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    Pro Version of Realism Pony V4-V5-V6 now Available on My Patreon

    Onsite generations are permanently available on these models:
    ๐Ÿ‘‰ Realism_By_Stable_Yogi V3: https://civarchive.com/models/166609?modelVersionId=992946

    Realism by Stable Yogi Pony V6.5

    V6.5 is here โ€” and you all helped build it.

    Real thank-you to everyone who pushed V6 hard, sent feedback, and posted the broken hands. V6.5's fix list literally came from you. Anatomy, hand grips, expressions, twin-tails, full-body proportions, isolated objects, painterly style separation, hair color consistency โ€” all worked on this round.

    Trigger Word

    99rbsy99 โ€” add this to every prompt for the V6.5 realism style. Place it at the END of your tag list for soft activation, or earlier for stronger effect.

    Compatible with my character LoRAs (which use 99bsy99) โ€” they stack cleanly without conflict. Use both together for a character rendered in V6.5 realism.

    All Variants in This Release

    Seven variants ship today, covering everything from 4 GB CPU setups to 24 GB workstations.

    FP32 (safetensors, around 13 GB)

    Maximum precision. Research and production work. Best for 24 GB+ cards.

    FP16 (safetensors, around 6.5 GB)

    The default. Best quality and speed balance for most users.

    BF16 (safetensors, around 6.5 GB)

    Same size as FP16, slightly faster on RTX 3000+ with native BF16 support.

    FP8 Scaled (safetensors, around 3.2 GB)

    Near-FP16 quality at half the VRAM. Native in Forge and ComfyUI. Great for 8 GB cards.

    DMD2 Merge (safetensors, around 6.5 GB)

    FP16 with DMD2 distillation LoRA pre-merged. 4-step generation. LCM sampler, CFG 1.2. Fastest path for any card.

    Q8_0 GGUF (around 3.9 GB)

    8-bit quantized. Near-FP16 quality. For 12+ GB cards in GGUF workflows.

    Q4_0 GGUF (around 2.7 GB)

    4-bit quantized. Smallest file. Makes SDXL actually run on 6โ€“8 GB entry-level cards.

    Quick Pick by Your VRAM

    24 GB+ (3090, 4090, 5090, A6000) โ€” FP16 or BF16. No reason to compress.

    12โ€“16 GB (3060 12GB, 4070, 4080) โ€” FP8 Scaled or Q8_0 GGUF. Near-FP16 quality with headroom for LoRAs.

    8โ€“12 GB (3060, 4060 Ti, 2080) โ€” FP8 Scaled or Q8_0 GGUF. Solid quality, comfortable VRAM use.

    6โ€“8 GB (3050, 2060, 1660) โ€” Q4_0 GGUF. Smallest file, makes SDXL actually work on entry-level cards.

    CPU only or 4 GB cards โ€” Q4_0 GGUF in ComfyUI-GGUF. Slow but functional.

    DMD2_Fp16 variant. 4 steps instead of 25โ€“30.

    For FP32, FP16, BF16, FP8 Scaled, and GGUF variants:

    Sampler โ€” DPM++ 2M Karras, Euler a, or Restart
    Steps โ€” 25 to 30
    CFG โ€” 4 to 7
    Resolution โ€” Native SDXL (1024ร—1024 or aspect-ratio buckets)

    For DMD2 specifically:

    Sampler โ€” LCM
    Steps โ€” 4 (not 25+)
    CFG โ€” 1.2 (not 7)
    Result โ€” Comparable quality to a 25-step generation in roughly 1/6 the time

    Quants Explained โ€” Which File Do I Pick?

    If you've ever seen FP16, BF16, FP8, Q4, Q8 and just downloaded the biggest one, this section is for you.

    What's a quant

    ? Same model, smaller file. Weights are compressed so they fit on less VRAM. Some quality loss vs FP16, but smart compression (Q8_0) is so close you won't see a difference in normal use.

    Quality Ladder

    FP16 โ‰ˆ BF16 โ‰ˆ Q8_0 > FP8 > Q4_0. Above Q4_0 the differences are basically invisible in normal generation.

    About Speed

    Smaller quants are NOT always faster. Generation speed is mostly compute-bound on most cards โ€” quants help with VRAM fit, not raw iterations per second. Where they DO help speed: avoiding system-RAM offload, which is what kills speed on small cards when the model doesn't fit.

    Three Reasons to Use a Quant

    1. VRAM fit. A 6 GB card cannot load a 6.5 GB FP16 SDXL โ€” your UI will try to offload to system RAM and generation crawls to under 0.1 iterations per second. A Q4_0 fits with room to spare.

