pandas pd.groupby()
我是小蚂蚁 人气:0在pandas中的groupby和在sql语句中的groupby有异曲同工之妙,不过也难怪,毕竟关系数据库中的存放数据的结构也是一张大表罢了,与dataframe的形式相似。
import numpy as np import pandas as pd from pandas import Series, DataFrame df = pd.read_csv('./city_weather.csv') print(df) ''' date city temperature wind 0 03/01/2016 BJ 8 5 1 17/01/2016 BJ 12 2 2 31/01/2016 BJ 19 2 3 14/02/2016 BJ -3 3 4 28/02/2016 BJ 19 2 5 13/03/2016 BJ 5 3 6 27/03/2016 SH -4 4 7 10/04/2016 SH 19 3 8 24/04/2016 SH 20 3 9 08/05/2016 SH 17 3 10 22/05/2016 SH 4 2 11 05/06/2016 SH -10 4 12 19/06/2016 SH 0 5 13 03/07/2016 SH -9 5 14 17/07/2016 GZ 10 2 15 31/07/2016 GZ -1 5 16 14/08/2016 GZ 1 5 17 28/08/2016 GZ 25 4 18 11/09/2016 SZ 20 1 19 25/09/2016 SZ -10 4 ''' g = df.groupby(df['city']) # <pandas.core.groupby.groupby.DataFrameGroupBy object at 0x7f10450e12e8> print(g.groups) # {'BJ': Int64Index([0, 1, 2, 3, 4, 5], dtype='int64'), # 'GZ': Int64Index([14, 15, 16, 17], dtype='int64'), # 'SZ': Int64Index([18, 19], dtype='int64'), # 'SH': Int64Index([6, 7, 8, 9, 10, 11, 12, 13], dtype='int64')} print(g.size()) # g.size() 可以统计每个组 成员的 数量 ''' city BJ 6 GZ 4 SH 8 SZ 2 dtype: int64 ''' print(g.get_group('BJ')) # 得到 某个 分组 ''' date city temperature wind 0 03/01/2016 BJ 8 5 1 17/01/2016 BJ 12 2 2 31/01/2016 BJ 19 2 3 14/02/2016 BJ -3 3 4 28/02/2016 BJ 19 2 5 13/03/2016 BJ 5 3 ''' df_bj = g.get_group('BJ') print(df_bj.mean()) # 对这个 分组 求平均 ''' temperature 10.000000 wind 2.833333 dtype: float64 ''' # 直接使用 g 对象,求平均值 print(g.mean()) # 对 每一个 分组, 都计算分组 ''' temperature wind city BJ 10.000 2.833333 GZ 8.750 4.000000 SH 4.625 3.625000 SZ 5.000 2.500000 ''' print(g.max()) ''' date temperature wind city BJ 31/01/2016 19 5 GZ 31/07/2016 25 5 SH 27/03/2016 20 5 SZ 25/09/2016 20 4 ''' print(g.min()) ''' date temperature wind city BJ 03/01/2016 -3 2 GZ 14/08/2016 -1 2 SH 03/07/2016 -10 2 SZ 11/09/2016 -10 1 ''' # g 对象还可以使用 for 进行循环遍历 for name, group in g: print(name) print(group) # g 可以转化为 list类型, dict类型 print(list(g)) # 元组第一个元素是 分组的label,第二个是dataframe ''' [('BJ', date city temperature wind 0 03/01/2016 BJ 8 5 1 17/01/2016 BJ 12 2 2 31/01/2016 BJ 19 2 3 14/02/2016 BJ -3 3 4 28/02/2016 BJ 19 2 5 13/03/2016 BJ 5 3), ('GZ', date city temperature wind 14 17/07/2016 GZ 10 2 15 31/07/2016 GZ -1 5 16 14/08/2016 GZ 1 5 17 28/08/2016 GZ 25 4), ('SH', date city temperature wind 6 27/03/2016 SH -4 4 7 10/04/2016 SH 19 3 8 24/04/2016 SH 20 3 9 08/05/2016 SH 17 3 10 22/05/2016 SH 4 2 11 05/06/2016 SH -10 4 12 19/06/2016 SH 0 5 13 03/07/2016 SH -9 5), ('SZ', date city temperature wind 18 11/09/2016 SZ 20 1 19 25/09/2016 SZ -10 4)] ''' print(dict(list(g))) # 返回键值对,值的类型是 dataframe ''' {'SH': date city temperature wind 6 27/03/2016 SH -4 4 7 10/04/2016 SH 19 3 8 24/04/2016 SH 20 3 9 08/05/2016 SH 17 3 10 22/05/2016 SH 4 2 11 05/06/2016 SH -10 4 12 19/06/2016 SH 0 5 13 03/07/2016 SH -9 5, 'SZ': date city temperature wind 18 11/09/2016 SZ 20 1 19 25/09/2016 SZ -10 4, 'GZ': date city temperature wind 14 17/07/2016 GZ 10 2 15 31/07/2016 GZ -1 5 16 14/08/2016 GZ 1 5 17 28/08/2016 GZ 25 4, 'BJ': date city temperature wind 0 03/01/2016 BJ 8 5 1 17/01/2016 BJ 12 2 2 31/01/2016 BJ 19 2 3 14/02/2016 BJ -3 3 4 28/02/2016 BJ 19 2 5 13/03/2016 BJ 5 3} '''
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