10分钟入门pandas#

这是对pandas的一个简短介绍,主要针对新用户。你可以在 Cookbook 中看到更复杂的食谱。

通常,我们这样导入:

In [1]: import numpy as np

In [2]: import pandas as pd

pandas 中的基本数据结构#

pandas 提供了两种处理数据的类:

  1. Series:一个一维的带标签数组,持有任何类型的数据

    例如整数、字符串、Python对象等。

  2. DataFrame:一个二维的数据结构,类似于二维数组或带有行和列的表格。

对象创建#

请参阅 数据结构介绍部分

通过传递一个值列表来创建 Series,让 pandas 创建一个默认的 RangeIndex

In [3]: s = pd.Series([1, 3, 5, np.nan, 6, 8])

In [4]: s
Out[4]: 
0    1.0
1    3.0
2    5.0
3    NaN
4    6.0
5    8.0
dtype: float64

通过传递带有使用 date_range() 创建的日期时间索引和标记列的 NumPy 数组来创建 DataFrame

In [5]: dates = pd.date_range("20130101", periods=6)

In [6]: dates
Out[6]: 
DatetimeIndex(['2013-01-01', '2013-01-02', '2013-01-03', '2013-01-04',
               '2013-01-05', '2013-01-06'],
              dtype='datetime64[ns]', freq='D')

In [7]: df = pd.DataFrame(np.random.randn(6, 4), index=dates, columns=list("ABCD"))

In [8]: df
Out[8]: 
                   A         B         C         D
2013-01-01  0.469112 -0.282863 -1.509059 -1.135632
2013-01-02  1.212112 -0.173215  0.119209 -1.044236
2013-01-03 -0.861849 -2.104569 -0.494929  1.071804
2013-01-04  0.721555 -0.706771 -1.039575  0.271860
2013-01-05 -0.424972  0.567020  0.276232 -1.087401
2013-01-06 -0.673690  0.113648 -1.478427  0.524988

通过传递一个对象字典来创建 DataFrame ,其中键是列标签,值是列值。

In [9]: df2 = pd.DataFrame(
   ...:     {
   ...:         "A": 1.0,
   ...:         "B": pd.Timestamp("20130102"),
   ...:         "C": pd.Series(1, index=list(range(4)), dtype="float32"),
   ...:         "D": np.array([3] * 4, dtype="int32"),
   ...:         "E": pd.Categorical(["test", "train", "test", "train"]),
   ...:         "F": "foo",
   ...:     }
   ...: )
   ...: 

In [10]: df2
Out[10]: 
     A          B    C  D      E    F
0  1.0 2013-01-02  1.0  3   test  foo
1  1.0 2013-01-02  1.0  3  train  foo
2  1.0 2013-01-02  1.0  3   test  foo
3  1.0 2013-01-02  1.0  3  train  foo

生成的 DataFrame 的列具有不同的 数据类型:

In [11]: df2.dtypes
Out[11]: 
A          float64
B    datetime64[s]
C          float32
D            int32
E         category
F           object
dtype: object

如果你使用的是 IPython,列名(以及公共属性)的制表符补全功能会自动启用。以下是会补全的属性子集:

In [12]: df2.<TAB>  # noqa: E225, E999
df2.A                  df2.bool
df2.abs                df2.boxplot
df2.add                df2.C
df2.add_prefix         df2.clip
df2.add_suffix         df2.columns
df2.align              df2.copy
df2.all                df2.count
df2.any                df2.combine
df2.append             df2.D
df2.apply              df2.describe
df2.B                  df2.duplicated
df2.diff

如你所见,列 ABCD 会自动补全。EF 也在其中;其余的属性为了简洁起见已被截断。

查看数据#

请参阅 基本功能部分

使用 DataFrame.head()DataFrame.tail() 分别查看框架的顶部和底部行:

In [13]: df.head()
Out[13]: 
                   A         B         C         D
2013-01-01  0.469112 -0.282863 -1.509059 -1.135632
2013-01-02  1.212112 -0.173215  0.119209 -1.044236
2013-01-03 -0.861849 -2.104569 -0.494929  1.071804
2013-01-04  0.721555 -0.706771 -1.039575  0.271860
2013-01-05 -0.424972  0.567020  0.276232 -1.087401

In [14]: df.tail(3)
Out[14]: 
                   A         B         C         D
2013-01-04  0.721555 -0.706771 -1.039575  0.271860
2013-01-05 -0.424972  0.567020  0.276232 -1.087401
2013-01-06 -0.673690  0.113648 -1.478427  0.524988

显示 DataFrame.indexDataFrame.columns:

In [15]: df.index
Out[15]: 
DatetimeIndex(['2013-01-01', '2013-01-02', '2013-01-03', '2013-01-04',
               '2013-01-05', '2013-01-06'],
              dtype='datetime64[ns]', freq='D')

In [16]: df.columns
Out[16]: Index(['A', 'B', 'C', 'D'], dtype='object')

