Variational DiffWave
Training DiffWave using variational method from Variational Diffusion Models.
Quick Start
python train_distributed.py discrete_1000steps_64ch.json
Results
TODO
- Continuous-time training.
Training DiffWave using variational method from Variational Diffusion Models.
python train_distributed.py discrete_1000steps_64ch.json
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