问题:将多个功能应用于多个groupby列

文档展示了如何使用输出列名称作为键的字典一次在groupby对象上应用多个功能:

In [563]: grouped['D'].agg({'result1' : np.sum,
   .....:                   'result2' : np.mean})
   .....:
Out[563]: 
      result2   result1
A                      
bar -0.579846 -1.739537
foo -0.280588 -1.402938

但是,这仅适用于Series groupby对象。同样,当将字典类似地传递到groupby DataFrame时,它期望键是将应用该函数的列名。

我想做的是对多个列应用多个功能(但是某些列将被多次操作)。同样,某些函数将依赖于groupby对象中的其他列(如sumif函数)。我当前的解决方案是逐列进行操作,并使用类似于上面代码的代码,对依赖其他行的函数使用lambda。但这要花很长时间,(我认为花很长时间才能遍历groupby对象)。我必须对其进行更改,以便一次运行即可遍历整个groupby对象,但是我想知道熊猫中是否有内置的方法可以使此操作更加简洁。

例如,我尝试过类似

grouped.agg({'C_sum' : lambda x: x['C'].sum(),
             'C_std': lambda x: x['C'].std(),
             'D_sum' : lambda x: x['D'].sum()},
             'D_sumifC3': lambda x: x['D'][x['C'] == 3].sum(), ...)

但正如我所料,我收到一个KeyError(因为如果agg从DataFrame调用,则键必须是一列)。

是否有任何内置方法可以执行我想做的事情,或者可能添加了此功能,或者我只需要手动遍历groupby?

谢谢

The docs show how to apply multiple functions on a groupby object at a time using a dict with the output column names as the keys:

In [563]: grouped['D'].agg({'result1' : np.sum,
   .....:                   'result2' : np.mean})
   .....:
Out[563]: 
      result2   result1
A                      
bar -0.579846 -1.739537
foo -0.280588 -1.402938

However, this only works on a Series groupby object. And when a dict is similarly passed to a groupby DataFrame, it expects the keys to be the column names that the function will be applied to.

What I want to do is apply multiple functions to several columns (but certain columns will be operated on multiple times). Also, some functions will depend on other columns in the groupby object (like sumif functions). My current solution is to go column by column, and doing something like the code above, using lambdas for functions that depend on other rows. But this is taking a long time, (I think it takes a long time to iterate through a groupby object). I’ll have to change it so that I iterate through the whole groupby object in a single run, but I’m wondering if there’s a built in way in pandas to do this somewhat cleanly.

For example, I’ve tried something like

grouped.agg({'C_sum' : lambda x: x['C'].sum(),
             'C_std': lambda x: x['C'].std(),
             'D_sum' : lambda x: x['D'].sum()},
             'D_sumifC3': lambda x: x['D'][x['C'] == 3].sum(), ...)

but as expected I get a KeyError (since the keys have to be a column if agg is called from a DataFrame).

Is there any built in way to do what I’d like to do, or a possibility that this functionality may be added, or will I just need to iterate through the groupby manually?

Thanks


回答 0

当前接受的答案的后半部分已过时,并且有两个过时的建议。首先也是最重要的是,您无法再将字典词典传递给agg groupby方法。第二,永远不要使用.ix

如果您希望同时使用两个单独的列,则建议使用 apply隐式将DataFrame传递给应用函数的方法。让我们使用与上面类似的数据框

df = pd.DataFrame(np.random.rand(4,4), columns=list('abcd'))
df['group'] = [0, 0, 1, 1]
df

          a         b         c         d  group
0  0.418500  0.030955  0.874869  0.145641      0
1  0.446069  0.901153  0.095052  0.487040      0
2  0.843026  0.936169  0.926090  0.041722      1
3  0.635846  0.439175  0.828787  0.714123      1