使用 DataFrame.to_numpy() 返回底层数据的 NumPy 表示,不带索引或列标签:

In [17]: df.to_numpy()
Out[17]: 
array([[ 0.4691, -0.2829, -1.5091, -1.1356],
       [ 1.2121, -0.1732,  0.1192, -1.0442],
       [-0.8618, -2.1046, -0.4949,  1.0718],
       [ 0.7216, -0.7068, -1.0396,  0.2719],
       [-0.425 ,  0.567 ,  0.2762, -1.0874],
       [-0.6737,  0.1136, -1.4784,  0.525 ]])

备注

NumPy 数组在整个数组中有一个 dtype,而 pandas DataFrame 每列有一个 dtype。当你调用 DataFrame.to_numpy() 时,pandas 会找到能容纳 DataFrame 中所有 dtypes 的 NumPy dtype。如果公共数据类型是 objectDataFrame.to_numpy() 将需要复制数据。

In [18]: df2.dtypes
Out[18]: 
A          float64
B    datetime64[s]
C          float32
D            int32
E         category
F           object
dtype: object

In [19]: df2.to_numpy()
Out[19]: 
array([[1.0, Timestamp('2013-01-02 00:00:00'), 1.0, 3, 'test', 'foo'],
       [1.0, Timestamp('2013-01-02 00:00:00'), 1.0, 3, 'train', 'foo'],
       [1.0, Timestamp('2013-01-02 00:00:00'), 1.0, 3, 'test', 'foo'],
       [1.0, Timestamp('2013-01-02 00:00:00'), 1.0, 3, 'train', 'foo']],
      dtype=object)

describe() 显示数据的快速统计摘要:

In [20]: df.describe()
Out[20]: 
              A         B         C         D
count  6.000000  6.000000  6.000000  6.000000
mean   0.073711 -0.431125 -0.687758 -0.233103
std    0.843157  0.922818  0.779887  0.973118
min   -0.861849 -2.104569 -1.509059 -1.135632
25%   -0.611510 -0.600794 -1.368714 -1.076610
50%    0.022070 -0.228039 -0.767252 -0.386188
75%    0.658444  0.041933 -0.034326  0.461706
max    1.212112  0.567020  0.276232  1.071804

转置您的数据:

In [21]: df.T
Out[21]: 
   2013-01-01  2013-01-02  2013-01-03  2013-01-04  2013-01-05  2013-01-06
A    0.469112    1.212112   -0.861849    0.721555   -0.424972   -0.673690
B   -0.282863   -0.173215   -2.104569   -0.706771    0.567020    0.113648
C   -1.509059    0.119209   -0.494929   -1.039575    0.276232   -1.478427
D   -1.135632   -1.044236    1.071804    0.271860   -1.087401    0.524988

DataFrame.sort_index() 按轴排序:

In [22]: df.sort_index(axis=1, ascending=False)
Out[22]: 
                   D         C         B         A
2013-01-01 -1.135632 -1.509059 -0.282863  0.469112
2013-01-02 -1.044236  0.119209 -0.173215  1.212112
2013-01-03  1.071804 -0.494929 -2.104569 -0.861849
2013-01-04  0.271860 -1.039575 -0.706771  0.721555
2013-01-05 -1.087401  0.276232  0.567020 -0.424972
2013-01-06  0.524988 -1.478427  0.113648 -0.673690

DataFrame.sort_values() 按值排序:

In [23]: df.sort_values(by="B")
Out[23]: 
                   A         B         C         D
2013-01-03 -0.861849 -2.104569 -0.494929  1.071804
2013-01-04  0.721555 -0.706771 -1.039575  0.271860
2013-01-01  0.469112 -0.282863 -1.509059 -1.135632
2013-01-02  1.212112 -0.173215  0.119209 -1.044236
2013-01-06 -0.673690  0.113648 -1.478427  0.524988
2013-01-05 -0.424972  0.567020  0.276232 -1.087401

选择#

备注

虽然标准的 Python / NumPy 表达式用于选择和设置是直观且在交互工作中非常方便,但对于生产代码,我们推荐使用优化的 pandas 数据访问方法,DataFrame.at()DataFrame.iat()DataFrame.loc()DataFrame.iloc()

请参阅索引文档 索引和选择数据多索引/高级索引

Getitem ([])#

对于一个 DataFrame,传递一个单一标签选择一列并产生一个等同于 df.ASeries

In [24]: df["A"]
Out[24]: 
2013-01-01    0.469112
2013-01-02    1.212112
2013-01-03   -0.861849
2013-01-04    0.721555
2013-01-05   -0.424972
2013-01-06   -0.673690
Freq: D, Name: A, dtype: float64

对于一个 DataFrame ,传递一个切片 : 选择匹配的行:

In [25]: df[0:3]
Out[25]: 
                   A         B         C         D
2013-01-01  0.469112 -0.282863 -1.509059 -1.135632
2013-01-02  1.212112 -0.173215  0.119209 -1.044236
2013-01-03 -0.861849 -2.104569 -0.494929  1.071804

