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ModelZoo
ResNet50_tensorflow
Commits
0b6e571a
Commit
0b6e571a
authored
Dec 01, 2021
by
Le Hou
Committed by
A. Unique TensorFlower
Dec 01, 2021
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Deprecate nlp/albert.
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official/legacy/nlp/albert/README.md
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# ALBERT (ALBERT: A Lite BERT for Self-supervised Learning of Language Representations)
**WARNING**
: This directory is deprecated.
See
`nlp/docs/MODEL_GARDEN.md`
for the new ALBERT implementation.
official/nlp/albert/__init__.py
→
official/
legacy/
nlp/albert/__init__.py
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official/nlp/albert/configs.py
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official/
legacy/
nlp/albert/configs.py
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# ALBERT (ALBERT: A Lite BERT for Self-supervised Learning of Language Representations)
**WARNING**
: We are on the way to deprecate this directory.
We will add documentation in
`nlp/docs`
to use the new code in
`nlp/modeling`
.
The academic paper which describes ALBERT in detail and provides full results on
a number of tasks can be found here: https://arxiv.org/abs/1909.11942.
This repository contains TensorFlow 2.x implementation for ALBERT.
## Contents
*
[
Contents
](
#contents
)
*
[
Pre-trained Models
](
#pre-trained-models
)
*
[
Restoring from Checkpoints
](
#restoring-from-checkpoints
)
*
[
Set Up
](
#set-up
)
*
[
Process Datasets
](
#process-datasets
)
*
[
Fine-tuning with BERT
](
#fine-tuning-with-bert
)
*
[
Cloud GPUs and TPUs
](
#cloud-gpus-and-tpus
)
*
[
Sentence and Sentence-pair Classification Tasks
](
#sentence-and-sentence-pair-classification-tasks
)
*
[
SQuAD 1.1
](
#squad-1.1
)
## Pre-trained Models
We released both checkpoints and tf.hub modules as the pretrained models for
fine-tuning. They are TF 2.x compatible and are converted from the ALBERT v2
checkpoints released in TF 1.x official ALBERT repository
[
google-research/albert
](
https://github.com/google-research/albert
)
in order to keep consistent with ALBERT paper.
Our current released checkpoints are exactly the same as TF 1.x official ALBERT
repository.
### Access to Pretrained Checkpoints
Pretrained checkpoints can be found in the following links:
**
Note: We implemented ALBERT using Keras functional-style networks in
[
nlp/modeling
](
../modeling
)
.
ALBERT V2 models compatible with TF 2.x checkpoints are:
**
*
**[`ALBERT V2 Base`](https://storage.googleapis.com/cloud-tpu-checkpoints/albert/checkpoints/albert_v2_base.tar.gz)**
:
12-layer, 768-hidden, 12-heads, 12M parameters
*
**[`ALBERT V2 Large`](https://storage.googleapis.com/cloud-tpu-checkpoints/albert/checkpoints/albert_v2_large.tar.gz)**
:
24-layer, 1024-hidden, 16-heads, 18M parameters
*
**[`ALBERT V2 XLarge`](https://storage.googleapis.com/cloud-tpu-checkpoints/albert/checkpoints/albert_v2_xlarge.tar.gz)**
:
24-layer, 2048-hidden, 32-heads, 60M parameters
*
**[`ALBERT V2 XXLarge`](https://storage.googleapis.com/cloud-tpu-checkpoints/albert/checkpoints/albert_v2_xxlarge.tar.gz)**
:
12-layer, 4096-hidden, 64-heads, 235M parameters
We recommend to host checkpoints on Google Cloud storage buckets when you use
Cloud GPU/TPU.
### Restoring from Checkpoints
`tf.train.Checkpoint`
is used to manage model checkpoints in TF 2. To restore
weights from provided pre-trained checkpoints, you can use the following code:
```
python
init_checkpoint
=
'the pretrained model checkpoint path.'
model
=
tf
.
keras
.
Model
()
# Bert pre-trained model as feature extractor.
checkpoint
=
tf
.
train
.
Checkpoint
(
model
=
model
)
checkpoint
.
restore
(
init_checkpoint
)
```
Checkpoints featuring native serialized Keras models
(i.e. model.load()/load_weights()) will be available soon.