从列名映射到聚合函数的字典仍然是执行聚合的理想方法。

df.groupby('group').agg({'a':['sum', 'max'], 
                         'b':'mean', 
                         'c':'sum', 
                         'd': lambda x: x.max() - x.min()})

              a                   b         c         d
            sum       max      mean       sum  <lambda>
group                                                  
0      0.864569  0.446069  0.466054  0.969921  0.341399
1      1.478872  0.843026  0.687672  1.754877  0.672401

如果您不喜欢该丑陋的lambda列名称,则可以使用常规函数,并为特殊__name__属性提供自定义名称,如下所示:

def max_min(x):
    return x.max() - x.min()

max_min.__name__ = 'Max minus Min'

df.groupby('group').agg({'a':['sum', 'max'], 
                         'b':'mean', 
                         'c':'sum', 
                         'd': max_min})

              a                   b         c             d
            sum       max      mean       sum Max minus Min
group                                                      
0      0.864569  0.446069  0.466054  0.969921      0.341399
1      1.478872  0.843026  0.687672  1.754877      0.672401

使用 apply和返回系列

现在,如果您有多个需要一起交互的列,则无法使用 agg,这会将Series隐式传递给聚合函数。当使用apply整个集团作为一个数据帧被传递给函数。

我建议制作一个自定义函数,以返回一系列所有聚合。使用系列索引作为新列的标签:

def f(x):
    d = {}
    d['a_sum'] = x['a'].sum()
    d['a_max'] = x['a'].max()
    d['b_mean'] = x['b'].mean()
    d['c_d_prodsum'] = (x['c'] * x['d']).sum()
    return pd.Series(d, index=['a_sum', 'a_max', 'b_mean', 'c_d_prodsum'])

df.groupby('group').apply(f)

         a_sum     a_max    b_mean  c_d_prodsum
group                                           
0      0.864569  0.446069  0.466054     0.173711
1      1.478872  0.843026  0.687672     0.630494

如果您爱上了MultiIndexes,仍然可以返回带有以下内容的Series:

    def f_mi(x):
        d = []
        d.append(x['a'].sum())
        d.append(x['a'].max())
        d.append(x['b'].mean())
        d.append((x['c'] * x['d']).sum())
        return pd.Series(d, index=[['a', 'a', 'b', 'c_d'], 
                                   ['sum', 'max', 'mean', 'prodsum']])

df.groupby('group').apply(f_mi)

              a                   b       c_d
            sum       max      mean   prodsum
group                                        
0      0.864569  0.446069  0.466054  0.173711
1      1.478872  0.843026  0.687672  0.630494

The second half of the currently accepted answer is outdated and has two deprecations. First and most important, you can no longer pass a dictionary of dictionaries to the agg groupby method. Second, never use .ix.

If you desire to work with two separate columns at the same time I would suggest using the apply method which implicitly passes a DataFrame to the applied function. Let’s use a similar dataframe as the one from above

df = pd.DataFrame(np.random.rand(4,4), columns=list('abcd'))
df['group'] = [0, 0, 1, 1]
df

          a         b         c         d  group
0  0.418500  0.030955  0.874869  0.145641      0
1  0.446069  0.901153  0.095052  0.487040      0
2  0.843026  0.936169  0.926090  0.041722      1
3  0.635846  0.439175  0.828787  0.714123      1

A dictionary mapped from column names to aggregation functions is still a perfectly good way to perform an aggregation.

df.groupby('group').agg({'a':['sum', 'max'], 
                         'b':'mean', 
                         'c':'sum', 
                         'd': lambda x: x.max() - x.min()})

              a                   b         c         d
            sum       max      mean       sum  <lambda>
group                                                  
0      0.864569  0.446069  0.466054  0.969921  0.341399
1      1.478872  0.843026  0.687672  1.754877  0.672401

If you don’t like that ugly lambda column name, you can use a normal function and supply a custom name to the special __name__ attribute like this:

def max_min(x):
    return x.max() - x.min()

max_min.__name__ = 'Max minus Min'

df.groupby('group').agg({'a':['sum', 'max'], 
                         'b':'mean', 
                         'c':'sum', 
                         'd': max_min})

              a                   b         c             d
            sum       max      mean       sum Max minus Min
group                                                      
0      0.864569  0.446069  0.466054  0.969921      0.341399
1      1.478872  0.843026  0.687672  1.754877      0.672401

Using apply and returning a Series

Now, if you had multiple columns that needed to interact together then you cannot use agg, which implicitly passes a Series to the aggregating function. When using apply the entire group as a DataFrame gets passed into the function.

