Recruitment procedure for Transfrom4Europe BA Tracks 2024/2025 at the University of Silesia in Katowice

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Artificial Intelligence

Details
Code US-OOD-S0-W5-AI
Organizational unit University of Silesia in Katowice
Form of studies Full-time
Level of education First cycle
Language(s) of instruction English
Admission limit 10
Duration classes will start in the winter semester, since October 2024, , and will be held on Mondays between 1:45 p.m. and 8:30 p.m.
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Past phases in this registration:
  • Phase 1 (09.09.2024 12:00 – 22.09.2024 23:59)

 

General data

syllabus

group instructor

dr Dominika Iwan-Sojka 

ECTS credit allocation

 3 ECTS

Type of class

Seminar, 30 hours

ISCED

0421 Law

Course mode

online

Language

 English

 

   Course description

The course aims to discuss legal, ethical and social consequences of developing and deploying Artificial Intelligence (AI). In a wider sweep of legal ambiguities, it aims to provoke students to critically assess techno-chauvinism and increasing algocracy of states by balancing between common and individual interests. As a result, students will be able to reflect on the needs behind developing and deploying technology.

The course relates to ethical, social and legal implications of AI. It challenges the concept of AI by examining its occurrence in domestic, including EU, and international frameworks. Specific research areas cover AI-related concepts, applications across industries and states; environmental consequences of AI; ethics of AI – how far should we trust technology; discriminatory algorithms; data protection law; cybersecurity; AI on trial; weaponising AI; needs for international, EU and domestic regulations.

The course encourages students to conduct an independent analysis of voluntary reading material and critically evaluate discussed matters, to research additional data and to clarify arguments and possible answers to the problems posed by machine learning tools.