use crate::longt5::encoder::LongT5Stack;
use crate::longt5::LayerState;
use crate::pipelines::common::{ModelType, TokenizerOption};
use crate::pipelines::generation_utils::private_generation_utils::{
PreparedInput, PrivateLanguageGenerator,
};
use crate::pipelines::generation_utils::{Cache, GenerateConfig, LMModelOutput, LanguageGenerator};
use crate::t5::{FeedForwardProj, T5Config, T5ModelOutput, TaskSpecificParams};
use crate::{Config, RustBertError};
use serde::{Deserialize, Serialize};
use std::borrow::Borrow;
use tch::nn::{embedding, LinearConfig};
use tch::{nn, Device, Tensor};
pub struct LongT5ModelResources;
pub struct LongT5ConfigResources;
pub struct LongT5VocabResources;
impl LongT5ModelResources {
pub const TGLOBAL_BASE_BOOK_SUMMARY: (&'static str, &'static str) = (
"longt5-tglobal-base-book-summary/model",
"https://huggingface.co/pszemraj/long-t5-tglobal-base-16384-book-summary/resolve/main/rust_model.ot",
);
}
impl LongT5ConfigResources {
pub const TGLOBAL_BASE_BOOK_SUMMARY: (&'static str, &'static str) = (
"longt5-tglobal-base-book-summary/config",
"https://huggingface.co/pszemraj/long-t5-tglobal-base-16384-book-summary/resolve/main/config.json",
);
}
impl LongT5VocabResources {
pub const TGLOBAL_BASE_BOOK_SUMMARY: (&'static str, &'static str) = (
"longt5-tglobal-base-book-summary/spiece",
"https://huggingface.co/pszemraj/long-t5-tglobal-base-16384-book-summary/resolve/main/spiece.model",
);
}
#[derive(Clone, Debug, Serialize, Deserialize, Copy)]
#[serde(rename_all = "kebab-case")]
pub enum EncoderAttentionType {
Local,
TransientGlobal,
}
#[derive(Debug, Serialize, Deserialize, Clone)]
pub struct LongT5Config {
pub dropout_rate: f64,
pub d_model: i64,
pub d_ff: i64,
pub d_kv: i64,
pub decoder_start_token_id: Option<i64>,
pub bos_token_id: Option<i64>,
pub eos_token_id: Option<i64>,
pub forced_bos_token_id: Option<i64>,
pub forced_eos_token_id: Option<i64>,
pub initializer_factor: f64,
pub is_encoder_decoder: Option<bool>,
pub layer_norm_epsilon: f64,
pub num_heads: i64,
pub num_layers: i64,
pub num_decoder_layers: Option<i64>,
pub local_radius: i64,
pub global_block_size: i64,
pub output_past: Option<bool>,
pub pad_token_id: Option<i64>,
pub relative_attention_num_buckets: i64,
pub relative_attention_max_distance: Option<i64>,
pub encoder_attention_type: Option<EncoderAttentionType>,
pub vocab_size: i64,
pub feed_forward_proj: Option<FeedForwardProj>,
pub tie_word_embeddings: Option<bool>,
pub task_specific_params: Option<TaskSpecificParams>,
pub output_attentions: Option<bool>,
pub output_hidden_states: Option<bool>,
}
impl Config for LongT5Config {}
impl Default for LongT5Config {
fn default() -> Self {
LongT5Config {
dropout_rate: 0.1,
d_model: 512,
d_ff: 2048,
d_kv: 64,
decoder_start_token_id: None,
bos_token_id: None,
eos_token_id: Some(1),
forced_bos_token_id: None,
forced_eos_token_id: None,
initializer_factor: 1.0,
is_encoder_decoder: None,
layer_norm_epsilon: 1e-6,
num_heads: 8,
num_layers: 6,
num_decoder_layers: None,
local_radius: 127,
global_block_size: 16,
output_past: None,
pad_token_id: Some(0),
relative_attention_num_buckets: 32,
relative_attention_max_distance: Some(128),
encoder_attention_type: Some(EncoderAttentionType::Local),
vocab_size: 32128,
feed_forward_proj: Some(FeedForwardProj::Relu),
tie_word_embeddings: None,
task_specific_params: None,
