Digital Computing
Digital computing research currently focuses on optimizing efficiency and scalability across diverse applications. Key areas include developing energy-efficient machine learning models and algorithms (e.g., employing tensor optimization and deep reinforcement learning), designing distributed computing frameworks for handling massive datasets and complex simulations (e.g., using hierarchical learning and distributed genetic algorithms), and improving resource allocation in dynamic environments like vehicular networks and cloud data centers. These advancements are crucial for addressing the growing computational demands of fields such as AI, scientific modeling, and communication networks, while mitigating environmental concerns associated with high energy consumption.
Papers
Asynchronous Distributed Genetic Algorithms with Javascript and JSON
Juan Julián Merelo, Pedro A. Castillo, Juan Luis Jiménez Laredo, Antonio M. Mora, Alberto Prieto
Spatial Computing: Concept, Applications, Challenges and Future Directions
Gokul Yenduri, Ramalingam M, Praveen Kumar Reddy Maddikunta, Thippa Reddy Gadekallu, Rutvij H Jhaveri, Ajay Bandi, Junxin Chen, Wei Wang, Adarsh Arunkumar Shirawalmath, Raghav Ravishankar, Weizheng Wang