forked from mrq/DL-Art-School
update tfd11
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@ -220,15 +220,17 @@ class TransformerDiffusion(nn.Module):
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class TransformerDiffusionWithQuantizer(nn.Module):
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class TransformerDiffusionWithQuantizer(nn.Module):
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def __init__(self, quantizer_dims=[1024], freeze_quantizer_until=20000, **kwargs):
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def __init__(self, quantizer_dims=[1024], quantizer_codebook_size=256, quantizer_codebook_groups=2,
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freeze_quantizer_until=20000, **kwargs):
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super().__init__()
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super().__init__()
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self.internal_step = 0
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self.internal_step = 0
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self.freeze_quantizer_until = freeze_quantizer_until
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self.freeze_quantizer_until = freeze_quantizer_until
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self.diff = TransformerDiffusion(**kwargs)
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self.diff = TransformerDiffusion(**kwargs)
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self.quantizer = MusicQuantizer2(inp_channels=kwargs['in_channels'], inner_dim=quantizer_dims,
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self.quantizer = MusicQuantizer2(inp_channels=kwargs['in_channels'], inner_dim=quantizer_dims,
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codevector_dim=quantizer_dims[0], codebook_size=256,
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codevector_dim=quantizer_dims[0], codebook_size=quantizer_codebook_size,
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codebook_groups=2, max_gumbel_temperature=4, min_gumbel_temperature=.5)
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codebook_groups=quantizer_codebook_groups, max_gumbel_temperature=4,
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min_gumbel_temperature=.5)
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self.quantizer.quantizer.temperature = self.quantizer.min_gumbel_temperature
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self.quantizer.quantizer.temperature = self.quantizer.min_gumbel_temperature
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del self.quantizer.up
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del self.quantizer.up
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@ -277,7 +279,7 @@ class TransformerDiffusionWithQuantizer(nn.Module):
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groups = {
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groups = {
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'blk1_attention_layers': attn1,
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'blk1_attention_layers': attn1,
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'blk2_attention_layers': attn2,
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'blk2_attention_layers': attn2,
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'blk2_attention_layers': attn3,
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'blk3_attention_layers': attn3,
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'attention_layers': attn1 + attn2 + attn3,
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'attention_layers': attn1 + attn2 + attn3,
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'blk1_ff_layers': ff1,
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'blk1_ff_layers': ff1,
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'blk2_ff_layers': ff2,
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'blk2_ff_layers': ff2,
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@ -356,15 +358,30 @@ def test_quant_model():
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clip = torch.randn(2, 256, 400)
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clip = torch.randn(2, 256, 400)
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cond = torch.randn(2, 256, 400)
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cond = torch.randn(2, 256, 400)
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ts = torch.LongTensor([600, 600])
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ts = torch.LongTensor([600, 600])
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"""
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# For music:
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model = TransformerDiffusionWithQuantizer(in_channels=256, model_channels=1024,
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model = TransformerDiffusionWithQuantizer(in_channels=256, model_channels=1024,
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prenet_channels=1024, num_heads=4,
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prenet_channels=1024, num_heads=4,
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input_vec_dim=1024, num_layers=20, prenet_layers=6,
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input_vec_dim=1024, num_layers=20, prenet_layers=6,
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dropout=.1)
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dropout=.1)
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quant_weights = torch.load('D:\\dlas\\experiments\\train_music_quant_r4\\models\\5000_generator.pth')
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quant_weights = torch.load('D:\\dlas\\experiments\\train_music_quant_r4\\models\\5000_generator.pth')
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model.quantizer.load_state_dict(quant_weights, strict=False)
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model.quantizer.load_state_dict(quant_weights, strict=False)
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torch.save(model.state_dict(), 'sample.pth')
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torch.save(model.state_dict(), 'sample.pth')
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"""
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# For TTS:
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model = TransformerDiffusionWithQuantizer(in_channels=256, model_channels=1024,
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prenet_channels=1024, num_heads=4,
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input_vec_dim=1024, num_layers=12, prenet_layers=10,
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quantizer_dims=[1024,768,512], quantizer_codebook_size=64,
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quantizer_codebook_groups=4,
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dropout=.1)
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quant_weights = torch.load('X:\\dlas\\experiments\\train_tts_quant_64\\models\\15500_generator.pth')
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model.quantizer.load_state_dict(quant_weights, strict=False)
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torch.save(model.state_dict(), 'sample.pth')
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print_network(model)
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print_network(model)
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o = model(clip, ts, clip, cond)
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o = model(clip, ts, clip, cond)
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model.get_grad_norm_parameter_groups()
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model.get_grad_norm_parameter_groups()
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