In [26]: df["20130102":"20130104"]
Out[26]: 
                   A         B         C         D
2013-01-02  1.212112 -0.173215  0.119209 -1.044236
2013-01-03 -0.861849 -2.104569 -0.494929  1.071804
2013-01-04  0.721555 -0.706771 -1.039575  0.271860

按标签选择#

更多信息请参见 按标签选择 使用 DataFrame.loc()DataFrame.at()

选择匹配标签的行:

In [27]: df.loc[dates[0]]
Out[27]: 
A    0.469112
B   -0.282863
C   -1.509059
D   -1.135632
Name: 2013-01-01 00:00:00, dtype: float64

选择所有行 (:) 并选择列标签:

In [28]: df.loc[:, ["A", "B"]]
Out[28]: 
                   A         B
2013-01-01  0.469112 -0.282863
2013-01-02  1.212112 -0.173215
2013-01-03 -0.861849 -2.104569
2013-01-04  0.721555 -0.706771
2013-01-05 -0.424972  0.567020
2013-01-06 -0.673690  0.113648

对于标签切片,两个端点都 包含 在内:

In [29]: df.loc["20130102":"20130104", ["A", "B"]]
Out[29]: 
                   A         B
2013-01-02  1.212112 -0.173215
2013-01-03 -0.861849 -2.104569
2013-01-04  0.721555 -0.706771

选择单行和单列标签返回一个标量:

In [30]: df.loc[dates[0], "A"]
Out[30]: 0.4691122999071863

为了快速访问一个标量(相当于之前的方法):

In [31]: df.at[dates[0], "A"]
Out[31]: 0.4691122999071863

按位置选择#

更多信息请参见 按位置选择 使用 DataFrame.iloc()DataFrame.iat()

通过传递的整数的位置进行选择:

In [32]: df.iloc[3]
Out[32]: 
A    0.721555
B   -0.706771
C   -1.039575
D    0.271860
Name: 2013-01-04 00:00:00, dtype: float64

整数切片与 NumPy/Python 类似:

In [33]: df.iloc[3:5, 0:2]
Out[33]: 
                   A         B
2013-01-04  0.721555 -0.706771
2013-01-05 -0.424972  0.567020

整数位置位置列表:

In [34]: df.iloc[[1, 2, 4], [0, 2]]
Out[34]: 
                   A         C
2013-01-02  1.212112  0.119209
2013-01-03 -0.861849 -0.494929
2013-01-05 -0.424972  0.276232

对于显式切片行:

In [35]: df.iloc[1:3, :]
Out[35]: 
                   A         B         C         D
2013-01-02  1.212112 -0.173215  0.119209 -1.044236
2013-01-03 -0.861849 -2.104569 -0.494929  1.071804

对于显式切片列:

In [36]: df.iloc[:, 1:3]
Out[36]: 
                   B         C
2013-01-01 -0.282863 -1.509059
2013-01-02 -0.173215  0.119209
2013-01-03 -2.104569 -0.494929
2013-01-04 -0.706771 -1.039575
2013-01-05  0.567020  0.276232
2013-01-06  0.113648 -1.478427

为了显式地获取一个值:

In [37]: df.iloc[1, 1]
Out[37]: -0.17321464905330858

为了快速访问一个标量(相当于之前的方法):

In [38]: df.iat[1, 1]
Out[38]: -0.17321464905330858

布尔索引#

选择 df.A 大于 0 的行。

In [39]: df[df["A"] > 0]
Out[39]: 
                   A         B         C         D
2013-01-01  0.469112 -0.282863 -1.509059 -1.135632
2013-01-02  1.212112 -0.173215  0.119209 -1.044236
2013-01-04  0.721555 -0.706771 -1.039575  0.271860

从满足布尔条件的 DataFrame 中选择值:

In [40]: df[df > 0]
Out[40]: 
                   A         B         C         D
2013-01-01  0.469112       NaN       NaN       NaN
2013-01-02  1.212112       NaN  0.119209       NaN
2013-01-03       NaN       NaN       NaN  1.071804
2013-01-04  0.721555       NaN       NaN  0.271860
2013-01-05       NaN  0.567020  0.276232       NaN
2013-01-06       NaN  0.113648       NaN  0.524988

使用 isin() 方法进行过滤:

In [41]: df2 = df.copy()

In [42]: df2["E"] = ["one", "one", "two", "three", "four", "three"]

In [43]: df2
Out[43]: 
                   A         B         C         D      E
2013-01-01  0.469112 -0.282863 -1.509059 -1.135632    one
2013-01-02  1.212112 -0.173215  0.119209 -1.044236    one
2013-01-03 -0.861849 -2.104569 -0.494929  1.071804    two
2013-01-04  0.721555 -0.706771 -1.039575  0.271860  three
2013-01-05 -0.424972  0.567020  0.276232 -1.087401   four
2013-01-06 -0.673690  0.113648 -1.478427  0.524988  three

