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Samsung AI Forum 2024

Samsung
AI Forum 2024
Samsung
AI Forum 2024

Samsung
AI Forum 2024

About the Forum About the Forum About the Forum

Date Date Date

November 4 (Mon.) 09:30 (KST, UTC+9)

November 4 (Mon.) 09:30 (KST, UTC+9)

November 4 (Mon.) 09:30 (KST, UTC+9)

Location Location Location

Suwon Convention Center

Suwon Convention Center

Suwon Convention Center

Speakers Speakers Speakers

Jong Hee Han
Jong Hee Han
Samsung Electronics

Yoshua Bengio
Yoshua Bengio
Montreal Univ.

Yann LeCun
Yann LeCun
Meta

Young Sang Choi
Young Sang Choi
Samsung Electronics

Joseph Macri
Joseph Macri
AMD

Kyomin Sohn
Kyomin Sohn
Samsung Electronics

Jaeyong Park
Jaeyong Park
Samsung Electronics

MyungJoo Ham
MyungJoo Ham
Samsung Electronics

Jaihyuk Song
Jaihyuk Song
Samsung Electronics

Samsung AI Researcher 2024 Awardee Samsung AI Researcher 2024 Awardee Samsung AI Researcher 2024 Awardee

Shuran Song
Shuran Song
Stanford Univ

She is a prominent figure in the field of robotics and perception, known for her significant contributions to 3D modeling and algorithm development. Her work has focused on recognizing and reasoning about 3D shapes, which has earned her multiple best paper awards. She has also showcased impressive capabilities in tackling challenging robotic tasks.


She is a prominent figure in the field of robotics and perception, known for her significant contributions to 3D modeling and algorithm development. Her work has focused on recognizing and reasoning about 3D shapes, which has earned her multiple best paper awards. She has also showcased impressive capabilities in tackling challenging robotic tasks.


She is a prominent figure in the field of robotics and perception, known for her significant contributions to 3D modeling and algorithm development. Her work has focused on recognizing and reasoning about 3D shapes, which has earned her multiple best paper awards. She has also showcased impressive capabilities in tackling challenging robotic tasks.

Tatsunori Hashimoto
Tatsunori Hashimoto
Stanford Univ

He has made substantial contributions to artificial intelligence, specifically in the areas of distributional robustness, sequence modeling, and bioinformatics. He has processing (NLP) and large language models (LLMs). His recent research, which focuses on human feedback and evaluation in LLMs, exemplifies both innovation and impact in the field.


He has made substantial contributions to artificial intelligence, specifically in the areas of distributional robustness, sequence modeling, and bioinformatics. He has processing (NLP) and large language models (LLMs). His recent research, which focuses on human feedback and evaluation in LLMs, exemplifies both innovation and impact in the field.


He has made substantial contributions to artificial intelligence, specifically in the areas of distributional robustness, sequence modeling, and bioinformatics. He has processing (NLP) and large language models (LLMs). His recent research, which focuses on human feedback and evaluation in LLMs, exemplifies both innovation and impact in the field.

He He
He He
NYU

She has demonstrated her expertise at the crossroads of machine learning, natural language processing, and artificial intelligence. Her pioneering research on coaching as a model for imitation learning has been particularly notable. Her work encompasses both the algorithmic facets of AI and its broader societal implications, including safety and consequences.


She has demonstrated her expertise at the crossroads of machine learning, natural language processing, and artificial intelligence. Her pioneering research on coaching as a model for imitation learning has been particularly notable. Her work encompasses both the algorithmic facets of AI and its broader societal implications, including safety and consequences.


She has demonstrated her expertise at the crossroads of machine learning, natural language processing, and artificial intelligence. Her pioneering research on coaching as a model for imitation learning has been particularly notable. Her work encompasses both the algorithmic facets of AI and its broader societal implications, including safety and consequences.

Aviral Kumar
Aviral Kumar
CMU

He has made substantial strides in the field of offline and safe reinforcement learning, tackling the constraints of online learning in delicate real-world settings. His recent contributions to contemporary large-scale language models illustrate how progress in offline reinforcement learning can optimize training procedures.


He has made substantial strides in the field of offline and safe reinforcement learning, tackling the constraints of online learning in delicate real-world settings. His recent contributions to contemporary large-scale language models illustrate how progress in offline reinforcement learning can optimize training procedures.


He has made substantial strides in the field of offline and safe reinforcement learning, tackling the constraints of online learning in delicate real-world settings. His recent contributions to contemporary large-scale language models illustrate how progress in offline reinforcement learning can optimize training procedures.

Jun-Yan Zhu
Jun-Yan Zhu
CMU

He has made significant contributions to the fields of vision and graphics, with a particular focus on generative image models. Notably, he has demonstrated the potential of Generative Adversarial Networks (GANs) to rival the performance of diffusion models, provided that sufficient data is available. This has been achieved through the implementation of innovative strategies aimed at enhancing the capabilities of GANs. His work addresses fundamental empirical questions and has resulted in substantial advancements within the field.


He has made significant contributions to the fields of vision and graphics, with a particular focus on generative image models. Notably, he has demonstrated the potential of Generative Adversarial Networks (GANs) to rival the performance of diffusion models, provided that sufficient data is available. This has been achieved through the implementation of innovative strategies aimed at enhancing the capabilities of GANs. His work addresses fundamental empirical questions and has resulted in substantial advancements within the field.


He has made significant contributions to the fields of vision and graphics, with a particular focus on generative image models. Notably, he has demonstrated the potential of Generative Adversarial Networks (GANs) to rival the performance of diffusion models, provided that sufficient data is available. This has been achieved through the implementation of innovative strategies aimed at enhancing the capabilities of GANs. His work addresses fundamental empirical questions and has resulted in substantial advancements within the field.

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