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//! # MobileBERT (A Compact Task-agnostic BERT for Resource-Limited Devices) //! //! Implementation of the MobileBERT language model ([MobileBERT: A Compact Task-agnostic BERT for Resource-Limited Devices](https://arxiv.org/abs/2004.02984) Sun, Yu, Song, Liu, Yang, Zhou, 2020). //! The base model is implemented in the `mobilebert_model::MobileBertModel` struct. Several language model heads have also been implemented, including: //! - Multiple choices: `mobilebert_model:MobileBertForMultipleChoice` //! - Question answering: `mobilebert_model::MobileBertForQuestionAnswering` //! - Sequence classification: `mobilebert_model::MobileBertForSequenceClassification` //! - Token classification (e.g. NER, POS tagging): `mobilebert_model::MobileBertForTokenClassification`. //! //! # Model set-up and pre-trained weights loading //! //! A full working example (generation) is provided in `examples/mobilebert_masked_lm`, run with `cargo run --example mobilebert_masked_lm`. //! All models expect the following resources: //! - Configuration file expected to have a structure following the [Transformers library](https://github.com/huggingface/transformers) //! - Model weights are expected to have a structure and parameter names following the [Transformers library](https://github.com/huggingface/transformers). A conversion using the Python utility scripts is required to convert the `.bin` weights to the `.ot` format. //! - `BertTokenizer` using a `vocab.txt` vocabulary //! Pretrained models for a number of language pairs are available and can be downloaded using RemoteResources. //! //! ```no_run //! # fn main() -> anyhow::Result<()> { //! # //! use tch::{nn, Device}; //! # use std::path::PathBuf; //! use rust_bert::mobilebert::{ //! MobileBertConfig, MobileBertConfigResources, MobileBertForMaskedLM, //! MobileBertModelResources, MobileBertVocabResources, //! }; //! use rust_bert::resources::{RemoteResource, Resource}; //! use rust_bert::Config; //! use rust_tokenizers::tokenizer::BertTokenizer; //! //! let config_resource = Resource::Remote(RemoteResource::from_pretrained( //! MobileBertConfigResources::MOBILEBERT_UNCASED, //! )); //! let vocab_resource = Resource::Remote(RemoteResource::from_pretrained( //! MobileBertVocabResources::MOBILEBERT_UNCASED, //! )); //! let weights_resource = Resource::Remote(RemoteResource::from_pretrained( //! MobileBertModelResources::MOBILEBERT_UNCASED, //! )); //! let config_path = config_resource.get_local_path()?; //! let vocab_path = vocab_resource.get_local_path()?; //! let weights_path = weights_resource.get_local_path()?; //! let device = Device::cuda_if_available(); //! let mut vs = nn::VarStore::new(device); //! let tokenizer: BertTokenizer = //! BertTokenizer::from_file(vocab_path.to_str().unwrap(), true, true)?; //! let config = MobileBertConfig::from_file(config_path); //! let bert_model = MobileBertForMaskedLM::new(&vs.root(), &config); //! vs.load(weights_path)?; //! //! # Ok(()) //! # } //! ``` mod attention; mod embeddings; mod encoder; mod mobilebert_model; pub use mobilebert_model::{ MobileBertConfig, MobileBertConfigResources, MobileBertForMaskedLM, MobileBertForMultipleChoice, MobileBertForQuestionAnswering, MobileBertForSequenceClassification, MobileBertForTokenClassification, MobileBertModel, MobileBertModelResources, MobileBertVocabResources, NoNorm, NormalizationType, };