Skip to content
Projects
Groups
Snippets
Help
Loading...
Sign in
Toggle navigation
F
ffm-baseline
Project
Project
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
Members
Members
Collapse sidebar
Close sidebar
Activity
Graph
Charts
Create a new issue
Jobs
Commits
Issue Boards
Open sidebar
ML
ffm-baseline
Commits
f51cc9c7
Commit
f51cc9c7
authored
Jun 24, 2019
by
张彦钊
Browse files
Options
Browse Files
Download
Plain Diff
Merge branch 'zhao' into 'master'
esmm特征工程、训练增加搜索特征 See merge request
!19
parents
41fc8e97
15ef275a
Hide whitespace changes
Inline
Side-by-side
Showing
3 changed files
with
67 additions
and
426 deletions
+67
-426
feature_engineering.py
eda/esmm/Model_pipline/feature_engineering.py
+58
-30
train.py
eda/esmm/Model_pipline/train.py
+9
-2
multi_hot.py
tensnsorflow/multi_hot.py
+0
-394
No files found.
eda/esmm/Model_pipline/feature_engineering.py
View file @
f51cc9c7
...
...
@@ -89,6 +89,19 @@ def get_pre_number():
def
feature_engineer
():
apps_number
,
app_list_map
,
level2_number
,
leve2_map
,
level3_number
,
leve3_map
=
get_map
()
app_list_map
[
"app_list"
]
=
16
leve3_map
[
"level3_ids"
]
=
17
leve3_map
[
"search_tag3"
]
=
18
leve2_map
[
"level2_ids"
]
=
19
leve2_map
[
"tag1"
]
=
20
leve2_map
[
"tag2"
]
=
21
leve2_map
[
"tag3"
]
=
22
leve2_map
[
"tag4"
]
=
23
leve2_map
[
"tag5"
]
=
24
leve2_map
[
"tag6"
]
=
25
leve2_map
[
"tag7"
]
=
26
leve2_map
[
"search_tag2"
]
=
27
unique_values
=
[]
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct stat_date from esmm_train_data_dwell"
...
...
@@ -162,21 +175,23 @@ def feature_engineer():
unique_values
.
extend
(
get_unique
(
db
,
sql
))
features
=
[
"ucity_id"
,
"ccity_name"
,
"device_type"
,
"manufacturer"
,
"channel"
,
"top"
,
"time"
,
"stat_date"
,
"hospital_id"
,
"treatment_method"
,
"price_min"
,
"price_max"
,
"treatment_time"
,
"maintain_time"
,
"recover_time"
]
"treatment_method"
,
"price_min"
,
"price_max"
,
"treatment_time"
,
"maintain_time"
,
"recover_time"
,
"app_list"
,
"level3_ids"
,
"level2_ids"
,
"tag1"
,
"tag2"
,
"tag3"
,
"tag4"
,
"tag5"
,
"tag6"
,
"tag7"
,
"search_tag2"
,
"search_tag3"
]
unique_values
.
extend
(
features
)
print
(
"unique_values length"
)
print
(
len
(
unique_values
))
print
(
"特征维度:"
)
print
(
apps_number
+
level2_number
+
level3_number
+
len
(
unique_values
))
temp
=
list
(
range
(
16
+
apps_number
+
level2_number
+
level3_number
,
16
+
apps_number
+
level2_number
+
level3_number
+
len
(
unique_values
)))
temp
=
list
(
range
(
28
+
apps_number
+
level2_number
+
level3_number
,
28
+
apps_number
+
level2_number
+
level3_number
+
len
(
unique_values
)))
value_map
=
dict
(
zip
(
unique_values
,
temp
))
sql
=
"select e.y,e.z,e.stat_date,e.ucity_id,feat.level2_ids,e.ccity_name,u.device_type,u.manufacturer,"
\
"u.channel,c.top,cut.time,dl.app_list,feat.level3_ids,doctor.hospital_id,"
\
"wiki.tag as tag1,question.tag as tag2,search.tag as tag3,budan.tag as tag4,"
\
"ot.tag as tag5,sixin.tag as tag6,cart.tag as tag7,"
\
"ot.tag as tag5,sixin.tag as tag6,cart.tag as tag7,
doris.search_tag2,doris.search_tag3,
"
\
"k.treatment_method,k.price_min,k.price_max,k.treatment_time,k.maintain_time,k.recover_time "
\
"from jerry_test.esmm_train_data_dwell e left join jerry_test.user_feature u on e.device_id = u.device_id "
\
"left join jerry_test.cid_type_top c on e.device_id = c.device_id "
\
...
...
@@ -193,6 +208,7 @@ def feature_engineer():
"left join jerry_test.cart_tag cart on e.device_id = cart.device_id "
\
"left join eagle.src_zhengxing_api_service service on e.diary_service_id = service.id "
\
"left join eagle.src_zhengxing_api_doctor doctor on service.doctor_id = doctor.id "
\
"left join jerry_test.search_doris doris on e.device_id = doris.device_id and e.stat_date = doris.get_date "
\
"where e.stat_date >= '{}'"
.
format
(
start
)
df
=
spark
.
sql
(
sql
)
...
...
