in <cell line: 1>()
----> 1 df.groupby("user").resample("W",on="date",label="left",closed="left")[["count"]].sum()
File ~/.pyenv/versions/3.10.2/lib/python3.10/site-packages/pandas/core/resample.py:1028, in f(self, _method, min_count, *args, **kwargs)
1026 def f(self, _method=method, min_count=0, *args, **kwargs):
1027 nv.validate_resampler_func(_method, args, kwargs)
-> 1028 return self._downsample(_method, min_count=min_count)
File ~/.pyenv/versions/3.10.2/lib/python3.10/site-packages/pandas/core/resample.py:1097, in _GroupByMixin._apply(self, f, *args, **kwargs)
1093 return getattr(x, f)(**kwargs)
1095 return x.apply(f, *args, **kwargs)
-> 1097 result = self._groupby.apply(func)
1098 return self._wrap_result(result)
File ~/.pyenv/versions/3.10.2/lib/python3.10/site-packages/pandas/core/groupby/groupby.py:1414, in GroupBy.apply(self, func, *args, **kwargs)
1412 with option_context("mode.chained_assignment", None):
1413 try:
-> 1414 result = self._python_apply_general(f, self._selected_obj)
1415 except TypeError:
1416 # gh-20949
1417 # try again, with .apply acting as a filtering
(...)
1421 # fails on *some* columns, e.g. a numeric operation
1422 # on a string grouper column
1424 with self._group_selection_context():
File ~/.pyenv/versions/3.10.2/lib/python3.10/site-packages/pandas/core/groupby/groupby.py:1455, in GroupBy._python_apply_general(self, f, data, not_indexed_same)
1429 @final
1430 def _python_apply_general(
1431 self,
(...)
1434 not_indexed_same: bool | None = None,
1435 ) -> DataFrame | Series:
1436 """
1437 Apply function f in python space
1438
(...)
1453 data after applying f
1454 """
-> 1455 values, mutated = self.grouper.apply(f, data, self.axis)
1457 if not_indexed_same is None:
1458 not_indexed_same = mutated or self.mutated
File ~/.pyenv/versions/3.10.2/lib/python3.10/site-packages/pandas/core/groupby/ops.py:761, in BaseGrouper.apply(self, f, data, axis)
759 # group might be modified
760 group_axes = group.axes
--> 761 res = f(group)
762 if not mutated and not _is_indexed_like(res, group_axes, axis):
763 mutated = True
File ~/.pyenv/versions/3.10.2/lib/python3.10/site-packages/pandas/core/resample.py:1090, in _GroupByMixin._apply.<locals>.func(x)
1089 def func(x):
-> 1090 x = self._shallow_copy(x, groupby=self.groupby)
1092 if isinstance(f, str):
1093 return getattr(x, f)(**kwargs)
File ~/.pyenv/versions/3.10.2/lib/python3.10/site-packages/pandas/core/resample.py:178, in Resampler._shallow_copy(self, obj, **kwargs)
176 if attr not in kwargs:
177 kwargs[attr] = getattr(self, attr)
--> 178 return self._constructor(obj, **kwargs)
File ~/.pyenv/versions/3.10.2/lib/python3.10/site-packages/pandas/core/resample.py:164, in Resampler.__init__(self, obj, groupby, axis, kind, selection, **kwargs)
161 self.group_keys = True
162 self.as_index = True
--> 164 self.groupby._set_grouper(self._convert_obj(obj), sort=True)
165 self.binner, self.grouper = self._get_binner()
166 self._selection = selection
File ~/.pyenv/versions/3.10.2/lib/python3.10/site-packages/pandas/core/groupby/grouper.py:384, in Grouper._set_grouper(self, obj, sort)
382 else:
383 if key not in obj._info_axis:
--> 384 raise KeyError(f"The grouper name {key} is not found")
385 ax = Index(obj[key], name=key)
387 else:
KeyError: 'The grouper name date is not found'
[["count"]]
をsum()
の後に指定すれば、欲しい結果を得ることができました。
In [148]: df.groupby("user").resample("W",on="date",label="left",closed="left").sum()[["count"]]
Out[148]:
count
user date
alice 2022-03-13 3
bob 2022-03-13 3
質問
上記のエラーは何が原因でしょうか?エラーメッセージの意味が分かりませんでした。
以下のように、groupby
関数を使わない場合はresample
関数の後に[["count"]]
を指定できるます。groupby
関数を使った場合も、同様のことができると思っていました。
In [140]: df.resample("W",on="date",label="left",closed="left")[["count"]].sum()
Out[140]:
count
date
2022-03-13 6
補足
groupby
関数を使うかどうかで、resample
関数の結果の型が異なるようです。これが関係するのでしょうか?
In [141]: df.resample("W",on="date",label="left",closed="left")
Out[141]: <pandas.core.resample.DatetimeIndexResampler object at 0x7fdf73ae6860>
In [142]: df.groupby("user").resample("W",on="date",label="left",closed="left")
Out[142]: <pandas.core.resample.DatetimeIndexResamplerGroupby object at 0x7fdf7180fa00>
df.groupby("user").resample("W",on="date",label="left",closed="left")["count"].sum()
とすればよいのではないですか。count
だけでなく、他にも今後増える予定なので、ダブルブラケットを使いました。