Lacework Alerts MCP Server

Lacework Alerts MCP Server

Exposes Lacework API v2 alert operations as MCP tools, allowing AI agents to list, search, and manage alerts with flexible time ranges and authentication.

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README

Lacework Alerts MCP Server

An MCP (Model Context Protocol) server built with FastMCP that exposes Lacework API v2 alert operations as tools for AI agents and LLM integrations.

Quick Start (New Machine Setup)

# 1. Clone the repo
git clone <repo-url>
cd lacework_mcp_server

# 2. Create a virtual environment (Python 3.10+)
python3 -m venv .venv
source .venv/bin/activate

# 3. Install dependencies
pip install -e .
# or manually:
# pip install fastmcp httpx

# 4. Configure Lacework credentials (pick one)

# Option A – Config file
cat > ~/.lacework.json <<'EOF'
{
  "account": "yourcompany.lacework.net",
  "keyId": "YOUR_ACCESS_KEY_ID",
  "secret": "YOUR_SECRET_KEY"
}
EOF

# Option B – Environment variables
export LACEWORK_ACCOUNT="yourcompany"
export LACEWORK_KEY_ID="YOUR_ACCESS_KEY_ID"
export LACEWORK_SECRET="YOUR_SECRET_KEY"

# Environment variables take precedence over the config file.

# 5. Run the server
python lacework_mcp_server.py

Tools

Tool Description
list_alerts List alerts within an optional time range (supports relative times like 2h, last 2 hours)
search_alerts Search alerts with filters (severity, status, alert type) and flexible time inputs (30m, last 2 hours, 2024-06-01)
get_alert_details Get detailed info for a specific alert (Details, Investigation, Events, RelatedAlerts, Integrations, Timeline, ObservationTimeline)
get_alert_timeline Shortcut – get the timeline for an alert
get_alert_investigation Shortcut – get investigation details for an alert
get_alert_entities List entities (machines, IPs) associated with an alert
get_alert_entity_details Get enriched context for a specific entity (VirusTotal, network activity, etc.)
post_alert_comment Post a comment on an alert's timeline
close_alert Close an alert with a reason code

Running

Standalone (stdio – local)

source .venv/bin/activate
python lacework_mcp_server.py

Remote (SSE / Streamable HTTP)

Run the server on a remote host so AI agents can connect over HTTP and pass credentials per-request:

# SSE transport (default host 0.0.0.0, port 8000)
python lacework_mcp_server.py --transport sse --port 8000

# Streamable HTTP transport
python lacework_mcp_server.py --transport streamable-http --host 0.0.0.0 --port 9000

When running remotely, callers pass Lacework credentials as tool parameters instead of relying on server-side config:

{
  "name": "search_alerts",
  "arguments": {
    "start_time": "last 2 hours",
    "severity": "Critical",
    "lacework_account": "mycompany",
    "lacework_key_id": "MY_KEY_ID",
    "lacework_secret": "MY_SECRET"
  }
}

All three credential fields (lacework_account, lacework_key_id, lacework_secret) are optional on every tool. When omitted, the server falls back to its local config (env vars / ~/.lacework.json). Clients for different Lacework accounts are cached so tokens are reused across calls.

With Claude Desktop / VS Code

Add to your MCP settings (e.g. ~/.claude/claude_desktop_config.json or .vscode/mcp.json):

Local (with ~/.lacework.json present):

{
  "mcpServers": {
    "lacework": {
      "command": "/path/to/lacework_mcp_server/.venv/bin/python",
      "args": [
        "/path/to/lacework_mcp_server/lacework_mcp_server.py"
      ]
    }
  }
}

Local (without ~/.lacework.json – pass creds via env):

{
  "mcpServers": {
    "lacework": {
      "command": "/path/to/lacework_mcp_server/.venv/bin/python",
      "args": [
        "/path/to/lacework_mcp_server/lacework_mcp_server.py"
      ],
      "env": {
        "LACEWORK_ACCOUNT": "yourcompany",
        "LACEWORK_KEY_ID": "YOUR_KEY_ID",
        "LACEWORK_SECRET": "YOUR_SECRET"
      }
    }
  }
}

Remote (server running elsewhere via SSE):

{
  "mcpServers": {
    "lacework": {
      "url": "http://your-server-host:8000/sse"
    }
  }
}

For remote servers, credentials are passed as tool parameters on each call (lacework_account, lacework_key_id, lacework_secret).

API Reference

Based on the Lacework API v2 documentation:

  • Authentication: Uses POST /api/v2/access/tokens with automatic token refresh
  • Alerts: Full CRUD via /api/v2/Alerts endpoints
  • Rate limits: 480 requests/hour per functionality
  • Time ranges: Max 7 days per request; default is last 24 hours

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