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chenpangpang
transformers
Commits
c513415b
Commit
c513415b
authored
Aug 27, 2019
by
LysandreJik
Browse files
Dilbert tests from CommonTests
parent
778a263f
Changes
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pytorch_transformers/tests/modeling_common_test.py
pytorch_transformers/tests/modeling_common_test.py
+7
-0
pytorch_transformers/tests/modeling_dilbert_test.py
pytorch_transformers/tests/modeling_dilbert_test.py
+219
-0
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pytorch_transformers/tests/modeling_common_test.py
View file @
c513415b
...
@@ -49,6 +49,7 @@ class CommonTestCases:
...
@@ -49,6 +49,7 @@ class CommonTestCases:
test_torchscript
=
True
test_torchscript
=
True
test_pruning
=
True
test_pruning
=
True
test_resize_embeddings
=
True
test_resize_embeddings
=
True
test_head_masking
=
True
def
test_initialization
(
self
):
def
test_initialization
(
self
):
config
,
inputs_dict
=
self
.
model_tester
.
prepare_config_and_inputs_for_common
()
config
,
inputs_dict
=
self
.
model_tester
.
prepare_config_and_inputs_for_common
()
...
@@ -159,6 +160,9 @@ class CommonTestCases:
...
@@ -159,6 +160,9 @@ class CommonTestCases:
def
test_headmasking
(
self
):
def
test_headmasking
(
self
):
if
not
self
.
test_head_masking
:
return
config
,
inputs_dict
=
self
.
model_tester
.
prepare_config_and_inputs_for_common
()
config
,
inputs_dict
=
self
.
model_tester
.
prepare_config_and_inputs_for_common
()
config
.
output_attentions
=
True
config
.
output_attentions
=
True
...
@@ -282,6 +286,9 @@ class CommonTestCases:
...
@@ -282,6 +286,9 @@ class CommonTestCases:
self
.
assertTrue
(
models_equal
)
self
.
assertTrue
(
models_equal
)
def
test_tie_model_weights
(
self
):
def
test_tie_model_weights
(
self
):
if
not
self
.
test_torchscript
:
return
config
,
inputs_dict
=
self
.
model_tester
.
prepare_config_and_inputs_for_common
()
config
,
inputs_dict
=
self
.
model_tester
.
prepare_config_and_inputs_for_common
()
def
check_same_values
(
layer_1
,
layer_2
):
def
check_same_values
(
layer_1
,
layer_2
):
...
...
pytorch_transformers/tests/modeling_dilbert_test.py
0 → 100644
View file @
c513415b
# coding=utf-8
# Copyright 2018 The Google AI Language Team Authors.
#
# 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.
from
__future__
import
absolute_import
from
__future__
import
division
from
__future__
import
print_function
import
unittest
import
shutil
import
pytest
from
pytorch_transformers
import
(
DilBertConfig
,
DilBertModel
,
DilBertForMaskedLM
,
DilBertForQuestionAnswering
,
DilBertForSequenceClassification
)
from
pytorch_transformers.modeling_dilbert
import
DILBERT_PRETRAINED_MODEL_ARCHIVE_MAP
from
.modeling_common_test
import
(
CommonTestCases
,
ConfigTester
,
ids_tensor
)
class
DilBertModelTest
(
CommonTestCases
.
CommonModelTester
):
all_model_classes
=
(
DilBertModel
,
DilBertForMaskedLM
,
DilBertForQuestionAnswering
,
DilBertForSequenceClassification
)
test_pruning
=
False
test_torchscript
=
False
test_resize_embeddings
=
False
test_head_masking
=
False
class
DilBertModelTester
(
object
):
def
__init__
(
self
,
parent
,
batch_size
=
13
,
seq_length
=
7
,
is_training
=
True
,
use_input_mask
=
True
,
use_token_type_ids
=
False
,
use_labels
=
True
,
vocab_size
=
99
,
hidden_size
=
32
,
num_hidden_layers
=
5
,
num_attention_heads
=
4
,
intermediate_size
=
37
,
hidden_act
=
"gelu"
,
hidden_dropout_prob
=
0.1
,
attention_probs_dropout_prob
=
0.1
,
max_position_embeddings
=
512
,
type_vocab_size
=
16
,
type_sequence_label_size
=
2
,
initializer_range
=
0.02
,
num_labels
=
3
,
num_choices
=
4
,
scope
=
None
,
):
self
.
