optimize-cloud-costs
Über
Dieses Claude Skill unterstützt Entwickler bei der Optimierung von Kubernetes-Cloud-Kosten mithilfe von Tools wie Kubecost für Transparenz und Empfehlungen. Es implementiert Autoscaling, Spot-Instances und Kontingente, um Überdimensionierung und fehlausgerichtete Ressourcen zu adressieren. Nutzen Sie es, wenn Cloud-Kosten ohne proportionalen Mehrwert steigen oder wenn interne Kostenverantwortung durch Showback etabliert werden soll.
Schnellinstallation
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Dokumentation
Optimize Cloud Costs
Implement cost optimization for Kubernetes clusters to cut cloud spend.
When Use
- Cloud costs growing without business value increase
- Need cost allocation visibility by team, app, environment
- Resource requests/limits not aligned with actual usage
- Manual scaling causes over-provisioning, waste
- Want spot/preemptible instances for non-critical workloads
- Need showback or chargeback for internal cost allocation
- Establishing FinOps culture with cost awareness, accountability
Inputs
- Required: Kubernetes cluster with workloads running
- Required: Cloud provider billing API access
- Required: Metrics server or Prometheus for resource metrics
- Optional: Historical usage data for trend analysis
- Optional: Cost allocation requirements (by namespace, label, team)
- Optional: SLOs for performance constraints
- Optional: Budget limits or cost reduction targets
Steps
See Extended Examples for complete configuration files and templates.
Step 1: Deploy Cost Visibility Tools
Install Kubecost or OpenCost for cost monitoring and allocation.
Install Kubecost:
# Add Kubecost Helm repository
helm repo add kubecost https://kubecost.github.io/cost-analyzer/
helm repo update
# Install Kubecost with Prometheus integration
helm install kubecost kubecost/cost-analyzer \
--namespace kubecost \
--create-namespace \
--set kubecostToken="your-token-here" \
--set prometheus.server.global.external_labels.cluster_id="production-cluster" \
--set prometheus.nodeExporter.enabled=true \
--set prometheus.serviceAccounts.nodeExporter.create=true
# For existing Prometheus, configure Kubecost to use it
helm install kubecost kubecost/cost-analyzer \
--namespace kubecost \
--create-namespace \
--set prometheus.enabled=false \
--set global.prometheus.fqdn="http://prometheus-server.monitoring.svc.cluster.local" \
--set global.prometheus.enabled=true
# Verify installation
kubectl get pods -n kubecost
kubectl get svc -n kubecost
# Access Kubecost UI
kubectl port-forward -n kubecost svc/kubecost-cost-analyzer 9090:9090
# Open http://localhost:9090
Configure cloud provider integration:
# kubecost-cloud-integration.yaml
apiVersion: v1
kind: Secret
metadata:
name: cloud-integration
namespace: kubecost
type: Opaque
stringData:
# For AWS
cloud-integration.json: |
{
"aws": [
{
"serviceKeyName": "AWS_ACCESS_KEY_ID",
"serviceKeySecret": "AWS_SECRET_ACCESS_KEY",
"athenaProjectID": "cur-query-results",
"athenaBucketName": "s3://your-cur-bucket",
"athenaRegion": "us-east-1",
"athenaDatabase": "athenacurcfn_my_cur",
"athenaTable": "my_cur"
}
]
}
---
# For GCP
apiVersion: v1
kind: Secret
metadata:
name: gcp-key
namespace: kubecost
type: Opaque
data:
key.json: <base64-encoded-service-account-key>
---
# For Azure
apiVersion: v1
kind: ConfigMap
metadata:
name: azure-config
namespace: kubecost
data:
azure.json: |
{
"azureSubscriptionID": "your-subscription-id",
"azureClientID": "your-client-id",
"azureClientSecret": "your-client-secret",
"azureTenantID": "your-tenant-id",
"azureOfferDurableID": "MS-AZR-0003P"
}
Apply cloud integration:
kubectl apply -f kubecost-cloud-integration.yaml
# Verify cloud costs are being imported
kubectl logs -n kubecost -l app=cost-analyzer -c cost-model --tail=100 | grep -i "cloud"
# Check Kubecost API for cost data
kubectl port-forward -n kubecost svc/kubecost-cost-analyzer 9090:9090 &
curl http://localhost:9090/model/allocation\?window\=7d | jq .
