How AI is uncovering hidden geothermal energy resources

MIT Technology ReviewThursday, December 4, 2025 at 1:00:00 PM
  • A startup named Zanskar has announced the use of artificial intelligence (AI) and advanced computational methods to identify hidden geothermal energy resources that are not visible on the surface. This innovative approach aims to uncover geothermal hot spots that lie thousands of feet underground, potentially expanding the availability of renewable energy sources.
  • The development is significant for Zanskar as it positions the company at the forefront of geothermal energy exploration, leveraging AI to enhance the efficiency and effectiveness of resource identification. This could lead to increased investment and interest in geothermal energy as a viable clean energy alternative.
  • The integration of AI in energy exploration reflects a broader trend of utilizing advanced technologies to address energy challenges. As AI continues to demonstrate its capabilities in various fields, including geology and clean energy, it highlights the potential for transformative impacts on how energy resources are discovered and utilized, contributing to the global transition towards sustainable energy solutions.
— via World Pulse Now AI Editorial System

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