Which architecture should you use?

You have trained a model on a dataset that required computationally expensive preprocessing operations. You need to execute the same preprocessing at prediction time. You deployed the model on AI Platform for high-throughput online prediction. Which architecture should you use?
A. Validate the accuracy of the model that you trained on preprocessed data.
Create a new model that uses the raw data and is available in real time. Deploy the new model onto AI Platform for online prediction.
B. Send incoming prediction requests to a Pub/Sub topic.
Transform the incoming data using a Dataflow job.
Submit a prediction request to AI Platform using the transformed data. Write the predictions to an outbound Pub/Sub queue.
C. Stream incoming prediction request data into Cloud Spanner.
Create a view to abstract your preprocessing logic.
Query the view every second for new records.
Submit a prediction request to AI Platform using the transformed data. Write the predictions to an outbound Pub/Sub queue.
D. Send incoming prediction requests to a Pub/Sub topic.
Set up a Cloud Function that is triggered when messages are published to the Pub/Sub topic.
Implement your preprocessing logic in the Cloud Function.
Submit a prediction request to AI Platform using the transformed data. Write the predictions to an outbound Pub/Sub queue.

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