Files
ComfyUI-Lora-Manager/py/nodes/lora_randomizer.py
Will Miao b11c90e19b feat: add type ignore comments and remove unused imports
- Add `# type: ignore` comments to comfy.sd and folder_paths imports
- Remove unused imports: os, random, and extract_lora_name
- Clean up import statements across checkpoint_loader, lora_randomizer, and unet_loader nodes
2026-03-19 15:54:49 +08:00

205 lines
7.6 KiB
Python

"""
Lora Randomizer Node - Randomly selects LoRAs from a pool with configurable settings.
This node accepts optional pool_config input to filter available LoRAs, and outputs
a LORA_STACK with randomly selected LoRAs. Returns UI updates with new random LoRAs
and tracks the last used combination for reuse.
"""
import logging
import os
from ..utils.utils import get_lora_info
logger = logging.getLogger(__name__)
class LoraRandomizerLM:
"""Node that randomly selects LoRAs from a pool"""
NAME = "Lora Randomizer (LoraManager)"
CATEGORY = "Lora Manager/randomizer"
@classmethod
def INPUT_TYPES(cls):
return {
"required": {
"randomizer_config": ("RANDOMIZER_CONFIG", {}),
"loras": ("LORAS", {}),
},
"optional": {
"pool_config": ("POOL_CONFIG", {}),
},
}
RETURN_TYPES = ("LORA_STACK",)
RETURN_NAMES = ("LORA_STACK",)
FUNCTION = "randomize"
OUTPUT_NODE = False
def _preprocess_loras_input(self, loras):
"""
Preprocess loras input to handle different widget formats.
Args:
loras: Input from widget, either:
- List of LoRA dicts (expected format)
- Dict with '__value__' key containing the list
Returns:
List of LoRA dicts
"""
if isinstance(loras, dict) and "__value__" in loras:
return loras["__value__"]
return loras
async def randomize(self, randomizer_config, loras, pool_config=None):
"""
Randomize LoRAs based on configuration and pool filters.
Args:
randomizer_config: Dict with randomizer settings (count, strength ranges, roll_mode)
loras: List of LoRA dicts from LORAS widget (includes locked state)
pool_config: Optional config from LoRA Pool node for filtering
Returns:
Dictionary with 'result' (LORA_STACK tuple) and 'ui' (for widget display)
"""
from ..services.service_registry import ServiceRegistry
loras = self._preprocess_loras_input(loras)
roll_mode = randomizer_config.get("roll_mode", "always")
logger.debug(f"[LoraRandomizerLM] roll_mode: {roll_mode}")
# Dual seed mechanism for batch queue synchronization
# execution_seed: seed for generating execution_stack (= previous next_seed)
# next_seed: seed for generating ui_loras (= what will be displayed after execution)
execution_seed = randomizer_config.get("execution_seed", None)
next_seed = randomizer_config.get("next_seed", None)
if roll_mode == "fixed":
ui_loras = loras
execution_loras = loras
else:
scanner = await ServiceRegistry.get_lora_scanner()
# Generate execution_loras from execution_seed (if available)
if execution_seed is not None:
# Use execution_seed to regenerate the same loras that were shown to user
execution_loras = await self._generate_random_loras_for_ui(
scanner, randomizer_config, loras, pool_config, seed=execution_seed
)
else:
# First execution: use loras input (what user sees in the widget)
execution_loras = loras
# Generate ui_loras from next_seed (for display after execution)
ui_loras = await self._generate_random_loras_for_ui(
scanner, randomizer_config, loras, pool_config, seed=next_seed
)
execution_stack = self._build_execution_stack_from_input(execution_loras)
return {
"result": (execution_stack,),
"ui": {"loras": ui_loras, "last_used": execution_loras},
}
def _build_execution_stack_from_input(self, loras):
"""
Build LORA_STACK tuple from input loras list for execution.
Args:
loras: List of LoRA dicts with name, strength, clipStrength, active
Returns:
List of tuples (lora_path, model_strength, clip_strength)
"""
lora_stack = []
for lora in loras:
if not lora.get("active", False):
continue
# Get file path
lora_path, trigger_words = get_lora_info(lora["name"])
if not lora_path:
logger.warning(
f"[LoraRandomizerLM] Could not find path for LoRA: {lora['name']}"
)
continue
# Normalize path separators
lora_path = lora_path.replace("/", os.sep)
# Extract strengths (convert to float to prevent string subtraction errors)
model_strength = float(lora.get("strength", 1.0))
clip_strength = float(lora.get("clipStrength", model_strength))
lora_stack.append((lora_path, model_strength, clip_strength))
return lora_stack
async def _generate_random_loras_for_ui(
self, scanner, randomizer_config, input_loras, pool_config=None, seed=None
):
"""
Generate new random loras for UI display.
Args:
scanner: LoraScanner instance
randomizer_config: Dict with randomizer settings
input_loras: Current input loras (for extracting locked loras)
pool_config: Optional pool filters
seed: Optional seed for deterministic randomization
Returns:
List of LoRA dicts for UI display
"""
from ..services.lora_service import LoraService
# Parse randomizer settings (convert numeric values to float to prevent type errors)
count_mode = randomizer_config.get("count_mode", "range")
count_fixed = int(randomizer_config.get("count_fixed", 5))
count_min = int(randomizer_config.get("count_min", 3))
count_max = int(randomizer_config.get("count_max", 7))
model_strength_min = float(randomizer_config.get("model_strength_min", 0.0))
model_strength_max = float(randomizer_config.get("model_strength_max", 1.0))
use_same_clip_strength = randomizer_config.get("use_same_clip_strength", True)
clip_strength_min = float(randomizer_config.get("clip_strength_min", 0.0))
clip_strength_max = float(randomizer_config.get("clip_strength_max", 1.0))
use_recommended_strength = randomizer_config.get(
"use_recommended_strength", False
)
recommended_strength_scale_min = float(
randomizer_config.get("recommended_strength_scale_min", 0.5)
)
recommended_strength_scale_max = float(
randomizer_config.get("recommended_strength_scale_max", 1.0)
)
# Extract locked LoRAs from input
locked_loras = [lora for lora in input_loras if lora.get("locked", False)]
# Use LoraService to generate random LoRAs
lora_service = LoraService(scanner)
result_loras = await lora_service.get_random_loras(
count=count_fixed,
model_strength_min=model_strength_min,
model_strength_max=model_strength_max,
use_same_clip_strength=use_same_clip_strength,
clip_strength_min=clip_strength_min,
clip_strength_max=clip_strength_max,
locked_loras=locked_loras,
pool_config=pool_config,
count_mode=count_mode,
count_min=count_min,
count_max=count_max,
use_recommended_strength=use_recommended_strength,
recommended_strength_scale_min=recommended_strength_scale_min,
recommended_strength_scale_max=recommended_strength_scale_max,
seed=seed,
)
return result_loras