Skip to content

boyunJang/boyunjang.github.io

 
 

Repository files navigation

layout title permalink
page
About Me
/about/

Intro

Machine Learning Engineer in NAVER Corp, interested in NLP, Information Retrieval and Ranking Systems. Hobby Photographer based on ROK and DKK.

Who am I?

  • boyunj0226@gmail.com / Linkedin / Instagram

  • Hi, I'm Machine Learning Engineer of DeepContextual search team (Local Search) in NAVER corp. The main tasks I'm doing now are applying Natural Language Processing skills into search engine, especially for recommending proper local area results to users. Interested in studying Deep Learning for NLP, Information Retrieval and Ranking Systems.

  • Optained a master's degree in Sungkyunkwan University, Major in Artificial Intelligence. A graduation thesis : predicting next POA (Point of Attachment) of users in wireless network systems using GAN, The paper was presented in HDR-Nets Workshop in IEEE ICNP 2020,

  • Hobby Photographer based on 🇰🇷🇩🇰, so also love to talk about photography and travelling.

Main Skills

  • Main Language : Python, available for C, C++ and JAVA also
  • Available Skills : PyTorch, Tensorflow 1.X and 2.X including Keras, HDFS, PySpark
  • Extra : ONNX, Android, Flask, some HTML skills like CSS and JavaScript, etc.

Work Experience

  • NAVER Corp
    • Jul 2021 - / Republic of Korea
    • ML Engineer in Local Search team in Search CIC.
    • Working with optimizing POI based search engine environment, mainly applying NLP techinques.

Education

  • Sungkyunkwan Univ. (MS)
    • Mar 2020 - Aug 2021 / Republic of Korea
    • Major : Artificial Intelligence (AI)
    • GPA : 4.44
    • Master's thesis : GAN based Next PoA Selection for Proactive Mobility Management
    • Conference paper link
  • Sungkyunkwan Univ. (BS)
    • Mar 2015 - Feb 2020 / Republic of Korea
    • Major : Chemistry, Computer Engineering (Double Major)
    • GPA : 3.75
  • University of Copenhagen (Exchange student)
    • Jan 2018 - Jul 2018 / Denmark
    • Major : Chemistry

About

Simple and Lightweight Theme for Jekyll

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • CSS 83.0%
  • HTML 13.6%
  • JavaScript 1.3%
  • Ruby 1.2%
  • Makefile 0.9%