The Role of Artificial Intelligence in Climate Change Mitigation and Environmental Sustainability

Shiva Kuar

Abstract


This abstract delves into the pivotal role of Artificial Intelligence (AI) in addressing climate change, emphasizing its significance in mitigating environmental challenges and fostering sustainability. AI technologies have emerged as powerful tools, offering innovative solutions across various domains crucial for combating climate change, such as renewable energy optimization, climate modeling, and resource management. This paper navigates through the myriad applications of AI, highlighting its potential to revolutionize environmental monitoring, facilitate smarter energy systems, and aid in the development of eco-friendly policies. Furthermore, the abstract examines the challenges and opportunities inherent in leveraging AI for climate action, emphasizing the need for collaborative efforts between researchers, policymakers, and industries to harness AI's capabilities effectively, ultimately contributing to a more sustainable and resilient future for the planet.

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