Data Science

Managing ML Projects with Google Cloud

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This course explores enterprise machine learning applications, assesses the viability of ML use cases, and addresses the prerequisites, data characteristics, and critical factors for developing and managing ML models.

Key AI Functions:Machine Learning, Google Cloud, Digital Transformation

Description for Managing ML Projects with Google Cloud

  • Investigate the most prevalent applications of machine learning that are implemented by enterprises.
  • Evaluate the viability of your own ML use case and its potential to significantly influence your business.
  • Determine the prerequisites for the development, training, and assessment of an artificial intelligence (AI) model.
  • Define the data characteristics and biases that influence the quality of ML models and identify the critical factors that must be taken into account when managing ML initiatives.
  • Level: Beginner

    Certification Degree: Yes

    Languages the Course is Available: 1

    Offered by: On Coursera provided by Google Cloud Training

    Duration: 13 hours (approximately)

    Schedule: Flexible

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