Automatic Tuning
Automatic tuning aims to optimize the parameters of complex systems, algorithms, or models without manual intervention, improving efficiency and performance. Current research focuses on leveraging machine learning techniques, particularly Bayesian optimization and reinforcement learning, often in conjunction with large language models or pre-trained foundation models, to automate this process across diverse applications. This automated approach is significantly impacting fields ranging from particle accelerator control and robotics to database management and deep learning model adaptation, enabling more efficient and effective utilization of complex systems.
Papers
OneTracker: Unifying Visual Object Tracking with Foundation Models and Efficient Tuning
Lingyi Hong, Shilin Yan, Renrui Zhang, Wanyun Li, Xinyu Zhou, Pinxue Guo, Kaixun Jiang, Yiting Chen, Jinglun Li, Zhaoyu Chen, Wenqiang Zhang
uaMix-MAE: Efficient Tuning of Pretrained Audio Transformers with Unsupervised Audio Mixtures
Afrina Tabassum, Dung Tran, Trung Dang, Ismini Lourentzou, Kazuhito Koishida