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https://github.com/modelscope/DiffSynth-Studio.git
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revert FluxLoRAConverter due to dependency issues
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@@ -202,3 +202,99 @@ class FluxLoRALoader(GeneralLoRALoader):
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state_dict_.pop(name.replace(f".{component}_to_q.", f".{component}_to_k."))
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state_dict_.pop(name.replace(f".{component}_to_q.", f".{component}_to_v."))
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return state_dict_
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class FluxLoRAConverter:
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def __init__(self):
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pass
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@staticmethod
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def align_to_opensource_format(state_dict, alpha=None):
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prefix_rename_dict = {
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"single_blocks": "lora_unet_single_blocks",
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"blocks": "lora_unet_double_blocks",
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}
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middle_rename_dict = {
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"norm.linear": "modulation_lin",
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"to_qkv_mlp": "linear1",
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"proj_out": "linear2",
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"norm1_a.linear": "img_mod_lin",
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"norm1_b.linear": "txt_mod_lin",
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"attn.a_to_qkv": "img_attn_qkv",
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"attn.b_to_qkv": "txt_attn_qkv",
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"attn.a_to_out": "img_attn_proj",
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"attn.b_to_out": "txt_attn_proj",
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"ff_a.0": "img_mlp_0",
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"ff_a.2": "img_mlp_2",
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"ff_b.0": "txt_mlp_0",
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"ff_b.2": "txt_mlp_2",
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}
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suffix_rename_dict = {
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"lora_B.weight": "lora_up.weight",
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"lora_A.weight": "lora_down.weight",
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}
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state_dict_ = {}
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for name, param in state_dict.items():
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names = name.split(".")
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if names[-2] != "lora_A" and names[-2] != "lora_B":
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names.pop(-2)
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prefix = names[0]
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middle = ".".join(names[2:-2])
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suffix = ".".join(names[-2:])
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block_id = names[1]
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if middle not in middle_rename_dict:
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continue
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rename = prefix_rename_dict[prefix] + "_" + block_id + "_" + middle_rename_dict[middle] + "." + suffix_rename_dict[suffix]
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state_dict_[rename] = param
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if rename.endswith("lora_up.weight"):
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lora_alpha = alpha if alpha is not None else param.shape[-1]
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state_dict_[rename.replace("lora_up.weight", "alpha")] = torch.tensor((lora_alpha,))[0]
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return state_dict_
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@staticmethod
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def align_to_diffsynth_format(state_dict):
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rename_dict = {
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"lora_unet_double_blocks_blockid_img_mod_lin.lora_down.weight": "blocks.blockid.norm1_a.linear.lora_A.default.weight",
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"lora_unet_double_blocks_blockid_img_mod_lin.lora_up.weight": "blocks.blockid.norm1_a.linear.lora_B.default.weight",
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"lora_unet_double_blocks_blockid_txt_mod_lin.lora_down.weight": "blocks.blockid.norm1_b.linear.lora_A.default.weight",
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"lora_unet_double_blocks_blockid_txt_mod_lin.lora_up.weight": "blocks.blockid.norm1_b.linear.lora_B.default.weight",
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"lora_unet_double_blocks_blockid_img_attn_qkv.lora_down.weight": "blocks.blockid.attn.a_to_qkv.lora_A.default.weight",
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"lora_unet_double_blocks_blockid_img_attn_qkv.lora_up.weight": "blocks.blockid.attn.a_to_qkv.lora_B.default.weight",
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"lora_unet_double_blocks_blockid_txt_attn_qkv.lora_down.weight": "blocks.blockid.attn.b_to_qkv.lora_A.default.weight",
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"lora_unet_double_blocks_blockid_txt_attn_qkv.lora_up.weight": "blocks.blockid.attn.b_to_qkv.lora_B.default.weight",
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"lora_unet_double_blocks_blockid_img_attn_proj.lora_down.weight": "blocks.blockid.attn.a_to_out.lora_A.default.weight",
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"lora_unet_double_blocks_blockid_img_attn_proj.lora_up.weight": "blocks.blockid.attn.a_to_out.lora_B.default.weight",
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"lora_unet_double_blocks_blockid_txt_attn_proj.lora_down.weight": "blocks.blockid.attn.b_to_out.lora_A.default.weight",
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"lora_unet_double_blocks_blockid_txt_attn_proj.lora_up.weight": "blocks.blockid.attn.b_to_out.lora_B.default.weight",
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"lora_unet_double_blocks_blockid_img_mlp_0.lora_down.weight": "blocks.blockid.ff_a.0.lora_A.default.weight",
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"lora_unet_double_blocks_blockid_img_mlp_0.lora_up.weight": "blocks.blockid.ff_a.0.lora_B.default.weight",
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"lora_unet_double_blocks_blockid_img_mlp_2.lora_down.weight": "blocks.blockid.ff_a.2.lora_A.default.weight",
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"lora_unet_double_blocks_blockid_img_mlp_2.lora_up.weight": "blocks.blockid.ff_a.2.lora_B.default.weight",
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"lora_unet_double_blocks_blockid_txt_mlp_0.lora_down.weight": "blocks.blockid.ff_b.0.lora_A.default.weight",
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"lora_unet_double_blocks_blockid_txt_mlp_0.lora_up.weight": "blocks.blockid.ff_b.0.lora_B.default.weight",
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"lora_unet_double_blocks_blockid_txt_mlp_2.lora_down.weight": "blocks.blockid.ff_b.2.lora_A.default.weight",
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"lora_unet_double_blocks_blockid_txt_mlp_2.lora_up.weight": "blocks.blockid.ff_b.2.lora_B.default.weight",
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"lora_unet_single_blocks_blockid_modulation_lin.lora_down.weight": "single_blocks.blockid.norm.linear.lora_A.default.weight",
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"lora_unet_single_blocks_blockid_modulation_lin.lora_up.weight": "single_blocks.blockid.norm.linear.lora_B.default.weight",
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"lora_unet_single_blocks_blockid_linear1.lora_down.weight": "single_blocks.blockid.to_qkv_mlp.lora_A.default.weight",
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"lora_unet_single_blocks_blockid_linear1.lora_up.weight": "single_blocks.blockid.to_qkv_mlp.lora_B.default.weight",
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"lora_unet_single_blocks_blockid_linear2.lora_down.weight": "single_blocks.blockid.proj_out.lora_A.default.weight",
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"lora_unet_single_blocks_blockid_linear2.lora_up.weight": "single_blocks.blockid.proj_out.lora_B.default.weight",
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}
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def guess_block_id(name):
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names = name.split("_")
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for i in names:
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if i.isdigit():
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return i, name.replace(f"_{i}_", "_blockid_")
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return None, None
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state_dict_ = {}
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for name, param in state_dict.items():
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block_id, source_name = guess_block_id(name)
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if source_name in rename_dict:
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target_name = rename_dict[source_name]
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target_name = target_name.replace(".blockid.", f".{block_id}.")
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state_dict_[target_name] = param
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else:
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state_dict_[name] = param
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return state_dict_
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