The Real Environment Impact of AI: Unveiling the Ecological Footprint of Artificial Intelligence
Main Article Content
Abstract
Global environmental pollution has a devastating influence on the planet's population and jeopardizes humanity's future. The construction business is a major producer of waste and hazardous emissions into the atmosphere. It is vital to discover measures to reduce the damage done to nature. Currently, artificial intelligence technologies are one of the most promising approaches to helping the environment. This research investigates the use of green AI algorithms for measuring greenhouse gas (GHG) emissions in the context of ecological footprint assessment. Green AI algorithms prioritize sustainability and seek to lower AI systems' carbon footprints while monitoring GHG emissions data. These algorithms use environmentally conscious machine learning techniques to improve resource allocation, encourage energy-efficient model topologies, and prioritize renewable energy sources for AI model training. Carbon-aware optimization approaches are used to reduce the environmental impact of AI computations, resulting in a greener future. The incorporation of green algorithms into AI systems identifies the potential for emission reduction and energy efficiency, promoting environmentally beneficial behaviours across industries. The use of green algorithms allows for a full analysis of GHG emissions and ecological footprints, permitting a symbiotic interaction between technology and the environment for sustainable growth.