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d889e3ec
编写于
5月 29, 2020
作者:
T
tangwei12
提交者:
GitHub
5月 29, 2020
浏览文件
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差异文件
Merge pull request #16 from xjqbest/yaml1
modify yaml
上级
e4683727
7f681eb5
变更
13
隐藏空白更改
内联
并排
Showing
13 changed file
with
1018 addition
and
160 deletion
+1018
-160
core/factory.py
core/factory.py
+1
-0
core/model.py
core/model.py
+53
-21
core/reader.py
core/reader.py
+8
-7
core/trainers/single_infer.py
core/trainers/single_infer.py
+355
-0
core/trainers/single_trainer.py
core/trainers/single_trainer.py
+285
-65
core/trainers/transpiler_trainer.py
core/trainers/transpiler_trainer.py
+4
-0
core/utils/dataloader_instance.py
core/utils/dataloader_instance.py
+87
-3
core/utils/dataset_instance.py
core/utils/dataset_instance.py
+2
-2
core/utils/envs.py
core/utils/envs.py
+11
-3
doc/yaml.md
doc/yaml.md
+66
-0
models/rank/dnn/config.yaml
models/rank/dnn/config.yaml
+65
-32
models/rank/dnn/model.py
models/rank/dnn/model.py
+16
-12
run.py
run.py
+65
-15
未找到文件。
core/factory.py
浏览文件 @
d889e3ec
...
...
@@ -26,6 +26,7 @@ trainers = {}
def
trainer_registry
():
trainers
[
"SingleTrainer"
]
=
os
.
path
.
join
(
trainer_abs
,
"single_trainer.py"
)
trainers
[
"SingleInfer"
]
=
os
.
path
.
join
(
trainer_abs
,
"single_infer.py"
)
trainers
[
"ClusterTrainer"
]
=
os
.
path
.
join
(
trainer_abs
,
"cluster_trainer.py"
)
trainers
[
"CtrCodingTrainer"
]
=
os
.
path
.
join
(
trainer_abs
,
...
...
core/model.py
浏览文件 @
d889e3ec
...
...
@@ -38,18 +38,38 @@ class Model(object):
self
.
_namespace
=
"train.model"
self
.
_platform
=
envs
.
get_platform
()
self
.
_init_hyper_parameters
()
self
.
_env
=
config
self
.
_slot_inited
=
False
def
_init_hyper_parameters
(
self
):
pass
def
_init_slots
(
self
):
sparse_slots
=
envs
.
get_global_env
(
"sparse_slots"
,
None
,
"train.reader"
)
dense_slots
=
envs
.
get_global_env
(
"dense_slots"
,
None
,
"train.reader"
)
if
sparse_slots
is
not
None
or
dense_slots
is
not
None
:
sparse_slots
=
sparse_slots
.
strip
().
split
(
" "
)
dense_slots
=
dense_slots
.
strip
().
split
(
" "
)
def
_init_slots
(
self
,
**
kargs
):
if
self
.
_slot_inited
:
return
self
.
_slot_inited
=
True
dataset
=
{}
model_dict
=
{}
for
i
in
self
.
_env
[
"executor"
]:
if
i
[
"name"
]
==
kargs
[
"name"
]:
model_dict
=
i
break
for
i
in
self
.
_env
[
"dataset"
]:
if
i
[
"name"
]
==
model_dict
[
"dataset_name"
]:
dataset
=
i
break
name
=
"dataset."
+
dataset
[
"name"
]
+
"."
sparse_slots
=
envs
.
get_global_env
(
name
+
"sparse_slots"
,
""
).
strip
()
dense_slots
=
envs
.
get_global_env
(
name
+
"dense_slots"
,
""
).
strip
()
if
sparse_slots
!=
""
or
dense_slots
!=
""
:
if
sparse_slots
==
""
:
sparse_slots
=
[]
else
:
sparse_slots
=
sparse_slots
.
strip
().
split
(
" "
)
if
dense_slots
==
""
:
dense_slots
=
[]
else
:
dense_slots
=
dense_slots
.
strip
().
split
(
" "
)
dense_slots_shape
=
[[
int
(
j
)
for
j
in
i
.
split
(
":"
)[
1
].
strip
(
"[]"
).
split
(
","
)
]
for
i
in
dense_slots
]
...
...
@@ -69,14 +89,17 @@ class Model(object):
self
.
_data_var
.
append
(
l
)
self
.
_sparse_data_var
.
append
(
l
)
dataset_class
=
envs
.
get_global_env
(
"dataset_class"
,
None
,
"train.reader"
)
dataset_class
=
dataset
[
"type"
]
if
dataset_class
==
"DataLoader"
:
self
.
_init_dataloader
()
def
_init_dataloader
(
self
):
def
_init_dataloader
(
self
,
is_infer
=
False
):
if
is_infer
:
data
=
self
.
_infer_data_var
else
:
data
=
self
.
_data_var
self
.
_data_loader
=
fluid
.
io
.
DataLoader
.
from_generator
(
feed_list
=
self
.
_data_var
,
feed_list
=
data
,
capacity
=
64
,
use_double_buffer
=
False
,
iterable
=
False
)
...
...
@@ -103,7 +126,7 @@ class Model(object):
def
get_fetch_period
(
self
):
return
self
.
_fetch_interval
def
_build_optimizer
(
self
,
name
,
lr
):
def
_build_optimizer
(
self
,
name
,
lr
,
strategy
=
None
):
name
=
name
.
upper
()
optimizers
=
[
"SGD"
,
"ADAM"
,
"ADAGRAD"
]
if
name
not
in
optimizers
:
...
...
@@ -130,16 +153,23 @@ class Model(object):
None
,
self
.
_namespace
)
optimizer
=
envs
.
get_global_env
(
"hyper_parameters.optimizer"
,
None
,
self
.
_namespace
)
print
(
">>>>>>>>>>>.learnig rate: %s"
%
learning_rate
)
return
self
.
_build_optimizer
(
optimizer
,
learning_rate
)
def
input_data
(
self
,
is_infer
=
False
):
sparse_slots
=
envs
.
get_global_env
(
"sparse_slots"
,
None
,
"train.reader"
)
dense_slots
=
envs
.
get_global_env
(
"dense_slots"
,
None
,
"train.reader"
)
if
sparse_slots
is
not
None
or
dense_slots
is
not
None
:
sparse_slots
=
sparse_slots
.
strip
().
split
(
" "
)
dense_slots
=
dense_slots
.
strip
().
split
(
" "
)
def
input_data
(
self
,
is_infer
=
False
,
**
kwargs
):
name
=
"dataset."
+
kwargs
.
get
(
"dataset_name"
)
+
"."
sparse_slots
=
envs
.
get_global_env
(
name
+
"sparse_slots"
,
""
).
strip
()
dense_slots
=
envs
.
get_global_env
(
name
+
"dense_slots"
,
""
).
strip
()
self
.
_sparse_data_var_map
=
{}
self
.
_dense_data_var_map
=
{}
if
sparse_slots
!=
""
or
dense_slots
!=
""
:
if
sparse_slots
==
""
:
sparse_slots
=
[]
else
:
sparse_slots
=
sparse_slots
.
strip
().
split
(
" "
)
if
dense_slots
==
""
:
dense_slots
=
[]
else
:
dense_slots
=
dense_slots
.
strip
().
split
(
" "
)
dense_slots_shape
=
[[
int
(
j
)
for
j
in
i
.
split
(
":"
)[
1
].
strip
(
"[]"
).
split
(
","
)
]
for
i
in
dense_slots
]
...
...
@@ -153,12 +183,14 @@ class Model(object):
dtype
=
"float32"
)
data_var_
.
append
(
l
)
self
.
_dense_data_var
.
append
(
l
)
self
.
_dense_data_var_map
[
dense_slots
[
i
]]
=
l
self
.
_sparse_data_var
=
[]
for
name
in
sparse_slots
:
l
=
fluid
.
layers
.
data
(
name
=
name
,
shape
=
[
1
],
lod_level
=
1
,
dtype
=
"int64"
)
data_var_
.
append
(
l
)
self
.
_sparse_data_var
.
append
(
l
)
self
.
_sparse_data_var_map
[
name
]
=
l
return
data_var_
else
:
...
...
core/reader.py
浏览文件 @
d889e3ec
...
...
@@ -35,9 +35,6 @@ class Reader(dg.MultiSlotDataGenerator):
else
:
raise
ValueError
(
"reader config only support yaml"
)
envs
.
set_global_envs
(
_config
)
envs
.
update_workspace
()
@
abc
.
abstractmethod
def
init
(
self
):
"""init"""
...
...
@@ -58,13 +55,17 @@ class SlotReader(dg.MultiSlotDataGenerator):
_config
=
yaml
.
load
(
rb
.
read
(),
Loader
=
yaml
.
