Large Scale
Large-scale data processing and analysis are central to addressing numerous scientific and engineering challenges, focusing on efficient handling of massive datasets and complex systems. Current research emphasizes developing novel algorithms and model architectures, such as graph neural networks, deep learning models, and physics-guided machine learning, to improve efficiency, accuracy, and scalability in diverse applications. These advancements are crucial for tackling problems ranging from traffic optimization and robot navigation to astronomical surveys and the development of more energy-efficient AI systems. The resulting insights and tools have significant implications across various fields, enabling more effective data-driven decision-making and scientific discovery.
Papers
Computational Pathology at Health System Scale -- Self-Supervised Foundation Models from Three Billion Images
Gabriele Campanella, Ricky Kwan, Eugene Fluder, Jennifer Zeng, Aryeh Stock, Brandon Veremis, Alexandros D. Polydorides, Cyrus Hedvat, Adam Schoenfeld, Chad Vanderbilt, Patricia Kovatch, Carlos Cordon-Cardo, Thomas J. Fuchs
Jaynes Machine: The universal microstructure of deep neural networks
Venkat Venkatasubramanian, N. Sanjeevrajan, Manasi Khandekar
Grasp-Anything: Large-scale Grasp Dataset from Foundation Models
An Dinh Vuong, Minh Nhat Vu, Hieu Le, Baoru Huang, Binh Huynh, Thieu Vo, Andreas Kugi, Anh Nguyen
FedLALR: Client-Specific Adaptive Learning Rates Achieve Linear Speedup for Non-IID Data
Hao Sun, Li Shen, Shixiang Chen, Jingwei Sun, Jing Li, Guangzhong Sun, Dacheng Tao