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***************New March 28, 2020 ***************

Add a colab tutorial to run fine-tuning for GLUE datasets.

***************New January 7, 2020 ***************

v2 TF-Hub models should be working now with TF 1.15, as we removed the native Einsum op from the graph. See updated TF-Hub links below.

***************New December 30, 2019 ***************

Chinese models are released. We would like to thank CLUE team for providing the training data.

Version 2 of ALBERT models is released.

In this version, we apply 'no dropout', 'additional training data' and 'long training time' strategies to all models. We train ALBERT-base for 10M steps and other models for 3M steps.

The result comparison to the v1 models is as followings:

AverageSQuAD1.1SQuAD2.0MNLISST-2RACE
V2
ALBERT-base82.390.2/83.282.1/79.384.692.966.8
ALBERT-large85.791.8/85.284.9/81.886.594.975.2
ALBERT-xlarge87.992.9/86.487.9/84.187.995.480.7
ALBERT-xxlarge90.994.6/89.189.8/86.990.696.886.8
V1
ALBERT-base80.189.3/82.380.0/77.181.690.364.0
ALBERT-large82.490.6/83.982.3/79.483.591.768.5
ALBERT-xlarge85.592.5/86.186.1/83.186.492.474.8
ALBERT-xxlarge91.094.8/89.390.2/87.490.896.986.5

The comparison shows that for ALBERT-base, ALBERT-large, and ALBERT-xlarge, v2 is much better than v1, indicating the importance of applying the above three strategies. On average, ALBERT-xxlarge is slightly worse than the v1, because of the following two reasons: 1) Training additional 1.5 M steps (the only difference between these two models is training for 1.5M steps and 3M steps) did not lead to significant performance improvement. 2) For v1, we did a little bit hyperparameter search among the parameters sets given by BERT, Roberta, and XLnet. For v2, we simply adopt the parameters from v1 except for RACE, where we use a learning rate of 1e-5 and 0 ALBERT DR (dropout rate for ALBERT in finetuning). The original (v1) RACE hyperparameter will cause model divergence for v2 models. Given that the downstream tasks are sensitive to the fine-tuning hyperparameters, we should be careful about so called slight improvements.

ALBERT is "A Lite" version of BERT, a popular unsupervised language representation learning algorithm. ALBERT uses parameter-reduction techniques that allow for large-scale configurations, overcome previous memory limitations, and achieve better behavior with respect to model degradation.

For a technical description of the algorithm, see our paper:

ALBERT: A Lite BERT for Self-supervised Learning of Language Representations

Zhenzhong Lan, Mingda Chen, Sebastian Goodman, Kevin Gimpel, Piyush Sharma, Radu Soricut

Release Notes

Results

Performance of ALBERT on GLUE benchmark results using a single-model setup on dev:

ModelsMNLIQNLIQQPRTESSTMRPCCoLASTS
BERT-large86.692.391.370.493.288.060.690.0
XLNet-large89.893.991.883.895.689.263.691.8
RoBERTa-large90.294.792.286.696.490.968.092.4
ALBERT (1M)90.495.292.088.196.890.268.792.7
ALBERT (1.5M)90.895.392.289.296.990.971.493.0

Performance of ALBERT-xxl on SQuaD and RACE benchmarks using a single-model setup:

ModelsSQuAD1.1 devSQuAD2.0 devSQuAD2.0 testRACE test (Middle/High)
BERT-large90.9/84.181.8/79.089.1/86.372.0 (76.6/70.1)
XLNet94.5/89.088.8/86.189.1/86.381.8 (85.5/80.2)
RoBERTa94.6/88.989.4/86.589.8/86.883.2 (86.5/81.3)
UPM--89.9/87.2-
XLNet + SG-Net Verifier++--90.1/87.2-
ALBERT (1M)94.8/89.289.9/87.2-86.0 (88.2/85.1)
ALBERT (1.5M)94.8/89.390.2/87.490.9/88.186.5 (89.0/85.5)

Pre-trained Models

TF-Hub modules are available:

Example usage of the TF-Hub module in code:

tags = set()
if is_training:
  tags.add("train")
albert_module = hub.Module("https://tfhub.dev/google/albert_base/1", tags=tags,
                           trainable=True)
albert_inputs = dict(
    input_ids=input_ids,
    input_mask=input_mask,
    segment_ids=segment_ids)
albert_outputs = albert_module(
    inputs=albert_inputs,
    signature="tokens",
    as_dict=True)

# If you want to use the token-level output, use
# albert_outputs["sequence_output"] instead.
output_layer = albert_outputs["pooled_output"]

Most of the fine-tuning scripts in this repository support TF-hub modules via the --albert_hub_module_handle flag.

Pre-training Instructions

To pretrain ALBERT, use run_pretraining.py:

pip install -r albert/requirements.txt
python -m albert.run_pretraining \
    --input_file=... \
    --output_dir=... \
    --init_checkpoint=... \
    --albert_config_file=... \
    --do_train \
    --do_eval \
    --train_batch_size=4096 \
    --eval_batch_size=64 \
    --max_seq_length=512 \
    --max_predictions_per_seq=20 \
    --optimizer='lamb' \
    --learning_rate=.00176 \
    --num_train_steps=125000 \
    --num_warmup_steps=3125 \
    --save_checkpoints_steps=5000

Fine-tuning on GLUE

To fine-tune and evaluate a pretrained ALBERT on GLUE, please see the convenience script run_glue.sh.