@@ -207,16 +223,20 @@ def feature_engineer():
"tag1"
,
"tag2"
,
"tag3"
,
"tag4"
,
"tag5"
,
"tag6"
,
"tag7"
,
"ucity_id"
,
"ccity_name"
,
"device_type"
,
"manufacturer"
,
"channel"
,
"top"
,
"time"
,
"hospital_id"
,
"treatment_method"
,
"price_min"
,
"price_max"
,
"treatment_time"
,
"maintain_time"
,
"recover_time"
)
.
rdd
.
repartition
(
200
)
.
map
(
"maintain_time"
,
"recover_time"
,
"search_tag2"
,
"search_tag3"
)
\
.
rdd
.
repartition
(
200
)
.
map
(
lambda
x
:
(
x
[
0
],
float
(
x
[
1
]),
float
(
x
[
2
]),
app_list_func
(
x
[
3
],
app_list_map
),
app_list_func
(
x
[
4
],
leve2_map
),
app_list_func
(
x
[
5
],
leve3_map
),
app_list_func
(
x
[
6
],
leve2_map
),
app_list_func
(
x
[
7
],
leve2_map
),
app_list_func
(
x
[
8
],
leve2_map
),
app_list_func
(
x
[
9
],
leve2_map
),
app_list_func
(
x
[
10
],
leve2_map
),
app_list_func
(
x
[
11
],
leve2_map
),
app_list_func
(
x
[
12
],
leve2_map
),
[
value_map
.
get
(
x
[
0
],
1
),
value_map
.
get
(
x
[
13
],
2
),
value_map
.
get
(
x
[
14
],
3
),
value_map
.
get
(
x
[
15
],
4
),
value_map
.
get
(
x
[
16
],
5
),
value_map
.
get
(
x
[
17
],
6
),
value_map
.
get
(
x
[
18
],
7
),
value_map
.
get
(
x
[
19
],
8
),
value_map
.
get
(
x
[
20
],
9
),
value_map
.
get
(
x
[
21
],
10
),
value_map
.
get
(
x
[
22
],
11
),
value_map
.
get
(
x
[
23
],
12
),
value_map
.
get
(
x
[
24
],
13
),
value_map
.
get
(
x
[
25
],
14
),
value_map
.
get
(
x
[
26
],
15
)]))
[
value_map
.
get
(
x
[
0
],
1
),
value_map
.
get
(
x
[
13
],
2
),
value_map
.
get
(
x
[
14
],
3
),
value_map
.
get
(
x
[
15
],
4
),
value_map
.
get
(
x
[
16
],
5
),
value_map
.
get
(
x
[
17
],
6
),
value_map
.
get
(
x
[
18
],
7
),
value_map
.
get
(
x
[
19
],
8
),
value_map
.
get
(
x
[
20
],
9
),
value_map
.
get
(
x
[
21
],
10
),
value_map
.
get
(
x
[
22
],
11
),
value_map
.
get
(
x
[
23
],
12
),
value_map
.
get
(
x
[
24
],
13
),
value_map
.
get
(
x
[
25
],
14
),
value_map
.
get
(
x
[
26
],
15
)],
app_list_func
(
x
[
27
],
leve2_map
),
app_list_func
(
x
[
28
],
leve3_map
)
))
rdd
.
persist
(
storageLevel
=
StorageLevel
.
MEMORY_ONLY_SER
)
...
...
@@ -224,11 +244,11 @@ def feature_engineer():
train
=
rdd
.
map
(
lambda
x
:
(
x
[
1
],
x
[
2
],
x
[
3
],
x
[
4
],
x
[
5
],
x
[
6
],
x
[
7
],
x
[
8
],
x
[
9
],
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
]))
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
]
,
x
[
14
],
x
[
15
]
))
f
=
time
.
time
()
spark
.
createDataFrame
(
train
)
.
toDF
(
"y"
,
"z"
,
"app_list"
,
"level2_list"
,
"level3_list"
,
"tag1_list"
,
"tag2_list"
,
"tag3_list"
,
"tag4_list"
,
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
)
\
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
,
"search_tag2_list"
,
"search_tag3_list"
)
\
.
repartition
(
1
)
.
write
.
format
(
"tfrecords"
)
.
save
(
path
=
path
+
"tr/"
,
mode
=
"overwrite"
)
h
=
time
.
time
()
print
(
"train tfrecord done"
)
...
...
@@ -241,11 +261,11 @@ def feature_engineer():
test
=
rdd
.
filter
(
lambda
x
:
x
[
0
]
==
validate_date
)
.
map
(
lambda
x
:
(
x
[
1
],
x
[
2
],
x
[
3
],
x
[
4
],
x
[
5
],
x
[
6
],
x
[
7
],
x
[
8
],
x
[
9
],
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
]))
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
]
,
x
[
14
],
x
[
15
]
))
spark
.
createDataFrame
(
test
)
.
toDF
(
"y"
,
"z"
,
"app_list"
,
"level2_list"
,
"level3_list"
,
"tag1_list"
,
"tag2_list"
,
"tag3_list"
,
"tag4_list"
,
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
)
\
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
,
"search_tag2_list"
,
"search_tag3_list"
)
\
.
repartition
(
1
)
.
write
.
format
(
"tfrecords"
)
.
save
(
path
=
path
+
"va/"
,
mode
=
"overwrite"
)
print
(
"va tfrecord done"
)
...
...
@@ -260,7 +280,7 @@ def get_predict(date,value_map,app_list_map,leve2_map,leve3_map):
"u.device_type,u.manufacturer,u.channel,c.top,e.device_id,e.cid_id,cut.time,"
\
"dl.app_list,e.hospital_id,feat.level3_ids,"
\
"wiki.tag as tag1,question.tag as tag2,search.tag as tag3,budan.tag as tag4,"
\
"ot.tag as tag5,sixin.tag as tag6,cart.tag as tag7,"
\
"ot.tag as tag5,sixin.tag as tag6,cart.tag as tag7,
doris.search_tag2,doris.search_tag3,
"
\
"k.treatment_method,k.price_min,k.price_max,k.treatment_time,k.maintain_time,k.recover_time "
\
"from jerry_test.esmm_pre_data e "
\
"left join jerry_test.user_feature u on e.device_id = u.device_id "
\
...
...
