AI for Leaders and Managers in Business Sustainability

Blended learning

À qui s'adresse la formation?

Open to all candidates

Niveau atteint

Intermédiaire

Durée

13,00 semaine(s)

Langues(s) de prestation

EN

Prochaine session

04.05.2026
Lieu
Online

Prix

100,00€

Prérequis

No prerequisite

Objectifs

COURSE OBJECTIVES
The objectives of this course are to enable you:

  • Explore the current state of AI technologies and their relevance to contemporary sustainability challenges.
  • Recognize the strategic advantages of adopting AI-driven solutions in sustainability-focused industries.
  • Evaluate potential efficiency gains, cost reductions, and environmental impact reduction opportunities through AI implementation.
  • Analyze case studies showcasing successful AI applications in optimizing sustainable business processes and stakeholder experiences.
  • Assess the ethical, legal, and societal implications of AI deployment within sustainability-focused organizational contexts.
  • Anticipate and mitigate potential risks associated with data privacy, algorithmic biases, and AI-driven decision-making in sustainability.
  • Examine how AI technologies disrupt traditional sustainability models and create new dynamics.
  • Develop strategies to leverage AI for sustainable innovation, competitiveness, and growth within your industry sector.
  • Identify emerging trends and opportunities for integrating AI into various facets of sustainable business operations, including supply chain management, energy optimization, and waste reduction.
  • Foster a culture of innovation and continuous learning to capitalize on the transformative potential of AI-driven sustainable solutions.

Contenu

Week 1: Introduction to AI in Sustainability

  • Overview of the course objectives and structure.
  • Understanding the importance of AI for sustainability leaders and managers.
  • Exploring the current state of AI technologies and their impact on sustainability-focused industries.Overview of the course objectives and structure.

Week 2: Strategic Advantages of AI Adoption in Sustainability

  • Recognizing strategic advantages and opportunities of adopting AI-driven solutions in sustainability.
  • Case studies illustrating successful AI implementations in sustainability-focused sectors.

Week 3: Economic and Environmental Impact of AI in Sustainability

  • Evaluating potential efficiency gains, cost reductions, and environmental impact reduction opportunities through AI implementation.
  • Cost-benefit analysis of AI adoption in sustainable business operations.
  • Examining economic models and forecasts related to AI-driven sustainable innovation.

Week 4: AI Applications in Sustainable Business Processes

  • Analyzing case studies showcasing successful AI applications in optimizing sustainable business processes.
  • Understanding AI-driven automation and its impact on productivity, efficiency, and sustainability.
  • Practical exercises on identifying and prioritizing processes for AI integration in sustainability.

Week 5: AI and Stakeholder Experiences in Sustainability

  • Examining AI applications in enhancing stakeholder experiences and engagement in sustainability.
  • Case studies of AI-driven personalization and recommendation systems for sustainable practices.

Week 6: Ethical and Societal Implications of AI in Sustainability

  • Assessing the ethical, legal, and societal implications of AI deployment in sustainability.
  • Addressing concerns related to data privacy, algorithmic biases, and transparency in sustainable AI.

Week 7: MID-TERM EXAM

Week 8: Risk Management in AI Deployment for Sustainability

  • Anticipating and mitigating potential risks associated with AI deployment in sustainability.
  • Strategies for managing risks related to data security, compliance, and regulatory issues in sustainable AI.

Week 9: Disruption and Sustainability Models

  • Understanding how AI technologies disrupt traditional sustainability models.
  • Case studies of industries undergoing transformation due to AI innovations in sustainability.
  • Strategic implications of AI-driven disruption and business model innovation in sustainability.

Week 10: Leveraging AI for Sustainable Competitive Advantage

  • Developing strategies to leverage AI for sustainable innovation and competitiveness.
  • Identifying opportunities for AI integration across different sustainability-focused industry sectors.
  • Creating a roadmap for AI adoption and implementation in sustainability-driven organizations.

Week 11: Emerging Trends in AI for Sustainability

  • Identifying emerging trends and opportunities for integrating AI into sustainable business operations.
  • Exploring AI applications in supply chain management, energy optimization, and waste reduction.
  • Creating a roadmap for AI-driven sustainable solutions in organizations.

Week 12: Cultivating an AI-Ready Culture for Sustainability

  • Fostering a culture of innovation and continuous learning to capitalize on AI opportunities in sustainability.
  • Developing leadership strategies for driving AI adoption and transformation towards sustainability goals.
  • Final reflections and action planning for implementing AI strategies in participants' sustainability-focused organizations.

Week 13: FINAL EXAM

Points abordés

By the end of the course, participants will be able to:

  • Demonstrate a comprehensive understanding of AI technologies in sustainability.
  • Develop strategic insights for leveraging AI in sustainable business practices.
  • Evaluate the ethical and societal implications of AI deployment in sustainability.
  • Mitigate risks associated with AI implementation in sustainability-focused organizations.
  • Develop actionable strategies for AI adoption and transformation towards sustainability goals.

Méthodes pédagogiques

  • Instructor-led sessions
  • Interactive discussion Forums and case studies
  • Group activities and exercises
  • Assessment quizzes or exams
  • Course materials (handouts, presentations, reference materials)

Évaluation

Exams may include essays, short answers, or MCQs. Formats include open/closed book. Time zones are considered. Assessments are formative and summative. Students have 2 weeks to review grades and must follow the appeal process in the Student Handbook

Certificat, diplôme

Certificate

Prochaine session

Date
Ville
Language & prix
04.05.2026

07.08.2026
Online
EN 100,00€

Informations supplémentaires

Please note that there are three semesters as intake periods as noted on the academic calendar.
Scholarship Awarded (Total Fee: €100)

Registration is done online.

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