Elasticsearch × Metabase

How to build Elasticsearch dashboards in Metabase

Elasticsearch is a distributed search and analytics engine at the core of the Elastic Stack, widely used for logs and events. Metabase is where you turn those operational signals into shared, trustworthy dashboards. This guide covers two complementary paths: a lightweight MCP + CLI route that pulls live data with the Elastic Agent Builder MCP and loads a CSV into Metabase with the Metabase CLI, and a durable pipeline route that syncs Elasticsearch rollups into a database so you can build dashboards anyone can read.

Heads up: Metabase connects to databases and warehouses — it does not ship a native Elasticsearch connector, and a BI warehouse is the wrong home for raw telemetry. Sync aggregates, entities, and metadata — incidents, error groups, rollups, deploys — and leave the event firehose in Elasticsearch.

How do you connect Elasticsearch to Metabase?

Most teams combine both routes: use MCP and CLI uploads for a fast first pass, then move recurring reliability reporting to a warehouse-backed model.

1 · MCP + CLI route (AI-assisted)

Live data in, quick analysis out

Pair the Elastic Agent Builder MCP with the Metabase CLI. Use MCP for live lookups, write a scoped result to CSV, then load it into Metabase as a ready-to-query table and model.

Best for
  • Quick lookups such as "show me log volume by service and level"
  • Loading a Elasticsearch export into Metabase in seconds
  • Spot-checks and one-off analyses without a warehouse
Trade-offs
  • Great for exploration, not governed reliability reporting
  • Use read-only/scoped credentials wherever the MCP server supports them
  • CSV uploads are snapshots — refresh or move to the pipeline for history
2 · Pipeline route (warehouse-backed)

Durable dashboards with history

Sync Elasticsearch rollups and metadata into a database or warehouse with a connector, custom pipeline, or API, then point Metabase at it.

Best for
  • Elasticsearch reliability dashboards leaders depend on
  • Joining Elasticsearch data with deploys, issues, support, or cost data
  • Long-run trends for log volume by service and level and error and exception trends
Trade-offs
  • You own the refresh schedule and the rollup grain
  • Sync aggregates and entities — not the raw event firehose
  • Metric definitions must be consistent across services and teams

What can you analyze from Elasticsearch data in Metabase?

  • Log volume by service and level — built from log and event rollups and the related indices, index stats, aggregation results data your sync exposes.
  • Error and exception trends — built from log and event rollups and the related indices, index stats, aggregation results data your sync exposes.
  • Search latency and cluster health — built from log and event rollups and the related indices, index stats, aggregation results data your sync exposes.
  • Index growth and retention — built from log and event rollups and the related indices, index stats, aggregation results data your sync exposes.
  • Ingest pipeline health — built from log and event rollups and the related indices, index stats, aggregation results data your sync exposes.

Which Elasticsearch dashboards should you build in Metabase?

For: SREs, service owners

Service health overview

The shared reliability view to build first.

  • Availability by service (table)
  • Error rate by service by week (line)
  • Latency p95 by service (line)
  • SLO compliance by service (bar)
For: SRE leads

Alert volume and noise

Whether monitors earn their pages.

  • Alerts fired per week by monitor (stacked bar)
  • Alert-to-incident conversion (number + trend)
  • Noisiest monitors (table)
  • Muted or silenced alerts (table)
For: Engineers

Error and log trends

Where exceptions and log anomalies cluster.

  • Error events by service by week (line)
  • Log volume by service (bar)
  • Top error signatures (table)
  • New signatures this week (table)
For: Leadership, SREs

SLO and error budget

Reliability against explicit targets.

  • Error budget remaining by service (bar)
  • Budget burn rate, trailing 28 days (line)
  • SLO breaches this quarter (table)
  • Compliance by service tier (bar)

How do you use the Elastic Agent Builder MCP with the Metabase CLI?

Pair the Elastic Agent Builder MCP with the Metabase CLI for fast, hands-on analysis. MCP is useful for scoped lookups and summarized exports; the Metabase CLI's upload command loads CSV data into Metabase and creates a ready-to-query table and model.

Example workflow

  • Ask the MCP server for a summarized slice of log and event rollups for the services you care about.
  • Export the result as CSV, keeping stable IDs, services, environments, severities, and timestamps.
  • Run mb upload csv to load it into Metabase as a table and model, then build questions and dashboards on top.

Be honest about the limits

  • MCP lookups are excellent for exploration, not scheduled reporting.
  • A CSV upload is a snapshot; refresh it with mb upload replace or move to the pipeline for real history.
  • Periodic rollups (hourly or daily) are required for availability and error-rate trends.
  • mb upload csv needs an uploads database configured under Admin → Settings → Uploads.

How do you set up Elasticsearch MCP and the Metabase CLI?

