| | import json
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| |
|
| | def create_model_from_config(model_config):
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| | model_type = model_config.get('model_type', None)
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| |
|
| | assert model_type is not None, 'model_type must be specified in model config'
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| |
|
| | if model_type == 'autoencoder':
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| | from .autoencoders import create_autoencoder_from_config
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| | return create_autoencoder_from_config(model_config)
|
| | elif model_type == 'diffusion_uncond':
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| | from .diffusion import create_diffusion_uncond_from_config
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| | return create_diffusion_uncond_from_config(model_config)
|
| | elif model_type == 'diffusion_cond' or model_type == 'diffusion_cond_inpaint' or model_type == "diffusion_prior":
|
| | from .diffusion import create_diffusion_cond_from_config
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| | return create_diffusion_cond_from_config(model_config)
|
| | elif model_type == 'diffusion_autoencoder':
|
| | from .autoencoders import create_diffAE_from_config
|
| | return create_diffAE_from_config(model_config)
|
| | elif model_type == 'lm':
|
| | from .lm import create_audio_lm_from_config
|
| | return create_audio_lm_from_config(model_config)
|
| | else:
|
| | raise NotImplementedError(f'Unknown model type: {model_type}')
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| |
|
| | def create_model_from_config_path(model_config_path):
|
| | with open(model_config_path) as f:
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| | model_config = json.load(f)
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| |
|
| | return create_model_from_config(model_config)
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| |
|
| | def create_pretransform_from_config(pretransform_config, sample_rate):
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| | pretransform_type = pretransform_config.get('type', None)
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| |
|
| | assert pretransform_type is not None, 'type must be specified in pretransform config'
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| |
|
| | if pretransform_type == 'autoencoder':
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| | from .autoencoders import create_autoencoder_from_config
|
| | from .pretransforms import AutoencoderPretransform
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| |
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| |
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| |
|
| | autoencoder_config = {"sample_rate": sample_rate, "model": pretransform_config["config"]}
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| | autoencoder = create_autoencoder_from_config(autoencoder_config)
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| |
|
| | scale = pretransform_config.get("scale", 1.0)
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| | model_half = pretransform_config.get("model_half", False)
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| | iterate_batch = pretransform_config.get("iterate_batch", False)
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| | chunked = pretransform_config.get("chunked", False)
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| |
|
| | pretransform = AutoencoderPretransform(autoencoder, scale=scale, model_half=model_half, iterate_batch=iterate_batch, chunked=chunked)
|
| | elif pretransform_type == 'wavelet':
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| | from .pretransforms import WaveletPretransform
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| |
|
| | wavelet_config = pretransform_config["config"]
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| | channels = wavelet_config["channels"]
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| | levels = wavelet_config["levels"]
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| | wavelet = wavelet_config["wavelet"]
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| |
|
| | pretransform = WaveletPretransform(channels, levels, wavelet)
|
| | elif pretransform_type == 'pqmf':
|
| | from .pretransforms import PQMFPretransform
|
| | pqmf_config = pretransform_config["config"]
|
| | pretransform = PQMFPretransform(**pqmf_config)
|
| | elif pretransform_type == 'dac_pretrained':
|
| | from .pretransforms import PretrainedDACPretransform
|
| | pretrained_dac_config = pretransform_config["config"]
|
| | pretransform = PretrainedDACPretransform(**pretrained_dac_config)
|
| | elif pretransform_type == "audiocraft_pretrained":
|
| | from .pretransforms import AudiocraftCompressionPretransform
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| |
|
| | audiocraft_config = pretransform_config["config"]
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| | pretransform = AudiocraftCompressionPretransform(**audiocraft_config)
|
| | else:
|
| | raise NotImplementedError(f'Unknown pretransform type: {pretransform_type}')
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| |
|
| | enable_grad = pretransform_config.get('enable_grad', False)
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| | pretransform.enable_grad = enable_grad
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| |
|
| | pretransform.eval().requires_grad_(pretransform.enable_grad)
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| |
|
| | return pretransform
|
| |
|
| | def create_bottleneck_from_config(bottleneck_config):
|
| | bottleneck_type = bottleneck_config.get('type', None)
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| |
|
| | assert bottleneck_type is not None, 'type must be specified in bottleneck config'
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| |
|
| | if bottleneck_type == 'tanh':
|
| | from .bottleneck import TanhBottleneck
|
| | bottleneck = TanhBottleneck()
|
| | elif bottleneck_type == 'vae':
|
| | from .bottleneck import VAEBottleneck
|
| | bottleneck = VAEBottleneck()
|
| | elif bottleneck_type == 'rvq':
|
| | from .bottleneck import RVQBottleneck
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| |
|
| | quantizer_params = {
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| | "dim": 128,
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| | "codebook_size": 1024,
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| | "num_quantizers": 8,
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| | "decay": 0.99,
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| | "kmeans_init": True,
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| | "kmeans_iters": 50,
|
| | "threshold_ema_dead_code": 2,
|
| | }
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| |
|
| | quantizer_params.update(bottleneck_config["config"])
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| |
|
| | bottleneck = RVQBottleneck(**quantizer_params)
|
| | elif bottleneck_type == "dac_rvq":
|
| | from .bottleneck import DACRVQBottleneck
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| |
|
| | bottleneck = DACRVQBottleneck(**bottleneck_config["config"])
|
| |
|
| | elif bottleneck_type == 'rvq_vae':
|
| | from .bottleneck import RVQVAEBottleneck
|
| |
|
| | quantizer_params = {
|
| | "dim": 128,
|
| | "codebook_size": 1024,
|
| | "num_quantizers": 8,
|
| | "decay": 0.99,
|
| | "kmeans_init": True,
|
| | "kmeans_iters": 50,
|
| | "threshold_ema_dead_code": 2,
|
| | }
|
| |
|
| | quantizer_params.update(bottleneck_config["config"])
|
| |
|
| | bottleneck = RVQVAEBottleneck(**quantizer_params)
|
| |
|
| | elif bottleneck_type == 'dac_rvq_vae':
|
| | from .bottleneck import DACRVQVAEBottleneck
|
| | bottleneck = DACRVQVAEBottleneck(**bottleneck_config["config"])
|
| | elif bottleneck_type == 'l2_norm':
|
| | from .bottleneck import L2Bottleneck
|
| | bottleneck = L2Bottleneck()
|
| | elif bottleneck_type == "wasserstein":
|
| | from .bottleneck import WassersteinBottleneck
|
| | bottleneck = WassersteinBottleneck(**bottleneck_config.get("config", {}))
|
| | elif bottleneck_type == "fsq":
|
| | from .bottleneck import FSQBottleneck
|
| | bottleneck = FSQBottleneck(**bottleneck_config["config"])
|
| | else:
|
| | raise NotImplementedError(f'Unknown bottleneck type: {bottleneck_type}')
|
| |
|
| | requires_grad = bottleneck_config.get('requires_grad', True)
|
| | if not requires_grad:
|
| | for param in bottleneck.parameters():
|
| | param.requires_grad = False
|
| |
|
| | return bottleneck
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| |
|