
Introduction to Machine Learning
(17679842517FYs4)
Machine learning is a core component of modern artificial intelligence, enabling systems to learn from data, identify patterns, and improve decision-making over time. This course provides a clear, practical introduction to machine learning concepts, techniques, and applications—without requiring a technical or programming background.
You will explore the primary approaches to machine learning, including supervised, unsupervised, and semi-supervised learning. The course explains which types of problems each approach is best suited for, the kinds of training data required, and how machine learning models are applied in real-world scenarios.
You will also learn how machine learning systems are trained and deployed, including the differences between offline and online training and prediction models, the role of automated machine learning, and how cloud-based environments influence machine learning workflows. The course concludes with an overview of emerging and influential areas of machine learning research, helping you understand where the field is headed and how it continues to evolve.
This course is ideal for professionals, educators, and lifelong learners seeking a foundational understanding of how machine learning works and how it is used across industries.