Checking date: 18/05/2024


Course: 2024/2025

Artificial Intelligence Advanced Applications
(18651)
Master in Computer Engineering (Plan: 449 - Estudio: 228)
EPI


Coordinating teacher: IGLESIAS MARTINEZ, JOSE ANTONIO

Department assigned to the subject: Computer Science and Engineering Department

Type: Compulsory
ECTS Credits: 6.0 ECTS

Course:
Semester:




Requirements (Subjects that are assumed to be known)
Artificial Intelligence
Skills and learning outcomes
Description of contents: programme
1.- AI in the automotive industry 1.1.- Overview 1.2. - Advanced Driver Assistance Systems. 1.3. 1.3. - Autonomous Car. 2.- AI in the field of health care 2.1. - Overview 2.2. - Leading edge technologies in healthcare 2.3. 2.3. - Motorised health 3. AI in the business world 3.1. Overview 3.2. Business Intelligence (Business Intelligence) 3.3. Marketing and AI 4. AI in Engineering 4.1. Overview IoT and AI (IIoT and AIoT) 4.3. 4.3. Social Analytics for Industry and Intelligent Control Systems 5.- Ethics and AI 5.1. Risks associated with AI 5.2. 5.2. Questionable application cases. 5.3. Initiatives for ethical AI. 6. - Other AI application areas 6.1. Overview. 6.2. Applications. 6.3. AI and sustainable development. 6.3.1. Overview. 6.3.2. Societal, economic and technological challenges. 6.3.3. Applications.
Learning activities and methodology
TRAINING ACTIVITIES AF1 - Theoretical class [26,56 hours with 100% attendance, 0,88 ECTS]. AF3 - Theoretical and practical classes [3.32 hours with 100% attendance, 0.11 ECTS]. AF4 - Laboratory practices [13.28 hours with 100% attendance, 0.44 ECTS]. AF5 - Tutorials [4 hours with 25% of attendance, 0.13 ECTS] AF6 - Group work [23.28 hours with 25% attendance, 0.44 ECTS]. AF6 - Group work [23 hours with 0% attendance, 0,77 ECTS] AF7 - Individual student work [23 hours with 0% attendance, 0,77 ECTS]. AF7 - Individual student work [100 hours with 0% attendance, 3.33 ECTS]. AF8 - Partial and final exams [6 hours with 100% attendance, 0,33 ECTS]. TEACHING METHODOLOGIES MD1 - Class lectures by the professor with the support of computer and audiovisual media, in which the main concepts of the subject are developed, and the bibliography is provided. The subject and the bibliography are given to complement the students' learning. MD2 - Critical reading of texts recommended by the professor of the subject: press articles, reports, manuals and/or academic articles, either for later discussion in class or to expand and consolidate the knowledge of the subject. MD3 - Resolution of practical cases, problems, etc. .... posed by the teacher individually or in groups. MD4 - Presentation and discussion in class, under the moderation of the professor, of topics related to the content of the subject, as well as of practical cases. MD5 - Preparation of papers and reports individually or in groups.
Assessment System
  • % end-of-term-examination 20
  • % of continuous assessment (assigments, laboratory, practicals...) 80

Calendar of Continuous assessment


Basic Bibliography
  • Ben Eubanks. Artificial intelligence for HR : use AI to support and develop a successful workforce. London : Kogan Page. 2019
  • Eric J. Topo. Deep medicine : how artificial intelligence can make healthcare human again. New York : Basic Books. 2019
  • Ramesh Sharda, Dursun Delen and Efraim Turban. Analytics, Data Science, & Artificial Intelligence: Systems for Decision Support. Global Edition. 2020

The course syllabus may change due academic events or other reasons.