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Abstract

Green AI is an emerging field that aims to develop and deploy environmentally friendly and sustainable artificial intelligence (AI) systems. The potential benefits of Green AI to society are numerous, as it can help reduce the environmental impact of various sectors while improving their efficiency and effectiveness. This includes optimizing the operation of smart grids, reducing energy consumption in buildings, improving crop yields in agriculture, optimizing public transportation, monitoring and analyzing environmental data, managing waste, optimizing manufacturing processes, and modeling the impacts of climate change. These applications of Green AI can help reduce greenhouse gas emissions, conserve natural resources, and improve the overall sustainability of society. However, there are also challenges to be addressed, such as the energy consumption and carbon footprint of AI systems. By addressing these challenges and developing effective policies and regulations, Green AI has the potential to make a significant contribution to a more sustainable future for society.

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References

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Pandey, D. A. (2023). Development and Deployment of Green Artificial Intelligence. International Journal Of Mathematics And Computer Research, 11(4), 3328-3332. https://doi.org/10.47191/ijmcr/v11i4.03