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Mephisto405/README.md

In-Young Cho / ์กฐ์ธ์˜

ciy405x@gmail.com / (+82) 10-9504-8680 / Seoul, South Korea / LinkedIn

Machine Learning Engineer with 4 years of experience since 2021.
Focus: 3D Deep Learning, Generative Models, Cross-Platform Systems, Performance Optimization.

Currently building production-ready 3D content generation pipelines based on diffusion and language models.
Main interest: making 3D ML models run faster, cheaper, and more useful for games, graphics, and visual applications.


Selected Projects


Tech Stack

  • Languages: Python, C++, JavaScript
  • Frameworks: PyTorch, TensorFlow, ONNX
  • Graphics: CUDA, OpenGL, WebGL
  • Infra/Tools: Unreal Engine, Blender

Background

  • Current: ML Engineer at KRAFTON (the PUBG company), deploying AI-driven content creation pipelines
  • Previous: ML Engineer at SPACEWALK, optimizing architectural design via reinforcement learning (RL)
  • Education:
    • MS in Computer Science, KAIST
      • Thesis on Monte Carlo rendering denoising
      • GPA 4.25 / 4.30
    • BS in Computer Science and Mathematics, KAIST
      • GPA 4.00 / 4.30
      • Double major
      • Dean's List (Top 3%) for 3 consecutive semesters
    • Most enjoyably immersed courses: Computer Graphics, Operating Systems, Real/Complex/Numerical Analysis, Linear Algebra, Matrix Computation, 3D Machine Learning, and GPU Programming
    • Advised and mentored 50 undergraduate students as a counseling assistant

Pinned Loading

  1. WCMC WCMC Public

    Weakly-Supervised Contrastive Learning in Path Manifold for Monte Carlo Image Reconstruction [Cho et al. SIGGRAPH 2021]

    Python 31 3

  2. OptaGen OptaGen Public

    Optix-based automated data generation tool

    C 2

  3. Learning-Loss-for-Active-Learning Learning-Loss-for-Active-Learning Public

    Reproducing experimental results of LL4AL [Yoo et al. 2019 CVPR]

    Python 222 49

  4. Unsupervised-Out-of-Distribution-Detection-by-Maximum-Classifier-Discrepancy Unsupervised-Out-of-Distribution-Detection-by-Maximum-Classifier-Discrepancy Public

    Reproducing experimental results of OOD-by-MCD [Yu and Aizawa et al. ICCV 2019]

    Python 30 3

  5. NeRF-Reproduce NeRF-Reproduce Public

    CS492 3D-ML Term Project by In-Young Cho

    Python 5

  6. Accelerated-Ray-Tracing-in-One-Weekend-in-CUDA Accelerated-Ray-Tracing-in-One-Weekend-in-CUDA Public

    Inspired by https://devblogs.nvidia.com/accelerated-ray-tracing-cuda/

    C++