systemd-mcp

systemd-mcp

Provides AI assistants with safe, read-only access to Linux systemd services, including status monitoring, log querying, and dependency analysis, with optional granular permissions for service management actions.

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systemd-mcp

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A Model Context Protocol (MCP) server for systemd integration. Give your AI assistant eyes and hands on your Linux services.

Status: v0.5.0 (NEVERHANG v2.0)

Author: Claude + MOD

License: MIT

Organization: ArktechNWA


Why?

AI assistants are blind to your system. They can write code but can't see if nginx crashed, can't tail logs, can't restart a stuck daemon.

"Just give it shell access" — bad idea. Shell access is all-or-nothing. One hallucinated rm -rf or hung systemctl and you're in trouble. No guardrails, no visibility, no recovery.

systemd-mcp is an intelligent interface, not a wrapper:

Problem systemd-mcp Solution
Commands can hang forever NEVERHANG v2.0 — tiered timeouts, circuit breaker
No memory between calls A.L.A.N. database — persistent state, learns your system
Failures cascade Circuit breaker opens, commands fail fast, auto-recovery
AI has no operational intuition Health trends, P95 latency, success rates — data it can reason about
All-or-nothing permissions Granular: read-only default, whitelist/blacklist, permission tiers

This is the difference between "run commands for me" and "understand my infrastructure."


Philosophy

  1. Safety by default — Read-only out of the box
  2. User controls exposure — Whitelist, blacklist, permission levels
  3. NEVERHANG v2.0 — Circuit breaker, adaptive timeouts, A.L.A.N. database, self-healing
  4. Graceful fallback — Optional Haiku AI for log analysis
  5. Structured output — JSON for machines, summaries for AI

Features

Perception (Read)

  • List all units with filtering (type, state, pattern)
  • Detailed unit status with resource usage
  • Failed units at a glance
  • Timer schedules (last run, next run)
  • Dependency trees
  • Journal queries with filters (time, priority, grep)
  • Live log streaming
  • Boot analysis

Action (Write)

  • Start/stop/restart services
  • Enable/disable boot behavior
  • Reload configurations
  • Daemon reload (after unit file changes)

Analysis (Optional AI Fallback)

  • "Why did this fail?" synthesis
  • Boot time breakdown
  • Complex log analysis

Permission Model

Users are (rightfully) cautious about AI touching their systems. systemd-mcp provides granular control.

Permission Levels

Level Description Default
read Status, logs, timers, dependencies ON
restart Restart already-running services OFF
start_stop Start stopped / stop running services OFF
enable_disable Modify boot behavior OFF
daemon_reload Reload systemd manager OFF

Unit Filtering

{
  "permissions": {
    "read": true,
    "restart": true,
    "start_stop": false,
    "enable_disable": false,
    "daemon_reload": false,

    "whitelist": [
      "myapp-*.service",
      "nginx.service",
      "postgresql.service"
    ],

    "blacklist": [
      "sshd.service",
      "firewalld.service",
      "systemd-*.service",
      "dbus.service"
    ]
  }
}

Rules:

  • Blacklist always wins (even if whitelisted)
  • Empty whitelist = all units allowed (subject to blacklist)
  • Patterns support * wildcards
  • System-critical units blacklisted by default

Default Blacklist

These units are blocked by default (override with --bypass-permissions):

sshd.service          # Don't lock yourself out
firewalld.service     # Don't break the firewall
iptables.service      # Don't break the firewall
systemd-*.service     # Don't break systemd itself
dbus.service          # Don't break D-Bus
polkit.service        # Don't break permissions

Bypass Mode

For power users who know what they're doing:

# Trust me, I know what I'm doing
systemd-mcp --bypass-permissions

# Or in config
{
  "bypass_permissions": true
}

With bypass enabled:

  • All permission levels = true
  • Whitelist/blacklist ignored
  • Full systemd access
  • You own the consequences

Environment Variable Override

# Enable specific permissions via env
SYSTEMD_MCP_ALLOW_RESTART=1
SYSTEMD_MCP_ALLOW_START_STOP=1
SYSTEMD_MCP_BYPASS=1

SSH Remote Host Support (v0.2.0)

Run systemd commands on a remote host via SSH instead of locally.

