import os import torch import numpy as np from PIL import Image from PIL.PngImagePlugin import PngInfo import concurrent.futures import re import time class FastAbsoluteSaver: @classmethod def INPUT_TYPES(s): return { "required": { "images": ("IMAGE", ), "output_path": ("STRING", {"default": "D:\\Datasets\\Sharp_Output"}), "filename_prefix": ("STRING", {"default": "frame"}), "metadata_key": ("STRING", {"default": "sharpness_score"}), # NEW: Boolean Switch "filename_with_score": ("BOOLEAN", {"default": False, "label": "Append Score to Filename"}), }, "optional": { "scores_info": ("STRING", {"forceInput": True}), } } RETURN_TYPES = () FUNCTION = "save_images_fast" OUTPUT_NODE = True CATEGORY = "BetaHelper/IO" def parse_info(self, info_str, batch_size): """ Extracts both Frame Indices AND Scores. """ if not info_str: return ([0]*batch_size, [0.0]*batch_size) matches = re.findall(r"F:(\d+).*?Score:\s*(\d+(\.\d+)?)", info_str) frames = [] scores = [] for m in matches: try: frames.append(int(m[0])) scores.append(float(m[1])) except ValueError: pass if len(frames) < batch_size: missing = batch_size - len(frames) frames.extend([0] * missing) scores.extend([0.0] * missing) return frames[:batch_size], scores[:batch_size] def save_single_image(self, tensor_img, full_path, score, key_name): try: array = 255. * tensor_img.cpu().numpy() img = Image.fromarray(np.clip(array, 0, 255).astype(np.uint8)) metadata = PngInfo() metadata.add_text(key_name, str(score)) metadata.add_text("software", "ComfyUI_Parallel_Node") img.save(full_path, pnginfo=metadata, compress_level=1) return True except Exception as e: print(f"xx- Error saving {full_path}: {e}") return False def save_images_fast(self, images, output_path, filename_prefix, metadata_key, filename_with_score, scores_info=None): output_path = output_path.strip('"') if not os.path.exists(output_path): try: os.makedirs(output_path, exist_ok=True) except OSError: raise ValueError(f"Could not create directory: {output_path}") batch_size = len(images) frame_indices, scores_list = self.parse_info(scores_info, batch_size) print(f"xx- FastSaver: Saving {batch_size} images to {output_path}...") with concurrent.futures.ThreadPoolExecutor(max_workers=16) as executor: futures = [] for i, img_tensor in enumerate(images): real_frame_num = frame_indices[i] current_score = scores_list[i] # BASE NAME: frame_001450 base_name = f"{filename_prefix}_{real_frame_num:06d}" # OPTION: Append Score -> frame_001450_1500 if filename_with_score: base_name += f"_{int(current_score)}" # FALLBACK for missing data if real_frame_num == 0 and scores_info is None: base_name = f"{filename_prefix}_{int(time.time())}_{i:03d}" fname = f"{base_name}.png" full_path = os.path.join(output_path, fname) futures.append(executor.submit(self.save_single_image, img_tensor, full_path, current_score, metadata_key)) concurrent.futures.wait(futures) return {"ui": {"images": []}}