| language: en | |
| license: bsd | |
| datasets: | |
| - bookcorpus | |
| - wikipedia | |
| --- | |
| # SqueezeBERT pretrained model | |
| This model, `squeezebert-mnli`, has been pretrained for the English language using a masked language modeling (MLM) and Sentence Order Prediction (SOP) objective and finetuned on the [Multi-Genre Natural Language Inference (MNLI)](https://cims.nyu.edu/~sbowman/multinli/) dataset. | |
| SqueezeBERT was introduced in [this paper](https://arxiv.org/abs/2006.11316). This model is case-insensitive. The model architecture is similar to BERT-base, but with the pointwise fully-connected layers replaced with [grouped convolutions](https://blog.yani.io/filter-group-tutorial/). | |
| The authors found that SqueezeBERT is 4.3x faster than `bert-base-uncased` on a Google Pixel 3 smartphone. | |
| ## Pretraining | |
| ### Pretraining data | |
| - [BookCorpus](https://yknzhu.wixsite.com/mbweb), a dataset consisting of thousands of unpublished books | |
| - [English Wikipedia](https://en.wikipedia.org/wiki/English_Wikipedia) | |
| ### Pretraining procedure | |
| The model is pretrained using the Masked Language Model (MLM) and Sentence Order Prediction (SOP) tasks. | |
| (Author's note: If you decide to pretrain your own model, and you prefer to train with MLM only, that should work too.) | |
| From the SqueezeBERT paper: | |
| > We pretrain SqueezeBERT from scratch (without distillation) using the [LAMB](https://arxiv.org/abs/1904.00962) optimizer, and we employ the hyperparameters recommended by the LAMB authors: a global batch size of 8192, a learning rate of 2.5e-3, and a warmup proportion of 0.28. Following the LAMB paper's recommendations, we pretrain for 56k steps with a maximum sequence length of 128 and then for 6k steps with a maximum sequence length of 512. | |
| ## Finetuning | |
| The SqueezeBERT paper presents 2 approaches to finetuning the model: | |
| - "finetuning without bells and whistles" -- after pretraining the SqueezeBERT model, finetune it on each GLUE task | |
| - "finetuning with bells and whistles" -- after pretraining the SqueezeBERT model, finetune it on a MNLI with distillation from a teacher model. Then, use the MNLI-finetuned SqueezeBERT model as a student model to finetune on each of the other GLUE tasks (e.g. RTE, MRPC, …) with distillation from a task-specific teacher model. | |
| A detailed discussion of the hyperparameters used for finetuning is provided in the appendix of the [SqueezeBERT paper](https://arxiv.org/abs/2006.11316). | |
| Note that finetuning SqueezeBERT with distillation is not yet implemented in this repo. If the author (Forrest Iandola - forrest.dnn@gmail.com) gets enough encouragement from the user community, he will add example code to Transformers for finetuning SqueezeBERT with distillation. | |
| This model, `squeezebert/squeezebert-mnli`, is the "trained with bells and whistles" MNLI-finetuned SqueezeBERT model. | |
| ### How to finetune | |
| To try finetuning SqueezeBERT on the [MRPC](https://www.microsoft.com/en-us/download/details.aspx?id=52398) text classification task, you can run the following command: | |
| ``` | |
| ./utils/download_glue_data.py | |
| python examples/text-classification/run_glue.py \ | |
| --model_name_or_path squeezebert-base-headless \ | |
| --task_name mrpc \ | |
| --data_dir ./glue_data/MRPC \ | |
| --output_dir ./models/squeezebert_mrpc \ | |
| --overwrite_output_dir \ | |
| --do_train \ | |
| --do_eval \ | |
| --num_train_epochs 10 \ | |
| --learning_rate 3e-05 \ | |
| --per_device_train_batch_size 16 \ | |
| --save_steps 20000 | |
| ``` | |
| ## BibTeX entry and citation info | |
| ``` | |
| @article{2020_SqueezeBERT, | |
| author = {Forrest N. Iandola and Albert E. Shaw and Ravi Krishna and Kurt W. Keutzer}, | |
| title = {{SqueezeBERT}: What can computer vision teach NLP about efficient neural networks?}, | |
| journal = {arXiv:2006.11316}, | |
| year = {2020} | |
| } | |
| ``` | |