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//! # RoBERTa: A Robustly Optimized BERT Pretraining Approach (Liu et al.) //! //! Implementation of the RoBERTa language model ([https://arxiv.org/abs/1907.11692](https://arxiv.org/abs/1907.11692) Liu, Ott, Goyal, Du, Joshi, Chen, Levy, Lewis, Zettlemoyer, Stoyanov, 2019). //! The base model is implemented in the `bert::BertModel` struct. Several language model heads have also been implemented, including: //! - Masked language model: `roberta::RobertaForMaskedLM` //! - Multiple choices: `roberta:RobertaForMultipleChoice` //! - Question answering: `roberta::RobertaForQuestionAnswering` //! - Sequence classification: `roberta::RobertaForSequenceClassification` //! - Token classification (e.g. NER, POS tagging): `roberta::RobertaForTokenClassification` //! //! # Model set-up and pre-trained weights loading //! //! A full working example is provided in `examples/robert.rs`, run with `cargo run --example roberta`. //! The example below illustrate a Masked language model example, the structure is similar for other models. //! 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. //! - `RobertaTokenizer` using a `vocab.txt` vocabulary and `merges.txt` 2-gram merges //! Pretrained models are available and can be downloaded using RemoteResources. //! //! ```no_run //!# fn main() -> failure::Fallible<()> { //!# //! use rust_tokenizers::RobertaTokenizer; //! use tch::{nn, Device}; //!# use std::path::PathBuf; //! use rust_bert::bert::BertConfig; //! use rust_bert::Config; //! use rust_bert::roberta::RobertaForMaskedLM; //! use rust_bert::resources::{Resource, download_resource, LocalResource}; //! //! let config_resource = Resource::Local(LocalResource { local_path: PathBuf::from("path/to/config.json")}); //! let vocab_resource = Resource::Local(LocalResource { local_path: PathBuf::from("path/to/vocab.txt")}); //! let merges_resource = Resource::Local(LocalResource { local_path: PathBuf::from("path/to/vocab.txt")}); //! let weights_resource = Resource::Local(LocalResource { local_path: PathBuf::from("path/to/model.ot")}); //! let config_path = download_resource(&config_resource)?; //! let vocab_path = download_resource(&vocab_resource)?; //! let merges_path = download_resource(&merges_resource)?; //! let weights_path = download_resource(&weights_resource)?; //! //! let device = Device::cuda_if_available(); //! let mut vs = nn::VarStore::new(device); //! let tokenizer: RobertaTokenizer = RobertaTokenizer::from_file(vocab_path.to_str().unwrap(), merges_path.to_str().unwrap(), true); //! let config = BertConfig::from_file(config_path); //! let bert_model = RobertaForMaskedLM::new(&vs.root(), &config); //! vs.load(weights_path)?; //! //!# Ok(()) //!# } //! ``` mod embeddings; mod roberta; pub use roberta::{RobertaModelResources, RobertaConfigResources, RobertaVocabResources, RobertaMergesResources, RobertaForMaskedLM, RobertaForMultipleChoice, RobertaForTokenClassification, RobertaForQuestionAnswering, RobertaForSequenceClassification}; pub use embeddings::RobertaEmbeddings;