汇总Pandas DataFrame中的列值 [英] Sum up column values in Pandas DataFrame
本文介绍了汇总Pandas DataFrame中的列值的处理方法,对大家解决问题具有一定的参考价值,需要的朋友们下面随着小编来一起学习吧!
问题描述
在pandas DataFrame中,是否可以折叠具有相同值的列,然后对另一列中的值求和?
In a pandas DataFrame, is it possible to collapse columns which have identical values, and sum up the values in another column?
代码
data = {"score":{"0":9.397,"1":9.397,"2":9.397995,"3":9.397996,"4":9.3999},"type":{"0":"advanced","1":"advanced","2":"advanced","3":"newbie","4":"expert"},"count":{"0":394.18930604,"1":143.14226729,"2":9.64172783,"3":0.1,"4":19.65413734}}
df = pd.DataFrame(data)
df
输出
count score type
0 394.189306 9.397000 advanced
1 143.142267 9.397000 advanced
2 9.641728 9.397995 advanced
3 0.100000 9.397996 newbie
4 19.654137 9.399900 expert
在上面的示例中,前两行具有相同的score
和type
,因此应将这些行合并在一起并加总其分数.
In the example above, the first two rows have the same score
and type
, so these rows should be merged together and their scores added up.
所需的输出
count score type
0 537.331573 9.397000 advanced
1 9.641728 9.397995 advanced
2 0.100000 9.397996 newbie
3 19.654137 9.399900 expert
推荐答案
这是groupby
的工作:
>>> df.groupby(["score", "type"]).sum()
count
score type
9.397000 advanced 537.331573
9.397995 advanced 9.641728
9.397996 newbie 0.100000
9.399900 expert 19.6541374
>>> df.groupby(["score", "type"], as_index=False).sum()
score type count
0 9.397000 advanced 537.331573
1 9.397995 advanced 9.641728
2 9.397996 newbie 0.100000
3 9.399900 expert 19.654137
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