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Visualtaggy/README.md

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Hi , I'm Vishal

AI & Machine Learning Specialist

I’m Vishal, software developer from India, with a strong foundation in Machine Learning, Artificial Intelligence, and DevOps. I thrive on solving complex problems, particularly in scalability, efficiency, and automation, with a focus on real-time data processing and AI-driven solutions. My journey spans projects in game development, text processing, and blockchain technology. I’m passionate about open-source, cloud computing, DevOps, innovation, and automation.

Focus Living

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🛠️ Languages & Tools


📚 Featured Research Projects

  • Integer Recognition Using Neural Networks
    Developed a custom neural network in Java for real-time integer recognition, featuring custom weight and bias handling. The model efficiently processes low-resolution and stylized images using image preprocessing pipelines, enabling accurate recognition even in challenging conditions.

  • Flappy Bird Agent with Reinforcement Learning and Neuroevolution
    Created an AI agent for the Flappy Bird game using NeuroEvolution of Augmenting Topologies (NEAT) and Q-learning. This agent learns through fitness-based evolution and adapts dynamically to the game environment, improving its survival rate with each generation.

  • Self-Driving Car Simulation
    Designed an autonomous car simulation using the NEAT algorithm and Python, which visualizes adaptive decision-making for navigating a 2D track. This project simulates real-time sensor feedback and optimizes collision avoidance through an evolving neural network.

  • Fake News Detection using Passive-Aggressive Classifiers
    Developed a real-time fake news detection model leveraging TF-IDF vectorization and a passive-aggressive classifier. This web application classifies news articles as "Fake" or "Real," providing a practical solution to counter misinformation.

  • Deep Learning Upscaling Model for Textures
    Created a deep learning model using Residual in Residual Dense Blocks (RRDB) to upscale low-resolution game textures by up to 4x. The model enhances image clarity and detail, with efficient GPU processing using PyTorch, suitable for real-time game development.


🏆 GitHub Stats


Show some ❤️ by starring ⭐ some of my repositories!

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  1. ReinforcementLearning-FlappyBird ReinforcementLearning-FlappyBird Public

    This project is to train an AI to play flappy bird using Reinforcement Learning and Neuroevolution. I've used Python , NEAT-PYTHON and PyGame

    Python

  2. Deep-Learning-Upscaling-Model-for-Textues- Deep-Learning-Upscaling-Model-for-Textues- Public

    Python

  3. Integer-Recognition-Using-Neural-Networks- Integer-Recognition-Using-Neural-Networks- Public

    Java

  4. Self-Driving-Car-Simulation- Self-Driving-Car-Simulation- Public

    Python

  5. Fake-News-Detection-using-Passive-Aggressive-Classifiers- Fake-News-Detection-using-Passive-Aggressive-Classifiers- Public

    CSS