@@ -275,48 +295,56 @@ def get_predict(date,value_map,app_list_map,leve2_map,leve3_map):
"left join jerry_test.order_tag ot on e.device_id = ot.device_id "
\
"left join jerry_test.sixin_tag sixin on e.device_id = sixin.device_id "
\
"left join jerry_test.cart_tag cart on e.device_id = cart.device_id "
\
"left join jerry_test.knowledge k on feat.level2 = k.level2_id"
"left join jerry_test.knowledge k on feat.level2 = k.level2_id "
\
"left join jerry_test.search_doris doris on e.device_id = doris.device_id and e.stat_date = doris.get_date"
features
=
[
"ucity_id"
,
"ccity_name"
,
"device_type"
,
"manufacturer"
,
"channel"
,
"top"
,
"time"
,
"hospital_id"
,
"treatment_method"
,
"price_min"
,
"price_max"
,
"treatment_time"
,
"maintain_time"
,
"recover_time"
]
"treatment_method"
,
"price_min"
,
"price_max"
,
"treatment_time"
,
"maintain_time"
,
"recover_time"
,
"app_list"
,
"level3_ids"
,
"level2_ids"
,
"tag1"
,
"tag2"
,
"tag3"
,
"tag4"
,
"tag5"
,
"tag6"
,
"tag7"
,
"search_tag2"
,
"search_tag3"
]
df
=
spark
.
sql
(
sql
)
df
=
df
.
drop_duplicates
([
"ucity_id"
,
"device_id"
,
"cid_id"
])
df
=
df
.
na
.
fill
(
dict
(
zip
(
features
,
features
)))
f
=
time
.
time
()
rdd
=
df
.
select
(
"label"
,
"y"
,
"z"
,
"ucity_id"
,
"device_id"
,
"cid_id"
,
"app_list"
,
"level2_ids"
,
"level3_ids"
,
"tag1"
,
"tag2"
,
"tag3"
,
"tag4"
,
"tag5"
,
"tag6"
,
"tag7"
,
"ucity_id"
,
"ccity_name"
,
"device_type"
,
"manufacturer"
,
"channel"
,
"top"
,
"time"
,
"hospital_id"
,
"treatment_method"
,
"price_min"
,
"price_max"
,
"treatment_time"
,
"maintain_time"
,
"recover_time"
)
\
"maintain_time"
,
"recover_time"
,
"search_tag2"
,
"search_tag3"
)
\
.
rdd
.
repartition
(
200
)
.
map
(
lambda
x
:
(
x
[
0
],
float
(
x
[
1
]),
float
(
x
[
2
]),
x
[
3
],
x
[
4
],
x
[
5
],
app_list_func
(
x
[
6
],
app_list_map
),
app_list_func
(
x
[
7
],
leve2_map
),
app_list_func
(
x
[
8
],
leve3_map
),
app_list_func
(
x
[
9
],
leve2_map
),
app_list_func
(
x
[
10
],
leve2_map
),
app_list_func
(
x
[
11
],
leve2_map
),
app_list_func
(
x
[
12
],
leve2_map
),
app_list_func
(
x
[
13
],
leve2_map
),
app_list_func
(
x
[
14
],
leve2_map
),
app_list_func
(
x
[
15
],
leve2_map
),
[
value_map
.
get
(
date
,
1
),
value_map
.
get
(
x
[
16
],
2
),
value_map
.
get
(
x
[
17
],
3
),
value_map
.
get
(
x
[
18
],
4
),
[
value_map
.
get
(
date
,
1
),
value_map
.
get
(
x
[
16
],
2
),
value_map
.
get
(
x
[
17
],
3
),
value_map
.
get
(
x
[
18
],
4
),
value_map
.
get
(
x
[
19
],
5
),
value_map
.
get
(
x
[
20
],
6
),
value_map
.
get
(
x
[
21
],
7
),
value_map
.
get
(
x
[
22
],
8
),
value_map
.
get
(
x
[
23
],
9
),
value_map
.
get
(
x
[
24
],
10
),
value_map
.
get
(
x
[
25
],
11
),
value_map
.
get
(
x
[
26
],
12
),
value_map
.
get
(
x
[
27
],
13
),
value_map
.
get
(
x
[
28
],
14
),
value_map
.
get
(
x
[
29
],
15
)
]))
value_map
.
get
(
x
[
29
],
15
)],
app_list_func
(
x
[
30
],
leve2_map
),
app_list_func
(
x
[
31
],
leve3_map
)))
rdd
.
persist
(
storageLevel
=
StorageLevel
.
MEMORY_ONLY_SER
)
print
(
rdd
.
count
())
native_pre
=
spark
.
createDataFrame
(
rdd
.
filter
(
lambda
x
:
x
[
0
]
==
0
)
.
map
(
lambda
x
:(
x
[
3
],
x
[
4
],
x
[
5
])))
\
.
toDF
(
"city"
,
"uid"
,
"cid_id"
)
print
(
"native csv"
)
native_pre
.
toPandas
()
.
to_csv
(
local_path
+
"native.csv"
,
header
=
True
)
spark
.
createDataFrame
(
rdd
.
filter
(
lambda
x
:
x
[
0
]
==
0
)
.
map
(
lambda
x
:
(
x
[
1
],
x
[
2
],
x
[
6
],
x
[
7
],
x
[
8
],
x
[
9
],
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
],
x
[
14
],
x
[
15
],
x
[
16
])))
\
.
toDF
(
"y"
,
"z"
,
"app_list"
,
"level2_list"
,
"level3_list"
,
"tag1_list"
,
"tag2_list"
,
"tag3_list"
,
"tag4_list"
,
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
)
.
repartition
(
1
)
.
write
.
format
(
"tfrecords"
)
\
.
save
(
path
=
path
+
"native/"
,
mode
=
"overwrite"
)
.
map
(
lambda
x
:
(
x
[
1
],
x
[
2
],
x
[
6
],
x
[
7
],
x
[
8
],
x
[
9
],
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
],
x
[
14
],
x
[
15
],
x
[
16
],
x
[
17
],
x
[
18
])))
\
.
toDF
(
"y"
,
"z"
,
"app_list"
,
"level2_list"
,
"level3_list"
,
"tag1_list"
,
"tag2_list"
,
"tag3_list"
,
"tag4_list"
,
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
,
"search_tag2_list"
,
"search_tag3_list"
)
\
.
repartition
(
1
)
.
write
.
format
(
"tfrecords"
)
.
save
(
path
=
path
+
"native/"
,
mode
=
"overwrite"
)
print
(
"native tfrecord done"
)
h
=
time
.
time
()
print
((
h
-
f
)
/
60
)
...
