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Added docs for raw deployment autoscaling. #312
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# Autoscale InferenceService with inference workload | ||
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## InferenceService with target concurrency | ||
## Autoscaler for kserve's Serverless | ||
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### InferenceService with target concurrency | ||
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### Create `InferenceService` | ||
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@@ -492,4 +494,89 @@ This allows more flexibility in terms of the autoscaling configuration. In a typ | |
- mnist | ||
``` | ||
Apply the `autoscale-adv.yaml` to create the Autoscale InferenceService. | ||
The default for scaleMetric is `concurrency` and possible values are `concurrency`, `rps`, `cpu` and `memory`. | ||
The default for scaleMetric is `concurrency` and possible values are `concurrency`, `rps`, `cpu` and `memory`. | ||
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## Autoscaler for Kserve's Raw Deployment Mode | ||
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KServe supports `RawDeployment` mode to enable `InferenceService` deployment with Kubernetes resources [`Deployment`](https://kubernetes.io/docs/concepts/workloads/controllers/deployment), [`Service`](https://kubernetes.io/docs/concepts/services-networking/service), [`Ingress`](https://kubernetes.io/docs/concepts/services-networking/ingress) and [`Horizontal Pod Autoscaler`](https://kubernetes.io/docs/tasks/run-application/horizontal-pod-autoscale). Comparing to serverless deployment it unlocks Knative limitations such as mounting multiple volumes, on the other hand `Scale down and from Zero` is not supported in `RawDeployment` mode. | ||
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### HPA in Raw Deployment | ||
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When using Kserve with the `RawDeployment` mode, Knative is not installed. In this mode, if you deploy an `InferenceService`, Kserve uses **Kubernetes’ Horizontal Pod Autoscaler (HPA)** for autoscaling instead of **Knative Pod Autoscaler (KPA)**. For more information about Kserve's autoscaler, you can refer [`this`](https://kserve.github.io/website/master/modelserving/v1beta1/torchserve/#knative-autoscaler) | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. better to refer to the official Knative autoscaler doc. |
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=== "New Schema" | ||
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```yaml | ||
apiVersion: "serving.kserve.io/v1beta1" | ||
kind: "InferenceService" | ||
metadata: | ||
name: "sklearn-iris-hpa" | ||
annotations: | ||
serving.kserve.io/deploymentMode: RawDeployment | ||
serving.kserve.io/autoscalerClass: hpa | ||
serving.kserve.io/metric: cpu | ||
serving.kserve.io/targetUtilizationPercentage: "80" | ||
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There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. these are the annotations for the old schema There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. also document the possible supported metric type for RawDeployment mode |
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spec: | ||
predictor: | ||
model: | ||
modelFormat: | ||
name: sklearn | ||
storageUri: "gs://kfserving-examples/models/sklearn/1.0/model" | ||
``` | ||
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=== "Old Schema" | ||
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```yaml | ||
apiVersion: "serving.kserve.io/v1beta1" | ||
kind: "InferenceService" | ||
metadata: | ||
name: "sklearn-iris-hpa" | ||
annotations: | ||
serving.kserve.io/deploymentMode: RawDeployment | ||
serving.kserve.io/autoscalerClass: hpa | ||
serving.kserve.io/metric: cpu | ||
serving.kserve.io/targetUtilizationPercentage: "80" | ||
spec: | ||
predictor: | ||
sklearn: | ||
storageUri: "gs://kfserving-examples/models/sklearn/1.0/model" | ||
``` | ||
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### Disable HPA in Raw Deployment | ||
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If you want to control the scaling of the deployment created by KServe inference service with an external tool like [`KEDA`](https://keda.sh/). You can disable KServe's creation of the **HPA** by replacing **external** value with autoscaler class annotaion that should be disable the creation of HPA | ||
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=== "New Schema" | ||
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```yaml | ||
apiVersion: "serving.kserve.io/v1beta1" | ||
kind: "InferenceService" | ||
metadata: | ||
annotations: | ||
serving.kserve.io/deploymentMode: RawDeployment | ||
serving.kserve.io/autoscalerClass: external | ||
name: "sklearn-iris" | ||
spec: | ||
predictor: | ||
model: | ||
modelFormat: | ||
name: sklearn | ||
storageUri: "gs://kfserving-examples/models/sklearn/1.0/model" | ||
``` | ||
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=== "Old Schema" | ||
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```yaml | ||
apiVersion: "serving.kserve.io/v1beta1" | ||
kind: "InferenceService" | ||
metadata: | ||
annotations: | ||
serving.kserve.io/deploymentMode: RawDeployment | ||
serving.kserve.io/autoscalerClass: external | ||
name: "sklearn-iris" | ||
spec: | ||
predictor: | ||
sklearn: | ||
storageUri: "gs://kfserving-examples/models/sklearn/1.0/model" | ||
``` |
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Maybe worth separate page for this, this doc is a bit too long.