Microsoft Certified Azure Data Scientist Associate

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Microsoft Certified Azure Data Scientist Associate
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G1737

Casablanca (Morocco)

10 Aug 2026 -14 Aug 2026

5145

Overview

Introduction:

Data science within cloud environments represents a structured function that integrates data processing, machine learning models, and scalable computing systems to support advanced analytics. Microsoft Azure provides a unified platform that aligns data engineering, model development, and deployment frameworks within enterprise environments. This training program presents Azure data science frameworks, machine learning models, and analytical structures aligned with cloud-based environments. It provides an institutional perspective on how data solutions are structured, deployed, and managed to support decision-making and predictive capabilities.

Program Objectives:

By the end of this program, participants will be able to:

  • Analyze Azure data science and machine learning frameworks within cloud environments.

  • Evaluate data preparation, processing, and feature engineering structures.

  • Assess model development and training frameworks within machine learning systems.

  • Examine model deployment and lifecycle management structures.

  • Explore performance monitoring and optimization frameworks within data science environments.

Target Audience:

  • Data scientists and analysts.

  • Machine learning engineers.

  • Cloud and AI professionals.

  • IT and data engineering specialists.

  • Professionals working with data-driven solutions.

Program Outline:

Unit 1:

Foundations of Azure Data Science and Cloud Architecture:

  • Azure platform components within data science environments.

  • Cloud architecture supporting analytics workloads.

  • Data science lifecycle within Azure systems.

  • Integration of data services within cloud environments.

  • Role of cloud platforms in scalable analytics.

Unit 2:

Data Preparation and Feature Engineering:

  • Data ingestion structures within Azure environments.

  • Data transformation frameworks across datasets.

  • Feature engineering within machine learning workflows.

  • Data quality considerations within analytical systems.

  • Impact of preparation on model accuracy.

Unit 3:

Machine Learning Model Development and Training:

  • Model selection within machine learning environments.

  • Importance of training frameworks across Azure machine learning systems.

  • Algorithm categories within predictive models.

  • Evaluation metrics within model performance.

  • Relationship between training and prediction quality.

Unit 4:

Model Deployment and Lifecycle Management:

  • Deployment structures within Azure environments.

  • Model integration within operational systems.

  • Lifecycle management within machine learning workflows.

  • Version control within deployed models.

  • Impact of deployment on business applications.

Unit 5:

Monitoring, Optimization, and Performance Management:

  • Monitoring frameworks within deployed models.

  • Performance indicators within machine learning systems.

  • Optimization structures within data science workflows.

  • Feedback loops within model environments.

  • Relationship between monitoring and continuous improvement.