> k8s-autoscaling

Configure Kubernetes autoscaling with HPA, VPA, and KEDA. Use for horizontal/vertical pod autoscaling, event-driven scaling, and capacity management.

fetch
$curl "https://skillshub.wtf/rohitg00/kubectl-mcp-server/k8s-autoscaling?format=md"
SKILL.mdk8s-autoscaling

Kubernetes Autoscaling

Comprehensive autoscaling using HPA, VPA, and KEDA with kubectl-mcp-server tools.

When to Apply

Use this skill when:

  • User mentions: "HPA", "VPA", "KEDA", "autoscale", "scale to zero"
  • Operations: configuring autoscaling, checking scaling status
  • Keywords: "scale automatically", "event-driven", "right-size"

Priority Rules

PriorityRuleImpactTools
1Verify metrics-server for HPACRITICALget_resource_metrics
2Set resource requests before HPACRITICALdescribe_pod
3Use KEDA for scale-to-zeroHIGHkeda_scaledobjects_list_tool
4Check VPA recommendationsMEDIUMget_resource_recommendations

Quick Reference

TaskToolExample
List KEDA ScaledObjectskeda_scaledobjects_list_toolkeda_scaledobjects_list_tool(namespace)
Get ScaledObjectkeda_scaledobject_get_toolkeda_scaledobject_get_tool(name, namespace)
List ScaledJobskeda_scaledjobs_list_toolkeda_scaledjobs_list_tool(namespace)
Check KEDAkeda_detect_toolkeda_detect_tool()

HPA (Horizontal Pod Autoscaler)

Basic CPU-based scaling:

apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
  name: my-app-hpa
spec:
  scaleTargetRef:
    apiVersion: apps/v1
    kind: Deployment
    name: my-app
  minReplicas: 2
  maxReplicas: 10
  metrics:
  - type: Resource
    resource:
      name: cpu
      target:
        type: Utilization
        averageUtilization: 70

Apply and verify:

kubectl_apply(hpa_yaml, namespace)
get_hpa(namespace)

VPA (Vertical Pod Autoscaler)

Right-size resource requests:

apiVersion: autoscaling.k8s.io/v1
kind: VerticalPodAutoscaler
metadata:
  name: my-app-vpa
spec:
  targetRef:
    apiVersion: apps/v1
    kind: Deployment
    name: my-app
  updatePolicy:
    updateMode: "Auto"

KEDA (Event-Driven Autoscaling)

Detect KEDA Installation

keda_detect_tool()

List ScaledObjects

keda_scaledobjects_list_tool(namespace)
keda_scaledobject_get_tool(name, namespace)

List ScaledJobs

keda_scaledjobs_list_tool(namespace)

Trigger Authentication

keda_triggerauths_list_tool(namespace)
keda_triggerauth_get_tool(name, namespace)

KEDA-Managed HPAs

keda_hpa_list_tool(namespace)

See KEDA-TRIGGERS.md for trigger configurations.

Common KEDA Triggers

Queue-Based Scaling (AWS SQS)

apiVersion: keda.sh/v1alpha1
kind: ScaledObject
metadata:
  name: sqs-scaler
spec:
  scaleTargetRef:
    name: queue-processor
  minReplicaCount: 0
  maxReplicaCount: 100
  triggers:
  - type: aws-sqs-queue
    metadata:
      queueURL: https://sqs.region.amazonaws.com/...
      queueLength: "5"

Cron-Based Scaling

triggers:
- type: cron
  metadata:
    timezone: America/New_York
    start: 0 8 * * 1-5
    end: 0 18 * * 1-5
    desiredReplicas: "10"

Prometheus Metrics

triggers:
- type: prometheus
  metadata:
    serverAddress: http://prometheus:9090
    metricName: http_requests_total
    query: sum(rate(http_requests_total{app="myapp"}[2m]))
    threshold: "100"

Scaling Strategies

StrategyToolUse Case
CPU/MemoryHPASteady traffic patterns
Custom metricsHPA v2Business metrics
Event-drivenKEDAQueue processing, cron
VerticalVPARight-size requests
Scale to zeroKEDACost savings, idle workloads

Cost-Optimized Autoscaling

Scale to Zero with KEDA

Reduce costs for idle workloads:

keda_scaledobjects_list_tool(namespace)

Right-Size with VPA

Get recommendations and apply:

get_resource_recommendations(namespace)

Troubleshooting

HPA Not Scaling

get_hpa(namespace)
get_pod_metrics(name, namespace)
describe_pod(name, namespace)

KEDA Not Triggering

keda_scaledobject_get_tool(name, namespace)
get_events(namespace)

Common Issues

SymptomCheckResolution
HPA unknownMetrics serverInstall metrics-server
KEDA no scaleTrigger authCheck TriggerAuthentication
VPA not updatingUpdate modeSet updateMode: Auto
Scale down slowStabilizationAdjust stabilizationWindowSeconds

Best Practices

  1. Always Set Resource Requests - HPA requires requests to calculate utilization
  2. Use Multiple Metrics - Combine CPU + custom metrics for accuracy
  3. Stabilization Windows - Prevent flapping with scaleDown stabilization
  4. Scale to Zero Carefully - Consider cold start time

Related Skills

┌ stats

installs/wk0
░░░░░░░░░░
github stars847
██████████
first seenMar 17, 2026
└────────────

┌ repo

rohitg00/kubectl-mcp-server
by rohitg00
└────────────

┌ tags

└────────────