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FAcodec trained on 50k hours speech data, with more timbre diversity and better at reconstructing speakers from podcasts, videos, games or animations.
This is a separate decoder designed and trained based on the pretrained encoder specifically for voice conversion task.
It is capable of zero-shot voice conversion, stream voice conversion and has outstanding timbre generalization ability.

See main repository for example usages.

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Space using Plachta/FAcodec-redecoder 1