Files
ComfyUI-LM-Remote/nodes/lora_loader.py
Ethanfel 980f406573 feat: initial release of ComfyUI-LM-Remote
Remote-aware LoRA Manager nodes that fetch metadata via HTTP from a
remote Docker instance while loading LoRA files from local NFS/SMB
mounts. Includes reverse-proxy middleware for transparent web UI access.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-02-22 00:46:03 +01:00

206 lines
8.0 KiB
Python

"""Remote LoRA Loader nodes — fetch metadata from the remote LoRA Manager."""
from __future__ import annotations
import logging
import re
from nodes import LoraLoader # type: ignore
from .remote_utils import get_lora_info_remote
from .utils import FlexibleOptionalInputType, any_type, extract_lora_name, get_loras_list, nunchaku_load_lora
logger = logging.getLogger(__name__)
class LoraLoaderRemoteLM:
NAME = "Lora Loader (Remote, LoraManager)"
CATEGORY = "Lora Manager/loaders"
@classmethod
def INPUT_TYPES(cls):
return {
"required": {
"model": ("MODEL",),
"text": ("AUTOCOMPLETE_TEXT_LORAS", {
"placeholder": "Search LoRAs to add...",
"tooltip": "Format: <lora:lora_name:strength> separated by spaces or punctuation",
}),
},
"optional": FlexibleOptionalInputType(any_type),
}
RETURN_TYPES = ("MODEL", "CLIP", "STRING", "STRING")
RETURN_NAMES = ("MODEL", "CLIP", "trigger_words", "loaded_loras")
FUNCTION = "load_loras"
def load_loras(self, model, text, **kwargs):
loaded_loras = []
all_trigger_words = []
clip = kwargs.get("clip", None)
lora_stack = kwargs.get("lora_stack", None)
is_nunchaku_model = False
try:
model_wrapper = model.model.diffusion_model
if model_wrapper.__class__.__name__ == "ComfyFluxWrapper":
is_nunchaku_model = True
logger.info("Detected Nunchaku Flux model")
except (AttributeError, TypeError):
pass
# Process lora_stack
if lora_stack:
for lora_path, model_strength, clip_strength in lora_stack:
if is_nunchaku_model:
model = nunchaku_load_lora(model, lora_path, model_strength)
else:
model, clip = LoraLoader().load_lora(model, clip, lora_path, model_strength, clip_strength)
lora_name = extract_lora_name(lora_path)
_, trigger_words = get_lora_info_remote(lora_name)
all_trigger_words.extend(trigger_words)
if not is_nunchaku_model and abs(model_strength - clip_strength) > 0.001:
loaded_loras.append(f"{lora_name}: {model_strength},{clip_strength}")
else:
loaded_loras.append(f"{lora_name}: {model_strength}")
# Process loras from widget
loras_list = get_loras_list(kwargs)
for lora in loras_list:
if not lora.get("active", False):
continue
lora_name = lora["name"]
model_strength = float(lora["strength"])
clip_strength = float(lora.get("clipStrength", model_strength))
lora_path, trigger_words = get_lora_info_remote(lora_name)
if is_nunchaku_model:
model = nunchaku_load_lora(model, lora_path, model_strength)
else:
model, clip = LoraLoader().load_lora(model, clip, lora_path, model_strength, clip_strength)
if not is_nunchaku_model and abs(model_strength - clip_strength) > 0.001:
loaded_loras.append(f"{lora_name}: {model_strength},{clip_strength}")
else:
loaded_loras.append(f"{lora_name}: {model_strength}")
all_trigger_words.extend(trigger_words)
trigger_words_text = ",, ".join(all_trigger_words) if all_trigger_words else ""
formatted_loras = []
for item in loaded_loras:
parts = item.split(":")
lora_name = parts[0]
strength_parts = parts[1].strip().split(",")
if len(strength_parts) > 1:
