Skip to content
Projects
Groups
Snippets
Help
This project
Loading...
Sign in / Register
Toggle navigation
A
Amazon-Selection-Data
Overview
Overview
Details
Activity
Cycle Analytics
Repository
Repository
Files
Commits
Branches
Tags
Contributors
Graph
Compare
Charts
Issues
0
Issues
0
List
Board
Labels
Milestones
Merge Requests
0
Merge Requests
0
CI / CD
CI / CD
Pipelines
Jobs
Schedules
Charts
Wiki
Wiki
Snippets
Snippets
Members
Members
Collapse sidebar
Close sidebar
Activity
Graph
Charts
Create a new issue
Jobs
Commits
Issue Boards
Open sidebar
abel_cjy
Amazon-Selection-Data
Commits
67cc3704
Commit
67cc3704
authored
May 18, 2026
by
chenyuanjie
Browse files
Options
Browse Files
Download
Email Patches
Plain Diff
asin利润率相关链路整合优化
parent
cc39dbf0
Expand all
Show whitespace changes
Inline
Side-by-side
Showing
2 changed files
with
133 additions
and
0 deletions
+133
-0
dim_asin_profit_rate_info.py
Pyspark_job/dim/dim_asin_profit_rate_info.py
+0
-0
export_need_profit_rate.py
Pyspark_job/script/export_need_profit_rate.py
+133
-0
No files found.
Pyspark_job/dim/dim_asin_profit_rate_info.py
View file @
67cc3704
This diff is collapsed.
Click to expand it.
Pyspark_job/script/export_need_profit_rate.py
0 → 100644
View file @
67cc3704
"""
author: CT
description: 导出待计算利润率的 ASIN
1) Hive dwt_flow_asin 月维度读取 date_info >= '2025-05' 的所有 ASIN:
asin / price / category_first_id / asin_crawl_date
2) Doris dwt.{site}_flow_asin_30day 读取所有相关 ASIN:
asin / price / category_first_id / asin_crawl_date
3) union 后按 (asin, price) 去重保留 asin_crawl_date 最新
4) LEFT JOIN 分类、INNER JOIN 当日 keepa 增量
5) keepa 关联到的 ASIN 全部导出 PG {site}_asin_profit_rate_calc 重新计算利润率
执行示例: spark-submit export_need_profit_rate.py us 2026-05-15
"""
import
os
import
sys
sys
.
path
.
append
(
os
.
path
.
dirname
(
sys
.
path
[
0
]))
from
pyspark.sql
import
functions
as
F
,
Window
from
utils.spark_util
import
SparkUtil
from
utils.db_util
import
DBUtil
from
utils.DorisHelper
import
DorisHelper
START_MONTH
=
'2025-05'
class
ExportNeedProfitRate
(
object
):
def
__init__
(
self
,
site_name
,
date_info
):
self
.
site_name
=
site_name
self
.
date_info
=
date_info
# 计算时间 yyyy-MM-dd(用作当日 keepa 增量分区)
self
.
spark
=
SparkUtil
.
get_spark_session
(
f
"{self.__class__.__name__}: {self.site_name} {self.date_info}"
)
def
run
(
self
):
df_export
=
self
.
build_export_df
()
self
.
write_to_pg
(
df_export
)
def
build_export_df
(
self
):
# 1. Hive dwt_flow_asin 月维度,date_info >= 2025-05 所有月份
sql_dwt
=
f
"""
SELECT asin,
asin_price AS price,
category_first_id,
asin_crawl_date
FROM dwt_flow_asin
WHERE site_name = '{self.site_name}'
AND date_type = 'month'
AND date_info >= '{START_MONTH}'
AND asin_price > 0
"""
print
(
f
"sql_dwt =
\n
{sql_dwt}"
)
df_dwt
=
self
.
spark
.
sql
(
sqlQuery
=
sql_dwt
)
\
.
withColumn
(
'price'
,
F
.
round
(
F
.
col
(
'price'
),
2
)
.
cast
(
'decimal(20,2)'
))
\
.
withColumn
(
'asin_crawl_date'
,
F
.
to_timestamp
(
F
.
col
(
'asin_crawl_date'
)))
# 2. Doris dwt.{site}_flow_asin_30day 所有相关 ASIN
doris_sql
=
f
"""
SELECT asin, price, category_first_id, asin_crawl_date
FROM dwt.{self.site_name}_flow_asin_30day
WHERE price > 0
"""
print
(
f
"doris_sql =
\n
{doris_sql}"
)
df_doris
=
DorisHelper
.
