(deployment-k8s)=

# Using Kubernetes

Deploying vLLM on Kubernetes is a scalable and efficient way to serve machine learning models. This guide walks you through deploying vLLM using native Kubernetes.

* [Deployment with CPUs](#deployment-with-cpus)
* [Deployment with GPUs](#deployment-with-gpus)

Alternatively, you can deploy vLLM to Kubernetes using any of the following:
* [Helm](frameworks/helm.md)
* [InftyAI/llmaz](integrations/llmaz.md)
* [KServe](integrations/kserve.md)
* [kubernetes-sigs/lws](frameworks/lws.md)
* [meta-llama/llama-stack](integrations/llamastack.md)
* [substratusai/kubeai](integrations/kubeai.md)
* [vllm-project/aibrix](https://github.com/vllm-project/aibrix)
* [vllm-project/production-stack](integrations/production-stack.md)

## Deployment with CPUs

:::{note}
The use of CPUs here is for demonstration and testing purposes only and its performance will not be on par with GPUs.
:::

First, create a Kubernetes PVC and Secret for downloading and storing Hugging Face model:

```bash
cat <<EOF |kubectl apply -f -
apiVersion: v1
kind: PersistentVolumeClaim
metadata:
  name: vllm-models
spec:
  accessModes:
    - ReadWriteOnce
  volumeMode: Filesystem
  resources:
    requests:
      storage: 50Gi
---
apiVersion: v1
kind: Secret
metadata:
  name: hf-token-secret
type: Opaque
data:
  token: $(HF_TOKEN)
```

Next, start the vLLM server as a Kubernetes Deployment and Service:

```bash
cat <<EOF |kubectl apply -f -
apiVersion: apps/v1
kind: Deployment
metadata:
  name: vllm-server
spec:
  replicas: 1
  selector:
    matchLabels:
      app.kubernetes.io/name: vllm
  template:
    metadata:
      labels:
        app.kubernetes.io/name: vllm
    spec:
      containers:
      - name: vllm
        image: vllm/vllm-openai:latest
        command: ["/bin/sh", "-c"]
        args: [
          "vllm serve meta-llama/Llama-3.2-1B-Instruct"
        ]
        env:
        - name: HUGGING_FACE_HUB_TOKEN
          valueFrom:
            secretKeyRef:
              name: hf-token-secret
              key: token
        ports:
          - containerPort: 8000
        volumeMounts:
          - name: llama-storage
            mountPath: /root/.cache/huggingface
      volumes:
      - name: llama-storage
        persistentVolumeClaim:
          claimName: vllm-models
---
apiVersion: v1
kind: Service
metadata:
  name: vllm-server
spec:
  selector:
    app.kubernetes.io/name: vllm
  ports:
  - protocol: TCP
    port: 8000
    targetPort: 8000
  type: ClusterIP
EOF
```

We can verify that the vLLM server has started successfully via the logs (this might take a couple of minutes to download the model):

```console
kubectl logs -l app.kubernetes.io/name=vllm
...
INFO:     Started server process [1]
INFO:     Waiting for application startup.
INFO:     Application startup complete.
INFO:     Uvicorn running on http://0.0.0.0:8000 (Press CTRL+C to quit)
```

## Deployment with GPUs

**Pre-requisite**: Ensure that you have a running [Kubernetes cluster with GPUs](https://kubernetes.io/docs/tasks/manage-gpus/scheduling-gpus/).

1. Create a PVC, Secret and Deployment for vLLM

      PVC is used to store the model cache and it is optional, you can use hostPath or other storage options

      ```yaml
      apiVersion: v1
      kind: PersistentVolumeClaim
      metadata:
        name: mistral-7b
        namespace: default
      spec:
        accessModes:
        - ReadWriteOnce
        resources:
          requests:
            storage: 50Gi
        storageClassName: default
        volumeMode: Filesystem
      ```

      Secret is optional and only required for accessing gated models, you can skip this step if you are not using gated models

      ```yaml
      apiVersion: v1
      kind: Secret
      metadata:
        name: hf-token-secret
        namespace: default
      type: Opaque
      stringData:
        token: "REPLACE_WITH_TOKEN"
      ```

      Next to create the deployment file for vLLM to run the model server. The following example deploys the `Mistral-7B-Instruct-v0.3` model.

      Here are two examples for using NVIDIA GPU and AMD GPU.