FullLoader
)
else
:
raise
ValueError
(
"reader config only support yaml"
)
envs
.
set_global_envs
(
_config
)
envs
.
update_workspace
()
def
init
(
self
,
sparse_slots
,
dense_slots
,
padding
=
0
):
from
operator
import
mul
self
.
sparse_slots
=
sparse_slots
.
strip
().
split
(
" "
)
self
.
dense_slots
=
dense_slots
.
strip
().
split
(
" "
)
self
.
sparse_slots
=
[]
if
sparse_slots
.
strip
()
!=
"#"
and
sparse_slots
.
strip
(
)
!=
"?"
and
sparse_slots
.
strip
()
!=
""
:
self
.
sparse_slots
=
sparse_slots
.
strip
().
split
(
" "
)
self
.
dense_slots
=
[]
if
dense_slots
.
strip
()
!=
"#"
and
dense_slots
.
strip
(
)
!=
"?"
and
dense_slots
.
strip
()
!=
""
:
self
.
dense_slots
=
dense_slots
.
strip
().
split
(
" "
)
self
.
dense_slots_shape
=
[
reduce
(
mul
,
[
int
(
j
)
for
j
in
i
.
split
(
":"
)[
1
].
strip
(
"[]"
).
split
(
","
)])
...
...
core/trainers/single_infer.py
0 → 100755
浏览文件 @
d889e3ec
# Copyright (c) 2020 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
Training use fluid with one node only.
"""
from
__future__
import
print_function
import
time
import
logging
import
os
import
paddle.fluid
as
fluid
from
paddlerec.core.trainers.transpiler_trainer
import
TranspileTrainer
from
paddlerec.core.utils
import
envs
from
paddlerec.core.reader
import
SlotReader
from
paddlerec.core.utils
import
dataloader_instance
logging
.
basicConfig
(
format
=
"%(asctime)s - %(levelname)s - %(message)s"
)
logger
=
logging
.
getLogger
(
"fluid"
)
logger
.
setLevel
(
logging
.
INFO
)
class
SingleInfer
(
TranspileTrainer
):
def
__init__
(
self
,
config
=
None
):
super
(
TranspileTrainer
,
self
).
__init__
(
config
)
self
.
_env
=
self
.
_config
device
=
envs
.
get_global_env
(
"device"
)
if
device
==
'gpu'
:
self
.
_place
=
fluid
.
CUDAPlace
(
0
)
elif
device
==
'cpu'
:
self
.
_place
=
fluid
.
CPUPlace
()
self
.
_exe
=
fluid
.
Executor
(
self
.
_place
)
self
.
processor_register
()
self
.
_model
=
{}
self
.
_dataset
=
{}
envs
.
set_global_envs
(
self
.
_config
)
envs
.
update_workspace
()
self
.
_runner_name
=
envs
.
get_global_env
(
"mode"
)
device
=
envs
.
get_global_env
(
"runner."
+
self
.
_runner_name
+
".device"
)
if
device
==
'gpu'
:
self
.
_place
=
fluid
.
CUDAPlace
(
0
)
elif
device
==
'cpu'
:
self
.
_place
=
fluid
.
CPUPlace
()
self
.
_exe
=
fluid
.
Executor
(
self
.
_place
)
def
processor_register
(
self
):
self
.
regist_context_processor
(
'uninit'
,
self
.
instance
)
self
.
regist_context_processor
(
'init_pass'
,
self
.
init
)
self
.
regist_context_processor
(
'startup_pass'
,
self
.
startup
)
self
.
regist_context_processor
(
'train_pass'
,
self
.
executor_train
)
self
.
regist_context_processor
(
'terminal_pass'
,
self
.
terminal
)
def
instance
(
self
,
context
):
context
[
'status'
]
=
'init_pass'
def
_get_dataset
(
self
,
dataset_name
):
name
=
"dataset."
+
dataset_name
+
"."
thread_num
=
envs
.
get_global_env
(
name
+
"thread_num"
)
batch_size
=
envs
.
get_global_env
(
name
+
"batch_size"
)
reader_class
=
envs
.
get_global_env
(
name
+
"data_converter"
)
abs_dir
=
os
.
path
.
dirname
(
os
.
path
.
abspath
(
__file__
))
reader
=
os
.
path
.
join
(
abs_dir
,
'../utils'
,
'dataset_instance.py'
)
sparse_slots
=
envs
.
get_global_env
(
name
+
"sparse_slots"
,
""
).
strip
()
dense_slots
=
envs
.
get_global_env
(
name
+
"dense_slots"
,
""
).
strip
()
if
sparse_slots
==
""
and
dense_slots
==
""
:
pipe_cmd
=
"python {} {} {} {}"
.
format
(
reader
,
reader_class
,
"TRAIN"
,
self
.
_config_yaml
)
else
:
if
sparse_slots
==
""
:
sparse_slots
=
"?"
if
dense_slots
==
""
:
dense_slots
=
"?"
padding
=
envs
.
get_global_env
(
name
+
"padding"
,
0
)
pipe_cmd
=
"python {} {} {} {} {} {} {} {}"
.
format
(
reader
,
"slot"
,
"slot"
,
self
.
_config_yaml
,
"fake"
,
\
sparse_slots
.
replace
(
" "
,
"?"
),
dense_slots
.
replace
(
" "
,
"?"
),
str
(
padding
))
dataset
=
fluid
.
DatasetFactory
().
create_dataset
()
dataset
.
set_batch_size
(
envs
.
get_global_env
(
name
+
"batch_size"
))
dataset
.
set_pipe_command
(
pipe_cmd
)
train_data_path
=
envs
.
get_global_env
(
name
+
"data_path"
)
file_list
=
[
os
.
path
.
join
(
train_data_path
,
x
)
for
x
in
os
.
listdir
(
train_data_path
)
]
dataset
.
set_filelist
(
file_list
)
for
model_dict
in
self
.
_env
[
"phase"
]:
if
model_dict
[
"dataset_name"
]
==
dataset_name
:
model
=
self
.
_model
[
model_dict
[
"name"
]][
3
]
inputs
=
model
.
_infer_data_var
dataset
.
set_use_var
(
inputs
)
break
return
dataset
def
_get_dataloader
(
self
,
dataset_name
,
dataloader
):
name
=
"dataset."
+
dataset_name
+
"."
thread_num
=
envs
.
get_global_env
(
name
+
"thread_num"
)
batch_size
=
envs
.
get_global_env
(
name
+
"batch_size"
)
reader_class
=
envs
.
get_global_env
(
name
+
"data_converter"
)
abs_dir
=
os
.
path
.
dirname
(
os
.
path
.
abspath
(
__file__
))
sparse_slots
=
envs
.
get_global_env
(
name
+
"sparse_slots"
,
""
).
strip
()
dense_slots
=
envs
.
get_global_env
(
name
+
"dense_slots"
,
""
).
strip
()
if
sparse_slots
==
""
and
dense_slots
==
""
:
reader
=
dataloader_instance
.
dataloader_by_name
(
reader_class
,
dataset_name
,
self
.
_config_yaml
)
reader_class
=
envs
.
lazy_instance_by_fliename
(
reader_class
,
"TrainReader"
)
reader_ins
=
reader_class
(
self
.
_config_yaml
)
else
:
reader
=
dataloader_instance
.
slotdataloader_by_name
(
""
,
dataset_name
,
self
.
_config_yaml
)
reader_ins
=
SlotReader
(
self
.
_config_yaml
)
if
hasattr
(
reader_ins
,
'generate_batch_from_trainfiles'
):
dataloader
.
set_sample_list_generator
(
reader
)
else
:
dataloader
.
set_sample_generator
(
reader
,
batch_size
)
return
dataloader
def
_create_dataset
(
self
,
dataset_name
):
name
=
"dataset."
+
dataset_name
+
"."
sparse_slots
=
envs
.
get_global_env
(
name
+
"sparse_slots"
)
dense_slots
=
envs
.
get_global_env
(
name
+
"dense_slots"
)
thread_num
=
envs
.
get_global_env
(
name
+
"thread_num"
)
batch_size
=
envs
.
get_global_env
(
name
+
"batch_size"
)
type_name
=
envs
.
get_global_env
(
name
+
"type"
)
if
envs
.
get_platform
()
!=
"LINUX"
:
print
(
"platform "
,
envs
.
get_platform
(),
" change reader to DataLoader"
)
type_name
=
"DataLoader"
padding
=
0
if
type_name
==
"DataLoader"
:
return
None
else
:
return
self
.
_get_dataset
(
dataset_name
)
def
init
(
self
,
context
):
for
model_dict
in
self
.
_env
[
"phase"
]:
self
.
_model
[
model_dict
[
"name"
]]
=
[
None
]
*
5
train_program
=
fluid
.
Program
()
startup_program
=
fluid
.
Program
()
scope
=
fluid
.