In [44]: df2[df2["E"].isin(["two", "four"])]
Out[44]: 
                   A         B         C         D     E
2013-01-03 -0.861849 -2.104569 -0.494929  1.071804   two
2013-01-05 -0.424972  0.567020  0.276232 -1.087401  four

设置#

设置一个新列会自动根据索引对齐数据:

In [45]: s1 = pd.Series([1, 2, 3, 4, 5, 6], index=pd.date_range("20130102", periods=6))

In [46]: s1
Out[46]: 
2013-01-02    1
2013-01-03    2
2013-01-04    3
2013-01-05    4
2013-01-06    5
2013-01-07    6
Freq: D, dtype: int64

In [47]: df["F"] = s1

通过标签设置值:

In [48]: df.at[dates[0], "A"] = 0

按位置设置值:

In [49]: df.iat[0, 1] = 0

通过分配一个 NumPy 数组进行设置:

In [50]: df.loc[:, "D"] = np.array([5] * len(df))

先前设置操作的结果:

In [51]: df
Out[51]: 
                   A         B         C    D    F
2013-01-01  0.000000  0.000000 -1.509059  5.0  NaN
2013-01-02  1.212112 -0.173215  0.119209  5.0  1.0
2013-01-03 -0.861849 -2.104569 -0.494929  5.0  2.0
2013-01-04  0.721555 -0.706771 -1.039575  5.0  3.0
2013-01-05 -0.424972  0.567020  0.276232  5.0  4.0
2013-01-06 -0.673690  0.113648 -1.478427  5.0  5.0

一个带有设置的 where 操作:

In [52]: df2 = df.copy()

In [53]: df2[df2 > 0] = -df2

In [54]: df2
Out[54]: 
                   A         B         C    D    F
2013-01-01  0.000000  0.000000 -1.509059 -5.0  NaN
2013-01-02 -1.212112 -0.173215 -0.119209 -5.0 -1.0
2013-01-03 -0.861849 -2.104569 -0.494929 -5.0 -2.0
2013-01-04 -0.721555 -0.706771 -1.039575 -5.0 -3.0
2013-01-05 -0.424972 -0.567020 -0.276232 -5.0 -4.0
2013-01-06 -0.673690 -0.113648 -1.478427 -5.0 -5.0

缺失数据#

对于NumPy数据类型,np.nan 表示缺失数据。默认情况下,它不包含在计算中。请参见 缺失数据部分

重新索引允许您在指定轴上更改/添加/删除索引。这将返回数据的副本:

In [55]: df1 = df.reindex(index=dates[0:4], columns=list(df.columns) + ["E"])

In [56]: df1.loc[dates[0] : dates[1], "E"] = 1

In [57]: df1
Out[57]: 
                   A         B         C    D    F    E
2013-01-01  0.000000  0.000000 -1.509059  5.0  NaN  1.0
2013-01-02  1.212112 -0.173215  0.119209  5.0  1.0  1.0
2013-01-03 -0.861849 -2.104569 -0.494929  5.0  2.0  NaN
2013-01-04  0.721555 -0.706771 -1.039575  5.0  3.0  NaN

DataFrame.dropna() 删除任何包含缺失数据的行:

In [58]: df1.dropna(how="any")
Out[58]: 
                   A         B         C    D    F    E
2013-01-02  1.212112 -0.173215  0.119209  5.0  1.0  1.0

DataFrame.fillna() 填充缺失数据:

In [59]: df1.fillna(value=5)
Out[59]: 
                   A         B         C    D    F    E
2013-01-01  0.000000  0.000000 -1.509059  5.0  5.0  1.0
2013-01-02  1.212112 -0.173215  0.119209  5.0  1.0  1.0
2013-01-03 -0.861849 -2.104569 -0.494929  5.0  2.0  5.0
2013-01-04  0.721555 -0.706771 -1.039575  5.0  3.0  5.0

isna() 获取值为 nan 的布尔掩码:

In [60]: pd.isna(df1)
Out[60]: 
                A      B      C      D      F      E
2013-01-01  False  False  False  False   True  False
2013-01-02  False  False  False  False  False  False
2013-01-03  False  False  False  False  False   True
2013-01-04  False  False  False  False  False   True

操作#

请参见 二元操作基础部分

统计数据#

一般来说,操作*排除*缺失的数据。

计算每一列的平均值:

In [61]: df.mean()
Out[61]: 
A   -0.004474
B   -0.383981
C   -0.687758
D    5.000000
F    3.000000
dtype: float64

计算每一行的平均值:

In [62]: df.mean(axis=1)
Out[62]: 
2013-01-01    0.872735
2013-01-02    1.431621
2013-01-03    0.707731
2013-01-04    1.395042
2013-01-05    1.883656
2013-01-06    1.592306
Freq: D, dtype: float64

