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ML
ffm-baseline
Commits
8b3d799d
Commit
8b3d799d
authored
Feb 26, 2019
by
张彦钊
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修改模型参数ctr weight
parent
56d3e094
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2 changed files
with
4 additions
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4 deletions
+4
-4
feature.py
tensnsorflow/es/feature.py
+1
-1
pipeline.sh
tensnsorflow/es/pipeline.sh
+3
-3
No files found.
tensnsorflow/es/feature.py
View file @
8b3d799d
...
...
@@ -115,7 +115,7 @@ def get_predict(date,value_map):
"from esmm_pre_data e left join user_feature u on e.device_id = u.device_id "
\
"left join cid_type_top c on e.device_id = c.device_id "
\
"left join cid_level2 cl on e.cid_id = cl.cid "
\
"left join cid_time_cut cut on e.cid_id = cut.cid"
"left join cid_time_cut cut on e.cid_id = cut.cid
where e.device_id = '990008698732752'
"
df
=
con_sql
(
db
,
sql
)
df
=
df
.
rename
(
columns
=
{
0
:
"y"
,
1
:
"z"
,
2
:
"label"
,
3
:
"ucity_id"
,
4
:
"clevel1_id"
,
5
:
"ccity_name"
,
6
:
"device_type"
,
7
:
"manufacturer"
,
8
:
"channel"
,
9
:
"top"
,
10
:
"l1"
,
11
:
"l2"
,
...
...
tensnsorflow/es/pipeline.sh
View file @
8b3d799d
...
...
@@ -32,15 +32,15 @@ rm ${DATA_PATH}/nearby/nearby_*
echo
"train..."
${
PYTHON_PATH
}
${
MODEL_PATH
}
/train.py
--ctr_task_wgt
=
0.
9
--learning_rate
=
0.0001
--deep_layers
=
512,256,128,64,32
--dropout
=
0.3,0.3,0.3,0.3,0.3
--optimizer
=
Adam
--num_epochs
=
2
--embedding_size
=
16
--batch_size
=
1024
--field_size
=
11
--feature_size
=
1460
--l2_reg
=
0.005
--log_steps
=
100
--num_threads
=
36
--model_dir
=
${
DATA_PATH
}
/model_ckpt/DeepCvrMTL/
--data_dir
=
${
DATA_PATH
}
--task_type
=
train
${
PYTHON_PATH
}
${
MODEL_PATH
}
/train.py
--ctr_task_wgt
=
0.
6
--learning_rate
=
0.0001
--deep_layers
=
512,256,128,64,32
--dropout
=
0.3,0.3,0.3,0.3,0.3
--optimizer
=
Adam
--num_epochs
=
2
--embedding_size
=
16
--batch_size
=
1024
--field_size
=
11
--feature_size
=
1460
--l2_reg
=
0.005
--log_steps
=
100
--num_threads
=
36
--model_dir
=
${
DATA_PATH
}
/model_ckpt/DeepCvrMTL/
--data_dir
=
${
DATA_PATH
}
--task_type
=
train
echo
"infer native..."
${
PYTHON_PATH
}
${
MODEL_PATH
}
/train.py
--ctr_task_wgt
=
0.
9
--learning_rate
=
0.0001
--deep_layers
=
512,256,128,64,32
--dropout
=
0.3,0.3,0.3,0.3,0.3
--optimizer
=
Adam
--num_epochs
=
1
--embedding_size
=
16
--batch_size
=
1024
--field_size
=
11
--feature_size
=
1460
--l2_reg
=
0.005
--log_steps
=
100
--num_threads
=
36
--model_dir
=
${
DATA_PATH
}
/model_ckpt/DeepCvrMTL/
--data_dir
=
${
DATA_PATH
}
/native
--task_type
=
infer
>
${
DATA_PATH
}
/infer.log
${
PYTHON_PATH
}
${
MODEL_PATH
}
/train.py
--ctr_task_wgt
=
0.
6
--learning_rate
=
0.0001
--deep_layers
=
512,256,128,64,32
--dropout
=
0.3,0.3,0.3,0.3,0.3
--optimizer
=
Adam
--num_epochs
=
1
--embedding_size
=
16
--batch_size
=
1024
--field_size
=
11
--feature_size
=
1460
--l2_reg
=
0.005
--log_steps
=
100
--num_threads
=
36
--model_dir
=
${
DATA_PATH
}
/model_ckpt/DeepCvrMTL/
--data_dir
=
${
DATA_PATH
}
/native
--task_type
=
infer
>
${
DATA_PATH
}
/infer.log
echo
"infer nearby..."
${
PYTHON_PATH
}
${
MODEL_PATH
}
/train.py
--ctr_task_wgt
=
0.
9
--learning_rate
=
0.0001
--deep_layers
=
512,256,128,64,32
--dropout
=
0.3,0.3,0.3,0.3,0.3
--optimizer
=
Adam
--num_epochs
=
1
--embedding_size
=
16
--batch_size
=
1024
--field_size
=
11
--feature_size
=
1460
--l2_reg
=
0.005
--log_steps
=
100
--num_threads
=
36
--model_dir
=
${
DATA_PATH
}
/model_ckpt/DeepCvrMTL/
--data_dir
=
${
DATA_PATH
}
/nearby
--task_type
=
infer
>
${
DATA_PATH
}
/infer.log
${
PYTHON_PATH
}
${
MODEL_PATH
}
/train.py
--ctr_task_wgt
=
0.
6
--learning_rate
=
0.0001
--deep_layers
=
512,256,128,64,32
--dropout
=
0.3,0.3,0.3,0.3,0.3
--optimizer
=
Adam
--num_epochs
=
1
--embedding_size
=
16
--batch_size
=
1024
--field_size
=
11
--feature_size
=
1460
--l2_reg
=
0.005
--log_steps
=
100
--num_threads
=
36
--model_dir
=
${
DATA_PATH
}
/model_ckpt/DeepCvrMTL/
--data_dir
=
${
DATA_PATH
}
/nearby
--task_type
=
infer
>
${
DATA_PATH
}
/infer.log
echo
"sort and 2sql"
${
PYTHON_PATH
}
${
MODEL_PATH
}
/to_database.py
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