From dynatrace
Monitors Kubernetes cluster health, pod failures, OOMKills, scheduling, and security posture using Dynatrace DQL queries.
How this skill is triggered — by the user, by Claude, or both
Slash command
/dynatrace:dt-obs-kubernetesThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Monitor and analyze Kubernetes infrastructure using Dynatrace DQL. Query
Monitor and analyze Kubernetes infrastructure using Dynatrace DQL. Query cluster resources, monitor workload health, analyze pod placement, optimize costs, and assess security posture.
references/cluster-inventory.md - Clusters,
namespaces, resource distributionreferences/labels-annotations.md - Parse
k8s.object, labels, annotationsreferences/pod-node-placement.md - Node
selectors, affinity, taints, HAWorkloads: K8S_DEPLOYMENT, K8S_STATEFULSET, K8S_DAEMONSET,
K8S_JOB, K8S_CRONJOB, K8S_HORIZONTALPODAUTOSCALER
Infrastructure: K8S_CLUSTER, K8S_NAMESPACE, K8S_NODE, K8S_POD
Configuration: K8S_SERVICE, K8S_CONFIGMAP, K8S_SECRET,
K8S_PERSISTENTVOLUMECLAIM, K8S_PERSISTENTVOLUME, K8S_INGRESS,
K8S_NETWORKPOLICY
smartscapeNodes - Query K8s entities:
smartscapeNodes K8S_POD
| filter k8s.namespace.name == "production"
| fields k8s.cluster.name, k8s.pod.name
timeseries - Monitor metrics over time:
timeseries cpu = sum(dt.kubernetes.container.cpu_usage),
by: {k8s.pod.name, k8s.namespace.name}
| fieldsAdd avg_cpu = arrayAvg(cpu)
fetch logs - Analyze log events:
fetch logs
| filter k8s.namespace.name == "production" and loglevel == "ERROR"
k8s.cluster.name, k8s.namespace.name, k8s.pod.name, k8s.node.namek8s.workload.name, k8s.workload.kind, k8s.container.namek8s.object - Full JSON configuration for deep inspectiontags[label] - Access labels and annotationsCPU: dt.kubernetes.container.cpu_usage, cpu_throttled, limits_cpu,
requests_cpu
Memory: dt.kubernetes.container.memory_working_set, limits_memory,
requests_memory
Operations: dt.kubernetes.container.restarts, oom_kills
Node: dt.kubernetes.node.pods_allocatable, cpu_allocatable,
memory_allocatable, dt.kubernetes.pods
K8S_POD vs CONTAINER: these are different entity types in Dynatrace.
K8S_POD — K8s-native entities with k8s.object JSON, scheduling state, conditions, and K8s metrics. Use this skill.CONTAINER — Host-level container inventory (image, lifetime, host assignment). Use dt-obs-hosts skill instead.The smartscape edge is CONTAINER --(is_part_of)--> K8S_POD. To reach containers from a pod, traverse backward:
smartscapeNodes K8S_POD
| filter k8s.namespace.name == "<namespace>"
| traverse edgeTypes: {is_part_of}, targetTypes: {CONTAINER}, direction: backward, fieldsKeep: {id}
| fields k8s.cluster.name, k8s.namespace.name, k8s.pod.name, container.id=id
No direct smartscape edge exists between SERVICE and K8S_POD. The correlation key is the shared dimension k8s.workload.name. See Service → Pod Drill-Down in references/pod-debugging.md for the full two-step pattern.
List all clusters:
smartscapeNodes K8S_CLUSTER
| fields k8s.cluster.name, k8s.cluster.version, k8s.cluster.distribution
Check node capacity:
timeseries {
current_pods = avg(dt.kubernetes.pods),
max_pods = avg(dt.kubernetes.node.pods_allocatable)
}, by: {k8s.node.name, k8s.cluster.name}
| fieldsAdd pod_capacity_pct = (arrayAvg(current_pods) / arrayAvg(max_pods)) * 100
| filter pod_capacity_pct > 80
Identify pods in non-Running state:
smartscapeNodes K8S_POD
| parse k8s.object, "JSON:config"
| fieldsAdd phase = config[status][phase]
| filter phase != "Running"
| fields k8s.cluster.name, k8s.namespace.name, k8s.pod.name, phase
Find over-provisioned pods (usage < 30%):
timeseries {
cpu_usage = sum(dt.kubernetes.container.cpu_usage),
cpu_requests = avg(dt.kubernetes.container.requests_cpu)
}, by: {k8s.pod.name, k8s.namespace.name, k8s.cluster.name}
| fieldsAdd usage_pct = (arrayAvg(cpu_usage) / arrayAvg(cpu_requests)) * 100
| filter usage_pct < 30 and arrayAvg(cpu_requests) > 0
Identify containers without limits:
smartscapeNodes K8S_POD
| parse k8s.object, "JSON:config"
| expand container = config[spec][containers]
| fieldsAdd
container_name = container[name],
cpu_limit = container[resources][limits][cpu],
memory_limit = container[resources][limits][memory]
| filter isNull(cpu_limit) or isNull(memory_limit)
Pod troubleshooting benefits from combining metrics (timeseries) with Kubernetes events (event stream) for a complete picture.
Find pods with OOMKills:
timeseries oom_kills = sum(dt.kubernetes.container.oom_kills),
by: {k8s.pod.name, k8s.namespace.name, k8s.cluster.name}
| filter arraySum(oom_kills) > 0
| fieldsAdd total_oom_kills = arraySum(oom_kills)
| sort total_oom_kills desc
Analyze pod restart patterns:
timeseries restarts = sum(dt.kubernetes.container.restarts),
by: {k8s.pod.name, k8s.namespace.name, k8s.cluster.name}
| fieldsAdd total_restarts = arraySum(restarts)
| filter total_restarts > 5
For operational events (pod restarts, OOM kills, evictions, scheduling failures), Kubernetes events provide richer context than metrics alone — including event reasons, messages, and timestamps.
