ARTIFICIAL INTELLIGENCE (5 Credits)
Learning Outcomes:
On successful completion of this course, student will be able to: identify value propositions in business with physical / visual representation of an idea; describe what is AI and identify concept of intelligent agent; explain various intelligent search algorithms to solve the problems; explain how to use knowledge representation in reasoning purpose; apply various techniques to an agent when acting under certainty; apply how to process natural language and other perceptual signs in order that an agent can interact intelligently with the world.
Topics:
- Introduction to Artificial Intelligence
- Uninformed Search Strategies
- Introduction to Prototype Development 1 (PD1 – F2F)
- Informed Search Strategies
- Local Search Algorithm & Optimization Problem
- Adversarial Search
- Constraint Satisfaction Problems
- VPC & Idea Profile (PD1 – Discussion Forum)
- Logical Agent
- First Order Logic & Inference in FOL I
- First Order Logic & Inference in FOL II
- Classical Palnning
- Solution Sketch & Storyboard (PD1 – Discussion Forum)
- Planning and Acting in the Real World
- Knowledge Representation
- Quantifying Uncertainty
- Probabilistic Reasoning
- Product / Service Prototype (PD1 – F2F)
- Probabilistic Reasoning over TIme
- Making Simple Decisions
- Products / Service Features & Functions (PD1 – Discussion Forum)
- Making Complex Decision
- Leaning Form Examples I
- Learning Form Examples II
- Knowledge in Learning
- Key Reseources & Pitch Desk (PD1 – Discussion Forum)
- Learning Probabilistic Models
- Reinforcement Learning
- Natural Language Processing
- Natural Language for Communications
- Perception Robotics
- Report (PD1 – F2F)
Published at :
SOCIAL MEDIA
Let’s relentlessly connected and get caught up each other.
Looking for tweets ...