***Work in Progress***
Hyper Flux Dedistilled models combine the Flux-dev-de-distill checkpoint by nyanko7 with the Hyper-SD LoRA by ByteDance into single-file models in q4_KM GGUF format for easy use on mid-tier hardware.
The Hyper 16 Steps version provides the same generation time as Flux-dev while producing better results. It approaches Flux Pro in terms of quality and prompt understanding. The Hyper 8 Steps version is twice as fast and offers a balance between speed and quality.
Various weights for the Hyper-SD LoRA were tested, and these models were created using the ones that provided the best results. This ensures that the models maintain consistent performance and converge as expected with the recommended step values, even after quality loss from quantization.
Hyper 8 Steps:
CFG: 1 to 2 (real CFG)
Steps: 8 to 12 (more is better, best at 12 steps)
Sampler: DPM-2 (for high detail) or DPM++ 2M (for faster generation)
Scheduler: Beta
Best for quick generations while keeping image quality above the standard Flux-dev level.
Hyper 16 Steps:
CFG: 2 to 3 (real CFG)
Steps: 16 to 24 (more is better, but 20 gives great results)
Sampler: DEIS (for stylized, artistic outputs) or DPM++ 2M (for realistic raw images)
Scheduler: Beta
Ideal for refined, detailed images with excellent prompt understanding, similar to Flux Pro.
No need to use Flux guidance—this model uses real CFG, just like any Stable Diffusion model, making it possible to use negative prompting effectively. For Hyper-16, use the same CFG value you would normally use for distilled guidance in Flux-dev (e.g., if you usually use 2.5, stick with that). For Hyper-8, I recommend using half of that value.
Future Versions:
This release is in q4_KM format. Other formats, such as FP8, q5_KM or q8_0, may be made available upon request for users with different hardware needs.
This project builds upon the incredible work of the original authors:
Flux-dev-de-distill by nyanko7: An advanced checkpoint implementing true classifier-free guidance.
Hyper-SD by ByteDance: A powerful LoRA solution enabling faster generation time.
The creation of these models is solely attributed to their respective authors. I take no credit for their work or development. The Hyper Flux Dedistilled models simply integrate and format these into a combined, accessible solution.
Both versions havw been tested to run smoothly on mid-tier GPUs, including a RTX 3070 and a RTX 2060 Super with 8GB VRAM, with excellent performance.
Hyper Flux Dedistilled is a highly specialized Image generation AI Model of type Safetensors / Checkpoint AI Model created by AI community user C47HERINE. Derived from the powerful Stable Diffusion (Flux.1 D) model, Hyper Flux Dedistilled has undergone an extensive fine-tuning process, leveraging the power of a dataset consisting of images generated by other AI models or user-contributed data. This fine-tuning process ensures that Hyper Flux Dedistilled is capable of generating images that are highly relevant to the specific use-cases it was designed for, such as base model.
With a rating of 0 and over 0 ratings, Hyper Flux Dedistilled is a popular choice among users for generating high-quality images from text prompts.
Yes! You can download the latest version of Hyper Flux Dedistilled from here.
To use Hyper Flux Dedistilled, download the model checkpoint file and set up an UI for running Stable Diffusion models (for example, AUTOMATIC1111). Then, provide the model with a detailed text prompt to generate an image. Experiment with different prompts and settings to achieve the desired results. If this sounds a bit complicated, check out our initial guide to Stable Diffusion – it might be of help. And if you really want to dive deep into AI image generation and understand how set up AUTOMATIC1111 to use Safetensors / Checkpoint AI Models like Hyper Flux Dedistilled, check out our crash course in AI image generation.
Ideal for refined, detailed images with excellent prompt understanding, similar to Flux Pro.
Recommended Settings for Hyper 16 Steps:
CFG: 2 to 3 (real CFG)
Steps: 16 to 24 (more is better, but 20 gives great results)
Sampler: DPM-2 (best quality), DEIS (for stylized outputs) or DPM++ 2M (for realistic raw images)
Scheduler: Beta
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