×
New MIT research explores Generative AI’s environmental toll
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

A significant rise in generative AI development is creating mounting environmental challenges through increased energy consumption and resource demands.

The energy equation; The rapid expansion of generative AI technologies is driving unprecedented levels of electricity consumption in data centers worldwide.

  • Global data center electricity usage reached 460 terawatts in 2022, positioning these facilities as the world’s 11th largest electricity consumer
  • Industry projections indicate this consumption will more than double to 1,050 terawatts by 2026
  • Individual AI interactions, such as ChatGPT queries, consume approximately five times more electricity than traditional web searches
  • The training of large language models like GPT-3 required 1,287 megawatt hours of electricity, equivalent to the annual energy usage of hundreds of homes

Resource intensification: Data centers supporting AI operations place increasing demands on water resources and hardware manufacturing.

  • Cooling systems in data centers typically require 2 liters of water per kilowatt hour of electricity used
  • The manufacturing of specialized AI hardware components, particularly GPUs, creates additional environmental impacts through resource extraction and production processes
  • The rapid scaling of AI infrastructure is straining both electrical grids and water supplies in regions where data centers are concentrated

Expert perspectives: Leading researchers emphasize the need for sustainable approaches to AI development.

  • MIT professor Elsa A. Olivetti highlights the importance of considering the full environmental impact of AI infrastructure
  • MIT CSAIL postdoc Noman Bashir points to the need for more efficient computing approaches
  • Environmental scientists stress the importance of balancing AI advancement with ecological preservation

Looking ahead: Environmental sustainability vs. AI advancement: The AI industry faces critical decisions about managing its environmental footprint while continuing to innovate and advance the technology.

  • Current trajectories suggest environmental impacts will continue to grow unless significant efficiency improvements or alternative approaches are developed
  • The industry must weigh the societal benefits of AI advances against their environmental costs
  • Solutions may require fundamental rethinking of AI architecture and infrastructure
Explained: Generative AI’s environmental impact

Recent News

AI could soon translate between mindsets and even facial expressions, not just languages

New AI technologies aim to interpret the underlying values and thought patterns behind different perspectives, going beyond mere language translation to address societal polarization and communication breakdown.

Forrester: CRM systems need AI-first rebuild to escape maze-like feature bloat trap

Traditional CRM systems have devolved into complex mazes of features, prompting the need for a complete AI-centric redesign that prioritizes simplicity and user experience.

“Vibe coding” lets non-programmers create apps through AI—but experts remain skeptical

The emerging practice lets users create software by describing their needs to AI, but it introduces a dependency cycle where users lack the skills to fix inevitable bugs.