Configuration

# Via environment variable
SYSTEMD_MCP_SSH_HOST=vps-claude node build/index.js

# Via config file (~/.config/systemd-mcp/config.json)
{
  "ssh": {
    "enabled": true,
    "host": "vps-claude"
  }
}

Requirements

  • SSH host must be accessible without password prompt (use SSH keys)
  • SSH config alias (e.g., vps-claude) or full user@host format supported
  • Remote host must have systemd and journalctl

Claude Code Integration with SSH

# Monitor remote server
claude mcp add --transport stdio systemd-ssh -- \
  bash -c "SYSTEMD_MCP_SSH_HOST=my-server node /path/to/build/index.js"

Multi-Instance Pattern (v0.3.0)

Run multiple instances to monitor both local and remote systems simultaneously.

Setup

# Local instance (default)
claude mcp add --transport stdio systemd -s user -- \
  node /path/to/build/index.js

# Remote instance via SSH
claude mcp add --transport stdio systemd-ssh -s user -- \
  bash -c "SYSTEMD_MCP_SSH_HOST=my-server node /path/to/build/index.js"

Result

Claude Code sees both as separate tool namespaces:

MCP Name Tools Target
systemd mcp__systemd__* Local machine
systemd-ssh mcp__systemd-ssh__* Remote via SSH

Query both in parallel:

"Check nginx status on both local and remote"
→ mcp__systemd__systemd_unit_status({ units: "nginx" })
→ mcp__systemd-ssh__systemd_unit_status({ units: "nginx" })

Same codebase, multiple targets, unified visibility.


Tools

Status & Discovery

systemd_list_units

List units with optional filtering.

systemd_list_units({
  type?: "service" | "timer" | "socket" | "mount" | "target" | "all",
  state?: "running" | "failed" | "inactive" | "activating" | "all",
  pattern?: string  // glob pattern, e.g. "nginx*"
})

systemd_unit_status

Detailed status of one or more units.

systemd_unit_status({
  units: string | string[],  // "nginx.service" or ["nginx", "postgres"]
  logs?: number              // Include N recent log lines (default: 10)
})

Returns:

{
  "unit": "nginx.service",
  "status": "running",
  "status_icon": "✓",
  "pid": 1234,
  "memory": "45.2M",
  "cpu": "0.1%",
  "uptime": "5d 12h 30m",
  "started_at": "2025-12-24T10:30:00Z",
  "recent_logs": ["..."],
  "summary": "nginx is healthy, running 5 days with stable memory"
}

systemd_failed_units

Quick view of what's broken.

systemd_failed_units()

Returns:

{
  "failed_count": 1,
  "units": [
    {
      "unit": "scout.service",
      "failed_at": "2025-12-29T04:00:12Z",
      "exit_code": 1,
      "last_log": "API key not found"
    }
  ],
  "summary": "1 failed unit: scout.service (API key not found)"
}

systemd_timers

Timer status overview.

systemd_timers({
  pattern?: string  // filter by pattern
})

Returns:

{
  "timers": [
    {
      "timer": "scout.timer",
      "service": "scout.service",
      "last_run": "2025-12-29T04:00:00Z",
      "next_run": "2025-12-30T04:00:00Z",
      "schedule": "*-*-* 04:00:00",
      "last_result": "success"
    }
  ]
}

systemd_dependencies

Show unit dependency tree.

systemd_dependencies({
  unit: string,
  direction?: "requires" | "wanted_by" | "both"
})

systemd_cat_unit

View unit file contents (v0.3.0).

systemd_cat_unit({
  unit: string  // e.g., "nginx" or "nginx.service"
})

Returns:

{
  "unit": "nginx.service",
  "content": "# /usr/lib/systemd/system/nginx.service\n[Unit]\nDescription=...",
  "lines": 24
}

Resource Monitoring (v0.4.0)

systemd_unit_resources

Get current resource usage snapshot.

systemd_unit_resources({
  unit: string
})

Returns memory, CPU time, tasks, network I/O, disk I/O with human-readable formatting.

systemd_sample_resources

Sample resource usage over time and calculate trends.

systemd_sample_resources({
  unit: string,
  samples?: number,      // 2-10, default: 5
  interval_ms?: number   // 100-5000, default: 1000
})

Returns:

{
  "unit": "nginx.service",
  "sampling": { "samples": 5, "interval_ms": 1000, "duration_ms": 4000 },
  "cpu": { "delta_ns": 12500000, "percent": 0.31 },
  "memory": {
    "min": 45678592, "max": 46123008, "avg": 45900800,
    "stable": true
  },
  "io": { "read_rate_human": "1.2 KB/s", "write_rate_human": "0 B/s" },
  "network": { "ingress_rate_human": "4.5 KB/s", "egress_rate_human": "2.1 KB/s" }
}

Journal/Logs

systemd_journal_query

Query journal with filters.

systemd_journal_query({
  unit?: string | string[],
  since?: string,        // "-1h", "-30m", "2025-12-29", ISO timestamp
  until?: string,
  priority?: "emerg" | "alert" | "crit" | "err" | "warning" | "notice" | "info" | "debug",
  grep?: string,         // filter log content
  limit?: number,        // max lines (default: 100)
  output?: "short" | "json" | "verbose"
})

systemd_journal_tail

Stream recent/live logs. Async streaming supported.

systemd_journal_tail({
  unit: string,
  lines?: number,     // initial lines (default: 50)
  follow?: boolean    // live tail (default: false)
})

systemd_boot_log

Important events from current boot.

systemd_boot_log({
  priority?: "err" | "warning" | "notice",  // minimum priority
  limit?: number
})

Actions

systemd_start

Start unit(s). Requires start_stop permission.

systemd_start({ units: string | string[] })

systemd_stop

Stop unit(s). Requires start_stop permission.

systemd_stop({ units: string | string[] })

systemd_restart

Restart unit(s). Requires restart permission.

systemd_restart({ units: string | string[] })

systemd_reload

Reload unit configuration (SIGHUP). Requires restart permission.

systemd_reload({ units: string | string[] })

systemd_enable

Enable unit for boot. Requires enable_disable permission.

systemd_enable({ units: string | string[], now?: boolean })

systemd_disable

Disable unit from boot. Requires enable_disable permission.

systemd_disable({ units: string | string[], now?: boolean })

systemd_daemon_reload

Reload systemd manager. Requires daemon_reload permission.

systemd_daemon_reload()

Analysis

systemd_analyze_boot

Boot time analysis.

systemd_analyze_boot({
  blame?: boolean,    // show time per unit
  critical_chain?: boolean
})

systemd_diagnose

AI-powered failure diagnosis. Gathers context and optionally uses Haiku fallback.

systemd_diagnose({
  unit: string,
  use_ai?: boolean    // use Haiku fallback for synthesis (default: true if configured)
})

Returns:

{
  "unit": "scout.service",
  "status": "failed",
  "exit_code": 1,
  "context": {
    "logs": "[... recent logs ...]",
    "dependencies": ["network-online.target"],
    "environment": "No ANTHROPIC_API_KEY"
  },
  "synthesis": {
    "analysis": "Service failed due to missing API key in environment...",
    "suggested_fix": "Add Environment=ANTHROPIC_API_KEY=... to unit file",
    "confidence": "high"
  }
}

Health & Resilience

systemd_health

Get NEVERHANG v2.0 health status, circuit breaker state, and A.L.A.N. database stats.

systemd_health()

Returns:

{
  "status": "healthy",
  "circuit_breaker": {
    "state": "closed",
    "failures": 0,
    "last_failure": null,
    "opened_at": null
  },
  "health_monitor": {
    "consecutive_failures": 0,
    "last_check": "2025-12-30T10:15:00Z",
    "degraded": false
  },
  "database": {
    "path": "/home/user/.cache/systemd-mcp/systemd-mcp.db",
    "command_history_count": 1247,
    "health_check_count": 86,
    "oldest_command": "2025-12-23T14:30:00Z"
  },
  "config": {
    "ssh_enabled": false,
    "adaptive_timeout": true,
    "timeouts": {
      "status": 5000,
      "query": 10000,
      "action": 30000,
      "heavy": 60000,
      "diagnostic": 90000
    }
  }
}

NEVERHANG v2.0 Architecture

Every systemd command can hang. systemctl status on a wedged service waits forever. journalctl -f never returns.

NEVERHANG v2.0 guarantees your MCP server stays responsive. No command hangs forever. System health is monitored. Failures are classified and handled intelligently.

