Files
ComfyUI-Lora-Manager/py/nodes/lora_randomizer.py
Will Miao 1ae1b0d607 refactor: move No LoRA feature from LoRA Pool to Lora Cycler widget
Move the 'empty/no LoRA' cycling functionality from the LoRA Pool node
to the Lora Cycler widget for cleaner architecture:

Frontend changes:
- Add include_no_lora field to CyclerConfig interface
- Add includeNoLora state and logic to useLoraCyclerState composable
- Add toggle UI in LoraCyclerSettingsView with special styling
- Show 'No LoRA' entry in LoraListModal when enabled
- Update LoraCyclerWidget to integrate new logic

Backend changes:
- lora_cycler.py reads include_no_lora from config
- Calculate effective_total_count (actual count + 1 when enabled)
- Return empty lora_stack when on No LoRA position
- Return actual LoRA count in total_count (not effective count)

Reverted files to pre-PR state:
- lora_loader.py, lora_pool.py, lora_randomizer.py, lora_stacker.py
- lora_routes.py, lora_service.py
- LoraPoolWidget.vue and related files

Related to PR #861

Co-authored-by: dogatech <dogatech@dogatech.home>
2026-03-19 14:19:49 +08:00

207 lines
7.7 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 random
import os
from ..utils.utils import get_lora_info
from .utils import extract_lora_name
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