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    Frieren フリーレン - 葬送のフリーレン - v1.0 [hunyuan]
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    Frieren フリーレン - 葬送のフリーレン

    This LoRA is intended to generate images of the character Frieren in a high quality aesthetic illustration style.

    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 and workflow/training information.

    Metadata is included in all uploaded files, you can drag the generated videos into ComfyUI to use the embedded workflows.

    For other characters, see: Sousou no Frieren Collection


    License

    Fair AI Public License 1.0-SD

    Description

    Trained with https://github.com/tdrussell/diffusion-pipe

    Training data is a combination of:

    • Images used from other versions this model card

    • Images extracted as keyframes from several videos

    • Short video clips ~40 frames each

    Training configs:

    dataset.toml

    # Aspect ratio bucketing settings
    enable_ar_bucket = true
    min_ar = 0.5
    max_ar = 2.0
    num_ar_buckets = 7
    
    [[directory]] # IMAGES
    # Path to the directory containing images and their corresponding caption files.
    path = '/mnt/d/huanvideo/training_data/images'
    num_repeats = 5
    resolutions = [1024]
    frame_buckets = [1] # Use 1 frame for images.
    
    
    [[directory]] # VIDEOS
    # Path to the directory containing videos and their corresponding caption files.
    path = '/mnt/d/huanvideo/training_data/videos'
    num_repeats = 5
    resolutions = [256] # Set video resolution to 256 (e.g., 244p).
    frame_buckets = [33, 49, 81] # Define frame buckets for videos.

    config.toml

    # Dataset config file.
    output_dir = '/mnt/d/huanvideo/training_output'
    dataset = 'dataset.toml'
    
    # Training settings
    epochs = 50
    micro_batch_size_per_gpu = 1
    pipeline_stages = 1
    gradient_accumulation_steps = 4
    gradient_clipping = 1.0
    warmup_steps = 100
    
    # eval settings
    eval_every_n_epochs = 5
    eval_before_first_step = true
    eval_micro_batch_size_per_gpu = 1
    eval_gradient_accumulation_steps = 1
    
    # misc settings
    save_every_n_epochs = 15
    checkpoint_every_n_minutes = 30
    activation_checkpointing = true
    partition_method = 'parameters'
    save_dtype = 'bfloat16'
    caching_batch_size = 1
    steps_per_print = 1
    video_clip_mode = 'single_middle'
    
    [model]
    type = 'hunyuan-video'
    
    transformer_path = '/mnt/d/huanvideo/models/diffusion_models/hunyuan_video_720_cfgdistill_fp8_e4m3fn.safetensors'
    vae_path = '/mnt/d/huanvideo/models/vae/hunyuan_video_vae_bf16.safetensors'
    llm_path = '/mnt/d/huanvideo/models/llm'
    clip_path = '/mnt/d/huanvideo/models/clip'
    
    dtype = 'bfloat16'
    transformer_dtype = 'float8'
    timestep_sample_method = 'logit_normal'
    
    [adapter]
    type = 'lora'
    rank = 32
    dtype = 'bfloat16'
    
    [optimizer]
    type = 'adamw_optimi'
    lr = 5e-5
    betas = [0.9, 0.99]
    weight_decay = 0.02
    eps = 1e-8