...
@@ -327,11 +355,11 @@ def get_predict(date,value_map,app_list_map,leve2_map,leve3_map):
nearby_pre
.
toPandas
()
.
to_csv
(
local_path
+
"nearby.csv"
,
header
=
True
)
spark
.
createDataFrame
(
rdd
.
filter
(
lambda
x
:
x
[
0
]
==
1
)
.
map
(
lambda
x
:
(
x
[
1
],
x
[
2
],
x
[
6
],
x
[
7
],
x
[
8
],
x
[
9
],
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
],
x
[
14
],
x
[
15
],
x
[
16
])))
\
.
map
(
lambda
x
:
(
x
[
1
],
x
[
2
],
x
[
6
],
x
[
7
],
x
[
8
],
x
[
9
],
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
],
x
[
14
],
x
[
15
],
x
[
16
],
x
[
17
],
x
[
18
])))
\
.
toDF
(
"y"
,
"z"
,
"app_list"
,
"level2_list"
,
"level3_list"
,
"tag1_list"
,
"tag2_list"
,
"tag3_list"
,
"tag4_list"
,
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
)
.
repartition
(
1
)
.
write
.
format
(
"tfrecords
"
)
\
.
save
(
path
=
path
+
"nearby/"
,
mode
=
"overwrite"
)
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
,
"search_tag2_list"
,
"search_tag3_list
"
)
\
.
repartition
(
1
)
.
write
.
format
(
"tfrecords"
)
.
save
(
path
=
path
+
"nearby/"
,
mode
=
"overwrite"
)
print
(
"nearby tfrecord done"
)
...
...
eda/esmm/Model_pipline/train.py
View file @
f51cc9c7
...
...
@@ -63,7 +63,9 @@ def input_fn(filenames, batch_size=32, num_epochs=1, perform_shuffle=False):
"tag4_list"
:
tf
.
VarLenFeature
(
tf
.
int64
),
"tag5_list"
:
tf
.
VarLenFeature
(
tf
.
int64
),
"tag6_list"
:
tf
.
VarLenFeature
(
tf
.
int64
),
"tag7_list"
:
tf
.
VarLenFeature
(
tf
.
int64
)
"tag7_list"
:
tf
.
VarLenFeature
(
tf
.
int64
),
"search_tag2_list"
:
tf
.
VarLenFeature
(
tf
.
int64
),
"search_tag3_list"
:
tf
.
VarLenFeature
(
tf
.
int64
)
}
parsed
=
tf
.
parse_single_example
(
record
,
features
)
y
=
parsed
.
pop
(
'y'
)
...
...
@@ -131,6 +133,8 @@ def model_fn(features, labels, mode, params):
tag5_list
=
features
[
'tag5_list'
]
tag6_list
=
features
[
'tag6_list'
]
tag7_list
=
features
[
'tag7_list'
]
search_tag2_list
=
features
[
'search_tag2_list'
]
search_tag3_list
=
features
[
'search_tag3_list'
]
if
FLAGS
.
task_type
!=
"infer"
:
y
=
labels
[
'y'
]
...
...
@@ -149,10 +153,13 @@ def model_fn(features, labels, mode, params):
tag5
=
tf
.
nn
.
embedding_lookup_sparse
(
Feat_Emb
,
sp_ids
=
tag5_list
,
sp_weights
=
None
,
combiner
=
"sum"
)
tag6
=
tf
.
nn
.
embedding_lookup_sparse
(
Feat_Emb
,
sp_ids
=
tag6_list
,
sp_weights
=
None
,
combiner
=
"sum"
)
tag7
=
tf
.
nn
.
embedding_lookup_sparse
(
Feat_Emb
,
sp_ids
=
tag7_list
,
sp_weights
=
None
,
combiner
=
"sum"
)
search_tag2
=
tf
.
nn
.
embedding_lookup_sparse
(
Feat_Emb
,
sp_ids
=
search_tag2_list
,
sp_weights
=
None
,
combiner
=
"sum"
)
search_tag3
=
tf
.
nn
.
embedding_lookup_sparse
(
Feat_Emb
,
sp_ids
=
search_tag3_list
,
sp_weights
=
None
,
combiner
=
"sum"
)
# x_concat = tf.reshape(embedding_id,shape=[-1, common_dims]) # None * (F * K)
x_concat
=
tf
.
concat
([
tf
.
reshape
(
embedding_id
,
shape
=
[
-
1
,
common_dims
]),
app_id
,
level2
,
level3
,
tag1
,
tag2
,
tag3
,
tag4
,
tag5
,
tag6
,
tag7
],
axis
=
1
)
tag2
,
tag3
,
tag4
,
tag5
,
tag6
,
tag7
,
search_tag2
,
search_tag3
],
axis
=
1
)
with
tf
.
name_scope
(
"CVR_Task"
):
if
mode
==
tf
.
estimator
.
ModeKeys
.
TRAIN
:
...