Category-Based Timeouts

Commands are classified by expected duration:

Category Timeout Examples
status 5s systemctl status, systemctl is-active
query 10s journalctl queries, systemctl list-units
action 30s start, stop, restart, enable, disable
heavy 60s Boot analysis, log streaming
diagnostic 90s AI-powered diagnosis with log synthesis

A.L.A.N. Database

As Long As Necessary — SQLite database for persistent state across restarts.

~/.cache/systemd-mcp/systemd-mcp.db

What it stores:

  • Circuit breaker state — Survives restarts, tracks open/closed/half-open state
  • Command history — 7 days of execution records (success, failure, latency)
  • Health checks — 24 hours of background ping results
  • P95 latency — Per-command performance metrics for adaptive timeout

Automatic cleanup: Old records pruned on startup (7d commands, 24h health checks).

Circuit Breaker

Protects against cascade failures when systemd is unresponsive.

State Behavior
Closed Normal operation
Open Commands blocked, returns immediately with CIRCUIT_OPEN
Half-Open Testing recovery with limited requests

Configuration:

  • 5 failures in 60s → Circuit opens
  • Open duration: 30s
  • Recovery threshold: 2 successes to close

Persistence: State survives server restarts via A.L.A.N. database.

Health Monitor

Background thread monitors systemd health independently.

  • Healthy: Check every 30s
  • Degraded: Check every 5s (more aggressive)
  • Ping command: systemctl --version (minimal overhead)
  • SSH support: Uses SSH host when configured

Adaptive Timeout

When enabled, adjusts timeouts based on observed latency:

adjusted_timeout = max(base_timeout, P95_latency * 2)

Uses last 100 executions of each command category from A.L.A.N. database.

Failure Taxonomy

Every failure is classified for intelligent error handling:

Type Description
timeout Command exceeded time limit
connection_failed SSH connection failed (remote mode)
auth_failed Permission denied
circuit_open Circuit breaker is open
command_error Non-zero exit code
permission_denied Unit blacklisted or permission level insufficient
cancelled Operation cancelled by client

Process Management

  • All subprocesses tracked with PIDs
  • Hung processes killed after timeout
  • Zombie cleanup on shutdown
  • Graceful shutdown handlers (SIGINT, SIGTERM)

Configuration

{
  "neverhang": {
    "status_timeout_ms": 5000,
    "query_timeout_ms": 10000,
    "action_timeout_ms": 30000,
    "heavy_timeout_ms": 60000,
    "diagnostic_timeout_ms": 90000,

    "circuit_failure_threshold": 5,
    "circuit_failure_window_ms": 60000,
    "circuit_open_duration_ms": 30000,
    "circuit_recovery_threshold": 2,

    "health_check_interval_ms": 30000,
    "health_degraded_interval_ms": 5000,
    "health_check_timeout_ms": 2000,

    "adaptive_timeout": true
  }
}

Why This Architecture?

MCP servers are single-threaded JSON-RPC handlers. When Claude calls systemctl status on a wedged service, the entire connection blocks. Claude waits. The user sees nothing. Eventually something times out at a higher layer and the interaction is ruined.

NEVERHANG v1 solved the immediate problem: timeouts. But it was stateless - every invocation started fresh with no memory of what happened before.

A.L.A.N. transforms reactive timeouts into operational intelligence.

Without persistence:

  • Server restarts → circuit resets → retries broken systemd → fails again
  • Every timeout is static, regardless of actual system behavior
  • No visibility into patterns or trends

With A.L.A.N.:

  • Circuit state survives restarts (we don't re-learn through failure)
  • P95 latency per category enables adaptive timeouts
  • Health trends reveal patterns invisible to stateless systems
  • Success rates become diagnostic signals, not just individual outcomes

Emergent Behaviors

When circuit breaker + adaptive timeout + health monitoring + persistence combine:

Self-Healing with Memory

  • Gradual recovery through half-open state testing
  • Pattern recognition (recurring vs. one-off failures)
  • Adaptive thresholds based on historical success rates

Intelligent Degradation

  • Health monitor shifts 30s → 5s intervals when degraded
  • Persists across restarts—server doesn't start naive
  • Latency trends visible for root cause analysis

Operational Visibility for AI

Claude doesn't have intuition about "the system feels sluggish." Claude operates on data:

Signal What Claude Can Do
Circuit open Don't retry, explain to user
P95 jumped 50ms → 2000ms Something changed, investigate
Success rate dropped to 70% Pattern, not fluke—dig deeper
Health trend degrading Proactive warning before failure

