AI RECIPE
A recipe is a reusable AI workflow that applies consistent edits to all your images in one go, with no prompts required.

Electronics Product Photography — Bundle Crop

Multiple electronics images cropped and centered together on white background in a square format — devices, cables, and accessories arranged with balanced spacing, ready for bundle and kit listings. Try it on your electronics bundles.

About this recipe

Electronics bundles drive AOV — laptop bundles, accessory kits, smart home sets — and need consistent imagery for marketplace polish. This recipe takes your grouped tech shots and crops them to a square format on white background, every device visible and proportional.

Use cases

  • Build electronics bundle PDPs
  • Show tech kits in cohesive crops
  • Standardize accessory bundle imagery
  • Build wholesale tech bundle catalogs
  • Launch holiday tech bundles fast

Tips for best result

  • Works on grouped electronics shots
  • All devices stay visible in the crop
  • Use high-res inputs for screen detail
  • Batch your full bundle range in one upload
  • Pair with Bundle Showcase for editorial variants

Try Similar Recipes

Explore other variations for this category
Go to Recipe Gallery

Frequently Asked Questions

Will fine details on devices stay sharp?

Yes — edge detection keeps screens, ports, and branding sharp. Use high-resolution originals for the cleanest detail across the bundle.

What output sizes work for tech marketplace bundles?

Output dimensions are configurable — 2000×2000px for Amazon and Best Buy, 1024×1024px for Shopify and DTC tech stores.

Can it handle bundles of mixed device types?

Yes. Phone with accessories, laptop with peripherals, smart home kits — the recipe adapts to bundle composition without distortion.

Can it batch process my full bundle catalog?

Yes. Upload your entire bundle range and the recipe outputs consistent square crops for every set in one pass.

Have more questions or doubts for us? Get your questions answered from out team within 14 hours