使用另一个 SeriesDataFrame 时,如果它们的索引或列不同,结果将与索引或列标签的并集对齐。此外,pandas 会自动沿指定维度广播,并用 np.nan 填充未对齐的标签。

In [63]: s = pd.Series([1, 3, 5, np.nan, 6, 8], index=dates).shift(2)

In [64]: s
Out[64]: 
2013-01-01    NaN
2013-01-02    NaN
2013-01-03    1.0
2013-01-04    3.0
2013-01-05    5.0
2013-01-06    NaN
Freq: D, dtype: float64

In [65]: df.sub(s, axis="index")
Out[65]: 
                   A         B         C    D    F
2013-01-01       NaN       NaN       NaN  NaN  NaN
2013-01-02       NaN       NaN       NaN  NaN  NaN
2013-01-03 -1.861849 -3.104569 -1.494929  4.0  1.0
2013-01-04 -2.278445 -3.706771 -4.039575  2.0  0.0
2013-01-05 -5.424972 -4.432980 -4.723768  0.0 -1.0
2013-01-06       NaN       NaN       NaN  NaN  NaN

用户定义的函数#

DataFrame.agg()DataFrame.transform() 分别应用一个用户定义的函数,该函数会减少或广播其结果。

In [66]: df.agg(lambda x: np.mean(x) * 5.6)
Out[66]: 
A    -0.025054
B    -2.150294
C    -3.851445
D    28.000000
F    16.800000
dtype: float64

In [67]: df.transform(lambda x: x * 101.2)
Out[67]: 
                     A           B           C      D      F
2013-01-01    0.000000    0.000000 -152.716721  506.0    NaN
2013-01-02  122.665737  -17.529322   12.063922  506.0  101.2
2013-01-03  -87.219115 -212.982405  -50.086843  506.0  202.4
2013-01-04   73.021382  -71.525239 -105.204988  506.0  303.6
2013-01-05  -43.007200   57.382459   27.954680  506.0  404.8
2013-01-06  -68.177398   11.501219 -149.616767  506.0  506.0

值计数#

更多信息请参见 直方图和离散化

In [68]: s = pd.Series(np.random.randint(0, 7, size=10))

In [69]: s
Out[69]: 
0    4
1    2
2    1
3    2
4    6
5    4
6    4
7    6
8    4
9    4
dtype: int64

In [70]: s.value_counts()
Out[70]: 
4    5
2    2
6    2
1    1
Name: count, dtype: int64

字符串方法#

Series 配备了一组字符串处理方法在 str 属性中,这使得在数组的每个元素上操作变得容易,如下面的代码片段所示。更多信息请参见 向量化字符串方法

In [71]: s = pd.Series(["A", "B", "C", "Aaba", "Baca", np.nan, "CABA", "dog", "cat"])

In [72]: s.str.lower()
Out[72]: 
0       a
1       b
2       c
3    aaba
4    baca
5     NaN
6    caba
7     dog
8     cat
dtype: object

合并#

Concat#

pandas 提供了各种工具,可以轻松地将 SeriesDataFrame 对象以各种索引集合逻辑和连接/合并类型操作中的关系代数功能组合在一起。

请参阅 合并部分

使用 concat() 将 pandas 对象按行连接:

In [73]: df = pd.DataFrame(np.random.randn(10, 4))

In [74]: df
Out[74]: 
          0         1         2         3
0 -0.548702  1.467327 -1.015962 -0.483075
1  1.637550 -1.217659 -0.291519 -1.745505
2 -0.263952  0.991460 -0.919069  0.266046
3 -0.709661  1.669052  1.037882 -1.705775
4 -0.919854 -0.042379  1.247642 -0.009920
5  0.290213  0.495767  0.362949  1.548106
6 -1.131345 -0.089329  0.337863 -0.945867
7 -0.932132  1.956030  0.017587 -0.016692
8 -0.575247  0.254161 -1.143704  0.215897
9  1.193555 -0.077118 -0.408530 -0.862495

# break it into pieces
In [75]: pieces = [df[:3], df[3:7], df[7:]]

In [76]: pd.concat(pieces)
Out[76]: 
          0         1         2         3
0 -0.548702  1.467327 -1.015962 -0.483075
1  1.637550 -1.217659 -0.291519 -1.745505
2 -0.263952  0.991460 -0.919069  0.266046
3 -0.709661  1.669052  1.037882 -1.705775
4 -0.919854 -0.042379  1.247642 -0.009920
5  0.290213  0.495767  0.362949  1.548106
6 -1.131345 -0.089329  0.337863 -0.945867
7 -0.932132  1.956030  0.017587 -0.016692
8 -0.575247  0.254161 -1.143704  0.215897
9  1.193555 -0.077118 -0.408530 -0.862495

备注

DataFrame 添加列相对较快。然而,添加行需要复制,可能会比较耗时。我们建议将预构建的记录列表传递给 DataFrame 构造函数,而不是通过迭代地向其附加记录来构建 DataFrame

