System Performance
System performance research focuses on optimizing the efficiency and accuracy of various computational systems, from machine learning models to robotic controllers and even quantum computers. Current research emphasizes improving model architectures (e.g., graph-oriented databases for language models, retention-based networks for multi-agent reinforcement learning) and training techniques (e.g., hard sample mining, co-optimization of design and control), while also addressing issues like fairness, robustness, and explainability. These advancements have significant implications for diverse fields, impacting the development of more efficient and reliable AI systems, improved medical diagnostics, and enhanced manufacturing processes.
Papers
Exploring the Performance of Continuous-Time Dynamic Link Prediction Algorithms
Raphaël Romero, Maarten Buyl, Tijl De Bie, Jefrey Lijffijt
Synergy and Diversity in CLIP: Enhancing Performance Through Adaptive Backbone Ensembling
Cristian Rodriguez-Opazo, Ehsan Abbasnejad, Damien Teney, Edison Marrese-Taylor, Hamed Damirchi, Anton van den Hengel
Implantable Adaptive Cells: differentiable architecture search to improve the performance of any trained U-shaped network
Emil Benedykciuk, Marcin Denkowski, Grzegorz Wójcik
Causal inference approach to appraise long-term effects of maintenance policy on functional performance of asphalt pavements
Lingyun You, Nanning Guo, Zhengwu Long, Fusong Wang, Chundi Si, Aboelkasim Diab