Files
AFFiNE-Mirror/packages/backend/native/src/tiktoken.rs
T
DarkSky 072557eba1 feat(server): adapt gpt5 (#13478)
<!-- This is an auto-generated comment: release notes by coderabbit.ai
-->
## Summary by CodeRabbit

- New Features
- Added GPT-5 family and made GPT-5/-mini the new defaults for Copilot
scenarios and prompts.

- Bug Fixes
- Improved streaming chunk formats and reasoning/text semantics,
consistent attachment mediaType handling, and more reliable reranking
via log-prob handling.

- Refactor
- Unified maxOutputTokens usage; removed per-call step caps and migrated
several tools to a unified inputSchema shape.

- Chores
- Upgraded AI SDK dependencies and bumped an internal dependency
version.

- Tests
- Updated mocks and tests to reference GPT-5 variants and new stream
formats.
<!-- end of auto-generated comment: release notes by coderabbit.ai -->
2025-08-13 02:32:15 +00:00

46 lines
1.1 KiB
Rust

use std::collections::HashSet;
use tiktoken_rs::{get_bpe_from_tokenizer, tokenizer::Tokenizer as TiktokenTokenizer};
#[napi]
pub struct Tokenizer {
inner: tiktoken_rs::CoreBPE,
}
#[napi]
pub fn from_model_name(model_name: String) -> Option<Tokenizer> {
if model_name.starts_with("gpt-5") {
let bpe = get_bpe_from_tokenizer(TiktokenTokenizer::O200kBase).ok()?;
return Some(Tokenizer { inner: bpe });
}
let bpe = tiktoken_rs::get_bpe_from_model(&model_name).ok()?;
Some(Tokenizer { inner: bpe })
}
#[napi]
impl Tokenizer {
#[napi]
pub fn count(&self, content: String, allowed_special: Option<Vec<String>>) -> u32 {
let allowed_special = if let Some(allowed_special) = &allowed_special {
HashSet::from_iter(allowed_special.iter().map(|s| s.as_str()))
} else {
Default::default()
};
self.inner.encode(&content, &allowed_special).0.len() as u32
}
}
#[cfg(test)]
mod tests {
use super::*;
#[test]
fn test_tokenizer() {
let tokenizer = from_model_name("gpt-5".to_string()).unwrap();
let content = "Hello, world!";
let count = tokenizer.count(content.to_string(), None);
assert!(count > 0);
}
}