### Access to Pretrained hub modules.
Pretrained tf.hub modules in TF 2.x SavedModel format can be found in the
following links:
*
**[`ALBERT V2 Base`](https://tfhub.dev/tensorflow/albert_en_base/1)**
:
12-layer, 768-hidden, 12-heads, 12M parameters
*
**[`ALBERT V2 Large`](https://tfhub.dev/tensorflow/albert_en_large/1)**
:
24-layer, 1024-hidden, 16-heads, 18M parameters
*
**[`ALBERT V2 XLarge`](https://tfhub.dev/tensorflow/albert_en_xlarge/1)**
:
24-layer, 2048-hidden, 32-heads, 60M parameters
*
**[`ALBERT V2 XXLarge`](https://tfhub.dev/tensorflow/albert_en_xxlarge/1)**
:
12-layer, 4096-hidden, 64-heads, 235M parameters
## Set Up
```
shell
export
PYTHONPATH
=
"
$PYTHONPATH
:/path/to/models"
```
Install
`tf-nightly`
to get latest updates:
```
shell
pip
install
tf-nightly-gpu
```
With TPU, GPU support is not necessary. First, you need to create a
`tf-nightly`
TPU with
[
ctpu tool
](
https://github.com/tensorflow/tpu/tree/master/tools/ctpu
)
:
```
shell
ctpu up
-name
<instance name>
--tf-version
=
”nightly”
```
Second, you need to install TF 2
`tf-nightly`
on your VM:
```
shell
pip
install
tf-nightly
```
Warning: More details TPU-specific set-up instructions and tutorial should come
along with official TF 2.x release for TPU. Note that this repo is not
officially supported by Google Cloud TPU team yet until TF 2.1 released.
## Process Datasets
### Pre-training
Pre-train ALBERT using TF2.x will come soon.
For now, please use
[
ALBERT research repo
](
https://github.com/google-research/ALBERT
)
to pretrain the model and convert the checkpoint to TF2.x compatible ones using
[
tf2_albert_encoder_checkpoint_converter.py
](
tf2_albert_encoder_checkpoint_converter.py
)
.
### Fine-tuning
To prepare the fine-tuning data for final model training, use the
[
`../data/create_finetuning_data.py`
](
../data/create_finetuning_data.py
)
script.
Note that different from BERT models that use word piece tokenzer,
ALBERT models employ sentence piece tokenizer. So the FLAG tokenizer_impl has
to be set to 'sentence_piece'.
Resulting datasets in
`tf_record`
format and training meta data should be later
passed to training or evaluation scripts. The task-specific arguments are
described in following sections:
*
GLUE
Users can download the
[
GLUE data
](
https://gluebenchmark.com/tasks
)
by running
[
this script
](
https://gist.github.com/W4ngatang/60c2bdb54d156a41194446737ce03e2e
)
and unpack it to some directory
`$GLUE_DIR`
.
```
shell
export
GLUE_DIR
=
~/glue
export
ALBERT_DIR
=
gs://cloud-tpu-checkpoints/albert/checkpoints/albert_v2_base
export
TASK_NAME
=
MNLI
export
OUTPUT_DIR
=
gs://some_bucket/datasets
python ../data/create_finetuning_data.py
\
--input_data_dir
=
${
GLUE_DIR
}
/
${
TASK_NAME
}
/
\
--sp_model_file
=
${
ALBERT_DIR
}
/30k-clean.model
\
--train_data_output_path
=
${
OUTPUT_DIR
}
/
${
TASK_NAME
}
_train.tf_record
\
--eval_data_output_path
=
${
OUTPUT_DIR
}
/
${
TASK_NAME
}
_eval.tf_record
\
--meta_data_file_path
=
${
OUTPUT_DIR
}
/
${
TASK_NAME
}
_meta_data
\
--fine_tuning_task_type
=
classification
--max_seq_length
=
128
\
--classification_task_name
=
${
TASK_NAME
}
\
--tokenization
=
SentencePiece
```
*
SQUAD
The
[
SQuAD website
](
https://rajpurkar.github.io/SQuAD-explorer/
)
contains
detailed information about the SQuAD datasets and evaluation.
