Archives AI News

Agentic Auto-Scheduling: An Experimental Study of LLM-Guided Loop Optimization

arXiv:2511.00592v2 Announce Type: replace-cross Abstract: Automatic code optimization remains a difficult challenge, particularly for complex loop nests on modern hardware. This paper investigates a novel approach to code optimization where Large Language Models (LLMs) guide the process through a closed-loop…

Learning Tennis Strategy Through Curriculum-Based Dueling Double Deep Q-Networks

arXiv:2512.22186v1 Announce Type: new Abstract: Tennis strategy optimization is a challenging sequential decision-making problem involving hierarchical scoring, stochastic outcomes, long-horizon credit assignment, physical fatigue, and adaptation to opponent skill. I present a reinforcement learning framework that integrates a custom tennis…

Wireless Traffic Prediction with Large Language Model

arXiv:2512.22178v1 Announce Type: new Abstract: The growing demand for intelligent, adaptive resource management in next-generation wireless networks has underscored the importance of accurate and scalable wireless traffic prediction. While recent advancements in deep learning and foundation models such as large…