office.cce@iith.ac.in
Theory: Introduction to statistical learning: classification and regression problems, concepts of features and instances, supervised and unsupervised clustering approaches; Unsupervised ML algorithms: Hierarchical clustering, K-means clustering, density-based clustering; Supervised ML algorithms: logistic regression, artificial neural networks, support vector machines, decision trees & random forests; Feature selection: principal component analysis, SVM-RFE; Performance metrics: accuracy, sensitivity, specificity, precision, recall, F1-score, Mathews correlation coefficient; Introduction to Multi-class learning; Introduction to deep learning concepts
Lab: Supervised and unsupervised clustering with toy examples. Programming for machine learning classification and regression using Python / R programming
Last Date for Registration and Payment: 17th July 2026
Assessment may consist of assignments &/or quizzes &/or viva &/or exams.
Centre for Continuing Education
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