Installation
$npx skills add ericosiu/ai-marketing-skills --skill conversion-opsSummary
This skill enables an agent to analyze landing pages and score them across 8 conversion dimensions (headline clarity, CTA visibility, social proof, urgency, trust signals, form friction, mobile responsiveness, and page speed), plus generate lead magnet ideas by segmenting survey data by pain points. Invoke it when a user requests a CRO audit, wants to identify conversion bottlenecks, or needs to translate survey feedback into content strategy.
SKILL.MD
AI Conversion Ops
Preamble (runs on skill start)
# Version check (silent if up to date)
python3 telemetry/version_check.py 2>/dev/null || true
# Telemetry opt-in (first run only, then remembers your choice)
python3 telemetry/telemetry_init.py 2>/dev/null || true
Privacy: This skill logs usage locally to
~/.ai-marketing-skills/analytics/. Remote telemetry is opt-in only. No code, file paths, or repo content is ever collected. Seetelemetry/README.md.
AI-powered conversion rate optimization: landing page audits, CRO scoring, survey segmentation, and lead magnet generation.
When to Use
- User asks for a landing page audit or CRO analysis
- User wants to score a page across conversion dimensions
- User needs to identify conversion bottlenecks on a URL
- User has survey data and wants to segment respondents by pain point
- User wants lead magnet ideas generated from survey responses
- User needs batch CRO analysis across multiple URLs
Tools
CRO Audit (cro_audit.py)
Fetches a landing page and scores it across 8 conversion dimensions. No headless browser needed.
# Single URL audit
python cro_audit.py --url https://example.com/landing-page
# Batch mode — multiple URLs
python cro_audit.py --urls https://example.com/page1 https://example.com/page2
# URLs from a file (one per line)
python cro_audit.py --file urls.txt
# Specify industry for benchmark comparison
python cro_audit.py --url https://example.com --industry saas
# JSON output
python cro_audit.py --url https://example.com --json
# Save report to file
python cro_audit.py --url https://example.com --output report.json
Scoring dimensions (each 0–100):
- Headline Clarity — Is the value prop obvious in <5 seconds?
- CTA Visibility — Are CTAs prominent, contrasting, above the fold?
- Social Proof — Testimonials, logos, case studies, numbers?
- Urgency — Scarcity, deadlines, limited offers?
- Trust Signals — Security badges, guarantees, privacy, certifications?
- Form Friction — How many fields? Is the form intimidating?
- Mobile Responsiveness — Viewport meta, responsive patterns, touch targets?
- Page Speed Indicators — Image optimization, script count, resource size?
Overall CRO Score = Weighted average across all 8 dimensions.
Output includes:
- Per-dimension score with specific findings
- Priority fixes ranked by impact
- Before/after suggestions for each issue
- Industry benchmark comparison
- Overall letter grade (A+ through F)
Supported industries: saas, ecommerce, agency, finance, healthcare, education, b2b, general
Survey-to-Lead-Magnet Engine (survey_lead_magnet.py)
Ingests survey CSV data, clusters respondents by pain point, and generates lead magnet briefs for each segment.
# Basic usage — analyze survey CSV
python survey_lead_magnet.py --csv survey_responses.csv
# Specify which columns contain pain points / challenges
python survey_lead_magnet.py --csv survey.csv --pain-columns "biggest_challenge" "top_frustration"
# Limit number of segments
python survey_lead_magnet.py --csv survey.csv --top-segments 5
# JSON output
python survey_lead_magnet.py --csv survey.csv --json
# Save output
python survey_lead_magnet.py --csv survey.csv --output lead_magnets.json
What it produces:
- Pain point clusters with respondent counts
- Segments ranked by size and commercial potential
- For each top segment, a lead magnet brief:
- Title, format (guide/checklist/template/calculator), hook
- Content outline (5–7 sections)
- Target CTA and distribution channel
- Viral potential score + conversion potential score
- Prioritized implementation roadmap
CSV format: Questions as column headers, one respondent per row. Works with any survey tool export (Typeform, Google Forms, SurveyMonkey, etc.)
Configuration
No API keys required. Both tools work with local analysis only.
Optional environment variables:
| Variable | Required | Description |
|---|---|---|
USER_AGENT | No | Custom user agent for page fetching (default provided) |
REQUEST_TIMEOUT | No | HTTP timeout in seconds (default: 15) |
Recommended Workflow
- Weekly: Run
cro_audit.pyon your top landing pages to track CRO scores over time - Post-survey: Run
survey_lead_magnet.pyto turn survey data into content strategy - Pre-launch: Audit new landing pages before driving paid traffic
- Monthly: Batch audit competitor landing pages to benchmark against
Dependencies
pip install -r requirements.txt