Commonly-used-high-value-skills campaign-analytics
Analyzes campaign performance with multi-touch attribution, funnel conversion, and ROI calculation for marketing optimization
git clone https://github.com/seaworld008/Commonly-used-high-value-skills
T=$(mktemp -d) && git clone --depth=1 https://github.com/seaworld008/Commonly-used-high-value-skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/openclaw-skills/campaign-analytics" ~/.claude/skills/seaworld008-commonly-used-high-value-skills-campaign-analytics && rm -rf "$T"
T=$(mktemp -d) && git clone --depth=1 https://github.com/seaworld008/Commonly-used-high-value-skills "$T" && mkdir -p ~/.openclaw/skills && cp -r "$T/openclaw-skills/campaign-analytics" ~/.openclaw/skills/seaworld008-commonly-used-high-value-skills-campaign-analytics && rm -rf "$T"
openclaw-skills/campaign-analytics/SKILL.mdCampaign Analytics
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.
Table of Contents
- Capabilities
- Input Requirements
- Output Formats
- How to Use
- Scripts
- Reference Guides
- Best Practices
- Limitations
Capabilities
- Multi-Touch Attribution: Five attribution models (first-touch, last-touch, linear, time-decay, position-based) with configurable parameters
- Funnel Conversion Analysis: Stage-by-stage conversion rates, drop-off identification, bottleneck detection, and segment comparison
- Campaign ROI Calculation: ROI, ROAS, CPA, CPL, CAC metrics with industry benchmarking and underperformance flagging
- A/B Test Support: Templates for structured A/B test documentation and analysis
- Channel Comparison: Cross-channel performance comparison with normalized metrics
- Executive Reporting: Ready-to-use templates for campaign performance reports
Input Requirements
All scripts accept a JSON file as positional input argument. See
assets/sample_campaign_data.json for complete examples.
Attribution Analyzer
{ "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 Analyzer
{ "funnel": { "stages": ["Awareness", "Interest", "Consideration", "Intent", "Purchase"], "counts": [10000, 5200, 2800, 1400, 420] } }
Campaign ROI Calculator
{ "campaigns": [ { "name": "Spring Email Campaign", "channel": "email", "spend": 5000.00, "revenue": 25000.00, "impressions": 50000, "clicks": 2500, "leads": 300, "customers": 45 } ] }
Output Formats
All scripts support two output formats via the
--format flag:
(default): Human-readable tables and summaries for review--format text
: Machine-readable JSON for integrations and pipelines--format json
How to Use
Attribution Analysis
# 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
Funnel Analysis
# Basic funnel analysis python scripts/funnel_analyzer.py funnel_data.json # JSON output python scripts/funnel_analyzer.py funnel_data.json --format json
Campaign ROI Calculation
# 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
Scripts
1. attribution_analyzer.py
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 |
2. funnel_analyzer.py
Analyzes conversion funnels to identify bottlenecks and optimization opportunities:
- Stage-to-stage conversion rates and drop-off percentages
- Automatic bottleneck identification (largest absolute and relative drops)
- Overall funnel conversion rate
- Segment comparison when multiple segments are provided
3. campaign_roi_calculator.py
Calculates comprehensive ROI metrics with industry benchmarking:
- ROI: Return on investment percentage
- ROAS: Return on ad spend ratio
- CPA: Cost per acquisition
- CPL: Cost per lead
- CAC: Customer acquisition cost
- CTR: Click-through rate
- CVR: Conversion rate (leads to customers)
- Flags underperforming campaigns against industry benchmarks
Reference Guides
| Guide | Location | Purpose |
|---|---|---|
| Attribution Models Guide | | Deep dive into 5 models with formulas, pros/cons, selection criteria |
| Campaign Metrics Benchmarks | | Industry benchmarks by channel and vertical for CTR, CPC, CPM, CPA, ROAS |
| Funnel Optimization Framework | | Stage-by-stage optimization strategies, common bottlenecks, best practices |
Best Practices
- Use multiple attribution models -- No single model tells the full story. Compare at least 3 models to triangulate channel value.
- Set appropriate lookback windows -- Match your time-decay half-life to your average sales cycle length.
- Segment your funnels -- Always compare segments (channel, cohort, geography) to identify what drives best performance.
- Benchmark against your own history first -- Industry benchmarks provide context, but your own historical data is the most relevant comparison.
- Run ROI analysis at regular intervals -- Weekly for active campaigns, monthly for strategic review.
- Include all costs -- Factor in creative, tooling, and labor costs alongside media spend for accurate ROI.
- Document A/B tests rigorously -- Use the provided template to ensure statistical validity and clear decision criteria.
Limitations
- No statistical significance testing -- A/B test analysis requires external tools for p-value calculations. Scripts provide descriptive metrics only.
- Standard library only -- No advanced statistical or data processing libraries. Suitable for most campaign sizes but not optimized for datasets exceeding 100K journeys.
- Offline analysis -- Scripts analyze static JSON snapshots. No real-time data connections or API integrations.
- Single-currency -- All monetary values assumed to be in the same currency. No currency conversion support.
- Simplified time-decay -- Uses exponential decay based on configurable half-life. Does not account for weekday/weekend or seasonal patterns.
- No cross-device tracking -- Attribution operates on provided journey data as-is. Cross-device identity resolution must be handled upstream.