Scope
()
dataset_name
=
model_dict
[
"dataset_name"
]
opt_name
=
envs
.
get_global_env
(
"hyper_parameters.optimizer.class"
)
opt_lr
=
envs
.
get_global_env
(
"hyper_parameters.optimizer.learning_rate"
)
opt_strategy
=
envs
.
get_global_env
(
"hyper_parameters.optimizer.strategy"
)
with
fluid
.
program_guard
(
train_program
,
startup_program
):
with
fluid
.
unique_name
.
guard
():
with
fluid
.
scope_guard
(
scope
):
model_path
=
model_dict
[
"model"
].
replace
(
"{workspace}"
,
envs
.
path_adapter
(
self
.
_env
[
"workspace"
]))
model
=
envs
.
lazy_instance_by_fliename
(
model_path
,
"Model"
)(
self
.
_env
)
model
.
_infer_data_var
=
model
.
input_data
(
dataset_name
=
model_dict
[
"dataset_name"
])
if
envs
.
get_global_env
(
"dataset."
+
dataset_name
+
".type"
)
==
"DataLoader"
:
model
.
_init_dataloader
(
is_infer
=
True
)
self
.
_get_dataloader
(
dataset_name
,
model
.
_data_loader
)
model
.
net
(
model
.
_infer_data_var
,
True
)
self
.
_model
[
model_dict
[
"name"
]][
0
]
=
train_program
self
.
_model
[
model_dict
[
"name"
]][
1
]
=
startup_program
self
.
_model
[
model_dict
[
"name"
]][
2
]
=
scope
self
.
_model
[
model_dict
[
"name"
]][
3
]
=
model
self
.
_model
[
model_dict
[
"name"
]][
4
]
=
train_program
.
clone
()
for
dataset
in
self
.
_env
[
"dataset"
]:
if
dataset
[
"type"
]
!=
"DataLoader"
:
self
.
_dataset
[
dataset
[
"name"
]]
=
self
.
_create_dataset
(
dataset
[
"name"
])
context
[
'status'
]
=
'startup_pass'
def
startup
(
self
,
context
):
for
model_dict
in
self
.
_env
[
"phase"
]:
with
fluid
.
scope_guard
(
self
.
_model
[
model_dict
[
"name"
]][
2
]):
self
.
_exe
.
run
(
self
.
_model
[
model_dict
[
"name"
]][
1
])
context
[
'status'
]
=
'train_pass'
def
executor_train
(
self
,
context
):
epochs
=
int
(
envs
.
get_global_env
(
"runner."
+
self
.
_runner_name
+
".epochs"
))
for
j
in
range
(
epochs
):
for
model_dict
in
self
.
_env
[
"phase"
]:
if
j
==
0
:
with
fluid
.
scope_guard
(
self
.
_model
[
model_dict
[
"name"
]][
2
]):
train_prog
=
self
.
_model
[
model_dict
[
"name"
]][
0
]
startup_prog
=
self
.
_model
[
model_dict
[
"name"
]][
1
]
with
fluid
.
program_guard
(
train_prog
,
startup_prog
):
self
.
load
()
reader_name
=
model_dict
[
"dataset_name"
]
name
=
"dataset."
+
reader_name
+
"."
begin_time
=
time
.
time
()
if
envs
.
get_global_env
(
name
+
"type"
)
==
"DataLoader"
:
self
.
_executor_dataloader_train
(
model_dict
)
else
:
self
.
_executor_dataset_train
(
model_dict
)
with
fluid
.
scope_guard
(
self
.
_model
[
model_dict
[
"name"
]][
2
]):
train_prog
=
self
.
_model
[
model_dict
[
"name"
]][
4
]
startup_prog
=
self
.
_model
[
model_dict
[
"name"
]][
1
]
with
fluid
.
program_guard
(
train_prog
,
startup_prog
):
self
.
save
(
j
)
end_time
=
time
.
time
()
seconds
=
end_time
-
begin_time
print
(
"epoch {} done, time elasped: {}"
.
format
(
j
,
seconds
))
context
[
'status'
]
=
"terminal_pass"
def
_executor_dataset_train
(
self
,
model_dict
):
reader_name
=
model_dict
[
"dataset_name"
]
model_name
=
model_dict
[
"name"
]
model_class
=
self
.
_model
[
model_name
][
3
]
fetch_vars
=
[]
fetch_alias
=
[]
fetch_period
=
int
(
envs
.
get_global_env
(
"runner."
+
self
.
_runner_name
+
".print_interval"
,
20
))
metrics
=
model_class
.
get_infer_results
()
if
metrics
:
fetch_vars
=
metrics
.
values
()
fetch_alias
=
metrics
.
keys
()
scope
=
self
.
_model
[
model_name
][
2
]
program
=
self
.
_model
[
model_name
][
0
]
reader
=
self
.
_dataset
[
reader_name
]
with
fluid
.
scope_guard
(
scope
):
self
.
_exe
.
infer_from_dataset
(
program
=
program
,
dataset
=
reader
,
fetch_list
=
fetch_vars
,
fetch_info
=
fetch_alias
,
print_period
=
fetch_period
)
def
_executor_dataloader_train
(
self
,
model_dict
):
reader_name
=
model_dict
[
"dataset_name"
]
model_name
=
model_dict
[
"name"
]
model_class
=
self
.
_model
[
model_name
][
3
]
program
=
self
.
_model
[
model_name
][
0
].
clone
()
fetch_vars
=
[]
fetch_alias
=
[]
metrics
=
model_class
.
get_infer_results
()
if
metrics
:
fetch_vars
=
metrics
.
values
()
fetch_alias
=
metrics
.
keys
()
metrics_varnames
=
[]
metrics_format
=
[]
fetch_period
=
int
(
envs
.
get_global_env
(
"runner."
+
self
.
_runner_name
+
".print_interval"
,
20
))
metrics_format
.
append
(
"{}: {{}}"
.
format
(
"batch"
))
for
name
,
var
in
metrics
.
items
():
metrics_varnames
.
append
(
var
.
name
)
metrics_format
.
append
(
"{}: {{}}"
.
format
(
name
))
metrics_format
=
", "
.
join
(
metrics_format
)
reader
=
self
.
_model
[
model_name
][
3
].
_data_loader
reader
.
start
()
batch_id
=
0
scope
=
self
.
_model
[
model_name
][
2
]
with
fluid
.
scope_guard
(
scope
):
try
:
while
True
:
metrics_rets
=
self
.
_exe
.
run
(
program
=
program
,
fetch_list
=
metrics_varnames
)
metrics
=
[
batch_id
]
metrics
.
extend
(
metrics_rets
)
if
batch_id
%
fetch_period
==
0
and
batch_id
!=
0
:
print
(
metrics_format
.
format
(
*
metrics
))
batch_id
+=
1
except
fluid
.
core
.
EOFException
:
reader
.
reset
()
def
terminal
(
self
,
context
):
context
[
'is_exit'
]
=
True
def
load
(
self
,
is_fleet
=
False
):
name
=
"runner."
+
self
.
_runner_name
+
"."
dirname
=
envs
.
get_global_env
(
name
+
"init_model_path"
,
None
)
if
dirname
is
None
or
dirname
==
""
:
return
print
(
"single_infer going to load "
,
dirname
)
if
is_fleet
:
fleet
.
load_persistables
(
self
.
_exe
,
dirname
)
else
:
fluid
.
io
.
load_persistables
(
self
.
_exe
,
dirname
)
def
save
(
self
,
epoch_id
,
is_fleet
=
False
):
def
need_save
(
epoch_id
,
epoch_interval
,
is_last
=
False
):
if
is_last
:
return
True
if
epoch_id
==
-
1
:
return
False
return
epoch_id
%
epoch_interval
==
0
def
save_inference_model
():
name
=
"runner."
+
self
.
_runner_name
+
"."
save_interval
=
int
(
envs
.
get_global_env
(
name
+
"save_inference_interval"
,
-
1
))
if
not
need_save
(
epoch_id
,
save_interval
,
False
):
return
feed_varnames
=
envs
.
get_global_env
(
name
+
"save_inference_feed_varnames"
,
None
)
fetch_varnames
=
envs
.
get_global_env
(
name
+
"save_inference_fetch_varnames"
,
None
)
if
feed_varnames
is
None
or
fetch_varnames
is
None
or
feed_varnames
==
""
:
return
fetch_vars
=
[
fluid
.
default_main_program
().
global_block
().
vars
[
varname
]
for
varname
in
fetch_varnames
]
dirname
=
envs
.
get_global_env
(
name
+
"save_inference_path"
,
None
)
assert
dirname
is
not
None
dirname
=
os
.
path
.
join
(
dirname
,
str
(
epoch_id
))
if
is_fleet
:
fleet
.
save_inference_model
(
self
.
_exe
,
dirname
,
feed_varnames
,
fetch_vars
)
else
:
fluid
.
io
.
save_inference_model
(
dirname
,
feed_varnames
,
fetch_vars
,
self
.