parent
=
parent
self
.
batch_size
=
batch_size
self
.
seq_length
=
seq_length
self
.
is_training
=
is_training
self
.
use_input_mask
=
use_input_mask
self
.
use_token_type_ids
=
use_token_type_ids
self
.
use_labels
=
use_labels
self
.
vocab_size
=
vocab_size
self
.
hidden_size
=
hidden_size
self
.
num_hidden_layers
=
num_hidden_layers
self
.
num_attention_heads
=
num_attention_heads
self
.
intermediate_size
=
intermediate_size
self
.
hidden_act
=
hidden_act
self
.
hidden_dropout_prob
=
hidden_dropout_prob
self
.
attention_probs_dropout_prob
=
attention_probs_dropout_prob
self
.
max_position_embeddings
=
max_position_embeddings
self
.
type_vocab_size
=
type_vocab_size
self
.
type_sequence_label_size
=
type_sequence_label_size
self
.
initializer_range
=
initializer_range
self
.
num_labels
=
num_labels
self
.
num_choices
=
num_choices
self
.
scope
=
scope
def
prepare_config_and_inputs
(
self
):
input_ids
=
ids_tensor
([
self
.
batch_size
,
self
.
seq_length
],
self
.
vocab_size
)
input_mask
=
None
if
self
.
use_input_mask
:
input_mask
=
ids_tensor
([
self
.
batch_size
,
self
.
seq_length
],
vocab_size
=
2
)
sequence_labels
=
None
token_labels
=
None
choice_labels
=
None
if
self
.
use_labels
:
sequence_labels
=
ids_tensor
([
self
.
batch_size
],
self
.
type_sequence_label_size
)
token_labels
=
ids_tensor
([
self
.
batch_size
,
self
.
seq_length
],
self
.
num_labels
)
choice_labels
=
ids_tensor
([
self
.
batch_size
],
self
.
num_choices
)
config
=
DilBertConfig
(
vocab_size_or_config_json_file
=
self
.
vocab_size
,
dim
=
self
.
hidden_size
,
n_layers
=
self
.
num_hidden_layers
,
n_heads
=
self
.
num_attention_heads
,
hidden_dim
=
self
.
intermediate_size
,
hidden_act
=
self
.
hidden_act
,
dropout
=
self
.
hidden_dropout_prob
,
attention_dropout
=
self
.
attention_probs_dropout_prob
,
max_position_embeddings
=
self
.
max_position_embeddings
,
initializer_range
=
self
.
initializer_range
)
return
config
,
input_ids
,
input_mask
,
sequence_labels
,
token_labels
,
choice_labels
def
check_loss_output
(
self
,
result
):
self
.
parent
.
assertListEqual
(
list
(
result
[
"loss"
].
size
()),
[])
def
create_and_check_dilbert_model
(
self
,
config
,
input_ids
,
input_mask
,
sequence_labels
,
token_labels
,
choice_labels
):
model
=
DilBertModel
(
config
=
config
)
model
.
eval
()
sequence_output
,
pooled_output
=
model
(
input_ids
,
input_mask
)
sequence_output
,
pooled_output
=
model
(
input_ids
)
result
=
{
"sequence_output"
:
sequence_output
,
"pooled_output"
:
pooled_output
,
}
self
.
parent
.
assertListEqual
(
list
(
result
[
"sequence_output"
].
size
()),
[
self
.
batch_size
,
self
.
seq_length
,
self
.
hidden_size
])
self
.
parent
.
assertListEqual
(
list
(
result
[
"pooled_output"
].
size
()),
[
self
.
batch_size
,
self
.
hidden_size
])
def
create_and_check_dilbert_for_masked_lm
(
self
,
config
,
input_ids
,
input_mask
,
sequence_labels
,
token_labels
,
choice_labels
):
model
=
DilBertForMaskedLM
(
config
=
config
)
model
.
