use crate::common::dropout::Dropout;
use crate::common::embeddings::process_ids_embeddings_pair;
use crate::fnet::FNetConfig;
use crate::RustBertError;
use std::borrow::Borrow;
use tch::nn::{EmbeddingConfig, LayerNormConfig};
use tch::{nn, Kind, Tensor};
pub struct FNetEmbeddings {
word_embeddings: nn::Embedding,
position_embeddings: nn::Embedding,
token_type_embeddings: nn::Embedding,
projection: nn::Linear,
layer_norm: nn::LayerNorm,
dropout: Dropout,
}
impl FNetEmbeddings {
pub fn new<'p, P>(p: P, config: &FNetConfig) -> FNetEmbeddings
where
P: Borrow<nn::Path<'p>>,
{
let p = p.borrow();
let word_embeddings_config = EmbeddingConfig {
padding_idx: config.pad_token_id.unwrap_or(3),
..Default::default()
};
let word_embeddings = nn::embedding(
p / "word_embeddings",
config.vocab_size,
config.hidden_size,
word_embeddings_config,
);
let position_embeddings = nn::embedding(
p / "position_embeddings",
config.max_position_embeddings,
config.hidden_size,
Default::default(),
);
let token_type_embeddings = nn::embedding(
p / "token_type_embeddings",
config.type_vocab_size,
config.hidden_size,
Default::default(),
);
let layer_norm_config = LayerNormConfig {
eps: config.layer_norm_eps.unwrap_or(1e-12),
..Default::default()
};
let layer_norm =
nn::layer_norm(p / "LayerNorm", vec![config.hidden_size], layer_norm_config);
let projection = nn::linear(
p / "projection",
config.hidden_size,
config.hidden_size,
Default::default(),
);
let dropout = Dropout::new(config.hidden_dropout_prob);
FNetEmbeddings {
word_embeddings,
position_embeddings,
token_type_embeddings,
projection,
layer_norm,
dropout,
}
}
pub fn forward_t(
&self,
input_ids: Option<&Tensor>,
token_type_ids: Option<&Tensor>,
position_ids: Option<&Tensor>,
input_embeddings: Option<&Tensor>,
train: bool,
) -> Result<Tensor, RustBertError> {
let (calc_input_embeddings, input_shape, _) =
process_ids_embeddings_pair(input_ids, input_embeddings, &self.word_embeddings)?;
let input_embeddings =
input_embeddings.unwrap_or_else(|| calc_input_embeddings.as_ref().unwrap());
let calc_token_type_ids = if token_type_ids.is_none() {
Some(Tensor::zeros(
input_shape.as_slice(),
(Kind::Int64, input_embeddings.device()),
))
} else {
None
};
let token_type_embeddings = token_type_ids
.unwrap_or_else(|| calc_token_type_ids.as_ref().unwrap())
.apply(&self.token_type_embeddings);
let calc_position_ids = if position_ids.is_none() {
Some(Tensor::arange(
input_shape[1],
(Kind::Int64, input_embeddings.device()),
))
} else {
None
};
let position_embeddings = position_ids
.unwrap_or_else(|| calc_position_ids.as_ref().unwrap())
.apply(&self.position_embeddings);
let embeddings = input_embeddings + token_type_embeddings + position_embeddings;
Ok(embeddings
.apply(&self.layer_norm)
.apply(&self.projection)
.apply_t(&self.dropout, train))
}
}