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@@ -1,568 +0,0 @@
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-use candle_core::{DType, Device, Result, Tensor};
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-use candle_nn::{Embedding, VarBuilder};
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-use serde::Deserialize;
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-
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-pub const DTYPE: DType = DType::F32;
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-
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-#[derive(Debug, Clone, Copy, PartialEq, Eq, Deserialize)]
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-#[serde(rename_all = "lowercase")]
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-enum HiddenAct {
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- Gelu,
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- Relu,
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-}
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-
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-struct HiddenActLayer {
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- act: HiddenAct,
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- span: tracing::Span,
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-}
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-
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-impl HiddenActLayer {
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- fn new(act: HiddenAct) -> Self {
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- let span = tracing::span!(tracing::Level::TRACE, "hidden-act");
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- Self { act, span }
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- }
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-
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- fn forward(&self, xs: &Tensor) -> candle_core::Result<Tensor> {
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- let _enter = self.span.enter();
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- match self.act {
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- // TODO: The all-MiniLM-L6-v2 model uses "gelu" whereas this is "gelu_new", this explains some
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- // small numerical difference.
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- // https://github.com/huggingface/transformers/blob/cd4584e3c809bb9e1392ccd3fe38b40daba5519a/src/transformers/activations.py#L213
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- HiddenAct::Gelu => xs.gelu(),
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- HiddenAct::Relu => xs.relu(),
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- }
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- }
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-}
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-
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-#[derive(Debug)]
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-pub struct Linear {
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- weight: Tensor,
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- bias: Option<Tensor>,
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- span: tracing::Span,
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-}
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-
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-impl Linear {
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- pub fn new(weight: Tensor, bias: Option<Tensor>) -> Self {
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- let span = tracing::span!(tracing::Level::TRACE, "linear");
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- Self { weight, bias, span }
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- }
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-
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- pub fn forward(&self, x: &Tensor) -> candle_core::Result<Tensor> {
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- let _enter = self.span.enter();
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- let w = match x.dims() {
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- &[bsize, _, _] => self.weight.broadcast_left(bsize)?.t()?,
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- _ => self.weight.t()?,
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- };
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- let x = x.matmul(&w)?;
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- match &self.bias {
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- None => Ok(x),
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- Some(bias) => x.broadcast_add(bias),
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- }
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- }
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-}
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-
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-#[derive(Debug)]
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-pub struct LayerNorm {
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- weight: Tensor,
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- bias: Tensor,
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- eps: f64,
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- span: tracing::Span,
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-}
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-
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-impl LayerNorm {
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- pub fn new(weight: Tensor, bias: Tensor, eps: f64) -> Self {
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- let span = tracing::span!(tracing::Level::TRACE, "layer-norm");
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- Self {
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- weight,
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- bias,
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- eps,
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- span,
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- }
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- }
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-
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- pub fn forward(&self, x: &Tensor) -> Result<Tensor> {
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- let _enter = self.span.enter();
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- let x_dtype = x.dtype();
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- let internal_dtype = match x_dtype {
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- DType::F16 | DType::BF16 => DType::F32,
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- d => d,
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- };
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- let (_bsize, _seq_len, hidden_size) = x.dims3()?;
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- let x = x.to_dtype(internal_dtype)?;
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- let mean_x = (x.sum_keepdim(2)? / hidden_size as f64)?;
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- let x = x.broadcast_sub(&mean_x)?;
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- let norm_x = (x.sqr()?.sum_keepdim(2)? / hidden_size as f64)?;
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- let x_normed = x.broadcast_div(&(norm_x + self.eps)?.sqrt()?)?;
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- let x = x_normed
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- .to_dtype(x_dtype)?
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- .broadcast_mul(&self.weight)?
