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Pinkey Kavar Bika

Computer Science and Engineering undergraduate · AI/ML and Java developer

Bengaluru, India

@pinkey

0 followers

🎓 BE in Computer Science and Engineering · Graduating 2027

About

Computer Science and Engineering undergraduate with a strong foundation in Java, data structures and algorithms, OOP, and DBMS. IEEE-published researcher in computer vision with hands-on experience in AI/ML and deep learning, focused on building scalable software and AI-powered solutions.

Education

  • BE in Computer Science and Engineering
    K. S. Institute of Technology
    Computer Science and Engineering · 2023 – 2027
  • PUC
    St. Anne’s PU College
    2020 – 2022

Skills

Projects

  • EfficientNetV2-S, ConvNeXt-Tiny, Grad-CAM, PyTorch, OpenCV, NumPy, Pandas, Scikit-learn, Streamlit, VS Code

    Built a deep learning-based oral cancer screening prototype using EfficientNetV2-S and planned a ConvNeXt-Tiny ensemble. Implemented training, evaluation, Grad-CAM visualization, and a Streamlit deployment prototype.

  • Java, JSP, Servlets, JDBC, MySQL, HTML, CSS, JavaScript

    Developed a full-stack web application to streamline online food ordering and restaurant management with authentication, menu management, shopping cart, order processing, and CRUD-based database operations.

  • Python, PyTorch, YOLOv11, OpenCV, NumPy, Scikit-learn, Matplotlib, VS Code

    Developed a two-stage computer vision system to detect mulberry vs. non-mulberry leaves and classify healthy vs. diseased mulberry leaves. Built an end-to-end deep learning pipeline with augmentation, training, validation, prediction, and performance visualization.

Courses & certifications

  • Python for Computer Vision with OpenCV and Deep Learning · Udemy

📚 Publications

  • YOLOV11n-Based Hierarchical Framework for Mulberry Leaf Health Assessment · 2026

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عبر الإنترنت · مساعدة فورية بالذكاء الاصطناعي
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