.github/skills/campaign-analytics/SKILL.md
Analyzes campaign performance with multi-touch attribution, funnel conversion analysis, and ROI calculation for marketing optimization. Use when analyzing marketing campaigns, ad performance, attribution models, conversion rates, or calculating marketing ROI, ROAS, CPA, and campaign metrics across channels.
npx skillsauth add desenyon/infinitecontex campaign-analyticsInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Production-grade campaign performance analysis with multi-touch attribution modeling, funnel conversion analysis, and ROI calculation. Three Python CLI tools provide deterministic, repeatable analytics using standard library only -- no external dependencies, no API calls, no ML models.
All scripts accept a JSON file as positional input argument. See assets/sample_campaign_data.json for complete examples.
{
"journeys": [
{
"journey_id": "j1",
"touchpoints": [
{"channel": "organic_search", "timestamp": "2025-10-01T10:00:00", "interaction": "click"},
{"channel": "email", "timestamp": "2025-10-05T14:30:00", "interaction": "open"},
{"channel": "paid_search", "timestamp": "2025-10-08T09:15:00", "interaction": "click"}
],
"converted": true,
"revenue": 500.00
}
]
}
{
"funnel": {
"stages": ["Awareness", "Interest", "Consideration", "Intent", "Purchase"],
"counts": [10000, 5200, 2800, 1400, 420]
}
}
{
"campaigns": [
{
"name": "Spring Email Campaign",
"channel": "email",
"spend": 5000.00,
"revenue": 25000.00,
"impressions": 50000,
"clicks": 2500,
"leads": 300,
"customers": 45
}
]
}
Before running scripts, verify your JSON is valid and matches the expected schema. Common errors:
journeys, funnel.stages, campaigns) → script exits with a descriptive KeyErrorstages and counts must be the same length) → raises ValueErrorTypeErrorUse python -m json.tool your_file.json to validate JSON syntax before passing it to any script.
All scripts support two output formats via the --format flag:
--format text (default): Human-readable tables and summaries for review--format json: Machine-readable JSON for integrations and pipelinesFor a complete campaign review, run the three scripts in sequence:
# Step 1 — Attribution: understand which channels drive conversions
python scripts/attribution_analyzer.py campaign_data.json --model time-decay
# Step 2 — Funnel: identify where prospects drop off on the path to conversion
python scripts/funnel_analyzer.py funnel_data.json
# Step 3 — ROI: calculate profitability and benchmark against industry standards
python scripts/campaign_roi_calculator.py campaign_data.json
Use attribution results to identify top-performing channels, then focus funnel analysis on those channels' segments, and finally validate ROI metrics to prioritize budget reallocation.
# Run all 5 attribution models
python scripts/attribution_analyzer.py campaign_data.json
# Run a specific model
python scripts/attribution_analyzer.py campaign_data.json --model time-decay
# JSON output for pipeline integration
python scripts/attribution_analyzer.py campaign_data.json --format json
# Custom time-decay half-life (default: 7 days)
python scripts/attribution_analyzer.py campaign_data.json --model time-decay --half-life 14
# Basic funnel analysis
python scripts/funnel_analyzer.py funnel_data.json
# JSON output
python scripts/funnel_analyzer.py funnel_data.json --format json
# Calculate ROI metrics for all campaigns
python scripts/campaign_roi_calculator.py campaign_data.json
# JSON output
python scripts/campaign_roi_calculator.py campaign_data.json --format json
Implements five industry-standard attribution models to allocate conversion credit across marketing channels:
| Model | Description | Best For | |-------|-------------|----------| | First-Touch | 100% credit to first interaction | Brand awareness campaigns | | Last-Touch | 100% credit to last interaction | Direct response campaigns | | Linear | Equal credit to all touchpoints | Balanced multi-channel evaluation | | Time-Decay | More credit to recent touchpoints | Short sales cycles | | Position-Based | 40/20/40 split (first/middle/last) | Full-funnel marketing |
Analyzes conversion funnels to identify bottlenecks and optimization opportunities:
Calculates comprehensive ROI metrics with industry benchmarking:
| Guide | Location | Purpose |
|-------|----------|---------|
| Attribution Models Guide | references/attribution-models-guide.md | Deep dive into 5 models with formulas, pros/cons, selection criteria |
| Campaign Metrics Benchmarks | references/campaign-metrics-benchmarks.md | Industry benchmarks by channel and vertical for CTR, CPC, CPM, CPA, ROAS |
| Funnel Optimization Framework | references/funnel-optimization-framework.md | Stage-by-stage optimization strategies, common bottlenecks, best practices |
testing
When the user wants to optimize any form that is NOT signup/registration — including lead capture forms, contact forms, demo request forms, application forms, survey forms, or checkout forms. Also use when the user mentions "form optimization," "lead form conversions," "form friction," "form fields," "form completion rate," or "contact form." For signup/registration forms, see signup-flow-cro. For popups containing forms, see popup-cro.
development
Performs financial ratio analysis, DCF valuation, budget variance analysis, and rolling forecast construction for strategic decision-making. Use when analyzing financial statements, building valuation models, assessing budget variances, or constructing financial projections and forecasts. Also applicable when users mention financial modeling, cash flow analysis, company valuation, financial projections, or spreadsheet analysis.
testing
SaaS financial health advisor. Use when a user shares revenue or customer numbers, or mentions ARR, MRR, churn, LTV, CAC, NRR, or asks how their SaaS business is doing.
development
Performs financial ratio analysis, DCF valuation, budget variance analysis, and rolling forecast construction for strategic decision-making. Use when analyzing financial statements, building valuation models, assessing budget variances, or constructing financial projections and forecasts. Also applicable when users mention financial modeling, cash flow analysis, company valuation, financial projections, or spreadsheet analysis.