Struct rust_bert::fnet::FNetForTokenClassification [−][src]
pub struct FNetForTokenClassification { /* fields omitted */ }Expand description
FNet for token classification (e.g. NER, POS)
Token-level classifier predicting a label for each token provided. Note that because of wordpiece tokenization, the labels predicted are not necessarily aligned with words in the sentence. It is made of the following blocks:
fnet: Base FNetdropout: Dropout layer before the last token-level predictions layerclassifier: Linear layer for token classification
Implementations
pub fn new<'p, P>(p: P, config: &FNetConfig) -> FNetForTokenClassification where
P: Borrow<Path<'p>>,
pub fn new<'p, P>(p: P, config: &FNetConfig) -> FNetForTokenClassification where
P: Borrow<Path<'p>>,
Build a new FNetForTokenClassification
Arguments
p- Variable store path for the root of the FNet modelconfig-FNetConfigobject defining the model architecture
Example
use rust_bert::fnet::{FNetConfig, FNetForTokenClassification};
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 = FNetConfig::from_file(config_path);
let fnet = FNetForTokenClassification::new(&p.root() / "fnet", &config);Forward pass through the model
Arguments
input_ids- Optional input tensor of shape (batch size, sequence_length). If None, pre-computed embeddings must be provided (seeinput_embeds)token_type_ids- Optional segment id of shape (batch size, sequence_length). Convention is value of 0 for the first sentence (incl. SEP) and 1 for the second sentence. If None set to 0.position_ids- Optional position ids of shape (batch size, sequence_length). If None, will be incremented from 0.input_embeds- Optional pre-computed input embeddings of shape (batch size, sequence_length, hidden_size). If None, input ids must be provided (seeinput_ids)train- boolean flag to turn on/off the dropout layers in the model. Should be set to false for inference.
Returns
FNetTokenClassificationOutputcontaining:logits-Tensorof shape (batch size, sequence_length, num_labels) containing the logits for each of the input tokens and classesall_hidden_states-Option<Vec<Tensor>>of length num_hidden_layers with shape (batch size, sequence_length, hidden_size)
Example
use rust_bert::fnet::{FNetConfig, FNetForTokenClassification};
let model = FNetForTokenClassification::new(&vs.root(), &config);
let (batch_size, sequence_length) = (64, 128);
let input_tensor = Tensor::rand(&[batch_size, sequence_length], (Int64, device));
let token_type_ids = Tensor::zeros(&[batch_size, sequence_length], (Int64, device));
let position_ids = Tensor::arange(sequence_length, (Int64, device))
.expand(&[batch_size, sequence_length], true);
let model_output = no_grad(|| {
model
.forward_t(
Some(&input_tensor),
Some(&token_type_ids),
Some(&position_ids),
None,
false,
)
.unwrap()
});Auto Trait Implementations
impl RefUnwindSafe for FNetForTokenClassification
impl Send for FNetForTokenClassification
impl !Sync for FNetForTokenClassification
impl Unpin for FNetForTokenClassification
impl UnwindSafe for FNetForTokenClassification
Blanket Implementations
Mutably borrows from an owned value. Read more
Instruments this type with the provided Span, returning an
Instrumented wrapper. Read more
type Output = T
type Output = T
Should always be Self
