| name | narrative-health-audit |
| description | When a Web3 project's content engagement is declining (>20% drop in 30 days), community can't explain what you do, or different team members give different elevator pitches, run a 12-step audit to identify narrative anti-patterns (Tech Trap, Wrong Hero, Hook Failure, Inconsistency) and produce a prioritized fix list. Use as a quarterly health check or pre-launch diagnostic. |
| composition_level | atom |
| extraction-lens | capability |
| source_attribution | Matt Bond (Hivemind Library) |
| license | pending-consent |
| status | candidate |
Narrative Health Audit
When to use
- Content engagement declining (>20% drop over 30 days)
- Community can't clearly explain what you do
- Different team members give different elevator pitches
- High awareness but low conversion
- Negative sentiment rising in community channels
- Preparing major launch / rebrand
- Quarterly narrative health check (preventive)
When NOT to use
- Pre-product with no messaging yet (nothing to audit)
- Active crisis requiring immediate response (fix first, audit later)
- Less than 30 days of content history (insufficient data)
Inputs required
Before running, collect:
- Last 90 days of published content (tweets, blogs, announcements)
- Engagement metrics per piece (likes, comments, shares, CTR)
- Community feedback / complaints (Discord, Telegram, support tickets)
- Competitor positioning and messaging
- Current team elevator pitches (record 3 different team members)
- User research or survey data, if available
Time required: 4-6 hours for thorough audit.
Core procedure (12 steps)
- Collect all content from the past 90 days into a single document.
- Run the Grandmother Test on the top 10 pieces by reach: would someone outside crypto understand within 15 seconds?
- Count we/our vs you/your ratio. Healthy = 1:3 or more "you."
- Check narrative consistency: can you summarize the core message in one sentence that applies across all channels?
- Identify the top 3 anti-patterns using the checklist in
reference.md.
- Score each piece for the four core anti-patterns:
- Tech Trap — specs before benefits
- Wrong Hero — company as hero instead of audience
- Hook Failure — weak opening
- Inconsistency — contradicts other content
- Map engagement data to anti-pattern presence (correlation test). Pieces low on anti-patterns should outperform.
- Document what your best-performing content did differently — extract the positive pattern.
- Create a prioritized fix list, highest-impact first.
- Draft corrected versions of the worst-performing pieces as templates.
- Schedule team calibration session to align on the corrected narrative framework.
- Implement a 30-day test of the corrected approach. Re-measure.
Owners and required participants
- Primary owner: Head of Marketing / Communications
- Required: Founder/CEO (for narrative alignment), Community Manager (for feedback), Product Lead (for feature framing)
- Optional: Content creator, Social media lead
Output
Return:
- The top 3 anti-patterns identified
- Engagement-vs-anti-pattern correlation table
- Best-performing content's positive pattern
- Prioritized fix list (highest impact first)
- 3-5 corrected versions of worst-performing pieces (as templates)
- 30-day test plan with re-measurement criteria
Critical insight
Most teams fall into 2-3 anti-patterns simultaneously. The Tech Trap + Wrong Hero combo is the most common and most deadly. Fix those two first; other improvements often follow naturally.
Failure modes / risks
- Paralysis by analysis — auditing forever without fixing. Set a 7-day deadline from start to fix-list.
- Defensive team dynamics — members protecting "their" content instead of focusing on effectiveness. Frame as "what's working vs not" rather than "who was wrong."
- Over-correction — swinging too far (going from tech-heavy to zero substance).
- Public pivot whiplash — changing narrative too abruptly without explanation confuses community. Telegraph the shift.
- Cherry-picking data — ignoring qualitative signals that contradict quantitative metrics.
- Founder ego block — CEO refuses to acknowledge their pet narrative isn't working.
- Assuming vs validating — fixing based on assumptions rather than testing with real users.
Regional notes
- Tech Trap is especially common in technical / Asian markets
- Ideology Framing is more prevalent in Western markets
Adjust the audit weight per anti-pattern based on your audience geography.
Supporting files
reference.md — Quick diagnostic checklist (10-item pre-publish gate) + full anti-pattern list with examples + best-performing content positive pattern