Project Ideas:
- Create a deep learning model for image classification, able to identify various objects in images like people, animals, and landscapes.
- Train an AI model for sentiment analysis, which can determine the emotions expressed in text such as tweets and customer reviews.
- Build a conversational AI chatbot that can hold simple conversations and provide answers to questions.
- Develop a recommendation engine that suggests products, movies, or other items to users based on their preferences.
- Train a model for object detection in real-time video streams, to detect and track objects such as pedestrians or vehicles.
- Construct an AI system for speech recognition and translation, useful in applications such as voice-activated interfaces.
- Create AI models for natural language processing, capable of understanding and generating natural language for tasks such as language translation or text summarization.
- Use machine learning for fraud detection, detecting patterns in financial transactions that may indicate fraud in scenarios like credit card transactions or insurance claims.
- Develop AI models for computer vision, which can analyze and interpret visual data for tasks such as image segmentation, object recognition, and optical character recognition.
- Train AI models for generative tasks such as generating new data like music, text, or images based on existing patterns in existing data.
Research Areas:
- Develop Explainable AI (XAI) models that provide transparent and interpretable explanations for AI decisions and actions.
- Improve the quality and realism of generated data, such as images, audio, or video, with Generative Adversarial Networks (GANs), and apply them to new domains and use cases.
- Develop Multi-modal AI systems that can process and integrate multiple forms of data like text, images, audio, and video, to achieve higher levels of accuracy and performance.
- Apply Reinforcement Learning algorithms to new domains like robotics, autonomous vehicles, or game playing, and improve the stability and reliability of these algorithms.
- Explore the potential of quantum computing for AI with Quantum AI, and develop new algorithms and techniques for quantum-accelerated machine learning.