官术网_书友最值得收藏!

Grouping data

One typical workflow during data exploration looks as follows:

  • You find a criterion that you want to use to group your data. Maybe you have GDP data for every country along with the continent and you would like to ask questions about the continents. These questions usually lead to some function applications- you might want to compute the mean GDP per continent. Finally, you want to store this data for further processing in a new data structure.
  • We use a simpler example here. Imagine some fictional weather data about the number of sunny hours per day and city:
    >>> df
     date city value
    0 2000-01-03 London 6
    1 2000-01-04 London 3
    2 2000-01-05 London 4
    3 2000-01-03 Mexico 3
    4 2000-01-04 Mexico 9
    5 2000-01-05 Mexico 8
    6 2000-01-03 Mumbai 12
    7 2000-01-04 Mumbai 9
    8 2000-01-05 Mumbai 8
    9 2000-01-03 Tokyo 5
    10 2000-01-04 Tokyo 5
    11 2000-01-05 Tokyo 6
    
  • The groups attributes return a dictionary containing the unique groups and the corresponding values as axis labels:
    >>> df.groupby("city").groups
    {'London': [0, 1, 2],
    'Mexico': [3, 4, 5],
    'Mumbai': [6, 7, 8],
    'Tokyo': [9, 10, 11]}
    
  • Although the result of a groupby is a GroupBy object, not a DataFrame, we can use the usual indexing notation to refer to columns:
    >>> grouped = df.groupby(["city", "value"])
    >>> grouped["value"].max()
    city
    London 6
    Mexico 9
    Mumbai 12
    Tokyo 6
    Name: value, dtype: int64
    >>> grouped["value"].sum()
    city
    London 13
    Mexico 20
    Mumbai 29
    Tokyo 16
    Name: value, dtype: int64
    
  • We see that, according to our data set, Mumbai seems to be a sunny city. An alternative – and more verbose – way to achieve the above would be:
    >>> df['value'].groupby(df['city']).sum()
    city
    London 13
    Mexico 20
    Mumbai 29
    Tokyo 16
    Name: value, dtype: 
    int64
    
主站蜘蛛池模板: 浦东新区| 台前县| 锡林郭勒盟| 弋阳县| 赤城县| 滨州市| 开原市| 辛集市| 邻水| 毕节市| 通许县| 忻州市| 临海市| 烟台市| 资中县| 如东县| 大足县| 土默特右旗| 大埔区| 阜城县| 昌乐县| 桂阳县| 桂林市| 凤庆县| 阿合奇县| 上饶县| 当涂县| 正镶白旗| 青海省| 房山区| 图片| 喀喇| 志丹县| 察雅县| 伊通| 镇雄县| 卓尼县| 西充县| 泸州市| 长丰县| 银川市|