--- slug: muapi-amazon-product-listing name: muapi-amazon-product-listing version: "1.0.0" description: Generate a complete Amazon product listing image set — hero image, lifestyle shot, infographic with features, and comparison/detail closeups optimized for Amazon standards. acceptLicenseTerms: true --- # Amazon Product Listing Pack **Generate a complete Amazon product listing image set — hero image, lifestyle shot, infographic with features, and comparison/detail closeups optimized for Amazon standards.** ## Inputs | Name | Type | Required | Default | Description | |:---|:---|:---|:---|:---| | `product_name` | text | yes | — | The product name (e.g. "Stainless Steel Water Bottle 32oz"). | | `product_category` | text | yes | — | Amazon category (e.g. "Kitchen & Dining", "Sports & Outdoors", "Electronics"). | | `key_features` | text | yes | — | Comma-separated top features to highlight (e.g. "leak-proof lid, BPA-free, keeps cold 24h, fits cupholder"). | | `target_buyer` | text | no | general consumer | Who buys this (e.g. "athletes", "busy moms", "office workers aged 25-45"). | | `product_image` | image_url | no | — | Optional existing product photo to use as base reference. | ## Steps Submit a SINGLE the plan with all steps running in parallel. ### All 4 Images (Parallel) 1. **Hero image (white background)** — `muapi image generate` (model=`ai-product-photography`) if `{{product_image}}` provided, else `muapi image generate` (model=`gpt4o-text-to-image`): - Prompt: `Professional Amazon main listing hero image of {{product_name}}. Pure white background #FFFFFF. Product centered, perfectly lit with soft studio lighting, no shadows. High resolution, commercial product photography, sharp focus on all details, 2000x2000px equivalent quality.` - Aspect ratio: 1:1 2. **Lifestyle/context shot** — `muapi image generate` (model=`ai-product-shot`) if `{{product_image}}` provided, else `muapi image generate` (model=`nano-banana-pro`): - Prompt: `Amazon lifestyle image of {{product_name}} being used by {{target_buyer}} in a natural setting. {{product_category}} product in real-life use context. Warm natural lighting, aspirational but relatable, slight bokeh background. Commercial lifestyle photography, professional quality.` - Aspect ratio: 1:1 3. **Feature infographic** — `muapi image generate` (model=`gpt4o-text-to-image`): - Prompt: `Amazon product detail page infographic for {{product_name}}. Shows product with 4-5 callout arrows highlighting these key features: {{key_features}}. Clean white or light grey background, professional typography, bold feature labels with icons. Amazon A+ content style, feature benefit layout, commercial design.` - Aspect ratio: 1:1 4. **Closeup detail shot** — `muapi image generate` (model=`nano-banana-pro`): - Prompt: `Extreme closeup macro product detail shot of {{product_name}} — focus on premium materials, texture, quality craftsmanship. Studio lighting, white background, ultra sharp focus, demonstrates quality. Amazon product detail image showing materials/finish.` - Aspect ratio: 1:1 After generation: - Present all 4 images in order (main > lifestyle > infographic > detail) - Suggest uploading to canvas to arrange as a listing mockup - Offer to generate 3 additional A+ content module images ## Notes - Amazon requires main image on pure white background — enforce this strictly. - Key features should be visually distinct and scannable in the infographic. - For electronics, add "showing ports, buttons, and connections clearly" to the detail shot. ## Trigger Keywords `amazon listing`, `amazon product`, `product listing`, `ecommerce listing`, `amazon images`, `product photography amazon`, `listing images` --- ## Notes for the Executing Agent - This recipe is LLM-orchestrated: read each phase, gather any missing inputs from the user, then call `muapi` CLI commands. Use `muapi auth configure` first if `MUAPI_API_KEY` is unset. - For model IDs without a CLI alias yet, fall back to the raw endpoint via `curl -X POST https://api.muapi.ai/api/v1/ -H "x-api-key: $MUAPI_API_KEY" -H 'content-type: application/json' -d '{...}'` and poll with `muapi predict wait `. - Substitute `{{input_name}}` placeholders with the user's actual inputs before issuing each call.