home / skills / openclaw / skills / humanizer-enhanced

humanizer-enhanced skill

/skills/dorukardahan/humanizer-enhanced

This skill helps transform blog content by removing AI writing patterns and adding personality, making it sound genuinely human.

npx playbooks add skill openclaw/skills --skill humanizer-enhanced

Review the files below or copy the command above to add this skill to your agents.

Files (5)
SKILL.md
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---
name: humanizer-enhanced
description: |
  Advanced AI text humanizer for blog content. Detects and removes 34 AI writing
  patterns, adds personality/soul, and handles crypto/Web3 specific tells.
  Use when user says /humanizer, "humanize this", "remove AI patterns",
  "make it sound human", or asks to clean up blog posts, articles, or drafts.
  Features: 28 base patterns from Wikipedia's "Signs of AI writing",
  6 crypto/Web3 specific patterns, severity scoring (HIGH/MEDIUM/LOW),
  stat attribution fixer, soul/personality injection, batch mode.
metadata:
  version: 1.2.0
  author: 0G Labs content team
---

# Humanizer enhanced: remove AI writing patterns

Identify and remove signs of AI-generated text. This enhanced version includes crypto/Web3 patterns and adds personality to make content sound genuinely human-written.

## Quick start

```text
/humanizer                    # Humanize current file or selection
/humanizer path/to/file.md    # Humanize specific file
/humanizer --scan             # Scan only, don't edit (show issues)
/humanizer --batch drafts/    # Process all .md files in directory
```

---

## Process

### Step 1: Scan for patterns

Identify all AI patterns in the text, categorize by severity:

- **HIGH** — Obvious AI tells, must fix (negative parallelism, chatbot artifacts, em dash overuse, vague attributions, copula avoidance)
- **MEDIUM** — Common AI patterns, should fix (rule of three, significance inflation, synonym cycling)
- **LOW** — Minor tells, fix if time permits (title case headings, excessive bold)

### Step 2: Report findings

Show user a summary:

```text
## Humanizer scan results

HIGH (3 issues)
- Line 45: Negative parallelism "isn't X. It's Y"
- Line 89: Em dash overuse (5 instances)
- Line 120: "Research shows" without attribution

MEDIUM (5 issues)
- Line 23: Rule of three pattern
- Line 67: Copula avoidance "serves as"
...

LOW (2 issues)
- Line 12: Title case heading
...

Total: 10 issues found
Estimated humanization: ~15 edits needed
```

### Step 3: Fix (with user approval)

Ask user: "Fix all issues? Or review one by one?"

### Step 4: Add soul

After fixing patterns, review for personality. Sterile writing is still obvious AI. See `references/communication-crypto-soul-patterns.md` for the full soul/personality guide.

### Step 5: Readability check

Check Flesch-Kincaid readability. Target grade 10-12 for developer content, grade 8-10 for general audience. If score is too high (too complex), simplify longest sentences and replace jargon.

### Step 6: Em dash regression scan

After all other fixes, run a final check for em dashes (—) across the text. Humanizer rewrites can reintroduce em dashes. Remove any that were added during the fix process.

---

## Pattern routing table

All 34 patterns are documented with before/after examples in the reference files below.

| Patterns | Severity | Reference file |
|----------|----------|----------------|
| 1. Significance inflation | MEDIUM | `references/content-patterns.md` |
| 2. Promotional language | MEDIUM | `references/content-patterns.md` |
| 3. Superficial -ing analyses | MEDIUM | `references/content-patterns.md` |
| 4. Vague attributions | HIGH | `references/content-patterns.md` |
| 5. Formulaic challenges sections | MEDIUM | `references/content-patterns.md` |
| 6. Generic positive conclusions | MEDIUM | `references/content-patterns.md` |
| 7. AI vocabulary words | MEDIUM | `references/language-style-patterns.md` |
| 8. Copula avoidance | HIGH | `references/language-style-patterns.md` |
| 9. Negative parallelism | HIGH | `references/language-style-patterns.md` |
| 10. Rule of three | MEDIUM | `references/language-style-patterns.md` |
| 11. Synonym cycling | MEDIUM | `references/language-style-patterns.md` |
| 12. False ranges | LOW | `references/language-style-patterns.md` |
| 13. Em dash overuse | HIGH | `references/language-style-patterns.md` |
| 14. Excessive boldface | LOW | `references/language-style-patterns.md` |
| 15. Inline-header lists | MEDIUM | `references/language-style-patterns.md` |
| 16. Title case headings | LOW | `references/language-style-patterns.md` |
| 17. Curly quotes | LOW | `references/language-style-patterns.md` |
| 18. Chatbot artifacts | HIGH | `references/communication-crypto-soul-patterns.md` |
| 19. Knowledge cutoff disclaimers | HIGH | `references/communication-crypto-soul-patterns.md` |
| 20. Sycophantic tone | MEDIUM | `references/communication-crypto-soul-patterns.md` |
| 21. Excessive hedging | MEDIUM | `references/communication-crypto-soul-patterns.md` |
| 22. Filler phrases | MEDIUM | `references/communication-crypto-soul-patterns.md` |
| 23. Crypto hype language | HIGH | `references/communication-crypto-soul-patterns.md` |
| 24. Vague "ecosystem" claims | MEDIUM | `references/communication-crypto-soul-patterns.md` |
| 25. Unsubstantiated stats | HIGH | `references/communication-crypto-soul-patterns.md` |
| 26. "Seamless" and "frictionless" | MEDIUM | `references/communication-crypto-soul-patterns.md` |
| 27. Abstract "empowerment" language | MEDIUM | `references/communication-crypto-soul-patterns.md` |
| 28. Fake decentralization claims | HIGH | `references/communication-crypto-soul-patterns.md` |
| 29. Meta-narration | HIGH | `references/communication-crypto-soul-patterns.md` |
| 30. False audience range | MEDIUM | `references/communication-crypto-soul-patterns.md` |
| 31. Parenthetical definitions | MEDIUM | `references/communication-crypto-soul-patterns.md` |
| 32. Sequential numbering | MEDIUM | `references/communication-crypto-soul-patterns.md` |
| 33. "It's worth noting" filler | MEDIUM | `references/communication-crypto-soul-patterns.md` |
| 34. Identical paragraph structure | HIGH | `references/communication-crypto-soul-patterns.md` |
| Soul and personality guide | — | `references/communication-crypto-soul-patterns.md` |

