Abstract
Abstract: Climate change presents a critical challenge that demands advanced analytical tools to predict and mitigate its impacts.
This paper explores the role of artificial intelligence (AI) in enhancing climate modeling, emphasizing how AI-driven methods are
revolutionizing our understanding and response to climate change. By integrating machine learning algorithms with diverse data
sources such as satellite imagery, historical climate records, and real-time sensor data, AI improves the accuracy, efficiency, and
granularity of climate predictions. The paper reviews key AI techniques, including neural networks and ensemble models, and their
applications in simulating extreme weather events and forecasting long-term climate trends. Additionally, it examines the impact of
AI-enhanced climate models on policy-making and strategic planning. Despite significant advancements, challenges such as data
quality, computational demands, and model interpretability remain. This study underscores the potential of AI to transform climate
modeling and highlights areas for future research and development to harness these technologies for a sustainable future.