Boogu-Image-0.1-Edit-Turbo โ GGUF (Flat Quants)
GGUF quantizations of Boogu/Boogu-Image-0.1-Edit-Turbo, the distilled (Turbo) reference-image edit variant of the Boogu-Image family. Quantized for low-VRAM ComfyUI use โ an 8GB card (RTX 3070 class) with 16GB system RAM can run these.
Quantized by realrebelai. These are the DiT only โ you supply the text encoder and VAE separately (see below).
Files
| File | Quant | Size |
|---|---|---|
boogu-edit-turbo-dit-Q8_0.gguf |
Q8_0 | ~11.6 GB |
boogu-edit-turbo-dit-Q5_1.gguf |
Q5_1 | ~8.64 GB |
boogu-edit-turbo-dit-Q5_0.gguf |
Q5_0 | ~8.04 GB |
boogu-edit-turbo-dit-Q4_1.gguf |
Q4_1 | ~7.44 GB |
boogu-edit-turbo-dit-Q4_0.gguf |
Q4_0 | ~6.84 GB |
On 8GB VRAM, Q4_0 is the recommended sweet spot for the balance of VRAM savings and quality. Step up to Q5_1 or Q8_0 if you have the headroom and want maximum fidelity.
Why only flat quants (Q4_0 / Q4_1 / Q5_0 / Q5_1 / Q8_0)?
This repo provides flat quants only. Standard K-quants (Q2_K, Q3_K_M, etc.) require a hardcoded architectural mapping blueprint inside the llama.cpp source. Because the Boogu/OmniGen architecture is brand new, those K-quant blueprints do not exist in the compiler yet. Flat quants bypass this requirement by forcing all 2D tensors to the target bit-depth, so they quantize cleanly where K-quants would fall back to near-full precision.
Required components (not included here)
Boogu will not run with standard SD or Flux encoders. You must download the specific text encoder and VAE:
- Text Encoder (Qwen3-VL): the FP8 scaled Qwen3-VL encoder from the Comfy-Org Boogu repo. In your
CLIPLoader, set type =boogu. - VAE (Flux):
flux1_vae_bf16.safetensorsfrom the Comfy-Org Boogu repo.
โ ๏ธ Most "it looks low-res / soft / noisy" reports come from loading the wrong encoder or VAE (e.g. a different Qwen3-VL size), or from the CLIPLoader
typenot being set toboogu. Verify these two files before reporting an issue.
Prerequisite: Core Update (PR #14523)
Native support for the Boogu/OmniGen architecture was merged in Pull Request #14523. If your Load CLIP node has no boogu architecture option, fetch the PR into your ComfyUI install. Open a command prompt inside your ComfyUI folder:
git fetch origin pull/14523/head:boogu-pr
git checkout boogu-pr
Install
- Download one
boogu-edit-turbo-dit-*.ggufand place it inComfyUI/models/unet/. - Download the Qwen3-VL FP8 encoder โ
ComfyUI/models/text_encoders/(orclip/). - Download
flux1_vae_bf16.safetensorsโComfyUI/models/vae/. - Load the DiT with the Unet Loader (GGUF), the encoder with CLIPLoader (type =
boogu), and the VAE with Load VAE. - As an edit model, feed your reference image into the workflow's edit/reference-image input.
Notes
- Turbo is the distilled variant โ run it at its reduced step count (follow the step/CFG guidance on the base Edit Turbo model card); the full 50-step schedules used for non-Turbo models are unnecessary here.
- These files are the diffusion transformer only. The encoder and VAE are shared across the Boogu-Image family โ if you already run Boogu Base or Turbo, you have them.
Quantized and published by realrebelai. Boogu-Image is created by Boogu; all credit for the base model to the original authors. Released under Apache-2.0, matching the base model license.
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Model tree for chfm/Boogu-Image-Edit-Turbo_GGUFs
Base model
Boogu/Boogu-Image-0.1-Edit-Turbo