Exam Professional Machine Learning Engineer topic 1 question 204 discussion - ExamTopics


This question presents a machine learning problem involving damaged vehicle image analysis and explores efficient model training strategies using Google Cloud services.
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You work for an auto insurance company. You are preparing a proof-of-concept ML application that uses images of damaged vehicles to infer damaged parts. Your team has assembled a set of annotated images from damage claim documents in the company’s database. The annotations associated with each image consist of a bounding box for each identified damaged part and the part name. You have been given a sufficient budget to train models on Google Cloud. You need to quickly create an initial model. What should you do?

  • A. Download a pre-trained object detection model from TensorFlow Hub. Fine-tune the model in Vertex AI Workbench by using the annotated image data.
  • B. Train an object detection model in AutoML by using the annotated image data.
  • C. Create a pipeline in Vertex AI Pipelines and configure the AutoMLTrainingJobRunOp component to train a custom object detection model by using the annotated image data.
  • D. Train an object detection model in Vertex AI custom training by using the annotated image data.
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Suggested Answer: B 🗳️

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