qwen/qwen-edit-2509/lora

Qwen Edit 2509 LoRA edits and blends up to three images with structure-preserving control and bilingual text support.

The URLs of the images to edit.
URL or the path to the LoRA weights.
The scale of the LoRA weight. This is used to scale the LoRA weight before merging it with the base model.
The size of the generated image.
The number of inference steps to perform.
Higher values produce images that more closely follow the prompt.
The number of images to generate.
The format of the generated image.

Introduction to Qwen Edit 2509 LoRA

Qwen Edit 2509 LoRA builds upon the powerful Qwen-Image foundation with a refined image-to-image model designed to give you unmatched precision and flexibility in creative editing. Developed by the Qwen team at Alibaba Cloud, this 20-billion-parameter model introduces optimized support for multi-image composition, advanced semantic understanding, and bilingual text editing without distortion. It merges Qwen2.5-VL-level perception with a VAE encoder for consistent appearance control, ensuring faithful preservation of identity, material, and layout while enabling natural transformations across pose, lighting, and style. Qwen Edit 2509 LoRA image-to-image lets you edit, combine, and refine visuals with professional-grade accuracy. Whether you are a designer, marketer, or creator, it enables seamless text-in-image editing, identity-consistent product shots, and flexible cross-image blending. You gain control over every edit, turning complex visual tasks into smooth, high-quality outputs ready for branding, content creation, and multilingual design.

What makes Qwen Edit 2509 LoRA stand out

Qwen Edit 2509 LoRA is a high-fidelity image-to-image editor built for structure-preserving, region-aware changes. Qwen Edit 2509 prioritizes realistic continuity—maintaining geometry, lighting, palette, and overall aesthetics—while executing precise modifications. Supporting 1–3 input images, Qwen Edit 2509 handles single-image corrections and multi-reference conditioning for style and identity consistency. Qwen Edit 2509 addresses both appearance-level changes (add, remove, refine local elements) and semantic transformations (style transfer, rotation, pose). With robust bilingual text editing, Qwen Edit 2509 LoRA can replace or add typography while preserving font, color, and layout coherence. Native ControlNet conditioning and improved consistency reduce drift in identity, product details, and text layout, delivering stable results suited to production pipelines. The Qwen Edit 2509 image-edit-plus-lora variant focuses on edit fidelity over full-frame resynthesis. Key capabilities:

  • Structure-preserving edits: maintains pose, layout, perspective, and material response.
  • High-fidelity style retention: keeps lighting, palette, and brushwork intact.
  • Multi-image conditioning (1–3 inputs) for style and identity alignment.
  • Region-specific control to add/remove/modify elements without collateral changes.
  • Bilingual text editing with font, color, and perspective preservation.
  • Native ControlNet guidance for spatial and compositional constraints.
  • Consistent outputs across iterations: identity, product features, and text stability.

Prompting guide for Qwen Edit 2509 LoRA

Provide one or more input images (1–3) and a clear edit instruction. State what must be preserved (subject, pose, framing) and what should change. For appearance edits, specify objects, regions, and materials with spatial language. For semantic changes, include style descriptors, rotation angles, or pose/scene adjustments. For text edits, spell out the exact content, font characteristics, color, scale, and placement; mention perspective or curvature if needed. When relevant, supply reference images for style or material transfer. In Qwen Edit 2509 image-edit-plus-lora, guide fidelity with guidance scale and steps, and use negative prompts to suppress unwanted artifacts. Examples:

  • Remove power lines in background; preserve subject and lighting; background only.
  • Add a wooden bench to the right of the subject; match shadows and perspective.
  • Transfer painterly style from reference image; keep base composition and palette balance.
  • Rotate product 30° clockwise; maintain label legibility and specular highlights.
  • Replace storefront sign text to QWEN CAFE in white sans-serif; match wall perspective.
  • Enforce brand color and fabric texture using two references; preserve pose and framing. Pro tips:
  • Always declare constraints: list elements and regions to preserve before changes.
  • Use precise spatial qualifiers: foreground/background, left/right, quadrant-based targeting.
  • Tune guidance_scale (≈3–6) and num_inference_steps (≈24–36) to balance fidelity vs. flexibility.
  • When using LoRA adapters, provide loras with modest scales to avoid oversaturation and drift.
  • Leverage ControlNet for layout, edges, or depth; combine with negative prompts for artifact control. Qwen Edit 2509 LoRA responds best to concise, iterative refinements and high-quality, well-cropped inputs.

Related Playgrounds

Frequently Asked Questions

What is Qwen Edit 2509 LoRA and how does it work with image-to-image editing?

Qwen Edit 2509 LoRA is an advanced image-to-image model from Alibaba Cloud’s Qwen team that allows users to make both semantic and appearance-level edits. It combines dual-control architecture for fine-tuned results, letting creators modify elements like pose, style, or text while maintaining consistency.

How is Qwen Edit 2509 LoRA different from previous Qwen Image Edit models?

Qwen Edit 2509 LoRA offers multi-image input support and improved control for both semantic and appearance edits in image-to-image tasks. This version ensures stronger identity preservation and sharper visual consistency compared to earlier Qwen Image Edit models.

Who can benefit most from using Qwen Edit 2509 LoRA for image-to-image projects?

Qwen Edit 2509 LoRA is ideal for designers, e-commerce teams, and marketing professionals who need precise, high-quality image-to-image results. It’s particularly useful for branding consistency, portrait refinement, product editing, and multilingual visual projects.

How can I access Qwen Edit 2509 LoRA and is it free to use?

You can access Qwen Edit 2509 LoRA through Runcomfy’s AI playground by logging in and using available credits. While it’s not fully free, new users receive trial or complimentary credits for testing image-to-image editing capabilities.

Does Qwen Edit 2509 LoRA support editing multiple images at once in image-to-image workflows?

Yes, Qwen Edit 2509 LoRA supports multi-image input of up to three files. This allows users to perform image-to-image combinations like person plus product, or scene plus subject, enabling more creative blending and accurate transformations.

What kind of edits can Qwen Edit 2509 LoRA handle with image-to-image precision?

With Qwen Edit 2509 LoRA, users can perform detailed edits such as adding or removing elements, changing style or pose, adjusting lighting, and replacing text—all with image-to-image precision that preserves the look and feel of the original image.

Is Qwen Edit 2509 LoRA suitable for commercial image-to-image use cases?

Absolutely. Qwen Edit 2509 LoRA produces high-quality, reliable image-to-image outputs suitable for commercial applications, including marketing visuals, branding materials, and e-commerce content creation.

What are the system or hardware requirements for running Qwen Edit 2509 LoRA?

Qwen Edit 2509 LoRA performs best on systems with moderate GPU resources. When using the Runcomfy AI playground, computation is cloud-based, so you only need a stable internet connection to perform image-to-image operations efficiently.

Does Qwen Edit 2509 LoRA have any limitations in image-to-image transformations?

While Qwen Edit 2509 LoRA handles most complex edits well, maintaining extremely fine textures or handling very low-quality inputs may reduce output fidelity. For optimal image-to-image results, users should provide clear and well-lit source images.