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Pruna AI P-Image Edit Trainer API

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Pruna AI P-Image Edit Trainer is a fast AI model training workflow for customizing image editing models with user-provided data. Ready-to-use REST inference API for training custom edit styles, character-consistent edits, product image updates, brand-specific visuals, marketing assets, and personalized AI image editing workflows with simple integration, no coldstarts, and affordable pricing.

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README

Pruna AI P-Image Edit Trainer

Pruna AI P-Image Edit Trainer is a fast training workflow for creating custom LoRAs for the Pruna image editing stack. Upload your training image data, choose the number of training steps, optionally provide a default caption, and generate a LoRA for downstream edit workflows such as style transfer, character-consistent edits, product edits, and other prompt-guided image editing tasks.

Why Choose This?

  • Fast custom edit LoRA training Train LoRAs specifically for image editing workflows rather than text-to-image generation.

  • Simple training interface Provide training image data and set training steps without a complex setup process.

  • Optional caption guidance Use default_caption to provide consistent text guidance across the training data.

  • Flexible training depth Adjust steps to balance speed, cost, and how strongly the LoRA learns your dataset.

  • Built for the Pruna edit stack Trained outputs are intended for downstream use with Pruna edit LoRA workflows.

  • Production-ready API Suitable for custom edit styles, character-consistent edits, branded asset pipelines, and repeatable editing workflows.

Parameters

ParameterRequiredDescription
image_dataYesTraining image data used to create the edit LoRA.
stepsNoNumber of training steps. Higher values generally increase training time and cost. Default: 101.
default_captionNoOptional default caption applied to the training workflow for more consistent edit conditioning.

How to Use

  1. Upload your training data — provide the image dataset you want to use for training.
  2. Set training steps — choose how many steps to run based on your desired balance of speed and training strength.
  3. Add a default caption (optional) — use a short caption if you want more consistent text conditioning during training.
  4. Submit — start the training job.
  5. Use the trained LoRA — apply the resulting LoRA in downstream Pruna edit LoRA workflows.

Example Workflow

Train a custom edit LoRA for scene-to-scene style transfer, then use the resulting weights in Pruna AI P-Image Edit LoRA for guided image editing.

Pricing

Pricing is based on the selected steps value.

StepsCost
100$0.40
101$0.404
250$1.00
500$2.00
1000$4.00
2000$8.00

Billing Rules

  • Pricing scales linearly with steps
  • Cost is $4.00 per 1,000 steps
  • Higher steps values increase total training cost proportionally
  • default_caption does not affect pricing

Best Use Cases

  • Custom edit style training — create LoRAs for specific editing aesthetics or transformations
  • Character-consistent editing — train reusable LoRAs for recurring character edits
  • Product edit workflows — build LoRAs for consistent product transformations and asset updates
  • Brand asset editing — create custom edit models for repeatable branded visual workflows
  • Personalized image editing — train LoRAs tailored to a specific subject, look, or edit direction

Pro Tips

  • Use a clean, focused training dataset for better LoRA quality.
  • Start with a moderate number of steps before scaling to larger training runs.
  • Use default_caption when you want consistent conditioning across the dataset.
  • Keep the dataset aligned with the type of edits you want the LoRA to perform later.
  • Test the trained LoRA in downstream edit workflows before increasing training volume.

Notes

Related Models

Accessibilité :Ce site utilise des modèles d'IA fournis par des tiers.