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3a058ff6fe
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@ -1735,22 +1735,23 @@ class WAN21_HuMo(WAN21):
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if audio_embed is not None:
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out['audio_embed'] = comfy.conds.CONDRegular(audio_embed)
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if "c_concat" not in out: # 1.7B model
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reference_latents = kwargs.get("reference_latents", None)
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if reference_latents is not None:
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if "c_concat" not in out and reference_latents is not None and reference_latents[0].shape[1] == 16: # 1.7B model
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out['reference_latent'] = comfy.conds.CONDRegular(self.process_latent_in(reference_latents[-1]))
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else:
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noise_shape = list(noise.shape)
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noise_shape[1] += 4
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concat_latent = torch.zeros(noise_shape, device=noise.device, dtype=noise.dtype)
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zero_vae_values_first = torch.tensor([0.8660, -0.4326, -0.0017, -0.4884, -0.5283, 0.9207, -0.9896, 0.4433, -0.5543, -0.0113, 0.5753, -0.6000, -0.8346, -0.3497, -0.1926, -0.6938]).view(1, 16, 1, 1, 1)
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zero_vae_values_second = torch.tensor([1.0869, -1.2370, 0.0206, -0.4357, -0.6411, 2.0307, -1.5972, 1.2659, -0.8595, -0.4654, 0.9638, -1.6330, -1.4310, -0.1098, -0.3856, -1.4583]).view(1, 16, 1, 1, 1)
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zero_vae_values = torch.tensor([0.8642, -1.8583, 0.1577, 0.1350, -0.3641, 2.5863, -1.9670, 1.6065, -1.0475, -0.8678, 1.1734, -1.8138, -1.5933, -0.7721, -0.3289, -1.3745]).view(1, 16, 1, 1, 1)
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concat_latent[:, 4:] = zero_vae_values
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concat_latent[:, 4:, :1] = zero_vae_values_first
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concat_latent[:, 4:, 1:2] = zero_vae_values_second
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out['c_concat'] = comfy.conds.CONDNoiseShape(concat_latent)
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reference_latents = kwargs.get("reference_latents", None)
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else:
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concat_latent_image = kwargs.get("concat_latent_image", None)
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if concat_latent_image is None:
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noise_shape = list(noise.shape)
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noise_shape[1] += 4
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concat_latent = torch.zeros(noise_shape, device=noise.device, dtype=noise.dtype)
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zero_vae_values_first = torch.tensor([0.8660, -0.4326, -0.0017, -0.4884, -0.5283, 0.9207, -0.9896, 0.4433, -0.5543, -0.0113, 0.5753, -0.6000, -0.8346, -0.3497, -0.1926, -0.6938]).view(1, 16, 1, 1, 1)
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zero_vae_values_second = torch.tensor([1.0869, -1.2370, 0.0206, -0.4357, -0.6411, 2.0307, -1.5972, 1.2659, -0.8595, -0.4654, 0.9638, -1.6330, -1.4310, -0.1098, -0.3856, -1.4583]).view(1, 16, 1, 1, 1)
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zero_vae_values = torch.tensor([0.8642, -1.8583, 0.1577, 0.1350, -0.3641, 2.5863, -1.9670, 1.6065, -1.0475, -0.8678, 1.1734, -1.8138, -1.5933, -0.7721, -0.3289, -1.3745]).view(1, 16, 1, 1, 1)
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concat_latent[:, 4:] = zero_vae_values
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concat_latent[:, 4:, :1] = zero_vae_values_first
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concat_latent[:, 4:, 1:2] = zero_vae_values_second
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out['c_concat'] = comfy.conds.CONDNoiseShape(concat_latent)
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if reference_latents is not None:
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ref_latent = self.process_latent_in(reference_latents[-1])
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ref_latent_shape = list(ref_latent.shape)
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@ -468,6 +468,9 @@ class CLIP:
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def decode(self, token_ids, skip_special_tokens=True):
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return self.tokenizer.decode(token_ids, skip_special_tokens=skip_special_tokens)
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def is_dynamic(self):
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return self.patcher.is_dynamic()
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class VAE:
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def __init__(self, sd=None, device=None, config=None, dtype=None, metadata=None):
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if 'decoder.up_blocks.0.resnets.0.norm1.weight' in sd.keys(): #diffusers format
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@ -1251,6 +1254,8 @@ class VAE:
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except:
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return None
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def is_dynamic(self):
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return self.patcher.is_dynamic()
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class StyleModel:
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def __init__(self, model, device="cpu"):
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@ -503,6 +503,21 @@ RAM_CACHE_DEFAULT_RAM_USAGE = 0.05
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RAM_CACHE_OLD_WORKFLOW_OOM_MULTIPLIER = 1.3
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def all_outputs_dynamic(outputs):
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if outputs is None:
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return False
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for output in outputs:
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if isinstance(output, (list, tuple)):
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if not all_outputs_dynamic(output):
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return False
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elif not hasattr(output, "is_dynamic") or not output.is_dynamic():
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return False
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return True
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class RAMPressureCache(LRUCache):
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def __init__(self, key_class, enable_providers=False):
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@ -533,7 +548,11 @@ class RAMPressureCache(LRUCache):
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for key, cache_entry in self.cache.items():
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if not free_active and self.used_generation[key] == self.generation:
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continue
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oom_score = RAM_CACHE_OLD_WORKFLOW_OOM_MULTIPLIER ** (self.generation - self.used_generation[key])
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if all_outputs_dynamic(cache_entry.outputs) and self.used_generation[key] == self.generation:
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continue
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oom_score = RAM_CACHE_OLD_WORKFLOW_OOM_MULTIPLIER ** (self.generation - self.used_generation[key])
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ram_usage = RAM_CACHE_DEFAULT_RAM_USAGE
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def scan_list_for_ram_usage(outputs):
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