ARTIFICIAL INTELLIGENCE (4 Credits)
Learning Outcomes:
On successful completion of this Course, students will be able to: LO1 – Describe the concept of the intelligent agent and Artificial Intelligence; LO2 – Explain various intelligent search algorithms to solve the problems; LO3 – Apply various techniques to an agent when acting under certainty; LO4 – Apply various learning algorithms to solve the problems; LO5 – Analyze the role of Ethical in Artificial Intelligence.
Topics:
- Principal Component Analysis;
- Proposal Presentation;
- Fuzzy Logic;
- Search Strategies;
- Introduction to Artificial Intelligence;
- K-Nearest Neighbour;
- Local Search;
- Fuzzy Set; K-Means;
- Review;
- Markov Model and Hidden Markov Model;
- Support Vector Machine;
- Project Presentation;
- Linear Regression;
- Adversarial Search;
- Bayesian Network;
- Introduction to Neural Network and Deep Learning;
- Quantifying Uncertainty;
- Introduction to Bayesian Network;
- Decision Tree;
- Intelligent Agents;
- Application and Ethics in Artificial Intelligence;
- Introduction to Machine Learning.
SOCIAL MEDIA
Let’s relentlessly connected and get caught up each other.
Looking for tweets ...