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Hello, I'm Tae-Geun Kim 👋

🙋‍♂️ Introduce myself

👨‍🏫 Postdoctoral Researcher in Physics

🔬 Research Areas

  • AI for Science — neural operators, physics-informed deep learning, Hamiltonian learning
  • Dark matter physics — axion-like particles, primordial black holes, detectability studies
  • Scientific & High Performance Computing — numerical algorithms, Rust-based tools, parallel computing

💼 Portfolio

  • Comprehensive Rust numeric library for linear algebra, numerical analysis, statistics, and machine learning
  • Supports automatic differentiation, special functions, DataFrame, and BLAS/LAPACK integration
  • User-friendly syntax inspired by R, NumPy, and MATLAB
  • Novel learning rate schedulers addressing the learning curve decoupling problem in deep learning
  • Epoch-insensitive design enables stable training across varying durations without retuning
  • Evaluated on image classification, time series prediction, and operator learning tasks with PyTorch
  • Personal research assistant for arXiv — discover, organize, and annotate papers from the terminal
  • TF-IDF content similarity + category/keyword/recency scoring for personalized recommendations
  • Full TUI, AI summaries (Gemini/Claude/OpenAI/Ollama), reading lists, and export to Markdown/JSON/CSV
  • Pure Rust special functions library (gamma, beta, error functions) with zero dependencies
  • Lightweight implementation based on "Numerical Recipes" algorithms
  • Reinforcement Learning library in Rust with modular agents, environments, and policies
  • Includes Epsilon Greedy, Value Iteration, and Q-Learning implementations
More projects
  • Flexible PyTorch experiment template with YAML-based configuration
  • Supports multiple seeds, device selection, and LR scheduling for reproducible ML research
  • Rust automatic differentiation library using computational graphs
  • Forward/backward propagation with cached and non-cached gradient options
  • Deep learning network for mass and momentum estimation in high-energy collider events
  • Robust mass peak recovery under combinatoric uncertainties and detector smearing

📚 Publications

  • Yongsoo Jho, Tae-Geun Kim, Jong-Chul Park, Seong Chan Park and Yeji Park, Primordial Black Holes as a Factory of Axions: Extragalactic Photons from Axions, Prog. Theor. Exp. Phys. ptag011, arXiv:2212.11977 (2026)

  • Taehyeun Kim, Tae-Geun Kim, Anouk Girard, Ilya Kolmanovsky, Learning Hamiltonian Dynamics with Bayesian Data Assimilation, arXiv:2501.18808 (2025)

  • Tae-Geun Kim, Seong Chan Park, Neural Hamilton: Can A.I. Understand Hamiltonian Mechanics?, arXiv:2410.20951 (2024)

  • Tae-Geun Kim, HyperbolicLR: Epoch insensitive learning rate scheduler, arXiv:2407.15200 (2024)

  • Chang Min Hyun, Tae-Geun Kim, and Kyounghun Lee, Unsupervised sequence-to-sequence learning for automatic signal quality assessment in multi-channel electrical impedance-based hemodynamic monitoring, CMPB 108079, arXiv:2305.09368 (2023)

  • Kayoung Ban, Dong Woo Kang, Tae-Geun Kim, Seong Chan Park and Yeji Park, DeeLeMa : Missing information search with Deep Learning for Mass estimation, Phys. Rev. Research 5, 043186, arXiv:2212.12836 (2022)

🔖 Skills

  • Primary Languages : Rust, Python, C++, Julia
  • Frameworks & Libraries
    • Numerical Computing: peroxide, numpy, scipy, pandas/polars, BLAS/LAPACK, eigen, mathematica
    • Machine Learning: PyTorch, JAX/Equinox/Optax, W&B, Optuna, Candle, TensorFlow, Scikit-Learn
    • Visualization: matplotlib, vegas, ggplot2, plotly
    • High Energy Physics: BlackHawk, GALPROP, MadGraph, ROOT
    • Quantum Computing: PennyLane, Qiskit, Cirq, RustQIP
    • Web: Django, Vue, Firebase, Hugo, Zola, Elm

:octocat: Github contributions

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