加入#

merge() 启用特定列上的 SQL 样式连接类型。请参见 数据库样式连接 部分。

In [77]: left = pd.DataFrame({"key": ["foo", "foo"], "lval": [1, 2]})

In [78]: right = pd.DataFrame({"key": ["foo", "foo"], "rval": [4, 5]})

In [79]: left
Out[79]: 
   key  lval
0  foo     1
1  foo     2

In [80]: right
Out[80]: 
   key  rval
0  foo     4
1  foo     5

In [81]: pd.merge(left, right, on="key")
Out[81]: 
   key  lval  rval
0  foo     1     4
1  foo     1     5
2  foo     2     4
3  foo     2     5

merge() 在唯一键上:

In [82]: left = pd.DataFrame({"key": ["foo", "bar"], "lval": [1, 2]})

In [83]: right = pd.DataFrame({"key": ["foo", "bar"], "rval": [4, 5]})

In [84]: left
Out[84]: 
   key  lval
0  foo     1
1  bar     2

In [85]: right
Out[85]: 
   key  rval
0  foo     4
1  bar     5

In [86]: pd.merge(left, right, on="key")
Out[86]: 
   key  lval  rval
0  foo     1     4
1  bar     2     5

分组#

通过“分组依据”,我们指的是涉及以下一个或多个步骤的过程:

  • 分割 数据基于某些标准分成组

  • 应用 一个函数到每个独立的分组

  • 结合 结果到一个数据结构

请参见 分组部分

In [87]: df = pd.DataFrame(
   ....:     {
   ....:         "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"],
   ....:         "B": ["one", "one", "two", "three", "two", "two", "one", "three"],
   ....:         "C": np.random.randn(8),
   ....:         "D": np.random.randn(8),
   ....:     }
   ....: )
   ....: 

In [88]: df
Out[88]: 
     A      B         C         D
0  foo    one  1.346061 -1.577585
1  bar    one  1.511763  0.396823
2  foo    two  1.627081 -0.105381
3  bar  three -0.990582 -0.532532
4  foo    two -0.441652  1.453749
5  bar    two  1.211526  1.208843
6  foo    one  0.268520 -0.080952
7  foo  three  0.024580 -0.264610

按列标签分组,选择列标签,然后对结果组应用 DataFrameGroupBy.sum() 函数:

In [89]: df.groupby("A")[["C", "D"]].sum()
Out[89]: 
            C         D
A                      
bar  1.732707  1.073134
foo  2.824590 -0.574779

按多个列标签分组形成 MultiIndex

In [90]: df.groupby(["A", "B"]).sum()
Out[90]: 
                  C         D
A   B                        
bar one    1.511763  0.396823
    three -0.990582 -0.532532
    two    1.211526  1.208843
foo one    1.614581 -1.658537
    three  0.024580 -0.264610
    two    1.185429  1.348368

Reshaping#

请参阅关于 分层索引重塑 的部分。

堆栈#

In [91]: arrays = [
   ....:    ["bar", "bar", "baz", "baz", "foo", "foo", "qux", "qux"],
   ....:    ["one", "two", "one", "two", "one", "two", "one", "two"],
   ....: ]
   ....: 

In [92]: index = pd.MultiIndex.from_arrays(arrays, names=["first", "second"])

In [93]: df = pd.DataFrame(np.random.randn(8, 2), index=index, columns=["A", "B"])

In [94]: df2 = df[:4]

In [95]: df2
Out[95]: 
                     A         B
first second                    
bar   one    -0.727965 -0.589346
      two     0.339969 -0.693205
baz   one    -0.339355  0.593616
      two     0.884345  1.591431

stack() 方法“压缩”了 DataFrame 列中的一个层级:

In [96]: stacked = df2.stack()

In [97]: stacked
Out[97]: 
first  second   
bar    one     A   -0.727965
               B   -0.589346
       two     A    0.339969
               B   -0.693205
baz    one     A   -0.339355
               B    0.593616
       two     A    0.884345
               B    1.591431
dtype: float64

使用一个“堆叠”的 DataFrame 或 Series(具有 MultiIndex 作为 index),stack() 的逆操作是 unstack(),默认情况下它会解堆叠 最后一层

In [98]: stacked.unstack()
Out[98]: 
                     A         B
first second                    
bar   one    -0.727965 -0.589346
      two     0.339969 -0.693205
baz   one    -0.339355  0.593616
      two     0.884345  1.591431

In [99]: stacked.unstack(1)
Out[99]: 
second        one       two
first                      
bar   A -0.727965  0.339969
      B -0.589346 -0.693205
baz   A -0.339355  0.884345
      B  0.593616  1.591431

In [100]: stacked.unstack(0)
Out[100]: 
first          bar       baz
second                      
one    A -0.727965 -0.339355
       B -0.589346  0.593616
two    A  0.339969  0.884345
       B -0.693205  1.591431

