Tue, December 17, 2024
Mon, December 16, 2024
Sun, December 15, 2024
Sat, December 14, 2024
Fri, December 13, 2024
[ Fri, Dec 13th 2024 ]: The Scientist
2024 Top 10 Innovations
Thu, December 12, 2024
[ Thu, Dec 12th 2024 ]: Arlington Catholic Herald
HAL and friends

AI requires consistent energy afforded by nuclear power


  Copy link into your clipboard //science-technology.news-articles.net/content/2 .. consistent-energy-afforded-by-nuclear-power.html
  Print publication without navigation Published in Science and Technology on by MSN
          🞛 This publication is a summary or evaluation of another publication 🞛 This publication contains editorial commentary or bias from the source


  MIT Nuclear Science and Engineering Professor Koroush Shirvan claims energy intensive Artificial Intelligence will require electricity that is "always on", afforded by nuclear power.

The article from MSN discusses the significant energy demands of artificial intelligence (AI) and how these needs could potentially be met by nuclear power. It highlights that AI systems, particularly those involved in large-scale data processing and machine learning, require a consistent and substantial energy supply. The piece points out that while renewable energy sources like solar and wind are growing, they do not yet provide the reliable, 24/7 power that nuclear energy can. The article references the views of experts who argue that nuclear power, with its high energy density and low carbon footprint, could be the ideal solution to support the expansion of AI technologies. It also touches on the challenges of nuclear power, including public perception, safety concerns, and the long-term management of nuclear waste, but suggests that advancements in nuclear technology could address these issues, making nuclear energy a more viable option for powering the future of AI.

Read the Full MSN Article at:
[ https://www.msn.com/en-au/technology/artificial-intelligence/ai-requires-consistent-energy-afforded-by-nuclear-power/ar-AA1vPTIv ]

Publication Contributing Sources