The necessary files can be found here:
*
[
train-v1.1.json
](
https://rajpurkar.github.io/SQuAD-explorer/dataset/train-v1.1.json
)
*
[
dev-v1.1.json
](
https://rajpurkar.github.io/SQuAD-explorer/dataset/dev-v1.1.json
)
*
[
evaluate-v1.1.py
](
https://github.com/allenai/bi-att-flow/blob/master/squad/evaluate-v1.1.py
)
*
[
train-v2.0.json
](
https://rajpurkar.github.io/SQuAD-explorer/dataset/train-v2.0.json
)
*
[
dev-v2.0.json
](
https://rajpurkar.github.io/SQuAD-explorer/dataset/dev-v2.0.json
)
*
[
evaluate-v2.0.py
](
https://worksheets.codalab.org/rest/bundles/0x6b567e1cf2e041ec80d7098f031c5c9e/contents/blob/
)
```
shell
export
SQUAD_DIR
=
~/squad
export
SQUAD_VERSION
=
v1.1
export
ALBERT_DIR
=
gs://cloud-tpu-checkpoints/albert/checkpoints/albert_v2_base
export
OUTPUT_DIR
=
gs://some_bucket/datasets
python ../data/create_finetuning_data.py
\
--squad_data_file
=
${
SQUAD_DIR
}
/train-
${
SQUAD_VERSION
}
.json
\
--sp_model_file
=
${
ALBERT_DIR
}
/30k-clean.model
\
--train_data_output_path
=
${
OUTPUT_DIR
}
/squad_
${
SQUAD_VERSION
}
_train.tf_record
\
--meta_data_file_path
=
${
OUTPUT_DIR
}
/squad_
${
SQUAD_VERSION
}
_meta_data
\
--fine_tuning_task_type
=
squad
--max_seq_length
=
384
\
--tokenization
=
SentencePiece
```
## Fine-tuning with ALBERT
### Cloud GPUs and TPUs
*
Cloud Storage
The unzipped pre-trained model files can also be found in the Google Cloud
Storage folder
`gs://cloud-tpu-checkpoints/albert/checkpoints`
. For example:
```
shell
export
ALBERT_DIR
=
gs://cloud-tpu-checkpoints/albert/checkpoints/albert_v2_base
export
MODEL_DIR
=
gs://some_bucket/my_output_dir
```
Currently, users are able to access to
`tf-nightly`
TPUs and the following TPU
script should run with
`tf-nightly`
.
*
GPU -> TPU
Just add the following flags to
`run_classifier.py`
or
`run_squad.py`
:
```
shell
--distribution_strategy
=
tpu
--tpu
=
grpc://
${
TPU_IP_ADDRESS
}
:8470
```
### Sentence and Sentence-pair Classification Tasks
This example code fine-tunes
`albert_v2_base`
on the Microsoft Research
Paraphrase Corpus (MRPC) corpus, which only contains 3,600 examples and can
fine-tune in a few minutes on most GPUs.
We use the
`albert_v2_base`
as an example throughout the
workflow.
```
shell
export
ALBERT_DIR
=
gs://cloud-tpu-checkpoints/albert/checkpoints/albert_v2_base
export
MODEL_DIR
=
gs://some_bucket/my_output_dir
export
GLUE_DIR
=
gs://some_bucket/datasets
export
TASK
=
MRPC
python run_classifier.py
\
--mode
=
'train_and_eval'
\
--input_meta_data_path
=
${
GLUE_DIR
}
/
${
TASK
}
_meta_data
\
--train_data_path
=
${
GLUE_DIR
}
/
${
TASK
}
_train.tf_record
\
--eval_data_path
=
${
GLUE_DIR
}
/
${
TASK
}
_eval.tf_record
\
--bert_config_file
=
${
ALBERT_DIR
}
/albert_config.json
\
--init_checkpoint
=
${
ALBERT_DIR
}
/bert_model.ckpt
\
--train_batch_size
=
4
\
--eval_batch_size
=
4
\
--steps_per_loop
=
1
\
--learning_rate
=
2e-5
\
--num_train_epochs
=
3
\
--model_dir
=
${
MODEL_DIR
}
\
--distribution_strategy
=
mirrored
```
Alternatively, instead of specifying
`init_checkpoint`
, you can specify
`hub_module_url`
to employ a pretraind BERT hub module, e.g.,
` --hub_module_url=https://tfhub.dev/tensorflow/albert_en_base/1`
.