Got: Kubecost pods running. UI shows cost breakdown by namespace, deployment, pod. Cloud provider costs importing (may take 24-48 hours for initial sync). API returning allocation data.
If fail:
- Check Prometheus running and accessible:
kubectl get svc -n monitoring prometheus-server - Verify cloud credentials have billing API access
- Review cost-model logs:
kubectl logs -n kubecost -l app=cost-analyzer -c cost-model - Ensure metrics-server or Prometheus node-exporter collecting resource metrics
- Check for network policies blocking access to cloud billing APIs
Step 2: Analyze Current Resource Utilization
Identify over-provisioned resources and optimization opportunities.
Query resource utilization:
# Get resource requests vs usage for all pods
kubectl top pods --all-namespaces --containers | \
awk 'NR>1 {print $1,$2,$3,$4,$5}' > current-usage.txt
# Compare requests to actual usage
cat <<'EOF' > analyze-utilization.sh
#!/bin/bash
echo "Pod,Namespace,CPU-Request,CPU-Usage,Memory-Request,Memory-Usage"
for ns in $(kubectl get ns -o jsonpath='{.items[*].metadata.name}'); do
kubectl get pods -n $ns -o json | jq -r '
.items[] |
select(.status.phase == "Running") |
{
name: .metadata.name,
namespace: .metadata.namespace,
containers: [
.spec.containers[] |
{
name: .name,
cpuReq: .resources.requests.cpu,
memReq: .resources.requests.memory
}
]
} |
"\(.name),\(.namespace),\(.containers[].cpuReq // "none"),\(.containers[].memReq // "none")"
' 2>/dev/null
done
EOF
chmod +x analyze-utilization.sh
./analyze-utilization.sh > resource-requests.csv
# Get actual usage from metrics server
kubectl top pods --all-namespaces --containers > actual-usage.txt
Use Kubecost recommendations:
# Get right-sizing recommendations via API
curl "http://localhost:9090/model/savings/requestSizing?window=7d" | jq . > recommendations.json
# Extract top wasteful resources
jq '.data[] | select(.totalRecommendedSavings > 10) | {
cluster: .clusterID,
# ... (see EXAMPLES.md for complete configuration)
Create utilization dashboard:
# grafana-utilization-dashboard.yaml
apiVersion: v1
kind: ConfigMap
metadata:
name: utilization-dashboard
namespace: monitoring
# ... (see EXAMPLES.md for complete configuration)
Got: Clear view of current resource requests vs actual usage. Pods with <30% utilization (over-provisioned) identified. List of optimization opportunities with estimated savings. Dashboard showing utilization trends over time.
If fail:
- Ensure metrics-server running:
kubectl get deployment metrics-server -n kube-system - Check Prometheus has node-exporter metrics:
curl http://prometheus:9090/api/v1/query?query=node_cpu_seconds_total - Verify pods running long enough for meaningful data (at least 24 hours)
- Check gaps in metrics collection: review Prometheus retention and scrape intervals
- For Kubecost, ensure it has collected at least 48 hours of data
Step 3: Implement Horizontal Pod Autoscaling (HPA)
Configure automatic scaling based on CPU, memory, or custom metrics.
Create HPA for CPU-based scaling:
# hpa-cpu.yaml
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: api-server-hpa
namespace: production
# ... (see EXAMPLES.md for complete configuration)
Deploy and verify HPA:
kubectl apply -f hpa-cpu.yaml
# Check HPA status
kubectl get hpa -n production
kubectl describe hpa api-server-hpa -n production
# Monitor scaling events
kubectl get events -n production --field-selector involvedObject.kind=HorizontalPodAutoscaler --watch
# Generate load to test autoscaling
kubectl run load-generator --rm -it --image=busybox -- /bin/sh -c \
"while true; do wget -q -O- http://api-server.production.svc.cluster.local; done"
# Watch replicas scale
watch kubectl get hpa,deployment -n production
Got: HPA created showing current/target metrics. Pods scale up under load. Pods scale down when load decreases (after stabilization window). Scaling events logged. No thrashing (rapid scale up/down cycles).