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- .broadcast_add(&self.bias)?;
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- Ok(x)
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- }
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-}
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-#[derive(Debug, Clone, Copy, PartialEq, Eq, Deserialize, Default)]
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-#[serde(rename_all = "lowercase")]
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-enum PositionEmbeddingType {
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- #[default]
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- Absolute,
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-}
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-
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-// https://github.com/huggingface/transformers/blob/6eedfa6dd15dc1e22a55ae036f681914e5a0d9a1/src/transformers/models/bert/configuration_bert.py#L1
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-#[derive(Debug, Clone, PartialEq, Deserialize)]
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-pub struct Config {
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- vocab_size: usize,
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- hidden_size: usize,
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- num_hidden_layers: usize,
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- num_attention_heads: usize,
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- intermediate_size: usize,
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- hidden_act: HiddenAct,
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- hidden_dropout_prob: f64,
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- max_position_embeddings: usize,
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- type_vocab_size: usize,
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- initializer_range: f64,
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- layer_norm_eps: f64,
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- pad_token_id: usize,
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- #[serde(default)]
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- position_embedding_type: PositionEmbeddingType,
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- #[serde(default)]
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- use_cache: bool,
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- classifier_dropout: Option<f64>,
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- model_type: Option<String>,
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-}
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-
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-impl Default for Config {
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- fn default() -> Self {
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- Self {
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- vocab_size: 30522,
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- hidden_size: 768,
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- num_hidden_layers: 12,
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- num_attention_heads: 12,
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- intermediate_size: 3072,
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- hidden_act: HiddenAct::Gelu,
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- hidden_dropout_prob: 0.1,
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- max_position_embeddings: 512,
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- type_vocab_size: 2,
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- initializer_range: 0.02,
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- layer_norm_eps: 1e-12,
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- pad_token_id: 0,
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- position_embedding_type: PositionEmbeddingType::Absolute,
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- use_cache: true,
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- classifier_dropout: None,
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- model_type: Some("bert".to_string()),
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- }
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- }
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-}
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-
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-impl Config {
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- fn _all_mini_lm_l6_v2() -> Self {
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- // https://huggingface.co/sentence-transformers/all-MiniLM-L6-v2/blob/main/config.json
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- Self {
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- vocab_size: 30522,
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- hidden_size: 384,
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- num_hidden_layers: 6,
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- num_attention_heads: 12,
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- intermediate_size: 1536,
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- hidden_act: HiddenAct::Gelu,
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- hidden_dropout_prob: 0.1,
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- max_position_embeddings: 512,
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- type_vocab_size: 2,
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- initializer_range: 0.02,
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- layer_norm_eps: 1e-12,
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- pad_token_id: 0,
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- position_embedding_type: PositionEmbeddingType::Absolute,
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- use_cache: true,
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- classifier_dropout: None,
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- model_type: Some("bert".to_string()),
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- }
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- }
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-}
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-
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-fn embedding(vocab_size: usize, hidden_size: usize, vb: VarBuilder) -> Result<Embedding> {
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- let embeddings = vb.get((vocab_size, hidden_size), "weight")?;
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- Ok(Embedding::new(embeddings, hidden_size))
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-}
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-
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-fn linear(size1: usize, size2: usize, vb: VarBuilder) -> Result<Linear> {
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- let weight = vb.get((size2, size1), "weight")?;
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- let bias = vb.get(size2, "bias")?;
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- Ok(Linear::new(weight, Some(bias)))
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-}
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-
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-struct Dropout {
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- #[allow(dead_code)]
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- pr: f64,
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-}
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-
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-impl Dropout {
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- fn new(pr: f64) -> Self {
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- Self { pr }
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- }
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-
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- fn forward(&self, x: &Tensor) -> Result<Tensor> {
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- // TODO
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- Ok(x.clone())
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- }
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-}
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-
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-fn layer_norm(size: usize, eps: f64, vb: VarBuilder) -> Result<LayerNorm> {
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- let (weight, bias) = match (vb.get(size, "weight"), vb.get(size, "bias")) {
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- (Ok(weight), Ok(bias)) => (weight, bias),
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- (Err(err), _) | (_, Err(err)) => {
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- if let (Ok(weight), Ok(bias)) = (vb.get(size, "gamma"), vb.get(size, "beta")) {
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- (weight, bias)
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- } else {
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- return Err(err);
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- }
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- }
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- };
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- Ok(LayerNorm::new(weight, bias, eps))
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-}
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-
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-// https://github.com/huggingface/transformers/blob/6eedfa6dd15dc1e22a55ae036f681914e5a0d9a1/src/transformers/models/bert/modeling_bert.py#L180
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-struct BertEmbeddings {
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- word_embeddings: Embedding,