...
tensnsorflow/multi_hot.py
deleted
100644 → 0
View file @
41fc8e97
# -*- coding: utf-8 -*-
import
pymysql
from
pyspark.conf
import
SparkConf
import
pytispark.pytispark
as
pti
from
pyspark.sql
import
SparkSession
import
datetime
import
pandas
as
pd
import
time
from
pyspark
import
StorageLevel
def
app_list_func
(
x
,
l
):
b
=
str
(
x
)
.
split
(
","
)
e
=
[]
for
i
in
b
:
if
i
in
l
.
keys
():
e
.
append
(
l
[
i
])
else
:
e
.
append
(
0
)
return
e
def
get_list
(
db
,
sql
,
n
):
cursor
=
db
.
cursor
()
cursor
.
execute
(
sql
)
result
=
cursor
.
fetchall
()
v
=
list
(
set
([
i
[
0
]
for
i
in
result
]))
app_list_value
=
[
str
(
i
)
.
split
(
","
)
for
i
in
v
]
app_list_unique
=
[]
for
i
in
app_list_value
:
app_list_unique
.
extend
(
i
)
app_list_unique
=
list
(
set
(
app_list_unique
))
number
=
len
(
app_list_unique
)
app_list_map
=
dict
(
zip
(
app_list_unique
,
list
(
range
(
n
,
number
+
n
))))
db
.
close
()
return
number
,
app_list_map
def
get_map
():
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select app_list from device_app_list"
a
=
time
.
time
()
apps_number
,
app_list_map
=
get_list
(
db
,
sql
,
16
)
print
(
"applist"
)
print
((
time
.
time
()
-
a
)
/
60
)
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select level2_ids from diary_feat"
b
=
time
.
time
()
leve2_number
,
leve2_map
=
get_list
(
db
,
sql
,
16
+
apps_number
)
print
(
"leve2"
)
print
((
time
.
time
()
-
b
)
/
60
)
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select level3_ids from diary_feat"
c
=
time
.
time
()
leve3_number
,
leve3_map
=
get_list
(
db
,
sql
,
16
+
leve2_number
+
apps_number
)
print
((
time
.
time
()
-
c
)
/
60
)
return
apps_number
,
app_list_map
,
leve2_number
,
leve2_map
,
leve3_number
,
leve3_map
def
get_unique
(
db
,
sql
):
cursor
=
db
.
cursor
()
cursor
.
execute
(
sql
)
result
=
cursor
.
fetchall
()
v
=
list
(
set
([
i
[
0
]
for
i
in
result
]))
db
.
close
()
print
(
sql
)
print
(
len
(
v
))
return
v
def
con_sql
(
db
,
sql
):
cursor
=
db
.
cursor
()
cursor
.
execute
(
sql
)
result
=
cursor
.
fetchall
()
df
=
pd
.
DataFrame
(
list
(
result
))
db
.
close
()
return
df
def
get_pre_number
():
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select count(*) from esmm_pre_data"
cursor
=
db
.
cursor
()
cursor
.
execute
(
sql
)
result
=
cursor
.
fetchone
()[
0
]
print
(
"预测集数量:"
)
print
(
result
)
db
.
close
()
def
feature_engineer
():
apps_number
,
app_list_map
,
level2_number
,
leve2_map
,
level3_number
,
leve3_map
=
get_map
()
app_list_map
[
"app_list"
]
=
16
leve3_map
[
"level3_ids"
]
=
17
leve3_map
[
"search_tag3"
]
=
18
leve2_map
[
"level2_ids"
]
=
19
leve2_map
[
"tag1"
]
=
20
leve2_map
[
"tag2"
]
=
21
leve2_map
[
"tag3"
]
=
22
leve2_map
[
"tag4"
]
=
23
leve2_map
[
"tag5"
]
=
24
leve2_map
[
"tag6"
]
=
25
leve2_map
[
"tag7"
]
=
26
leve2_map
[
"search_tag2"
]
=
27
unique_values
=
[]
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct stat_date from esmm_train_data_dwell"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct ucity_id from esmm_train_data_dwell"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct ccity_name from esmm_train_data_dwell"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct time from cid_time_cut"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct device_type from user_feature"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct manufacturer from user_feature"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct channel from user_feature"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct top from cid_type_top"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct price_min from knowledge"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct treatment_method from knowledge"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct price_max from knowledge"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct treatment_time from knowledge"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct maintain_time from knowledge"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select distinct recover_time from knowledge"
unique_values
.
extend
(
get_unique
(
db
,
sql
))
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
,
db
=
'jerry_test'
)
sql
=
"select max(stat_date) from esmm_train_data_dwell"
validate_date
=
con_sql
(
db
,
sql
)[
0
]
.
values
.
tolist
()[
0
]
print
(
"validate_date:"
+
validate_date
)
temp
=
datetime
.
datetime
.
strptime
(
validate_date
,
"
%
Y-
%
m-
%
d"
)
start
=
(
temp
-
datetime
.
timedelta
(
days
=
3
))
.
strftime
(
"
%
Y-
%
m-
%
d"
)
print
(
start
)
db
=
pymysql
.
connect
(
host
=
'172.16.40.158'
,
port
=
4000
,
user
=
'root'
,
passwd
=
'3SYz54LS9#^9sBvC'
)
sql
=
"select doctor.hospital_id from jerry_test.esmm_train_data_dwell e "
\
"left join eagle.src_zhengxing_api_service service on e.diary_service_id = service.id "
\
"left join eagle.src_zhengxing_api_doctor doctor on service.doctor_id = doctor.id "
\
"where e.stat_date >= '{}'"
.
format
(
start
)
unique_values
.
extend
(
get_unique
(
db
,
sql
))
features
=
[
"ucity_id"
,
"ccity_name"
,
"device_type"
,
"manufacturer"
,
"channel"
,
"top"
,
"time"
,
"stat_date"
,
"hospital_id"
,
"treatment_method"
,
"price_min"
,
"price_max"
,
"treatment_time"
,
"maintain_time"
,
"recover_time"
,
"app_list"
,
"level3_ids"
,
"level2_ids"
,
"tag1"
,
"tag2"
,
"tag3"
,
"tag4"
,
"tag5"
,
"tag6"
,
"tag7"
,
"search_tag2"
,
"search_tag3"
]
unique_values
.
