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caio313

MCP Health Server

by caio313

MCP Health Server

Integrity monitor for MCP server ecosystems. Any AI agent can use these tools to know the real state of its ecosystem in real time.


The problem it solves

AI agents fail silently when their tools fail.

Agent calls tool → tool responds slowly or incorrectly → agent makes wrong decision
                                                        → nobody knows why

MCP Health Server gives any agent full visibility into the state of its ecosystem — before things break.


Related MCP server: Maple

Available tools

check_health

Verifies the state of an MCP server in real time. Detects latency, availability, and exposed tools. Compatible with streamable-http and SSE.

check_health("https://my-server.com/mcp")

→ {
    "status": "healthy",
    "latency_ms": 226,
    "tools_available": ["ping", "get_time", "get_random_metric"],
    "uptime_24h": 99.5
  }

get_summary

State of multiple MCP servers in a single call. Runs all checks in parallel.

get_summary([
  "https://server-a.com/mcp",
  "https://server-b.com/mcp"
])

→ {
    "total": 2,
    "healthy": 1,
    "degraded": 1,
    "unhealthy": 0,
    "ecosystem_health_score": 50.0
  }

check_drift

Detects whether a server's behavior has changed compared to its historical baseline.

Finds gradual degradation that traditional uptime alerts never catch.

check_drift("https://my-server.com/mcp", baseline_days=7)

→ {
    "drift_detected": false,
    "baseline_avg_latency_ms": 93.7,
    "current_latency_ms": 93.9,
    "overall_severity": "NONE"
  }

calculate_blast_radius

Calculates the cascade impact if a specific service goes down. Shows which other services are affected directly and indirectly.

calculate_blast_radius(
  "auth-mcp",
  ["data-mcp", "trading-mcp", "report-mcp"]
)

→ {
    "directly_affected": ["data-mcp", "trading-mcp"],
    "cascade_affected": ["report-mcp"],
    "ecosystem_impact_percent": 100.0,
    "severity": "CRITICAL"
  }

Connect to your agent

{
  "mcpServers": {
    "mcp-health": {
      "url": "https://mcp-health-server.onrender.com/mcp"
    }
  }
}

Local setup

# 1. Clone the repository
git clone https://github.com/caio313/mcp-health-server
cd mcp-health-server

# 2. Create virtual environment and install dependencies
python -m venv venv
source venv/bin/activate
pip install -r requirements.txt

# 3. Configure environment variables
cp .env.example .env
# Edit .env with your DATABASE_URL

# 4. Initialize the database
python -c "import asyncio; from core.db import init_db; asyncio.run(init_db())"

# 5. Run the server
python main.py
# Available at: http://localhost:8000/mcp

Protocol compatibility

Supports both MCP transports with no additional configuration:

  • streamable-http — current standard

  • SSE — Server-Sent Events


Skill for AI agents

Includes an optimized SKILL.md for Claude and OpenCode that orchestrates tools automatically based on context.

To activate it in OpenCode, copy SKILL.md to: ~/.config/opencode/skills/mcp-health.md


Pricing

Plan

Price

Limit

Free

$0

100 checks/day

Builder

$19/mo

10,000 checks/day

Team

$49/mo

Unlimited + email alerts

F
license - not found
-
quality - not tested
D
maintenance

Maintenance

Maintainers
Response time
Release cycle
Releases (12mo)
Commit activity

Resources

Unclaimed servers have limited discoverability.

Looking for Admin?

If you are the server author, to access and configure the admin panel.

Latest Blog Posts

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