Pandas插入备用空行

Dan*_*rty 5 numpy python-3.x pandas

给出以下数据框:

import pandas as pd
import numpy as np
df1=pd.DataFrame({'A':['a','b','c','d'],
                 'B':['d',np.nan,'c','f']})
df1
    A   B
0   a   d
1   b   NaN
2   c   c
3   d   f
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我想在每行之前插入空行.期望的结果是:

    A   B
0   NaN NaN
1   a   d
2   NaN NaN
3   b   NaN
4   NaN NaN
5   c   c
6   NaN NaN
7   d   f
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实际上,我有很多行.

提前致谢!

Ant*_*pov 6

我认为您可以像@bananafish 那样更改索引,然后使用reindex

df1.index = range(1, 2*len(df1)+1, 2)
df2 = df1.reindex(index=range(2*len(df1)))

In [29]: df2
Out[29]:
     A    B
0  NaN  NaN
1    a    d
2  NaN  NaN
3    b  NaN
4  NaN  NaN
5    c    c
6  NaN  NaN
7    d    f
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piR*_*red 3

使用 numpy 和pd.DataFrame

def pir(df):
    nans = np.where(np.empty_like(df.values), np.nan, np.nan)
    data = np.hstack([nans, df.values]).reshape(-1, df.shape[1])
    return pd.DataFrame(data, columns=df.columns)

pir(df1)
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测试与比较

代码

def banana(df):
    df1 = df.set_index(np.arange(1, 2*len(df)+1, 2))
    df2 = pd.DataFrame(index=range(0, 2*len(df1), 2), columns=df1.columns)
    return pd.concat([df1, df2]).sort_index()

def anton(df):
    df = df.set_index(np.arange(1, 2*len(df)+1, 2))
    return df.reindex(index=range(2*len(df)))

def pir(df):
    nans = np.where(np.empty_like(df.values), np.nan, np.nan)
    data = np.hstack([nans, df.values]).reshape(-1, df.shape[1])
    return pd.DataFrame(data, columns=df.columns)
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结果

pd.concat([f(df1) for f in [banana, anton, pir]],
          axis=1, keys=['banana', 'anton', 'pir'])
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定时

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