skills/ads-photoshoot/SKILL.md
Product photography enhancement for ad creatives using banana-claude image generation. Takes a product image and generates 5 professional photography styles for ad use: Studio, Floating, Ingredient, In Use, and Lifestyle. Requires banana-claude (v1.4.1+) with nanobanana-mcp. Triggers on: product photo, product photography, photoshoot, enhance product image, product shoot, product photos for ads, generate product photos, studio shot, lifestyle photo.
npx skillsauth add agricidaniel/claude-ads ads-photoshootInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Transforms a product image or description into professional ad-ready photography in 5 distinct visual styles. Each style generates at two sizes: 1:1 (Meta/LinkedIn) and 9:16 (TikTok/Reels/Stories).
| Command | What it does |
|---------|-------------|
| /ads photoshoot | Interactive: ask for product + styles |
| /ads photoshoot --styles studio floating | Generate only selected styles |
| /ads photoshoot --product shoe.jpg | Start with a product image file |
| /ads photoshoot --all-platforms | Generate all 5 sizes per style |
Requires banana-claude (v1.4.1+) with nanobanana-mcp configured.
Run /banana setup to configure API key and MCP.
Ask (combine into one message):
"Provide a product image path (e.g. ./product.jpg), a URL, or describe your product"
Check for brand-profile.json in the current directory.
If found, extract for style injection:
colors.primary → inject into backgrounds and accent elementsaesthetic.mood_keywords → inject as atmosphere descriptorstarget_audience → use for Lifestyle and In Use contextimagery.forbidden → exclude from all promptsIf not found, proceed with standard style templates.
Verify banana-claude is installed (run /banana setup to check). If not installed,
display setup instructions and exit.
For each selected style, build the prompt using the template + product description + brand DNA.
Clean, e-commerce style product shot.
Base template:
"[product description], professional product photography, clean white seamless
background, even studio lighting, soft drop shadow, high detail product focus,
ecommerce style, [brand.colors.primary] subtle accent reflections if applicable,
top-down or 3/4 angle, no distractions, catalog quality"
Composition: Centered, slight 3/4 angle or flat lay. Output sizes: 1080×1080, 1080×1920
Dramatic levitation effect.
Base template:
"[product description] floating in mid-air, dramatic floating product shot,
[brand.colors.primary or brand.aesthetic.mood_keywords[0]] gradient background,
atmospheric shadow below product, levitation effect, product defying gravity,
clean modern aesthetic, high contrast, striking visual"
Composition: Product centered vertically, ample space above and below. Output sizes: 1080×1080, 1080×1920
Flat lay with components.
Base template:
"[product description] centered flat lay, surrounded by its key ingredients
or materials artfully arranged, top-down overhead view, clean light background,
natural texture surface, product as hero element, ingredients scattered with
intentional negative space, editorial food photography style"
Composition: Top-down, product in center, ingredients fanning out. Output sizes: 1080×1080 (optimal for this style). Also generate 9:16 vertical for TikTok/Reels/Stories placements.
Authentic usage context.
Base template:
"person's hands using [product description] in natural context, lifestyle
photography, focus on product-hand interaction, shallow depth of field,
warm natural window light, authentic not staged, [brand.target_audience.profession]
implied context, [brand.aesthetic.mood_keywords] atmosphere"
Composition: Hands prominent, product clearly identifiable, background soft-focus. Note: Hands only; no full face (avoids model release complications). Output sizes: 1080×1080, 1080×1920
Aspirational full-context shot.
Base template:
"[product description] in aspirational lifestyle scene, [brand.target_audience.age_range]
demographic implied environment, [brand.target_audience.profession] context,
[brand.aesthetic.mood_keywords] atmosphere, golden hour or clean natural lighting,
editorial photography style, [brand.aesthetic.negative_space] composition,
product clearly visible and prominent"
Composition: Environmental context, product as hero element within the scene. Output sizes: 1080×1080, 1080×1920
For iterative refinement: if initial generation doesn't match brand expectations, adjust the prompt by specifying: lighting direction, color temperature, background texture, or product angle before regenerating.
Domain mode selection per style:
Aspect ratio setup: Use banana MCP set_aspect_ratio before each generation:
For each style x size combination, use /banana generate with the constructed
prompt, selected domain mode, and correct aspect ratio. Save output to
./product-photos/[style]/[product-slug]-[style]-[WxH].png.
Track results. If a generation fails, retry once with a simplified prompt.
Output directory structure:
./product-photos/
studio/
product-studio-1080x1080.png
product-studio-1080x1920.png
floating/
product-floating-1080x1080.png
product-floating-1080x1920.png
ingredient/
product-ingredient-1080x1080.png
product-ingredient-1080x1920.png
in-use/
product-in-use-1080x1080.png
product-in-use-1080x1920.png
lifestyle/
product-lifestyle-1080x1080.png
product-lifestyle-1080x1920.png
Summary:
✓ Product photos generated: [N] images
Studio: ./product-photos/studio/ (2 sizes)
Floating: ./product-photos/floating/ (2 sizes)
Ingredient: ./product-photos/ingredient/ (2 sizes)
In Use: ./product-photos/in-use/ (2 sizes)
Lifestyle: ./product-photos/lifestyle/ (2 sizes)
Cost: see ~/.banana/costs.json for total spend
Best for:
• Meta Feed → Studio (4:5) or Lifestyle (4:5)
• TikTok/Reels → Floating (9:16) or In Use (9:16)
• LinkedIn → Studio (1:1) or Lifestyle (1:1)
• Google PMax → Studio (1:1); crop to 1.91:1 after
Run `/ads generate` to use these in a full campaign.
Before generating, show:
| Style | Best Platforms | Rationale | |-------|---------------|-----------| | Studio | Meta Feed, LinkedIn, Google PMax | Universal, clean, platform-safe | | Floating | Meta Reels, TikTok, Stories | High visual impact on vertical placements | | Ingredient | Meta Feed, Pinterest | Works best as square; tells product story | | In Use | TikTok, Meta Reels, Stories | Authentic, native-feeling content | | Lifestyle | All platforms | Aspirational, broad audience appeal |
~/.claude/skills/ads/references/image-providers.md: API setup and pricing~/.claude/skills/ads/references/brand-dna-template.md: Brand injection schema~/.claude/skills/ads/references/meta-creative-specs.md: Safe zone for 9:16~/.claude/skills/ads/references/tiktok-creative-specs.md: Safe zone constraintstools
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