Unified Alignment
Unified alignment in machine learning focuses on developing models and frameworks capable of handling diverse tasks and data modalities within a single architecture, improving efficiency and generalization. Current research emphasizes multi-modal approaches, often employing transformer-based architectures, mixture-of-experts models, and techniques like prompt engineering and continuous learning to address challenges such as catastrophic forgetting and data heterogeneity. This unified approach promises to advance various fields, from computer vision and natural language processing to robotics and scientific simulation, by creating more robust, adaptable, and efficient AI systems.
Papers
MoConVQ: Unified Physics-Based Motion Control via Scalable Discrete Representations
Heyuan Yao, Zhenhua Song, Yuyang Zhou, Tenglong Ao, Baoquan Chen, Libin Liu
Towards Unified and Effective Domain Generalization
Yiyuan Zhang, Kaixiong Gong, Xiaohan Ding, Kaipeng Zhang, Fangrui Lv, Kurt Keutzer, Xiangyu Yue