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  • University of Missouri, Columbia
  • USA
  • 05:36 (UTC -05:00)

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mahadyRayhan/README.md

πŸ‘‹ Hello, I'm Mahady Hasan Rayhan!

I'm a Ph.D. Candidate in Computer Science at the University of Missouri-Columbia, deeply passionate about the convergence of AI, Machine Learning, and their real-world applications. My research interests lie in Knowledge Graphs, Generative AI, and Agent-based Systems, with a focus on developing innovative solutions for complex industrial challenges.


πŸš€ Quick Overview

  • 🎯 Research Focus: Knowledge Graphs, Generative AI, Agent-based Systems, Explainable AI (XAI)
  • πŸŽ“ Current Status: Pursuing Ph.D. in Computer Science, University of Missouri-Columbia
  • πŸ”₯ Passionate About: Transforming industries with cutting-edge AI research

πŸ“Š My GitHub Profile in Action

⚑ Recent Highlights (2024)

  • Total Stars: ⭐ 4
  • Total Commits: πŸ”„ 18
  • Total PRs: ✨ 1
  • Total Issues: πŸ› 2
  • Contributions to Other Repos: πŸ“š 0

πŸ› οΈ My Tech Stack

Category Technologies
Programming Languages Python Java C++
Data Science NumPy Pandas Matplotlib Seaborn
Databases & Knowledge Graphs SQLite MySQL Neo4j Cypher
Machine Learning Scikit-learn Keras TensorFlow PyTorch
Computer Vision OpenCV Open3D
Tools & Platforms Git Docker Weights & Biases

πŸ”₯ Pinned Repositories

🌟 Featured Projects

Project Description
πŸ”— Agentic RAG for CNT Research A cutting-edge framework leveraging Retrieval-Augmented Generation (RAG) and agent-based modeling to enable dynamic, real-time experimental simulations in complex networks.
πŸ”— Knowledge Graph-Powered Recommendation System An explainable AI (XAI) recommendation system that harnesses the power of knowledge graphs to provide transparent and insightful recommendations.

πŸ“© Connect With Me

Contact Method Link
Email
LinkedIn
GitHub

Feel free to explore my repositories, and don't hesitate to reach out if you'd like to collaborate or discuss exciting AI research opportunities!

Pinned Loading

  1. Docker_ML_webapp Docker_ML_webapp Public

    Python 2

  2. AppImage-linux-executable AppImage-linux-executable Public

    CMake 1

  3. Multi-label-Model-vs-Multi-output-model Multi-label-Model-vs-Multi-output-model Public

    Python

  4. TensorImageClassification TensorImageClassification Public

    Java

  5. Sentiment-Analysis-Web-App Sentiment-Analysis-Web-App Public

    TypeScript

  6. Tensorflow-2-Object-Detection Tensorflow-2-Object-Detection Public

    Tensorflow Object Detection Custom training

    Jupyter Notebook