Claude-skill-registry-data MCP Examples
This skill should be used when the user asks for "MCP examples", "real-world patterns", "code search patterns", "browser proxy patterns", "process management patterns", "show me examples", or wants to see actual implementations from lci, agnt, or other real MCPs.
git clone https://github.com/majiayu000/claude-skill-registry-data
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry-data "$T" && mkdir -p ~/.claude/skills && cp -r "$T/data/mcp-examples" ~/.claude/skills/majiayu000-claude-skill-registry-data-mcp-examples && rm -rf "$T"
data/mcp-examples/SKILL.mdMCP Examples
Purpose
Provide real-world MCP patterns from production servers: code search (lci), browser integration (agnt), process management, and knowledge bases.
When to Use
- Need concrete examples of patterns
- Want to see actual implementations
- Designing similar functionality
- Learning from working systems
Code Search Pattern (lci)
Architecture
- Pattern: Hub-and-Spoke + Progressive Discovery
- Tools: 8+ tools
- Token System: result_id, symbol_id
Key Tools
search - Hub tool
{ "input": {"pattern": "string", "filter": "optional"}, "output": { "results": [ {"id": "r1", "name": "User.authenticate", "preview": "...", "conf": 0.95} ], "has_more": true, "total": 127 } }
get_definition - Spoke tool
{ "input": {"id": "r1"}, "output": { "symbol_id": "s1", "name": "User.authenticate", "signature": "...", "source": "...", "location": {"file": "user.ts", "line": 42} } }
Token efficiency: ID reference saves ~80% tokens vs. repeating full code
Progressive Detail Example
Query: "authenticate" High match (0.95): Full details (200 tokens) - Name, signature, docs, preview, location Medium match (0.70): Summary (50 tokens) - Name, type, file Low match (0.40): Minimal (10 tokens) - Name, ID only
Browser Proxy Pattern (agnt)
Architecture
- Pattern: CRUD + Aggregation
- Tools: 10+ tools
- Token Systems: proxy_id, session_id, request_id
Key Tools
proxy_start - Create
{ "input": {"target_url": "http://localhost:3000"}, "output": { "proxy_id": "dev", "listen_addr": "http://localhost:12345", "status": "running" } }
currentpage - Aggregation
{ "input": {"proxy_id": "dev"}, "output": { "session_id": "page-1", "url": "http://localhost:3000", "errors_count": 3, // Not full error objects "interactions_count": 127, // Not every interaction "mutations_count": 45, // Not every mutation "performance": {...} }, "detail_access": "Use detail=['errors'] for full data" }
Key pattern: Counts in overview, full data on request
Hierarchical IDs
proxy_id (dev) ↓ session_id (page-1) ↓ request_id (req_a1b2)
Each level provides more specificity.
Process Management Pattern
Architecture
- Pattern: CRUD + Lazy Loading
- Tools: 8+ tools
- Token System: process_id
Progressive Status
Level 1 - Count
{ "active": 5, "stopped": 2 }
Level 2 - List
{ "processes": [ {"id": "p1", "name": "dev-server", "status": "running"}, {"id": "p2", "name": "test", "status": "running"} ] }
Level 3 - Status
{ "id": "p1", "status": "running", "uptime": "2h15m", "memory": "245MB", "preview": "Server listening :3000" }
Level 4 - Full
{ /* ...all Level 3... */, "full_output": "... complete logs ...", "env": {...}, "metrics": {...} }
Knowledge Base Pattern
Architecture
- Pattern: Discovery-Detail
- Tools: Search, topics, articles
- Token System: article_id, topic_id
Layered Access
list_topics() → ["auth", "deploy", "monitor"] get_topic_summary("auth") → {articles: 12, updated: "2024-01"} search_articles("OAuth") → [{id: "a1", title: "...", preview: "..."}] get_article("a1") → {title, content, related: [...]}
Common Patterns Across Examples
1. ID Reference System
All use IDs to avoid repeating data:
- lci: result_id → symbol_id
- agnt: proxy_id → session_id → request_id
- process: process_id
- kb: topic_id → article_id
Savings: 70-90% token reduction
2. Progressive Detail
All vary detail by context:
- lci: By confidence (0.95 = full, 0.40 = minimal)
- agnt: By request (counts vs. full arrays)
- process: By depth (count → list → status → full)
- kb: By layer (topics → summary → full article)
3. Automation Flags
All include standard flags:
{ "has_more": boolean, "total": integer, "returned": integer, "complete": boolean }
4. Accept Extra Parameters
All accept unknown params with warnings:
const {known, params, ...extra} = input if (extra) warnings.push(`Unknown: ${Object.keys(extra)}`)
Anti-Patterns Seen and Fixed
❌ Repeating Data
Before (wasteful):
// Tool 1 {"results": [{"name": "...", "code": "... 200 lines ..."}]} // Tool 2 needs same data // User copies entire result
After (efficient):
// Tool 1 {"results": [{"id": "r1", "name": "...", "preview": "10 lines"}]} // Tool 2 input: {"id": "r1"} // Reference only
❌ No Progressive Detail
Before:
{ "results": [ {"name": "...", "full": "... 500 tokens ..."}, {"name": "...", "full": "... 500 tokens ..."}, {"name": "...", "full": "... 500 tokens ..."} ] }
After:
{ "results": [ {"id": "a1", "conf": 0.95, "full": "..."}, // Only high confidence {"id": "b2", "conf": 0.70, "summary": "..."}, {"id": "c3", "conf": 0.40} // Just ID ] }
❌ Flat Structure
Before (15+ tools, no organization):
search_users, search_posts, get_user, get_post, ...
After (grouped):
Query Tools: search Lookup Tools: get_user, get_post Management: create_user, update_user
Real-World Token Savings
lci code_search Tool
Without IDs:
- Average result: 250 tokens (full code)
- 10 results: 2,500 tokens
With IDs:
- Average preview: 50 tokens
- 10 results: 500 tokens
- Savings: 80%
agnt currentpage Tool
Without aggregation:
- Full errors array: 400 tokens
- Full interactions: 600 tokens
- Full mutations: 300 tokens
- Total: 1,300 tokens
With aggregation:
- Error count: 10 tokens
- Interaction count: 10 tokens
- Mutation count: 10 tokens
- Total: 30 tokens (97% savings)
- Use detail parameter for full arrays when needed
Additional Resources
Examples Directory
- Complete lci search workflowexamples/lci-workflow.json
- Browser debugging workflowexamples/agnt-workflow.json
- Process management workflowexamples/process-workflow.json
Quick Reference
Proven patterns:
- Hub-and-Spoke - lci (search → details)
- CRUD - agnt (lifecycle management)
- Aggregation - agnt currentpage (counts not arrays)
- Lazy Loading - process status (overview → full)
- Discovery-Detail - kb (topics → articles)
Key lessons:
- IDs save 70-90% tokens
- Progressive detail by relevance/confidence
- Counts in overview, arrays on request
- Accept extra params with warnings
- Automation flags for AI agents
Study these real-world examples when designing similar functionality.