To use TPU, you only need to switch distribution strategy type to
`tpu`
with TPU
information and use remote storage for model checkpoints.
```
shell
export
ALBERT_DIR
=
gs://cloud-tpu-checkpoints/albert/checkpoints/albert_v2_base
export
TPU_IP_ADDRESS
=
'???'
export
MODEL_DIR
=
gs://some_bucket/my_output_dir
export
GLUE_DIR
=
gs://some_bucket/datasets
python run_classifier.py
\
--mode
=
'train_and_eval'
\
--input_meta_data_path
=
${
GLUE_DIR
}
/
${
TASK
}
_meta_data
\
--train_data_path
=
${
GLUE_DIR
}
/
${
TASK
}
_train.tf_record
\
--eval_data_path
=
${
GLUE_DIR
}
/
${
TASK
}
_eval.tf_record
\
--bert_config_file
=
$ALBERT_DIR
/albert_config.json
\
--init_checkpoint
=
$ALBERT_DIR
/bert_model.ckpt
\
--train_batch_size
=
32
\
--eval_batch_size
=
32
\
--learning_rate
=
2e-5
\
--num_train_epochs
=
3
\
--model_dir
=
${
MODEL_DIR
}
\
--distribution_strategy
=
tpu
\
--tpu
=
grpc://
${
TPU_IP_ADDRESS
}
:8470
```
### SQuAD 1.1
The Stanford Question Answering Dataset (SQuAD) is a popular question answering
benchmark dataset. See more in
[
SQuAD website
](
https://rajpurkar.github.io/SQuAD-explorer/
)
.
We use the
`albert_v2_base`
as an example throughout the
workflow.
```
shell
export
ALBERT_DIR
=
gs://cloud-tpu-checkpoints/albert/checkpoints/albert_v2_base
export
SQUAD_DIR
=
gs://some_bucket/datasets
export
MODEL_DIR
=
gs://some_bucket/my_output_dir
export
SQUAD_VERSION
=
v1.1
python run_squad.py
\
--input_meta_data_path
=
${
SQUAD_DIR
}
/squad_
${
SQUAD_VERSION
}
_meta_data
\
--train_data_path
=
${
SQUAD_DIR
}
/squad_
${
SQUAD_VERSION
}
_train.tf_record
\
--predict_file
=
${
SQUAD_DIR
}
/dev-v1.1.json
\
--sp_model_file
=
${
ALBERT_DIR
}
/30k-clean.model
\
--bert_config_file
=
$ALBERT_DIR
/albert_config.json
\
--init_checkpoint
=
$ALBERT_DIR
/bert_model.ckpt
\
--train_batch_size
=
4
\
--predict_batch_size
=
4
\
--learning_rate
=
8e-5
\
--num_train_epochs
=
2
\
--model_dir
=
${
MODEL_DIR
}
\
--distribution_strategy
=
mirrored
```
Similarily, you can replace
`init_checkpoint`
FLAGS with
`hub_module_url`
to
specify a hub module path.
To use TPU, you need switch distribution strategy type to
`tpu`
with TPU
information.
```
shell
export
ALBERT_DIR
=
gs://cloud-tpu-checkpoints/albert/checkpoints/albert_v2_base
export
TPU_IP_ADDRESS
=
'???'