output_attentions: None,
output_hidden_states: None,
}
}
}
impl From<&LongT5Config> for T5Config {
fn from(val: &LongT5Config) -> T5Config {
T5Config {
dropout_rate: val.dropout_rate,
d_model: val.d_model,
d_ff: val.d_ff,
d_kv: val.d_kv,
decoder_start_token_id: val.decoder_start_token_id,
bos_token_id: None,
eos_token_id: val.eos_token_id,
forced_bos_token_id: val.forced_bos_token_id,
forced_eos_token_id: val.forced_eos_token_id,
initializer_factor: val.initializer_factor,
is_encoder_decoder: val.is_encoder_decoder,
layer_norm_epsilon: val.layer_norm_epsilon,
num_heads: val.num_heads,
num_layers: val.num_layers,
output_past: val.output_past,
pad_token_id: val.pad_token_id,
relative_attention_num_buckets: val.relative_attention_num_buckets,
relative_attention_max_distance: val.relative_attention_max_distance,
vocab_size: val.vocab_size,
feed_forward_proj: val.feed_forward_proj,
tie_word_embeddings: val.tie_word_embeddings,
task_specific_params: val.task_specific_params.clone(),
output_attentions: val.output_attentions,
output_hidden_states: val.output_hidden_states,
}
}
}
pub struct LongT5Model {
pub(crate) encoder: LongT5Stack,
decoder: LongT5Stack,
pub(crate) embeddings: nn::Embedding,
}
impl LongT5Model {
pub fn new<'p, P>(p: P, config: &LongT5Config) -> LongT5Model
where
P: Borrow<nn::Path<'p>>,
{
let p = p.borrow();
let embeddings: nn::Embedding = embedding(
p / "shared",
config.vocab_size,
config.d_model,
Default::default(),
);
let encoder = LongT5Stack::new(
p / "encoder",
config,
false,
false,
config.output_attentions.unwrap_or(false),
config.output_hidden_states.unwrap_or(false),
);
let decoder = LongT5Stack::new(
p / "decoder",
config,
true,
true,
config.output_attentions.unwrap_or(false),
config.output_hidden_states.unwrap_or(false),
);
LongT5Model {
encoder,
decoder,
embeddings,
}
}
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>,
input_embeds: Option<&Tensor>,
decoder_input_embeds: Option<&Tensor>,
old_layer_states: Option<Vec<(Option<LayerState>, Option<LayerState>)>>,
train: bool,
) -> Result<LongT5ModelOutput, RustBertError> {
let (calc_hidden_states, all_encoder_hidden_states, all_encoder_attentions) =
if encoder_outputs.is_none() {
let encoder_output = self.encoder.forward_t(
input_ids,
attention_mask,
None,
None,
input_embeds,
&self.embeddings,
None,
train,
)?;
(
Some(encoder_output.hidden_state),
encoder_output.all_hidden_states,
encoder_output.all_attentions,
)
} else {
(None, None, None)
};
let encoder_output =
encoder_outputs.unwrap_or_else(|| calc_hidden_states.as_ref().unwrap());
let decoder_output = self
.decoder
.forward_t(
decoder_input_ids,
decoder_attention_mask,
Some(encoder_output),
attention_mask,
decoder_input_embeds,
&self.embeddings,
old_layer_states,
train,
)
.unwrap();
Ok(LongT5ModelOutput {
decoder_output: decoder_output.hidden_state,
encoder_hidden_state: calc_hidden_states,
next_cache: decoder_output.next_cache,
all_decoder_hidden_states: decoder_output.all_hidden_states,
all_decoder_attentions: decoder_output.all_attentions,
all_encoder_hidden_states,
all_encoder_attentions,
})
}
}
pub struct LongT5ForConditionalGeneration {
base_model: LongT5Model,
model_dim: f64,
tie_word_embeddings: bool,
lm_head: Option<nn::Linear>,
}
impl LongT5ForConditionalGeneration {
pub fn new<'p, P>(p: P, config: &LongT5Config) -> LongT5ForConditionalGeneration
where
