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ComfyUI-Lora-Manager/py/metadata_collector/node_extractors.py

215 lines
7.5 KiB
Python

import os
from .constants import MODELS, PROMPTS, SAMPLING, LORAS, SIZE
class NodeMetadataExtractor:
"""Base class for node-specific metadata extraction"""
@staticmethod
def extract(node_id, inputs, outputs, metadata):
"""Extract metadata from node inputs/outputs"""
pass
@staticmethod
def update(node_id, outputs, metadata):
"""Update metadata with node outputs after execution"""
pass
class GenericNodeExtractor(NodeMetadataExtractor):
"""Default extractor for nodes without specific handling"""
@staticmethod
def extract(node_id, inputs, outputs, metadata):
pass
class CheckpointLoaderExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "ckpt_name" not in inputs:
return
model_name = inputs.get("ckpt_name")
if model_name:
metadata[MODELS][node_id] = {
"name": model_name,
"type": "checkpoint",
"node_id": node_id
}
class CLIPTextEncodeExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "text" not in inputs:
return
text = inputs.get("text", "")
metadata[PROMPTS][node_id] = {
"text": text,
"node_id": node_id
}
class SamplerExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs:
return
sampling_params = {}
for key in ["seed", "steps", "cfg", "sampler_name", "scheduler", "denoise"]:
if key in inputs:
sampling_params[key] = inputs[key]
metadata[SAMPLING][node_id] = {
"parameters": sampling_params,
"node_id": node_id
}
# Extract latent image dimensions if available
if "latent_image" in inputs and inputs["latent_image"] is not None:
latent = inputs["latent_image"]
if isinstance(latent, dict) and "samples" in latent:
# Extract dimensions from latent tensor
samples = latent["samples"]
if hasattr(samples, "shape") and len(samples.shape) >= 3:
# Correct shape interpretation: [batch_size, channels, height/8, width/8]
# Multiply by 8 to get actual pixel dimensions
height = int(samples.shape[2] * 8)
width = int(samples.shape[3] * 8)
if SIZE not in metadata:
metadata[SIZE] = {}
metadata[SIZE][node_id] = {
"width": width,
"height": height,
"node_id": node_id
}
class LoraLoaderExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "lora_name" not in inputs:
return
lora_name = inputs.get("lora_name")
# Extract base filename without extension from path
lora_name = os.path.splitext(os.path.basename(lora_name))[0]
strength_model = round(float(inputs.get("strength_model", 1.0)), 2)
# Use the standardized format with lora_list
metadata[LORAS][node_id] = {
"lora_list": [
{
"name": lora_name,
"strength": strength_model
}
],
"node_id": node_id
}
class ImageSizeExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs:
return
width = inputs.get("width", 512)
height = inputs.get("height", 512)
if SIZE not in metadata:
metadata[SIZE] = {}
metadata[SIZE][node_id] = {
"width": width,
"height": height,
"node_id": node_id
}
class LoraLoaderManagerExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs:
return
active_loras = []
# Process lora_stack if available
if "lora_stack" in inputs:
lora_stack = inputs.get("lora_stack", [])
for lora_path, model_strength, clip_strength in lora_stack:
# Extract lora name from path (following the format in lora_loader.py)
lora_name = os.path.splitext(os.path.basename(lora_path))[0]
active_loras.append({
"name": lora_name,
"strength": model_strength
})
# Process loras from inputs
if "loras" in inputs:
loras_data = inputs.get("loras", [])
# Handle new format: {'loras': {'__value__': [...]}}
if isinstance(loras_data, dict) and '__value__' in loras_data:
loras_list = loras_data['__value__']
# Handle old format: {'loras': [...]}
elif isinstance(loras_data, list):
loras_list = loras_data
else:
loras_list = []
# Filter for active loras
for lora in loras_list:
if isinstance(lora, dict) and lora.get("active", True) and not lora.get("_isDummy", False):
active_loras.append({
"name": lora.get("name", ""),
"strength": float(lora.get("strength", 1.0))
})
if active_loras:
metadata[LORAS][node_id] = {
"lora_list": active_loras,
"node_id": node_id
}
class FluxGuidanceExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "guidance" not in inputs:
return
guidance_value = inputs.get("guidance")
# Store the guidance value in SAMPLING category
if node_id not in metadata[SAMPLING]:
metadata[SAMPLING][node_id] = {"parameters": {}, "node_id": node_id}
metadata[SAMPLING][node_id]["parameters"]["guidance"] = guidance_value
class UNETLoaderExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "unet_name" not in inputs:
return
model_name = inputs.get("unet_name")
if model_name:
metadata[MODELS][node_id] = {
"name": model_name,
"type": "checkpoint",
"node_id": node_id
}
# Registry of node-specific extractors
NODE_EXTRACTORS = {
"CheckpointLoaderSimple": CheckpointLoaderExtractor,
"CLIPTextEncode": CLIPTextEncodeExtractor,
"KSampler": SamplerExtractor,
"LoraLoader": LoraLoaderExtractor,
"EmptyLatentImage": ImageSizeExtractor,
"LoraManagerLoader": LoraLoaderManagerExtractor,
"SamplerCustomAdvanced": SamplerExtractor, # Add SamplerCustomAdvanced
"UNETLoader": UNETLoaderExtractor, # Updated to use dedicated extractor
"FluxGuidance": FluxGuidanceExtractor, # Add FluxGuidance
# Add other nodes as needed
}