Pandas为DataFrame对象赋值

原文地址

分类目录——Pandas

  • 导入支持包

    import pandas as pd
    import numpy as np
    
  • 生成测试数据

    dates = pd.date_range('20200218', periods=6)
    df = pd.DataFrame(np.arange(24).reshape((6,4)),index=dates, columns=['A','B','C','D'])
    '''
                 A   B   C   D
    2020-02-18   0   1   2   3
    2020-02-19   4   5   6   7
    2020-02-20   8   9  10  11
    2020-02-21  12  13  14  15
    2020-02-22  16  17  18  19
    2020-02-23  20  21  22  23
    '''
    

    注:下面所有的操作都是基于这里的原始数据

  • 根据序数索引和属性索引设置值

    df.iloc[2,2] = 1111
    df.loc['20200220','B'] = 2222
    '''
                 A     B     C   D
    2020-02-18   0     1     2   3
    2020-02-19   4     5     6   7
    2020-02-20   8  2222  1111  11
    2020-02-21  12    13    14  15
    2020-02-22  16    17    18  19
    2020-02-23  20    21    22  23
    '''
    
  • 根据是否满足条件设置值

    df.B[df.A>4] = 0
    '''
                 A  B   C   D
    2020-02-18   0  1   2   3
    2020-02-19   4  5   6   7
    2020-02-20   8  0  10  11
    2020-02-21  12  0  14  15
    2020-02-22  16  0  18  19
    2020-02-23  20  0  22  23
    '''
    
  • 设置整列的值

    df['F'] = 8888
    '''
                 A   B   C   D     F
    2020-02-18   0   1   2   3  8888
    2020-02-19   4   5   6   7  8888
    2020-02-20   8   9  10  11  8888
    2020-02-21  12  13  14  15  8888
    2020-02-22  16  17  18  19  8888
    2020-02-23  20  21  22  23  8888
    '''
    
    df['E'] = pd.Series([1,2,3,4,5,6], index=pd.date_range('20200218',periods=6))
    #              A   B   C   D  E
    # 2020-02-18   0   1   2   3  1
    # 2020-02-19   4   5   6   7  2
    # 2020-02-20   8   9  10  11  3
    # 2020-02-21  12  13  14  15  4
    # 2020-02-22  16  17  18  19  5
    # 2020-02-23  20  21  22  23  6
    
  • 参考文献

    程序主要来自 Pandas 设置值,略有改动

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转载自blog.csdn.net/BBJG_001/article/details/104490702