Machine Learning Architecture
Machine learning architecture research focuses on designing and optimizing the structure and algorithms of models to improve performance, efficiency, and robustness. Current efforts concentrate on developing specialized architectures like Mixture of Experts for complex tasks, low-parameter models for resource-constrained environments, and enhanced neural networks addressing uncertainty quantification and privacy concerns. These advancements are crucial for deploying machine learning in diverse applications, ranging from resource-efficient edge computing to privacy-preserving distributed learning and improving the reliability of predictions in safety-critical systems.
Papers
March 11, 2022
February 18, 2022
November 27, 2021
November 22, 2021