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https://github.com/comfyanonymous/ComfyUI.git
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Add temporal tiling to VAE Decode (Tiled) node.
You can now do tiled VAE decoding on the temporal direction for videos.
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22
comfy/sd.py
22
comfy/sd.py
@ -259,6 +259,9 @@ class VAE:
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self.process_output = lambda image: torch.clamp((image + 1.0) / 2.0, min=0.0, max=1.0)
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self.working_dtypes = [torch.bfloat16, torch.float32]
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self.downscale_index_formula = None
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self.upscale_index_formula = None
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if config is None:
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if "decoder.mid.block_1.mix_factor" in sd:
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encoder_config = {'double_z': True, 'z_channels': 4, 'resolution': 256, 'in_channels': 3, 'out_ch': 3, 'ch': 128, 'ch_mult': [1, 2, 4, 4], 'num_res_blocks': 2, 'attn_resolutions': [], 'dropout': 0.0}
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@ -338,6 +341,7 @@ class VAE:
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self.memory_used_decode = lambda shape, dtype: (1000 * shape[2] * shape[3] * shape[4] * (6 * 8 * 8)) * model_management.dtype_size(dtype)
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self.memory_used_encode = lambda shape, dtype: (1.5 * max(shape[2], 7) * shape[3] * shape[4] * (6 * 8 * 8)) * model_management.dtype_size(dtype)
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self.upscale_ratio = (lambda a: max(0, a * 6 - 5), 8, 8)
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self.upscale_index_formula = (lambda a: max(0, a * 6), 8, 8)
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self.downscale_ratio = (lambda a: max(0, math.floor((a + 5) / 6)), 8, 8)
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self.working_dtypes = [torch.float16, torch.float32]
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elif "decoder.up_blocks.0.res_blocks.0.conv1.conv.weight" in sd: #lightricks ltxv
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@ -353,6 +357,7 @@ class VAE:
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self.memory_used_decode = lambda shape, dtype: (900 * shape[2] * shape[3] * shape[4] * (8 * 8 * 8)) * model_management.dtype_size(dtype)
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self.memory_used_encode = lambda shape, dtype: (70 * max(shape[2], 7) * shape[3] * shape[4]) * model_management.dtype_size(dtype)
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self.upscale_ratio = (lambda a: max(0, a * 8 - 7), 32, 32)
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self.upscale_index_formula = (lambda a: max(0, a * 8), 32, 32)
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self.downscale_ratio = (lambda a: max(0, math.floor((a + 7) / 8)), 32, 32)
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self.working_dtypes = [torch.bfloat16, torch.float32]
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elif "decoder.conv_in.conv.weight" in sd:
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@ -360,6 +365,7 @@ class VAE:
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ddconfig["conv3d"] = True
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ddconfig["time_compress"] = 4
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self.upscale_ratio = (lambda a: max(0, a * 4 - 3), 8, 8)
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self.upscale_index_formula = (lambda a: max(0, a * 4), 8, 8)
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self.downscale_ratio = (lambda a: max(0, math.floor((a + 3) / 4)), 8, 8)
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self.latent_dim = 3
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self.latent_channels = ddconfig['z_channels'] = sd["decoder.conv_in.conv.weight"].shape[1]
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@ -426,7 +432,7 @@ class VAE:
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def decode_tiled_3d(self, samples, tile_t=999, tile_x=32, tile_y=32, overlap=(1, 8, 8)):
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decode_fn = lambda a: self.first_stage_model.decode(a.to(self.vae_dtype).to(self.device)).float()
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return self.process_output(comfy.utils.tiled_scale_multidim(samples, decode_fn, tile=(tile_t, tile_x, tile_y), overlap=overlap, upscale_amount=self.upscale_ratio, out_channels=self.output_channels, output_device=self.output_device))
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return self.process_output(comfy.utils.tiled_scale_multidim(samples, decode_fn, tile=(tile_t, tile_x, tile_y), overlap=overlap, upscale_amount=self.upscale_ratio, out_channels=self.output_channels, index_formulas=self.upscale_index_formula, output_device=self.output_device))
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def encode_tiled_(self, pixel_samples, tile_x=512, tile_y=512, overlap = 64):
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steps = pixel_samples.shape[0] * comfy.utils.get_tiled_scale_steps(pixel_samples.shape[3], pixel_samples.shape[2], tile_x, tile_y, overlap)
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@ -479,7 +485,7 @@ class VAE:
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pixel_samples = pixel_samples.to(self.output_device).movedim(1,-1)
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return pixel_samples
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def decode_tiled(self, samples, tile_x=None, tile_y=None, overlap=None):
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def decode_tiled(self, samples, tile_x=None, tile_y=None, overlap=None, tile_t=None, overlap_t=None):
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memory_used = self.memory_used_decode(samples.shape, self.vae_dtype) #TODO: calculate mem required for tile
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model_management.load_models_gpu([self.patcher], memory_required=memory_used)
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dims = samples.ndim - 2
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@ -497,6 +503,12 @@ class VAE:
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elif dims == 2:
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output = self.decode_tiled_(samples, **args)
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elif dims == 3:
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if overlap_t is None:
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args["overlap"] = (1, overlap, overlap)
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else:
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args["overlap"] = (overlap_t, overlap, overlap)
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if tile_t is not None:
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args["tile_t"] = tile_t
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output = self.decode_tiled_3d(samples, **args)
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return output.movedim(1, -1)
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@ -575,6 +587,12 @@ class VAE:
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except:
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return self.downscale_ratio
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def temporal_compression_decode(self):
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try:
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return round(self.upscale_ratio[0](8192) / 8192)
