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//! # ALBERT: A Lite BERT for Self-supervised Learning of Language Representations (Lan et al.)

//!

//! Implementation of the ALBERT language model ([https://arxiv.org/abs/1909.11942](https://arxiv.org/abs/1909.11942) Lan, Chen, Goodman, Gimpel, Sharma, Soricut, 2019).

//! This model offers a greatly reduced memory footprint for similar effective size (number and size of layers). The computational cost remains however similar to the original BERT model.

//! The base model is implemented in the `albert::AlbertModel` struct. Several language model heads have also been implemented, including:

//! - Masked language model: `albert::AlbertForMaskedLM`

//! - Multiple choices: `albert:AlbertForMultipleChoice`

//! - Question answering: `albert::AlbertForQuestionAnswering`

//! - Sequence classification: `albert::AlbertForSequenceClassification`

//! - Token classification (e.g. NER, POS tagging): `albert::AlbertForTokenClassification`

//!

//! # Model set-up and pre-trained weights loading

//!

//! A full working example is provided in `examples/albert`, run with `cargo run --example albert`.

//! 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.

//! - `BertTokenizer` using a `vocab.txt` vocabulary

//! Pretrained models 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::albert::{AlbertConfig, AlbertForMaskedLM};

//! use rust_bert::resources::{LocalResource, Resource};

//! use rust_bert::Config;

//! use rust_tokenizers::tokenizer::AlbertTokenizer;

//!

//! 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 weights_resource = Resource::Local(LocalResource {

//!     local_path: PathBuf::from("path/to/model.ot"),

//! });

//! 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: AlbertTokenizer =

//!     AlbertTokenizer::from_file(vocab_path.to_str().unwrap(), true, true)?;

//! let config = AlbertConfig::from_file(config_path);

//! let bert_model = AlbertForMaskedLM::new(&vs.root(), &config);

//! vs.load(weights_path)?;

//!

//! # Ok(())

//! # }

//! ```


mod albert_model;
mod attention;
mod embeddings;
mod encoder;

pub use albert_model::{
    AlbertConfig, AlbertConfigResources, AlbertForMaskedLM, AlbertForMultipleChoice,
    AlbertForQuestionAnswering, AlbertForSequenceClassification, AlbertForTokenClassification,
    AlbertMaskedLMOutput, AlbertModel, AlbertModelResources, AlbertOutput,
    AlbertQuestionAnsweringOutput, AlbertSequenceClassificationOutput,
    AlbertTokenClassificationOutput, AlbertVocabResources,
};