P: Borrow<nn::Path<'p>>,
{
let p = p.borrow();
let base_model = LongT5Model::new(p, config);
let tie_word_embeddings = config.tie_word_embeddings.unwrap_or(true);
let lm_head = if !tie_word_embeddings {
Some(nn::linear(
p / "lm_head",
config.d_model,
config.vocab_size,
LinearConfig {
bias: false,
..Default::default()
},
))
} else {
None
};
LongT5ForConditionalGeneration {
base_model,
model_dim: config.d_model as f64,
tie_word_embeddings,
lm_head,
}
}
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>,
input_embeds: Option<&Tensor>,
decoder_input_embeds: Option<&Tensor>,
old_layer_states: Option<Vec<(Option<LayerState>, Option<LayerState>)>>,
train: bool,
) -> Result<LongT5ModelOutput, RustBertError> {
let base_model_output = self.base_model.forward_t(
input_ids,
attention_mask,
encoder_outputs,
decoder_input_ids,
decoder_attention_mask,
input_embeds,
decoder_input_embeds,
old_layer_states,
train,
)?;
let lm_logits = if self.tie_word_embeddings {
base_model_output
.decoder_output
.linear::<Tensor>(&self.base_model.embeddings.ws, None)
* (self.model_dim.powf(-0.5))
} else {
base_model_output
.decoder_output
.apply(self.lm_head.as_ref().unwrap())
};
Ok(T5ModelOutput {
decoder_output: lm_logits,
..base_model_output
})
}
pub fn encode(&self, input_ids: &Tensor, attention_mask: Option<&Tensor>) -> Tensor {
self.base_model
.encoder
.forward_t(
Some(input_ids),
attention_mask,
None,
None,
None,
&self.base_model.embeddings,
None,
false,
)
.unwrap()
.hidden_state
}
}
pub type LongT5ModelOutput = T5ModelOutput;
pub struct LongT5Generator {
model: LongT5ForConditionalGeneration,
tokenizer: TokenizerOption,
var_store: nn::VarStore,
generate_config: GenerateConfig,
bos_token_id: Option<i64>,
eos_token_ids: Option<Vec<i64>>,
pad_token_id: Option<i64>,
is_encoder_decoder: bool,
vocab_size: i64,
decoder_start_id: Option<i64>,
max_position_embeddings: i64,
}
impl LongT5Generator {
pub fn new(generate_config: GenerateConfig) -> Result<LongT5Generator, RustBertError> {
let vocab_path = generate_config.vocab_resource.get_local_path()?;
let tokenizer = TokenizerOption::from_file(
ModelType::LongT5,
vocab_path.to_str().unwrap(),
None,
false,
None,
None,
)?;
Self::new_with_tokenizer(generate_config, tokenizer)
}
pub fn new_with_tokenizer(
generate_config: GenerateConfig,
tokenizer: TokenizerOption,
) -> Result<LongT5Generator, RustBertError> {
let config_path = generate_config.config_resource.get_local_path()?;
let device = generate_config.device;
generate_config.validate();
let mut var_store = nn::VarStore::new(device);
let config = LongT5Config::from_file(config_path);
let model = LongT5ForConditionalGeneration::new(var_store.root(), &config);
crate::resources::load_weights(
&generate_config.model_resource,
&mut var_store,
generate_config.kind,
device,
)?;
let bos_token_id = config.bos_token_id;
let eos_token_ids = Some(match config.eos_token_id {
Some(value) => vec![value],
None => vec![1],
});
let pad_token_id = Some(config.pad_token_id.unwrap_or(0));
let vocab_size = config.vocab_size;
let is_encoder_decoder = true;
let decoder_start_id = config.decoder_start_token_id;
let max_position_embeddings = i64::MAX;
Ok(LongT5Generator {
model,
tokenizer,
var_store,
generate_config,
bos_token_id,
eos_token_ids,
pad_token_id,
is_encoder_decoder,
vocab_size,
decoder_start_id,
max_position_embeddings,
})
}
}
