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将 Pandas DataFrame 列扩展为多行

[英]Expand pandas DataFrame column into multiple rows

If I have a DataFrame such that:如果我有一个这样的数据DataFrame

pd.DataFrame( {"name" : "John", 
               "days" : [[1, 3, 5, 7]]
              })

gives this structure:给出了这个结构:

           days  name
0  [1, 3, 5, 7]  John

How do expand it to the following?如何将其扩展为以下内容?

   days  name
0     1  John
1     3  John
2     5  John
3     7  John

You could use df.itertuples to iterate through each row, and use a list comprehension to reshape the data into the desired form:您可以使用df.itertuples遍历每一行,并使用列表理解将数据重塑为所需的形式:

import pandas as pd

df = pd.DataFrame( {"name" : ["John", "Eric"], 
               "days" : [[1, 3, 5, 7], [2,4]]})
result = pd.DataFrame([(d, tup.name) for tup in df.itertuples() for d in tup.days])
print(result)

yields产量

   0     1
0  1  John
1  3  John
2  5  John
3  7  John
4  2  Eric
5  4  Eric

Divakar's solution , using_repeat , is fastest: Divakar 的解决方案using_repeat是最快的:

In [48]: %timeit using_repeat(df)
1000 loops, best of 3: 834 µs per loop

In [5]: %timeit using_itertuples(df)
100 loops, best of 3: 3.43 ms per loop

In [7]: %timeit using_apply(df)
1 loop, best of 3: 379 ms per loop

In [8]: %timeit using_append(df)
1 loop, best of 3: 3.59 s per loop

Here is the setup used for the above benchmark:这是用于上述基准测试的设置:

import numpy as np
import pandas as pd

N = 10**3
df = pd.DataFrame( {"name" : np.random.choice(list('ABCD'), size=N), 
                    "days" : [np.random.randint(10, size=np.random.randint(5))
                              for i in range(N)]})

def using_itertuples(df):
    return  pd.DataFrame([(d, tup.name) for tup in df.itertuples() for d in tup.days])

def using_repeat(df):
    lens = [len(item) for item in df['days']]
    return pd.DataFrame( {"name" : np.repeat(df['name'].values,lens), 
                          "days" : np.concatenate(df['days'].values)})

def using_apply(df):
    return (df.apply(lambda x: pd.Series(x.days), axis=1)
            .stack()
            .reset_index(level=1, drop=1)
            .to_frame('day')
            .join(df['name']))

def using_append(df):
    df2 = pd.DataFrame(columns = df.columns)
    for i,r in df.iterrows():
        for e in r.days:
            new_r = r.copy()
            new_r.days = e
            df2 = df2.append(new_r)
    return df2

New since pandas 0.25 you can use the function explode()自大熊猫 0.25 以来的新功能,您可以使用功能explode()

https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.explode.html https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.explode.html

import pandas as pd
df = pd.DataFrame( {"name" : "John", 
               "days" : [[1, 3, 5, 7]]})

print(df.explode('days'))

prints版画

   name days
0  John    1
0  John    3
0  John    5
0  John    7

Here's something with NumPy -这是 NumPy 的一些东西 -

lens = [len(item) for item in df['days']]
df_out = pd.DataFrame( {"name" : np.repeat(df['name'].values,lens), 
               "days" : np.hstack(df['days'])
              })

As pointed in @unutbu's solution np.concatenate(df['days'].values) would be faster than np.hstack(df['days']) .正如@unutbu's solution所指出的, np.concatenate(df['days'].values)会比np.hstack(df['days'])快。

It uses a loop-comprehension to extract the lengths of each 'days' element, which must be minimal runtime-wise.它使用循环理解来提取每个'days'元素的长度,这在运行时必须是最小的。

Sample run -样品运行 -

>>> df
           days  name
0  [1, 3, 5, 7]  John
1        [2, 4]  Eric
>>> lens = [len(item) for item in df['days']]
>>> pd.DataFrame( {"name" : np.repeat(df['name'].values,lens), 
...                "days" : np.hstack(df['days'])
...               })
   days  name
0     1  John
1     3  John
2     5  John
3     7  John
4     2  Eric
5     4  Eric

A 'native' pandas solution - we unstack the column into a series, then join back on based on index: “原生”pandas 解决方案 - 我们将列拆分为一个系列,然后根据索引重新连接:

import pandas as pd #import
x2 = x.days.apply(lambda x: pd.Series(x)).unstack() #make an unstackeded series, x2
x.drop('days', axis = 1).join(pd.DataFrame(x2.reset_index(level=0, drop=True))) #drop the days column, join to the x2 series

another solution:另一种解决方案:

In [139]: (df.apply(lambda x: pd.Series(x.days), axis=1)
   .....:    .stack()
   .....:    .reset_index(level=1, drop=1)
   .....:    .to_frame('day')
   .....:    .join(df['name'])
   .....: )
Out[139]:
   day  name
0    1  John
0    3  John
0    5  John
0    7  John

Probably somehow like this:大概是这样的:

df2 = pd.DataFrame(columns = df.columns)
for i,r in df.iterrows():
    for e in r.days:
        new_r = r.copy()
        new_r.days = e
        df2 = df2.append(new_r)
df2

Thanks to Divakar's solution , wrote it as a wrapper function to flatten a column, handling np.nan and DataFrames with multiple columns感谢Divakar 的解决方案,将其编写为一个包装函数来展np.nan列,处理具有多列的np.nan和 DataFrames

def flatten_column(df, column_name):
     repeat_lens = [len(item) if item is not np.nan else 1 for item in df[column_name]]
     df_columns = list(df.columns)
     df_columns.remove(column_name)
     expanded_df = pd.DataFrame(np.repeat(df.drop(column_name, axis=1).values, repeat_lens, axis=0), columns=df_columns)
     flat_column_values = np.hstack(df[column_name].values)
     expanded_df[column_name] = flat_column_values
     expanded_df[column_name].replace('nan', np.nan, inplace=True)
     return expanded_df

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