_exe
)
def
save_persistables
():
name
=
"runner."
+
self
.
_runner_name
+
"."
save_interval
=
int
(
envs
.
get_global_env
(
name
+
"save_checkpoint_interval"
,
-
1
))
if
not
need_save
(
epoch_id
,
save_interval
,
False
):
return
dirname
=
envs
.
get_global_env
(
name
+
"save_checkpoint_path"
,
None
)
if
dirname
is
None
or
dirname
==
""
:
return
dirname
=
os
.
path
.
join
(
dirname
,
str
(
epoch_id
))
if
is_fleet
:
fleet
.
save_persistables
(
self
.
_exe
,
dirname
)
else
:
fluid
.
io
.
save_persistables
(
self
.
_exe
,
dirname
)
save_persistables
()
save_inference_model
()
core/trainers/single_trainer.py
浏览文件 @
d889e3ec
...
...
@@ -19,11 +19,13 @@ from __future__ import print_function
import
time
import
logging
import
os
import
paddle.fluid
as
fluid
from
paddlerec.core.trainers.transpiler_trainer
import
TranspileTrainer
from
paddlerec.core.utils
import
envs
from
paddlerec.core.reader
import
SlotReader
from
paddlerec.core.utils
import
dataloader_instance
logging
.
basicConfig
(
format
=
"%(asctime)s - %(levelname)s - %(message)s"
)
logger
=
logging
.
getLogger
(
"fluid"
)
...
...
@@ -31,105 +33,323 @@ logger.setLevel(logging.INFO)
class
SingleTrainer
(
TranspileTrainer
):
def
__init__
(
self
,
config
=
None
):
super
(
TranspileTrainer
,
self
).
__init__
(
config
)
self
.
_env
=
self
.
_config
self
.
processor_register
()
self
.
_model
=
{}
self
.
_dataset
=
{}
envs
.
set_global_envs
(
self
.
_config
)
envs
.
update_workspace
()
self
.
_runner_name
=
envs
.
get_global_env
(
"mode"
)
device
=
envs
.
get_global_env
(
"runner."
+
self
.
_runner_name
+
".device"
)
if
device
==
'gpu'
:
self
.
_place
=
fluid
.
CUDAPlace
(
0
)
elif
device
==
'cpu'
:
self
.
_place
=
fluid
.
CPUPlace
()
self
.
_exe
=
fluid
.
Executor
(
self
.
_place
)
def
processor_register
(
self
):
self
.
regist_context_processor
(
'uninit'
,
self
.
instance
)
self
.
regist_context_processor
(
'init_pass'
,
self
.
init
)
self
.
regist_context_processor
(
'startup_pass'
,
self
.
startup
)
self
.
regist_context_processor
(
'train_pass'
,
self
.
executor_train
)
self
.
regist_context_processor
(
'terminal_pass'
,
self
.
terminal
)
def
instance
(
self
,
context
):
context
[
'status'
]
=
'init_pass'
if
envs
.
get_platform
()
==
"LINUX"
and
envs
.
get_global_env
(
"dataset_class"
,
None
,
"train.reader"
)
!=
"DataLoader"
:
self
.
regist_context_processor
(
'train_pass'
,
self
.
dataset_train
)
def
_get_dataset
(
self
,
dataset_name
):
name
=
"dataset."
+
dataset_name
+
"."
thread_num
=
envs
.
get_global_env
(
name
+
"thread_num"
)
batch_size
=
envs
.
get_global_env
(
name
+
"batch_size"
)
reader_class
=
envs
.
get_global_env
(
name
+
"data_converter"
)
abs_dir
=
os
.
path
.
dirname
(
os
.
path
.
abspath
(
__file__
))
reader
=
os
.
path
.
join
(
abs_dir
,
'../utils'
,
'dataset_instance.py'
)
sparse_slots
=
envs
.
get_global_env
(
name
+
"sparse_slots"
,
""
).
strip
()
dense_slots
=
envs
.
get_global_env
(
name
+
"dense_slots"
,
""
).
strip
()
if
sparse_slots
==
""
and
dense_slots
==
""
:
pipe_cmd
=
"python {} {} {} {}"
.
format
(
reader
,
reader_class
,
"TRAIN"
,
self
.
_config_yaml
)
else
:
self
.
regist_context_processor
(
'train_pass'
,
self
.
dataloader_train
)
if
sparse_slots
==
""
:
sparse_slots
=
"?"
if
dense_slots
==
""
:
dense_slots
=
"?"
padding
=
envs
.
get_global_env
(
name
+
"padding"
,
0
)
pipe_cmd
=
"python {} {} {} {} {} {} {} {}"
.
format
(
reader
,
"slot"
,
"slot"
,
self
.
_config_yaml
,
"fake"
,
\
sparse_slots
.
replace
(
" "
,
"?"
),
dense_slots
.
replace
(
" "
,
"?"
),
str
(
padding
))
self
.
regist_context_processor
(
'infer_pass'
,
self
.
infer
)
self
.
regist_context_processor
(
'terminal_pass'
,
self
.
terminal
)
dataset
=
fluid
.
DatasetFactory
().
create_dataset
()
dataset
.
set_batch_size
(
envs
.
get_global_env
(
name
+
"batch_size"
))
dataset
.
set_pipe_command
(
pipe_cmd
)
train_data_path
=
envs
.
get_global_env
(
name
+
"data_path"
)
file_list
=
[
os
.
path
.
join
(
train_data_path
,
x
)
for
x
in
os
.
listdir
(
train_data_path
)
]
dataset
.
set_filelist
(
file_list
)
for
model_dict
in
self
.
_env
[
"phase"
]:
if
model_dict
[
"dataset_name"
]
==
dataset_name
:
model
=
self
.
_model
[
model_dict
[
"name"
]][
3
]
inputs
=
model
.
_data_var
dataset
.
set_use_var
(
inputs
)
break
return
dataset
def
init
(
self
,
context
):
self
.
model
.
train_net
()
optimizer
=
self
.
model
.
optimizer
()
optimizer
.
minimize
((
self
.
model
.
get_avg_cost
()))
def
_get_dataloader
(
self
,
dataset_name
,
dataloader
):
name
=
"dataset."
+
dataset_name
+
"."
sparse_slots
=
envs
.
get_global_env
(
name
+
"sparse_slots"
,
""
).
strip
()
dense_slots
=
envs
.
get_global_env
(
name
+
"dense_slots"
,
""
).
strip
()
thread_num
=
envs
.
get_global_env
(
name
+
"thread_num"
)
batch_size
=
envs
.
get_global_env
(
name
+
"batch_size"
)
reader_class
=
envs
.
get_global_env
(
name
+
"data_converter"
)
abs_dir
=
os
.
path
.
dirname
(
os
.
path
.
abspath
(
__file__
))
if
sparse_slots
==
""
and
dense_slots
==
""
:
reader
=
dataloader_instance
.
dataloader_by_name
(
reader_class
,
dataset_name
,
self
.
_config_yaml
)
reader_class
=
envs
.
lazy_instance_by_fliename
(
reader_class
,
"TrainReader"
)
reader_ins
=
reader_class
(
self
.
_config_yaml
)
else
:
reader
=
dataloader_instance
.
slotdataloader_by_name
(
""
,
dataset_name
,
self
.
_config_yaml
)
reader_ins
=
SlotReader
(
self
.
_config_yaml
)
if
hasattr
(
reader_ins
,
'generate_batch_from_trainfiles'
):
dataloader
.
set_sample_list_generator
(
reader
)
else
:
dataloader
.
set_sample_generator
(
reader
,
batch_size
)
return
dataloader
self
.
fetch_vars
=
[]
self
.
fetch_alias
=
[]
self
.
fetch_period
=
self
.
model
.
get_fetch_period
()
def
_create_dataset
(
self
,
dataset_name
):
name
=
"dataset."
+
dataset_name
+
"."
sparse_slots
=
envs
.
get_global_env
(
name
+
"sparse_slots"
,
""
).
strip
()
dense_slots
=
envs
.
get_global_env
(
name
+
"dense_slots"
,
""
).
strip
()
thread_num
=
envs
.
get_global_env
(
name
+
"thread_num"
)
batch_size
=
envs
.
get_global_env
(
name
+
"batch_size"
)
type_name
=
envs
.
get_global_env
(
name
+
"type"
)
if
envs
.
get_platform
()
!=
"LINUX"
:
print
(
"platform "
,
envs
.
get_platform
(),
" change reader to DataLoader"
)
type_name
=
"DataLoader"
padding
=
0
metrics
=
self
.
model
.
get_metrics
()
if
metrics
:
self
.
fetch_vars
=
metrics
.
values
()
self
.
fetch_alias
=
metrics
.
keys
()
evaluate_only
=
envs
.
get_global_env
(
'evaluate_only'
,
False
,
namespace
=
'evaluate'
)
if
evaluate_only
:
context
[
'status'
]
=
'infer_pass'
if
type_name
==
"DataLoader"
:
return
None
else
:
context
[
'status'
]
=
'startup_pass'
return
self
.
