Agent skill
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.
Install this agent skill to your Project
npx add-skill https://github.com/majiayu000/claude-skill-registry/tree/main/skills/development/mcp-examples-standardbeagle-standardbeagle-tools
SKILL.md
MCP 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
examples/lci-workflow.json- Complete lci search workflowexamples/agnt-workflow.json- Browser debugging workflowexamples/process-workflow.json- Process management workflow
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.
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