When to use Kubernetes events over metrics:
Kubernetes events are available through the get-events-for-kubernetes-cluster
tool. Prefer this tool when the user asks about OOM events, pod restarts,
evictions, or cluster-wide event history.
Important: distinguish event types when filtering results. Kubernetes events cover many categories. When the user asks about a specific event type, filter the results accordingly — do not report unrelated events:
| User Asks About | Relevant Event Reasons | NOT Related |
|---|---|---|
| Pod restarts | BackOff, CrashLoopBackOff, Killing | Readiness probe failures, CPU throttling |
| OOM events | OOMKilling, OOMKilled | Memory pressure warnings |
| Evictions | Evicted, Preempting | Node pressure |
| Scheduling failures | FailedScheduling, Unschedulable | Resource quotas |
For a complete answer, combine both approaches:
Pod restart and operational events can also be queried via DQL from the events table:
fetch events
| filter event.kind == "K8S_EVENT"
| filter event.type == "Warning"
| fields timestamp, k8s.cluster.name, k8s.namespace.name, k8s.pod.name,
event.reason, event.message
| sort timestamp desc
| limit 50
Filter for specific event reasons:
fetch events
| filter event.kind == "K8S_EVENT"
| filter in(event.reason, {"OOMKilling", "BackOff", "Evicted", "FailedScheduling"})
| fields timestamp, k8s.cluster.name, k8s.namespace.name, k8s.pod.name,
event.reason, event.message
| sort timestamp desc
Field names in fetch events: Use event.reason and event.message — not
dt.kubernetes.event.reason. The dt.kubernetes.* prefix is for timeseries metrics,
not the events table. Queries using the wrong prefix return zero results.
Identify privileged containers:
smartscapeNodes K8S_POD
| parse k8s.object, "JSON:config"
| expand container = config[spec][containers]
| fieldsAdd
container_name = container[name],
privileged = container[securityContext][privileged]
| filter privileged == true
Find containers running as root:
smartscapeNodes K8S_POD
| parse k8s.object, "JSON:config"
| expand container = config[spec][containers]
| fieldsAdd
container_name = container[name],
run_as_user = container[securityContext][runAsUser],
run_as_non_root = container[securityContext][runAsNonRoot]
| filter (isNull(run_as_user) or run_as_user == 0) and run_as_non_root != true
Verify pod distribution (HA compliance):
smartscapeNodes K8S_POD
| filter k8s.workload.kind == "deployment"
| summarize pod_count = count(),
node_count = countDistinct(k8s.node.name),
by: {k8s.cluster.name, k8s.namespace.name, k8s.workload.name}
| fieldsAdd ha_compliant = node_count > 1
| filter pod_count >= 2 and not ha_compliant
Find active DAVIS problems affecting K8s entities:
fetch dt.davis.problems, from:now() - 2h
| filter not(dt.davis.is_duplicate) and event.status == "ACTIVE"
| filter matchesPhrase(smartscape.affected_entity.types, "K8S_")
| fields display_id, event.name, event.category, smartscape.affected_entity.ids
Use entries smartscape.affected_entity.ids (array of Smartscape IDs) to look up the affected entity using its Smartscape ID.
| User Question | Best Approach | Why |
|---|---|---|
| "Show me OOM events" | Events tool + metrics | Events give reasons/messages; metrics show trends |
| "Show me pod restart events" | Events tool + timeseries metrics | Events reveal the reason (BackOff, Killing, CrashLoopBackOff); dt.kubernetes.container.restarts metric gives the actual restart counts |
| "How many pod restarts?" | Timeseries metrics | Quantitative data over time |
| "What happened to my pods in the last 48h?" | Events tool | Operational event history with context |
| "Which pods are using the most CPU?" | Timeseries metrics | Resource utilization analysis |
| "List all clusters/namespaces" | smartscapeNodes | Entity discovery and inventory |
| "Are there scheduling failures?" | Events tool | Event reasons explain why |
limit for exploration| Problem | Cause | Solution |
|---|---|---|
| No pod data returned | Wrong entity type or missing cluster filter | Use K8S_POD (not POD); add k8s.cluster.name filter |
k8s.object parsing errors | Complex JSON structure | Use parse k8s.object, "JSON:config" then access nested fields |
| Pod network metrics unavailable | Not available in Grail | Use service mesh metrics or host-level network metrics |
| Large result sets | No time range or cluster filter | Add time range and filter by cluster/namespace early |
| Missing labels in output | Labels accessed incorrectly | Use tags[label_name] to access labels |
Unavailable Metrics:
Query Considerations:
k8s.object field if not necessary→ references/cluster-inventory.md
k8s.object for detailed configuration inspection→ references/labels-annotations.md
→ references/pod-node-placement.md
→ references/workload-health.md
→ references/network-policies.md
dt.smartscape_source.id with K8S_ prefix filters)npx claudepluginhub dynatrace/dynatrace-for-ai --plugin dynatraceInvestigates Kubernetes workload, node, and control-plane issues using OTel telemetry (EDOT). Diagnoses pod failures, node pressure, resource exhaustion, image pull failures, admission rejections, and autoscaling anomalies.
Investigates live Kubernetes incidents: anchors timeline, bisects recent changes (rollouts, ConfigMaps, RBAC, HPA), classifies failure paths (OOM, DNS, cascading), and proposes mitigations.
Queries Dynatrace logs, metrics, traces, problems, vulnerabilities, and Kubernetes events using DQL. Converts natural language to DQL, explains queries, and accesses Davis AI insights.