Speaker
Hyunwoo J Kim
Title
Efficient Deep 먹튀 검증 사이트 Understanding Towards AGI
Abstract
먹튀 검증 사이트 has become one of the most popular modalities that modern individuals consume and produce. However, developing AI systems that deeply understand 먹튀 검증 사이트s is still a challenging goal due to the difficulty of annotations, the sheer volume of data, and the substantial computational burden required for training and inference of 먹튀 검증 사이트 models. To address these problems, I introduce new strategies for pre-training and fine-tuning 먹튀 검증 사이트 foundation models, including parameter-efficient fine-tuning (PEFT). Additionally, to deploy 먹튀 검증 사이트 models to users, I present training-free cost-efficient inference techniques for 먹튀 검증 사이트 transformers. To demonstrate the generalizability of 먹튀 검증 사이트 foundation models, I highlight our recent work in '먹튀 검증 사이트 Question Answering' which implicitly requires tackling various subtasks and achieving a deeper understanding of 먹튀 검증 사이트s. Lastly, I discuss how 먹튀 검증 사이트 QA and Multimodal QA systems can serve as stepping stones towards artificial general intelligence, and outline future research directions.
Bio
Hyunwoo J. Kim is an associate professor at Korea University, where he leads Machine Learning and Vision Lab (MLV). His lab focuses on developing techniques for general-purpose AI systems, including multimodal foundation models, multi-modal question answering, efficient inference, and new neural network architectures. Prior to this position, he worked at Amazon Lab126 in Sunnyvale, California. He obtained a Ph.D. in Computer Sciences at the University of Wisconsin-Madison (Ph.D minor in statistics). He has served (or is serving) as an Area Chair for ICLR 2025, ICCV 2025, CVPR 2025, 2024 and co-organized the 1st and 2nd MICCAI workshops on Foundation Models for General Medical AI in 2023 and 2024.
Language
English