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- position_embeddings: Option<Embedding>,
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- token_type_embeddings: Embedding,
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- layer_norm: LayerNorm,
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- dropout: Dropout,
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- span: tracing::Span,
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-}
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-
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-impl BertEmbeddings {
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- fn load(vb: VarBuilder, config: &Config) -> Result<Self> {
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- let word_embeddings = embedding(
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- config.vocab_size,
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- config.hidden_size,
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- vb.pp("word_embeddings"),
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- )?;
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- let position_embeddings = embedding(
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- config.max_position_embeddings,
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- config.hidden_size,
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- vb.pp("position_embeddings"),
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- )?;
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- let token_type_embeddings = embedding(
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- config.type_vocab_size,
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- config.hidden_size,
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- vb.pp("token_type_embeddings"),
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- )?;
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- let layer_norm = layer_norm(
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- config.hidden_size,
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- config.layer_norm_eps,
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- vb.pp("LayerNorm"),
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- )?;
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- Ok(Self {
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- word_embeddings,
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- position_embeddings: Some(position_embeddings),
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- token_type_embeddings,
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- layer_norm,
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- dropout: Dropout::new(config.hidden_dropout_prob),
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- span: tracing::span!(tracing::Level::TRACE, "embeddings"),
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- })
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- }
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-
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- fn forward(&self, input_ids: &Tensor, token_type_ids: &Tensor) -> Result<Tensor> {
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- let _enter = self.span.enter();
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- let (_bsize, seq_len) = input_ids.dims2()?;
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- let input_embeddings = self.word_embeddings.forward(input_ids)?;
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- let token_type_embeddings = self.token_type_embeddings.forward(token_type_ids)?;
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- let mut embeddings = (&input_embeddings + token_type_embeddings)?;
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- if let Some(position_embeddings) = &self.position_embeddings {
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- // TODO: Proper absolute positions?
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- let position_ids = (0..seq_len as u32).collect::<Vec<_>>();
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- let position_ids = Tensor::new(&position_ids[..], input_ids.device())?;
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- embeddings = embeddings.broadcast_add(&position_embeddings.forward(&position_ids)?)?
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- }
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- let embeddings = self.layer_norm.forward(&embeddings)?;
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- let embeddings = self.dropout.forward(&embeddings)?;
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- Ok(embeddings)
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- }
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-}
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-
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-struct BertSelfAttention {
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- query: Linear,
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- key: Linear,
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- value: Linear,
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- dropout: Dropout,
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- num_attention_heads: usize,
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- attention_head_size: usize,
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- span: tracing::Span,
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- span_softmax: tracing::Span,
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-}
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-
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-impl BertSelfAttention {
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- fn load(vb: VarBuilder, config: &Config) -> Result<Self> {
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- let attention_head_size = config.hidden_size / config.num_attention_heads;
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- let all_head_size = config.num_attention_heads * attention_head_size;
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- let dropout = Dropout::new(config.hidden_dropout_prob);
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- let hidden_size = config.hidden_size;
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- let query = linear(hidden_size, all_head_size, vb.pp("query"))?;
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- let value = linear(hidden_size, all_head_size, vb.pp("value"))?;
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- let key = linear(hidden_size, all_head_size, vb.pp("key"))?;
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- Ok(Self {
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- query,
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- key,
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- value,
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- dropout,
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- num_attention_heads: config.num_attention_heads,
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- attention_head_size,
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- span: tracing::span!(tracing::Level::TRACE, "self-attn"),
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- span_softmax: tracing::span!(tracing::Level::TRACE, "softmax"),
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- })
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- }
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-
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- fn transpose_for_scores(&self, xs: &Tensor) -> Result<Tensor> {
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- let mut new_x_shape = xs.dims().to_vec();
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- new_x_shape.pop();
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- new_x_shape.push(self.num_attention_heads);
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- new_x_shape.push(self.attention_head_size);
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- let xs = xs.reshape(new_x_shape.as_slice())?.transpose(1, 2)?;
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- xs.contiguous()
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- }
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-
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- fn forward(&self, hidden_states: &Tensor) -> Result<Tensor> {
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- let _enter = self.span.enter();
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- let query_layer = self.query.forward(hidden_states)?;
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- let key_layer = self.key.forward(hidden_states)?;
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- let value_layer = self.value.forward(hidden_states)?;
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-
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- let query_layer = self.transpose_for_scores(&query_layer)?;
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- let key_layer = self.transpose_for_scores(&key_layer)?;
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- let value_layer = self.transpose_for_scores(&value_layer)?;
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-
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- let attention_scores = query_layer.matmul(&key_layer.t()?)?;
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- let attention_scores = (attention_scores / (self.attention_head_size as f64).sqrt())?;
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- let attention_probs = {
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- let _enter_sm = self.span_softmax.enter();
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- candle_nn::ops::softmax(&attention_scores, candle_core::D::Minus1)?
