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    ChenkinNoob-XL Rectified-Flow - v0.2
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    Model Description

    A continuation of ChenkinRF 0.2

    For main model description please refer to it.

    Bias and Limitations

    Standard biases and limitations of Danbooru dataset apply, dataset consists of danbooru up to January 2026.

    Getting Started Guide

    Recommendations

    Inference

    Comfy

    image

    (Workflow is available alongside model in repo)

    Same as your normal inference, but with addition of SD3 sampling node, as this model is Flow-based.

    Recommended Parameters:
    Sampler: Euler, DPM++ SDE, etc.
    Steps: 20-28
    CFG: 3-6
    Shift: 3-8
    Schedule: Normal/Simple/SGM Uniform/Beta Positive Quality Tags: masterpiece, best quality, aesthetic

    Negative Tags: worst quality, normal quality, bad anatomy, low resolution

    A1111 WebUI

    (All screenshots are repeating our other RF release, as there is no difference in setup)

    Recommended WebUI: ReForge - has native support for Flow models, and we've PR'd our native support for Flux2vae-based SDXL modification.

    How to use in ReForge:

    изображение (ignore Sigma max field at the top, this is not used in RF)

    Support for RF in ReForge is being implemented through a built-in extension:

    изображение

    imagen

    Set parameters to that, and you're good to go.

    Recommended Parameters:
    Sampler: Euler Comfy, Euler, DPM++ SDE Comfy, etc. ALL VARIANTS MUST BE RF OR COMFY, IF AVAILABLE. In ComfyUI routing is automatic, but not in the case of WebUI.
    Steps: 20-28
    CFG: 3-6
    Shift: 3-8
    Schedule: Normal/Simple/SGM Uniform/Beta Positive Quality Tags: masterpiece, best quality, aesthetic
    Negative Tags: worst quality, normal quality, bad anatomy, low resolution

    ADETAILER FIX FOR RF: By default, Adetailer discards Advanced Model Sampling extension, which breaks RF. You need to add AMS to this part of settings:

    изображение

    Add: advanced_model_sampling_script,advanced_model_sampling_script_backported to there.

    If that does not work, go into adetailer extension, find args.py, open it, replace builtinscripts like this:

    изображение

    Here is a copypaste for easy copy:

    _builtin_script = (
        "advanced_model_sampling_script",
        "advanced_model_sampling_script_backported",
        "hypertile_script",
        "soft_inpainting",
    )
    

    Or use this fork of Adetailer - https://github.com/Anzhc/aadetailer-reforge

    Training

    Training Details

    Samples seen(unbatched steps): 52 million samples seen.
    Learning Rate: 2e-5
    Effective Batch size: 1152 Effective Batch Size, 36 Batch Size, 4 Gradient Accumulation, 8 GPUs
    Precision: Mixed BF16
    Optimizer: AdamW8bit with Kahan Summation
    Weight Decay: 0.01
    Schedule: Constant with warmup
    Timestep Sampling Strategy: Uniform
    SD3 Shift: 2
    Text Encoders: Frozen
    Keep Token: False
    Tag Dropout: 10%
    Uncond Dropout: 10%
    Shuffle: True

    Additional Features used: Protected Tags, Cosine Optimal Transport.

    Training Data

    Danbooru up to January of 2026.

    LoRA Training

    Pochi.toml is a basic TOML for usage with https://github.com/67372a/LoRA_Easy_Training_Scripts/tree/refresh MAKE SURE TO USE BRANCH REFRESH, comes ready to work.

    You can also use https://github.com/bluvoll/Akegarasu-lora-scripts-RF/tree/main to train LoRAs or Finetune the model, use Example.toml as a starter configuration for training, or the example in the huggingface repo.

    Hardware

    Model was trained on a 8xH100 node.

    Software

    Custom fork of SD-Scripts(maintained by Bluvoll)

    Acknowledgements

    The model is still overcoming the anatomy issues first seen in ChenkinNoobXL 0.2 Epsilon and the change caused by deprecated tags in danbooru 2025, at this point in time the model has become far sharper and detailed than expected, some newer characters are promptable with helper features, we expect this to improve over the next 5 or 7 epochs as we raise LR to 4e-5 due to the high batch size we run.

    Testers

    Everyone in server who tested model throughout it's training and provided feedback, included but not limited to:

    • Shinku

    • yoinked

    • low channel

    • Anzhc

    • lylogummy

    • Silvelter

    • brittle

    • Darren Laurie

    • L_A_X

    • Nebulae

    • Francisco

    • WANG

    • youhuang

    • ztxzhy

    • Drac

    • user

    • nian__gao233

    • DUO

    • Kai Wong

    • Requiredforsomereason

    • spawner

    • peoscrha

    • waww

    • itterative

    • Nama M

    • Talan

    • Magpie

    • BKM Desu

    • 花火流光

    • tairitsujiang

    • 123

    • 2222k

    • spawner

    • 青苇

    Showcase Images

    • Itterative

    • Ryusho

    • Panchovix

    • Talan

    • Silvelter

    • Drac

    Hardware

    Chenkin and Heathcliff for providing compute.

    Description

    Checkpoint
    NoobAI

    Details

    Downloads
    1,260
    Platform
    CivitAI
    Platform Status
    Available
    Created
    2/4/2026
    Updated
    3/13/2026
    Deleted
    -