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madamenich/README.md

Hello!

Welcome to my GitHub profile! I'm a passionate Machine Learning Software Engineer with a strong focus on Quantum Machine Learning and advanced AI research.

About Me

  • πŸ‘‚ My name is Chansreynich Huot
  • πŸŽ“ Education: Graduated from Pukyong National University, South Korea, with a Master of Engineering in AI Convergence.
  • πŸ”­ I’m currently working on: Machine Learning Software Engineering projects, developing scalable ML models and innovative solutions with a focus on Quantum Machine Learning.
  • 🌱 I’m currently learning: Advanced deep learning architectures, reinforcement learning strategies, quantum machine learning fundamentals, and data science best practices.
  • 🀝 I’m looking to collaborate on: Open-source machine learning projects, Quantum Machine Learning initiatives, and pioneering AI research.
  • πŸ€” I’m looking for help with: Optimizing algorithms, debugging complex models, and scaling ML systems for production.
  • πŸ’¬ Ask me about: Machine learning techniques, quantum computing applications in ML, software engineering challenges, or the latest in AI research.
  • πŸ“« How to reach me: Feel free to connect on LinkedIn.
  • ❀️ I love: Exploring new technologies, solving challenging problems, and constantly pushing the boundaries of what AI and quantum computing can do.
  • ⚑ Fun fact: I once experimented with training a neural network on quirky datasets – it ended up with a surprisingly humorous twist!

My Publications

  • Enhancing Knapsack-Based Financial Portfolio Optimization Using Quantum Approximate Optimization Algorithm
    Published in [IEEE Access], [2024]
    View Publication

  • Quantum Autoencoder for Enhanced Fraud Detection in Imbalanced Credit Card Dataset
    Published in [IEEE Access], [2024]
    View Publication

For a complete list of my publications, please visit my Google Scholar Profile.

πŸš€ Some Tools I Have Used and Learned

Python TensorFlow PyTorch Jupyter Matplotlib Scikit-Learn Dialogflow Streamlit JavaScript Node.js HTML5 CSS3 React Qiskit PennyLane Neo4j Spring Jakarta EE Elasticsearch Kafka Pentaho

Get In Touch

If you have any questions, ideas, or just want to chat about technology, feel free to drop me a message. I'm always excited to collaborate and share knowledge.


Thanks for stopping by!

Pinned Loading

  1. Dynamic-Zoomin-Foveated-Rendering-ICGHIT2023- Dynamic-Zoomin-Foveated-Rendering-ICGHIT2023- Public

    Jupyter Notebook

  2. QCL-PKNU/EPS-Monitoring QCL-PKNU/EPS-Monitoring Public

    Python 1

  3. QCL-PKNU/QAOA-Knapsack-Portfolio-Optimization QCL-PKNU/QAOA-Knapsack-Portfolio-Optimization Public

    Python 3 1

  4. Quantum-Fraud-Detection Quantum-Fraud-Detection Public

    Forked from QCL-PKNU/Quantum-Fraud-Detection

    Python 1

  5. Customs-Fraud-Detection Customs-Fraud-Detection Public

    Forked from Seondong/Customs-Fraud-Detection

    Simulation framework for customs fraud detection using import declarations.

    Jupyter Notebook 2