spark_import_with_sql
(
self
.
spark
,
doris_sql
)
\
.
withColumn
(
'price'
,
F
.
round
(
F
.
col
(
'price'
),
2
)
.
cast
(
'decimal(20,2)'
))
\
.
withColumn
(
'asin_crawl_date'
,
F
.
col
(
'asin_crawl_date'
)
.
cast
(
'timestamp'
))
\
.
select
(
'asin'
,
'price'
,
'category_first_id'
,
'asin_crawl_date'
)
# 3. union + 按 (asin, price) 去重保留 asin_crawl_date 最新
df_flow
=
df_dwt
.
unionByName
(
df_doris
)
.
repartition
(
40
,
'asin'
,
'price'
)
window
=
Window
.
partitionBy
(
'asin'
,
'price'
)
.
orderBy
(
F
.
col
(
'asin_crawl_date'
)
.
desc_nulls_last
())
df_flow
=
df_flow
.
withColumn
(
'rk'
,
F
.
row_number
()
.
over
(
window
))
\
.
filter
(
'rk = 1'
)
\
.
drop
(
'rk'
)
\
.
cache
()
# 4. 分类名 LEFT JOIN
sql_cate
=
f
"""
SELECT category_first_id, en_name AS category
FROM dim_bsr_category_tree
WHERE site_name = '{self.site_name}' AND nodes_num = 2
"""
df_cate
=
self
.
spark
.
sql
(
sqlQuery
=
sql_cate
)
# 5. keepa 当日增量 INNER JOIN
sql_keepa
=
f
"""
SELECT asin, package_length, package_width, package_height, item_weight AS weight
FROM dim_keepa_asin_info
WHERE site_name = '{self.site_name}' AND date_info = '{self.date_info}'
"""
df_keepa
=
self
.
spark
.
sql
(
sqlQuery
=
sql_keepa
)
\
.
filter
((
F
.
col
(
'package_length'
)
>
0
)
&
(
F
.
col
(
'package_width'
)
>
0
)
&
(
F
.
col
(
'package_height'
)
>
0
)
&
(
F
.
col
(
'weight'
)
>
0
))
\
.
repartition
(
40
,
'asin'
)
df_result
=
df_flow
\
.
join
(
df_cate
,
on
=
'category_first_id'
,
how
=
'left'
)
\
.
join
(
df_keepa
,
on
=
'asin'
,
how
=
'inner'
)
\
.
withColumn
(
'source_month'
,
F
.
date_format
(
F
.
col
(
'asin_crawl_date'
),
'yyyy-MM'
))
\
.
withColumn
(
'part_key'
,
F
.
ntile
(
50
)
.
over
(
Window
.
orderBy
(
F
.
rand
())))
\
.
select
(
'asin'
,
'price'
,
'category'
,
'package_length'
,
'package_width'
,
'package_height'
,
'weight'
,
'part_key'
,
'source_month'
,
'asin_crawl_date'
,
)
count
=
df_result
.
count
()
print
(
f
"待计算利润率数据量:{count:,}"
)
df_result
.
show
(
10
,
truncate
=
False
)
df_flow
.
unpersist
()
return
df_result
def
write_to_pg
(
self
,
df_export
):
con_info
=
DBUtil
.
get_connection_info
(
db_type
=
'postgresql_cluster'
,
site_name
=
self
.
site_name
)
table_name
=
f
"{self.site_name}_asin_profit_rate_calc"
print
(
f
"导出到 PG {table_name}"
)
df_export
.
write
.
format
(
"jdbc"
)
\
.
option
(
"url"
,
con_info
[
"url"
])
\
.
option
(
"dbtable"
,
table_name
)
\
.
option
(
"user"
,
con_info
[
"username"
])
\
.
option
(
"password"
,
con_info
[
"pwd"
])
\
.
mode
(
"append"
)
\
.
save
()
print
(
"success"
)
if
__name__
==
"__main__"
:
site_name
=
sys
.
argv
[
1
]
date_info
=
sys
.
argv
[
2
]
ExportNeedProfitRate
(
site_name
,
date_info
)
.
run
()
Write
Preview
Markdown
is supported
0%
Try again
or
attach a new file
Attach a file
Cancel
You are about to add
0
people
to the discussion. Proceed with caution.
Finish editing this message first!
Cancel
Please
register
or
sign in
to comment