183 lines
8.5 KiB
Python
183 lines
8.5 KiB
Python
# Databricks notebook source
|
||
#当更新pack 或品牌 事实数据时需要运行此代码,否则无需运行。
|
||
|
||
# COMMAND ----------
|
||
|
||
# MAGIC %sql
|
||
# MAGIC update dwd.dwd_gnd_ext_retail_corresponding_relationship set table_name ='dwd.dwd_gnd_ext_retail_nataional_oap' where file_name ='pack-CV-抗血栓2通用名-全国.xlsx';
|
||
# MAGIC update dwd.dwd_gnd_ext_retail_corresponding_relationship set table_name ='dwd.dwd_gnd_ext_retail_htn' where file_name ='pack-CV-高血压-化学药-全国.xlsx';
|
||
# MAGIC update dwd.dwd_gnd_ext_retail_corresponding_relationship set table_name ='dwd.dwd_gnd_ext_retail_atomizer' where file_name ='pack-雾化器-全国&县域数据.xlsx';
|
||
# MAGIC update dwd.dwd_gnd_ext_retail_corresponding_relationship set table_name ='dwd.dwd_gnd_ext_retail_anti_asthma_copd' where file_name ='pack-RE-慢阻肺-全国.xlsx';
|
||
# MAGIC update dwd.dwd_gnd_ext_retail_corresponding_relationship set table_name ='dwd.dwd_gnd_ext_zk_brand' where file_name ='Brand-品牌数据报表.xlsx';
|
||
# MAGIC update dwd.dwd_gnd_ext_retail_corresponding_relationship set table_name ='dwd.dwd_gnd_ext_retail_statin_xzk' where file_name ='pack-CV-他汀类+血脂康-全国.xlsx';
|
||
# MAGIC update dwd.dwd_gnd_ext_retail_corresponding_relationship set table_name ='dwd.dwd_gnd_ext_retail_nataional_rd' where file_name ='pack-RD-肾科-全国.xlsx';
|
||
# MAGIC update dwd.dwd_gnd_ext_retail_corresponding_relationship set table_name ='dwd.dwd_gnd_ext_retail_aagsa_ppi_oral' where file_name ='pack-GI-慢性胃炎胃溃疡-全国.xlsx';
|
||
# MAGIC update dwd.dwd_gnd_ext_retail_corresponding_relationship set table_name ='dwd.dwd_gnd_ext_retail_nataional_niad' where file_name ='pack-DM-口服降糖化学药.xlsx';
|
||
# MAGIC update dwd.dwd_gnd_ext_retail_corresponding_relationship set table_name ='dwd.dwd_gnd_ext_retail_metoprolol_tartrat' where file_name ='pack-CV-酒石酸美托洛尔.xlsx';
|
||
# MAGIC
|
||
|
||
# COMMAND ----------
|
||
|
||
|
||
# brand+ 省份数据自动接入
|
||
#获取配置表信息(表名、brand_flag
|
||
dfband = spark.sql("""
|
||
SELECT DISTINCT table_name tab ,file_name brand_flag FROM dwd.dwd_gnd_ext_retail_corresponding_relationship
|
||
where type_name ='BRAND'
|
||
""").collect()
|
||
|
||
def get_union_brand_data(df):
|
||
#数据为空
|
||
if df == None:
|
||
return None
|
||
#初始化结果集
|
||
union_query = None
|
||
for table in df:
|
||
# 选择当前表名
|
||
T = str(table.tab)
|
||
# 获取对应brand表维度对应得 market 名称
|
||
pack_flag = str(table.brand_flag)
|
||
sql = f"""
|
||
select
|
||
cast(left(quarter, 4)*100 + right(quarter,1)*3 as int ) AS YYYYMM
|
||
,cast(left(quarter, 4) as int ) AS year
|
||
,right(quarter, 2) AS quarter
|
||
,quarter AS yq
|
||
,type AS brand_cat_type
|
||
,case when ta = 'NIAD' then 'DM' else ta end AS TA
|
||
,market AS market
|
||
,zk_brand_category AS zk_brand_category
|
||
,zk_common_name AS zk_common_name
|
||
,zk_manu_des AS zk_manu_des
|
||
,rc_name_en AS rc_name_en
|
||
,province_city AS province_city
|
||
,ytd AS ytd
|
||
,cast(sales_value * 1000000 as decimal(30,10)) AS sales_val
|
||
,cast(sales_volume * 1000000 as decimal(30,10)) AS sales_vol
|
||
,cast(price as decimal(30,10)) as price
|
||
,cast(num_dist_rate as decimal(30,10)) as num_dist_rate
|
||
,cast(weig_dist_rate as decimal(30,10)) as weig_dist_rate
|
||
,cast(value_share as decimal(30,10)) as val_share
|
||
,cast(volume_share as decimal(30,10)) as vol_share
|
||
,replace(key_brand_ytd,'-','') as key_brand_ytd
|
||
,cast(replace(key_brand_rank_ytd,'-','0') as int) as key_brand_rank_ytd
|
||
,replace(top_brand_ytd,'-','') as top_brand_ytd
|
||
,cast(replace(top_brand_ms_ytd,'-','0') as decimal(30,10)) as top_brand_ms_ytd
|
||
,cast(replace(top_brand_inc_ms_ytd,'-','0') as decimal(30,10)) as top_brand_inc_ms_ytd
|
||
,cast(replace(top_brand_gr_ytd,'-','0') as decimal(30,10)) as top_brand_gr_ytd
|
||
,replace(key_brand_qtd,'-','') as key_brand_qtd
|
||
,cast(replace(key_brand_rank_qtd,'-','0') as int) as key_brand_rank_qtd
|
||
,replace(top_brand_qtd,'-','') as top_brand_qtd
|
||
,cast(replace(top_brand_ms_qtd,'-','0') as decimal(30,10)) as top_brand_ms_qtd
|
||
,cast(replace(top_brand_inc_ms_qtd,'-','0') as decimal(30,10)) as top_brand_inc_ms_qtd
|
||
,cast(replace(top_brand_gr_qtd,'-','0') as decimal(30,10)) as top_brand_gr_qtd
|
||
,ranked_by as ranked_by
|
||
,'{pack_flag}' as pack_flag
|
||
,from_utc_timestamp(current_timestamp(),'UTC+8') as etl_insert_dt
|
||
,from_utc_timestamp(current_timestamp(),'UTC+8') as etl_update_dt
|
||
from {T}
|
||
"""
|
||
# 读取数据
|
||
current_query = spark.sql(sql)
|
||
#union 数据
|
||
if union_query == None:
|
||
union_query = current_query
|
||
else:
|
||
union_query = union_query.union(current_query)
|
||
#返回数据集 / 写入表也行???