eval
()
loss
,
prediction_scores
=
model
(
input_ids
,
input_mask
,
token_labels
)
result
=
{
"loss"
:
loss
,
"prediction_scores"
:
prediction_scores
,
}
self
.
parent
.
assertListEqual
(
list
(
result
[
"prediction_scores"
].
size
()),
[
self
.
batch_size
,
self
.
seq_length
,
self
.
vocab_size
])
self
.
check_loss_output
(
result
)
def
create_and_check_dilbert_for_question_answering
(
self
,
config
,
input_ids
,
input_mask
,
sequence_labels
,
token_labels
,
choice_labels
):
model
=
DilBertForQuestionAnswering
(
config
=
config
)
model
.
eval
()
loss
,
start_logits
,
end_logits
=
model
(
input_ids
,
input_mask
,
sequence_labels
,
sequence_labels
)
result
=
{
"loss"
:
loss
,
"start_logits"
:
start_logits
,
"end_logits"
:
end_logits
,
}
self
.
parent
.
assertListEqual
(
list
(
result
[
"start_logits"
].
size
()),
[
self
.
batch_size
,
self
.
seq_length
])
self
.
parent
.
assertListEqual
(
list
(
result
[
"end_logits"
].
size
()),
[
self
.
batch_size
,
self
.
seq_length
])
self
.
check_loss_output
(
result
)
def
create_and_check_dilbert_for_sequence_classification
(
self
,
config
,
input_ids
,
input_mask
,
sequence_labels
,
token_labels
,
choice_labels
):
config
.
num_labels
=
self
.
num_labels
model
=
DilBertForSequenceClassification
(
config
)
model
.
eval
()
loss
,
logits
=
model
(
input_ids
,
input_mask
,
sequence_labels
)
result
=
{
"loss"
:
loss
,
"logits"
:
logits
,
}
self
.
parent
.
assertListEqual
(
list
(
result
[
"logits"
].
size
()),
[
self
.
batch_size
,
self
.
num_labels
])
self
.
check_loss_output
(
result
)
def
prepare_config_and_inputs_for_common
(
self
):
config_and_inputs
=
self
.
prepare_config_and_inputs
()
(
config
,
input_ids
,
input_mask
,
sequence_labels
,
token_labels
,
choice_labels
)
=
config_and_inputs
inputs_dict
=
{
'input_ids'
:
input_ids
,
'attention_mask'
:
input_mask
}
return
config
,
inputs_dict
def
setUp
(
self
):
self
.
model_tester
=
DilBertModelTest
.
DilBertModelTester
(
self
)
self
.
config_tester
=
ConfigTester
(
self
,
config_class
=
DilBertConfig
,
dim
=
37
)
def
test_config
(
self
):
self
.
config_tester
.
run_common_tests
()
def
test_dilbert_model
(
self
):
config_and_inputs
=
self
.
model_tester
.
prepare_config_and_inputs
()
self
.
model_tester
.
create_and_check_dilbert_model
(
*
config_and_inputs
)
def
test_for_masked_lm
(
self
):
config_and_inputs
=
self
.
model_tester
.
prepare_config_and_inputs
()
self
.
model_tester
.
create_and_check_dilbert_for_masked_lm
(
*
config_and_inputs
)
def
test_for_question_answering
(
self
):
config_and_inputs
=
self
.
model_tester
.
prepare_config_and_inputs
()
self
.
model_tester
.
create_and_check_dilbert_for_question_answering
(
*
config_and_inputs
)
def
test_for_sequence_classification
(
self
):
config_and_inputs
=
self
.
model_tester
.
prepare_config_and_inputs
()
self
.
model_tester
.
create_and_check_dilbert_for_sequence_classification
(
*
config_and_inputs
)
# @pytest.mark.slow
# def test_model_from_pretrained(self):
# cache_dir = "/tmp/pytorch_transformers_test/"
# for model_name in list(DILBERT_PRETRAINED_MODEL_ARCHIVE_MAP.keys())[:1]:
# model = DilBertModel.from_pretrained(model_name, cache_dir=cache_dir)
# shutil.rmtree(cache_dir)
# self.assertIsNotNone(model)
if
__name__
==
"__main__"
:
unittest
.
main
()
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