What "Fully Functioning" Looks Like

Scenario System Behavior
Normal Commands execute, latency tracked, circuit closed
Transient failure Recorded, circuit tracks but stays closed, next attempt proceeds
Systemic failure Circuit opens → commands return CIRCUIT_OPEN immediately → health monitor increases frequency → auto-recovery when systemd responds
Degraded performance Adaptive timeout adjusts, commands complete, health endpoint shows degradation
Post-restart Reads state from A.L.A.N., doesn't start naive, degradation patterns preserved

This is the difference between a tool and an intelligent subsystem. A.L.A.N. is the memory that makes NEVERHANG wise instead of just cautious.


Fallback AI

Optional Haiku integration for complex log analysis.

{
  "fallback": {
    "enabled": true,
    "provider": "anthropic",
    "model": "claude-haiku-4-5",
    "api_key_env": "SYSTEMD_MCP_FALLBACK_KEY",
    "max_context_lines": 200,
    "max_tokens": 500
  }
}

When used:

  • systemd_diagnose with use_ai: true
  • Complex failure analysis
  • Boot time optimization suggestions

Not used for:

  • Simple status queries
  • Log retrieval
  • Start/stop/restart actions

Configuration

Config File

~/.config/systemd-mcp/config.json or specified via --config:

{
  "permissions": {
    "read": true,
    "restart": false,
    "start_stop": false,
    "enable_disable": false,
    "daemon_reload": false,
    "whitelist": [],
    "blacklist": [
      "sshd.service",
      "firewalld.service",
      "systemd-*.service"
    ]
  },
  "neverhang": {
    "status_timeout_ms": 5000,
    "query_timeout_ms": 10000,
    "action_timeout_ms": 30000,
    "heavy_timeout_ms": 60000,
    "diagnostic_timeout_ms": 90000,
    "circuit_failure_threshold": 5,
    "circuit_failure_window_ms": 60000,
    "circuit_open_duration_ms": 30000,
    "circuit_recovery_threshold": 2,
    "health_check_interval_ms": 30000,
    "health_degraded_interval_ms": 5000,
    "health_check_timeout_ms": 2000,
    "adaptive_timeout": true
  },
  "fallback": {
    "enabled": false
  }
}

Claude Code Integration

# Clone and build
git clone https://github.com/ArkTechNWA/systemd-mcp.git
cd systemd-mcp
npm install && npm run build

# Register with Claude Code (read-only by default)
claude mcp add --transport stdio systemd -- node $(pwd)/build/index.js

# Or with permissions enabled
claude mcp add --transport stdio systemd -- \
  bash -c "SYSTEMD_MCP_ALLOW_RESTART=1 node $(pwd)/build/index.js"

# Or full bypass (you own the consequences)
claude mcp add --transport stdio systemd -- \
  bash -c "SYSTEMD_MCP_BYPASS=1 node $(pwd)/build/index.js"

Installation

# npm (when published)
npm install -g @arktechnwa/systemd-mcp

# From source
git clone https://github.com/ArktechNWA/systemd-mcp.git
cd systemd-mcp
npm install
npm link

Requirements

  • Linux with systemd
  • Node.js 18+
  • systemctl, journalctl in PATH
  • Optional: Anthropic API key for fallback AI

Examples

Read-only monitoring (default)

systemd-mcp
# Can: list units, check status, query logs
# Cannot: start, stop, restart, enable, disable

Service operator

systemd-mcp --config operator.json
# operator.json enables restart + start_stop
# Can manage services but not boot behavior

Full access

systemd-mcp --bypass-permissions
# Full systemd control
# You own the consequences

Security Considerations

  1. Default safe — Read-only by default
  2. Blacklist critical — sshd, firewall, systemd protected by default
  3. No credential exposure — Environment variables not leaked in logs
  4. Audit trail — All actions logged
  5. User responsibility — Bypass mode exists but user must enable it

Contributing

Contributions welcome! Please read CONTRIBUTING.md (coming soon).


License

MIT License - See LICENSE file.


Credits

Created by Claude in collaboration with MOD.

Part of the ArktechNWA MCP Toolshed — Claude's public-facing open source contributions.

Built because AI assistants deserve to see and understand the systems they help maintain.

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