NU:NE_PH_SSU AI, Society and Sustainability - Course Information
NE_PH_SSU Artificial Intelligence, Society, and Sustainability
NEWTON Universitysummer 2026
- Extent and Intensity
- 2/0. 4 credit(s). Type of Completion: graded credit.
- Teacher(s)
- Pablo Maldonado, Ph.D. (lecturer)
- Guaranteed by
- Pablo Maldonado, Ph.D.
Centre for International Programmes – International programmes – NEWTON University - Timetable
- Wed 13:30–15:00 Zoom.Praha5
- Course Enrolment Limitations
- The course is offered to students of any study field.
- Course objectives
By the end of the course students will be able to:
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Analyze the societal, political, and economic implications of AI across global contexts.
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Evaluate governance frameworks, regulatory models, and ethical principles shaping AI deployment.
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Identify and critique sources of algorithmic bias, proposing mitigation strategies grounded in fairness and inclusion.
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Assess the impact of AI on labor markets, organizational strategy, and the future of work.
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Critically assess the environmental footprint of AI systems and explore pathways toward Green AI.
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Develop strategic, ethical, and sustainable approaches to AI entrepreneurship and social impact innovation.
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Synthesize interdisciplinary insights to design governance, policy, or business solutions for real‑world AI challenges.
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- Learning outcomes
Upon successful completion of the course, students will be able to:
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Compare major global AI governance frameworks and articulate their underlying political and cultural values.
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Distinguish between algorithmic bias, data bias, and systemic bias in AI systems.
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Describe how AI technologies influence labor dynamics, automation, and human–machine collaboration.
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Assess the sustainability impacts—both positive and negative—of AI systems and infrastructures.
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Collaborate effectively in teams to analyze cases, debate policy options, and deliver applied projects.
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- Syllabus
Week 1: Introduction to AI and Society
Overview of AI technologies
Historical context and societal impact
Key ethical frameworks
Week 2: AI Governance and Regulation
Global regulatory efforts (EU AI Act, U.S. frameworks)
Corporate compliance and risk management
Week 3: Bias, Fairness, and Ethics in AI
Algorithmic bias and discrimination
Inclusive design and mitigation strategies
Week 4: AI and the Future of Work
Automation, job displacement, and reskilling
Human-AI collaboration models
Week 5: AI and Surveillance
Privacy concerns and surveillance capitalism
Case studies: facial recognition, predictive policing
Week 6: AI in Political Influence and Disinformation
Deepfakes, microtargeting, and lobbying
Media manipulation and electoral risks
Week 7: AI for Climate Modeling and Disaster Response
Forecasting, resource allocation, and emergency planning
Case studies in environmental AI
Week 8: Sustainable Supply Chains Powered by AI
Logistics optimization and waste reduction
Transparency and traceability tools
Week 9: Smart Cities and Urban Sustainability
AI in traffic, energy, and waste management
Ethical concerns in urban data collection
Week 10: Green AI and Environmental Footprint
Energy demands of AI models
Sustainable computing strategies
Week 11: AI in Circular Economy Models
Lifecycle tracking, recycling, and reuse
Business models for sustainability
Week 12: AI Entrepreneurship for Social Impact
Startups solving global challenges with AI
Funding, scaling, and impact metrics
- Assessment methods
Participation (10%), Group Presentation (30%), Individual Presentation
(30%), Final Project (30%)
- Language of instruction
- English
- Enrolment Statistics (recent)
- Permalink: https://is.newton.cz/course/nu/summer2026/NE_PH_SSU