concat merge

# concat

import numpy as np
import pandas as pd 
from pandas import Series,DataFrame
df1 = DataFrame(data=np.random.randint(0,100,size=(3,3)),index=['a','b','c'],columns=['A','B','C'])
df2 = DataFrame(data=np.random.randint(0,100,size=(3,3)),index=['a','e','c'],columns=['A','E','C'])
pd.concat((df1,df1),axis=0,join='inner') #列 outer

# concat 匹配级联 不匹配级联
pd.concat((df1,df2),axis=0,join='inner') #outer 用的多

df1.append(df2) #在后面追加  默认在列上

级联<表表横纵的拼接>/合并merge的区别<数据的合并>

# merge

一对一 合并
import numpy as np
from pandas import DataFrame,Series
import pandas as pd
df1 = DataFrame({'employee':['Bob','Jake','Lisa'],
                'group':['Accounting','Engineering','Engineering'],
                })
df2 = DataFrame({'employee':['Lisa','Bob','Jake'],
                'hire_date':[2004,2008,2012],
                })
pd.merge(df2,df1)  #默认inner  outer显示全数据
#left, right, how='inner', on条件, left_on=None, right_on=None, left_index=False, right_index=False
多对一合并
df3 = DataFrame({
    'employee':['Lisa','Jake'],
    'group':['Accounting','Engineering'],
    'hire_date':[2004,2016]})
df4 = DataFrame({'group':['Accounting','Engineering','Engineering'],
                       'supervisor':['Carly','Guido','Steve']
                })
pd.merge(df3,df4,'outer')
多对多合并
df1 = DataFrame({'employee':['Bob','Jake','Lisa'],
                 'group':['Accounting','Engineering','Engineering']})
df5 = DataFrame({'group':['Engineering','Engineering','HR'],
                'supervisor':['Carly','Guido','Steve']
                })
pd.merge(df1,df5,'right')   #on条件     suffixes=('_x', '_y')指定冲突列名
#inner outer左右表数据的完整性 
#
left right 区别
加载excl数据: pd.read_excel('excl_path',sheetname=1)
key的规范化
当列冲突时,即有多个列名称相同时,需要使用on=来指定哪一个列作为key,配合suffixes指定冲突列名
df1 = DataFrame({'employee':['Jack',"Summer","Steve"],
                 'group':['Accounting','Finance','Marketing']})
df2 = DataFrame({'employee':['Jack','Bob',"Jake"],
                 'hire_date':[2003,2009,2012],
                'group':['Accounting','sell','ceo']})
pd.merge(df1,df2,'outer','group',suffixes=('_1', '_2'))
当两张表没有可进行连接的列时,可使用left_on和right_on手动指定merge中左右两边的哪一列列作为连接的列
pd.merge(df1,df5,'outer',left_on='employee',right_on='name',) #有NaN
pd.merge(df1,df5,'inner',left_on='employee',right_on='name',) #

内合并inner交集 只保留两者都有的key(默认模式)
外合并outer并集 how='outer' 补NaN

 

 

 

posted @ 2019-07-02 11:02  追风zz  阅读(193)  评论(0编辑  收藏  举报