Artificial Intelligence
2015-2016
-
IMT3591
- 10 ECTS
Prerequisite(s)
IMT1031 Fundamental Programming
On the basis of
IMT2021 Algorithmic Methods
Expected learning outcomes
On successful completion of the module, students will be able to
- Understand and evaluate various core techniques and algorithms of AI, namely agent technology, informed and uninformed tree and graph search algorithms, various learning techniques including artificial neural networks, decision tree learning and evolutionary algorithms, logic and planning techniques and algorithms, knowledge representation, the meaning of concepts such as intelligence, reasoning, and making inferences.
- Identify different uses and applications of AI techniques and algorithms, from neuroscience, understanding brain to game development, to web technologies and secure system designs.
- Implement several of the algorithms on the mobile robots. The students will also enhance their programming skills in a preferred language of their own and in Java by learning to program a mobile robot.
- Improve programming skills through the programming of mobile robots. Programming mobile robots help with connecting the theory learnt in class with the practical use of it.
- Evaluate the run-time and memory complexity of several AI algorithms, and practice with creating better algorithms.
Topic(s)
- Path finding
- FSM
- Scripts
- Symbolic AI Techniques
- Logic
- Multi agent systems
- State based search
- Goal directed search
- Genetic Algorithms / Programming
- Neural networks
-
Reinforcement learning
Teaching Methods
Lectures
Exercises
Teaching Methods (additional text)
This course will focus on practical implementation of AI concepts. Lectures will introduce a topic area, and students are expected to implement and report on the key concept.
Form(s) of Assessment
Exercises
Written exam, 4 hours
Form(s) of Assessment (additional text)
- Written exam, 4 hours (60%)
- 4 compulsory assignments (40%). Each of these assignments must be passed individually to be able to take the written exam.
- Each part must be passed individually to pass the course.
Grading Scale
Alphabetical Scale, A(best) – F (fail)
External/internal examiner
Internal examiner
Re-sit examination
Re-sit August 2016 for the Written exam.
Tillatte hjelpemidler
Code A: All printed and hand-written support material is allowed. All calculators are allowed.
Read more about permitted examination aids.
Teaching Materials
Artificial Intelligence: A Modern Approach, 3rd Edition by Stuart Russell and Peter Norvig, 2010
Additional information
In case there will be less than 5 students apply for the course the form may change to suit the class size.