extend
(
features
)
print
(
"unique_values length"
)
print
(
len
(
unique_values
))
print
(
"特征维度:"
)
print
(
apps_number
+
level2_number
+
level3_number
+
len
(
unique_values
))
temp
=
list
(
range
(
28
+
apps_number
+
level2_number
+
level3_number
,
28
+
apps_number
+
level2_number
+
level3_number
+
len
(
unique_values
)))
value_map
=
dict
(
zip
(
unique_values
,
temp
))
sql
=
"select e.y,e.z,e.stat_date,e.ucity_id,feat.level2_ids,e.ccity_name,u.device_type,u.manufacturer,"
\
"u.channel,c.top,cut.time,dl.app_list,feat.level3_ids,doctor.hospital_id,"
\
"wiki.tag as tag1,question.tag as tag2,search.tag as tag3,budan.tag as tag4,"
\
"ot.tag as tag5,sixin.tag as tag6,cart.tag as tag7,doris.search_tag2,doris.search_tag3,"
\
"k.treatment_method,k.price_min,k.price_max,k.treatment_time,k.maintain_time,k.recover_time "
\
"from jerry_test.esmm_train_data_dwell e left join jerry_test.user_feature u on e.device_id = u.device_id "
\
"left join jerry_test.cid_type_top c on e.device_id = c.device_id "
\
"left join jerry_test.cid_time_cut cut on e.cid_id = cut.cid "
\
"left join jerry_test.device_app_list dl on e.device_id = dl.device_id "
\
"left join jerry_test.diary_feat feat on e.cid_id = feat.diary_id "
\
"left join jerry_test.knowledge k on feat.level2 = k.level2_id "
\
"left join jerry_test.wiki_tag wiki on e.device_id = wiki.device_id "
\
"left join jerry_test.question_tag question on e.device_id = question.device_id "
\
"left join jerry_test.search_tag search on e.device_id = search.device_id "
\
"left join jerry_test.budan_tag budan on e.device_id = budan.device_id "
\
"left join jerry_test.order_tag ot on e.device_id = ot.device_id "
\
"left join jerry_test.sixin_tag sixin on e.device_id = sixin.device_id "
\
"left join jerry_test.cart_tag cart on e.device_id = cart.device_id "
\
"left join eagle.src_zhengxing_api_service service on e.diary_service_id = service.id "
\
"left join eagle.src_zhengxing_api_doctor doctor on service.doctor_id = doctor.id "
\
"left join jerry_test.search_doris doris on e.device_id = doris.device_id and e.stat_date = doris.get_date "
\
"where e.stat_date >= '{}'"
.
format
(
start
)
df
=
spark
.
sql
(
sql
)
df
=
df
.
drop_duplicates
([
"ucity_id"
,
"level2_ids"
,
"ccity_name"
,
"device_type"
,
"manufacturer"
,
"channel"
,
"top"
,
"time"
,
"stat_date"
,
"app_list"
,
"hospital_id"
,
"level3_ids"
,
"tag1"
,
"tag2"
,
"tag3"
,
"tag4"
,
"tag5"
,
"tag6"
,
"tag7"
,
"search_tag2"
,
"search_tag3"
])
df
=
df
.
na
.
fill
(
dict
(
zip
(
features
,
features
)))
rdd
=
df
.
select
(
"stat_date"
,
"y"
,
"z"
,
"app_list"
,
"level2_ids"
,
"level3_ids"
,
"tag1"
,
"tag2"
,
"tag3"
,
"tag4"
,
"tag5"
,
"tag6"
,
"tag7"
,
"ucity_id"
,
"ccity_name"
,
"device_type"
,
"manufacturer"
,
"channel"
,
"top"
,
"time"
,
"hospital_id"
,
"treatment_method"
,
"price_min"
,
"price_max"
,
"treatment_time"
,
"maintain_time"
,
"recover_time"
,
"search_tag2"
,
"search_tag3"
)
\
.
rdd
.
repartition
(
200
)
.
map
(
lambda
x
:
(
x
[
0
],
float
(
x
[
1
]),
float
(
x
[
2
]),
app_list_func
(
x
[
3
],
app_list_map
),
app_list_func
(
x
[
4
],
leve2_map
),
app_list_func
(
x
[
5
],
leve3_map
),
app_list_func
(
x
[
6
],
leve2_map
),
app_list_func
(
x
[
7
],
leve2_map
),
app_list_func
(
x
[
8
],
leve2_map
),
app_list_func
(
x
[
9
],
leve2_map
),
app_list_func
(
x
[
10
],
leve2_map
),
app_list_func
(
x
[
11
],
leve2_map
),
app_list_func
(
x
[
12
],
leve2_map
),
[
value_map
.
get
(
x
[
0
],
1
),
value_map
.
get
(
x
[
13
],
2
),
value_map
.
get
(
x
[
14
],
3
),
value_map
.
get
(
x
[
15
],
4
),
value_map
.
get
(
x
[
16
],
5
),
value_map
.
get
(
x
[
17
],
6
),
value_map
.
get
(
x
[
18
],
7
),
value_map
.
get
(
x
[
19
],
8
),
value_map
.
get
(
x
[
20
],
9
),
value_map
.
get
(
x
[
21
],
10
),
value_map
.
get
(
x
[
22
],
11
),
value_map
.
get
(
x
[
23
],
12
),
value_map
.
get
(
x
[
24
],
13
),
value_map
.
get
(
x
[
25
],
14
),
value_map
.
get
(
x
[
26
],
15
)],
app_list_func
(
x
[
27
],
leve2_map
),
app_list_func
(
x
[
28
],
leve3_map
)
))
rdd
.
persist
(
storageLevel
=
StorageLevel
.
