Meowbah Character - Anima
詳細
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このバージョンについて
モデル説明
LyCORIS/loha
A lot more flexible than lora and trained with better dataset.
[network_arguments] network_dim = 8 network_alpha = 4 network_module = "networks.loha" network_train_unet_only = true network_args = ["loraplus_unet_lr_ratio=2.0"][optimizer_arguments] learning_rate = 1e-4 lr_scheduler = “cosine_with_restarts” lr_scheduler_num_cycles = 5 lr_scheduler_power = 0 lr_warmup_steps = 0.1 optimizer_type = “came_pytorch.CAME” optimizer_args = [ “weight_decay=0.01”, “enable_cautious_update=True”, “enable_cautious_weight_decay=True”, “enable_stochastic_rounding=True”, “enable_8bit=True”]
[training_arguments] pretrained_model_name_or_path = “” qwen3 = “” vae = “” max_train_epochs = 20 train_batch_size = 32 seed = 42 xformers = false use_flash_attn = false sdpa = true lowram = false no_half_vae = false gradient_checkpointing = true gradient_accumulation_steps = 1 max_data_loader_n_workers = 4 persistent_data_loader_workers = true mixed_precision = “bf16” full_bf16 = false cache_latents = true cache_latents_to_disk = true cache_text_encoder_outputs = false
lora/locon
Trained on 19 images of Meowbah, no natural language was used. Can be used as a style lora too.
[general] keep_tokens_separator = “|||” shuffle_caption = true flip_aug = false caption_extension = “.txt” enable_bucket = true bucket_no_upscale = true bucket_reso_steps = 32 min_bucket_reso = 288 max_bucket_reso = 2048[[datasets]] resolution = 768
[[datasets.subsets]] caption_tag_dropout_rate = 0.1 num_repeats = 11 image_dir = “”
[network_arguments] network_dim = 64 network_alpha = 32 network_module = “networks.lora_anima” network_train_unet_only = true[optimizer_arguments] learning_rate = 4e-4 lr_scheduler = “cosine_with_restarts” lr_scheduler_num_cycles = 3 lr_scheduler_power = 0 lr_warmup_steps = 0.1 optimizer_type = “came_pytorch.CAME” optimizer_args = [ “weight_decay=0.01”, “enable_cautious_update=True”, “enable_cautious_weight_decay=True”, “enable_stochastic_rounding=True”, “enable_8bit=True”]
[training_arguments] pretrained_model_name_or_path = “” qwen3 = “” vae = “” max_train_epochs = 15 train_batch_size = 32 seed = 42 xformers = false use_flash_attn = false sdpa = true lowram = false no_half_vae = false gradient_checkpointing = true gradient_accumulation_steps = 1 max_data_loader_n_workers = 4 persistent_data_loader_workers = true mixed_precision = “bf16” full_bf16 = false cache_latents = true cache_latents_to_disk = true cache_text_encoder_outputs = false
[sampling] sample_every_n_epochs = 1 sample_prompts = “” sample_sampler = “euler_a” sample_at_first = true
[saving_arguments] save_precision = “bf16” save_model_as = “safetensors” save_every_n_epochs = 1 save_last_n_epochs = 7 output_name = “” output_dir = “” log_prefix = “” logging_dir = “” wandb_run_name = “” wandb_api_key = “” log_with = “wandb”
Recommended settings:
Sampler: euler/er_sde/euler_ancestral
CFG: 5.0
Steps: 20
weight: 1.0


