CIFAR10 Image Classifier Explanations¶
We will use a Tensorflow classifier built on CIFAR10 image dataset which is a 10 class image dataset to show the example of explanation on image data.
Create the InferenceService with Alibi Explainer¶
apiVersion: "serving.kserve.io/v1beta1"
kind: "InferenceService"
metadata:
  name: "cifar10"
spec:
  predictor:
    tensorflow:
      storageUri: "gs://seldon-models/tfserving/cifar10/resnet32"
      resources:
        requests:
          cpu: 0.1
          memory: 5Gi   
        limits:
          memory: 10Gi
  explainer:
    alibi:
      type: AnchorImages
      storageUri: "gs://seldon-models/tfserving/cifar10/explainer-py36-0.5.2"
      config:
        batch_size: "40"
        stop_on_first: "True"
      resources:
        requests:
          cpu: 0.1
          memory: 5Gi 
        limits:
          memory: 10Gi
            Note
The InferenceService resource describes:
- A pretrained tensorflow model stored on a Google bucket
 - An AnchorImage Seldon Alibi Explainer, see the Alibi Docs for further details.
 
Test on notebook¶
Run this example using the Jupyter notebook.
Once created you will be able to test the predictions:

And then get an explanation for it:
