Basic implementation of z image fun control union 2.0 (#11304)
The inpaint part is currently missing and will be implemented later. I think they messed up this model pretty bad. They added some control_noise_refiner blocks but don't actually use them. There is a typo in their code so instead of doing control_noise_refiner -> control_layers it runs the whole control_layers twice. Unfortunately they trained with this typo so the model works but is kind of slow and would probably perform a lot better if they corrected their code and trained it again.
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@@ -536,6 +536,7 @@ class NextDiT(nn.Module):
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bsz = len(x)
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pH = pW = self.patch_size
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device = x[0].device
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orig_x = x
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if self.pad_tokens_multiple is not None:
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pad_extra = (-cap_feats.shape[1]) % self.pad_tokens_multiple
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@@ -572,13 +573,21 @@ class NextDiT(nn.Module):
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freqs_cis = self.rope_embedder(torch.cat((cap_pos_ids, x_pos_ids), dim=1)).movedim(1, 2)
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patches = transformer_options.get("patches", {})
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# refine context
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for layer in self.context_refiner:
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cap_feats = layer(cap_feats, cap_mask, freqs_cis[:, :cap_pos_ids.shape[1]], transformer_options=transformer_options)
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padded_img_mask = None
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for layer in self.noise_refiner:
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x_input = x
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for i, layer in enumerate(self.noise_refiner):
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x = layer(x, padded_img_mask, freqs_cis[:, cap_pos_ids.shape[1]:], t, transformer_options=transformer_options)
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if "noise_refiner" in patches:
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for p in patches["noise_refiner"]:
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out = p({"img": x, "img_input": x_input, "txt": cap_feats, "pe": freqs_cis[:, cap_pos_ids.shape[1]:], "vec": t, "x": orig_x, "block_index": i, "transformer_options": transformer_options, "block_type": "noise_refiner"})
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if "img" in out:
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x = out["img"]
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padded_full_embed = torch.cat((cap_feats, x), dim=1)
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mask = None
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@@ -622,14 +631,15 @@ class NextDiT(nn.Module):
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patches = transformer_options.get("patches", {})
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x_is_tensor = isinstance(x, torch.Tensor)
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img, mask, img_size, cap_size, freqs_cis = self.patchify_and_embed(x, cap_feats, cap_mask, t, num_tokens, transformer_options=transformer_options)
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img, mask, img_size, cap_size, freqs_cis = self.patchify_and_embed(x, cap_feats, cap_mask, adaln_input, num_tokens, transformer_options=transformer_options)
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freqs_cis = freqs_cis.to(img.device)
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img_input = img
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for i, layer in enumerate(self.layers):
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img = layer(img, mask, freqs_cis, adaln_input, transformer_options=transformer_options)
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if "double_block" in patches:
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for p in patches["double_block"]:
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out = p({"img": img[:, cap_size[0]:], "txt": img[:, :cap_size[0]], "pe": freqs_cis[:, cap_size[0]:], "vec": adaln_input, "x": x, "block_index": i, "transformer_options": transformer_options})
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out = p({"img": img[:, cap_size[0]:], "img_input": img_input[:, cap_size[0]:], "txt": img[:, :cap_size[0]], "pe": freqs_cis[:, cap_size[0]:], "vec": adaln_input, "x": x, "block_index": i, "transformer_options": transformer_options})
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if "img" in out:
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img[:, cap_size[0]:] = out["img"]
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if "txt" in out:
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