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Text-to-Image

Qwen-Image-2512

By Qwen (Alibaba)

December 2025 update with improved human realism, natural details, and text rendering.

Run in your browser on Floyo. No installation required.

Try Qwen-Image-2512 Free

What's the difference between Qwen-Image-2512 and Qwen-Image-Edit-2511?

These are two completely different models for different tasks. Qwen-Image-2512 is a text-to-image model that generates NEW images from text prompts. Qwen-Image-Edit-2511 is an image editing model that MODIFIES existing images. They released a week apart (Dec 23 vs Dec 31) and serve different creative workflows.

Common confusion: The Reddit community frequently asks about this. As one user clarified: “That was i2i model, and this one is t2i model, so technically different model. You can use edit model for t2i, but a dedicated t2i model is usually better.”

THIS PAGE

Qwen-Image-2512

Text-to-Image (T2I)

Best for:

  • Photorealistic portraits
  • Landscapes and nature scenes
  • Infographics and slides with text
  • Product mockups

Strengths:

  • Reduced “AI look”
  • Excellent text rendering
  • Strong prompt adherence
Hugging Face →
DIFFERENT MODEL

Qwen-Image-Edit-2511

Image-to-Image (I2I)

Best for:

  • Character consistency across images
  • Relighting existing photos
  • Different angles / viewpoints
  • Merging people into group photos

Strengths:

  • Built-in lighting / angle LoRAs
  • Reduced image drift
  • Multi-person consistency
Hugging Face →

What is Qwen-Image-2512?

Qwen-Image-2512 is the December 2025 update to Qwen’s open-source text-to-image model, developed by Alibaba’s Qwen team. Based on over 10,000 blind evaluations on AI Arena, it is currently the strongest open-source image generation model available.

7
Aspect Ratios
1664px
Max Resolution
Apache 2.0
License
#1
Open-Source Rank

What’s new in Qwen-Image-2512?

Three major improvements over the August release: more realistic humans, finer natural textures, and significantly improved text rendering.

Enhanced Human Realism

Natural skin texture, visible age cues, individual hair strands, and reduced “plastic” AI artifacts.

Finer Natural Detail

Improved foliage, water flow, fur layering, and atmospheric depth.

Improved Text Rendering

Clear, accurate text inside images—ideal for slides, infographics, and diagrams.

Portrait Photography

Highly realistic faces, skin detail, and hair.

Infographics & Slides

Accurate text rendering inside visuals.

Nature & Landscapes

Natural foliage, water, and lighting.

Animals

Detailed fur, layering, and anatomy.

Start generating with Qwen-Image-2512

Open-source power, photorealistic results—right in your browser.

Try Qwen-Image-2512 Free

No installation · No setup · Free to try

Frequently Asked Questions

Is Qwen-Image-2512 free to use?

Qwen-Image-2512 is open source under the Apache 2.0 license and can be used for free, including for commercial purposes. When running it on cloud platforms, you only pay for compute.

Can I use images generated with Qwen-Image-2512 commercially?

Yes. The Apache 2.0 license allows commercial use of both the model and the generated outputs.

What is the maximum resolution supported?

Up to 1664 × 928 (16:9), 928 × 1664 (9:16), or 1328 × 1328 for square images.

How is Qwen-Image-2512 different from Qwen-Image-Edit-2511?

Qwen-Image-2512 is a text-to-image model that generates new images from prompts. Qwen-Image-Edit-2511 is an image-to-image model designed to edit or modify existing images. They serve different workflows.

Does Qwen-Image-2512 support text inside images?

Yes. One of the major improvements in this release is significantly better text rendering, making it suitable for slides, infographics, and diagrams.

What hardware do I need to run it locally?

With GGUF quantized versions, the model can run on GPUs with around 12 GB of VRAM. Higher precision formats require more memory.

Do existing Qwen LoRAs work with Qwen-Image-2512?

Early community testing suggests most existing Qwen LoRAs work, and a dedicated Turbo LoRA is available for faster inference.

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