[[subsets]] num_repeats = 3 keep_tokens = 0 caption_extension = ".txt" shuffle_caption = true flip_aug = false color_aug = false random_crop = true is_reg = false image_dir = "/mnt/d/Desktop/stable diffusion/LoRA/lora_datasets/silence/main" [noise_args] [sample_args] [logging_args] [general_args.args] pretrained_model_name_or_path = "/mnt/d/stable_diffusion_models_and_outputs/models/Stable-diffusion/sdxl/sdxl_pruned.safetensors" seed = 23 xformers = true max_data_loader_n_workers = 1 persistent_data_loader_workers = true max_token_length = 225 prior_loss_weight = 1.0 sdxl = true full_bf16 = true max_train_steps = 200 [general_args.dataset_args] resolution = 1024 batch_size = 2 [network_args.args] network_dim = 16 network_alpha = 8.0 min_timestep = 0 max_timestep = 1000 [optimizer_args.args] optimizer_type = "AdamW8bit" lr_scheduler = "cosine" learning_rate = 0.0001 lr_scheduler_type = "LoraEasyCustomOptimizer.CustomOptimizers.CosineAnnealingWarmupRestarts" lr_scheduler_num_cycles = 4 unet_lr = 0.0005 warmup_ratio = 0.1 min_snr_gamma = 8 scale_weight_norms = 5.0 [saving_args.args] output_dir = "/mnt/d/Desktop" save_precision = "fp16" save_model_as = "safetensors" output_name = "test" save_every_n_epochs = 1 tag_occurrence = true save_toml = true [bucket_args.dataset_args] enable_bucket = true min_bucket_reso = 512 max_bucket_reso = 2048 bucket_reso_steps = 64 [network_args.args.network_args] dropout = 0.3 module_dropout = 0.25 [optimizer_args.args.lr_scheduler_args] min_lr = 1e-6 gamma = 0.85 [optimizer_args.args.optimizer_args] weight_decay = "0.1" betas = "0.9,0.99"