Aesthetic Quality Modifiers - Masterpiece

    wan_masterpieces_1.3b_v2.safetensors LORA / Wan Video 1.3B t2v

    Model Information
    Model Name
    Aesthetic Quality Modifiers - Masterpiece
    Version
    v2.0-alpha [wan-t2v-1.3b]
    Creator
    motimalu
    Size
    83.51 MB
    Downloads
    933
    Trigger
    masterpiece, very aesthetic
    Torrent Details
    BTIH
    0BBC8E64C4384B5A63D8A7F0C6CF986B7915E183
    BTMH
    492D3715BB0C415EDE4F40D8093116735C57B9E2FCD4692BE8197080464CEB8A
    SHA256
    DF30CDAC08FDD781A84526863A657FDB3A88B74BC40C2F1AFEECD14C7EAC29ED
    Upload Date
    12 months ago
    Uploader
    CivitasBay.org
    Status
    1 Seeders
    0 Peers
    Info

    Aesthetic Quality Modifiers - Masterpiece

    Training data is a subset of all my manually rated datasets with the quality/aesthetic modifiers, including only the masterpiece tagged images.

    ℹ️ LoRA work best when applied to the base models on which they are trained. Please read the About This Version on the appropriate base models, trigger usage, and workflow/training information.

    Version 5.0 [anima-preview-3] (Latest)

    (Temporarily including here as the "About This Version" section is having issues)

    Trained on Anima Preview-3-base

    Assume that any lora trained on the preview version won't work well on the final version.

    Recommended prompt structure:

    Positive prompt (quality tags at the start of prompt):

    masterpiece, best quality, very aesthetic, {{tags}}, {{natural language}}

    Updated dataset of 386 images, all masterpiece tagged images trained in Kirazuri (Anima) model version 2 dataset.

    Trained at 1024 x 1024, 1280 x 1280, and 1536 x 1024 resolutions.

    Previews are mostly generated at 1536 x 1024 or 1024 x 1536 .

    Training config:

    diffusion-pipe commit b0aa4f1e03169f3280c8518d37570a448420f8be

    # dataset-anima.toml
    resolutions = [1024, 1280, 1536]
    
    enable_ar_bucket = true
    min_ar = 0.5
    max_ar = 2.0
    num_ar_buckets = 9
    
    # Totals
    # 386 images
    # 15504 samples/epoch
    
    # 153 images
    # 48 samples/image - 7344 samples/epoch
    [[directory]]
    path = '/mnt/d/training_data/0_masterpieces_kirazuri/1536x1536'
    repeats = 16
    resolutions = [1024, 1280, 1536]
    
    # 44 images
    # 48 samples/image - 2112 samples/epoch
    [[directory]]
    path = '/mnt/d/training_data/0_masterpieces_kirazuri/1280x1280'
    repeats = 24
    resolutions = [1024, 1280]
    
    # 189 images
    # 32 samples/image - 6048 samples/epoch
    [[directory]]
    path = '/mnt/d/training_data/0_masterpieces_kirazuri/1024x1024'
    repeats = 32
    resolutions = [1024]
    
    # anima-lora.toml 
    output_dir = '/mnt/d/anima/training_output/masterpieces-v5'
    
    dataset = 'dataset-anima.toml'
    
    # training settings
    epochs = 5
    # Per-resolution batch sizes
    micro_batch_size_per_gpu = [[1024, 32], [1280, 24], [1536, 16]]
    pipeline_stages = 1
    gradient_accumulation_steps = 1
    gradient_clipping = 1
    warmup_steps = 100
    lr_scheduler = 'cosine'
    
    # misc settings
    save_every_n_epochs = 1
    activation_checkpointing = true
    
    partition_method = 'parameters'
    
    save_dtype = 'bfloat16'
    caching_batch_size = 1
    map_num_proc = 8
    steps_per_print = 1
    compile = true
    
    [model]
    type = 'anima'
    transformer_path = '/mnt/c/workspace/models/diffusion_models/anima-preview3-base.safetensors'
    vae_path = '/mnt/c/workspace/models/vae/qwen_image_vae.safetensors'
    llm_path = '/mnt/c/workspace/models/text_encoders/qwen_3_06b_base.safetensors'
    dtype = 'bfloat16'
    llm_adapter_lr = 1e-6
    flux_shift = true
    multiscale_loss_weight = 0.5
    sigmoid_scale = 1.3
    
    [adapter]
    type = 'lora'
    rank = 32
    dtype = 'bfloat16'
    
    [optimizer]
    type = 'adamw_optimi'
    lr = 4e-5
    betas = [0.9, 0.99]
    weight_decay = 0.01
    eps = 1e-8

    Gallery
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