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JagpreetJakhar/README.md

πŸ‘‹ Hi, I'm Jagpreet Jakhar!

Welcome to my GitHub profile! I am a skilled Software Engineer specializing in Computer Vision, with a focus on object detection, tracking, and motion planning. I hold a Master's degree with distinction in Cybersecurity and Artificial Intelligence from the University of Sheffield, England.


πŸ”§ Tech Stack:

Languages:

Python C HTML CSS JavaScript

Frameworks & Tools:

PyTorch Docker Terraform AWS GCP Tailwind CSS React Next.js


πŸ† Work Experience:

  • Graduate Teaching Assistant - University of Sheffield
    Supporting students in Big Data Analytics, Database Design, and Data Modelling using tools like Databricks, AWS, SQLite, and Python.

  • Software Engineer - Swig Solutions, India
    Designed and developed responsive, user-friendly web applications tailored for diverse client needs.

  • Industrial Trainee - Codeburnerz Technologies, India
    Contributed to the development of a School Management System.


πŸ“š Education:

  • M.Sc. Cybersecurity and Artificial Intelligence - University of Sheffield

    • Grade: Distinction
    • Modules: Scalable Machine Learning, Natural Language Processing, Text Processing, Cyber Threat Hunting, Secure Software Development.
  • B.Tech. Computer Science - Maharshi Dayanand University

    • Modules: Neural Networks, Web Development, Database Management Systems, Compiler Design.

πŸš€ Featured Projects:

  • Football Analysis Using Computer Vision
    This project analyses football matches using advanced computer vision techniques, including YOLO for object detection (players, ball, referees),ByteTrack for tracking movements and KMeans and SigLip for team classification.

  • Neural ODEs for Domain Wall Analysis
    Developed models to analyze copper nano wire domain walls under oscillating magnetic fields using Neural ODEs and compared results with RNNs and LSTMs.
    Tech Stack: Python, PyTorch, TensorFlow.

  • Facial Recognition Neural Networks
    Contributed to CNN-based facial recognition systems utilizing Python, OpenCV, and dlib.

🌐 Connect with Me:

Website
LinkedIn
GitHub
Email


Visitor Count

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  1. advent_of_code_2024 advent_of_code_2024 Public

    Python

  2. Dissertation Dissertation Public

    Jupyter Notebook

  3. Facial_Recognition Facial_Recognition Public

    Facial recognition using Dlib and Pre-trained 68 landmark face detection model

    Python

  4. Resume Resume Public