Learnable Parameter
Learnable parameters are adjustable components within machine learning models that are optimized during training to improve performance on a given task. Current research focuses on developing parameter-efficient methods, such as low-rank adaptations and techniques that selectively learn only subsets of parameters, to reduce computational costs and memory demands, particularly for large language and vision models. This area is crucial for advancing model efficiency, interpretability, and scalability, enabling deployment of powerful models on resource-constrained devices and facilitating the development of more robust and adaptable AI systems.
Papers
August 23, 2023
June 1, 2023
May 18, 2023
April 21, 2023
March 21, 2023
March 1, 2023
January 31, 2023
December 7, 2022
October 26, 2022
October 23, 2022
October 11, 2022
August 16, 2022
May 22, 2022
May 1, 2022
March 14, 2022
December 21, 2021