Elastic Agent Builder MCPofficial

Transport
Remote MCP via Streamable HTTP (served by your Kibana)
Auth
Elasticsearch API key with the Agent Builder privilege
Best for
Live scoped lookup and export

Metabase CLIofficial

Install
npm install -g @metabase/cli
Auth
mb auth login
Load data
mb upload csv --file data.csv
Requires
An uploads database (Admin → Settings → Uploads)
MCPExample MCP client config
{
  "mcpServers": {
    "elasticsearch": {
      "command": "npx",
      "args": [
        "-y", "mcp-remote",
        "https://your-kibana.example.com/api/agent_builder/mcp",
        "--header", "Authorization: ApiKey ${ES_API_KEY}"
      ]
    }
  }
}

Agent Builder ships with Elastic Stack 9.3+ (preview in 9.2) and Serverless. The older elastic/mcp-server-elasticsearch Docker server is deprecated.

TerminalLoad a Elasticsearch CSV with the Metabase CLI
# Install the Metabase CLI
npm install -g @metabase/cli

# Log in (opens your browser; requires Metabase v62+)
mb auth login --url https://your-metabase.example.com

# Load a log-and-event-rollups export — creates a table AND a model
mb upload csv --file elasticsearch-log-and-event-rollups.csv --collection root

# Refresh that same table later from a new export
mb upload replace <table-id> --file elasticsearch-log-and-event-rollups.csv

Can you generate a Elasticsearch dashboard with AI?

Yes. Use the prompt below with any assistant that can run the Elastic Agent Builder MCP and the Metabase CLI. It works end to end: if Elasticsearch tables already exist in Metabase it analyzes those; otherwise it pulls scoped, summarized data over MCP, loads it with mb upload csv, then builds the dashboard and caveats any metric that needs missing history.

Prompt for creating a Elasticsearch Observability Overview dashboard
Create a polished Metabase dashboard for Elasticsearch observability analytics.
Work end to end: get the data into Metabase if it isn't there yet, then build.

Goal: Help engineering and operations leaders understand service availability, error rates, alert quality, and SLO compliance from Elasticsearch data.

Step 1 — Find or load the data:
- First, check what already exists in Metabase (search for elasticsearch tables and
  models). If durable Elasticsearch data is already present — synced from a warehouse
  or uploaded earlier — use it and skip to Step 2.
- If nothing is there, pull a scoped, summarized export with the Elastic Agent Builder MCP:
  log and event rollups, plus indices, index stats, aggregation results.
  Prefer aggregated or rollup views over raw events. Write each result to a CSV,
  then load it with the Metabase CLI — run "mb upload csv --file <export>.csv" so
  each upload creates a table and a ready-to-query model. Use "mb upload replace
  <table-id> --file <export>.csv" to refresh an existing table instead of creating
  duplicates.

Step 2 — Inspect before querying:
Do not assume exact table or column names. Inspect available fields, services,
environments, timestamps, and whether rollups or history exist before creating
duration or trend cards.

Important:
- Build on whatever data is present; don't claim Metabase connects natively to
  Elasticsearch — it reads a database or CLI-uploaded tables.
- Never try to load the raw event firehose into Metabase; use rollups, entity
  tables, and incident- or group-grain data.
- Only compute durations (MTTA, MTTR, time-to-resolve) when the required
  timestamps exist.
- Exclude test, staging, or muted objects from headline reliability cards, and
  segment by environment where the field exists.
- A single CSV is a point-in-time snapshot: only build trend cards if there is a
  usable date column or multiple periods have been uploaded.

Dashboard title: Elasticsearch Observability Overview

Sections:
1. Executive summary: Availability last 30 days; Error rate; Alerts fired;
   SLO compliance; Services below target.
2. Service health: Availability and error rate by service by week.
3. Alerts: Alert volume by monitor; conversion to incidents; noisy monitors.
4. SLOs: Error budget remaining; burn rate; breaches by service.
5. Trends: Latency percentiles and traffic by service where synced.

Filters: Date range, Service, Environment, Severity, Team, Status.

Output: Build the dashboard if you have permission; otherwise provide the exact
questions, SQL, model definitions, and layout. Include caveats for any metric
that cannot be calculated from the available data.

How do you sync Elasticsearch data into a database or warehouse?

For dashboards that need history and reliability, land Elasticsearch rollups and metadata in a database first, then connect Metabase to that database.

Connector options

  • Managed ETL — use a connector when one covers the objects you need.
  • Custom pipeline — use the Elasticsearch REST API for control over rollup grain, fields, and refresh cadence.
  • MCP + CSV — use this for quick exploration and one-off slices.

Sync index documents with the Fivetran Elasticsearch connector (incremental) or the Airbyte source (full refresh only), or script _search exports — land rollups, not entire raw log indices.

