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chenpangpang
transformers
Commits
b13abfa9
Commit
b13abfa9
authored
Dec 11, 2018
by
thomwolf
Browse files
add saving and loading model in examples
parent
270fa2f2
Changes
2
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2 changed files
with
20 additions
and
6 deletions
+20
-6
examples/run_classifier.py
examples/run_classifier.py
+11
-6
examples/run_squad.py
examples/run_squad.py
+9
-0
No files found.
examples/run_classifier.py
View file @
b13abfa9
...
...
@@ -487,8 +487,8 @@ def main():
len
(
train_examples
)
/
args
.
train_batch_size
/
args
.
gradient_accumulation_steps
*
args
.
num_train_epochs
)
# Prepare model
model
=
BertForSequenceClassification
.
from_pretrained
(
args
.
bert_model
,
cache_dir
=
PYTORCH_PRETRAINED_BERT_CACHE
/
'distributed_{}'
.
format
(
args
.
local_rank
)
)
cache_dir
=
PYTORCH_PRETRAINED_BERT_CACHE
/
'distributed_{}'
.
format
(
args
.
local_rank
)
# for distributed learning
model
=
BertForSequenceClassification
.
from_pretrained
(
args
.
bert_model
,
cache_dir
=
cache_dir
)
if
args
.
fp16
:
model
.
half
()
model
.
to
(
device
)
...
...
@@ -579,6 +579,15 @@ def main():
model
.
zero_grad
()
global_step
+=
1
# Save a trained model
model_to_save
=
model
.
module
if
hasattr
(
model
,
'module'
)
else
model
# Only save the model it-self
output_model_file
=
os
.
path
.
join
(
args
.
output_dir
,
"pytorch_model.bin"
)
torch
.
save
(
model_to_save
.
state_dict
(),
output_model_file
)
# Load a trained model that you have fine-tuned
model_state_dict
=
torch
.
load
(
output_model_file
)
model
=
BertForSequenceClassification
.
from_pretrained
(
args
.
bert_model
,
state_dict
=
model_state_dict
)
if
args
.
do_eval
and
(
args
.
local_rank
==
-
1
or
torch
.
distributed
.
get_rank
()
==
0
):
eval_examples
=
processor
.
get_dev_examples
(
args
.
data_dir
)
eval_features
=
convert_examples_to_features
(
...
...
@@ -626,10 +635,6 @@ def main():
'global_step'
:
global_step
,
'loss'
:
tr_loss
/
nb_tr_steps
}
model_to_save
=
model
.
module
if
hasattr
(
model
,
'module'
)
else
model
raise
NotImplementedError
# TODO add save of the configuration file and vocabulary file also ?
output_model_file
=
os
.
path
.
join
(
args
.
output_dir
,
"pytorch_model.bin"
)
torch
.
save
(
model_to_save
,
output_model_file
)
output_eval_file
=
os
.
path
.
join
(
args
.
output_dir
,
"eval_results.txt"
)
with
open
(
output_eval_file
,
"w"
)
as
writer
:
logger
.
info
(
"***** Eval results *****"
)
...
...
examples/run_squad.py
View file @
b13abfa9
...
...
@@ -933,6 +933,15 @@ def main():
model
.
zero_grad
()
global_step
+=
1
# Save a trained model
model_to_save
=
model
.
module
if
hasattr
(
model
,
'module'
)
else
model
# Only save the model it-self
output_model_file
=
os
.
path
.
join
(
args
.
output_dir
,
"pytorch_model.bin"
)
torch
.
save
(
model_to_save
.
state_dict
(),
output_model_file
)
# Load a trained model that you have fine-tuned
model_state_dict
=
torch
.
load
(
output_model_file
)
model
=
BertForQuestionAnswering
.
from_pretrained
(
args
.
bert_model
,
state_dict
=
model_state_dict
)
if
args
.
do_predict
and
(
args
.
local_rank
==
-
1
or
torch
.
distributed
.
get_rank
()
==
0
):
eval_examples
=
read_squad_examples
(
input_file
=
args
.
predict_file
,
is_training
=
False
)
...
...
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