_get_dataset
(
dataset_name
)
def
init
(
self
,
context
):
for
model_dict
in
self
.
_env
[
"phase"
]:
self
.
_model
[
model_dict
[
"name"
]]
=
[
None
]
*
5
train_program
=
fluid
.
Program
()
startup_program
=
fluid
.
Program
()
scope
=
fluid
.
Scope
()
dataset_name
=
model_dict
[
"dataset_name"
]
opt_name
=
envs
.
get_global_env
(
"hyper_parameters.optimizer.class"
)
opt_lr
=
envs
.
get_global_env
(
"hyper_parameters.optimizer.learning_rate"
)
opt_strategy
=
envs
.
get_global_env
(
"hyper_parameters.optimizer.strategy"
)
with
fluid
.
program_guard
(
train_program
,
startup_program
):
with
fluid
.
unique_name
.
guard
():
with
fluid
.
scope_guard
(
scope
):
model_path
=
model_dict
[
"model"
].
replace
(
"{workspace}"
,
envs
.
path_adapter
(
self
.
_env
[
"workspace"
]))
model
=
envs
.
lazy_instance_by_fliename
(
model_path
,
"Model"
)(
self
.
_env
)
model
.
_data_var
=
model
.
input_data
(
dataset_name
=
model_dict
[
"dataset_name"
])
if
envs
.
get_global_env
(
"dataset."
+
dataset_name
+
".type"
)
==
"DataLoader"
:
model
.
_init_dataloader
(
is_infer
=
False
)
self
.
_get_dataloader
(
dataset_name
,
model
.
_data_loader
)
model
.
net
(
model
.
_data_var
,
False
)
optimizer
=
model
.
_build_optimizer
(
opt_name
,
opt_lr
,
opt_strategy
)
optimizer
.
minimize
(
model
.
_cost
)
self
.
_model
[
model_dict
[
"name"
]][
0
]
=
train_program
self
.
_model
[
model_dict
[
"name"
]][
1
]
=
startup_program
self
.
_model
[
model_dict
[
"name"
]][
2
]
=
scope
self
.
_model
[
model_dict
[
"name"
]][
3
]
=
model
self
.
_model
[
model_dict
[
"name"
]][
4
]
=
train_program
.
clone
()
for
dataset
in
self
.
_env
[
"dataset"
]:
if
dataset
[
"type"
]
!=
"DataLoader"
:
self
.
_dataset
[
dataset
[
"name"
]]
=
self
.
_create_dataset
(
dataset
[
"name"
])
context
[
'status'
]
=
'startup_pass'
def
startup
(
self
,
context
):
self
.
_exe
.
run
(
fluid
.
default_startup_program
())
for
model_dict
in
self
.
_env
[
"phase"
]:
with
fluid
.
scope_guard
(
self
.
_model
[
model_dict
[
"name"
]][
2
]):
self
.
_exe
.
run
(
self
.
_model
[
model_dict
[
"name"
]][
1
])
context
[
'status'
]
=
'train_pass'
def
dataloader_train
(
self
,
context
):
reader
=
self
.
_get_dataloader
(
"TRAIN"
)
epochs
=
envs
.
get_global_env
(
"train.epochs"
)
def
executor_train
(
self
,
context
):
epochs
=
int
(
envs
.
get_global_env
(
"runner."
+
self
.
_runner_name
+
".epochs"
))
for
j
in
range
(
epochs
):
for
model_dict
in
self
.
_env
[
"phase"
]:
if
j
==
0
:
with
fluid
.
scope_guard
(
self
.
_model
[
model_dict
[
"name"
]][
2
]):
train_prog
=
self
.
_model
[
model_dict
[
"name"
]][
0
]
startup_prog
=
self
.
_model
[
model_dict
[
"name"
]][
1
]
with
fluid
.
program_guard
(
train_prog
,
startup_prog
):
self
.
load
()
reader_name
=
model_dict
[
"dataset_name"
]
name
=
"dataset."
+
reader_name
+
"."
begin_time
=
time
.
time
()
if
envs
.
get_global_env
(
name
+
"type"
)
==
"DataLoader"
:
self
.
_executor_dataloader_train
(
model_dict
)
else
:
self
.
_executor_dataset_train
(
model_dict
)
with
fluid
.
scope_guard
(
self
.
_model
[
model_dict
[
"name"
]][
2
]):
train_prog
=
self
.
_model
[
model_dict
[
"name"
]][
4
]
startup_prog
=
self
.
_model
[
model_dict
[
"name"
]][
1
]
with
fluid
.
program_guard
(
train_prog
,
startup_prog
):
self
.
save
(
j
)
end_time
=
time
.
time
()
seconds
=
end_time
-
begin_time
print
(
"epoch {} done, time elasped: {}"
.
format
(
j
,
seconds
))
context
[
'status'
]
=
"terminal_pass"
program
=
fluid
.
compiler
.
CompiledProgram
(
fluid
.
default_main_program
(
)).
with_data_parallel
(
loss_name
=
self
.
model
.
get_avg_cost
().
name
)
def
_executor_dataset_train
(
self
,
model_dict
):
reader_name
=
model_dict
[
"dataset_name"
]
model_name
=
model_dict
[
"name"
]
model_class
=
self
.
_model
[
model_name
][
3
]
fetch_vars
=
[]
fetch_alias
=
[]
fetch_period
=
int
(
envs
.
get_global_env
(
"runner."
+
self
.
_runner_name
+
".print_interval"
,
20
))
metrics
=
model_class
.
get_metrics
()
if
metrics
:
fetch_vars
=
metrics
.
values
()
fetch_alias
=
metrics
.
keys
()
scope
=
self
.
_model
[
model_name
][
2
]
program
=
self
.
_model
[
model_name
][
0
]
reader
=
self
.
_dataset
[
reader_name
]
with
fluid
.
scope_guard
(
scope
):
self
.
_exe
.
train_from_dataset
(
program
=
program
,
dataset
=
reader
,
fetch_list
=
fetch_vars
,
fetch_info
=
fetch_alias
,
print_period
=
fetch_period
)
def
_executor_dataloader_train
(
self
,
model_dict
):
reader_name
=
model_dict
[
"dataset_name"
]
model_name
=
model_dict
[
"name"
]
model_class
=
self
.
_model
[
model_name
][
3
]
program
=
self
.
_model
[
model_name
][
0
].
clone
()
program
=
fluid
.
compiler
.
CompiledProgram
(
program
).
with_data_parallel
(
loss_name
=
model_class
.
get_avg_cost
().
name
)
fetch_vars
=
[]
fetch_alias
=
[]
fetch_period
=
int
(
envs
.
get_global_env
(
"runner."
+
self
.
_runner_name
+
".print_interval"
,
20
))
metrics
=
model_class
.
get_metrics
()
if
metrics
:
fetch_vars
=
metrics
.
values
()
fetch_alias
=
metrics
.
keys
()
metrics_varnames
=
[]
metrics_format
=
[]
metrics_format
.
append
(
"{}: {{}}"
.
format
(
"epoch"
))
metrics_format
.
append
(
"{}: {{}}"
.
format
(
"batch"
))
for
name
,
var
in
self
.
model
.
get_metrics
().
items
():
for
name
,
var
in
metrics
.
items
():
metrics_varnames
.
append
(
var
.
name
)
metrics_format
.
append
(
"{}: {{}}"
.
format
(
name
))
metrics_format
=
", "
.
join
(
metrics_format
)
for
epoch
in
range
(
epochs
):
reader
.
start
()
batch_id
=
0
reader
=
self
.
_model
[
model_name
][
3
].
_data_loader
reader
.
start
()
batch_id
=
0
scope
=
self
.
_model
[
model_name
][
2
]
with
fluid
.
scope_guard
(
scope
):
try
:
while
True
:
metrics_rets
=
self
.
_exe
.
run
(
program
=
program
,
fetch_list
=
metrics_varnames
)
metrics
=
[
epoch
,
batch_id
]
metrics
=
[
batch_id
]
metrics
.
extend
(
metrics_rets
)
if
batch_id
%
self
.
fetch_period
==
0
and
batch_id
!=
0
:
if
batch_id
%
fetch_period
==
0
and
batch_id
!=
0
:
print
(
metrics_format
.
format
(
*
metrics
))
batch_id
+=
1
except
fluid
.
core
.
EOFException
:
reader
.
reset
()
self
.
save
(
epoch
,
"train"
,
is_fleet
=
False
)
context
[
'status'
]
=
'infer_pass'
def
terminal
(
self
,
context
):
context
[
'is_exit'
]
=
True
def
dataset_train
(
self
,
context
):
dataset
=
self
.
_get_dataset
(
"TRAIN"
)
ins
=
self
.
