Sustainable AI for Developers and Practical Carbon Reduction: A Conversation with Dr. Sasha Luccioni
22mIntermediate2026-02-02
Authors

Morten Rand-Hendriksen
Senior Staff Instructor, Speaker, Web Designer, and Software Developer

Sasha Luccioni
Course details
Explore the hidden environmental footprint of AI systems in this conversation with Sasha Luccioni, AI and Climate Lead at Hugging Face. Learn how AI data centers impact local communities and why measuring AI's energy and water use is so crucial as the technology scales. Sasha covers when to choose AI or opt for simpler solutions to ensure sustainability, as well as how to leverage practical strategies to reduce AI's environmental footprint with tools like CodeCarbon and techniques such as model distillation and quantization. Along the way, explore how to integrate sustainability into your everyday development workflow—avoiding defensive rhetoric in favor of actionable solutions. An ideal fit for developers, ML engineers, and technical project leads, this course equips you with the skills you need to make a tangible impact by building AI systems responsibly and sustainably.
Learning objectives
Measure AI emissions using CodeCarbon and establish baseline metrics for your projects.
Optimize model efficiency through right-sizing, distillation, quantization, and other practical reduction techniques.
Evaluate and select AI models and APIs using emerging sustainability standards and carbon disclosure criteria.
Integrate sustainability practices into your development lifecycle with transparency, reporting, and decarbonization strategies.
Learning objectives
Measure AI emissions using CodeCarbon and establish baseline metrics for your projects.
Optimize model efficiency through right-sizing, distillation, quantization, and other practical reduction techniques.
Evaluate and select AI models and APIs using emerging sustainability standards and carbon disclosure criteria.
Integrate sustainability practices into your development lifecycle with transparency, reporting, and decarbonization strategies.
Concepts
Introduction - AI's Hidden Footprint
- AI s hidden footprint - The climate cost
- The AI measurement gap - understanding energy, water, and community costs
Take Action to Reduce AI's Carbon Footprint
- Choose the right model for the right task
- Reduce your footprint as a developer
- Uncover the ROI of AI sustainability
Conclusion
- Balance innovation with sustainability
Related courses
- Sustainable AI for Developers: Strategies, Techniques, and Best Practices
- Ethical Data Collection for AI Implementation
- Building Trustworthy AI in Government: Responsible and Impactful Innovation
- Irreplaceable: The Art of Standing Out in the Age of AI
- AI Adoption That Sticks: Turning Tools into Team Habits
- Leveraging AI in Your Nonprofit Organization by Microsoft and NetHope
- The AI-Driven Supply Chain Manager
- GenAIOps Foundations
Related learn paths
- Building AI Products: Implementing Responsible AI Professional Certificate by LinkedIn Learning
- Technical Literacy and Future Readiness for Senior Managers and Senior Leaders
- A Mini-MBA for Those Considering a Top MBA Program
- Building Future-Ready Skills for the Generative AI Era
- AI Boot Camp for Small and Medium-Sized Businesses (SMBs)
- Essential Skills for Growing as an Entrepreneur
- Become an AI-Powered Learning and Development Professional
- LinkedIn’s 2025 Top MBA Programs Learning Path