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Main Authors: Minixhofer, Benjamin, Murray, Tyler, Limisiewicz, Tomasz, Korhonen, Anna, Zettlemoyer, Luke, Smith, Noah A., Ponti, Edoardo M., Soldaini, Luca, Hofmann, Valentin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.15586
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author Minixhofer, Benjamin
Murray, Tyler
Limisiewicz, Tomasz
Korhonen, Anna
Zettlemoyer, Luke
Smith, Noah A.
Ponti, Edoardo M.
Soldaini, Luca
Hofmann, Valentin
author_facet Minixhofer, Benjamin
Murray, Tyler
Limisiewicz, Tomasz
Korhonen, Anna
Zettlemoyer, Luke
Smith, Noah A.
Ponti, Edoardo M.
Soldaini, Luca
Hofmann, Valentin
contents Recent advances in generative AI have been largely driven by large language models (LLMs), deep neural networks that operate over discrete units called tokens. To represent text, the vast majority of LLMs use words or word fragments as the tokens, known as subword tokenization. Subword tokenization obscures fine-grained information, which is problematic, especially for scientific data - such as computer code or biological sequences - where meaning depends on the individual characters. Models that instead operate directly on the byte encoding of text avoid these limitations, but until now they have lagged behind subword-based models in performance. Here we introduce Bolmo, a family of fully open byte-level LLMs that approach the capabilities of subword-based systems. Using a two-stage conversion procedure, we transform existing subword-based models into byte-level models with minimal additional training. The resulting models outperform prior byte-level approaches and excel on character-level reasoning tasks, while remaining competitive across standard benchmarks. By efficiently processing byte-level information, these models achieve practical inference speeds and can be adapted at low cost using the existing ecosystem around the source LLM. Our results remove a long-standing performance barrier to end-to-end byte-level language modeling, demonstrating that models operating on raw text encodings can scale competitively while offering advantages in domains requiring fine-grained textual understanding.
format Preprint
id arxiv_https___arxiv_org_abs_2512_15586
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Bolmo: Byteifying the Next Generation of Language Models
Minixhofer, Benjamin
Murray, Tyler
Limisiewicz, Tomasz
Korhonen, Anna
Zettlemoyer, Luke
Smith, Noah A.
Ponti, Edoardo M.
Soldaini, Luca
Hofmann, Valentin
Computation and Language
Recent advances in generative AI have been largely driven by large language models (LLMs), deep neural networks that operate over discrete units called tokens. To represent text, the vast majority of LLMs use words or word fragments as the tokens, known as subword tokenization. Subword tokenization obscures fine-grained information, which is problematic, especially for scientific data - such as computer code or biological sequences - where meaning depends on the individual characters. Models that instead operate directly on the byte encoding of text avoid these limitations, but until now they have lagged behind subword-based models in performance. Here we introduce Bolmo, a family of fully open byte-level LLMs that approach the capabilities of subword-based systems. Using a two-stage conversion procedure, we transform existing subword-based models into byte-level models with minimal additional training. The resulting models outperform prior byte-level approaches and excel on character-level reasoning tasks, while remaining competitive across standard benchmarks. By efficiently processing byte-level information, these models achieve practical inference speeds and can be adapted at low cost using the existing ecosystem around the source LLM. Our results remove a long-standing performance barrier to end-to-end byte-level language modeling, demonstrating that models operating on raw text encodings can scale competitively while offering advantages in domains requiring fine-grained textual understanding.
title Bolmo: Byteifying the Next Generation of Language Models
topic Computation and Language
url https://arxiv.org/abs/2512.15586