Jump to content

ELL409

From IITD Wiki
Revision as of 16:31, 14 April 2026 by DevanshKandpal (talk | contribs) (Bot: wrap bare course codes in wikilinks)
(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)
ELL409
Machine Intelligence and Learning
Credits 4
Structure 3-0-2
Pre-requisites MTL106, COL106
Overlaps ELL784, ELL789, COL341/COL774

ELL409 : Machine Intelligence and Learning

Introduction to machine intelligence and intelligent agents; problem solving; knowledge representation and reasoning (logical and probabilistic); need for learning; basics of machine learning; Decision Trees; Rule-based models; linear learning models; Support Vector Machines; Artificial Neural Networks; Deep Learning; Probabilistic Modelling; Naive Bayes; Reinforcement Learning; Clustering; Feature Selection; Principal Component Analysis; Combining models; Philosophical issues in intelligence and learning. Substantive implementation assignments or a term project involving design of an intelligent learning-based system.