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Taehyeon Kim

 Prev: Google Research (NYC), Qualcomm AI, DynamoFL (YCW22)
 PhD Student @ KAIST AI [OSI Lab]
Education
 PhD - KAIST AI
 MS - KAIST Data Science
 BS - KAIST Mathematical Science
[Minor-Intellectual Property]
I am a Ph.D. Student in Optimization & Statistical Inference (OSI) Lab @ KAIST, advised by Prof. Se-Young Yun. I worked as a PhD Intern @ Google ResearchQualcomm AI, and DynamoFL (YCW22). My expected graduation date is Feb. 2025.  Contact: potter32 [at] kaist.ac.kr, kimtaehyeon610 [at] gmail.com (permanent)
I am in the job market! Please feel free to contact me!  Click CV & LinkedIn (Updated: Oct, 2024)!

 About

My goal is to tackle trustworthy and real-world AI/ML challenges
LLM Inference: Instructive Decoding, Speculative Decoding, Parallel Decoding
Alignment Algorithm: Knowledge Distillation & Learning with Noisy Labels
Data Heterogeneity: Federated Learning & AutoML & Semi-Supervised Learning
Game-Changing Research

 CV (Updated: Oct 10, 2024)

️ News

Oct. 2024
 1 Accepted @ NeurIPS2024W: Speculative Decoding with multiple drafters
Sep. 2024
 Successfully passed my PhD Proposal!
 1 Accepted @ EMNLP2024 Main - Specialized Speculative Decoding!
 2 Accepted @ NeurIPS 2024 - Speculative Decoding and Block Transformer!
Jun. 2024
 1 Accepted @ ICML2024W: Blockwise Parallel Decoding (Speculative Decoding)
May. 2024
 Attending ICLR 2024 @ Vienna, Aus  
Jan. 2024
 1 Accepted @ ICLR2024 (Spotlight): Instruction Following on Large Language Model
Dec. 2023
 1 Accepted @ NeurIPS2023W: Instruction Tuning & Instruction Following
 1 Accepted @ NeurIPS2023: Semi-Supervised Federated Object Detection
 Attending NeurIPS 2023 @ NOLA, US  
 1 Accepted @ AAAI2024: Few-shot & Domain Generalization
Oct. 2023
 Working with Google Research NYC

Working at/with

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Name
When
Research
Advisor/Coworker
2023.01 - 2023.05
Semi-Supervised Object Detection
Federated Learning
Eric Lin
2017.03 - 2018.02
Trajectory Prediction
Jaegil Lee

 Publications & Technical Reports

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Title
Conference and Journal
Author
COUNT23

Preprints (Under Review)

 Hypernetwork-Driven Model Fusion for Federated Domain Generalization
Marc Bartholet*, Taehyeon Kim*, Ami Beuret, Se-Young Yun, Joachim M. Buhmann
 FLR: Label-Mixture Regularization for Federated Learning with Noisy Labels
Taehyeon Kim, Donggyu Kim, Se-Young Yun

 Leadership Awards  Activities

 Research Projects

 Invited Talks

 Services & Others

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 Others