148 lines
7.4 KiB
JSON
148 lines
7.4 KiB
JSON
[
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{
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"id": 1,
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"title": "PaperKeypad",
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"category": ["Misc"],
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"images": ["/assets/projects/keypad0.jpg"],
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"description": "Ever need to use a keyboard, but you got only your phone and a printer, PaperKeypad is a keypad that is made of paper.",
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"technologies": ["Java", "JavaFX", "Android Studio"],
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"features": ["Mobile sensor manipulation", "Responsive design"],
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"githubLink": "https://github.com/betato/PaperKeypad",
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"date": 2019
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},
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{
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"id": 2,
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"title": "StonkBot",
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"category": ["Misc"],
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"images": ["/assets/projects/stonkbot0.jpg"],
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"description": "The fear of losing money is common among first-time and seasoned investors alike. This inspired the creation of Stonk Bot, a fantasy trading platform that can be implemented in Discord.",
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"technologies": ["Python", "VS Code", "Matplotlib", "Financial Modeling Prep API", "Discord API"],
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"features": ["Buy shares", "Sell shares", "View stock information", "View personal portfolio", "View leaderboard"],
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"githubLink": "https://github.com/aidanbruneel/stonkbot",
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"liveLink": "https://discord.com/invite/tQNkk7v7R8",
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"date": 2022
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},
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{
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"id": 3,
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"title": "Car Model Classification",
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"category": ["Machine Learning"],
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"images": ["/assets/projects/carmodelclass0.png"],
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"description": "Developing a computer vision application to identify a vehicle model from a given image is an interesting and challenging problem to solve. Challenge of this problem is that different vehicle models can appear very similar and the same vehicle can look different and hard to identify depending on lighting conditions, angle and many other factors. In this project, I decided to train a Convolutional Neural Network(CNN) to generate a model that can identify a given vehicle model.",
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"technologies": ["Python", "Tensorflow", "CNN", "Deep learning", "ResNet", "EfficientNet", "Stanford Cars Dataset"],
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"features": ["Buy shares", "Sell shares", "View stock information", "View personal portfolio", "View leaderboard"],
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"githubLink": "https://github.com/mnisyif/carClassificationModel",
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"date": 2022
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},
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{
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"id": 4,
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"title": "Memory Allocation Simulations",
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"category": ["Misc"],
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"images": ["/assets/projects/memallc0.png"],
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"description": "This implementation uses doubly linked list to simulate memory allocation given 4 different memory management algorithms",
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"technologies": ["C", "CMake", "Data structures"],
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"features": ["First fit", "Best fit", "Next fit", "Worst fit"],
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"githubLink": "https://github.com/mnisyif/MemoryAllocationAlgorithm/tree/main",
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"date": 2022
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},
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{
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"id": 5,
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"title": "Transformer-based Semantic Transcoding",
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"category": ["Machine Learning"],
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"images": ["/assets/projects/semantic01.png"],
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"description": "Developed PyTorch models for E2E semantic transcoding, deployed on Xilinx SoC boards using Vitis AI™",
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"technologies": ["PyTorch", "Vitis AI", "Xilinx SoC", "Machine Learning", "C++"],
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"features": ["E2E semantic transcoding", "Hardware acceleration", "SoC deployment", "C++ deployment"],
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"githubLink": "https://github.com/mnisyif/masters-research",
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"date": 2024
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},
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{
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"id": 6,
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"title": "Clean Architecture C# Backend",
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"category": ["Web Development"],
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"images": ["/assets/projects/clean_architecture_backend.png"],
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"description": "Engineered a scalable portfolio website backend using C#, adhering to Clean Architecture principles and implementing CI/CD pipeline for efficient deployment",
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"technologies": ["C#", "Clean Architecture", "CI/CD", "REST Api"],
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"features": ["Scalable backend", "Clean Architecture implementation", "Automated deployment", "RESTful"],
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"githubLink": "https://github.com/mnisyif/portfolio-backend",
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"date": 2024
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},
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{
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"id": 7,
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"title": "DevOps Homelab Maestro",
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"category": ["DevOps"],
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"images": ["/assets/projects/homelab_maestro.png"],
