Shot Adaptation
Shot adaptation in machine learning focuses on efficiently adapting pre-trained models to new tasks or domains using only a limited number of examples (few-shot) or even a single example (one-shot). Current research emphasizes techniques like prompt engineering, adapter modules, and generative models (including diffusion models and GANs) to achieve this adaptation, often within the context of vision-language models and reinforcement learning. This field is significant because it addresses the limitations of traditional deep learning approaches that require massive datasets for effective generalization, paving the way for more robust and data-efficient AI systems across various applications, including robotics and medical imaging.
Papers
September 7, 2023
August 28, 2023
July 12, 2023
June 4, 2023
May 23, 2023
May 22, 2023
April 21, 2023
April 4, 2023
March 26, 2023
March 23, 2023
March 6, 2023
January 6, 2023
December 2, 2022
November 26, 2022
November 16, 2022
October 29, 2022
September 8, 2022
August 1, 2022