We are a research group headed by Prof. Jaekyun Moon in the School of EE at KAIST (also affiliated with the Graduate School of AI and School of Computing at KAIST). We work on distributed/federated machine learning, robust AI and resource-efficient AI, addressing all key issues in the deployment of practical AI systems :
연합학습, 거대모델 경량화 및 개인화, 차세대 트랜스포머 모델 등 AI 구현 관련 최신 이슈들에 관심있는 석사학위지망생 (카이스트 장학생)을 모집합니다. 간단한 자기 소개, 수강과목 리스트, GPA 정보를 이메일(jmoon@kaist.edu)로 보내기 바랍니다.
연합학습, 거대모델 경량화 및 개인화, 차세대 트랜스포머 모델 등 AI 구현 관련 최신 이슈들에 관심있는 석사학위지망생 (카이스트 장학생)을 모집합니다. 간단한 자기 소개, 수강과목 리스트, GPA 정보를 이메일(jmoon@kaist.edu)로 보내기 바랍니다.
News
2024.09 | Dr. Dong-Jun Han, a Ph.D. alumnus of our group, has joined the Department of Computer Science and Engineering at Yonsei University as an Assistant Professor! |
2024.05 | D.-Y. Kim's paper entitled "Achieving Lossless Gradient Sparsification via Mapping to Alternative Space in Federated Learning" accepted for publication in ICML 2024 |
2023.12 | W. Choi's paper entitled "Consistency-Guided Temperature Scaling Using Style and Content Information for Out-of-Domain Calibration" accepted for publication in AAAI 2024 |
2023.10 | D.-J. Han's paper entitled "Federated Split Learning with Joint Personalization-Generalization for Inference-Stage Optimization in Wireless Edge Networks" accepted for publication in IEEE Transactions on Mobile Computing |
2023.09 | Three papers accepted to NeurIPS 2023: (Congratulations!)
|
2023.05 | D.-J. Han and J. Park's paper entitled "Improving Low-Latency Predictions in Multi-Exit Neural Networks via Block-Dependent Losses" accepted for publication in IEEE Transactions on Neural Networks and Learning Systems |
2023.04 | J. Park and D.-J. Han's paper entitled "Test-Time Style Shifting: Handling Arbitrary Styles in Domain Generalization" accepted to ICML 2023 |
2023.03 | Y. Park's paper entitled "Distribution Aware Active Learning via Gaussian Mixtures" accepted to ICLR Workshop on Pitfalls of limited data and computation for Trustworthy ML |
2023.01 | Two papers accepted to ICLR 2023:
|
2022.12 | D.-J. Han's paper entitled "SplitGP: Achieving Both Generalization and Personalization in Federated Learning," accepted to IEEE INFOCOM 2023 |
2022.08 | S. Kim's paper entitled "Deep Neural Network Compression for Image Inpainting," accepted to ECCV Workshop |
2022.06 | Two papers accepted to ICML Workshop:
|
2022.05 | J. Sohn's paper entitled "GenLabel: Mixup Relabeling using Generative Models" accepted to ICML 2022 |
2022.04 | Two papers accepted to CVPR Workshop:
|
2022.04 | D.-J. Han received the Best Ph.D. Dissertation Award from KAIST EE |
2021.10 | Y. Park's paper entitled "CAFENet: Class-Agnostic Few-Shot Edge Detection Network" accepted to BMVC 2021 |
2021.09 | Two papers accepted to NeurIPS 2021:
|
2021.08 | D.-J. Han's paper entitled "FedMes: Speeding Up Federated Learning with Multiple Edge Servers" accepted for publication in IEEE Journal on Selected Areas in Communications |
2021.07 | Two papers accepted to ICML Workshop:
|
2021.06 | D.-J. Han's paper entitled "Coded Wireless Distributed Computing with Packet Losses and Retransmissions" accepted for publication in IEEE Transactions on Wireless Communications |
2020.12 | D.-J. Han's paper entitled "TiBroco: A Fast and Secure Distributed Learning Framework for Tiered Wireless Edge Networks" accepted to IEEE INFOCOM 2021 |
2020.12 | M. Choi's paper entitled "Probabilistic Caching and Dynamic Delivery Policies for Categorized Contents and Consecutive User Demands" accepted for publication in IEEE Transactions on Wireless Communications |
2020.11 | D.-J. Han's paper entitled "Hierarchical Broadcast Coding: Expediting Distributed Learning at the Wireless Edge" accepted for publication in IEEE Transactions on Wireless Communications |
2020.10 | S. Park's paper entitled "Characterization of Inter-Cell Interference in 3D NAND Flash Memory" accepted for publication in IEEE Transactions Circuits and Systems I: Regular Papers |
2020.09 | J. Sohn's paper entitled "Election Coding for Distributed Learning: Protecting SignSGD against Byzantine Attacks" accepted to Neural Information Processing Systems (NeurIPS) 2020 |
2020.07 | J. Sohn's paper entitled "GAN-mixup: Augmenting Across Data Manifolds for Improved Robustness" accepted to ICML Workshop on Uncertainty & Robustness in Deep Learning |
2020.06 | S. W. Yoon and D.-Y. Kim's paper entitled "XtarNet: Learning to Extract Task-Adaptive Representation for Incremental Few-Shot Learning" accepted to International Conference on Machine Learning (ICML) 2020 |
2020.03 | Dr. Sung Whan Yoon, a Ph.D. alumnus of our group joined UNIST as an Assistant Professor |
2020.03 | Dr. Minseok Choi, a Ph.D. alumnus of our group joined Jeju National University as an Assistant Professor |
2020.03 | So Yeong Kim and Jinho Kim joined our lab. Welcome! |
2019.07 | M. Choi's paper entitled “Dynamic Power Allocation and User Scheduling for Power-Efficient and Delay-Constrained Multiple Access Networks” accepted for publication in IEEE Transactions on Wireless Communications |
2019.06 | B. Choi's paper entitled "Secure Clustered Distributed Storage Against Eavesdropping" accepted for publication in IEEE Transactions on Information Theory |
2019.04 | S. W. Yoon and J. Seo's paper entitled "TapNet: Neural Network Augmented with Task-Adaptive Projection for Few-Shot Learning" accepted to the 36th International Conference on Machine Learning (ICML) 2019 |
2019.04 | Four papers accepted in IEEE International Symposium on Information Theory (ISIT) 2019
|