Data Science

How Google does ML

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Learn to use Vertex AI on Google Cloud for no-code AutoML model development, training, and deployment, while integrating ML with cloud tools and adhering to Responsible AI principles.

Key AI Functions:Inclusive ML, Bigquery, Application Programming Interfaces (API), Machine Learning, Google Cloud Platform

Description for How Google does ML

  • Describe the Vertex AI Platform and its application in the rapid development, training, and deployment of AutoML machine learning models without the need for coding.
  • Explain the most effective methods for integrating machine learning with Google Cloud.
  • Utilize the tools and environment of Google Cloud to conduct machine learning.
  • Demonstrate the principles of Responsible AI.
  • Level: Beginner

    Certification Degree: Yes

    Languages the Course is Available: 1

    Offered by: On Coursera provided by Google Cloud Training

    Duration: 11 hours (approximately)

    Schedule: Flexible

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