• Week 8 | Module 5 | Introduction to Machine Learning I 

    Instructor: Ebelechukwu Nwafor, PhD This two-part module delves into the core principles of machine learning. In Part I, students will learn about supervised learning techniques, covering linear regression, classification, and model evaluation metrics. They will explore foundational algorithms, including decision trees, support vector machines, and k-nearest neighbors, while focusing on applications in real-world scenarios.

  • Week 8 | Module 5 | Introduction to Machine Learning I

    Instructor: Ebelechukwu Nwafor, PhD This two-part module delves into the core principles of machine learning. In Part I, students will learn about supervised learning techniques, covering linear regression, classification, and model evaluation metrics. They will explore foundational algorithms, including decision trees, support vector machines, and k-nearest neighbors, while focusing on applications in real-world scenarios.

  • Week 9 | Module 6 | Machine Learning II

    Instructor: Ebelechukwu Nwafor, PhD Part II builds on these basics from Part I, introducing unsupervised learning techniques such as clustering and dimensionality reduction. The module will also cover key concepts like overfitting, and model selection. By the end, students will understand both theoretical and practical aspects of machine learning, with hands-on experience in building and […]

  • Week 9 | Module 6 | Machine Learning II

    Instructor:  Ebelechukwu Nwafor, PhD Part II builds on these basics from Part I, introducing unsupervised learning techniques such as clustering and dimensionality reduction. The module will also cover key concepts like overfitting, and model selection. By the end, students will understand both theoretical and practical aspects of machine learning, with hands-on experience in building and […]

  • Data for Decision-Making in Healthcare

    Transform Healthcare Decisions Through Data Literacy In today’s healthcare environment, the ability to interpret and leverage data is no longer optional—it’s essential. This 8-week intensive course equips professionals with practical data literacy skills that can be immediately applied to improve decision-making in clinical and operational settings. Apply Today Duration 8 weeks (July 21 – September […]