Difference between revisions of "Instruction:D0a94dfd-0df4-4668-b58b-3943f8c60e67"
| Line 24: | Line 24: | ||
|Instruction Step Text=This step explores the environmental impacts of generative AI across its lifecycle: from training, deployment, and inference to hardware and infrastructure. | |Instruction Step Text=This step explores the environmental impacts of generative AI across its lifecycle: from training, deployment, and inference to hardware and infrastructure. | ||
|Instruction Step Interactive Content=Resource:H5P-400 | |Instruction Step Interactive Content=Resource:H5P-400 | ||
| + | }} | ||
| + | {{Instruction Step Trainee | ||
| + | |Instruction Step Title=Making AI More Sustainable: What Are the Options? | ||
| + | |Instruction Step Text=In this step you’ll learn about the energy and resource demands of generative AI, as well as realistic strategies that reduce environmental impacts while maintaining performance. | ||
| + | |Instruction Step Interactive Content=Resource:H5P-404 | ||
}} | }} | ||
{{Instruction Remarks Trainee}} | {{Instruction Remarks Trainee}} | ||
Latest revision as of 09:29, 23 September 2025
The Environmental Cost of AI: What Can we do about it?
By the end of this micromodule, participants will be able to:
- Identify key environmental impacts of AI technologies
- Explain how AI’s infrastructure contributes to climate and environmental pressures
- Reflect on trade-offs and future governance needs regarding AI deployment
What is this about?
The Environmental Footprint of AI: Understanding the Trade-offs
In this activity, you’ll explore the environmental impacts associated with AI technologies. Concerns include electricity use, water consumption, rare earth mining, and e-waste. Possible solutions and governance ideas are also explored. Interactive exercises to test your understanding are also included.
The Environmental Footprint of AI: Understanding the Trade-offs
Understanding the Systemic Impacts of Generative AI
This step explores the environmental impacts of generative AI across its lifecycle: from training, deployment, and inference to hardware and infrastructure.
Making AI More Sustainable: What Are the Options?
In this step you’ll learn about the energy and resource demands of generative AI, as well as realistic strategies that reduce environmental impacts while maintaining performance.
