Try a walking desk to stay healthy while you study or work! Full notes at ocdevel.com/mlg/8 Mathematics in Machine Learning Linear Algebra • : Essential for matrix operations; analogous to chopping vegetables in cooking. Every step of ML processes utilizes linear algebra. Statistics • : The hardest part, akin to the cookbook; supplies algorithms for prediction and error functions. Calculus • : Used in the learning phase (gradient descent), similar to baking; it determines the necessary adjustments via optimization. Learning Approach Recommendation • : Learn the basics of machine learning first, then dive into necessary mathematical concepts to prevent burnout and improve appreciation. Mathematical Resources MOOCs • : Khan Academy - Offers Calculus, Statistics, and Linear Algebra courses. Textbooks • : Commonly recommended books for learning calculus, statistics, and linear algebra. Primers • : Short PDFs covering essential concepts. Additional Resource The Great Courses • : Offers comprehensive video series on calculus and statistics. Best used as audio for supplementing primary learning. Look out for "Mathematical Decision Making." Python and Linear Algebra • Tensor: General term for any dimension list; TensorFlow from Google utilizes tensors for operations. • Efficient computation using SimD (Single Instruction, Multiple Data) • for vectorized operations. Optimization in Machine Learning • Gradient descent used for minimizing loss function, known as convex optimization. Recognize keywords like optimization in calculus context.
Kliv in i en oändlig värld av stories
Svenska
Sverige