I recommend making a single custom function that returns a Series of all the aggregations. Use the Series index as labels for the new columns:

def f(x):
    d = {}
    d['a_sum'] = x['a'].sum()
    d['a_max'] = x['a'].max()
    d['b_mean'] = x['b'].mean()
    d['c_d_prodsum'] = (x['c'] * x['d']).sum()
    return pd.Series(d, index=['a_sum', 'a_max', 'b_mean', 'c_d_prodsum'])

df.groupby('group').apply(f)

         a_sum     a_max    b_mean  c_d_prodsum
group                                           
0      0.864569  0.446069  0.466054     0.173711
1      1.478872  0.843026  0.687672     0.630494

If you are in love with MultiIndexes, you can still return a Series with one like this:

    def f_mi(x):
        d = []
        d.append(x['a'].sum())
        d.append(x['a'].max())
        d.append(x['b'].mean())
        d.append((x['c'] * x['d']).sum())
        return pd.Series(d, index=[['a', 'a', 'b', 'c_d'], 
                                   ['sum', 'max', 'mean', 'prodsum']])

df.groupby('group').apply(f_mi)

              a                   b       c_d
            sum       max      mean   prodsum
group                                        
0      0.864569  0.446069  0.466054  0.173711
1      1.478872  0.843026  0.687672  0.630494

回答 1

对于第一部分,您可以传递键的列名字典和值的函数列表:

In [28]: df
Out[28]:
          A         B         C         D         E  GRP
0  0.395670  0.219560  0.600644  0.613445  0.242893    0
1  0.323911  0.464584  0.107215  0.204072  0.927325    0
2  0.321358  0.076037  0.166946  0.439661  0.914612    1
3  0.133466  0.447946  0.014815  0.130781  0.268290    1

In [26]: f = {'A':['sum','mean'], 'B':['prod']}

In [27]: df.groupby('GRP').agg(f)
Out[27]:
            A                   B
          sum      mean      prod
GRP
0    0.719580  0.359790  0.102004
1    0.454824  0.227412  0.034060

更新1:

由于聚合函数适用于Series,因此对其他列名称的引用会丢失。为了解决这个问题,您可以引用整个数据框并使用lambda函数中的组索引对其进行索引。

这是一个骇人的解决方法:

In [67]: f = {'A':['sum','mean'], 'B':['prod'], 'D': lambda g: df.loc[g.index].E.sum()}

In [69]: df.groupby('GRP').agg(f)
Out[69]:
            A                   B         D
          sum      mean      prod  <lambda>
GRP
0    0.719580  0.359790  0.102004  1.170219
1    0.454824  0.227412  0.034060  1.182901

在此,结果“ D”列由总和“ E”值组成。

更新2:

我认为这是一种可以满足您要求的方法。首先创建一个自定义lambda函数。下面,g引用该组。汇总时,g将是一个系列。传递g.indexdf.ix[]从df中选择当前组。然后,我测试C列是否小于0.5。返回的布尔系列传递给g[]该布尔系列,该布尔系列仅选择那些符合条件的行。

In [95]: cust = lambda g: g[df.loc[g.index]['C'] < 0.5].sum()