数据透视表#

请参见关于 数据透视表 的部分。

In [101]: df = pd.DataFrame(
   .....:     {
   .....:         "A": ["one", "one", "two", "three"] * 3,
   .....:         "B": ["A", "B", "C"] * 4,
   .....:         "C": ["foo", "foo", "foo", "bar", "bar", "bar"] * 2,
   .....:         "D": np.random.randn(12),
   .....:         "E": np.random.randn(12),
   .....:     }
   .....: )
   .....: 

In [102]: df
Out[102]: 
        A  B    C         D         E
0     one  A  foo -1.202872  0.047609
1     one  B  foo -1.814470 -0.136473
2     two  C  foo  1.018601 -0.561757
3   three  A  bar -0.595447 -1.623033
4     one  B  bar  1.395433  0.029399
5     one  C  bar -0.392670 -0.542108
6     two  A  foo  0.007207  0.282696
7   three  B  foo  1.928123 -0.087302
8     one  C  foo -0.055224 -1.575170
9     one  A  bar  2.395985  1.771208
10    two  B  bar  1.552825  0.816482
11  three  C  bar  0.166599  1.100230

pivot_table() 旋转一个 DataFrame 指定 valuesindexcolumns

In [103]: pd.pivot_table(df, values="D", index=["A", "B"], columns=["C"])
Out[103]: 
C             bar       foo
A     B                    
one   A  2.395985 -1.202872
      B  1.395433 -1.814470
      C -0.392670 -0.055224
three A -0.595447       NaN
      B       NaN  1.928123
      C  0.166599       NaN
two   A       NaN  0.007207
      B  1.552825       NaN
      C       NaN  1.018601

时间序列#

pandas 提供了简单、强大且高效的功能,用于在频率转换期间执行重采样操作(例如,将每秒数据转换为每5分钟数据)。这在金融应用中极为常见,但不仅限于此。请参阅 时间序列部分

In [104]: rng = pd.date_range("1/1/2012", periods=100, freq="s")

In [105]: ts = pd.Series(np.random.randint(0, 500, len(rng)), index=rng)

In [106]: ts.resample("5Min").sum()
Out[106]: 
2012-01-01    24182
Freq: 5min, dtype: int64

Series.tz_localize() 将时间序列本地化为时区:

In [107]: rng = pd.date_range("3/6/2012 00:00", periods=5, freq="D")

In [108]: ts = pd.Series(np.random.randn(len(rng)), rng)

In [109]: ts
Out[109]: 
2012-03-06    1.857704
2012-03-07   -1.193545
2012-03-08    0.677510
2012-03-09   -0.153931
2012-03-10    0.520091
Freq: D, dtype: float64

In [110]: ts_utc = ts.tz_localize("UTC")

In [111]: ts_utc
Out[111]: 
2012-03-06 00:00:00+00:00    1.857704
2012-03-07 00:00:00+00:00   -1.193545
2012-03-08 00:00:00+00:00    0.677510
2012-03-09 00:00:00+00:00   -0.153931
2012-03-10 00:00:00+00:00    0.520091
Freq: D, dtype: float64

Series.tz_convert() 将一个时区感知的时序数据转换到另一个时区:

In [112]: ts_utc.tz_convert("US/Eastern")
Out[112]: 
2012-03-05 19:00:00-05:00    1.857704
2012-03-06 19:00:00-05:00   -1.193545
2012-03-07 19:00:00-05:00    0.677510
2012-03-08 19:00:00-05:00   -0.153931
2012-03-09 19:00:00-05:00    0.520091
Freq: D, dtype: float64

向时间序列添加一个非固定时长(BusinessDay):

In [113]: rng
Out[113]: 
DatetimeIndex(['2012-03-06', '2012-03-07', '2012-03-08', '2012-03-09',
               '2012-03-10'],
              dtype='datetime64[ns]', freq='D')

In [114]: rng + pd.offsets.BusinessDay(5)
Out[114]: 
DatetimeIndex(['2012-03-13', '2012-03-14', '2012-03-15', '2012-03-16',
               '2012-03-16'],
              dtype='datetime64[ns]', freq=None)

分类数据#

pandas 可以在 DataFrame 中包含分类数据。有关完整文档,请参阅 分类介绍API 文档

In [115]: df = pd.DataFrame(
   .....:     {"id": [1, 2, 3, 4, 5, 6], "raw_grade": ["a", "b", "b", "a", "a", "e"]}
   .....: )
   .....: 

将原始成绩转换为分类数据类型:

In [116]: df["grade"] = df["raw_grade"].astype("category")

In [117]: df["grade"]
Out[117]: 
0    a
1    b
2    b
3    a
4    a
5    e
Name: grade, dtype: category
Categories (3, object): ['a', 'b', 'e']

将类别重命名为更有意义的名称:

In [118]: new_categories = ["very good", "good", "very bad"]

In [119]: df["grade"] = df["grade"].cat.rename_categories(new_categories)

重新排序类别并同时添加缺失的类别(Series.cat() 下的方法默认返回一个新的 Series):