|
||
return union_query
|
||
brand_result = get_union_brand_data(dfband)
|
||
brand_result.write.mode("overwrite").saveAsTable("dwd.dwd_inc_gnd_ext_retail_nataional_brand_union_all")
|
||
|
||
# COMMAND ----------
|
||
|
||
# MAGIC %md
|
||
# MAGIC ###新逻辑
|
||
# MAGIC - 修改brand数据,先拆分成月维度的数据
|
||
|
||
# COMMAND ----------
|
||
|
||
# %sql
|
||
# /*
|
||
# 修改时间:20250311
|
||
# 修改人:chenwu
|
||
# 修改内容:brand来数频率为 季度来数, 但是 pack 为 月度来数据,需要用季度的数据/3得到月度的
|
||
|
||
|
||
# 修改时间:20260428
|
||
# 修改人:zhanghaoyi
|
||
# 修改内容:上游汇总为季度数据, 无需拆分
|
||
# */
|
||
# insert overwrite table dwd.dwd_inc_gnd_ext_retail_nataional_brand_union_all
|
||
# with quarterly_table as (
|
||
# select
|
||
# *
|
||
# from dwd.dwd_inc_gnd_ext_retail_nataional_brand_union_all
|
||
# where market not in ('NIAD','Inhaled Extended Market','布地奈德雾化溶液')
|
||
# -- 范围内只能是 季度来数据的,如果有月度来数据的需要排除掉
|
||
# )
|
||
|
||
# ,month_table as (--转化成月度数据
|
||
# SELECT
|
||
# SUBSTR(q.yq, 1, 4)*100 + -- 提取年份
|
||
# LPAD(m.month_num, 2, '0') -- 补零月份
|
||
# AS YYYYMM -- 月份首日
|
||
# ,`year`
|
||
# ,`quarter`
|
||
# ,yq
|
||
# ,brand_cat_type
|
||
# ,TA
|
||
# ,market
|
||
# ,zk_brand_category
|
||
# ,zk_common_name
|
||
# ,zk_manu_des
|
||
# ,rc_name_en
|
||
# ,province_city
|
||
# ,ytd
|
||
# ,sales_val /3 --除3
|
||
# ,sales_vol /3 --除3
|
||
# ,price
|
||
# ,num_dist_rate
|
||
# ,weig_dist_rate
|
||
# ,val_share
|
||
# ,vol_share
|
||
# ,key_brand_ytd
|
||
# ,key_brand_rank_ytd
|
||
# ,top_brand_ytd
|
||
# ,top_brand_ms_ytd
|
||
# ,top_brand_inc_ms_ytd
|
||
# ,top_brand_gr_ytd
|
||
# ,key_brand_qtd
|
||
# ,key_brand_rank_qtd
|
||
# ,top_brand_qtd
|
||
# ,top_brand_ms_qtd
|
||
# ,top_brand_inc_ms_qtd
|
||
# ,top_brand_gr_qtd
|
||
# ,ranked_by
|
||
# ,pack_flag
|
||
# ,etl_insert_dt
|
||
# ,etl_update_dt
|
||
# FROM
|
||
# quarterly_table q
|
||
# LATERAL VIEW EXPLODE( -- 为每季度生成三个月
|
||
# CASE
|
||
# WHEN RIGHT(q.yq, 2) = 'Q1' THEN ARRAY(1, 2, 3)
|
||
# WHEN RIGHT(q.yq, 2) = 'Q2' THEN ARRAY(4, 5, 6)
|
||
# WHEN RIGHT(q.yq, 2) = 'Q3' THEN ARRAY(7, 8, 9)
|
||
# WHEN RIGHT(q.yq, 2) = 'Q4' THEN ARRAY(10, 11, 12)
|
||
# END
|
||
# ) m AS month_num
|
||
# )
|
||
|
||
# ,other_not_quarterly_table (
|
||
# select
|
||
# *
|
||
# from dwd.dwd_inc_gnd_ext_retail_nataional_brand_union_all
|
||
# where market in ('NIAD','Inhaled Extended Market','布地奈德雾化溶液')
|
||
# -- 范围内只能是 月度来数据的
|
||
# )
|
||
|
||
# select * from month_table
|
||
# union all
|
||
# select * from other_not_quarterly_table
|