formatted_loras.append(f"<lora:{lora_name}:{strength_parts[0].strip()}:{strength_parts[1].strip()}>")
else:
formatted_loras.append(f"<lora:{lora_name}:{strength_parts[0].strip()}>")
formatted_loras_text = " ".join(formatted_loras)
return (model, clip, trigger_words_text, formatted_loras_text)
class LoraTextLoaderRemoteLM:
NAME = "LoRA Text Loader (Remote, LoraManager)"
CATEGORY = "Lora Manager/loaders"
@classmethod
def INPUT_TYPES(cls):
return {
"required": {
"model": ("MODEL",),
"lora_syntax": ("STRING", {
"forceInput": True,
"tooltip": "Format: <lora:lora_name:strength> separated by spaces or punctuation",
}),
},
"optional": {
"clip": ("CLIP",),
"lora_stack": ("LORA_STACK",),
},
}
RETURN_TYPES = ("MODEL", "CLIP", "STRING", "STRING")
RETURN_NAMES = ("MODEL", "CLIP", "trigger_words", "loaded_loras")
FUNCTION = "load_loras_from_text"
def parse_lora_syntax(self, text):
pattern = r"<lora:([^:>]+):([^:>]+)(?::([^:>]+))?>"
matches = re.findall(pattern, text, re.IGNORECASE)
loras = []
for match in matches:
loras.append({
"name": match[0],
"model_strength": float(match[1]),
"clip_strength": float(match[2]) if match[2] else float(match[1]),
})
return loras
def load_loras_from_text(self, model, lora_syntax, clip=None, lora_stack=None):
loaded_loras = []
all_trigger_words = []
is_nunchaku_model = False
try:
model_wrapper = model.model.diffusion_model
if model_wrapper.__class__.__name__ == "ComfyFluxWrapper":
is_nunchaku_model = True
logger.info("Detected Nunchaku Flux model")
except (AttributeError, TypeError):
pass
if lora_stack:
for lora_path, model_strength, clip_strength in lora_stack:
if is_nunchaku_model:
model = nunchaku_load_lora(model, lora_path, model_strength)
else:
model, clip = LoraLoader().load_lora(model, clip, lora_path, model_strength, clip_strength)
lora_name = extract_lora_name(lora_path)
_, trigger_words = get_lora_info_remote(lora_name)
all_trigger_words.extend(trigger_words)
if not is_nunchaku_model and abs(model_strength - clip_strength) > 0.001:
loaded_loras.append(f"{lora_name}: {model_strength},{clip_strength}")
else:
loaded_loras.append(f"{lora_name}: {model_strength}")
parsed_loras = self.parse_lora_syntax(lora_syntax)
for lora in parsed_loras:
lora_name = lora["name"]
model_strength = lora["model_strength"]
clip_strength = lora["clip_strength"]
lora_path, trigger_words = get_lora_info_remote(lora_name)
if is_nunchaku_model:
model = nunchaku_load_lora(model, lora_path, model_strength)
else:
model, clip = LoraLoader().load_lora(model, clip, lora_path, model_strength, clip_strength)
if not is_nunchaku_model and abs(model_strength - clip_strength) > 0.001:
loaded_loras.append(f"{lora_name}: {model_strength},{clip_strength}")
else:
loaded_loras.append(f"{lora_name}: {model_strength}")
all_trigger_words.extend(trigger_words)
trigger_words_text = ",, ".join(all_trigger_words) if all_trigger_words else ""
formatted_loras = []
for item in loaded_loras:
parts = item.split(":")
lora_name = parts[0].strip()
strength_parts = parts[1].strip().split(",")
if len(strength_parts) > 1:
formatted_loras.append(f"<lora:{lora_name}:{strength_parts[0].strip()}:{strength_parts[1].strip()}>")
else:
formatted_loras.append(f"<lora:{lora_name}:{strength_parts[0].strip()}>")
formatted_loras_text = " ".join(formatted_loras)
return (model, clip, trigger_words_text, formatted_loras_text)