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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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.
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.
| Parameter | Required | Description |
|---|---|---|
| image_data | Yes | Training image data used to create the edit LoRA. |
| steps | No | Number of training steps. Higher values generally increase training time and cost. Default: 101. |
| default_caption | No | Optional default caption applied to the training workflow for more consistent edit conditioning. |
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 is based on the selected steps value.
| Steps | Cost |
|---|---|
| 100 | $0.40 |
| 101 | $0.404 |
| 250 | $1.00 |
| 500 | $2.00 |
| 1000 | $4.00 |
| 2000 | $8.00 |
stepssteps values increase total training cost proportionallydefault_caption does not affect pricingdefault_caption when you want consistent conditioning across the dataset.image_data is required.steps defaults to 101.default_caption is optional.steps value.