In [96]: f = {'A':['sum','mean'], 'B':['prod'], 'D': {'my name': cust}}

In [97]: df.groupby('GRP').agg(f)
Out[97]:
            A                   B         D
          sum      mean      prod   my name
GRP
0    0.719580  0.359790  0.102004  0.204072
1    0.454824  0.227412  0.034060  0.570441

For the first part you can pass a dict of column names for keys and a list of functions for the values:

In [28]: df
Out[28]:
          A         B         C         D         E  GRP
0  0.395670  0.219560  0.600644  0.613445  0.242893    0
1  0.323911  0.464584  0.107215  0.204072  0.927325    0
2  0.321358  0.076037  0.166946  0.439661  0.914612    1
3  0.133466  0.447946  0.014815  0.130781  0.268290    1

In [26]: f = {'A':['sum','mean'], 'B':['prod']}

In [27]: df.groupby('GRP').agg(f)
Out[27]:
            A                   B
          sum      mean      prod
GRP
0    0.719580  0.359790  0.102004
1    0.454824  0.227412  0.034060

UPDATE 1:

Because the aggregate function works on Series, references to the other column names are lost. To get around this, you can reference the full dataframe and index it using the group indices within the lambda function.

Here’s a hacky workaround:

In [67]: f = {'A':['sum','mean'], 'B':['prod'], 'D': lambda g: df.loc[g.index].E.sum()}

In [69]: df.groupby('GRP').agg(f)
Out[69]:
            A                   B         D
          sum      mean      prod  <lambda>
GRP
0    0.719580  0.359790  0.102004  1.170219
1    0.454824  0.227412  0.034060  1.182901

Here, the resultant ‘D’ column is made up of the summed ‘E’ values.

UPDATE 2:

Here’s a method that I think will do everything you ask. First make a custom lambda function. Below, g references the group. When aggregating, g will be a Series. Passing g.index to df.ix[] selects the current group from df. I then test if column C is less than 0.5. The returned boolean series is passed to g[] which selects only those rows meeting the criteria.

In [95]: cust = lambda g: g[df.loc[g.index]['C'] < 0.5].sum()

In [96]: f = {'A':['sum','mean'], 'B':['prod'], 'D': {'my name': cust}}

In [97]: df.groupby('GRP').agg(f)
Out[97]:
            A                   B         D
          sum      mean      prod   my name
GRP
0    0.719580  0.359790  0.102004  0.204072
1    0.454824  0.227412  0.034060  0.570441

回答 2

作为泰德·彼得鲁(Ted Petrou)回答的替代方案(主要是美学方面),我发现我更喜欢紧凑的清单。请不要考虑接受它,它只是对Ted的答案以及代码/数据的更详细的评论。Python / pandas不是我的第一个/最好的,但是我发现它读起来不错:

df.groupby('group') \
  .apply(lambda x: pd.Series({
      'a_sum'       : x['a'].sum(),
      'a_max'       : x['a'].max(),
      'b_mean'      : x['b'].mean(),
      'c_d_prodsum' : (x['c'] * x['d']).sum()
  })
)

          a_sum     a_max    b_mean  c_d_prodsum
group                                           
0      0.530559  0.374540  0.553354     0.488525
1      1.433558  0.832443  0.460206     0.053313

我发现它更让人联想到dplyr管道和data.table链接的命令。并不是说它们更好,只是我更熟悉。(我当然认识到def对于这些类型的操作使用更正式的功能的功能,并且对于许多人而言,这是首选。这只是一种选择,不一定更好。)


我以与Ted相同的方式生成数据,我将添加一个可重复性的种子。

import numpy as np
np.random.seed(42)
df = pd.DataFrame(np.random.rand(4,4), columns=list('abcd'))
df['group'] = [0, 0, 1, 1]
df

          a         b         c         d  group
0  0.374540  0.950714  0.731994  0.598658      0
1  0.156019  0.155995  0.058084  0.866176      0
2  0.601115  0.708073  0.020584  0.969910      1
3  0.832443  0.212339  0.181825  0.183405      1

