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Pruna AI P-Image Edit LORA API

pruna-ai /

Pruna AI P-Image Edit LORA is a fast AI image editing model that edits and transforms images with LORA-based customization. Ready-to-use REST inference API for text-guided image editing, style changes, character consistency, product image updates, marketing assets, and custom AI editing workflows with simple integration, no coldstarts, and affordable pricing.

lora-support
Ввод

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If set to true, the function will wait for the result to be generated and uploaded before returning the response. It allows you to get the result directly in the response. This property is only available through the API.
If enabled, the output will be encoded into a BASE64 string instead of a URL. This property is only available through the API.

Ожидание

Make this scene look like the next scene style.

$0.01за запуск·~100 / $1

ПримерыСмотреть всё

Make this scene look like the next scene style.

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README

Pruna AI P-Image Edit LoRA

Pruna AI P-Image Edit LoRA edits one or more input images using a natural-language instruction, with optional LoRA guidance for stronger style or edit control. It is designed for workflows where you want prompt-based image editing together with a LoRA trained specifically for the Pruna p-image-edit-lora pipeline.

Why Choose This?

  • LoRA-guided image editing Edit images with natural-language instructions while steering the result with a compatible LoRA.

  • Multi-image reference support Use one to five input images to guide appearance, structure, composition, or scene transformation.

  • Edit-specific LoRA control Apply lora_weights and tune lora_scale for stronger stylistic or transformation control.

  • Flexible aspect ratio handling Use match_input_image to follow the first input image by default, or select a preset aspect ratio when needed.

  • Private LoRA support Use hf_api_token when accessing a private or gated Hugging Face LoRA repository.

  • Simple fixed pricing Each run uses a flat per-image price.

Parameters

ParameterRequiredDescription
promptYesText instruction describing the desired edit.
imagesYesOne to five reference images used for the edit. When using multiple images, describe their roles clearly in the prompt.
lora_weightsNoOptional Hugging Face LoRA path, such as huggingface.co/PrunaAI/p-image-edit-next-scene-lora/weights.safetensors. The LoRA should be trained for p-image-edit-lora.
lora_scaleNoLoRA strength. Default: 0.5. Official range: -1 to 3.
hf_api_tokenNoOptional Hugging Face token for private or gated LoRA repositories.
aspect_ratioNoOutput aspect ratio. Default: match_input_image, which follows the first input image. Other supported values: 1:1, 16:9, 9:16, 4:3, 3:4, 3:2, and 2:3.
output_formatNoOutput image format: png, jpeg, or webp.
seedNoRandom seed. Use -1 for random generation.

How to Use

  1. Upload your reference images — provide one to five images you want to use for the edit.
  2. Write your prompt — describe what should change and what should remain unchanged.
  3. Add a LoRA (optional) — provide lora_weights if you want LoRA-guided editing.
  4. Adjust LoRA strength (optional) — set lora_scale to control how strongly the LoRA affects the result.
  5. Choose aspect ratio — keep match_input_image to follow the first input image, or select a preset ratio if needed.
  6. Add a Hugging Face token (optional) — use hf_api_token if your LoRA is private or gated.
  7. Choose output format — select png, jpeg, or webp.
  8. Set a seed (optional) — use -1 for random output, or a fixed value for more reproducible edits.
  9. Submit — run the model and download the edited image.

Example Prompt

Make this scene look like the next scene style.

Pricing

Just $0.01 per generated image.

Best Use Cases

  • Scene-to-scene style transfer — Rework one scene to match the visual style of another.
  • Character-consistent editing — Preserve identity while changing mood, styling, or composition.
  • Reference-guided transformations — Use multiple images and a LoRA for tighter edit control.
  • Creative adaptation — Turn existing images into new variants for storytelling, design, or campaign work.
  • Edit-specific LoRA workflows — Apply LoRAs trained for editing rather than text-to-image generation.

Pro Tips

  • Use a LoRA trained specifically for p-image-edit-lora for best compatibility.
  • Text-to-image LoRAs should be used with p-image-lora, not this model.
  • When using multiple images, explain each image’s role clearly in the prompt.
  • Use match_input_image when you want to preserve the framing of the first input image.
  • Adjust lora_scale gradually to balance prompt influence and LoRA influence.
  • If your LoRA is private or gated on Hugging Face, provide hf_api_token.
  • Reuse the same seed when you want more consistent edit iterations.

Notes

  • Both prompt and images are required.
  • images supports one to five input images.
  • lora_weights is optional.
  • LoRAs for this model should be trained for p-image-edit-lora.
  • Text-to-image LoRAs should be used with p-image-lora instead.
  • aspect_ratio defaults to match_input_image, which follows the first input image.
  • seed uses -1 for random generation.
  • The backend sends turbo=false and disables the safety checker by default in the internal mapping; these are not user-facing controls.
  • Pricing is fixed at $0.01 per generated image.

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