#5 Norms | Machine Learning for Engineering & Science Applications
Welcome to 'Machine Learning for Engineering & Science Applications' course ! This lecture delves into the concept of norms in linear algebra, explaining their significance in quantifying vector magnitudes and measuring distances. It covers different types of norms, such as the L1 and L2 norms, and discusses their applications in machine learning, including regularization techniques. The lecture aims to provide a thorough understanding of norms and their role in various machine learning algorithms. NPTEL Courses permit certifications that can be used for Course Credits in Indian Universities as per the UGC and AICTE notifications. To understand various certification options for this course, please visit https://nptel.ac.in/courses/106106198 #Norms #LinearAlgebra #VectorMagnitude #DistanceMeasurement #Regularization #MachineLearning

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