LALAL.AI has announced Lynx, its first neural network built from the ground up, exclusively for speech denoising. The model is now available through the LALAL.AI API, web, desktop (cloud mode), and mobile apps and powers the company’s Voice Cleaner and Voice & Noise stem, the tools most commonly used by localization companies, dubbing SaaS platforms, and post-production teams that need clean dialogue as the foundation of their workflows.
Lynx is trained to separate speech from everything else: background music, crowd noise, mechanical interference, environmental sounds, and the full range of acoustic artifacts present in content produced outside controlled studio conditions. The result is a clean voice track ready for transcription, localization, text-to-speech input, or human voice replacement, without the manual cleanup steps that slow batch production.
“In speech denoising, you’re not separating things that were recorded together by design. You’re trying to recover a voice from an environment that was never meant to be a recording studio,” says Nik Pogorsky, LALAL.AI Product Owner and Co-founder. “We spent a year building a model that treats that as the actual problem, not a side case of something else.”
Lynx runs on a proprietary architecture developed over one year by the LALAL.AI research team. The model is six times smaller than Andromeda, LALAL.AI’s flagship cloud stem separation model, which reduces computational load without compromising output quality.
This is a meaningful factor for SaaS providers and localization platforms processing high volumes of content through the API. The model was trained on a manually curated dataset: since no reliable automated pipeline exists for cleaning the full dynamic range of real-world speech from diverse noise sources, the team spent months hand-selecting, filtering, trimming down, and preparing audio tracks covering conditions from quiet interviews to noisy field recordings.
The demand for dedicated voice cleaning in localization workflows is reflected in LALAL.AI’s own usage data: the Voice & Noise stem, now powered by Lynx, is the platform’s second most-used separation track, with more than 11.5 million audio splits processed on it in 2025. Dubbing and localization providers are among its primary professional users, including multilingual platforms supporting enterprise clients across media, e-learning, and corporate communications, and AI-powered dubbing SaaS products that have integrated the LALAL.AI API directly into their processing pipelines as a core audio preparation step.
Lynx is available now through the LALAL.AI API for B2B integrations, SaaS platforms, and enterprise deployments, as well as through the Voice Cleaner product via browser, mobile app, and desktop app cloud mode. Planned near-term improvements to the Lynx architecture include enhanced separation of choral singing and lead vocals, and improved isolation of speech recorded at distance from the microphone, both relevant to content types commonly handled in localization pipelines.
About LALAL.AI
LALAL.AI is an AI‑powered audio processing platform offering vocal removal, stem separation, voice cleanup, noise and echo reduction, voice changing, and voice cloning. Originally a simple vocal remover, it has expanded into a full suite of tools for creators, studios, and enterprise audio workflows. The platform is accessible via web, mobile, desktop application, API, and VST plugin.

