Dynamic ModulE
Dynamic modules represent a burgeoning area of research focused on improving the efficiency, scalability, and interpretability of complex models, particularly in deep learning and natural language processing. Current research emphasizes modular architectures, such as mixtures-of-experts and configurable foundation models, that allow for dynamic assembly and adaptation of specialized components to handle diverse tasks and optimize resource utilization. This modular approach promises to enhance model performance, reduce computational costs, and facilitate the development of more robust and adaptable AI systems across various applications, including machine translation, object detection, and autonomous driving.
Papers
A Frustratingly Easy Plug-and-Play Detection-and-Reasoning Module for Chinese Spelling Check
Haojing Huang, Jingheng Ye, Qingyu Zhou, Yinghui Li, Yangning Li, Feng Zhou, Hai-Tao Zheng
CodeChain: Towards Modular Code Generation Through Chain of Self-revisions with Representative Sub-modules
Hung Le, Hailin Chen, Amrita Saha, Akash Gokul, Doyen Sahoo, Shafiq Joty