As an alternative (mostly on aesthetics) to Ted Petrou’s answer, I found I preferred a slightly more compact listing. Please don’t consider accepting it, it’s just a much-more-detailed comment on Ted’s answer, plus code/data. Python/pandas is not my first/best, but I found this to read well:

df.groupby('group') \
  .apply(lambda x: pd.Series({
      'a_sum'       : x['a'].sum(),
      'a_max'       : x['a'].max(),
      'b_mean'      : x['b'].mean(),
      'c_d_prodsum' : (x['c'] * x['d']).sum()
  })
)

          a_sum     a_max    b_mean  c_d_prodsum
group                                           
0      0.530559  0.374540  0.553354     0.488525
1      1.433558  0.832443  0.460206     0.053313

I find it more reminiscent of dplyr pipes and data.table chained commands. Not to say they’re better, just more familiar to me. (I certainly recognize the power and, for many, the preference of using more formalized def functions for these types of operations. This is just an alternative, not necessarily better.)


I generated data in the same manner as Ted, I’ll add a seed for reproducibility.

import numpy as np
np.random.seed(42)
df = pd.DataFrame(np.random.rand(4,4), columns=list('abcd'))
df['group'] = [0, 0, 1, 1]
df

          a         b         c         d  group
0  0.374540  0.950714  0.731994  0.598658      0
1  0.156019  0.155995  0.058084  0.866176      0
2  0.601115  0.708073  0.020584  0.969910      1
3  0.832443  0.212339  0.181825  0.183405      1

回答 3

Pandas >= 0.25.0,称为集合

从pandas版本0.25.0或更高版本开始,我们正在远离基于字典的聚合和重命名,而转向接受a的命名聚合tuple。现在,我们可以同时聚合+重命名为更多信息的列名:

范例

df = pd.DataFrame(np.random.rand(4,4), columns=list('abcd'))
df['group'] = [0, 0, 1, 1]

          a         b         c         d  group
0  0.521279  0.914988  0.054057  0.125668      0
1  0.426058  0.828890  0.784093  0.446211      0
2  0.363136  0.843751  0.184967  0.467351      1
3  0.241012  0.470053  0.358018  0.525032      1

GroupBy.agg以命名聚合应用:

df.groupby('group').agg(
             a_sum=('a', 'sum'),
             a_mean=('a', 'mean'),
             b_mean=('b', 'mean'),
             c_sum=('c', 'sum'),
             d_range=('d', lambda x: x.max() - x.min())
)

          a_sum    a_mean    b_mean     c_sum   d_range
group                                                  
0      0.947337  0.473668  0.871939  0.838150  0.320543
1      0.604149  0.302074  0.656902  0.542985  0.057681

Pandas >= 0.25.0, named aggregations

Since pandas version 0.25.0 or higher, we are moving away from the dictionary based aggregation and renaming, and moving towards named aggregations which accepts a tuple. Now we can simultaneously aggregate + rename to a more informative column name:

Example:

df = pd.DataFrame(np.random.rand(4,4), columns=list('abcd'))
df['group'] = [0, 0, 1, 1]

          a         b         c         d  group
0  0.521279  0.914988  0.054057  0.125668      0
1  0.426058  0.828890  0.784093  0.446211      0
2  0.363136  0.843751  0.184967  0.467351      1
3  0.241012  0.470053  0.358018  0.525032      1

Apply GroupBy.agg with named aggregation:

df.groupby('group').agg(
             a_sum=('a', 'sum'),
             a_mean=('a', 'mean'),
             b_mean=('b', 'mean'),
             c_sum=('c', 'sum'),
             d_range=('d', lambda x: x.max() - x.min())
)

          a_sum    a_mean    b_mean     c_sum   d_range
group                                                  
0      0.947337  0.473668  0.871939  0.838150  0.320543
1      0.604149  0.302074  0.656902  0.542985  0.057681

