SKILL.md
Ads DNA: Brand DNA Extractor
Extracts brand identity from a website and saves it as brand-profile.json
for use by /ads create, /ads generate, and /ads photoshoot.
Brand DNA extraction is OBSERVE and LISTEN made concrete (see the
10-Principle Thinking Framework in ads/references/thinking-framework.md).
The website is the input; the brand profile is what the site is saying
about itself when no one is curating the message. Listen to the voice
before you label it. Observe the visual choices before you classify them.
Quick Reference
Command
What it does
/ads dna <url>
Full brand extraction → brand-profile.json
/ads dna https://acme.com --quick
Fast extraction (homepage only)
Process
Step 1: Collect URL
If the user hasn't provided a URL, ask:
"What website URL should I analyze for brand DNA? (e.g. https://yoursite.com)"
Step 2: Fetch Pages
Use the WebFetch tool to retrieve each page. For each URL, use this fetch prompt:
"Return all visible text content, the full contents of any <style> blocks, inline
style= attributes, <meta> tags, Google Fonts @import URLs, and any og:image
values found on this page."
Fetch in this order:
- Homepage (
<url>)
- About page: try
<url>/about, then<url>/about-us, then<url>/our-story
- Product/Services page: try
<url>/product, then<url>/products, then<url>/services
**If --quick flag was provided**: fetch the homepage only; skip steps 2 and 3.
If a secondary page returns a 404 or redirect error, continue with fewer pages and note:
"Secondary pages unavailable; extraction based on homepage only. Confidence may be lower."
Step 2b: Capture Brand Screenshots
After fetching pages, capture 3 screenshots for comprehensive brand anchoring.
These serve as visual style references during /ads generate; the same approach
Pomelli uses to anchor ad images to the actual brand aesthetic.
Capture the following:
- Homepage hero section (above the fold):
python ~/.claude/skills/ads/scripts/capture_screenshot.py [url]
Saves: ./brand-screenshots/{domain}_homepage.png
- Product or services page:
python ~/.claude/skills/ads/scripts/capture_screenshot.py [url]/products
Saves: ./brand-screenshots/{domain}_product.png
- About page (brand personality):
python ~/.claude/skills/ads/scripts/capture_screenshot.py [url]/about
Saves: ./brand-screenshots/{domain}_about.png
If a page is not found or returns an error, skip it gracefully and continue
with the remaining pages.
**If --quick flag was provided**: skip screenshot capture entirely.
If capture fails (Playwright not installed, network error, JS-heavy SPA that times out):
- Log:
"Screenshot capture skipped; run: python3 -m playwright install chromium"
- Continue without screenshots
- Do NOT set the
screenshotsfield in brand-profile.json
Step 3: Extract Brand Elements
From the fetched HTML, extract:
Colors:
og:imagemeta tag → analyze dominant colors (note 2-3 prominent hex values)
- CSS
background-coloronbody,header,.hero,.btn-primary
- CSS
coloronh1,h2,.btn
- CSS
border-colororbackgroundon.cta,.button
- Identify: primary (most prominent brand color), secondary (supporting colors), background, text
Typography:
@import url(https://fonts.googleapis.com/...)→ extract font names from URL path
- CSS
font-familyonh1,h2,body,.headline
- If Google Fonts URL contains
family=Inter:wght@..., heading_font = "Inter"
Voice:
Analyze hero headline, subheadline, About page intro, and CTA button text.
Score each axis 1-10 using these heuristics:
Signal
Score direction
Uses "you/your" frequently
formal_casual → casual (+2)
Uses technical jargon
expert_accessible → expert (-2)
Short punchy sentences (≤8 words)
bold_subtle → bold (+2)
Data/stats in hero
rational_emotional → rational (-2)
"Transform", "revolutionize", "disrupt"
traditional_innovative → innovative (+2)
Customer testimonials lead
rational_emotional → emotional (+2)
Industry awards, "trusted by X"
traditional_innovative → traditional (-1)
Confidence Scoring
Each voice axis gets a confidence rating based on signal count:
- High (3+ signals): strong evidence for axis position
- Medium (2 signals): moderate evidence, may need validation
- Low (1 signal): weak evidence, treat as estimate
Also extract structured data when available: schema.org markup, Open Graph tags (og:title, og:description, og:image), Twitter Card metadata.