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- };
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- let attention_probs = self.dropout.forward(&attention_probs)?;
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-
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- let context_layer = attention_probs.matmul(&value_layer)?;
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- let context_layer = context_layer.transpose(1, 2)?.contiguous()?;
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- let context_layer = context_layer.flatten_from(candle_core::D::Minus2)?;
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- Ok(context_layer)
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- }
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-}
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-
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-struct BertSelfOutput {
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- dense: Linear,
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- layer_norm: LayerNorm,
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- dropout: Dropout,
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- span: tracing::Span,
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-}
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-
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-impl BertSelfOutput {
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- fn load(vb: VarBuilder, config: &Config) -> Result<Self> {
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- let dense = linear(config.hidden_size, config.hidden_size, vb.pp("dense"))?;
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- let layer_norm = layer_norm(
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- config.hidden_size,
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- config.layer_norm_eps,
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- vb.pp("LayerNorm"),
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- )?;
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- let dropout = Dropout::new(config.hidden_dropout_prob);
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- Ok(Self {
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- dense,
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- layer_norm,
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- dropout,
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- span: tracing::span!(tracing::Level::TRACE, "self-out"),
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- })
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- }
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-
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- fn forward(&self, hidden_states: &Tensor, input_tensor: &Tensor) -> Result<Tensor> {
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- let _enter = self.span.enter();
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- let hidden_states = self.dense.forward(hidden_states)?;
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- let hidden_states = self.dropout.forward(&hidden_states)?;
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- self.layer_norm.forward(&(hidden_states + input_tensor)?)
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- }
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-}
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-
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-// https://github.com/huggingface/transformers/blob/6eedfa6dd15dc1e22a55ae036f681914e5a0d9a1/src/transformers/models/bert/modeling_bert.py#L392
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-struct BertAttention {
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- self_attention: BertSelfAttention,
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- self_output: BertSelfOutput,
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- span: tracing::Span,
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-}
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-
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-impl BertAttention {