回答 4

0.25.0版中的新功能。

为了通过控制输出列名来支持特定于列的聚合,pandas在GroupBy.agg()中接受特殊语法,称为“命名聚合”,其中

  • 关键字是输出列名称
  • 值是元组,其第一个元素是要选择的列,第二个元素是要应用于该列的聚合。Pandas为pandas.NamedAgg namedtuple提供了字段[‘column’,’aggfunc’],以使参数更清楚。像往常一样,聚合可以是可调用的或字符串别名。
    In [79]: animals = pd.DataFrame({'kind': ['cat', 'dog', 'cat', 'dog'],
       ....:                         'height': [9.1, 6.0, 9.5, 34.0],
       ....:                         'weight': [7.9, 7.5, 9.9, 198.0]})
       ....: 

    In [80]: animals
    Out[80]: 
      kind  height  weight
    0  cat     9.1     7.9
    1  dog     6.0     7.5
    2  cat     9.5     9.9
    3  dog    34.0   198.0

    In [81]: animals.groupby("kind").agg(
       ....:     min_height=pd.NamedAgg(column='height', aggfunc='min'),
       ....:     max_height=pd.NamedAgg(column='height', aggfunc='max'),
       ....:     average_weight=pd.NamedAgg(column='weight', aggfunc=np.mean),
       ....: )
       ....: 
    Out[81]: 
          min_height  max_height  average_weight
    kind                                        
    cat          9.1         9.5            8.90
    dog          6.0        34.0          102.75

pandas.NamedAgg只是一个namedtuple。普通元组也是允许的。

    In [82]: animals.groupby("kind").agg(
       ....:     min_height=('height', 'min'),
       ....:     max_height=('height', 'max'),
       ....:     average_weight=('weight', np.mean),
       ....: )
       ....: 
    Out[82]: 
          min_height  max_height  average_weight
    kind                                        
    cat          9.1         9.5            8.90
    dog          6.0        34.0          102.75

其他关键字参数不会传递给聚合函数。只有成对的(column,aggfunc)应该作为** kwargs传递。如果您的聚合函数需要其他参数,请通过functools.partial()部分应用它们。

命名聚合对于Series groupby聚合也有效。在这种情况下,没有列选择,因此值仅是函数。

    In [84]: animals.groupby("kind").height.agg(
       ....:     min_height='min',
       ....:     max_height='max',
       ....: )
       ....: 
    Out[84]: 
          min_height  max_height
    kind                        
    cat          9.1         9.5
    dog          6.0        34.0

New in version 0.25.0.

To support column-specific aggregation with control over the output column names, pandas accepts the special syntax in GroupBy.agg(), known as “named aggregation”, where

  • The keywords are the output column names
  • The values are tuples whose first element is the column to select and the second element is the aggregation to apply to that column. Pandas provides the pandas.NamedAgg namedtuple with the fields [‘column’, ‘aggfunc’] to make it clearer what the arguments are. As usual, the aggregation can be a callable or a string alias.
    In [79]: animals = pd.DataFrame({'kind': ['cat', 'dog', 'cat', 'dog'],
       ....:                         'height': [9.1, 6.0, 9.5, 34.0],
       ....:                         'weight': [7.9, 7.5, 9.9, 198.0]})
       ....: 

    In [80]: animals
    Out[80]: 
      kind  height  weight
    0  cat     9.1     7.9
    1  dog     6.0     7.5
    2  cat     9.5     9.9
    3  dog    34.0   198.0

    In [81]: animals.groupby("kind").agg(
       ....:     min_height=pd.NamedAgg(column='height', aggfunc='min'),
       ....:     max_height=pd.NamedAgg(column='height', aggfunc='max'),
       ....:     average_weight=pd.NamedAgg(column='weight', aggfunc=np.mean),
       ....: )
       ....: 
    Out[81]: 
          min_height  max_height  average_weight
    kind                                        
    cat          9.1         9.5            8.90
    dog          6.0        34.0          102.75

pandas.NamedAgg is just a namedtuple. Plain tuples are allowed as well.