Imagery style (from og:image and any visible hero image descriptions):
- Photography vs. illustration vs. flat design
- Subject matter (people, product, abstract, data)
- Composition style (clean/minimal vs. busy/editorial)
Forbidden elements (infer from brand positioning):
- Enterprise/B2B brands → add "cheesy stock photos", "consumer lifestyle imagery"
- Healthcare → add "unqualified medical claims", "before/after imagery"
- Finance → add "get rich quick imagery", "unrealistic wealth displays"
- Consumer brands → usually no forbidden elements
Step 4: Build brand-profile.json
Read ~/.claude/skills/ads/references/brand-dna-template.md for the exact schema.
Construct the JSON object following the schema precisely. Use null for any
field that cannot be confidently extracted; do not guess.
Example of a low-confidence field:
"typography": {
"heading_font": null,
"body_font": "system-ui",
"pairing_descriptor": "system default (Google Fonts not detected)"
}
Step 5: Write brand-profile.json
Write the JSON to ./brand-profile.json in the current working directory
(where the user is running Claude Code).
If screenshots were captured successfully in Step 2b, include a screenshots field:
"screenshots": {
"homepage": "./brand-screenshots/{domain}_homepage.png",
"product": "./brand-screenshots/{domain}_product.png",
"about": "./brand-screenshots/{domain}_about.png"
}
Include only the screenshots that were successfully captured. If a page was not
found or errored, omit that key. Omit the screenshots field entirely if Step 2b
was skipped or all captures failed.
Step 6: Confirm and Summarize
Show the user:
✓ brand-profile.json saved to ./brand-profile.json
Brand DNA Summary:
Brand: [brand_name]
Voice: [descriptor 1], [descriptor 2], [descriptor 3]
Primary Color: [hex]
Typography: [heading_font] / [body_font]
Target: [age_range] [profession]
Screenshots: [N captured (homepage, product, about) in ./brand-screenshots/] OR [skipped]
Run `/ads create` to generate campaign concepts from this profile.
Visual Designer Integration
The visual-designer agent uses the most relevant screenshot per concept as a style
reference when generating images via banana. For example, a product-focused concept
references the product page screenshot, while a brand awareness concept references
the homepage or about page screenshot.
Limitations
- Sparse content: Sites with <200 words of body text produce lower-confidence profiles.
Note: "Low confidence extraction; limited content available for analysis."
- Dynamic sites: JavaScript-rendered content may not be captured. Playwright is not
used by default. If the site appears to be SPA/React with no static HTML, note this.
- Multi-brand enterprises: This tool creates one profile per URL. Run separately
for each brand/product line.
- Dark mode sites: If body background is #333 or darker, swap background/text values.
- CSS-in-JS: Modern React sites may not have extractable CSS. Use og:image colors as fallback.
brand-profile.json Schema
{
"schema_version": "1.0",
"brand_name": "string",
"website_url": "string",
"extracted_at": "ISO-8601",
"voice": {
"formal_casual": 1-10,
"rational_emotional": 1-10,
"playful_serious": 1-10,
"bold_subtle": 1-10,
"traditional_innovative": 1-10,
"expert_accessible": 1-10,
"descriptors": ["adjective1", "adjective2", "adjective3"]
},
"colors": {
"primary": "#hexcode or null",
"secondary": ["#hex1", "#hex2"],
"forbidden": ["#hex or color name"],
"background": "#hexcode",
"text": "#hexcode"
},
"typography": {
"heading_font": "Font Name or null",
"body_font": "Font Name or system-ui",
"pairing_descriptor": "brief description"
},
"imagery": {
"style": "professional photography | illustration | flat design | mixed",
"subjects": ["subject1", "subject2"],
"composition": "brief description",
"forbidden": ["element1", "element2"]
},
"aesthetic": {
"mood_keywords": ["keyword1", "keyword2", "keyword3"],
"texture": "minimal | textured | mixed",
"negative_space": "generous | moderate | dense"
},
"brand_values": ["value1", "value2", "value3"],
"target_audience": {
"age_range": "e.g. 25-45",
"profession": "brief description",
"pain_points": ["pain1", "pain2"],
"aspirations": ["aspiration1", "aspiration2"]
}
}