TTS Model Needs Fine-Tuning on IPA Phonemes for Ambiguous Languages
A text-to-speech model supports Hebrew but with poor accuracy because Hebrew is ambiguous without diacritics. Users want to fine-tune on IPA phonemes with studio-quality data while preserving voice cloning capabilities.
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