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except:
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return None
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class StyleModel:
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def __init__(self, model, device="cpu"):
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self.model = model
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@ -822,7 +822,7 @@ def get_tiled_scale_steps(width, height, tile_x, tile_y, overlap):
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return rows * cols
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@torch.inference_mode()
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def tiled_scale_multidim(samples, function, tile=(64, 64), overlap=8, upscale_amount=4, out_channels=3, output_device="cpu", downscale=False, pbar=None):
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def tiled_scale_multidim(samples, function, tile=(64, 64), overlap=8, upscale_amount=4, out_channels=3, output_device="cpu", downscale=False, index_formulas=None, pbar=None):
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dims = len(tile)
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if not (isinstance(upscale_amount, (tuple, list))):
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@ -831,6 +831,12 @@ def tiled_scale_multidim(samples, function, tile=(64, 64), overlap=8, upscale_am
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if not (isinstance(overlap, (tuple, list))):
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overlap = [overlap] * dims
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if index_formulas is None:
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index_formulas = upscale_amount
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if not (isinstance(index_formulas, (tuple, list))):
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index_formulas = [index_formulas] * dims
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def get_upscale(dim, val):
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up = upscale_amount[dim]
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if callable(up):
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@ -845,10 +851,26 @@ def tiled_scale_multidim(samples, function, tile=(64, 64), overlap=8, upscale_am
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else:
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return val / up
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def get_upscale_pos(dim, val):
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up = index_formulas[dim]
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if callable(up):
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return up(val)
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else:
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return up * val
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def get_downscale_pos(dim, val):
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up = index_formulas[dim]
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if callable(up):
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return up(val)
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else:
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return val / up
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if downscale:
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get_scale = get_downscale
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get_pos = get_downscale_pos
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else:
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get_scale = get_upscale
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get_pos = get_upscale_pos
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def mult_list_upscale(a):
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out = []
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@ -881,7 +903,7 @@ def tiled_scale_multidim(samples, function, tile=(64, 64), overlap=8, upscale_am
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pos = max(0, min(s.shape[d + 2] - overlap[d], it[d]))
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l = min(tile[d], s.shape[d + 2] - pos)
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s_in = s_in.narrow(d + 2, pos, l)
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upscaled.append(round(get_scale(d, pos)))
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upscaled.append(round(get_pos(d, pos)))
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ps = function(s_in).to(output_device)
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mask = torch.ones_like(ps)
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14
nodes.py
14
nodes.py
@ -293,17 +293,27 @@ class VAEDecodeTiled:
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return {"required": {"samples": ("LATENT", ), "vae": ("VAE", ),
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"tile_size": ("INT", {"default": 512, "min": 64, "max": 4096, "step": 32}),
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"overlap": ("INT", {"default": 64, "min": 0, "max": 4096, "step": 32}),
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"temporal_size": ("INT", {"default": 64, "min": 8, "max": 4096, "step": 4, "tooltip": "Only used for video VAEs: Amount of frames to decode at a time."}),
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"temporal_overlap": ("INT", {"default": 8, "min": 4, "max": 4096, "step": 4, "tooltip": "Only used for video VAEs: Amount of frames to overlap."}),
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}}
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RETURN_TYPES = ("IMAGE",)
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FUNCTION = "decode"
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CATEGORY = "_for_testing"
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def decode(self, vae, samples, tile_size, overlap=64):
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def decode(self, vae, samples, tile_size, overlap=64, temporal_size=64, temporal_overlap=8):
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if tile_size < overlap * 4:
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overlap = tile_size // 4
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temporal_compression = vae.temporal_compression_decode()
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if temporal_compression is not None:
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temporal_size = max(2, temporal_size // temporal_compression)
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temporal_overlap = min(1, temporal_size // 2, temporal_overlap // temporal_compression)
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else:
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temporal_size = None
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temporal_overlap = None
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compression = vae.spacial_compression_decode()
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images = vae.decode_tiled(samples["samples"], tile_x=tile_size // compression, tile_y=tile_size // compression, overlap=overlap // compression)
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images = vae.decode_tiled(samples["samples"], tile_x=tile_size // compression, tile_y=tile_size // compression, overlap=overlap // compression, tile_t=temporal_size, overlap_t=temporal_overlap)
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if len(images.shape) == 5: #Combine batches
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images = images.reshape(-1, images.shape[-3], images.shape[-2], images.shape[-1])
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return (images, )
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