Study material
Engineering
Computer Engineering
Information Technology
Electrical Engineering
Civil Engineering
Mechanical Engineering
Electronics and Communications
Electronics and Telecommunication
Electrical and Electronics
B.Com
B.A
BBA
BAF
BMS
New Test BE-Btech
Demo BE-Btech
Prod BE-BTech
Blog
Log in
Become a data analyst in the next 4 months and kickstart your career.
100% placement assistance.
Start your Analytics journey with our free
Python course.
Explore Now
Home
Universities
Biju Patnaik University of Technology, Odisha
Computer Engineering
Artificial Intelligence and Machine Learning
Biju Patnaik University of Technology, Odisha, Computer Engineering Semester 5, Artificial Intelligence and Machine Learning Syllabus
Artificial Intelligence and Machine Learning Lecture notes
|
Videos
|
Free pdf Download
|
Previous years solved question papers
|
MCQs
|
Question Banks
|
Syllabus
Get access to 100s of MCQs, Question banks, notes and videos as per your syllabus.
Try Now for free
Unit - 1 Introduction
Unit – 1
1.1 The Foundations of Artificial Intelligence
1.2 Intelligent Agents – Agents and Environments
1.3 Good Behaviour The Concept of Rationality the Nature of Environments the Structure of Agents
1.4 Solving Problems by Search – ProblemSolving Agents Formulating problems Searching for Solutions
1.5 Uninformed Search Strategies Breadthfirst search
1.6 Depthfirst search
1.7 Searching with Partial Information
1.8 Informed Heuristic Search Strategies
1.9 Greedy bestfirst search
1.10 A* Search CSP
1.11 MeansEndAnalysis
Unit - 2 ADVERSARIAL SEARCH
Unit – 2
2.1 Adversarial Search – Games
2.2 The MiniMax algorithm optimal decisions in multiplayer games
2.3 AlphaBeta Pruning Evaluation functions Cutting off search
2.4 Logical Agents – KnowledgeBased agents
2.5 Logic
2.6 Propositional Logic Reasoning Patterns in Propositional Logic Resolution
2.7 Forward and Backward chaining FIRST ORDER LOGIC – Syntax and Semantics of FirstOrder Logic Using FirstOrder Logic
2.8 Knowledge Engineering in FirstOrder Logic Inference in First Order Logic – Propositional vs. FirstOrder Inference
2.9 Unification and Lifting
2.10 Forward Chaining Backward Chaining
2.11 Resolution
Unit - 3 UNCERTAINTY
Unit – 3
3.1 Uncertainty – Acting under Uncertainty
3.2 Basic Probability Notation
3.3 The Axioms of Probability
3.4 Inference Using Full Joint Distributions Independence
3.5 Bayes’ Rule and its Use
3.6 Probabilistic Reasoning – Representing Knowledge in an Uncertain Domain
3.7 The Semantics of Bayesian Networks
3.8 Efficient Representation of Conditional Distribution
3.9 Exact Inference in Bayesian Networks
3.10 Approximate Inference in Bayesian Networks
Unit - 4 LEARNING METHODS
Unit – 4
4.1 Statistical Learning Learning with Complete Data Learning with Hidden Variables Rote Learning Learning by Taking Advice
4.2 Learning in Problemsolving learning from Examples Induction
4.3 Explanationbased Learning Discovery Analogy Formal Learning Theory
4.4 Neural Net Learning and Genetic Learning
4.5 Expert Systems Representing and Using Domain Knowledge Expert System Shells Explanation
4.6 Knowledge Acquisition
Download CSE Sem 5 syllabus pdf
Get access to 100s of MCQs, Question banks, notes and videos as per your syllabus.
Try Now for free
Other Subjects of Semester-1
Operating systems
Database management systems
Formal languages and automata theory
Popular posts
Top 10 free online resources to learn coding
What is machine learning
What is cloud computing
What is DBMS architecture
Sorting algorithm overview
Share
Link Copied
More than
1 Million
students use Goseeko! Join them to feel the power of smart learning.
Try For Free
Spot anything incorrect?
Contact us