Notes

  • Decide the rollup grain first (hourly or daily per service/environment) — it drives warehouse cost and every trend card.
  • Land raw entity tables first, then build clean Metabase models on top.
  • Normalize service, environment, metric, window-start, and aggregation fields.

How should you model Elasticsearch data in Metabase?

Core tables

TableGrainKey columns
log_rollupsone row per service per level per hourservice_name, environment, level, window_start, event_count, distinct_signatures
es_index_statsone row per index per dayindex_name, snapshot_date, doc_count, store_size_bytes, search_latency_ms
es_cluster_healthone row per cluster per hourcluster_name, window_start, status, active_shards, unassigned_shards

Modeling advice

  • Build a clean service_health_rollups model with common columns across tools, so multi-source dashboards don't fork definitions.
  • Separate entity tables (services, monitors, policies) from time-series rollups and event-grain tables.
  • Exclude test, staging, and muted objects from headline reliability metrics; keep environment as an explicit column.
  • Use stable IDs for service, team, and incident joins; display names change.

Which Elasticsearch metrics should you track in Metabase?

MetricDefinitionNotes
Service availabilitySuccessful requests or minutes divided by total, per service.Define success once (status < 500, or probe-based).
Error rateError events divided by total requests per window.Use rollups; raw events don't belong in a warehouse.
Alert noise rateAlerts that led nowhere divided by all alerts fired.Review the noisiest monitors monthly.
SLO complianceActual reliability against the SLO target and error budget.Burn rate matters more than a point-in-time number.

What SQL powers Elasticsearch dashboards in Metabase?

These assume a cleaned analytical model in a warehouse (PostgreSQL dialect). Adjust table and column names to match your pipeline.

Availability by service by weekPostgreSQL

From success/total rollups per service.

SELECT
  service_name,
  date_trunc('week', window_start) AS week,
  ROUND(
    100.0 * SUM(successful_requests) / NULLIF(SUM(total_requests), 0), 3
  ) AS availability_pct
FROM service_health_rollups
WHERE environment = 'production'
GROUP BY 1, 2
ORDER BY 1, 2;
Alert volume and conversion by monitorPostgreSQL

Which monitors page for real problems.

SELECT
  monitor_name,
  COUNT(*) AS alerts_fired,
  COUNT(*) FILTER (WHERE became_incident) AS incidents,
  ROUND(
    100.0 * COUNT(*) FILTER (WHERE became_incident)
    / NULLIF(COUNT(*), 0), 1
  ) AS conversion_rate
FROM alerts
WHERE fired_at >= CURRENT_DATE - INTERVAL '30 days'
GROUP BY monitor_name
ORDER BY alerts_fired DESC
LIMIT 20;
SLO compliance and marginPostgreSQL

Actual reliability vs. the published target, trailing 28 days.

SELECT
  service_name,
  slo_target,
  ROUND(
    100.0 * SUM(successful_requests) / NULLIF(SUM(total_requests), 0), 3
  ) AS actual,
  ROUND(
    100.0 * SUM(successful_requests) / NULLIF(SUM(total_requests), 0), 3
  ) - slo_target AS margin
FROM service_health_rollups
WHERE window_start >= CURRENT_DATE - INTERVAL '28 days'
GROUP BY service_name, slo_target
ORDER BY margin ASC;

What are common mistakes when analyzing Elasticsearch in Metabase?

Syncing the raw event firehose into the warehouse.→ Land rollups, entities, and incident- or group-grain tables. Raw telemetry belongs in Elasticsearch; the warehouse is for trends and joins.
Averaging availability across services.→ A 99.99% service and a 97% service don't average into anything meaningful. Report per service against its own target.
Reporting latency as an average.→ Use p50/p95/p99 from pre-aggregated percentile rollups; means hide tail pain, and percentiles can't be re-averaged later.
Building dashboards from live MCP lookups only.→ MCP is useful for exploration; durable dashboards need a database-backed model with history.

Related analytics

Related dashboards

Related integrations

FAQ

Does Metabase connect natively to Elasticsearch?
No. Metabase reads databases and warehouses. Sync Elasticsearch rollups and metadata into a database first, or upload a CSV with the Metabase CLI, then build Metabase models and dashboards on top.
Should Metabase replace Elasticsearch?
No — they answer different questions. Elasticsearch is built for real-time triage and deep debugging. Metabase is where you build governed, shareable reporting on top of the same signals, and join them with deploys, issues, support, and business data.
How much telemetry should I sync into the warehouse?
As little as answers the question: hourly or daily rollups per service and environment, alert and monitor metadata, and SLO definitions. Keep raw metrics, logs, and traces in the observability stack and link out for drill-downs.
How is this different from the dashboards I already have?
Native dashboards are excellent for operators. Metabase adds governed definitions, org-wide sharing without per-seat operator licenses, and joins with business data — reliability next to revenue, incidents next to releases.