OWLS: Scaling Laws for Multilingual Speech Recognition and Translation Models

Published: 01 Aug 2025, Last Modified: 26 Aug 2025SpeechAI TTIC 2025 OralorPosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Automatic Speech Recognition, Scaling Laws, Speech Translation, Multilingual
TL;DR: Scaling laws for multilingual ASR and ST models. Largest model is 18B parameters trained on 360K hours of ASR/ST data.
Presentation Preference: Open to it if recommended by organizers
Abstract: Neural scaling laws offer valuable insights for designing robust sequence processing architectures. While these laws have been extensively characterized in other modalities, their behavior in speech remains comparatively underexplored. In this work, we introduce OWLS, an open-access, reproducible suite of multilingual speech recognition and translation models spanning 0.25B to 18B parameters, with the 18B version being the largest speech model, to the best of our knowledge. OWLS leverages up to 360K hours of public speech data across 150 languages, enabling a systematic investigation into how data, model, and compute scaling each influence performance in multilingual speech tasks. We use OWLS to derive neural scaling laws, showing how final performance can be reliably predicted when scaling. Scaling to larger models can improve ASR performance across the board, in both low and high resource languages, improving the accessibility of speech technologies. Finally, we show how OWLS can be used to power new research directions by discovering emergent abilities in large-scale speech models. Model checkpoints will be released on https://huggingface.co/collections/espnet/owls-scaling-laws-for-speech-recognition-and-translation-67ab7f991c194065f057ce8d for future studies.
Submission Number: 19
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