_get_dataset_ins
()
def
load
(
self
,
is_fleet
=
False
):
dirname
=
envs
.
get_global_env
(
"runner."
+
self
.
_runner_name
+
".init_model_path"
,
None
)
if
dirname
is
None
or
dirname
==
""
:
return
print
(
"going to load "
,
dirname
)
if
is_fleet
:
fleet
.
load_persistables
(
self
.
_exe
,
dirname
)
else
:
fluid
.
io
.
load_persistables
(
self
.
_exe
,
dirname
)
epochs
=
envs
.
get_global_env
(
"train.epochs"
)
for
i
in
range
(
epochs
):
begin_time
=
time
.
time
()
self
.
_exe
.
train_from_dataset
(
program
=
fluid
.
default_main_program
(),
dataset
=
dataset
,
fetch_list
=
self
.
fetch_vars
,
fetch_info
=
self
.
fetch_alias
,
print_period
=
self
.
fetch_period
)
end_time
=
time
.
time
()
times
=
end_time
-
begin_time
print
(
"epoch {} using time {}, speed {:.2f} lines/s"
.
format
(
i
,
times
,
ins
/
times
))
self
.
save
(
i
,
"train"
,
is_fleet
=
False
)
context
[
'status'
]
=
'infer_pass'
def
save
(
self
,
epoch_id
,
is_fleet
=
False
):
def
need_save
(
epoch_id
,
epoch_interval
,
is_last
=
False
):
if
is_last
:
return
True
if
epoch_id
==
-
1
:
return
False
def
terminal
(
self
,
context
):
for
model
in
self
.
increment_models
:
print
(
"epoch :{}, dir: {}"
.
format
(
model
[
0
],
model
[
1
]))
context
[
'is_exit'
]
=
True
return
epoch_id
%
epoch_interval
==
0
def
save_inference_model
():
name
=
"runner."
+
self
.
_runner_name
+
"."
save_interval
=
int
(
envs
.
get_global_env
(
name
+
"save_inference_interval"
,
-
1
))
if
not
need_save
(
epoch_id
,
save_interval
,
False
):
return
feed_varnames
=
envs
.
get_global_env
(
name
+
"save_inference_feed_varnames"
,
[])
fetch_varnames
=
envs
.
get_global_env
(
name
+
"save_inference_fetch_varnames"
,
[])
if
feed_varnames
is
None
or
fetch_varnames
is
None
or
feed_varnames
==
""
or
fetch_varnames
==
""
or
\
len
(
feed_varnames
)
==
0
or
len
(
fetch_varnames
)
==
0
:
return
fetch_vars
=
[
fluid
.
default_main_program
().
global_block
().
vars
[
varname
]
for
varname
in
fetch_varnames
]
dirname
=
envs
.
get_global_env
(
name
+
"save_inference_path"
,
None
)
assert
dirname
is
not
None
dirname
=
os
.
path
.
join
(
dirname
,
str
(
epoch_id
))
if
is_fleet
:
fleet
.
save_inference_model
(
self
.
_exe
,
dirname
,
feed_varnames
,
fetch_vars
)
else
:
fluid
.
io
.
save_inference_model
(
dirname
,
feed_varnames
,
fetch_vars
,
self
.
_exe
)
def
save_persistables
():
name
=
"runner."
+
self
.
_runner_name
+
"."
save_interval
=
int
(
envs
.
get_global_env
(
name
+
"save_checkpoint_interval"
,
-
1
))
if
not
need_save
(
epoch_id
,
save_interval
,
False
):
return
dirname
=
envs
.
get_global_env
(
name
+
"save_checkpoint_path"
,
None
)
if
dirname
is
None
or
dirname
==
""
:
return
dirname
=
os
.
path
.
join
(
dirname
,
str
(
epoch_id
))
if
is_fleet
:
fleet
.
save_persistables
(
self
.
_exe
,
dirname
)
else
:
fluid
.
io
.
save_persistables
(
self
.
_exe
,
dirname
)
save_persistables
()
save_inference_model
()
core/trainers/transpiler_trainer.py
浏览文件 @
d889e3ec
...
...
@@ -119,6 +119,10 @@ class TranspileTrainer(Trainer):
pipe_cmd
=
"python {} {} {} {}"
.
format
(
reader
,
reader_class
,
state
,
self
.
_config_yaml
)
else
:
if
sparse_slots
is
None
:
sparse_slots
=
"#"
if
dense_slots
is
None
:
dense_slots
=
"#"
padding
=
envs
.
get_global_env
(
"padding"
,
0
,
namespace
)
pipe_cmd
=
"python {} {} {} {} {} {} {} {}"
.
format
(
reader
,
"slot"
,
"slot"
,
self
.
_config_yaml
,
namespace
,
\
...
...
core/utils/dataloader_instance.py
浏览文件 @
d889e3ec
...
...
@@ -14,13 +14,93 @@
from
__future__
import
print_function
import
os
from
paddlerec.core.utils.envs
import
lazy_instance_by_fliename
from
paddlerec.core.utils.envs
import
get_global_env
from
paddlerec.core.utils.envs
import
get_runtime_environ
from
paddlerec.core.reader
import
SlotReader
def
dataloader_by_name
(
readerclass
,
dataset_name
,
yaml_file
):
reader_class
=
lazy_instance_by_fliename
(
readerclass
,
"TrainReader"
)
name
=
"dataset."
+
dataset_name
+
"."
data_path
=
get_global_env
(
name
+
"data_path"
)
if
data_path
.
startswith
(
"paddlerec::"
):
package_base
=
get_runtime_environ
(
"PACKAGE_BASE"
)
assert
package_base
is
not
None
data_path
=
os
.
path
.
join
(
package_base
,
data_path
.
split
(
"::"
)[
1
])
files
=
[
str
(
data_path
)
+
"/%s"
%
x
for
x
in
os
.
listdir
(
data_path
)]
reader
=
reader_class
(
yaml_file
)
reader
.
init
()
def
gen_reader
():
for
file
in
files
:
with
open
(
file
,
'r'
)
as
f
:
for
line
in
f
:
line
=
line
.
rstrip
(
'
\n
'
)
iter
=
reader
.
generate_sample
(
line
)
for
parsed_line
in
iter
():
if
parsed_line
is
None
:
continue
else
:
values
=
[]
for
pased
in
parsed_line
:
values
.
append
(
pased
[
1
])
yield
values
def
gen_batch_reader
():
return
reader
.
generate_batch_from_trainfiles
(
files
)
if
hasattr
(
reader
,
'generate_batch_from_trainfiles'
):
return
gen_batch_reader
()
return
gen_reader
def
slotdataloader_by_name
(
readerclass
,
dataset_name
,
yaml_file
):
name
=
"dataset."
+
dataset_name
+
"."
reader_name
=
"SlotReader"
data_path
=
get_global_env
(
name
+
"data_path"
)
if
data_path
.
startswith
(
"paddlerec::"
):
package_base
=
get_runtime_environ
(
"PACKAGE_BASE"
)
assert
package_base
is
not
None
data_path
=
os
.
path
.
join
(
package_base
,
data_path
.
split
(
"::"
)[
1
])
files
=
[
str
(
data_path
)
+
"/%s"
%
x
for
x
in
os
.
listdir
(
data_path
)]
sparse
=
get_global_env
(
name
+
"sparse_slots"
,
"#"
)
if
sparse
==
""
:
sparse
=
"#"
dense
=
get_global_env
(
name
+
"dense_slots"
,
"#"
)
if
dense
==
""
:
dense
=
"#"
padding
=
get_global_env
(
name
+
"padding"
,
0
)
reader
=
SlotReader
(
yaml_file
)
reader
.
init
(
sparse
,
dense
,
int
(
padding
))
def
gen_reader
():
for
file
in
files
:
with
open
(
file
,
'r'
)
as
f
:
for
line
in
f
:
line
=
line
.
rstrip
(
'
\n
'
)
iter
=
reader
.
generate_sample
(
line
)
for
parsed_line
in
iter
():
if
parsed_line
is
None
:
continue
else
:
values
=
[]
for
pased
in
parsed_line
:
values
.
append
(
pased
[
1
])
yield
values
def
gen_batch_reader
():
return
reader
.
generate_batch_from_trainfiles
(
files
)
if
hasattr
(
reader
,
'generate_batch_from_trainfiles'
):
return
gen_batch_reader
()
return
gen_reader
def
dataloader
(
readerclass
,
train
,
yaml_file
):
if
train
==
"TRAIN"
:
reader_name
=
"TrainReader"
...
...