impl PrivateLanguageGenerator for LongT5Generator {
fn _get_tokenizer(&self) -> &TokenizerOption {
&self.tokenizer
}
fn _get_tokenizer_mut(&mut self) -> &mut TokenizerOption {
&mut self.tokenizer
}
fn get_device(&self) -> Device {
self.var_store.device()
}
fn get_var_store_mut(&mut self) -> Result<&mut nn::VarStore, RustBertError> {
Ok(&mut self.var_store)
}
fn get_config(&self) -> &GenerateConfig {
&self.generate_config
}
fn get_bos_id(&self) -> Option<i64> {
self.bos_token_id
}
fn get_eos_ids(&self) -> Option<&Vec<i64>> {
self.eos_token_ids.as_ref()
}
fn get_pad_id(&self) -> Option<i64> {
self.pad_token_id
}
fn is_encoder_decoder(&self) -> bool {
self.is_encoder_decoder
}
fn get_vocab_size(&self) -> i64 {
self.vocab_size
}
fn get_decoder_start_id(&self) -> Option<i64> {
self.decoder_start_id
}
fn get_max_positions_embeddings(&self) -> Option<i64> {
Some(self.max_position_embeddings)
}
fn forward_t(
&self,
input_ids: Option<&Tensor>,
cache: Cache,
attention_mask: Option<&Tensor>,
_token_type_ids: Option<&Tensor>,
_position_ids: Option<&Tensor>,
_input_embeds: Option<&Tensor>,
encoder_outputs: Option<&Tensor>,
decoder_input_ids: Option<&Tensor>,
train: bool,
) -> Result<LMModelOutput, RustBertError> {
let base_model_output = match cache {
Cache::LongT5Cache(cached_layer_states) => self.model.forward_t(
input_ids,
attention_mask,
encoder_outputs,
decoder_input_ids,
None,
None,
None,
cached_layer_states,
train,
)?,
Cache::None => self.model.forward_t(
input_ids,
attention_mask,
encoder_outputs,
decoder_input_ids,
None,
None,
None,
None,
train,
)?,
_ => {
return Err(RustBertError::ValueError(
"Cache not compatible with LongT5 Model".into(),
));
}
};
Ok(LMModelOutput {
lm_logits: base_model_output.decoder_output,
cache: Cache::LongT5Cache(base_model_output.next_cache),
})
}
fn encode(&self, input_ids: &Tensor, attention_mask: Option<&Tensor>) -> Option<Tensor> {
Some(self.model.encode(input_ids, attention_mask))
}
fn prepare_inputs_for_generation<'a>(
&self,
input_ids: Tensor,
encoder_outputs: Option<&'a Tensor>,
past: Cache,
attention_mask: Tensor,
) -> PreparedInput<'a> {
match past {
Cache::LongT5Cache(past) => PreparedInput {
prepared_input: None,
prepared_attention_mask: Some(attention_mask),
prepared_encoder_output: encoder_outputs,
prepared_decoder_input: Some(input_ids.narrow(1, -1, 1)),
prepared_position_ids: None,
prepared_past: Cache::LongT5Cache(past),
},
Cache::None => PreparedInput {
prepared_input: None,
prepared_attention_mask: Some(attention_mask),
prepared_encoder_output: encoder_outputs,
prepared_decoder_input: Some(input_ids),
prepared_position_ids: None,
prepared_past: Cache::LongT5Cache(None),
},
_ => panic!("Cache type incompatible with longT5"),
}
}
fn reorder_cache(
&self,
past: &mut Cache,
encoder_outputs: Option<Tensor>,
beam_indices: &Tensor,
) -> Option<Tensor> {
match past {
Cache::LongT5Cache(old_cache_option) => match old_cache_option {
Some(old_cache) => {
for (self_layer_state, encoder_layer_state) in old_cache.iter_mut() {
if self_layer_state.is_some() {
self_layer_state
.as_mut()
.unwrap()
.reorder_cache(beam_indices)
};
if encoder_layer_state.is_some() {
encoder_layer_state
.as_mut()
.unwrap()
.reorder_cache(beam_indices)
};
}
}
None => {}
},
Cache::None => {}
_ => {
panic!("Invalid cache for LongT5 model");
}
};
encoder_outputs
}
}
impl LanguageGenerator for LongT5Generator {}