Content Engagement Architecture Scorer
ReportScores a piece of content's growth and follower-attraction architecture across 8 dimensions from 0-10; produces a markdown report covering the growth mechanics present/missing and concrete fixes.
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Content Engagement & Follower-Attraction Architecture Evaluator
Answers not just "is it well written?" but the real question: "will it grow, will it attract followers?" It scores the content's distribution/algorithm mechanics, engagement triggers, and follower conversion on a 0–10 scale.
It examines content across 8 dimensions: hook/scroll-stop (E1), retention/flow (E2), shareability (E3), saveability (E4), comment-trigger (E5), follow-trigger (E6), CTA + next step (E7), and platform-native format (E8). The hook and follow-trigger, the core of growth, carry the heaviest weight.
When to use it: Before publishing a LinkedIn carousel, tweet, short video, blog intro, or other content — or after publishing, when you ask "why did it get reach but bring no followers?" It explicitly flags the "vanity" trap (lots of likes, zero comment/follow conversion).
Output: A weighted total /10 + a one-sentence diagnosis, a quote-anchored score for each dimension, a list of the growth mechanics present vs. missing, and concrete sentence-level fixes for the 2 weakest dimensions. On request, it also produces a JSON scorecard. Manipulative/clickbait growth suggestions lower the score on ethical grounds — it prioritizes sustainable, brand-loyal growth.
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