Exam Professional Machine Learning Engineer topic 1 question 278 discussion - ExamTopics


This question focuses on optimizing XGBoost model training on Vertex AI using custom containers and minimizing startup time by efficiently managing data and dependencies.
AI Summary available β€” skim the key points instantly. Show AI Generated Summary
Show AI Generated Summary

You need to train an XGBoost model on a small dataset. Your training code requires custom dependencies. You want to minimize the startup time of your training job. How should you set up your Vertex AI custom training job?

  • A. Store the data in a Cloud Storage bucket, and create a custom container with your training application. In your training application, read the data from Cloud Storage and train the model.
  • B. Use the XGBoost prebuilt custom container. Create a Python source distribution that includes the data and installs the dependencies at runtime. In your training application, load the data into a pandas DataFrame and train the model.
  • C. Create a custom container that includes the data. In your training application, load the data into a pandas DataFrame and train the model.
  • D. Store the data in a Cloud Storage bucket, and use the XGBoost prebuilt custom container to run your training application. Create a Python source distribution that installs the dependencies at runtime. In your training application, read the data from Cloud Storage and train the model.
Show Suggested Answer Hide Answer
Suggested Answer: A πŸ—³οΈ

Was this article displayed correctly? Not happy with what you see?

Tabs Reminder: Tabs piling up in your browser? Set a reminder for them, close them and get notified at the right time.

Try our Chrome extension today!


Share this article with your
friends and colleagues.
Earn points from views and
referrals who sign up.
Learn more

Facebook

Save articles to reading lists
and access them on any device


Share this article with your
friends and colleagues.
Earn points from views and
referrals who sign up.
Learn more

Facebook

Save articles to reading lists
and access them on any device