MEMORY_ONLY_SER
)
# TODO 上线后把下面train fliter 删除,因为最近一天的数据也要作为训练集
train
=
rdd
.
map
(
lambda
x
:
(
x
[
1
],
x
[
2
],
x
[
3
],
x
[
4
],
x
[
5
],
x
[
6
],
x
[
7
],
x
[
8
],
x
[
9
],
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
],
x
[
14
],
x
[
15
]))
f
=
time
.
time
()
spark
.
createDataFrame
(
train
)
.
toDF
(
"y"
,
"z"
,
"app_list"
,
"level2_list"
,
"level3_list"
,
"tag1_list"
,
"tag2_list"
,
"tag3_list"
,
"tag4_list"
,
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
,
"search_tag2_list"
,
"search_tag3_list"
)
\
.
repartition
(
1
)
.
write
.
format
(
"tfrecords"
)
.
save
(
path
=
path
+
"tr/"
,
mode
=
"overwrite"
)
h
=
time
.
time
()
print
(
"train tfrecord done"
)
print
((
h
-
f
)
/
60
)
print
(
"训练集样本总量:"
)
print
(
rdd
.
count
())
get_pre_number
()
test
=
rdd
.
filter
(
lambda
x
:
x
[
0
]
==
validate_date
)
.
map
(
lambda
x
:
(
x
[
1
],
x
[
2
],
x
[
3
],
x
[
4
],
x
[
5
],
x
[
6
],
x
[
7
],
x
[
8
],
x
[
9
],
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
],
x
[
14
],
x
[
15
]))
spark
.
createDataFrame
(
test
)
.
toDF
(
"y"
,
"z"
,
"app_list"
,
"level2_list"
,
"level3_list"
,
"tag1_list"
,
"tag2_list"
,
"tag3_list"
,
"tag4_list"
,
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
,
"search_tag2_list"
,
"search_tag3_list"
)
\
.
repartition
(
1
)
.
write
.
format
(
"tfrecords"
)
.
save
(
path
=
path
+
"va/"
,
mode
=
"overwrite"
)
print
(
"va tfrecord done"
)
rdd
.
unpersist
()
return
validate_date
,
value_map
,
app_list_map
,
leve2_map
,
leve3_map
def
get_predict
(
date
,
value_map
,
app_list_map
,
leve2_map
,
leve3_map
):
sql
=
"select e.y,e.z,e.label,e.ucity_id,feat.level2_ids,e.ccity_name,"
\
"u.device_type,u.manufacturer,u.channel,c.top,e.device_id,e.cid_id,cut.time,"
\
"dl.app_list,e.hospital_id,feat.level3_ids,"
\
"wiki.tag as tag1,question.tag as tag2,search.tag as tag3,budan.tag as tag4,"
\
"ot.tag as tag5,sixin.tag as tag6,cart.tag as tag7,doris.search_tag2,doris.search_tag3,"
\
"k.treatment_method,k.price_min,k.price_max,k.treatment_time,k.maintain_time,k.recover_time "
\
"from jerry_test.esmm_pre_data e "
\
"left join jerry_test.user_feature u on e.device_id = u.device_id "
\
"left join jerry_test.cid_type_top c on e.device_id = c.device_id "
\
"left join jerry_test.cid_time_cut cut on e.cid_id = cut.cid "
\
"left join jerry_test.device_app_list dl on e.device_id = dl.device_id "
\
"left join jerry_test.diary_feat feat on e.cid_id = feat.diary_id "
\
"left join jerry_test.wiki_tag wiki on e.device_id = wiki.device_id "
\
"left join jerry_test.question_tag question on e.device_id = question.device_id "
\
"left join jerry_test.search_tag search on e.device_id = search.device_id "
\
"left join jerry_test.budan_tag budan on e.device_id = budan.device_id "
\
"left join jerry_test.order_tag ot on e.device_id = ot.device_id "
\
"left join jerry_test.sixin_tag sixin on e.device_id = sixin.device_id "
\
"left join jerry_test.cart_tag cart on e.device_id = cart.device_id "
\
"left join jerry_test.knowledge k on feat.level2 = k.level2_id "
\
"left join jerry_test.search_doris doris on e.device_id = doris.device_id and e.stat_date = doris.get_date "
\
"limit 60000"
features
=
[
"ucity_id"
,
"ccity_name"
,
"device_type"
,
"manufacturer"
,
"channel"
,
"top"
,
"time"
,
"hospital_id"
,
"treatment_method"
,
"price_min"
,
"price_max"
,
"treatment_time"
,
"maintain_time"
,
"recover_time"
,
"app_list"
,
"level3_ids"
,
"level2_ids"
,
"tag1"
,
"tag2"
,
"tag3"
,
"tag4"
,
"tag5"
,
"tag6"
,
"tag7"
,
"search_tag2"
,
"search_tag3"
]
df
=
spark
.
sql
(
sql
)
df
=
df
.
drop_duplicates
([
"ucity_id"
,
"device_id"
,
"cid_id"
])
df
=
df
.
na
.
fill
(
dict
(
zip
(
features
,
features
)))
f
=
time
.
time
()
rdd
=
df
.
select
(
"label"
,
"y"
,
"z"
,
"ucity_id"
,
"device_id"
,
"cid_id"
,
"app_list"
,
"level2_ids"
,
"level3_ids"
,
"tag1"
,
"tag2"
,
"tag3"
,
"tag4"
,
"tag5"
,
"tag6"
,
"tag7"
,
"ucity_id"
,
"ccity_name"
,
"device_type"
,
"manufacturer"
,
"channel"
,
"top"
,
"time"
,
"hospital_id"
,
"treatment_method"
,
"price_min"
,
"price_max"
,
"treatment_time"
,
"maintain_time"
,
"recover_time"
,
"search_tag2"
,
"search_tag3"
)
\
.
rdd
.
repartition
(
200
)
.