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- fn load(vb: VarBuilder, config: &Config) -> Result<Self> {
|
|
|
- let self_attention = BertSelfAttention::load(vb.pp("self"), config)?;
|
|
|
- let self_output = BertSelfOutput::load(vb.pp("output"), config)?;
|
|
|
- Ok(Self {
|
|
|
- self_attention,
|
|
|
- self_output,
|
|
|
- span: tracing::span!(tracing::Level::TRACE, "attn"),
|
|
|
- })
|
|
|
- }
|
|
|
-
|
|
|
- fn forward(&self, hidden_states: &Tensor) -> Result<Tensor> {
|
|
|
- let _enter = self.span.enter();
|
|
|
- let self_outputs = self.self_attention.forward(hidden_states)?;
|
|
|
- let attention_output = self.self_output.forward(&self_outputs, hidden_states)?;
|
|
|
- Ok(attention_output)
|
|
|
- }
|
|
|
-}
|
|
|
-
|
|
|
-// https://github.com/huggingface/transformers/blob/6eedfa6dd15dc1e22a55ae036f681914e5a0d9a1/src/transformers/models/bert/modeling_bert.py#L441
|
|
|
-struct BertIntermediate {
|
|
|
- dense: Linear,
|
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|
- intermediate_act: HiddenActLayer,
|
|
|
- span: tracing::Span,
|
|
|
-}
|
|
|
-
|
|
|
-impl BertIntermediate {
|
|
|
- fn load(vb: VarBuilder, config: &Config) -> Result<Self> {
|
|
|
- let dense = linear(config.hidden_size, config.intermediate_size, vb.pp("dense"))?;
|
|
|
- Ok(Self {
|
|
|
- dense,
|
|
|
- intermediate_act: HiddenActLayer::new(config.hidden_act),
|
|
|
- span: tracing::span!(tracing::Level::TRACE, "inter"),
|
|
|
- })
|
|
|
- }
|
|
|
-
|
|
|
- fn forward(&self, hidden_states: &Tensor) -> Result<Tensor> {
|
|
|
- let _enter = self.span.enter();
|
|
|
- let hidden_states = self.dense.forward(hidden_states)?;
|
|
|
- let ys = self.intermediate_act.forward(&hidden_states)?;
|
|
|
- Ok(ys)
|
|
|
- }
|
|
|
-}
|
|
|
-
|
|
|
-// https://github.com/huggingface/transformers/blob/6eedfa6dd15dc1e22a55ae036f681914e5a0d9a1/src/transformers/models/bert/modeling_bert.py#L456
|
|
|
-struct BertOutput {
|
|
|
- dense: Linear,
|
|
|
- layer_norm: LayerNorm,
|
|
|
- dropout: Dropout,
|
|
|
- span: tracing::Span,
|
|
|
-}
|
|
|
-
|
|
|
-impl BertOutput {
|
|
|
- fn load(vb: VarBuilder, config: &Config) -> Result<Self> {
|
|
|
- let dense = linear(config.intermediate_size, config.hidden_size, vb.pp("dense"))?;
|
|
|
- let layer_norm = layer_norm(
|
|
|
- config.hidden_size,
|
|
|
- config.layer_norm_eps,
|
|
|
- vb.pp("LayerNorm"),
|
|
|
- )?;
|
|
|
- let dropout = Dropout::new(config.hidden_dropout_prob);
|
|
|
- Ok(Self {
|
|
|
- dense,
|
|
|
- layer_norm,
|
|
|
- dropout,
|
|
|
- span: tracing::span!(tracing::Level::TRACE, "out"),
|
|
|
- })
|
|
|
- }
|
|
|
-
|
|
|
- fn forward(&self, hidden_states: &Tensor, input_tensor: &Tensor) -> Result<Tensor> {
|
|
|
- let _enter = self.span.enter();
|
|
|
- let hidden_states = self.dense.forward(hidden_states)?;
|
|
|
- let hidden_states = self.dropout.forward(&hidden_states)?;
|
|
|
- self.layer_norm.forward(&(hidden_states + input_tensor)?)
|
|
|
- }
|
|
|
-}
|
|
|
-
|
|
|
-// https://github.com/huggingface/transformers/blob/6eedfa6dd15dc1e22a55ae036f681914e5a0d9a1/src/transformers/models/bert/modeling_bert.py#L470
|
|
|
-struct BertLayer {
|
|
|
- attention: BertAttention,
|
|
|
- intermediate: BertIntermediate,
|
|
|
- output: BertOutput,
|
|
|
- span: tracing::Span,
|
|
|
-}
|
|
|
-
|
|
|
-impl BertLayer {
|
|
|
- fn load(vb: VarBuilder, config: &Config) -> Result<Self> {
|
|
|
- let attention = BertAttention::load(vb.pp("attention"), config)?;
|
|
|
- let intermediate = BertIntermediate::load(vb.pp("intermediate"), config)?;
|
|
|
- let output = BertOutput::load(vb.pp("output"), config)?;
|
|
|
- Ok(Self {
|
|
|
- attention,
|
|
|
- intermediate,
|
|
|
- output,
|
|
|
- span: tracing::span!(tracing::Level::TRACE, "layer"),
|
|
|
- })
|
|
|
- }
|
|
|
-
|
|
|
- fn forward(&self, hidden_states: &Tensor) -> Result<Tensor> {
|
|
|
- let _enter = self.span.enter();
|
|
|
- let attention_output = self.attention.forward(hidden_states)?;
|
|
|
- // TODO: Support cross-attention?
|
|
|
- // https://github.com/huggingface/transformers/blob/6eedfa6dd15dc1e22a55ae036f681914e5a0d9a1/src/transformers/models/bert/modeling_bert.py#L523
|
|
|
- // TODO: Support something similar to `apply_chunking_to_forward`?
