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  • Pandas入门之七:迭代

    已信任
    Jupyter 服务器: 本地
    Python 3: Not Started
    
    
    
    [4]
    
    
    
    
    import pandas as pd
    import numpy as np
    df = pd.DataFrame({
        'date':pd.date_range(start='20210714',periods=7,freq='D'),
        'a': np.linspace(0,6,7),
        'b': np.random.randn(7),
        'c': np.random.choice(['Low','Medium','High'],7).tolist(),
        'd': np.random.normal(100,10,size=(7)).tolist()
    })
    df
    date    a    b    c    d
    0    2021-07-14    0.0    -0.079268    Low    100.637433
    1    2021-07-15    1.0    0.231418    High    112.083560
    2    2021-07-16    2.0    0.288950    Medium    108.132161
    3    2021-07-17    3.0    0.264166    High    90.819338
    4    2021-07-18    4.0    -0.750558    Medium    100.886340
    5    2021-07-19    5.0    1.173738    Medium    104.307198
    6    2021-07-20    6.0    -0.418391    Low    88.523432
    [6]
    
    
    
    # for in 循环的是列
    for col in df:
        print(col)
        print(df[col])
    date
    0   2021-07-14
    1   2021-07-15
    2   2021-07-16
    3   2021-07-17
    4   2021-07-18
    5   2021-07-19
    6   2021-07-20
    Name: date, dtype: datetime64[ns]
    a
    0    0.0
    1    1.0
    2    2.0
    3    3.0
    4    4.0
    5    5.0
    6    6.0
    Name: a, dtype: float64
    b
    0   -0.079268
    1    0.231418
    2    0.288950
    3    0.264166
    4   -0.750558
    5    1.173738
    6   -0.418391
    Name: b, dtype: float64
    c
    0       Low
    1      High
    2    Medium
    3      High
    4    Medium
    5    Medium
    6       Low
    Name: c, dtype: object
    d
    0    100.637433
    1    112.083560
    2    108.132161
    3     90.819338
    4    100.886340
    5    104.307198
    6     88.523432
    Name: d, dtype: float64
    [8]
    
    
    
    # iteritem 获取列和值
    for key,value in df.iteritems():
        print(key)
        print(value)
    date
    0   2021-07-14
    1   2021-07-15
    2   2021-07-16
    3   2021-07-17
    4   2021-07-18
    5   2021-07-19
    6   2021-07-20
    Name: date, dtype: datetime64[ns]
    a
    0    0.0
    1    1.0
    2    2.0
    3    3.0
    4    4.0
    5    5.0
    6    6.0
    Name: a, dtype: float64
    b
    0   -0.079268
    1    0.231418
    2    0.288950
    3    0.264166
    4   -0.750558
    5    1.173738
    6   -0.418391
    Name: b, dtype: float64
    c
    0       Low
    1      High
    2    Medium
    3      High
    4    Medium
    5    Medium
    6       Low
    Name: c, dtype: object
    d
    0    100.637433
    1    112.083560
    2    108.132161
    3     90.819338
    4    100.886340
    5    104.307198
    6     88.523432
    Name: d, dtype: float64
    [9]
    
    
    
    # 按行打印,逐行迭代
    for key,value in df.iterrows():
        print(key)
        print(value)
    0
    date    2021-07-14 00:00:00
    a                         0
    b                -0.0792684
    c                       Low
    d                   100.637
    Name: 0, dtype: object
    1
    date    2021-07-15 00:00:00
    a                         1
    b                  0.231418
    c                      High
    d                   112.084
    Name: 1, dtype: object
    2
    date    2021-07-16 00:00:00
    a                         2
    b                   0.28895
    c                    Medium
    d                   108.132
    Name: 2, dtype: object
    3
    date    2021-07-17 00:00:00
    a                         3
    b                  0.264166
    c                      High
    d                   90.8193
    Name: 3, dtype: object
    4
    date    2021-07-18 00:00:00
    a                         4
    b                 -0.750558
    c                    Medium
    d                   100.886
    Name: 4, dtype: object
    5
    date    2021-07-19 00:00:00
    a                         5
    b                   1.17374
    c                    Medium
    d                   104.307
    Name: 5, dtype: object
    6
    date    2021-07-20 00:00:00
    a                         6
    b                 -0.418391
    c                       Low
    d                   88.5234
    Name: 6, dtype: object
    [12]
    
    
    
     # 以元组形式打印
        for row in df.itertuples():
            print(row)
    Pandas(Index=0, date=Timestamp('2021-07-14 00:00:00'), a=0.0, b=-0.07926836478101182, c='Low', d=100.6374326023984)
    Pandas(Index=1, date=Timestamp('2021-07-15 00:00:00'), a=1.0, b=0.23141819210674755, c='High', d=112.08356043292231)
    Pandas(Index=2, date=Timestamp('2021-07-16 00:00:00'), a=2.0, b=0.28895002255434654, c='Medium', d=108.13216066430968)
    Pandas(Index=3, date=Timestamp('2021-07-17 00:00:00'), a=3.0, b=0.26416569787454686, c='High', d=90.81933760723473)
    Pandas(Index=4, date=Timestamp('2021-07-18 00:00:00'), a=4.0, b=-0.7505580643324384, c='Medium', d=100.88634049762355)
    Pandas(Index=5, date=Timestamp('2021-07-19 00:00:00'), a=5.0, b=1.1737384361425682, c='Medium', d=104.30719772518808)
    Pandas(Index=6, date=Timestamp('2021-07-20 00:00:00'), a=6.0, b=-0.41839064630765915, c='Low', d=88.52343226534083)
    [-]
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  • 原文地址:https://www.cnblogs.com/vvzhang/p/15012823.html
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