If fail:
- Verify metrics-server running:
kubectl get apiservice v1beta1.metrics.k8s.io - Check deployment has resource requests set (HPA requires this)
- Review HPA events:
kubectl describe hpa api-server-hpa -n production - Ensure target deployment not at max replicas
- For custom metrics, verify metrics adapter installed and configured
- Check HPA controller logs:
kubectl logs -n kube-system -l app=kube-controller-manager | grep horizontal-pod-autoscaler
Step 4: Configure Vertical Pod Autoscaling (VPA)
Auto-adjust resource requests based on actual usage patterns.
Install VPA:
# Clone VPA repository
git clone https://github.com/kubernetes/autoscaler.git
cd autoscaler/vertical-pod-autoscaler
# Install VPA
./hack/vpa-up.sh
# Verify installation
kubectl get pods -n kube-system | grep vpa
# Check VPA CRDs
kubectl get crd | grep verticalpodautoscaler
Create VPA policies:
# vpa-policies.yaml
apiVersion: autoscaling.k8s.io/v1
kind: VerticalPodAutoscaler
metadata:
name: api-server-vpa
namespace: production
# ... (see EXAMPLES.md for complete configuration)
Deploy and monitor VPA:
kubectl apply -f vpa-policies.yaml
# Check VPA recommendations
kubectl get vpa -n production
kubectl describe vpa api-server-vpa -n production
# View detailed recommendations
kubectl get vpa api-server-vpa -n production -o jsonpath='{.status.recommendation}' | jq .
# Monitor VPA-initiated pod updates
kubectl get events -n production --field-selector involvedObject.kind=VerticalPodAutoscaler --watch
# Compare recommendations to current requests
kubectl get deployment api-server -n production -o json | \
jq '.spec.template.spec.containers[].resources.requests'
Got: VPA providing recommendations or auto-updating resource requests. Recommendations based on percentile usage patterns (typically P95). Pods restarted with new requests when using Auto/Recreate mode. No conflicts between HPA and VPA (HPA for replicas, VPA for resources per pod).
If fail:
- Ensure metrics-server has sufficient data (VPA needs several days for accurate recommendations)
- Check VPA components running:
kubectl get pods -n kube-system | grep vpa - Review VPA admission controller logs:
kubectl logs -n kube-system -l app=vpa-admission-controller - Verify webhook registered:
kubectl get mutatingwebhookconfigurations vpa-webhook-config - Don't use VPA and HPA on same metric (CPU/memory) — causes conflicts
- Start with "Off" mode to review recommendations before enabling auto updates
Step 5: Leverage Spot/Preemptible Instances
Configure workload scheduling on cost-effective spot instances.
Create node pools with spot instances:
# For AWS (via Karpenter)
apiVersion: karpenter.sh/v1alpha5
kind: Provisioner
metadata:
name: spot-provisioner
spec:
# ... (see EXAMPLES.md for complete configuration)
Configure workloads for spot instances:
# spot-workload.yaml
apiVersion: apps/v1
kind: Deployment
metadata:
name: batch-processor
namespace: production
# ... (see EXAMPLES.md for complete configuration)
Deploy and monitor spot usage:
kubectl apply -f spot-workload.yaml
# Monitor spot node allocation
kubectl get nodes -l node-type=spot
# Check workload distribution
# ... (see EXAMPLES.md for complete configuration)
Got: Workloads scheduled on spot nodes. Significant cost reduction (typically 60-90% vs on-demand). Graceful handling of spot interruptions with pod rescheduling. Monitoring shows spot interruption rate and successful recovery.
If fail:
- Verify spot instance availability in your region/zones
- Check node labels and taints match workload tolerations
- Review Karpenter logs:
kubectl logs -n karpenter -l app.kubernetes.io/name=karpenter - Ensure workloads stateless or have proper state management for interruptions
- Test interruption handling: manually cordon and drain spot node
- Monitor interruption rate — too high? Consider fallback to on-demand nodes
Step 6: Implement Resource Quotas and Budget Alerts
Set hard limits and alerting for cost control.
