Abhinav Kumar Mishra (abhikrm0102)

abhikrm0102

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Company:Dr. Vishwanath Karad MIT World Peace University (MIT-WPU), Pune

Location:Pune, Maharashtra, India

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Abhinav Kumar Mishra's repositories

abhikrm0102

Config files for my GitHub profile.

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Online-Voting-System

The "Online Voting System" revolutionizes elections with its Full Stack Development using PHP, HTML, CSS, and MySQL. Ensuring security, user-friendliness, and accessibility, it simplifies voting, enhances administration, and offers a scalable digital solution for modern elections.

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Diabetes-Prediction-ML

Health project leveraging Artificial Intelligence and Support Vector Machine in Python. Through advanced machine learning algorithms, it analyzes diverse health data to predict diabetes risk accurately.

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Student-Management-System

The "Student Management System" is a sophisticated Full Stack project using CSS, HTML, MySQL, Python, and Flask, streamlining student-related tasks. With features like real-time updates and automation, it ensures efficient data management, enhancing collaboration in educational environments.

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Object-Detection-and-Identification-Model

The "Object Detection and Identification Model" is an AI project employing YOLO v3, a pretrained model, and Python. It enables efficient and accurate detection and identification of objects in images, showcasing the prowess of advanced computer vision technology.

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Portfolio-with-react.js

Fourth iteration of my personal website built with Gatsby

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Lung-Nodules-Detection-and-Classification-using-UNet-DenseNet

Develop a machine learning (ML) model for lung cancer detection using U-Net and DenseNet architectures. Achieve an accuracy of at least 99.96% in lung nodule detection and classification. Achieved validation of 99.9%.

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