Industrial process contributions are in the range of larger contributors to climate change at about thirty percent of the world's total GHG emission. The discussion is on how AI might help companies reduce their carbon emissions by enhancing efficiency from the processes. AI-powered solutions, such as machine learning, computer vision, and predictive analytic, allow industries to identify inefficiency leaks, predict equipment failure, and drive data-driven decisions for process improvement. The machine learning algorithms analyze consumption trends, and AI-controlled systems make adjustments in real time to optimize energy consumption and resultant emissions. For example, in cases of low demand, it can reduce energy use or switch over to the use of other forms of energy. Computer vision technologies monitor emissions for leak detection or inefficiencies that may lead to high GHG emissions. Working against typical manual mechanisms, which usually are not very accurate and lack flexibility, continuous monitoring by means of AI offers forecast functions, automated process management, and a whole new approach to emissions reduction. Though the challenges abound-high costs and lack of qualified labor-AI does represent one practical path toward the goal of optimizing resource use and improving productivity in industrial operations. While there is continuous development in this regard, supported by policies, AI might become important in helping industries to achieve global climate goals.