      NVIDIA GPU:

      ```yaml
      apiVersion: apps/v1
      kind: Deployment
      metadata:
        name: mistral-7b
        namespace: default
        labels:
          app: mistral-7b
      spec:
        replicas: 1
        selector:
          matchLabels:
            app: mistral-7b
        template:
          metadata:
            labels:
              app: mistral-7b
          spec:
            volumes:
            - name: cache-volume
              persistentVolumeClaim:
                claimName: mistral-7b
            # vLLM needs to access the host's shared memory for tensor parallel inference.
            - name: shm
              emptyDir:
                medium: Memory
                sizeLimit: "2Gi"
            containers:
            - name: mistral-7b
              image: vllm/vllm-openai:latest
              command: ["/bin/sh", "-c"]
              args: [
                "vllm serve mistralai/Mistral-7B-Instruct-v0.3 --trust-remote-code --enable-chunked-prefill --max_num_batched_tokens 1024"
              ]
              env:
              - name: HUGGING_FACE_HUB_TOKEN
                valueFrom:
                  secretKeyRef:
                    name: hf-token-secret
                    key: token
              ports:
              - containerPort: 8000
              resources:
                limits:
                  cpu: "10"
                  memory: 20G
                  nvidia.com/gpu: "1"
                requests:
                  cpu: "2"
                  memory: 6G
                  nvidia.com/gpu: "1"
              volumeMounts:
              - mountPath: /root/.cache/huggingface
                name: cache-volume
              - name: shm
                mountPath: /dev/shm
              livenessProbe:
                httpGet:
                  path: /health
                  port: 8000
                initialDelaySeconds: 60
                periodSeconds: 10
              readinessProbe:
                httpGet:
                  path: /health
                  port: 8000
                initialDelaySeconds: 60
                periodSeconds: 5
      ```

      AMD GPU:

      You can refer to the `deployment.yaml` below if using AMD ROCm GPU like MI300X.

      ```yaml
      apiVersion: apps/v1
      kind: Deployment
      metadata:
        name: mistral-7b
        namespace: default
        labels:
          app: mistral-7b
      spec:
        replicas: 1
        selector:
          matchLabels:
            app: mistral-7b
        template:
          metadata:
            labels:
              app: mistral-7b
          spec:
            volumes:
            # PVC
            - name: cache-volume
              persistentVolumeClaim:
                claimName: mistral-7b
            # vLLM needs to access the host's shared memory for tensor parallel inference.
            - name: shm
              emptyDir:
                medium: Memory
                sizeLimit: "8Gi"
            hostNetwork: true
            hostIPC: true
            containers:
            - name: mistral-7b
              image: rocm/vllm:rocm6.2_mi300_ubuntu20.04_py3.9_vllm_0.6.4
              securityContext:
                seccompProfile:
                  type: Unconfined
                runAsGroup: 44
                capabilities:
                  add:
                  - SYS_PTRACE
              command: ["/bin/sh", "-c"]
              args: [
                "vllm serve mistralai/Mistral-7B-v0.3 --port 8000 --trust-remote-code --enable-chunked-prefill --max_num_batched_tokens 1024"
              ]
              env:
              - name: HUGGING_FACE_HUB_TOKEN
                valueFrom:
                  secretKeyRef:
                    name: hf-token-secret
                    key: token
              ports:
              - containerPort: 8000
              resources:
                limits:
                  cpu: "10"
                  memory: 20G
                  amd.com/gpu: "1"
                requests:
                  cpu: "6"
                  memory: 6G
                  amd.com/gpu: "1"
              volumeMounts:
              - name: cache-volume
                mountPath: /root/.cache/huggingface
              - name: shm
                mountPath: /dev/shm
      ```

      You can get the full example with steps and sample yaml files from <https://github.com/ROCm/k8s-device-plugin/tree/master/example/vllm-serve>.

2. Create a Kubernetes Service for vLLM

      Next, create a Kubernetes Service file to expose the `mistral-7b` deployment:

      ```yaml
      apiVersion: v1
      kind: Service
      metadata:
        name: mistral-7b
        namespace: default
      spec:
        ports:
        - name: http-mistral-7b
          port: 80
          protocol: TCP
          targetPort: 8000
        # The label selector should match the deployment labels & it is useful for prefix caching feature
        selector:
          app: mistral-7b
        sessionAffinity: None
        type: ClusterIP
      ```

3. Deploy and Test

      Apply the deployment and service configurations using `kubectl apply -f <filename>`:

      ```console
      kubectl apply -f deployment.yaml
      kubectl apply -f service.yaml
      ```

      To test the deployment, run the following `curl` command:

      ```console
      curl http://mistral-7b.default.svc.cluster.local/v1/completions \
        -H "Content-Type: application/json" \
        -d '{
              "model": "mistralai/Mistral-7B-Instruct-v0.3",
              "prompt": "San Francisco is a",
              "max_tokens": 7,
              "temperature": 0
            }'
      ```

      If the service is correctly deployed, you should receive a response from the vLLM model.

## Conclusion

Deploying vLLM with Kubernetes allows for efficient scaling and management of ML models leveraging GPU resources. By following the steps outlined above, you should be able to set up and test a vLLM deployment within your Kubernetes cluster. If you encounter any issues or have suggestions, please feel free to contribute to the documentation.
