| name | troubleshoot-docker-engine |
| description | Use when diagnosing issues with Docker Engine: Docker Engine operational issues. Queries Netdata via MCP for Docker Engine health signals, applies the diagnostic tree from the Netdata operator playbook, and recommends remediation. |
| version | 0.1.0 |
| author | Netdata |
| license | Apache-2.0 |
| tags | ["netdata","troubleshoot","mcp","docker-engine"] |
Troubleshoot Docker Engine
When to use this skill
- Any time the user reports a Docker Engine service behaving outside its expected envelope (elevated
errors, latency, saturation, resource exhaustion, or unexpected restarts).
- An on-call engineer is paging on a Netdata alert tied to a Docker Engine instance and wants a
structured triage path.
Key facts
- This skill wraps the Netdata operator playbook for Docker Engine. It does not replace the
playbook; it routes a coding agent through MCP queries against the same signals the playbook
relies on.
- Docker Engine is not one daemon; it is a layered control plane with four distinct process tiers,
each with independent failure modes:
-
dockerd; The API server and orchestration layer. Listens on /var/run/docker.sock
(rootful) or /run/user/<UID>/docker.sock (rootless). Manages images, containers, networks,
volumes, builds, and logging configuration. Maintains in-memory state backed by on-disk metadata
(BoltDB stores at multiple subdirectory paths under /var/lib/docker/). Written in Go with heavy
goroutine concurr...
- Netdata observes the signals listed in the rule files via its native collectors, plus any
OpenTelemetry-shipped metrics that your Docker Engine instrumentation adds. Both paths end at the
same MCP query surface.
- Netdata's docker_engine collector emits 8 context(s) under
docker_engine.*. The rule files
enumerate which contexts surface which domain; the Verification section below names the
load-bearing ones explicitly.
Step-by-step
- Confirm the Docker Engine service is up. Query Netdata via MCP with
list_nodes and filter by
the host running the target. A missing node means the symptom is at the network or orchestrator
layer, not inside the service.
- Pull the last 15 minutes of signals for the target. Use
query_metrics against the contexts
listed in the domain rule files. Run find_anomalous_metrics in parallel over the same window;
anomalies frame which rule file to read first.
- Correlate with host-level signals (
system.cpu.utilization, system.memory.usage,
system.disk.io_time). Many service-level failures have a host-resource precursor.
- Apply the remediation hinted at in the matching rule file or the operator playbook. Re-run the
MCP queries from the Verification section to confirm the signals returned to expected ranges. A
fix that does not move the signal back is not a fix.
Handy MCP call templates
# Discover metrics from Docker Engine
list_metrics with q="docker_engine"
# Pull a specific context over the last window
query_metrics with context="docker_engine.builder_builds_failed_total", relative_window=-15m
# Rank anomalies for the service or host
find_anomalous_metrics with node=<host> and context_pattern="docker_engine.*"
# Correlate a known problem context with others
find_correlated_metrics around the incident window
# Show current alert state
list_raised_alerts scoped to the node
Common mistakes
- Treating Docker Engine as a generic HTTP or process health check. Docker Engine has specific
failure archetypes (see Key facts) that generic checks miss.
- Stopping at the first anomalous metric. Several archetypes produce correlated spikes; use
find_correlated_metrics to widen the search before concluding a root cause.
- Quoting percentile latency without the sample count. Low traffic plus a single slow request moves
p99 by seconds.
- Reading dashboards for a window shorter than the failure's fingerprint. Slow-brew failures (queue
growth, bloat, memory fragmentation) need 30+ minutes of data to see the trend.
- Skipping the host-level correlation. A process-level fix for a noisy-neighbour problem does not
hold.
- Assuming alert thresholds are tuned for your workload. Tune against observed Docker Engine traffic
before escalating an alert configuration issue.
Verification
Run these MCP queries against the Netdata instance that sees the Docker Engine service. Every
context listed below is a real Netdata chart name; the agent does not need to guess.
1. list_metrics filtered by q="docker_engine" (returns every docker_engine.* context Netdata sees)
2. query_metrics with contexts=[docker_engine.builder_builds_failed_total, docker_engine.engine_daemon_health_checks_failed_total, docker_engine.swarm_manager_nodes_per_state, docker_engine.swarm_manager_tasks_per_state, docker_engine.engine_daemon_container_actions, docker_engine.engine_daemon_container_states_containers] and relative_window=-30m
3. find_anomalous_metrics filtered by node=<host> and context_pattern="docker_engine.*"
Load-bearing contexts for this service:
docker_engine.builder_builds_failed_total: Builder Builds Fails By Reason (fails/s). Dimensions:
build_canceled, build_target_not_reachable_error,
command_not_supported_error, dockerfile_empty_error,
dockerfile_syntax_error,
error_processing_commands_error.
docker_engine.engine_daemon_health_checks_failed_total: Health Checks (events/s). Dimensions:
fails.
docker_engine.swarm_manager_nodes_per_state: Swarm Manager Nodes Per State (nodes). Dimensions:
ready, down, unknown, disconnected.
docker_engine.swarm_manager_tasks_per_state: Swarm Manager Tasks Per State (tasks). Dimensions:
running, failed, ready, rejected, starting,
shutdown.
docker_engine.engine_daemon_container_actions: Container Actions (actions/s). Dimensions:
changes, commit, create, delete, start.
docker_engine.engine_daemon_container_states_containers: Containers In Various States
(containers). Dimensions: running,
paused, stopped.
A clean result means every context is within its expected band and the find_anomalous_metrics list
is empty or contains only already-acknowledged items. If the fix was real, re-running the same
queries 10 minutes after applying it will show a clean result. If it does not, revert and look
deeper.
When the fix does not hold
If signals drift back into the anomalous range within 30 minutes of a remediation, the cause was
deeper than the applied change. Typical misdiagnoses for Docker Engine:
- Host-resource pressure masquerading as application bug.
- Dependent service (DB, cache, upstream) causing a secondary symptom in the instrumented service.
- Configuration change that was never reloaded (some subsystems only pick up config on full
restart).
Escalate by widening the query window: 2-6 hours instead of 15 minutes. Slow-moving causes are
invisible at triage window sizes.
References
rules/overview.md
- Netdata operator playbook: the authoritative source material this skill summarizes.
skills/netdata-mcp-integration/ for the transport setup.
skills/netdata-otel-setup/ if additional application signals are needed beyond what Netdata
collects natively.