Code |
12878
|
Year |
1
|
Semester |
S1
|
ECTS Credits |
6
|
Workload |
PL(30H)/T(30H)
|
Scientific area |
Informatics
|
Entry requirements |
None.
|
Mode of delivery |
Face-to-face
|
Work placements |
Not applicable.
|
Learning outcomes |
This course unit presents algorithms and computational techniques currently used in Artificial Intelligence and encourages their application to problem solving. At the end of this course students should be able to: - Characterize Artificial Intelligence, its approaches, fundamentals and applications - Develop computational agents using state-space search techniques, learning, adaptation and knowledge representation.
|
Syllabus |
S1. Introduction. S2. Problem solving. S3. Knowledge representation. S4. Uncertain knowledge and reasoning. S5. Machine learning. S6. Applications: perception, robotics e NLP.
|
Main Bibliography |
Stuart Russell and Peter Norvig, Artificial Intelligence: A modern approach, 4th edition, Prentice Hall, 2021. PDFs of the theoretical classes.
|
Teaching Methodologies and Assessment Criteria |
This CU has both theoretical and practical classes. In the theoretical classes the teacher presents the course materials and promotes its discussion with the students. In the practical classes, the students solve practical problems using the Python programming language.
Theoretical tests (14 points - 70%) - 2 tests or the exam Practical Project (6 points - 30%)
|
Language |
Portuguese. Tutorial support is available in English.
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