我就废话不多说了,大家还是直接看代码吧! # -*- encoding=utf-8 -*-import pandas as pddata=['abc','abc','abc','asc','ase','ase','ase']num=[1,2,2,1,2,1,2]df1=pd.DataFrame({'name':data,'num':num})print(df1)df1['mmm']=df1['nu
我就废话不多说了,大家还是直接看代码吧!
# -*- encoding=utf-8 -*- import pandas as pd data=['abc','abc','abc','asc','ase','ase','ase'] num=[1,2,2,1,2,1,2] df1=pd.DataFrame({'name':data,'num':num}) print(df1) df1['mmm']=df1['num'] df2=df1.groupby(['name', 'num'], as_index=False).count() print(df2) df2.sort_values(['name', 'num'], ascending=[1, 1], inplace=True) print(df2) df2['sum']=df2.groupby(['name'])['mmm'].cumsum() print(df2) kk=df2.groupby(['name'],as_index=False)['num'].sum() print(kk) df3 = pd.merge(df2, kk, on='name', how='left',) print(df3) df3['ratio']=df3['sum']/df3['num_y'] df3.columns = ['name', 'num', 'mmm', 'sum','numsum','ratio'] print(df3) df4=df3.groupby(['mmm'],as_index=False)['ratio'].mean() print(df4)
运行:
name num 0 abc 1 1 abc 2 2 abc 2 3 asc 1 4 ase 2 5 ase 1 6 ase 2 name num mmm 0 abc 1 1 1 abc 2 2 2 asc 1 1 3 ase 1 1 4 ase 2 2 name num mmm 0 abc 1 1 1 abc 2 2 2 asc 1 1 3 ase 1 1 4 ase 2 2 name num mmm sum 0 abc 1 1 1 1 abc 2 2 3 2 asc 1 1 1 3 ase 1 1 1 4 ase 2 2 3 name num 0 abc 3 1 asc 1 2 ase 3 name num_x mmm sum num_y 0 abc 1 1 1 3 1 abc 2 2 3 3 2 asc 1 1 1 1 3 ase 1 1 1 3 4 ase 2 2 3 3 name num mmm sum numsum ratio 0 abc 1 1 1 3 0.333333 1 abc 2 2 3 3 1.000000 2 asc 1 1 1 1 1.000000 3 ase 1 1 1 3 0.333333 4 ase 2 2 3 3 1.000000 mmm ratio 0 1 0.555556 1 2 1.000000 Process finished with exit code 0
补充知识:python项目篇-对符合条件的某个字段进行求和,聚合函数annotate(),aggregate()函数
对符合条件的某个字段求和
需求是,计算每日的收入和
1、
new_dayincome = request.POST.get("dayincome_time", None) # total_income = models.bathAccount.objects.filter(dayBath=new_dayincome).aggregate(nums=Sum('priceBath')) total_income = models.bathAccount.objects.values('priceBath').annotate(nums=Sum('priceBath')).filter(dayBath=new_dayincome) print("total_income",total_income[0]['nums'])
输出结果:total_income 132
2、
from django.db.models import Sum,Count new_dayincome = request.POST.get("dayincome_time", None) total_income = models.bathAccount.objects.filter(dayBath=new_dayincome).aggregate(nums=Sum('priceBath')) print("total_income",total_income['nums'])
输出结果:total_income 572
第二种输出的是正确的数字
以上这篇python 实现分组求和与分组累加求和代码就是小编分享给大家的全部内容了,希望能给大家一个参考,也希望大家多多支持易盾网络。