    2. Speed via avoiding offload. Once a model fits in VRAM, speed depends on your card's compute, not file size. But the second it doesn't fit, speed drops 10 to 100 times. Quants are insurance against that cliff.

    3. More room for LoRAs, ControlNet, hires fix. Even if FP16 technically fits, loading a couple of LoRAs and a ControlNet on top can push you over. Q8_0 leaves you 2โ€“3 GB of headroom for the rest of your stack.

    How to Load GGUF Files

    GGUFs need a loader, since most UIs don't natively support them yet.

    For ComfyUI โ€” install the ComfyUI-GGUF custom node:
    https://github.com/city96/ComfyUI-GGUF

    For Forge or Forge Neo โ€” install my Forge SDXL GGUF extension:
    https://github.com/brandulateai/sd-forge-sdxl-gguf-brandulateai

    After installing, GGUFs load straight from the standard checkpoint dropdown. No external module picker, no extra setup.

    All my GGUFs are bundled (UNet + CLIP-L + CLIP-G + VAE in one file) so they load without picking separate components.

    Pro Version Available

    This is the standard version of V6.5. The Pro version is trained on more data for longer, producing a more polished and refined output. Available on My Patreon

    Found Anything Off?

    Drop it in the comments or on Discord. V7's fix list starts now.

    Want to contribute to checkpoint feedback, signup here Studio.Brandulate

    Join me on Patreon for exclusive perks and early access to unique resources.

    To discuss custom LoRa's or models, feel free to connect on Discord.

    • ๐Ÿ‘ Like this model to keep me motivated and inspired to create more!

    • ๐Ÿ’ฌ Drop a comment and let me know what you'd love to see next.

    • ๐ŸŒŸ Review this model to help me improve and make even better creations.

    • ๐Ÿ”” Hit that notification bell to stay updated with my latest models and updates!

    Important Usage Tips

    Description

    REALISM-BY-STABLE-YOGI SD1.5_V8_VAE gives you a balanced touch of realism with a soft, natural feel. Itโ€™s versatile and works well with a variety of stylesโ€”just describe what you need, and it delivers. Iโ€™d love to hear your feedback and see what you create!

    Sampler : Euler A

    CFG : 4.5+,

    Steps : 20+,

    Resolutions : 512-768, 576-864, 640-896,

    Adetailer : (Required)

    High res Fix (Optional)

    Denoise - 0.30

    hires steps 5+

    Upscale 1.5+

    Upscaler 4x-UltraSharp

    FAQ

    Comments (11)

    kkieki139Oct 17, 2024ยท 7 reactions
    CivitAI

    Is VAE included in the model ?

    Stable_Yogi
    Author
    Oct 17, 2024

    Yes, for SD1.5_V8 VAE Included.

    UnstableCogOct 19, 2024ยท 9 reactions
    CivitAI

    I guess I was a tad impulsive. I paid the Early Access for the XL_V4_VAE since it does say ''Download access also grants generation access.'' So I thought that would let me access this here on Civitai. But each time I remix that girl with the hoodie, thong and phone I just get the Pony_V2 for some reason. :'(

    And when I try to 'Swap' Checkpoint I can't find it. Only Pony, SD1.5 and a V5 is available. Was I too hasty? <3

    UnstableCogOct 19, 2024

    So, I presumed, and concluded that V5 was the likeliest of them to be the one I paid buzz for. But Civitai won't let me use TI/embeddings like Stable_Yogis_PDXL_Positives nor negatives with V5. And those are clearly used in the sample prompt.

    So what am I not getting? <3

    Stable_Yogi
    Author
    Oct 19, 2024

    I totally understand the confusion, You were right to think that the Early Access would allow both download and generation abilities. However, currently, only the Pony versions are set up for onsite generation due to Civitaiโ€™s limitationsโ€”each creator can set up only two models for this purpose.

    For the XL_V4_VAE and other models like V5, they are available for download so that you can use them locally on your own setup.

    FizzyDOct 20, 2024ยท 12 reactions
    CivitAI

    .... good soup

    Stable_Yogi
    Author
    Oct 21, 2024

    Thanks! Really glad you're enjoying the model. ๐ŸŒŸ

    Breezy00Oct 21, 2024ยท 22 reactions
    CivitAI

    This model is crazy good

    Stable_Yogi
    Author
    Oct 21, 2024ยท 1 reaction

    Thanks for the shout-out! It's always great to see our models achieving 'crazy good' status instead of just 'crazy'! ๐Ÿ˜

    zhfxOct 23, 2024ยท 9 reactions
    CivitAI

    ๅฎŒ็พŽ็š„ๆจกๅž‹,็œŸๆฃ’

    Stable_Yogi
    Author
    Oct 23, 2024

    โค