In [120]: df["grade"] = df["grade"].cat.set_categories(
   .....:     ["very bad", "bad", "medium", "good", "very good"]
   .....: )
   .....: 

In [121]: df["grade"]
Out[121]: 
0    very good
1         good
2         good
3    very good
4    very good
5     very bad
Name: grade, dtype: category
Categories (5, object): ['very bad', 'bad', 'medium', 'good', 'very good']

排序是按类别中的顺序,而不是按字母顺序:

In [122]: df.sort_values(by="grade")
Out[122]: 
   id raw_grade      grade
5   6         e   very bad
1   2         b       good
2   3         b       good
0   1         a  very good
3   4         a  very good
4   5         a  very good

通过 observed=False 的分类列进行分组也会显示空类别:

In [123]: df.groupby("grade", observed=False).size()
Out[123]: 
grade
very bad     1
bad          0
medium       0
good         2
very good    3
dtype: int64

绘图#

请参阅 绘图 文档。

我们使用引用matplotlib API的标准约定:

In [124]: import matplotlib.pyplot as plt

In [125]: plt.close("all")

plt.close 方法用于 关闭 一个图形窗口:

In [126]: ts = pd.Series(np.random.randn(1000), index=pd.date_range("1/1/2000", periods=1000))

In [127]: ts = ts.cumsum()

In [128]: ts.plot();
savefig/series_plot_basic.png

备注

在使用 Jupyter 时,图表将使用 plot() 显示。否则,使用 matplotlib.pyplot.show 来显示它,或使用 matplotlib.pyplot.savefig 将其写入文件。

plot() 绘制所有列:

In [129]: df = pd.DataFrame(
   .....:     np.random.randn(1000, 4), index=ts.index, columns=["A", "B", "C", "D"]
   .....: )
   .....: 

In [130]: df = df.cumsum()

In [131]: plt.figure();

In [132]: df.plot();

In [133]: plt.legend(loc='best');
savefig/frame_plot_basic.png

导入和导出数据#

请参阅 IO 工具 部分。

CSV#

写入到csv文件: 使用 DataFrame.to_csv()

In [134]: df = pd.DataFrame(np.random.randint(0, 5, (10, 5)))

In [135]: df.to_csv("foo.csv")

从csv文件读取: 使用 read_csv()

In [136]: pd.read_csv("foo.csv")
Out[136]: 
   Unnamed: 0  0  1  2  3  4
0           0  4  3  1  1  2
1           1  1  0  2  3  2
2           2  1  4  2  1  2
3           3  0  4  0  2  2
4           4  4  2  2  3  4
5           5  4  0  4  3  1
6           6  2  1  2  0  3
7           7  4  0  4  4  4
8           8  4  4  1  0  1
9           9  0  4  3  0  3

Parquet#

写入一个 Parquet 文件:

In [137]: df.to_parquet("foo.parquet")

使用 read_parquet() 从 Parquet 文件存储中读取:

In [138]: pd.read_parquet("foo.parquet")
Out[138]: 
   0  1  2  3  4
0  4  3  1  1  2
1  1  0  2  3  2
2  1  4  2  1  2
3  0  4  0  2  2
4  4  2  2  3  4
5  4  0  4  3  1
6  2  1  2  0  3
7  4  0  4  4  4
8  4  4  1  0  1
9  0  4  3  0  3

Excel#

读取和写入 Excel

使用 DataFrame.to_excel() 写入excel文件:

In [139]: df.to_excel("foo.xlsx", sheet_name="Sheet1")

使用 read_excel() 从 Excel 文件中读取:

In [140]: pd.read_excel("foo.xlsx", "Sheet1", index_col=None, na_values=["NA"])
Out[140]: 
   Unnamed: 0  0  1  2  3  4
0           0  4  3  1  1  2
1           1  1  0  2  3  2
2           2  1  4  2  1  2
3           3  0  4  0  2  2
4           4  4  2  2  3  4
5           5  4  0  4  3  1
6           6  2  1  2  0  3
7           7  4  0  4  4  4
8           8  4  4  1  0  1
9           9  0  4  3  0  3

陷阱#

如果你尝试对一个 SeriesDataFrame 执行布尔运算,你可能会看到一个类似以下的异常:

In [141]: if pd.Series([False, True, False]):
   .....:      print("I was true")
   .....: 
---------------------------------------------------------------------------
ValueError                                Traceback (most recent call last)
<ipython-input-141-b27eb9c1dfc0> in ?()
----> 1 if pd.Series([False, True, False]):
      2      print("I was true")

/home/pandas/pandas/core/generic.py in ?(self)
   1494     @final
   1495     def __bool__(self) -> NoReturn:
-> 1496         raise ValueError(
   1497             f"The truth value of a {type(self).__name__} is ambiguous. "
   1498             "Use a.empty, a.bool(), a.item(), a.any() or a.all()."
   1499         )

ValueError: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all().

请参见 比较注意事项 以了解解释和应对方法。