Data Science

Microsoft Azure ML for Data Scientists

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Discover the process of identifying machine learning model types, training and deploying predictive models using Azure Machine Learning's automated capabilities, developing regression, classification, and clustering models with Azure Machine Learning Designer, and deploying models seamlessly without scripting.

Key AI Functions:Microsoft Azure, Machine Learning, regression, Supervised Learning, Regression Analysis

Description for Microsoft Azure ML for Data Scientists

  • Identify various types of machine learning models.
  • How to train and deploy a predictive model using Azure Machine Learning's automated machine learning capability
  • Develop regression, classification, and clustering models with the Azure Machine Learning Designer.
  • Utilize Azure Machine Learning to generate and distribute models without the need to write code.
  • Level: Intermediate

    Certification Degree: Yes

    Languages the Course is Available: 21

    Offered by: On Coursera provided by Microsoft

    Duration: 11 hours (approximately)

    Schedule: Flexible

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