glin-profanity-mcp
Content moderation and profanity detection MCP server with 19 tools, 24 language support, leetspeak/Unicode obfuscation detection, context-aware analysis, batch processing, and user tracking for AI-powered content safety.
glin-profanity-mcp
Part of glin-profanity - MCP server for AI assistants
MCP (Model Context Protocol) server for glin-profanity - enables AI assistants like Claude Desktop, Cursor, Windsurf, and other MCP-compatible tools to use profanity detection and content moderation as native tools.
What is MCP?
The Model Context Protocol (MCP) is an open standard developed by Anthropic that allows AI assistants to securely access external tools and data sources. This package turns glin-profanity into an MCP server that AI assistants can use for content moderation.
Features
- 19 Powerful Tools for comprehensive content moderation
- 4 Workflow Prompts for guided AI interactions
- 5 Reference Resources for configuration and best practices
- 24 Language Support - Arabic, Chinese, English, French, German, Spanish, and more
- Context-Aware Analysis - Domain-specific whitelists reduce false positives
- Obfuscation Detection - Catches leetspeak (
f4ck) and Unicode tricks - Batch Processing - Check multiple texts efficiently
- Content Scoring - Get safety scores for moderation decisions
Installation
For Claude Desktop
Add to your Claude Desktop configuration (~/Library/Application Support/Claude/claude_desktop_config.json on macOS):
{
"mcpServers": {
"glin-profanity": {
"command": "npx",
"args": ["-y", "glin-profanity-mcp"]
}
}
}
For Cursor
Add to your Cursor MCP settings (.cursor/mcp.json in your project or global config):
{
"mcpServers": {
"glin-profanity": {
"command": "npx",
"args": ["-y", "glin-profanity-mcp"]
}
}
}
For Windsurf / Other MCP Clients
{
"mcpServers": {
"glin-profanity": {
"command": "npx",
"args": ["-y", "glin-profanity-mcp"]
}
}
}
Local Installation
npm install -g glin-profanity-mcp
# Then use in config:
{
"mcpServers": {
"glin-profanity": {
"command": "glin-profanity-mcp"
}
}
}
Available Tools (12)
Core Detection Tools
1. check_profanity
Check text for profanity with detailed results.
"Check this user comment for profanity: 'Your product is sh1t'"
Parameters:
text(required): Text to checklanguages: Array of languages (default: all)detectLeetspeak: Detectf4ck,sh1tpatternsnormalizeUnicode: Detect Unicode trickscustomWords: Additional words to flagignoreWords: Words to whitelist
2. censor_text
Censor profanity by replacing with asterisks or custom characters.
"Censor this message: 'What the hell is going on?'"
Parameters:
text(required): Text to censorreplaceWith: Replacement character (default:*)preserveFirstLetter: Keep first letter (f***instead of****)
3. analyze_context
Context-aware analysis with domain-specific whitelists.
"Analyze this medical text: 'The patient has a breast tumor'"
Parameters:
text(required): Text to analyzedomain:medical,gaming,technical,educational,generalcontextWindow: Words to consider around matches (1-10)confidenceThreshold: Minimum confidence to flag (0-1)
4. batch_check
Check multiple texts in one operation (up to 100).
"Batch check these comments: ['Great!', 'This sucks', 'Awesome']"
Parameters:
texts(required): Array of texts (max 100)returnOnlyFlagged: Only return texts with profanity
5. validate_content
Comprehensive content validation with safety scoring (0-100).
"Validate this blog post with high strictness"
Parameters:
text(required): Content to validatestrictness:low,medium,highcontext: Description of content type
Returns: Safety score, action recommendation (approve, review, edit, reject)
6. detect_obfuscation
Detect text obfuscation techniques.
"Check if this uses obfuscation: 'Y0u @re an 1d10t'"
Detects: Leetspeak, Unicode homoglyphs, zero-width characters, spaced characters
7. get_supported_languages
Get list of all 24 supported languages.
Advanced Analysis Tools
8. explain_match
Explain why a word was flagged with detailed reasoning.
