Scalable Personalization
Scalable personalization aims to tailor experiences and services to individual users while maintaining efficiency and addressing privacy concerns. Current research focuses on developing methods that leverage large language models (LLMs), diffusion models, and federated learning, often incorporating techniques like mixture-of-experts, parameter-efficient tuning, and cognitive models to improve accuracy and reduce computational costs. These advancements are significant for various applications, including personalized medicine, e-commerce recommendations, and adaptive educational technologies, offering the potential for more effective and user-centric systems. However, challenges remain in balancing personalization with data privacy and mitigating potential biases.
Papers
HyperDreamBooth: HyperNetworks for Fast Personalization of Text-to-Image Models
Nataniel Ruiz, Yuanzhen Li, Varun Jampani, Wei Wei, Tingbo Hou, Yael Pritch, Neal Wadhwa, Michael Rubinstein, Kfir Aberman
Domain-Agnostic Tuning-Encoder for Fast Personalization of Text-To-Image Models
Moab Arar, Rinon Gal, Yuval Atzmon, Gal Chechik, Daniel Cohen-Or, Ariel Shamir, Amit H. Bermano