Skillquality 0.50

Airunway Aks Setup

Azure Skills skill by Microsoft

Price
free
Protocol
skill
Verified
no

What it does

AI Runway AKS Setup

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.

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.

Prerequisites

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.

Quick Reference

PropertyValue
Best forEnd-to-end AI Runway onboarding on AKS
CLI toolskubectl, make, curl
MCP toolsNone
Related skillsazure-kubernetes (cluster setup), azure-diagnostics (troubleshooting)

When to Use This Skill

Use this skill when the user wants to:

  • Set up AI Runway on an existing AKS cluster from scratch
  • Install the AI Runway controller and CRDs
  • Assess GPU hardware compatibility for model deployment
  • Choose and install an inference provider (KAITO, Dynamo, KubeRay)
  • Deploy their first AI model to AKS via AI Runway
  • Resume a partially-complete AI Runway setup from a specific step

MCP Tools

This skill uses no MCP tools. All cluster operations are performed directly via kubectl and make.

Rules

  1. Execute steps in sequence — load the reference for each step as you reach it
  2. Report cluster state at each step: ✓ healthy, ✗ missing/failed
  3. Ask for user confirmation before any install or deployment action
  4. If a step is already complete, report status and skip to the next step
  5. If the user provides skip-to-step N, start at step N; assume prior steps are complete

Steps

#StepReference
1Cluster Verification — context check, node inventory, GPU detectionstep-1-verify.md
2Controller Installation — CRD + controller deploymentstep-2-controller.md
3GPU Assessment — detect GPU models, flag dtype/attention constraintsstep-3-gpu.md
4Provider Setup — recommend and install inference providerstep-4-provider.md
5First Deployment — pick a model, deploy, verify Readystep-5-deploy.md
6Summary — recap, smoke test, next stepsstep-6-summary.md

Error Handling

Error / SymptomLikely CauseRemediation
No kubeconfig contextNot connected to a clusterRun az aks get-credentials or equivalent
Controller in CrashLoopBackOffConfig or RBAC issuekubectl logs -n airunway-system -l control-plane=controller-manager --previous
Provider not readyImage pull or RBAC issuekubectl logs <pod-name> -n <namespace> for the provider pod
ModelDeployment stuck in PendingGPU scheduling failure or provider not readykubectl describe modeldeployment <name> -n <namespace> events
bfloat16 errors at inferenceT4 or V100 lacks bfloat16 supportAdd --dtype float16 to serving args

For full error handling and rollback procedures, see troubleshooting.md.

Capabilities

skillsource-microsoftcategory-azure-skills

Install

Quality

0.50/ 1.00

deterministic score 0.50 from registry signals: · indexed on skills.sh · published under microsoft/azure-skills

Provenance

Indexed fromskills_sh
Also seen ingithub
Enriched2026-04-22 05:40:24Z · deterministic:skill:v1 · v1
First seen2026-04-21
Last seen2026-04-22

Agent access