export
MODEL_DIR
=
gs://some_bucket/my_output_dir
export
SQUAD_DIR
=
gs://some_bucket/datasets
export
SQUAD_VERSION
=
v1.1
python run_squad.py
\
--input_meta_data_path
=
${
SQUAD_DIR
}
/squad_
${
SQUAD_VERSION
}
_meta_data
\
--train_data_path
=
${
SQUAD_DIR
}
/squad_
${
SQUAD_VERSION
}
_train.tf_record
\
--predict_file
=
${
SQUAD_DIR
}
/dev-v1.1.json
\
--sp_model_file
=
${
ALBERT_DIR
}
/30k-clean.model
\
--bert_config_file
=
$ALBERT_DIR
/albert_config.json
\
--init_checkpoint
=
$ALBERT_DIR
/bert_model.ckpt
\
--train_batch_size
=
32
\
--learning_rate
=
8e-5
\
--num_train_epochs
=
2
\
--model_dir
=
${
MODEL_DIR
}
\
--distribution_strategy
=
tpu
\
--tpu
=
grpc://
${
TPU_IP_ADDRESS
}
:8470
```
The dev set predictions will be saved into a file called predictions.json in the
model_dir:
```
shell
python
$SQUAD_DIR
/evaluate-v1.1.py
$SQUAD_DIR
/dev-v1.1.json ./squad/predictions.json
```
official/nlp/albert/run_classifier.py
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# Copyright 2021 The TensorFlow 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.
"""ALBERT classification finetuning runner in tf2.x."""
import
json
import
os
# Import libraries
from
absl
import
app
from
absl
import
flags
from
absl
import
logging
import
tensorflow
as
tf
from
official.common
import
distribute_utils
from
official.nlp.albert
import
configs
as
albert_configs
from
official.nlp.bert
import
bert_models
from
official.nlp.bert
import
run_classifier
as
run_classifier_bert
FLAGS
=
flags
.
FLAGS
def
predict
(
strategy
,
albert_config
,
input_meta_data
,
predict_input_fn
):
"""Function outputs both the ground truth predictions as .tsv files."""
with
strategy
.
scope
():
classifier_model
=
bert_models
.
classifier_model
(
albert_config
,
input_meta_data
[
'num_labels'
])[
0
]
checkpoint
=
tf
.
train
.
Checkpoint
(
model
=
classifier_model
)
latest_checkpoint_file
=
(
FLAGS
.
predict_checkpoint_path
or
tf
.
train
.
latest_checkpoint
(
FLAGS
.
model_dir
))
assert
latest_checkpoint_file
logging
.
info
(
'Checkpoint file %s found and restoring from '
'checkpoint'
,
latest_checkpoint_file
)
checkpoint
.
restore
(
latest_checkpoint_file
).
assert_existing_objects_matched
()
preds
,
ground_truth
=
run_classifier_bert
.
get_predictions_and_labels
(
strategy
,
classifier_model
,
predict_input_fn
,
return_probs
=
True
)
output_predict_file
=
os
.
path
.
join
(
FLAGS
.
model_dir
,
'test_results.tsv'
)
with
tf
.
io
.
gfile
.
GFile
(
output_predict_file
,
'w'
)
as
writer
:
logging
.
info
(
'***** Predict results *****'
)
for
probabilities
in
preds
:
output_line
=
'
\t
'
.
join
(
str
(
class_probability
)
for
class_probability
in
probabilities
)
+
'
\n
'
writer
.
write
(
output_line
)
ground_truth_labels_file
=
os
.
path
.
join
(
FLAGS
.
model_dir
,
'output_labels.tsv'
)
with
tf
.
io
.
gfile
.
GFile
(
ground_truth_labels_file
,
'w'
)
as
writer
:
logging
.
info
(
'***** Ground truth results *****'
)
for
label
in
ground_truth
:
output_line
=
'
\t
'
.
join
(
str
(
label
))
+
'
\n
'
writer
.
write
(
output_line
)
return
def
main
(
_
):
with
tf
.
io
.
gfile
.
GFile
(
FLAGS
.
input_meta_data_path
,
'rb'
)
as
reader
:
input_meta_data
=
json
.
loads
(
reader
.
read
().
decode
(
'utf-8'
))
if
not
FLAGS
.
model_dir
:
FLAGS
.
model_dir
=
'/tmp/bert20/'
strategy
=
distribute_utils
.
get_distribution_strategy
(
distribution_strategy
=
FLAGS
.
distribution_strategy
,
num_gpus
=
FLAGS
.
num_gpus
,
tpu_address
=
FLAGS
.
tpu
)
max_seq_length
=
input_meta_data
[
'max_seq_length'
]
train_input_fn
=
run_classifier_bert
.
get_dataset_fn
(
FLAGS
.
train_data_path
,
max_seq_length
,
FLAGS
.
train_batch_size
,
is_training
=
True
)
eval_input_fn
=
run_classifier_bert
.
get_dataset_fn
(
FLAGS
.
eval_data_path
,
max_seq_length
,
FLAGS
.
eval_batch_size
,
is_training
=
False
)
albert_config
=
albert_configs
.
