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ChaeheePark/README.md

CHAEHEE PARK(박채희), 1999.03.08

Hello! I'm Chaehee Park!

💻 I'm interested in Generative AI, Comupter Vision, AI for Social Good, Human-Centered AI

➿ Please see my CV

EDUCATION

Sungkyunkwan University, Seoul, Republic of Korea, March 2023 - Present

  • M.Sc. in Applied Artificial Intelligence

Sangmyung University, Seoul, Republic of Korea, March 2019 - Feb. 2023

  • B.S. in Human-centered AI (6/41)
  • B.S. in Applied Artificial Intelligence

Donghwa High School, Namyangju, Gyeonggi, Republic of Korea, March 2015 - Feb.2018

RESEARCH EXPERIENCE

✔️ Data Science & Artificial Intelligence Laboratory, Sungkyunkwan University, Seoul, Republic of Korea, Dec. 2022 - Present

✔SKT AI Fellowship 5th generation, June 2023 - Nov. 2023

NC SOFT Corp., NLP Center, Working as Language Data Team assistant, June 2022 - Sep. 2022

PUBLICATIONS

"A Study on Ensemble Model for Predicting Prompts in Images Generated by Diffusion Model", Chaehee Park, Migyeong Yang, et al., KIBME Summer Conference 2023, Jeju, June 2023. (Domestic)

"On the Deep Generative Models Explaining the Rationale to Emotionally Supportive Conversations", Eunhye Jeong & Chaehee Park (equal contributions) & Hyejin Hong, and Jeehang Lee*, KOSES Autumn Conference 2022, Busan, Oct. 2022. (Domestic)

Pinned

  1. XAI-Emotionally-Supportive-Conversations XAI-Emotionally-Supportive-Conversations Public

    This model primarily generates emotionally supportive dialogue in response to the user input, whilst it infers the type of user’s emotion, its intensity and the treatment strategy as a rationale.

    Python 4 3