tabby/crates/llama-cpp-bindings/src/lib.rs

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use std::sync::{Arc, Mutex};
use async_trait::async_trait;
use derive_builder::Builder;
use ffi::create_engine;
use stop_words::StopWords;
use tabby_inference::{TextGeneration, TextGenerationOptions};
use tokenizers::tokenizer::Tokenizer;
use tokio_util::sync::CancellationToken;
#[cxx::bridge(namespace = "llama")]
mod ffi {
unsafe extern "C++" {
include!("llama-cpp-bindings/include/engine.h");
type TextInferenceEngine;
fn create_engine(model_path: &str) -> SharedPtr<TextInferenceEngine>;
fn start(&self, prompt: &str) -> u32;
fn step(&self, next_token_id: u32) -> u32;
}
}
unsafe impl Send for ffi::TextInferenceEngine {}
unsafe impl Sync for ffi::TextInferenceEngine {}
#[derive(Builder, Debug)]
pub struct LlamaEngineOptions {
model_path: String,
tokenizer_path: String,
}
pub struct LlamaEngine {
engine: Arc<Mutex<cxx::SharedPtr<ffi::TextInferenceEngine>>>,
tokenizer: Arc<Tokenizer>,
stop_words: StopWords,
}
impl LlamaEngine {
pub fn create(options: LlamaEngineOptions) -> Self {
LlamaEngine {
engine: Arc::new(Mutex::new(create_engine(&options.model_path))),
tokenizer: Arc::new(Tokenizer::from_file(&options.tokenizer_path).unwrap()),
stop_words: StopWords::default(),
}
}
}
#[async_trait]
impl TextGeneration for LlamaEngine {
async fn generate(&self, prompt: &str, options: TextGenerationOptions) -> String {
let cancel = CancellationToken::new();
let cancel_for_inference = cancel.clone();
let _guard = cancel.drop_guard();
let prompt = prompt.to_owned();
let engine = self.engine.clone();
let mut stop_condition = self
.stop_words
.create_condition(self.tokenizer.clone(), options.stop_words);
let output_ids = tokio::task::spawn_blocking(move || {
let engine = engine.lock().unwrap();
let mut next_token_id = engine.start(&prompt);
let mut n_remains = options.max_decoding_length - 1;
let mut output_ids = vec![next_token_id];
while n_remains > 0 {
if cancel_for_inference.is_cancelled() {
// The token was cancelled
break;
}
next_token_id = engine.step(next_token_id);
if stop_condition.next_token(next_token_id) {
break;
}
output_ids.push(next_token_id);
n_remains -= 1;
}
output_ids
})
.await
.expect("Inference failed");
self.tokenizer.decode(&output_ids, true).unwrap()
}
}