Lower-level use cases may want to use the run_classifier.py script directly. The run_classifier.py script is used both for fine-tuning and evaluation of ALBERT on individual GLUE benchmark tasks, such as MNLI:

pip install -r albert/requirements.txt
python -m albert.run_classifier \
  --data_dir=... \
  --output_dir=... \
  --init_checkpoint=... \
  --albert_config_file=... \
  --spm_model_file=... \
  --do_train \
  --do_eval \
  --do_predict \
  --do_lower_case \
  --max_seq_length=128 \
  --optimizer=adamw \
  --task_name=MNLI \
  --warmup_step=1000 \
  --learning_rate=3e-5 \
  --train_step=10000 \
  --save_checkpoints_steps=100 \
  --train_batch_size=128

Good default flag values for each GLUE task can be found in run_glue.sh.

You can fine-tune the model starting from TF-Hub modules instead of raw checkpoints by setting e.g. --albert_hub_module_handle=https://tfhub.dev/google/albert_base/1 instead of --init_checkpoint.

You can find the spm_model_file in the tar files or under the assets folder of the tf-hub module. The name of the model file is "30k-clean.model".

After evaluation, the script should report some output like this:

***** Eval results *****
  global_step = ...
  loss = ...
  masked_lm_accuracy = ...
  masked_lm_loss = ...
  sentence_order_accuracy = ...
  sentence_order_loss = ...

Fine-tuning on SQuAD

To fine-tune and evaluate a pretrained model on SQuAD v1, use the run_squad_v1.py script:

pip install -r albert/requirements.txt
python -m albert.run_squad_v1 \
  --albert_config_file=... \
  --output_dir=... \
  --train_file=... \
  --predict_file=... \
  --train_feature_file=... \
  --predict_feature_file=... \
  --predict_feature_left_file=... \
  --init_checkpoint=... \
  --spm_model_file=... \
  --do_lower_case \
  --max_seq_length=384 \
  --doc_stride=128 \
  --max_query_length=64 \
  --do_train=true \
  --do_predict=true \
  --train_batch_size=48 \
  --predict_batch_size=8 \
  --learning_rate=5e-5 \
  --num_train_epochs=2.0 \
  --warmup_proportion=.1 \
  --save_checkpoints_steps=5000 \
  --n_best_size=20 \
  --max_answer_length=30

You can fine-tune the model starting from TF-Hub modules instead of raw checkpoints by setting e.g. --albert_hub_module_handle=https://tfhub.dev/google/albert_base/1 instead of --init_checkpoint.

For SQuAD v2, use the run_squad_v2.py script:

pip install -r albert/requirements.txt
python -m albert.run_squad_v2 \
  --albert_config_file=... \
  --output_dir=... \
  --train_file=... \
  --predict_file=... \
  --train_feature_file=... \
  --predict_feature_file=... \
  --predict_feature_left_file=... \
  --init_checkpoint=... \
  --spm_model_file=... \
  --do_lower_case \
  --max_seq_length=384 \
  --doc_stride=128 \
  --max_query_length=64 \
  --do_train \
  --do_predict \
  --train_batch_size=48 \
  --predict_batch_size=8 \
  --learning_rate=5e-5 \
  --num_train_epochs=2.0 \
  --warmup_proportion=.1 \
  --save_checkpoints_steps=5000 \
  --n_best_size=20 \
  --max_answer_length=30

You can fine-tune the model starting from TF-Hub modules instead of raw checkpoints by setting e.g. --albert_hub_module_handle=https://tfhub.dev/google/albert_base/1 instead of --init_checkpoint.

Fine-tuning on RACE

For RACE, use the run_race.py script:

pip install -r albert/requirements.txt
python -m albert.run_race \
  --albert_config_file=... \
  --output_dir=... \
  --train_file=... \
  --eval_file=... \
  --data_dir=...\
  --init_checkpoint=... \
  --spm_model_file=... \
  --max_seq_length=512 \
  --max_qa_length=128 \
  --do_train \
  --do_eval \
  --train_batch_size=32 \
  --eval_batch_size=8 \
  --learning_rate=1e-5 \
  --train_step=12000 \
  --warmup_step=1000 \
  --save_checkpoints_steps=100

You can fine-tune the model starting from TF-Hub modules instead of raw checkpoints by setting e.g. --albert_hub_module_handle=https://tfhub.dev/google/albert_base/1 instead of --init_checkpoint.

SentencePiece

Command for generating the sentence piece vocabulary:

spm_train \
--input all.txt --model_prefix=30k-clean --vocab_size=30000 --logtostderr
--pad_id=0 --unk_id=1 --eos_id=-1 --bos_id=-1
--control_symbols=[CLS],[SEP],[MASK]
--user_defined_symbols="(,),\",-,.,–,£,€"
--shuffle_input_sentence=true --input_sentence_size=10000000
--character_coverage=0.99995 --model_type=unigram