Struct rust_bert::models::marian::MarianForConditionalGeneration
source · pub struct MarianForConditionalGeneration { /* private fields */ }Expand description
Marian Model for conditional generation
Marian model with a vocabulary decoding head It is made of the following blocks:
base_model:BartModelBase BART modellinear: Linear layer with bias tied to the weights of the token id embeddings
Implementations§
source§impl MarianForConditionalGeneration
impl MarianForConditionalGeneration
sourcepub fn new<'p, P>(p: P, config: &MarianConfig) -> MarianForConditionalGeneration
pub fn new<'p, P>(p: P, config: &MarianConfig) -> MarianForConditionalGeneration
Build a new MarianForConditionalGeneration
Arguments
p- Variable store path for the root of the BART modelconfig-MarianConfigobject defining the model architecturegeneration_mode- flag indicating if the model should run in generation mode (a decoder start token must then be provided)
Example
use rust_bert::marian::{MarianConfig, MarianForConditionalGeneration};
use rust_bert::Config;
use std::path::Path;
use tch::{nn, Device};
let config_path = Path::new("path/to/config.json");
let device = Device::Cpu;
let p = nn::VarStore::new(device);
let config = MarianConfig::from_file(config_path);
let model = MarianForConditionalGeneration::new(&p.root(), &config);sourcepub fn forward_t(
&self,
input_ids: Option<&Tensor>,
attention_mask: Option<&Tensor>,
encoder_outputs: Option<&Tensor>,
decoder_input_ids: Option<&Tensor>,
decoder_attention_mask: Option<&Tensor>,
old_layer_states: Option<Vec<(Option<LayerState>, Option<LayerState>)>>,
train: bool
) -> BartModelOutput
pub fn forward_t( &self, input_ids: Option<&Tensor>, attention_mask: Option<&Tensor>, encoder_outputs: Option<&Tensor>, decoder_input_ids: Option<&Tensor>, decoder_attention_mask: Option<&Tensor>, old_layer_states: Option<Vec<(Option<LayerState>, Option<LayerState>)>>, train: bool ) -> BartModelOutput
Forward pass through the model
Arguments
input_ids- Optional input tensor of shape (batch size, source_sequence_length). Must be provided when not running in generation modeattention_mask- Optional attention mask of shape (batch size, source_sequence_length) for the encoder positions. Positions with a mask with value 0 will be masked.encoder_outputs- Optional tuple made of a tensor of shape (batch size, source_sequence_length, encoder_hidden_dim) and optional vectors of tensors of length num_encoder_layers with shape (batch size, source_sequence_length, hidden_size). These correspond to the encoder last hidden state and optional hidden states/attention weights for encoder layers. When provided, the encoder hidden state will not be recalculated. Useful for generation tasks.decoder_input_ids- Optional input tensor of shape (batch size, target_sequence_length). Must be provided when running in generation mode (e.g. initialized with a BOS token)decoder_attention_mask- Optional attention mask of shape (batch size, target_sequence_length) for the decoder positions. Positions with a mask with value 0 will be masked.train- boolean flag to turn on/off the dropout layers in the model. Should be set to false for inference.
Returns
BartModelOutputcontaining:decoder_output-Tensorof shape (batch size, target_sequence_length, vocab_size) representing the logits for each vocabulary item and positioncache-(Option<Tensor>, Option<Vec<&LayerState, &LayerState>>)of length n_layer containing the encoder padding mask and past keys and values for both the self attention and the encoder cross attention of each layer of the decoder.all_decoder_hidden_states-Option<Vec<Tensor>>of length num_decoder_layers with shape (batch size, target_sequence_length, hidden_size)all_decoder_attentions-Option<Vec<Tensor>>of length num_decoder_layers with shape (batch size, target_sequence_length, hidden_size)
Example
use rust_bert::bart::BartConfig;
use rust_bert::marian::MarianForConditionalGeneration;
let (batch_size, source_sequence_length, target_sequence_length) = (64, 128, 56);
let input_tensor = Tensor::rand(&[batch_size, source_sequence_length], (Int64, device));
let target_tensor = Tensor::rand(&[batch_size, target_sequence_length], (Int64, device));
let encoder_attention_mask =
Tensor::ones(&[batch_size, source_sequence_length], (Int64, device));
let decoder_attention_mask =
Tensor::ones(&[batch_size, source_sequence_length], (Int64, device));
let model_output = no_grad(|| {
marian_model.forward_t(
Some(&input_tensor),
Some(&encoder_attention_mask),
None,
Some(&target_tensor),
Some(&decoder_attention_mask),
None,
false,
)
});pub fn encode( &self, input_ids: &Tensor, attention_mask: Option<&Tensor> ) -> Tensor
Auto Trait Implementations§
impl RefUnwindSafe for MarianForConditionalGeneration
impl Send for MarianForConditionalGeneration
impl !Sync for MarianForConditionalGeneration
impl Unpin for MarianForConditionalGeneration
impl UnwindSafe for MarianForConditionalGeneration
Blanket Implementations§
source§impl<T> BorrowMut<T> for Twhere
T: ?Sized,
impl<T> BorrowMut<T> for Twhere
T: ?Sized,
source§fn borrow_mut(&mut self) -> &mut T
fn borrow_mut(&mut self) -> &mut T
Mutably borrows from an owned value. Read more