pandas常用用法

1.将DataFrame里面的数值提取成list

userList=list()
userList= userList + df1['userID'].values.tolist()

2 . 构造含有index的dataFrame

actData = pd.DataFrame(index=userList)
actData = actData.sort_index()

3 . 通过一个DataFrame构造一个新的DataFrame

dfNew = pd.DataFrame(df1, columns=['userID', 'blogID', 'month'])

4 . 重新命名dataFrame的column的名字

df1 = df1.rename(columns={'date':'month'})

5 . 将全部项都是nan的row删除

df.dropna(how='ALL')        

6 . dataFrame 展开成二维矩阵

import pandas as pd
a={'A':[1,2,3],'B':[4,5,6],'C':[7,8,9],'D':[10,11,12]}
df1=pd.DataFrame(a)
print(df1)
df2=df1.groupby(['A' ,'B']).size().unstack()
df2.fillna(0)
print(df2)

输出:

   A  B  C   D
0  1  4  7  10
1  2  5  8  11
2  3  6  9  12
B    4    5    6
A               
1  1.0  NaN  NaN
2  NaN  1.0  NaN
3  NaN  NaN  1.0

7 .

commented_data = pd.merge(comment_data.rename(columns={'blogID':'blogComment' ,'userID':'userID1'}).
                                              drop(['category'] ,axis=1) ,
                              post_data.rename(columns={'blogID':'userPost' ,'userID':'userID2'}).
                                        drop(['month' ,'category'] ,axis=1) ,
                       left_on='blogComment' ,right_on='userPost' ,how='left').drop(['userPost'] ,axis=1)

8 . dataFrame 转换成Array

x = np.array(df1.drop(['userID' ,'growthValue'] ,axis=1))
y = np.array(df1['growthValue'])

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转载自blog.csdn.net/TH_NUM/article/details/81119215