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pandas 与 pandasql 统计客户数去重

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pandas 与 pandasql 统计客户数去重

import numpy as np
import pandas as pd
from pandasql import sqldf
import datetime

# 全局定义
pysqldf = lambda q: sqldf(q, globals())

#构建数据集
df = pd.Dataframe({"issue_date":["2021-1-31","2021-2-28","2021-3-31","2021-4-30","2021-5-31","2021-6-30","2021-7-31","2021-8-31","2021-9-30","2021-10-31","2021-11-30","2021-12-31"], 
                   "uid":["a1","a2","a1","a3","a4","a3","a5","a3","a4","a2","a4","a2"],
                   "issue_amount":[50,30,20,13,23,34,50,49,40,10,19,78]}
                 )

df['issue_date'] = df['issue_date'].astype('datetime64')

场景一:统一不同发放日期下,发放金额汇总和发放客户数去重,并分别按照asc、desc排序

# pysql处理逻辑

q = """
select 
issue_date
,sum(issue_amount) 
,count(distinct uid)
from df 
group by issue_date
order by sum(issue_amount) asc,count(distinct uid) desc;
"""
pysqldf(q)

# pandas处理逻辑

df_r = df.groupby(['issue_date']).agg({'uid' : lambda x: x.nunique(),'issue_amount' : np.sum})
df_r.rename(columns={'uid':'uid_num','issue_amount':'issue_amount_total'},inplace=True)
df_r.sort_values(by=['uid_num','issue_amount_total'],ascending=[True,False])

未完

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