    In [82]: animals.groupby("kind").agg(
       ....:     min_height=('height', 'min'),
       ....:     max_height=('height', 'max'),
       ....:     average_weight=('weight', np.mean),
       ....: )
       ....: 
    Out[82]: 
          min_height  max_height  average_weight
    kind                                        
    cat          9.1         9.5            8.90
    dog          6.0        34.0          102.75

Additional keyword arguments are not passed through to the aggregation functions. Only pairs of (column, aggfunc) should be passed as **kwargs. If your aggregation functions requires additional arguments, partially apply them with functools.partial().

Named aggregation is also valid for Series groupby aggregations. In this case there’s no column selection, so the values are just the functions.

    In [84]: animals.groupby("kind").height.agg(
       ....:     min_height='min',
       ....:     max_height='max',
       ....: )
       ....: 
    Out[84]: 
          min_height  max_height
    kind                        
    cat          9.1         9.5
    dog          6.0        34.0

回答 5

特德的答案是惊人的。我最终使用了一个较小的版本,以防有人感兴趣。在寻找一种取决于多个列中的值的聚合时很有用:

创建一个数据框

df=pd.DataFrame({'a': [1,2,3,4,5,6], 'b': [1,1,0,1,1,0], 'c': ['x','x','y','y','z','z']})


   a  b  c
0  1  1  x
1  2  1  x
2  3  0  y
3  4  1  y
4  5  1  z
5  6  0  z

使用apply分组和聚合(使用多列)

df.groupby('c').apply(lambda x: x['a'][(x['a']>1) & (x['b']==1)].mean())

c
x    2.0
y    4.0
z    5.0

使用聚合进行分组和聚合(使用多列)

我喜欢这种方法,因为我仍然可以使用聚合。也许人们会让我知道为什么对组进行汇总时为什么需要套用多列。

现在似乎很明显,但是只要您不选择感兴趣的列 直接在groupby之后的列,就可以从聚合函数中访问数据框的所有列。

仅访问所选列

df.groupby('c')['a'].aggregate(lambda x: x[x>1].mean())

访问所有列,因为选择毕竟是不可思议的

df.groupby('c').aggregate(lambda x: x[(x['a']>1) & (x['b']==1)].mean())['a']

或类似

df.groupby('c').aggregate(lambda x: x['a'][(x['a']>1) & (x['b']==1)].mean())

我希望这有帮助。

Ted’s answer is amazing. I ended up using a smaller version of that in case anyone is interested. Useful when you are looking for one aggregation that depends on values from multiple columns:

create a dataframe

df=pd.DataFrame({'a': [1,2,3,4,5,6], 'b': [1,1,0,1,1,0], 'c': ['x','x','y','y','z','z']})


   a  b  c
0  1  1  x
1  2  1  x
2  3  0  y
3  4  1  y
4  5  1  z
5  6  0  z

grouping and aggregating with apply (using multiple columns)

df.groupby('c').apply(lambda x: x['a'][(x['a']>1) & (x['b']==1)].mean())

c
x    2.0
y    4.0
z    5.0

grouping and aggregating with aggregate (using multiple columns)

I like this approach since I can still use aggregate. Perhaps people will let me know why apply is needed for getting at multiple columns when doing aggregations on groups.

It seems obvious now, but as long as you don’t select the column of interest directly after the groupby, you will have access to all the columns of the dataframe from within your aggregation function.

only access to the selected column

df.groupby('c')['a'].aggregate(lambda x: x[x>1].mean())

access to all columns since selection is after all the magic

df.groupby('c').aggregate(lambda x: x[(x['a']>1) & (x['b']==1)].mean())['a']

or similarly

df.groupby('c').aggregate(lambda x: x['a'][(x['a']>1) & (x['b']==1)].mean())

I hope this helps.


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