Grafana
MCP server for Grafana — manage dashboards, datasources, alerts, folders, and annotations over stdio
grafana-mcp
MCP server for Grafana — manage dashboards, datasources, alert rules, folders, and annotations over stdio.
Installation
bunx @daanrongen/grafana-mcp
Tools (17 total)
| Domain | Tools | Coverage |
|---|---|---|
| Dashboards | list_dashboards, get_dashboard, create_dashboard, update_dashboard, delete_dashboard | Full dashboard lifecycle |
| Datasources | list_datasources, get_datasource, create_datasource, delete_datasource | Datasource management |
| Alerts | list_alert_rules, get_alert_rule, list_alert_instances | Alert rules and firing Alertmanager instances |
| Folders | list_folders, create_folder, delete_folder | Folder organisation |
| Annotations | list_annotations, create_annotation | Dashboard and global annotations |
| Health | health_check | Grafana instance status |
Configuration
| Variable | Required | Description |
|---|---|---|
GRAFANA_URL | Yes | Grafana base URL (e.g. http://localhost:3000) |
GRAFANA_API_KEY | Yes | Grafana service account token or API key |
Setup
Claude Desktop
Edit ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"grafana": {
"type": "stdio",
"command": "bunx",
"args": ["@daanrongen/grafana-mcp"],
"env": {
"GRAFANA_URL": "http://localhost:3000",
"GRAFANA_API_KEY": "your-service-account-token"
}
}
}
}
Claude Code CLI
claude mcp add grafana \
-e GRAFANA_URL=http://localhost:3000 \
-e GRAFANA_API_KEY=your-service-account-token \
-- bunx @daanrongen/grafana-mcp
Development
bun install
bun run dev # run with --watch
bun test # run test suite
bun run typecheck # type-check with tsc
bun run lint # biome lint
bun run format # biome format
bun run build # bundle to dist/main.js
Inspecting locally
Use the MCP Inspector to browse and call tools interactively against a real Grafana instance:
GRAFANA_URL=http://localhost:3000 \
GRAFANA_API_KEY=your-service-account-token \
bun run inspect
This opens the MCP Inspector UI in the browser, pointed at the locally built server.
Architecture
src/
├── config.ts # Effect Config — GRAFANA_URL, GRAFANA_API_KEY
├── main.ts # Entry point — ManagedRuntime + StdioServerTransport
├── domain/
│ ├── GrafanaClient.ts # Context.Tag service interface (port)
│ ├── errors.ts # GrafanaError, NotFoundError
│ ├── models.ts # Schema.Class models (Dashboard, Datasource, AlertRule, …)
│ ├── dashboards.test.ts # Domain tests using GrafanaClientTest
│ ├── datasources.test.ts # Domain tests using GrafanaClientTest
│ └── health.test.ts # Domain tests using GrafanaClientTest
├── infra/
│ ├── GrafanaClientLive.ts # Layer using fetch against the Grafana HTTP API
│ └── GrafanaClientTest.ts # In-memory Ref-based test adapter
└── mcp/
├── server.ts # McpServer wired to ManagedRuntime
├── utils.ts # formatSuccess, formatError
└── tools/ # dashboards.ts, datasources.ts, alerts.ts, folders.ts, annotations.ts, health.ts
License
MIT
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