CivArchive
    XL-Vibratory roller-hans_miao - v2.0
    NSFW
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    这是一个经过500万张图像训练而成的XL大模型,内置了超过2000个强风格标签。
    This is an XL model trained on 5 million images, featuring over 2,000 strong style tags.

    模型的训练过程包括了多阶段训练:
    The training process includes multiple stages:

    • 使用A40双卡训练了400小时

    • Trained for 400 hours with dual A40 GPUs

    • 通过4090训练了1104小时来完善底模

    • Enhanced with 1104 hours of training using the 4090 GPU

    • 最后在双卡A100 80G上进行了800小时的画风训练

    • Finally, completed 504 hours of style training on dual A100 80G GPUs

    目前正式版1.0仍有部分标签欠拟合,后续版本会进行修复。
    Version 1.0 still has some underfitted tags, which will be fixed in future updates.

    特别感谢rnglg2在算力和数据处理方面的支持,以及且听风吟、Willy、青秋、nano、Cyanelis Deuxieme、群阿没、复读机bot在训练集构建方面的帮助。
    Special thanks to rnglg2 for computational and data processing support, and to 且听风吟, Willy, 青秋, nano, 群阿没、Cyanelis Deuxieme, and 复读机bot for assistance in building the training dataset.

    训练底模来自【SDXL】/Anime/bulldozer_BETA - v2.0 | Stable Diffusion XL Checkpoint | Civitai


    模型的使用建议 (Usage Recommendation)

    推荐CFG不超过5

    我们对数据集进行了美学评分,评分标准如下:
    We applied aesthetic scoring to the dataset, with the following rating criteria:

    • Core > 0.75: 质量标签 = "masterpiece"

    • Core > 0.75: Quality Tag = "masterpiece"

    • 0.6 < score <= 0.75: 质量标签 = "high quality"

    • 0.6 < score <= 0.75: Quality Tag = "high quality"

    • 0.5 < score <= 0.6: 质量标签 = "normal quality"

    • 0.5 < score <= 0.6: Quality Tag = "normal quality"

    • 0.3 < score <= 0.5: 质量标签 = "low quality"

    • 0.3 < score <= 0.5: Quality Tag = "low quality"

    • score <= 0.3: 质量标签 = "worst quality"

    • Score <= 0.3: Quality Tag = "worst quality"

    正常使用时,只需在标签前添加masterpiece, best quality, 或high quality即可。
    For normal use, simply add masterpiece, best quality, or high quality before the tag.

    风格标签的完整表格将在完整版发布时提供,目前可以通过参考示例图来使用。
    The full table of style tags will be provided in the full release. For now, you can refer to the example images.

    https://rnglg2-my.sharepoint.com/:u:/g/personal/hans_rnglg2_onmicrosoft_com/EdTDVlmCZaZKlsoi_AOQjOsBW4xPx6H7S1XJWh8jYNH3aw?e=xmbUFF

    训练参数 (Training Parameters)

    resolution = "1024,1024"

    enable_bucket = true

    min_bucket_reso = 256

    max_bucket_reso = 1536

    bucket_reso_steps = 32

    output_dir = "/root/"

    save_model_as = "safetensors"

    save_precision = "fp16"

    save_every_n_epochs = 2

    max_train_epochs = 20

    train_batch_size = 5

    gradient_checkpointing = false

    learning_rate = 0.00003

    learning_rate_te1 = 0.000001

    learning_rate_te2 = 0.000001

    lr_scheduler = "cosine_with_restarts"

    lr_scheduler_num_cycles = 20

    optimizer_type = "AdamW"

    min_snr_gamma = 5

    sample_every_n_epochs = 1

    log_with = "tensorboard"

    logging_dir = "./logs"

    caption_extension = ".txt"

    shuffle_caption = true

    weighted_captions = false

    keep_tokens = 4

    max_token_length = 255

    multires_noise_iterations = 8

    multires_noise_discount = 0.4

    no_token_padding = false

    mixed_precision = "bf16"

    full_bf16 = true

    xformers = true

    lowram = false

    cache_latents = true

    cache_latents_to_disk = true

    persistent_data_loader_workers = true

    train_text_encoder = true

    免责声明 (Disclaimer)

    请遵守当地法律法规,以免造成麻烦。鉴于模型的实际用途不受模型作者控制,因模型输出的图片所产生的一切后果由图片输出者自行承担。基于此模型训练出的衍生模型请标明出处。
    As the actual use of the model is beyond the control of the model creators, all consequences arising from images generated by this model are the sole responsibility of the user.

    Description

    FAQ

    Comments (7)

    1835878776204Oct 5, 2024
    CivitAI

    非常好

    KazuhiraOct 6, 2024
    CivitAI

    试用了感觉非常棒,有考虑再用光辉模型做底模FT一个吗?

    HansSchmidt
    Author
    Oct 6, 2024

    已经燃尽了,没本钱和时间在光辉上面再来一个这么大的了

    aoligei4512Oct 16, 2024

    光辉是哪一个模型?

    CagliostroLabOct 6, 2024· 6 reactions
    CivitAI

    wow, the model is really nice

    new50Oct 6, 2024
    CivitAI

    2.0版本进步很大。大佬如果有时间有闲钱可以试下以Illustrious模型作为底膜来训练。感谢大佬的努力。

    Lightsmile01Oct 7, 2024· 2 reactions
    CivitAI

    非常好模型,我高兴的跳到了讲台上,跳起来欢乐的桑巴。

    Checkpoint
    SDXL 1.0

    Details

    Downloads
    560
    Platform
    CivitAI
    Platform Status
    Available
    Created
    10/5/2024
    Updated
    5/14/2026
    Deleted
    -

    Available On (1 platform)

    Same model published on other platforms. May have additional downloads or version variants.