---

## Severity reference

| Severity | Patterns | Action |
|----------|----------|--------|
| HIGH | Negative parallelism, em dash overuse, chatbot artifacts, vague attributions, copula avoidance, crypto hype, unsubstantiated stats, meta-narration, identical paragraph structure, fake decentralization, knowledge cutoff disclaimers | Must fix |
| MEDIUM | Rule of three, significance inflation, promotional language, -ing analyses, AI vocabulary, sycophantic tone, hedging, filler phrases, ecosystem claims, false audience range, parenthetical definitions, sequential numbering, "it's worth noting" filler, inline-header lists, "seamless"/"frictionless", abstract empowerment | Should fix |
| LOW | Title case, curly quotes, excessive bold, false ranges | Fix if time permits |

---

## Quick reference: find and replace

| Find | Replace |
|------|---------|
| `—` (em dash, multiple) | `, ` or `. ` |
| `serves as` / `stands as` | `is` |
| `isn't X. It's Y` | Rewrite as single statement |
| `crucial` / `vital` / `pivotal` | `important` or `key` or delete |
| `Furthermore,` / `Moreover,` | `Also,` or delete |
| `It is important to note` | Delete |
| `Research shows` | Add specific source |
| `landscape` (abstract) | Be specific |
| `revolutionizing` / `game-changing` | Describe what it actually does |
| `seamless` / `frictionless` | Describe the actual UX |
| `In this article, we'll explore` | Delete |
| `Let's dive in` / `Let's take a look` | Delete |
| `First,... Second,... Third,...` | Vary transitions |
| `It's worth noting` / `Notably,` | Delete |
| `delve` | "look at" / "examine" |
| `Additionally` | Delete |

---

## Batch mode

To humanize multiple files:

```bash
# Scan all markdown files in drafts/
/humanizer --scan drafts/*.md

# Fix all files (with confirmation)
/humanizer --batch drafts/
```

Output format for batch:

```text
## Batch humanization report

drafts/post-1.md
   HIGH 3 | MEDIUM 5 | LOW 2

drafts/post-2.md
   HIGH 1 | MEDIUM 3 | LOW 4

drafts/post-3.md
   Clean! No issues found.

Total: 3 files, 18 issues
```

---

## Sources

Based on:
- [Wikipedia: Signs of AI writing](https://en.wikipedia.org/wiki/Wikipedia:Signs_of_AI_writing)
- [GitHub: blader/humanizer](https://github.com/blader/humanizer)
- Original research on crypto/Web3 AI patterns

Key insight: "LLMs use statistical algorithms to guess what should come next. The result tends toward the most statistically likely result that applies to the widest variety of cases."

---

*Version 1.2.0 | Created for 0G Labs content team*

Overview

This skill is an advanced AI text humanizer for blog content that detects and removes 34 common AI writing patterns and adds personality to make copy read as genuinely human. It includes crypto/Web3-specific tells, severity scoring, stat attribution fixes, and a batch mode for processing multiple files. Use it to clean drafts, articles, and marketing posts that feel formulaic or machine-generated.

How this skill works

The humanizer scans text for 34 defined patterns, categorizes each match as HIGH, MEDIUM, or LOW severity, then offers a report showing line-level examples and an estimated edit count. With user approval it rewrites problematic passages, fixes vague statistics and attributions, and injects personality and tone tailored for general or developer audiences. A final readability check and em dash regression scan ensure edits stay natural and within target grade levels.

When to use it

  • You suspect a draft sounds formulaic, robotic, or overly polished
  • Preparing blog posts, articles, or white papers for publication
  • Cleaning crypto or Web3 content with industry-specific AI tells
  • Batch-editing multiple markdown drafts before release
  • Verifying and fixing vague or unreferenced statistics

Best practices

  • Run a --scan first to review issues before committing fixes
  • Accept HIGH severity fixes automatically; review MEDIUM/LOW items
  • Provide source links for any stats the tool flags as unsubstantiated
  • Choose target readability (grade 8–10 for general, 10–12 for developer)
  • Use batch mode for bulk cleanup but spot-check outputs afterward

Example use cases

  • Humanize a marketing blog post that uses hype words like 'revolutionizing' or 'seamless'
  • Remove chatbot artifacts and knowledge-cutoff language from a technical draft
  • Fix vague attributions such as 'research shows' by adding sources or rewording
  • Process a folder of guest posts in batch to ensure consistent, human tone
  • Clean Web3 content that makes unsupported decentralization or hype claims

FAQ

Will the tool change my meaning when it rewrites?

The humanizer focuses on preserving the original meaning while removing AI tells; it flags high-risk changes for review and keeps you in control for nuanced edits.

How does batch mode report results?

Batch mode provides a per-file summary listing counts by severity and a total issues tally so you can prioritize which files to review first.