@@ -82,8 +162,12 @@ def slotdataloader(readerclass, train, yaml_file):
files
=
[
str
(
data_path
)
+
"/%s"
%
x
for
x
in
os
.
listdir
(
data_path
)]
sparse
=
get_global_env
(
"sparse_slots"
,
None
,
namespace
)
dense
=
get_global_env
(
"dense_slots"
,
None
,
namespace
)
sparse
=
get_global_env
(
"sparse_slots"
,
"#"
,
namespace
)
if
sparse
==
""
:
sparse
=
"#"
dense
=
get_global_env
(
"dense_slots"
,
"#"
,
namespace
)
if
dense
==
""
:
dense
=
"#"
padding
=
get_global_env
(
"padding"
,
0
,
namespace
)
reader
=
SlotReader
(
yaml_file
)
reader
.
init
(
sparse
,
dense
,
int
(
padding
))
...
...
core/utils/dataset_instance.py
浏览文件 @
d889e3ec
...
...
@@ -32,8 +32,8 @@ elif sys.argv[2].upper() == "EVALUATE":
else
:
reader_name
=
"SlotReader"
namespace
=
sys
.
argv
[
4
]
sparse_slots
=
sys
.
argv
[
5
].
replace
(
"
#
"
,
" "
)
dense_slots
=
sys
.
argv
[
6
].
replace
(
"
#
"
,
" "
)
sparse_slots
=
sys
.
argv
[
5
].
replace
(
"
?
"
,
" "
)
dense_slots
=
sys
.
argv
[
6
].
replace
(
"
?
"
,
" "
)
padding
=
int
(
sys
.
argv
[
7
])
yaml_abs_path
=
sys
.
argv
[
3
]
...
...
core/utils/envs.py
浏览文件 @
d889e3ec
...
...
@@ -68,12 +68,20 @@ def set_global_envs(envs):
nests
=
copy
.
deepcopy
(
namespace_nests
)
nests
.
append
(
k
)
fatten_env_namespace
(
nests
,
v
)
elif
(
k
==
"dataset"
or
k
==
"phase"
or
k
==
"runner"
)
and
isinstance
(
v
,
list
):
for
i
in
v
:
if
i
.
get
(
"name"
)
is
None
:
raise
ValueError
(
"name must be in dataset list "
,
v
)
nests
=
copy
.
deepcopy
(
namespace_nests
)
nests
.
append
(
k
)
nests
.
append
(
i
[
"name"
])
fatten_env_namespace
(
nests
,
i
)
else
:
global_k
=
"."
.
join
(
namespace_nests
+
[
k
])
global_envs
[
global_k
]
=
v
for
k
,
v
in
envs
.
items
():
fatten_env_namespace
([
k
],
v
)
fatten_env_namespace
([],
envs
)
def
get_global_env
(
env_name
,
default_value
=
None
,
namespace
=
None
):
...
...
@@ -106,7 +114,7 @@ def windows_path_converter(path):
def
update_workspace
():
workspace
=
global_envs
.
get
(
"
train.workspace"
,
None
)
workspace
=
global_envs
.
get
(
"
workspace"
)
if
not
workspace
:
return
workspace
=
path_adapter
(
workspace
)
...
...
doc/yaml.md
0 → 100644
浏览文件 @
d889e3ec
```
# 全局配置
debug: false
workspace: "."
# 用户可以配多个dataset,exector里不同阶段可以用不同的dataset
dataset:
- name: sample_1
type: DataLoader #或者QueueDataset
batch_size: 5
data_path: "{workspace}/data/train"
# 用户自定义reader
data_converter: "{workspace}/rsc15_reader.py"
- name: sample_2
type: QueueDataset #或者DataLoader
batch_size: 5
data_path: "{workspace}/data/train"
# 用户可以配置sparse_slots和dense_slots,无需再定义data_converter
sparse_slots: "click ins_weight 6001 6002 6003 6005 6006 6007 6008 6009"
dense_slots: "readlist:9"
#示例一,用户自定义参数,用于组网配置
hyper_parameters:
#优化器
optimizer:
class: Adam
learning_rate: 0.001
strategy: "{workspace}/conf/config_fleet.py"
# 用户自定义配置
vocab_size: 1000
hid_size: 100
my_key1: 233
my_key2: 0.1
mode: runner1
runner:
- name: runner1 # 示例一,train
trainer_class: single_train
epochs: 10
device: cpu
init_model_path: ""
save_checkpoint_interval: 2
save_inference_interval: 4
# 下面是保存模型路径配置
save_checkpoint_path: "xxxx"
save_inference_path: "xxxx"
- name: runner2 # 示例二,infer
trainer_class: single_train
epochs: 1
device: cpu
init_model_path: "afs:/xxx/xxx"
phase:
- name: phase1
model: "{workspace}/model.py"
dataset_name: sample_1
thread_num: 1
```
models/rank/dnn/config.yaml
浏览文件 @
d889e3ec
...
...
@@ -12,39 +12,72 @@
# See the License for the specific language governing permissions and
# limitations under the License.
train
:
epochs
:
10
engine
:
single
workspace
:
"
paddlerec.models.rank.dnn"
# workspace
workspace
:
"
paddlerec.models.rank.dnn"
trainer
:
# for cluster training
strategy
:
"
async"
# list of dataset
dataset
:
-
name
:
dataset_train
# name of dataset to distinguish different datasets
batch_size
:
2
type
:
DataLoader
# or QueueDataset
data_path
:
"
{workspace}/data/sample_data/train"
sparse_slots
:
"
click
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26"
dense_slots
:
"
dense_var:13"
-
name
:
dataset_infer
# name
batch_size
:
2
type
:
DataLoader
# or QueueDataset
data_path
:
"
{workspace}/data/sample_data/train"
sparse_slots
:
"
click
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26"
dense_slots
:
"
dense_var:13"
reader
:
batch_size
:
2
train_data_path
:
"
{workspace}/data/sample_data/train"
reader_debug_mode
:
False
sparse_slots
:
"
click
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26"
dense_slots
:
"
dense_var:13"
# hyper parameters of user-defined network
hyper_parameters
:
# optimizer config
optimizer
:
class
:
Adam
learning_rate
:
0.001
strategy
:
async
# user-defined <key, value> pairs
sparse_inputs_slots
:
27
sparse_feature_number
:
1000001
sparse_feature_dim
:
9
dense_input_dim
:
13
fc_sizes
:
[
512
,
256
,
128
,
32
]
model
:
models
:
"
{workspace}/model.py"
hyper_parameters
:
sparse_inputs_slots
:
27
sparse_feature_number
:
1000001
sparse_feature_dim
:
9
dense_input_dim
:
13
fc_sizes
:
[
512
,
256
,
128
,
32
]
learning_rate
:
0.001
optimizer
:
adam
# select runner by name
mode
:
runner1
# config of each runner.
# runner is a kind of paddle training class, which wraps the train/infer process.
runner
:
-
name
:
runner1
class
:
single_train
# num of epochs
epochs
:
10
# device to run training or infer
device
:
cpu
save_checkpoint_interval
:
2
# save model interval of epochs
save_inference_interval
:
4
# save inference
save_checkpoint_path
:
"
increment"
# save checkpoint path
save_inference_path
:
"
inference"
# save inference path
save_inference_feed_varnames
:
[]
# feed vars of save inference
save_inference_fetch_varnames
:
[]
# fetch vars of save inference
init_model_path
:
"
"
# load model path
print_interval
:
10
-
name
:
runner2
class
:
single_infer
# num of epochs
epochs
:
10
# device to run training or infer
device
:
cpu
init_model_path
:
"
increment/0"
# load model path
save
:
increment
:
dirname
:
"
increment"
epoch_interval
:
2
save_last
:
True
inference
:
dirname
:
"
inference"
epoch_interval
:
4
save_last
:
True
# runner will run all the phase in each epoch
phase
:
-
name
:
phase1
model
:
"
{workspace}/model.py"
# user-defined model
dataset_name
:
dataset_train
# select dataset by name
thread_num
:
1
#- name: phase2
# model: "{workspace}/model.py" # user-defined model
# dataset_name: dataset_infer # select dataset by name
# thread_num: 1
models/rank/dnn/model.py
浏览文件 @
d889e3ec
...
...
@@ -28,15 +28,15 @@ class Model(ModelBase):
self
.
is_distributed
=
True
if
envs
.
get_trainer
(
)
==
"CtrTrainer"
else
False
self
.
sparse_feature_number
=
envs
.
get_global_env
(
"hyper_parameters.sparse_feature_number"
,
None
,
self
.
_namespace
)
"hyper_parameters.sparse_feature_number"
)
self
.
sparse_feature_dim
=
envs
.
get_global_env
(
"hyper_parameters.sparse_feature_dim"
,
None
,
self
.
_namespace
)
"hyper_parameters.sparse_feature_dim"
)
self
.
learning_rate
=
envs
.
get_global_env
(
"hyper_parameters.learning_rate"
,
None
,
self
.
_namespace
)
"hyper_parameters.learning_rate"
)
def
net
(
self
,
input
,
is_infer
=
False
):
self
.
sparse_inputs
=
self
.
_sparse_data_var
[
1
:]
self
.
dense_input
=
self
.