Create resource quotas:
# resource-quotas.yaml
apiVersion: v1
kind: ResourceQuota
metadata:
name: production-quota
namespace: production
# ... (see EXAMPLES.md for complete configuration)
Configure budget alerts:
# kubecost-budget-alerts.yaml
apiVersion: v1
kind: ConfigMap
metadata:
name: budget-alerts
namespace: kubecost
# ... (see EXAMPLES.md for complete configuration)
Apply and monitor:
kubectl apply -f resource-quotas.yaml
kubectl apply -f kubecost-budget-alerts.yaml
# Check quota usage
kubectl get resourcequota -n production
kubectl describe resourcequota production-quota -n production
# ... (see EXAMPLES.md for complete configuration)
Got: Resource quotas enforcing limits per namespace. Pod creation blocked when quota exceeded. Budget alerts firing when thresholds breached. Cost spike detection working. Regular reports sent to stakeholders.
If fail:
- Verify ResourceQuota and LimitRange applied:
kubectl get resourcequota,limitrange -A - Check pods failing due to quota:
kubectl get events -n production | grep quota - Review Kubecost alert configuration:
kubectl logs -n kubecost -l app=cost-analyzer | grep alert - Ensure Prometheus has Kubecost metrics:
curl http://prometheus:9090/api/v1/query?query=kubecost_monthly_cost - Test alert routing: verify email/Slack webhook configuration
Checks
- Kubecost or OpenCost deployed and showing accurate cost data
- Cloud provider billing integration working (costs match actual bills)
- Resource utilization analysis identifies over-provisioned workloads
- HPA scaling pods based on load (verified with load test)
- VPA providing recommendations or auto-adjusting resource requests
- Spot instances handling interruptions gracefully
- Resource quotas enforcing limits per namespace
- Budget alerts firing when thresholds exceeded
- Monthly cost trending downward or staying within budget
- Showback reports generated for teams/projects
- No performance degradation from cost optimizations
- Documentation updated with optimization practices
Pitfalls
-
Aggressive Right-Sizing: Don't immediately apply VPA recommendations. Start with "Off" mode, review suggestions for week, gradually apply. Sudden changes cause OOMKills or CPU throttling.
-
HPA + VPA Conflict: Never use HPA and VPA on same metric (CPU/memory). Use HPA for horizontal scaling, VPA for per-pod resource tuning, or HPA on custom metrics + VPA on resources.
-
Spot Without Fault Tolerance: Only run fault-tolerant, stateless workloads on spot. Never databases, stateful services, or single-replica critical services. Always use PodDisruptionBudgets.
-
Insufficient Monitoring Period: Cost optimization decisions need historical data. Wait at least 7 days before making changes, 30 days for VPA recommendations, 90 days for trend analysis.
-
Ignoring Burst Requirements: Setting limits too low based on average usage causes throttling during traffic spikes. Use P95 or P99 percentiles, not average, for capacity planning.
-
Network Egress Costs: Compute costs visible in Kubecost, but egress (data transfer) can be significant. Monitor cross-AZ traffic, use topology-aware routing, consider data transfer costs in architecture.
-
Storage Overlooked: PersistentVolume costs often forgotten. Audit unused PVCs, right-size volumes, use volume expansion instead of over-provisioning, implement PV cleanup policies.
-
Quota Too Restrictive: Quotas too low block legitimate growth. Review quota usage monthly, adjust based on actual needs, communicate limits to teams before enforcement.
-
False Savings from Wrong Metrics: CPU/memory as sole optimization metric misses I/O, network, storage costs. Consider total cost of ownership, not just compute.
-
Chargeback Before Trust: Implementing chargeback before teams understand and trust cost data causes friction. Start with showback (informational), build culture of cost awareness, then move to chargeback.
See Also
deploy-to-kubernetes- Application deployment with appropriate resource requestssetup-prometheus-monitoring- Monitoring infrastructure for cost metricsplan-capacity- Capacity planning based on cost and performancesetup-local-kubernetes- Local development to avoid cloud costswrite-helm-chart- Templating resource requests and limitsimplement-gitops-workflow- GitOps for cost-optimized configurations
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