"Explain why 'f4ck' was detected as profanity"
Returns:
- Detection method (direct, leetspeak, Unicode)
- Detailed reasoning
- Suggestions for handling
9. suggest_alternatives
Suggest clean alternatives for profane content.
"Suggest alternatives for: 'This is shit' with professional tone"
Parameters:
text(required): Text with profanitytone:formal,casual,humorous,professional
10. analyze_corpus
Analyze a collection of texts for profanity statistics (up to 500 texts).
"Analyze these 100 user comments for a moderation report"
Returns:
- Profanity rate statistics
- Top profane words frequency
- Severity distribution
- Recommendations
11. compare_strictness
Compare detection results across different strictness levels.
"Compare strictness levels for: 'You are such a n00b'"
Returns: Detection results at minimal, low, medium, high, and paranoid levels with recommendation.
12. create_regex_pattern
Generate regex patterns for custom profanity detection.
"Create a regex pattern to catch variants of 'fuck'"
Parameters:
word(required): Base wordincludeVariants:basic,moderate,aggressive
Returns: Ready-to-use regex patterns for JavaScript and Python.
Available Prompts (4)
MCP Prompts provide guided workflows for common tasks.
1. content_moderation
Step-by-step content moderation workflow.
Use the content_moderation prompt with:
- content: "User comment to moderate"
- platform: "gaming" (or social_media, education, professional, general)
2. content_cleanup
Clean up content containing profanity for safe publishing.
Use the content_cleanup prompt with:
- content: "Text to clean up"
- preserveMeaning: true
3. audit_report
Generate a comprehensive moderation audit report.
Use the audit_report prompt with:
- description: "Weekly user comments audit"
4. filter_tuning
Tune profanity filter settings for your specific use case.
Use the filter_tuning prompt with:
- useCase: "Gaming chat moderation"
- sampleContent: "Example messages from your platform"
Available Resources (5)
Resources provide reference data accessible to AI assistants.
| Resource | URI | Description |
|---|---|---|
| Languages | glin-profanity://languages | All 24 supported languages with regional groupings |
| Config Examples | glin-profanity://config-examples | Ready-to-use configuration templates |
| Severity Levels | glin-profanity://severity-levels | Explanation of severity scoring |
| Domain Whitelists | glin-profanity://domain-whitelists | Domain-specific whitelist references |
| Detection Guide | glin-profanity://detection-guide | Guide to detection techniques and recommended configs |
Example Prompts for AI Assistants
Basic Usage
"Check this user comment for profanity"
"Censor the bad words in this message"
"What languages does glin-profanity support?"
Advanced Analysis
"Explain why this text was flagged and suggest alternatives"
"Compare strictness levels for this gaming chat message"
"Create a regex pattern to catch variants of [word]"
Batch Operations
"Analyze these 50 comments and give me a moderation report"
"Batch check all these messages and return only the flagged ones"
Context-Aware
"Analyze this medical article with medical domain context"
"Check this gaming chat with relaxed gaming platform rules"
Workflow Automation
"Use the content_moderation workflow on this user submission"
"Help me tune my filter settings for an educational platform"
Use Cases
| Use Case | Recommended Tools |
|---|---|
| Chat moderation | check_profanity, censor_text, batch_check |
| Content publishing | validate_content, suggest_alternatives |
| Medical/Educational | analyze_context with domain parameter |
| Moderation dashboards | analyze_corpus, batch_check |
| Filter tuning | compare_strictness, filter_tuning prompt |
| Custom rules | create_regex_pattern |
| Understanding flags | explain_match |
Development
Running Locally
# Install dependencies
npm install
# Build
npm run build
# Run the server
npm start
# Test with MCP Inspector
npm run inspect
Testing with MCP Inspector
npx @anthropic-ai/mcp-inspector node dist/index.js
Supported Languages
| Region | Languages |
|---|---|
| European | English, French, German, Spanish, Italian, Dutch, Portuguese, Polish, Czech, Danish, Finnish, Hungarian, Norwegian, Swedish, Esperanto |
| Asian | Chinese, Japanese, Korean, Thai, Hindi |
| Middle Eastern | Arabic, Persian, Turkish |
| Other | Russian |
License
MIT - See LICENSE for details.
Links
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