human-masked-content-creator
// Meta-skill for orchestrating humanizer, de-ai-ify, copywriting, and tweet-writer to produce high-quality, platform-ready content that sounds authentic and human while preserving factual integrity. Use when users need persuasive posts and thread adaptations with anti-generic voice editing and engagem
Purpose
Create content that is:
- persuasive and high-signal,
- natural in voice,
- platform-appropriate,
- non-generic and non-template-like.
This skill coordinates upstream writing/editing skills; it does not claim guaranteed virality.
Required Installed Skills
humanizer(inspected latest:1.0.0)de-ai-ify(inspected latest:1.0.0)copywriting(inspected latest:0.1.0)tweet-writer(inspected latest:1.0.0)
Install/update:
npx -y clawhub@latest install humanizer
npx -y clawhub@latest install de-ai-ify
npx -y clawhub@latest install copywriting
npx -y clawhub@latest install tweet-writer
npx -y clawhub@latest update --all
Verify:
npx -y clawhub@latest list
Requested Scenario Profile
Example scenario:
- User needs a LinkedIn post about remote work.
- The post should feel authentic and engagement-oriented.
- The final output should also include an X thread adaptation (5 tweets).
Inputs the LM Must Collect First
topic(example: remote work)platform_primary(linkedin)target_audience(example: managers, founders, ICs)goal(reach, comments, shares, leads)voice_preferences(direct, reflective, contrarian, practical)author_context(first-hand experience, examples, proof points)hard_constraints(length, tone, banned claims/words)thread_required(yes/no, defaultyesfor this scenario)
Do not draft copy before these are explicit.
Tool Responsibilities
humanizer
Use as first-pass anti-pattern editor:
- remove common AI writing signals,
- replace inflated/formulaic language with specific concrete phrasing,
- preserve meaning while increasing naturalness.
Important behavior:
- strongly pattern-based rewrite guidance,
- output is rewritten text + change summary,
- no guaranteed numeric score in the base
humanizerskill.
de-ai-ify
Use as voice pass:
- reduce robotic transitions and hedging,
- simplify buzzword-heavy language,
- increase conversational rhythm,
- enforce direct, human cadence.
Important behavior:
- style/voice correction layer after humanizer,
- useful for adding opinionated nuance and natural texture.
copywriting
Use as persuasion structure pass:
- apply AIDA/PAS/FAB where appropriate,
- strengthen opening hook,
- sharpen value proposition,
- add one clear engagement CTA.
Important behavior:
- persuasive framework selection by goal,
- avoid over-salesy tone for social posts.
tweet-writer
Use as X/Twitter adaptation layer:
- convert long-form message into scroll-stopping tweet/thread format,
- optimize hooks, pacing, and mobile readability,
- enforce concise tweet structure.
Important boundary:
- this is X-oriented optimization, not LinkedIn-native optimization.
Canonical Pipeline
Use this order unless user requests otherwise.
Stage 1: Base draft (message-first)
Create a clean first draft for LinkedIn:
- one strong claim/opinion
- one concrete example
- one practical takeaway
- one question for comments
Avoid list-heavy, sterile, template-first drafting.
Stage 2: Humanizer pass (pattern cleanup)
Run the draft through humanizer logic:
- remove inflated symbolism and generic conclusions
- reduce over-structured AI cadence
- replace vague claims with specifics
Output target:
- same core meaning,
- lower obvious AI-pattern density,
- still readable and coherent.
Stage 3: De-AI-ify pass (voice)
Apply de-ai-ify voice shaping:
- remove excessive transitions and hedging
- tighten to direct, natural language
- introduce human rhythm (short + long sentence variation)
Output target:
- sounds like a person with a point of view,
- not like policy copy.
Stage 4: Copywriting pass (engagement architecture)
Apply copywriting frameworks to final LinkedIn post:
- opening: strong hook (bold thesis, tension, or contrarian angle)
- body: concise value block (problem -> insight -> implication)
- close: one engagement question (comments-oriented CTA)
Rule:
- one CTA only.
Stage 5: X adaptation (5-tweet thread)
Use tweet-writer principles to convert the same core argument into exactly 5 tweets:
- Tweet 1: hook
- Tweet 2: context/problem
- Tweet 3: key insight
- Tweet 4: practical framework/example
- Tweet 5: question CTA
Hard constraints:
- no external links in the main tweets unless user explicitly requests
- short, mobile-readable lines
- keep continuity and avoid repeating the same sentence across tweets
Causal Chain (Scenario Mapping)
For the scenario "LinkedIn post about remote work":
- Agent drafts initial post on remote-work thesis.
humanizerflags typical AI-like signals and rewrites for specificity.de-ai-ifyadds conversational nuance and less robotic cadence.copywritingstrengthens hook and adds one engagement question.tweet-writertransforms core message into a 5-tweet thread.
Output Contract
Always return:
-
LinkedInPost_Final- final LinkedIn copy
-
VoiceEdits_Summary- key changes from humanizer + de-ai-ify
-
PersuasionStructure- framework used (AIDA/PAS/FAB) and why
-
XThread_5Tweets- exactly five tweets, numbered 1/5 ... 5/5
-
OptionalVariants- 2 alternative hooks
- 2 alternative closing questions
Quality Gates
Before final output, verify:
- authenticity: text does not read like a rigid template
- specificity: at least one concrete detail/example included
- rhythm: sentence lengths vary naturally
- persuasion: one clear hook + one clear CTA
- platform fit: LinkedIn readable + X thread concise
- integrity: no fabricated data, experiences, or citations
If any gate fails, return Needs Revision with explicit reasons.
Guardrails
- Do not fabricate personal anecdotes or fake proof.
- Do not claim guaranteed virality or guaranteed reach outcomes.
- Do not hide factual uncertainty when claims are unverified.
- Keep persuasive language ethical and non-manipulative.
- Prioritize reader trust over stylistic gimmicks.
Known Limits from Inspected Upstream Skills
- Base
humanizeris rewrite-focused and does not define a strict numeric AI score output. - If numeric AI-likeness scoring is required (for example "85% AI"), this may need the optional
ai-humanizervariant or explicit custom scoring rubric. tweet-writeroptimizes for X, not LinkedIn ranking mechanics.- These tools improve quality and naturalness but cannot guarantee SEO outcomes or detection immunity.
Treat these limits as required disclosure when presenting results.