X Analytics Loop
Run this weekly.
Collect
For each post, ask for or infer:
- date/time
- topic
- format
- hook
- impressions
- likes
- replies
- reposts/quotes
- bookmarks if visible
- profile visits
- follows
- link clicks if relevant
Calculate
Use:
- engagement rate = engagements / impressions
- reply rate = replies / impressions
- repost rate = reposts / impressions
- profile-click rate = profile visits / impressions
- follow conversion = follows / profile visits
If data is missing, continue with qualitative diagnosis and mark assumptions.
Diagnose
- High impressions, low engagement: hook/retrieval worked, post underdelivered.
- Low impressions, high engagement: content resonated, distribution needs work.
- High replies, low follows: conversation works, profile may be weak.
- High profile clicks, low follows: bio/pinned post problem.
- High likes, low reposts: agreeable, not share-worthy.
- High reposts/bookmarks: make more templates/frameworks.
Decide
Pick:
- 3 things to repeat
- 3 things to stop
- 3 experiments for next week
Output
Return:
- Top winners
- Hidden winners
- Losers
- Signal diagnosis
- Next week’s experiments
- Posting plan
Operating Principle
Treat the public X algorithm as a signal map, not a cheat code. Optimize for posts and replies that earn useful positive actions (dwell, replies, reposts, shares, profile clicks, follows) while avoiding negative actions (not interested, mute, block, report, fast skips).
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