Engagement Analytics
by gtmagents
Use when measuring webinar funnel performance and diagnosing audience
Skill Details
Repository Files
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name: engagement-analytics description: Use when measuring webinar funnel performance and diagnosing audience behavior.
Webinar Engagement Analytics Skill
When to Use
- Building dashboards for registrations → attendance → engagement → conversion.
- Investigating drop-offs or anomalous sessions.
- Reporting to GTM leadership on webinar ROI.
Framework
- Metrics Stack – acquisition, attendance, engagement, conversion, satisfaction ladders.
- KPI Design – define thresholds per tier and align with GTM goals.
- Data Plumbing – map sources (platform, MAP, CRM, survey) and refresh schedules.
- Analytics Workflow – build dashboards/anomaly alerts and run cohort analyses.
- Insight Loop – document findings, actions, and owners in recurring reports.
Templates
- KPI tracker spreadsheet (target vs actual vs delta).
- Insight brief structure (observation, impact, recommendation, owner).
- Experiment log tied to engagement metrics.
Tips
- Track on-demand performance separately; long-tail views often exceed live.
- Segment by acquisition channel to optimize promotion mix.
- Combine qualitative feedback with quantitative metrics for context.
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