Model Synergy
Model synergy explores how combining different models or model components can achieve superior performance compared to using individual models alone. Current research focuses on leveraging this synergy in various applications, including improving large language models (LLMs) through modular designs and adaptive ensembling, enhancing the efficiency and accuracy of retrieval-augmented generation, and optimizing deep learning architectures for specific tasks like image processing and drug synergy prediction. This research is significant because it offers more efficient and effective solutions across diverse fields, ranging from robotics and autonomous systems to healthcare and materials science.
Papers
The Synergy between Data and Multi-Modal Large Language Models: A Survey from Co-Development Perspective
Zhen Qin, Daoyuan Chen, Wenhao Zhang, Liuyi Yao, Yilun Huang, Bolin Ding, Yaliang Li, Shuiguang Deng
Converging Paradigms: The Synergy of Symbolic and Connectionist AI in LLM-Empowered Autonomous Agents
Haoyi Xiong, Zhiyuan Wang, Xuhong Li, Jiang Bian, Zeke Xie, Shahid Mumtaz, Anwer Al-Dulaimi, Laura E. Barnes
Synergy of Large Language Model and Model Driven Engineering for Automated Development of Centralized Vehicular Systems
Nenad Petrovic, Fengjunjie Pan, Krzysztof Lebioda, Vahid Zolfaghari, Sven Kirchner, Nils Purschke, Muhammad Aqib Khan, Viktor Vorobev, Alois Knoll
Exploring Quantization and Mapping Synergy in Hardware-Aware Deep Neural Network Accelerators
Jan Klhufek, Miroslav Safar, Vojtech Mrazek, Zdenek Vasicek, Lukas Sekanina