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"description": "Orchestrating a robust homelab environment with Docker containers, Kubernetes clusters, Ceph distributed storage, and CI/CD pipelines for seamless application deployment",
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"technologies": ["Docker", "Kubernetes", "Ceph", "CI/CD"],
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"features": ["Containerized applications", "Orchestration", "Distributed storage", "Automated deployment"],
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"date": 2023
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},
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{
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"id": 8,
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"title": "RL Dynamic Noise Cancelling",
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"category": ["Machine Learning"],
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"images": ["/assets/projects/noise_cancelling.png"],
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"description": "Implemented real-time Automatic Noise Filtering using Reinforcement Learning and Dynamic Sparse Training in PyTorch",
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"technologies": ["PyTorch", "Reinforcement Learning", "Dynamic Sparse Training", "Jupyter Notebooks"],
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"features": ["Real-time filtering", "Automatic noise cancellation", "Sparse training", "Interactive development"],
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"githubLink": "https://github.com/mnisyif/rl-noise-cancelling",
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"date": 2023
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},
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{
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"id": 9,
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"title": "Real-Time Text-to-Braille",
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"category": ["Embedded Systems"],
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"images": ["/assets/projects/braille01.jpg","/assets/projects/braille02.jpg"],
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"description": "Built a Raspberry Pi device for real-time image-to-Braille conversion, enhancing accessibility for the deaf-blind community",
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"technologies": ["Raspberry Pi", "Image Processing", "OCR", "Python"],
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"features": ["Real-time conversion", "Low-cost OCR algorithm", "Lookup table for Braille conversion", "Accessibility enhancement"],
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"date": 2023
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},
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{
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"id": 10,
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"title": "ZAMAZ UTI Diagnosis",
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"category": ["Embedded Systems"],
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"images": ["/assets/projects/zamaz01.jpg","/assets/projects/zamaz02.jpg"],
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"description": "Developed a Raspberry Pi-based system for automated urine test analysis, achieving 16x faster results than standard methods",
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"technologies": ["Raspberry Pi", "Python", "Image Processing", "Healthcare Technology"],
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"features": ["Automated analysis", "Pixel-based concentration calculation", "E. Coli and Staph bacteria detection", "Rapid results"],
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"date": 2022
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},
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{
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"id": 11,
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"title": "HAM10K Image Classification with Deep Networks",
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"category": ["Machine Learning"],
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"images": ["/assets/projects/ham10k_classification.png"],
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"description": "Developed and compared three deep learning models (MLP+PCA, DCNN, RegNetY-320) for skin cancer classification using the HAM10000 dataset, achieving 96.89% accuracy with RegNetY-320",
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"technologies": ["PyTorch", "Deep Learning", "CNN", "RegNet", "PCA", "Python"],
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"features": ["Multi-model comparison", "Data balancing and augmentation", "High accuracy classification", "Medical image analysis"],
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"githubLink": "https://github.com/nithinprasad94/ENGG6600_DL_Final_Project",
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"liveLink":"https://youtu.be/zHbRmIn7gPo",
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"date": 2023
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},
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{
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"id": 12,
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"title": "Heart Disease Prediction Web App",
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"category": ["Machine Learning", "Web Development"],
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"images": ["/assets/projects/heartdis01.png"],
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"description": "Developed a Flask-based web application that predicts the likelihood of heart disease using machine learning models. The app processes user input, applies feature encoding and scaling, and provides instant predictions.",
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"technologies": [
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"Python",
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"Flask",
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"NumPy",
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"Scikit-learn",
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"Pickle",
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"HTML",
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"Machine Learning"
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],
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"features": [
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"User-friendly web interface for input",
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"Real-time prediction using pre-trained model",
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"Feature encoding and scaling",
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"Integration of multiple ML preprocessing steps",
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"Handling of both categorical and numerical inputs"
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],
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"githubLink": "https://github.com/zeyadghulam/engg6600-assignment3",
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"date":2023
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}
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]
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