pandas与sqlalchemy交互实现科学计算

 
import pandas as pd
import numpy as np
from sqlalchemy import create_engine

#
建立数据库引擎 engine = create_engine('mysql+pymysql://root:mysql@127.0.0.1:3306/mymac') sql = 'select * from student' #建立dataframe对象 df = pd.read_sql_query(sql,engine) print(df) #按照年龄正序 # select * from student order by age asc |desc df = df.sort_values(['age','height'],ascending=False) print(df) #取年龄最小的学生 # select * from student order by age limit 1 dd = df.sort_values(['age']).head(1) print(dd) #求整个班的平均年龄 使用loc方法指定字段 #select * from student where gender = 0 and age < (select avg(age) from student gender=0) avg_age = df.loc[df['gender'] == 0].age.mean() print(df.loc[(df['age']< avg_age) & (df['gender'] == 0)].head(1)) #全班的平均年龄 print(df.age.mean()) #全班的年龄求和 print(df.age.sum()) #取男生的年龄求和 print(df.loc[df['gender'] == 1].age.sum()) #获取指定字段 print(df.loc[ df['gender'] == 1,['id','name']]) #取全部年龄最小 min 最大max print(df.age.min()) #或者 | print(df.loc[(df['gender']==0) | (df['gender'] == 1)]) #全班多少人 print(df.id.count()) #排除法 print(df.loc[(df['gender'] != 0) & (df['gender'] != 1)]) #修改操作 df.loc[1,'gender'] = 1 df.loc[4,'age'] = 19 print(df) #取单值 print(df.loc[2,'name']) # 将datafram写入数据表 表名,数据引擎,数据是否入库 (不建议使用,因为键的表字段类型约束等需调整) # 需安装openpyxl库 # df.to_sql('student_copy',engine,index=False) #到出excel文件 # df.to_excel('student.xlsx',index=False)
原文地址:https://www.cnblogs.com/xcsg/p/10482545.html