AlbertConfig
.
from_json_file
(
FLAGS
.
bert_config_file
)
if
FLAGS
.
mode
==
'train_and_eval'
:
run_classifier_bert
.
run_bert
(
strategy
,
input_meta_data
,
albert_config
,
train_input_fn
,
eval_input_fn
)
elif
FLAGS
.
mode
==
'predict'
:
predict
(
strategy
,
albert_config
,
input_meta_data
,
eval_input_fn
)
else
:
raise
ValueError
(
'Unsupported mode is specified: %s'
%
FLAGS
.
mode
)
return
if
__name__
==
'__main__'
:
flags
.
mark_flag_as_required
(
'bert_config_file'
)
flags
.
mark_flag_as_required
(
'input_meta_data_path'
)
flags
.
mark_flag_as_required
(
'model_dir'
)
app
.
run
(
main
)
official/nlp/albert/run_squad.py
deleted
100644 → 0
View file @
d9b70a17
# Copyright 2021 The TensorFlow 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.
"""Run ALBERT on SQuAD 1.1 and SQuAD 2.0 in TF 2.x."""
import
json
import
os
import
time
# Import libraries
from
absl
import
app
from
absl
import
flags
from
absl
import
logging
import
tensorflow
as
tf
from
official.common
import
distribute_utils
from
official.nlp.albert
import
configs
as
albert_configs
from
official.nlp.bert
import
run_squad_helper
from
official.nlp.bert
import
tokenization
from
official.nlp.data
import
squad_lib_sp
flags
.
DEFINE_string
(
'sp_model_file'
,
None
,
'The path to the sentence piece model. Used by sentence piece tokenizer '
'employed by ALBERT.'
)
# More flags can be found in run_squad_helper.
run_squad_helper
.
define_common_squad_flags
()
FLAGS
=
flags
.
FLAGS
def
train_squad
(
strategy
,
input_meta_data
,
custom_callbacks
=
None
,
run_eagerly
=
False
):
"""Runs bert squad training."""
bert_config
=
albert_configs
.
AlbertConfig
.
from_json_file
(
FLAGS
.
bert_config_file
)
run_squad_helper
.
train_squad
(
strategy
,
input_meta_data
,
bert_config
,
custom_callbacks
,
run_eagerly
)
def
predict_squad
(
strategy
,
input_meta_data
):
"""Makes predictions for the squad dataset."""
bert_config
=
albert_configs
.
AlbertConfig
.
from_json_file
(
FLAGS
.
bert_config_file
)
tokenizer
=
tokenization
.
FullSentencePieceTokenizer
(
sp_model_file
=
FLAGS
.
sp_model_file
)
run_squad_helper
.
predict_squad
(
strategy
,
input_meta_data
,
tokenizer
,
bert_config
,
squad_lib_sp
)
def
eval_squad
(
strategy
,
input_meta_data
):
"""Evaluate on the squad dataset."""
bert_config
=
albert_configs
.
AlbertConfig
.
from_json_file
(
FLAGS
.
bert_config_file
)
tokenizer
=
tokenization
.
FullSentencePieceTokenizer
(
sp_model_file
=
FLAGS
.
sp_model_file
)
eval_metrics
=
run_squad_helper
.
eval_squad
(
strategy
,
input_meta_data
,
tokenizer
,
bert_config
,
squad_lib_sp
)
return
eval_metrics
def
export_squad
(
model_export_path
,
input_meta_data
):
"""Exports a trained model as a `SavedModel` for inference.
Args:
model_export_path: a string specifying the path to the SavedModel directory.
input_meta_data: dictionary containing meta data about input and model.
Raises:
Export path is not specified, got an empty string or None.
"""
bert_config
=
albert_configs
.
