--- language: - en - de - fr - es - pt - it - nl - pl - ro - cs - sv - da - "no" - fi - hu - hr - bg - tr - ca - ru - uk - sr - zh - ja - ko - ar - fa - he - hi - bn - th - vi - ka - hy - el - yi - ur - ta - te - gu - pa - ml - kn - am - si - my - km - mr - ne - or - bo - dv - eu - gl - gd - et - sk - lt - sl - lv - af - sq - sw - is - tl - cy - ga - br - la - mk - id - code license: apache-2.0 library_name: tokenizers tags: - tokenizer - bpe - multilingual - code - quartz - aenea - coding - python - flores pipeline_tag: text-generation --- # QT_V.2 Code 114K — Multilingual Coding Tokenizer **Lowest total tokens on our 66-test field benchmark of any tokenizer at any vocab size.** 114,688 vocabulary optimised for multilingual coding models. Trained with doubled code weight (37% of corpus) including 450K high-quality Python functions from CodeSearchNet. Beats Llama 3, Tekken, and Qwen 2.5 on total tokens while using 10–37% less vocabulary. Validated on FLORES-200 across 204 languages. Part of the **QT_V.2 tokenizer family** by [Quartz Data Infrastructure](https://quartz.host), the open data layer behind [AENEA](https://aenea.app). ## FLORES-200 Results (204 Languages · 1,012 Parallel Sentences) | Metric | QT Code 114K | QT 96K | QT 64K | Llama 3 (128K) | Tekken (131K) | Qwen 2.5 (152K) | |---|---|---|---|---|---|---| | **Total tokens** | 13,007,924 | **12,961,617** | 13,592,357 | 16,764,198 | 14,421,539 | 15,425,680 | | **Equity ratio** | 43.3× | **31.6×** | 41.0× | 118.6× | 127.9× | 77.7× | | Mean fertility | 4.03 | **3.94** | 4.18 | 5.72 | 5.34 | 4.91 | QT Code 114K uses **22.4% fewer tokens than Llama 3** and **9.8% fewer than Tekken** across all 204 FLORES languages — with 10–37% less vocabulary. ### Key FLORES Languages (tok/word) | Language | QT Code | Llama 3 | Tekken | Qwen 2.5 | |---|---|---|---|---| | Japanese | **32.1** | 38.9 | 41.3 | 35.8 | | Tibetan | **46.5** | 149.8 | 168.4 | 98.0 | | Sinhala | **3.58** | 11.37 | 16.60 | 9.17 | | Amharic | **3.40** | 11.95 | 11.98 | 6.45 | | Georgian | **3.46** | 15.47 | 3.93 | 8.33 | | Odia | **4.10** | 16.90 | 18.30 | 13.65 | ## Field Benchmark (66 Tests) | Metric | Value | |---|---| | **Total tokens** | **3,314** (lowest of any tokenizer) | | vs Llama 3 (128K) | 41.2% fewer tokens | | vs Tekken (131K) | 23.8% fewer tokens | | vs Qwen 2.5 (152K) | 36.1% fewer tokens | ### Code Performance | Language | QT Code | QT 96K | QT 64K | Llama 3 | Tekken | Qwen 2.5 | |---|---|---|---|---|---|---| | Python | **110** | 115 | 125 | 97 | 112 | 105 | | JavaScript | **67** | 71 | 71 | 65 | 69 | 64 | | Rust | **111** | 113 | 117 | 108 | 111 | 107 | Python compression improved from 125 (64K) to 115 (96K) to **110** (Code 114K) — closing the gap versus Llama 3's 97 from 28.9% to 13.4%. ### Category Totals (lower is better) | Category | QT Code | Llama 3 | Tekken | Qwen 2.5 | |---|---|---|---|---| | Natural Languages (20) | **1,033** | 1,599 | 1,038 | 1,535 | | V1 Expansion (14) | **662** | 1,758 | 1,092 | 1,509 | | V2 New Scripts (3) | **188** | 692 | 740 | 523 | | Celtic / Brythonic (8) | **312** | 391 | 341 | 384 | | Code (3) | 288 | **270** | 292 | 276 | | **TOTAL (66 tests)** | **3,314** | 5,639 | 4,347 | 5,183 | ## When to Use This Variant **QT_V.2 Code 114K** is designed for multilingual coding assistants and code generation models. It wins Natural Languages outright (1,033 — beating Tekken's 1,038) while offering competitive code compression. Ideal for models that must serve both code and diverse natural language users. Also available: [QT_V.2 64K](https://huggingface.co/QuartzOpen/QT_V.2_64K) (smallest embedding) · [QT_V.2 96K](https://huggingface.co/QuartzOpen/QT_V.2_96K) (best all-round) ## Usage ```python from tokenizers import Tokenizer tok = Tokenizer.from_file("tokenizer.json") encoded = tok.encode("def fibonacci(n):\n if n <= 1:\n return n\n return fibonacci(n-1) + fibonacci(n-2)") print(encoded.tokens) ``` ## Specifications | Spec | Value | |---|---| | Vocabulary | 114,688 | | Languages | 71 natural + 15 code (incl. CodeSearchNet) | | Script families | 26 | | Pretokenizer | Llama 3 regex | | Arithmetic | Single-digit splitting | | Max token length | 15 chars | | Avg token length | 6.24 chars | | Compression | 3.60 chars/token | ## Training Byte-level BPE with Llama 3 regex pretokenizer. Code-heavy corpus: | Category | Share | Sources | |---|---|---| | Wikipedia | 37.3% | 71 languages (wiki_ultra_clean v7.3) | | Code | 37.4% | 14 languages + CodeSearchNet Python (450K functions) | | Stack Exchange | 25.3% | 49 sites (se_ultra_clean v1) | ## Files `tokenizer.json` · `vocab.json` · `merges.txt` · `training_report.json` ## Contact Open-source: quartzopensource@gmail.com Commercial licensing & enterprise: commercial@aeneaglobal.com ## License Apache 2.0 — Copyright 2025-2026 AENEA Global Ltd ```bibtex @misc{qt_v2_2026, title={QT_V.2: A Multilingual BPE Tokenizer Family}, author={AENEA Global Ltd}, year={2026}, url={https://quartz.host}, } ```