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https://github.com/willmiao/ComfyUI-Lora-Manager.git
synced 2026-03-21 21:22:11 -03:00
refactor: streamline prompt matching logic in MetadataProcessor
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@@ -299,14 +299,7 @@ class MetadataProcessor:
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params["sampler"] = sampling_params.get("sampler_name")
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params["scheduler"] = sampling_params.get("scheduler")
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# First try to match conditioning objects to prompts (new method)
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if primary_sampler_id:
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prompt_results = MetadataProcessor.match_conditioning_to_prompts(metadata, primary_sampler_id)
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params["prompt"] = prompt_results["prompt"]
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params["negative_prompt"] = prompt_results["negative_prompt"]
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# If prompts were not found by object matching, fall back to tracing connections
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if not params["prompt"] and prompt and primary_sampler_id:
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if prompt and primary_sampler_id:
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# Check if this is a SamplerCustomAdvanced node
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is_custom_advanced = False
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if prompt.original_prompt and primary_sampler_id in prompt.original_prompt:
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@@ -353,29 +346,36 @@ class MetadataProcessor:
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params["prompt"] = metadata[PROMPTS][positive_node_id].get("text", "")
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else:
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# Original tracing for standard samplers
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# Trace positive prompt - look specifically for CLIPTextEncode
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positive_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "positive", max_depth=10)
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if positive_node_id and positive_node_id in metadata.get(PROMPTS, {}):
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params["prompt"] = metadata[PROMPTS][positive_node_id].get("text", "")
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else:
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# If CLIPTextEncode is not found, try to find CLIPTextEncodeFlux
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positive_flux_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "positive", "CLIPTextEncodeFlux", max_depth=10)
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if positive_flux_node_id and positive_flux_node_id in metadata.get(PROMPTS, {}):
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params["prompt"] = metadata[PROMPTS][positive_flux_node_id].get("text", "")
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# Trace negative prompt - look specifically for CLIPTextEncode
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negative_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "negative", max_depth=10)
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if negative_node_id and negative_node_id in metadata.get(PROMPTS, {}):
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params["negative_prompt"] = metadata[PROMPTS][negative_node_id].get("text", "")
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# For standard samplers, match conditioning objects to prompts
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prompt_results = MetadataProcessor.match_conditioning_to_prompts(metadata, primary_sampler_id)
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params["prompt"] = prompt_results["prompt"]
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params["negative_prompt"] = prompt_results["negative_prompt"]
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# If prompts were still not found, fall back to tracing connections
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if not params["prompt"]:
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# Original tracing for standard samplers
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# Trace positive prompt - look specifically for CLIPTextEncode
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positive_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "positive", max_depth=10)
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if positive_node_id and positive_node_id in metadata.get(PROMPTS, {}):
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params["prompt"] = metadata[PROMPTS][positive_node_id].get("text", "")
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else:
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# If CLIPTextEncode is not found, try to find CLIPTextEncodeFlux
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positive_flux_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "positive", "CLIPTextEncodeFlux", max_depth=10)
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if positive_flux_node_id and positive_flux_node_id in metadata.get(PROMPTS, {}):
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params["prompt"] = metadata[PROMPTS][positive_flux_node_id].get("text", "")
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# Trace negative prompt - look specifically for CLIPTextEncode
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negative_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "negative", max_depth=10)
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if negative_node_id and negative_node_id in metadata.get(PROMPTS, {}):
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params["negative_prompt"] = metadata[PROMPTS][negative_node_id].get("text", "")
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# Size extraction is same for all sampler types
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# Check if the sampler itself has size information (from latent_image)
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if primary_sampler_id in metadata.get(SIZE, {}):
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width = metadata[SIZE][primary_sampler_id].get("width")
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height = metadata[SIZE][primary_sampler_id].get("height")
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if width and height:
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params["size"] = f"{width}x{height}"
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# Size extraction is same for all sampler types
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# Check if the sampler itself has size information (from latent_image)
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if primary_sampler_id in metadata.get(SIZE, {}):
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width = metadata[SIZE][primary_sampler_id].get("width")
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height = metadata[SIZE][primary_sampler_id].get("height")
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if width and height:
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params["size"] = f"{width}x{height}"
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# Extract LoRAs using the standardized format
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lora_parts = []
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