AlbertConfig
.
from_json_file
(
FLAGS
.
bert_config_file
)
run_squad_helper
.
export_squad
(
model_export_path
,
input_meta_data
,
bert_config
)
def
main
(
_
):
with
tf
.
io
.
gfile
.
GFile
(
FLAGS
.
input_meta_data_path
,
'rb'
)
as
reader
:
input_meta_data
=
json
.
loads
(
reader
.
read
().
decode
(
'utf-8'
))
if
FLAGS
.
mode
==
'export_only'
:
export_squad
(
FLAGS
.
model_export_path
,
input_meta_data
)
return
# Configures cluster spec for multi-worker distribution strategy.
if
FLAGS
.
num_gpus
>
0
:
_
=
distribute_utils
.
configure_cluster
(
FLAGS
.
worker_hosts
,
FLAGS
.
task_index
)
strategy
=
distribute_utils
.
get_distribution_strategy
(
distribution_strategy
=
FLAGS
.
distribution_strategy
,
num_gpus
=
FLAGS
.
num_gpus
,
all_reduce_alg
=
FLAGS
.
all_reduce_alg
,
tpu_address
=
FLAGS
.
tpu
)
if
'train'
in
FLAGS
.
mode
:
train_squad
(
strategy
,
input_meta_data
,
run_eagerly
=
FLAGS
.
run_eagerly
)
if
'predict'
in
FLAGS
.
mode
:
predict_squad
(
strategy
,
input_meta_data
)
if
'eval'
in
FLAGS
.
mode
:
eval_metrics
=
eval_squad
(
strategy
,
input_meta_data
)
f1_score
=
eval_metrics
[
'final_f1'
]
logging
.
info
(
'SQuAD eval F1-score: %f'
,
f1_score
)
summary_dir
=
os
.
path
.
join
(
FLAGS
.
model_dir
,
'summaries'
,
'eval'
)
summary_writer
=
tf
.
summary
.
create_file_writer
(
summary_dir
)
with
summary_writer
.
as_default
():
# TODO(lehou): write to the correct step number.
tf
.
summary
.
scalar
(
'F1-score'
,
f1_score
,
step
=
0
)
summary_writer
.
flush
()
# Also write eval_metrics to json file.
squad_lib_sp
.
write_to_json_files
(
eval_metrics
,
os
.
path
.
join
(
summary_dir
,
'eval_metrics.json'
))
time
.
sleep
(
60
)
if
__name__
==
'__main__'
:
flags
.
mark_flag_as_required
(
'bert_config_file'
)
flags
.
mark_flag_as_required
(
'model_dir'
)
app
.
run
(
main
)
official/nlp/bert/bert_models.py
View file @
0b6e571a
...
@@ -17,9 +17,8 @@
...
@@ -17,9 +17,8 @@
import
gin
import
gin
import
tensorflow
as
tf
import
tensorflow
as
tf
import
tensorflow_hub
as
hub
import
tensorflow_hub
as
hub
from
official.legacy.nlp.albert
import
configs
as
albert_configs
from
official.modeling
import
tf_utils
from
official.modeling
import
tf_utils
from
official.nlp.albert
import
configs
as
albert_configs
from
official.nlp.bert
import
configs
from
official.nlp.bert
import
configs
from
official.nlp.modeling
import
models
from
official.nlp.modeling
import
models
from
official.nlp.modeling
import
networks
from
official.nlp.modeling
import
networks
...
...
official/nlp/tools/tf2_albert_encoder_checkpoint_converter.py
View file @
0b6e571a
...
@@ -23,8 +23,8 @@ from absl import app
...
@@ -23,8 +23,8 @@ from absl import app
from
absl
import
flags
from
absl
import
flags
import
tensorflow
as
tf
import
tensorflow
as
tf
from
official.legacy.nlp.albert
import
configs
from
official.modeling
import
tf_utils
from
official.modeling
import
tf_utils
from
official.nlp.albert
import
configs
from
official.nlp.bert
import
tf1_checkpoint_converter_lib
from
official.nlp.bert
import
tf1_checkpoint_converter_lib
from
official.nlp.modeling
import
models
from
official.nlp.modeling
import
models
from
official.nlp.modeling
import
networks
from
official.nlp.modeling
import
networks
...
...
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