_dense_data_var
[
0
]
self
.
dense_input
=
[]
#
self._dense_data_var[0]
self
.
label_input
=
self
.
_sparse_data_var
[
0
]
def
embedding_layer
(
input
):
...
...
@@ -52,12 +52,11 @@ class Model(ModelBase):
return
emb_sum
sparse_embed_seq
=
list
(
map
(
embedding_layer
,
self
.
sparse_inputs
))
concated
=
fluid
.
layers
.
concat
(
sparse_embed_seq
+
[
self
.
dense_input
],
axis
=
1
)
concated
=
fluid
.
layers
.
concat
(
sparse_embed_seq
,
axis
=
1
)
#
sparse_embed_seq + [self.dense_input], axis=1)
fcs
=
[
concated
]
hidden_layers
=
envs
.
get_global_env
(
"hyper_parameters.fc_sizes"
,
None
,
self
.
_namespace
)
hidden_layers
=
envs
.
get_global_env
(
"hyper_parameters.fc_sizes"
)
for
size
in
hidden_layers
:
output
=
fluid
.
layers
.
fc
(
...
...
@@ -78,16 +77,21 @@ class Model(ModelBase):
self
.
predict
=
predict
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
self
.
predict
,
label
=
self
.
label_input
)
avg_cost
=
fluid
.
layers
.
reduce_mean
(
cost
)
self
.
_cost
=
avg_cost
auc
,
batch_auc
,
_
=
fluid
.
layers
.
auc
(
input
=
self
.
predict
,
label
=
self
.
label_input
,
num_thresholds
=
2
**
12
,
slide_steps
=
20
)
if
is_infer
:
self
.
_infer_results
[
"AUC"
]
=
auc
self
.
_infer_results
[
"BATCH_AUC"
]
=
batch_auc
return
self
.
_metrics
[
"AUC"
]
=
auc
self
.
_metrics
[
"BATCH_AUC"
]
=
batch_auc
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
self
.
predict
,
label
=
self
.
label_input
)
avg_cost
=
fluid
.
layers
.
reduce_mean
(
cost
)
self
.
_cost
=
avg_cost
def
optimizer
(
self
):
optimizer
=
fluid
.
optimizer
.
Adam
(
self
.
learning_rate
,
lazy_mode
=
True
)
...
...
run.py
浏览文件 @
d889e3ec
...
...
@@ -18,7 +18,7 @@ import subprocess
import
argparse
import
tempfile
import
yaml
import
copy
from
paddlerec.core.factory
import
TrainerFactory
from
paddlerec.core.utils
import
envs
from
paddlerec.core.utils
import
util
...
...
@@ -27,8 +27,8 @@ engines = {}
device
=
[
"CPU"
,
"GPU"
]
clusters
=
[
"SINGLE"
,
"LOCAL_CLUSTER"
,
"CLUSTER"
]
engine_choices
=
[
"SINGLE
"
,
"LOCAL_CLUSTER"
,
"CLUSTER"
,
"TDM_SINGLE"
,
"TDM_LOCAL_CLUSTER
"
,
"TDM_
CLUST
ER"
"SINGLE
_TRAIN"
,
"LOCAL_CLUSTER"
,
"CLUSTER"
,
"TDM_SINGLE
"
,
"TDM_
LOCAL_CLUSTER"
,
"TDM_CLUSTER"
,
"SINGLE_INF
ER"
]
custom_model
=
[
'TDM'
]
model_name
=
""
...
...
@@ -38,35 +38,73 @@ def engine_registry():
engines
[
"TRANSPILER"
]
=
{}
engines
[
"PSLIB"
]
=
{}
engines
[
"TRANSPILER"
][
"SINGLE"
]
=
single_engine
engines
[
"TRANSPILER"
][
"SINGLE_TRAIN"
]
=
single_train_engine
engines
[
"TRANSPILER"
][
"SINGLE_INFER"
]
=
single_infer_engine
engines
[
"TRANSPILER"
][
"LOCAL_CLUSTER"
]
=
local_cluster_engine
engines
[
"TRANSPILER"
][
"CLUSTER"
]
=
cluster_engine
engines
[
"PSLIB"
][
"SINGLE"
]
=
local_mpi_engine
engines
[
"PSLIB"
][
"LOCAL_CLUSTER"
]
=
local_mpi_engine
engines
[
"PSLIB"
][
"CLUSTER"
]
=
cluster_mpi_engine
def
get_inters_from_yaml
(
file
,
filter
):
def
get_inters_from_yaml
(
file
,
filter
s
):
with
open
(
file
,
'r'
)
as
rb
:
_envs
=
yaml
.
load
(
rb
.
read
(),
Loader
=
yaml
.
FullLoader
)
flattens
=
envs
.
flatten_environs
(
_envs
)
inters
=
{}
for
k
,
v
in
flattens
.
items
():
if
k
.
startswith
(
filter
):
inters
[
k
]
=
v
for
f
in
filters
:
if
k
.
startswith
(
f
):
inters
[
k
]
=
v
return
inters
def
get_all_inters_from_yaml
(
file
,
filters
):
with
open
(
file
,
'r'
)
as
rb
:
_envs
=
yaml
.
load
(
rb
.
read
(),
Loader
=
yaml
.
FullLoader
)
all_flattens
=
{}
def
fatten_env_namespace
(
namespace_nests
,
local_envs
):
for
k
,
v
in
local_envs
.
items
():
if
isinstance
(
v
,
dict
):
nests
=
copy
.
deepcopy
(
namespace_nests
)
nests
.
append
(
k
)
fatten_env_namespace
(
nests
,
v
)
elif
(
k
==
"dataset"
or
k
==
"phase"
or
k
==
"runner"
)
and
isinstance
(
v
,
list
):
for
i
in
v
:
if
i
.
get
(
"name"
)
is
None
:
raise
ValueError
(
"name must be in dataset list "
,
v
)
nests
=
copy
.
deepcopy
(
namespace_nests
)
nests
.
append
(
k
)
nests
.
append
(
i
[
"name"
])
fatten_env_namespace
(
nests
,
i
)
else
:
global_k
=
"."
.
join
(
namespace_nests
+
[
k
])
all_flattens
[
global_k
]
=
v
fatten_env_namespace
([],
_envs
)
ret
=
{}
for
k
,
v
in
all_flattens
.
items
():
for
f
in
filters
:
if
k
.
startswith
(
f
):
ret
[
k
]
=
v
return
ret
def
get_engine
(
args
):
transpiler
=
get_transpiler
()
run_extras
=
get_inters_from_yaml
(
args
.
model
,
"train."
)
engine
=
run_extras
.
get
(
"train.engine"
,
"single"
)
with
open
(
args
.
model
,
'r'
)
as
rb
:
envs
=
yaml
.
load
(
rb
.
read
(),
Loader
=
yaml
.
FullLoader
)
run_extras
=
get_all_inters_from_yaml
(
args
.
model
,
[
"train."
,
"runner."
])
engine
=
run_extras
.
get
(
"train.engine"
,
None
)
if
engine
is
None
:
engine
=
run_extras
.
get
(
"runner."
+
envs
[
"mode"
]
+
".class"
,
None
)
if
engine
is
None
:
engine
=
"single_train"
engine
=
engine
.
upper
()
if
engine
not
in
engine_choices
:
raise
ValueError
(
"train.engin can not be chosen in {}"
.
format
(
engine_choices
))
...
...
@@ -117,15 +155,27 @@ def get_trainer_prefix(args):
return
""
def
single_engine
(
args
):
def
single_
train_
engine
(
args
):
trainer
=
get_trainer_prefix
(
args
)
+
"SingleTrainer"
single_envs
=
{}
single_envs
[
"train.trainer.trainer"
]
=
trainer
single_envs
[
"train.trainer.threads"
]
=
"2"
single_envs
[
"train.trainer.engine"
]
=
"single"
single_envs
[
"train.trainer.engine"
]
=
"single
_train
"
single_envs
[
"train.trainer.platform"
]
=
envs
.
get_platform
()
print
(
"use {} engine to run model: {}"
.
format
(
trainer
,
args
.
model
))
set_runtime_envs
(
single_envs
,
args
.
model
)
trainer
=
TrainerFactory
.
create
(
args
.
model
)
return
trainer
def
single_infer_engine
(
args
):
trainer
=
get_trainer_prefix
(
args
)
+
"SingleInfer"
single_envs
=
{}
single_envs
[
"train.trainer.trainer"
]
=
trainer
single_envs
[
"train.trainer.threads"
]
=
"2"
single_envs
[
"train.trainer.engine"
]
=
"single_infer"
single_envs
[
"train.trainer.platform"
]
=
envs
.
get_platform
()
print
(
"use {} engine to run model: {}"
.
format
(
trainer
,
args
.
model
))
set_runtime_envs
(
single_envs
,
args
.
model
)
trainer
=
TrainerFactory
.
create
(
args
.
model
)
return
trainer
...
...
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