|
|
|
- let intermediate_output = self.intermediate.forward(&attention_output)?;
|
|
|
- let layer_output = self
|
|
|
- .output
|
|
|
- .forward(&intermediate_output, &attention_output)?;
|
|
|
- Ok(layer_output)
|
|
|
- }
|
|
|
-}
|
|
|
-
|
|
|
-// https://github.com/huggingface/transformers/blob/6eedfa6dd15dc1e22a55ae036f681914e5a0d9a1/src/transformers/models/bert/modeling_bert.py#L556
|
|
|
-struct BertEncoder {
|
|
|
- layers: Vec<BertLayer>,
|
|
|
- span: tracing::Span,
|
|
|
-}
|
|
|
-
|
|
|
-impl BertEncoder {
|
|
|
- fn load(vb: VarBuilder, config: &Config) -> Result<Self> {
|
|
|
- let layers = (0..config.num_hidden_layers)
|
|
|
- .map(|index| BertLayer::load(vb.pp(&format!("layer.{index}")), config))
|
|
|
- .collect::<Result<Vec<_>>>()?;
|
|
|
- let span = tracing::span!(tracing::Level::TRACE, "encoder");
|
|
|
- Ok(BertEncoder { layers, span })
|
|
|
- }
|
|
|
-
|
|
|
- fn forward(&self, hidden_states: &Tensor) -> Result<Tensor> {
|
|
|
- let _enter = self.span.enter();
|
|
|
- let mut hidden_states = hidden_states.clone();
|
|
|
- // Use a loop rather than a fold as it's easier to modify when adding debug/...
|
|
|
- for layer in self.layers.iter() {
|
|
|
- hidden_states = layer.forward(&hidden_states)?
|
|
|
- }
|
|
|
- Ok(hidden_states)
|
|
|
- }
|
|
|
-}
|
|
|
-
|
|
|
-// https://github.com/huggingface/transformers/blob/6eedfa6dd15dc1e22a55ae036f681914e5a0d9a1/src/transformers/models/bert/modeling_bert.py#L874
|
|
|
-pub struct BertModel {
|
|
|
- embeddings: BertEmbeddings,
|
|
|
- encoder: BertEncoder,
|
|
|
- pub device: Device,
|
|
|
- span: tracing::Span,
|
|
|
-}
|
|
|
-
|
|
|
-impl BertModel {
|
|
|
- pub fn load(vb: VarBuilder, config: &Config) -> Result<Self> {
|
|
|
- let (embeddings, encoder) = match (
|
|
|
- BertEmbeddings::load(vb.pp("embeddings"), config),
|
|
|
- BertEncoder::load(vb.pp("encoder"), config),
|
|
|
- ) {
|
|
|
- (Ok(embeddings), Ok(encoder)) => (embeddings, encoder),
|
|
|
- (Err(err), _) | (_, Err(err)) => {
|
|
|
- if let Some(model_type) = &config.model_type {
|
|
|
- if let (Ok(embeddings), Ok(encoder)) = (
|
|
|
- BertEmbeddings::load(vb.pp(&format!("{model_type}.embeddings")), config),
|
|
|
- BertEncoder::load(vb.pp(&format!("{model_type}.encoder")), config),
|
|
|
- ) {
|
|
|
- (embeddings, encoder)
|
|
|
- } else {
|
|
|
- return Err(err);
|
|
|
- }
|
|
|
- } else {
|
|
|
- return Err(err);
|
|
|
- }
|
|
|
- }
|
|
|
- };
|
|
|
- Ok(Self {
|
|
|
- embeddings,
|
|
|
- encoder,
|
|
|
- device: vb.device().clone(),
|
|
|
- span: tracing::span!(tracing::Level::TRACE, "model"),
|
|
|
- })
|
|
|
- }
|
|
|
-
|
|
|
- pub fn forward(&self, input_ids: &Tensor, token_type_ids: &Tensor) -> Result<Tensor> {
|
|
|
- let _enter = self.span.enter();
|
|
|
- let embedding_output = self.embeddings.forward(input_ids, token_type_ids)?;
|
|
|
- let sequence_output = self.encoder.forward(&embedding_output)?;
|
|
|
- Ok(sequence_output)
|
|
|
- }
|
|
|
-}
|