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We made an Audio ML sharing platform

We made an Audio ML sharing platform

by bigboi6969·Jun 30, 2026·2 points·0 comments

AI Analysis

MidNiche GemShip ItBold Bet

Audio model hub when Hugging Face already hosts thousands of TTS models.

Strengths
  • Audio-specific focus narrows discovery for TTS and voice model researchers
  • Clean UI with model weight indicators helps users pick appropriate models
  • Open source mission counters ElevenLabs-style closed audio AI dominance
Weaknesses
  • Hugging Face Spaces already hosts audio models with more infrastructure and users
  • Monetization is 'eventual' — no working creator revenue system yet
Category
Target Audience

Audio ML developers and researchers

Similar To

Hugging Face · Civitai · Replicate

Post Description

Hey everyone we recently built a platform for people to share their audio ml creations and we are hoping to create it so people in the community can find demos of their models and eventually monetize their trained models. We are a team of small creators who are trying to improve the space for open source ML so the future is not dominated by closed source giants like ElevenLabs or chatgpt.

if you have any feedback please feel free to share.

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