map
(
lambda
x
:
(
x
[
0
],
float
(
x
[
1
]),
float
(
x
[
2
]),
x
[
3
],
x
[
4
],
x
[
5
],
app_list_func
(
x
[
6
],
app_list_map
),
app_list_func
(
x
[
7
],
leve2_map
),
app_list_func
(
x
[
8
],
leve3_map
),
app_list_func
(
x
[
9
],
leve2_map
),
app_list_func
(
x
[
10
],
leve2_map
),
app_list_func
(
x
[
11
],
leve2_map
),
app_list_func
(
x
[
12
],
leve2_map
),
app_list_func
(
x
[
13
],
leve2_map
),
app_list_func
(
x
[
14
],
leve2_map
),
app_list_func
(
x
[
15
],
leve2_map
),
[
value_map
.
get
(
date
,
1
),
value_map
.
get
(
x
[
16
],
2
),
value_map
.
get
(
x
[
17
],
3
),
value_map
.
get
(
x
[
18
],
4
),
value_map
.
get
(
x
[
19
],
5
),
value_map
.
get
(
x
[
20
],
6
),
value_map
.
get
(
x
[
21
],
7
),
value_map
.
get
(
x
[
22
],
8
),
value_map
.
get
(
x
[
23
],
9
),
value_map
.
get
(
x
[
24
],
10
),
value_map
.
get
(
x
[
25
],
11
),
value_map
.
get
(
x
[
26
],
12
),
value_map
.
get
(
x
[
27
],
13
),
value_map
.
get
(
x
[
28
],
14
),
value_map
.
get
(
x
[
29
],
15
)],
app_list_func
(
x
[
30
],
leve2_map
),
app_list_func
(
x
[
31
],
leve3_map
)))
rdd
.
persist
(
storageLevel
=
StorageLevel
.
MEMORY_ONLY_SER
)
# native_pre = spark.createDataFrame(rdd.filter(lambda x:x[0] == 0).map(lambda x:(x[3],x[4],x[5],x[17])))\
# .toDF("city","uid","cid_id","number")
# print("native csv")
# native_pre.toPandas().to_csv(local_path+"native.csv", header=True)
spark
.
createDataFrame
(
rdd
.
filter
(
lambda
x
:
x
[
0
]
==
0
)
.
map
(
lambda
x
:
(
x
[
1
],
x
[
2
],
x
[
6
],
x
[
7
],
x
[
8
],
x
[
9
],
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
],
x
[
14
],
x
[
15
],
x
[
16
],
x
[
17
],
x
[
18
])))
\
.
toDF
(
"y"
,
"z"
,
"app_list"
,
"level2_list"
,
"level3_list"
,
"tag1_list"
,
"tag2_list"
,
"tag3_list"
,
"tag4_list"
,
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
,
"search_tag2"
,
"search_tag3"
)
\
.
repartition
(
1
)
.
write
.
format
(
"tfrecords"
)
.
save
(
path
=
path
+
"native/"
,
mode
=
"overwrite"
)
print
(
"native tfrecord done"
)
h
=
time
.
time
()
print
((
h
-
f
)
/
60
)
# nearby_pre = spark.createDataFrame(rdd.filter(lambda x: x[0] == 1).map(lambda x: (x[3], x[4], x[5],x[17]))) \
# .toDF("city", "uid", "cid_id","number")
# print("nearby csv")
# nearby_pre.toPandas().to_csv(local_path + "nearby.csv", header=True)
spark
.
createDataFrame
(
rdd
.
filter
(
lambda
x
:
x
[
0
]
==
1
)
.
map
(
lambda
x
:
(
x
[
1
],
x
[
2
],
x
[
6
],
x
[
7
],
x
[
8
],
x
[
9
],
x
[
10
],
x
[
11
],
x
[
12
],
x
[
13
],
x
[
14
],
x
[
15
],
x
[
16
],
x
[
17
],
x
[
18
])))
\
.
toDF
(
"y"
,
"z"
,
"app_list"
,
"level2_list"
,
"level3_list"
,
"tag1_list"
,
"tag2_list"
,
"tag3_list"
,
"tag4_list"
,
"tag5_list"
,
"tag6_list"
,
"tag7_list"
,
"ids"
,
"search_tag2"
,
"search_tag3"
)
\
.
repartition
(
1
)
.
write
.
format
(
"tfrecords"
)
.
save
(
path
=
path
+
"nearby/"
,
mode
=
"overwrite"
)
print
(
"nearby tfrecord done"
)
if
__name__
==
'__main__'
:
sparkConf
=
SparkConf
()
.
set
(
"spark.hive.mapred.supports.subdirectories"
,
"true"
)
\
.
set
(
"spark.hadoop.mapreduce.input.fileinputformat.input.dir.recursive"
,
"true"
)
\
.
set
(
"spark.tispark.plan.allow_index_double_read"
,
"false"
)
\
.
set
(
"spark.tispark.plan.allow_index_read"
,
"true"
)
\
.
set
(
"spark.sql.extensions"
,
"org.apache.spark.sql.TiExtensions"
)
\
.
set
(
"spark.tispark.pd.addresses"
,
"172.16.40.158:2379"
)
.
set
(
"spark.io.compression.codec"
,
"lzf"
)
\
.
set
(
"spark.driver.maxResultSize"
,
"8g"
)
.
set
(
"spark.sql.avro.compression.codec"
,
"snappy"
)
spark
=
SparkSession
.
builder
.
config
(
conf
=
sparkConf
)
.
enableHiveSupport
()
.
getOrCreate
()
ti
=
pti
.
TiContext
(
spark
)
ti
.
tidbMapDatabase
(
"jerry_test"
)
ti
.
tidbMapDatabase
(
"eagle"
)
spark
.
sparkContext
.
setLogLevel
(
"WARN"
)
path
=
"hdfs:///strategy/esmm/"
local_path
=
"/home/gmuser/esmm/"
validate_date
,
value_map
,
app_list_map
,
leve2_map
,
leve3_map
=
feature_engineer
()
get_predict
(
validate_date
,
value_map
,
app_list_map
,
leve2_map
,
leve3_map
)
spark
.
stop
()
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