From azure
Guides users through setting up AI Runway on AKS: cluster verification, controller install, GPU assessment, provider setup, and first model deployment.
How this skill is triggered — by the user, by Claude, or both
Slash command
/azure:airunway-aks-setup [skip-to-step N][skip-to-step N]The summary Claude sees in its skill listing — used to decide when to auto-load this skill
This skill walks users from a bare Kubernetes cluster to a running AI model deployment. Follow each step in sequence unless the user provides `skip-to-step N` to resume from a specific phase.
references/gpu-profiles.mdreferences/model-sizing.mdreferences/powershell-notes.mdreferences/steps/step-1-verify.mdreferences/steps/step-2-controller.mdreferences/steps/step-3-gpu.mdreferences/steps/step-4-provider.mdreferences/steps/step-5-deploy.mdreferences/steps/step-6-summary.mdreferences/troubleshooting.mdThis skill walks users from a bare Kubernetes cluster to a running AI model deployment. Follow each step in sequence unless the user provides skip-to-step N to resume from a specific phase.
Cost awareness: GPU node pools incur significant compute charges (A100-80GB can cost $3–5+/hr). Confirm the user understands cost implications before provisioning GPU resources.
This skill assumes an AKS cluster already exists. If the user does not have a cluster, hand off to the azure-kubernetes skill first to provision one (with a GPU node pool unless CPU-only inference is acceptable), then return here.
| Property | Value |
|---|---|
| Best for | End-to-end AI Runway onboarding on AKS |
| CLI tools | kubectl, make, curl |
| MCP tools | None |
| Related skills | azure-kubernetes (cluster setup), azure-diagnostics (troubleshooting) |
Use this skill when the user wants to:
This skill uses no MCP tools. All cluster operations are performed directly via kubectl and make.
skip-to-step N, start at step N; assume prior steps are complete| # | Step | Reference |
|---|---|---|
| 1 | Cluster Verification — context check, node inventory, GPU detection | step-1-verify.md |
| 2 | Controller Installation — CRD + controller deployment | step-2-controller.md |
| 3 | GPU Assessment — detect GPU models, flag dtype/attention constraints | step-3-gpu.md |
| 4 | Provider Setup — recommend and install inference provider | step-4-provider.md |
| 5 | First Deployment — pick a model, deploy, verify Ready | step-5-deploy.md |
| 6 | Summary — recap, smoke test, next steps | step-6-summary.md |
| Error / Symptom | Likely Cause | Remediation |
|---|---|---|
| No kubeconfig context | Not connected to a cluster | Run az aks get-credentials or equivalent |
| Controller in CrashLoopBackOff | Config or RBAC issue | kubectl logs -n airunway-system -l control-plane=controller-manager --previous |
| Provider not ready | Image pull or RBAC issue | kubectl logs <pod-name> -n <namespace> for the provider pod |
| ModelDeployment stuck in Pending | GPU scheduling failure or provider not ready | kubectl describe modeldeployment <name> -n <namespace> events |
bfloat16 errors at inference | T4 or V100 lacks bfloat16 support | Add --dtype float16 to serving args |
For full error handling and rollback procedures, see troubleshooting.md.
npx claudepluginhub synextra-ltd/azure-skills13plugins reuse this skill
First indexed Jun 3, 2026
Showing the 6 earliest of 13 plugins
Guides users through setting up AI Runway on AKS: cluster verification, controller install, GPU assessment, provider setup, and first model deployment.
Guides AKS development with troubleshooting, best practices, architecture, security, and deployment. Handles AI/ML, Wasm, Istio, Dapr, GPU, and PCI workloads.
Guides on Azure Kubernetes Service (AKS) Automatic mode GA 2025: Karpenter autoscaling, HPA/VPA/KEDA, workload identity, networking, billing model, and cluster creation via az CLI.