installation_guide.md 6.87 KB
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# Installation Guide for Dynamo Kubernetes Platform
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Deploy and manage Dynamo inference graphs on Kubernetes with automated orchestration and scaling, using the Dynamo Kubernetes Platform.
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## Quick Start Paths
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Platform is installed using Dynamo Kubernetes Platform [helm chart](../../../deploy/cloud/helm/platform/README.md).

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**Path A: Production Install**
Install from published artifacts on your existing cluster → [Jump to Path A](#path-a-production-install)
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**Path B: Local Development**
Set up Minikube first → [Minikube Setup](minikube.md) → Then follow Path A
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**Path C: Custom Development**
Build from source for customization → [Jump to Path C](#path-c-custom-development)
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## Prerequisites
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```bash
# Required tools
kubectl version --client  # v1.24+
helm version             # v3.0+
docker version           # Running daemon

# Set your inference runtime image
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export RELEASE_VERSION=0.x.x # any version of Dynamo 0.3.2+ listed at https://github.com/ai-dynamo/dynamo/releases
export DYNAMO_IMAGE=nvcr.io/nvidia/ai-dynamo/vllm-runtime:${RELEASE_VERSION}
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# Also available: sglang-runtime, tensorrtllm-runtime
```
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> [!TIP]
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> No cluster? See [Minikube Setup](minikube.md) for local development.
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## Path A: Production Install
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Install from [NGC published artifacts](https://catalog.ngc.nvidia.com/orgs/nvidia/teams/ai-dynamo/collections/ai-dynamo/artifacts) in 3 steps.
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```bash
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# 1. Set environment
export NAMESPACE=dynamo-kubernetes
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export RELEASE_VERSION=0.x.x # any version of Dynamo 0.3.2+ listed at https://github.com/ai-dynamo/dynamo/releases
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# 2. Install CRDs
helm fetch https://helm.ngc.nvidia.com/nvidia/ai-dynamo/charts/dynamo-crds-${RELEASE_VERSION}.tgz
helm install dynamo-crds dynamo-crds-${RELEASE_VERSION}.tgz --namespace default

# 3. Install Platform
kubectl create namespace ${NAMESPACE}
helm fetch https://helm.ngc.nvidia.com/nvidia/ai-dynamo/charts/dynamo-platform-${RELEASE_VERSION}.tgz
helm install dynamo-platform dynamo-platform-${RELEASE_VERSION}.tgz --namespace ${NAMESPACE}
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```

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> [!TIP]
> By default, Grove and Kai Scheduler are NOT installed. You can enable them by setting the following flags in the helm install command:

```bash
--set "grove.enabled=true"
--set "kai-scheduler.enabled=true"
```

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> [!TIP]
> By default, Model Express Server is not used.
> If you wish to use an existing Model Express Server, you can set the modelExpressURL to the existing server's URL in the helm install command:

```bash
--set "dynamo-operator.modelExpressURL=http://model-express-server.model-express.svc.cluster.local:8080"
```

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[Verify Installation](#verify-installation)
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## Path C: Custom Development
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Build and deploy from source for customization.
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```bash
# 1. Set environment
export NAMESPACE=dynamo-cloud
export DOCKER_SERVER=nvcr.io/nvidia/ai-dynamo/  # or your registry
export DOCKER_USERNAME='$oauthtoken'
export DOCKER_PASSWORD=<YOUR_NGC_CLI_API_KEY>
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export IMAGE_TAG=${RELEASE_VERSION}
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# 2. Build operator
cd deploy/cloud/operator
earthly --push +docker --DOCKER_SERVER=$DOCKER_SERVER --IMAGE_TAG=$IMAGE_TAG
cd -

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# 3. Create namespace and secrets to be able to pull the operator image
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kubectl create namespace ${NAMESPACE}
kubectl create secret docker-registry docker-imagepullsecret \
  --docker-server=${DOCKER_SERVER} \
  --docker-username=${DOCKER_USERNAME} \
  --docker-password=${DOCKER_PASSWORD} \
  --namespace=${NAMESPACE}

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# 4. Install CRDs
helm upgrade --install dynamo-crds ./crds/ --namespace default
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# 5. Install Platform
helm repo add bitnami https://charts.bitnami.com/bitnami
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helm dep build ./platform/
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helm upgrade --install dynamo-platform ./platform/ \
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  --namespace ${NAMESPACE} \
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  --set dynamo-operator.controllerManager.manager.image.repository=${DOCKER_SERVER}/dynamo-operator \
  --set dynamo-operator.controllerManager.manager.image.tag=${IMAGE_TAG} \
  --set dynamo-operator.imagePullSecrets[0].name=docker-imagepullsecret
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```
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[Verify Installation](#verify-installation)
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## Verify Installation
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```bash
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# Check CRDs
kubectl get crd | grep dynamo
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# Check operator and platform pods
kubectl get pods -n ${NAMESPACE}
# Expected: dynamo-operator-* and etcd-* pods Running
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```
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## Next Steps
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1. **Deploy Model/Workflow**
   ```bash
   # Example: Deploy a vLLM workflow with Qwen3-0.6B using aggregated serving
   kubectl apply -f components/backends/vllm/deploy/agg.yaml -n ${NAMESPACE}
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   # Port forward and test
   kubectl port-forward svc/agg-vllm-frontend 8000:8000 -n ${NAMESPACE}
   curl http://localhost:8000/v1/models
   ```
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2. **Explore Backend Guides**
   - [vLLM Deployments](../../../components/backends/vllm/deploy/README.md)
   - [SGLang Deployments](../../../components/backends/sglang/deploy/README.md)
   - [TensorRT-LLM Deployments](../../../components/backends/trtllm/deploy/README.md)
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3. **Optional:**
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   - [Set up Prometheus & Grafana](metrics.md)
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   - [SLA Planner Deployment Guide](sla_planner_deployment.md) (for advanced SLA-aware scheduling and autoscaling)
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## Troubleshooting
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**Pods not starting?**
```bash
kubectl describe pod <pod-name> -n ${NAMESPACE}
kubectl logs <pod-name> -n ${NAMESPACE}
```
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**HuggingFace model access?**
```bash
kubectl create secret generic hf-token-secret \
  --from-literal=HF_TOKEN=${HF_TOKEN} \
  -n ${NAMESPACE}
```
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**Bitnami etcd "unrecognized" image?**

```bash
ERROR: Original containers have been substituted for unrecognized ones. Deploying this chart with non-standard containers is likely to cause degraded security and performance, broken chart features, and missing environment variables.
```
This error that you might encounter during helm install is due to bitnami changing their docker repository to a [secure one](https://github.com/bitnami/charts/tree/main/bitnami/etcd#%EF%B8%8F-important-notice-upcoming-changes-to-the-bitnami-catalog).

just add the following to the helm install command:
```bash
--set "etcd.image.repository=bitnamilegacy/etcd" --set "etcd.global.security.allowInsecureImages=true"
```

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**Clean uninstall?**
```bash
./uninstall.sh  # Removes all CRDs and platform
```
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## Advanced Options
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- [Helm Chart Configuration](../../../deploy/cloud/helm/platform/README.md)
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- [GKE-specific setup](gke_setup.md)
- [Create custom deployments](create_deployment.md)
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- [Dynamo Operator details](dynamo_operator.md)
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- [Model Express Server details](https://github.com/ai-dynamo/modelexpress)