autopilot-status

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Check campaign autopilot status. Use when: health scores, auto-corrections, guardrail review, campaigns needing attention.

AI & Automation 136 stars 37 forks Updated 3 days ago MIT

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Skill Content

# /digital-marketing-pro:autopilot-status ## Purpose Campaign operations autopilot dashboard. Show health scores for all active campaigns, list any auto-corrections taken recently, display current guardrail configuration, flag campaigns needing human attention, and report savings from automated interventions. Provides a single-view operational picture of how the autopilot system is managing campaign health — so the user can trust what's running smoothly, focus attention on what needs it, and quantify the value of automated monitoring. ## Input Required The user must provide (or will be prompted for): - **Time period**: The lookback window for correction history and savings calculation — defaults to "last 24 hours". Accepts "last 1 hour", "last 12 hours", "last 24 hours", "last 7 days", "last 30 days", or a custom date range. Shorter periods for real-time operational checks, longer periods for performance reviews and reporting - **Campaign filter (optional)**: Narrow the dashboard to specific campaigns by name, ID, channel, or status — e.g., "Q1 brand awareness campaigns only", "all Google Ads campaigns", or "campaign-id-12345". If omitted, shows all active campaigns across all channels - **Detail level (optional)**: `summary` (default — health scores, correction count, top-line savings) or `detailed` (full correction logs with before/after metrics, guardrail rule explanations, per-campaign savings breakdown). Use summary for daily check-ins, detailed for weekly reviews o...

Details

Author
indranilbanerjee
Repository
indranilbanerjee/digital-marketing-pro
Created
4 months ago
Last Updated
3 days ago
Language
Python
License
MIT

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