Boogu-Image Turbo is the speed-distilled text-to-image build in the Boogu-Image 0.1 family. It carries the same 10B-parameter backbone as Boogu-Image Base but is tuned to produce photorealistic results in just 4 steps with CFG 0, trading some of Base's diversity for a large jump in generation speed.
Originally released by the Boogu team on Hugging Face. All credit for the model goes to the Boogu project and its contributors. Civitai is hosting a mirror so creators can run it on-site without a local setup - please head to the original repo and project site for weights, updates, and to support the project directly.
Built by the Boogu project
- Boogu project - model training and release
- Hugging Face org and ModelScope org - weights and variant downloads
- Acknowledged upstream influences: Qwen-Image, Z-Image, OmniGen2, FLUX, and DeepSeek
What it does
Turbo is the build to reach for when throughput matters: fast iteration, batch work, and interactive generation. It keeps the family's strengths in photography, bilingual Chinese and English text rendering, stylization, and poster design, at a fraction of the step count. Recommended starting point is 4 steps, CFG 0.
Versions on Civitai
We mirror the v0.1 release in three diffusion builds: bf16 full precision (~20GB), fp8_scaled (~10GB), and nvfp4 (~5.7GB). The required Qwen3-VL 8B text encoder and the Flux VAE are bundled. Note: this is a full distilled checkpoint, not a LoRA.
Related Boogu models
Boogu-Image Base is the full-quality foundation model at 25 to 50 steps. Boogu-Image Edit adds image-to-image editing.
Known limitations
The Boogu team is candid that 0.1 is an early research release: limited world knowledge for brands, celebrities, and landmarks; instability in strict subject preservation; occasional text typos or layout drift; and artifacts in complex poses, small faces, and limbs.
Links
- Source: Hugging Face | GitHub | ModelScope
- Project site: boogu.org
- Gallery: boogu-gallery.netlify.app
Boogu-Image 0.1 is a research project, not an official product release. The Boogu team asks that you not build unauthorized commercial products under the Boogu name. Licensed under Apache 2.0.
Description
FAQ
Comments (3)
Overall, it's not bad. But there are occasional glitches, like three legs appearing, and sometimes makeup smearing across women's faces. It runs quite fast on a 3060 graphics card with 6GB of VRAM. Text displays well.
Details
Files
flux1_vae_bf16.safetensors
Mirrors
ae.safetensors
ae.safetensors
flux-vae-bf16.safetensors
diffusion_pytorch_model.safetensors
diffusion_pytorch_model.safetensors
diffusion_pytorch_model.safetensors
flux-vae-bf16.safetensors
vaebf16.safetensors
vaebf16.safetensors
flux-vae-bf16.safetensors
flux-vae-bf16.safetensors
flux-vae-bf16.safetensors
flux1_vae_bf16.safetensors
flux1_vae_bf16.safetensors
flux1_vae_bf16.safetensors
flux-vae-bf16.safetensors
booguImageTurbo_v01_txt.safetensors
Mirrors
qwen3vl_8b_fp8_scaled.safetensors
qwen3vl_8b_fp8_scaled.safetensors
qwen3vl_8b_fp8_scaled.safetensors
textencoders_qwen3vl_8b_fp8_scaled.safetensors
qwen3vl_8b_fp8_scaled.safetensors
qwen3vl_8b_fp8_scaled.safetensors
qwen3vl_8b_fp8_scaled.safetensors
qwen3vl_8b_fp8_scaled.safetensors
qwen3vl_8b_fp8_scaled.safetensors
qwen3vl_8b_fp8_scaled.safetensors
