Helena Mentis
Foundations of Artificial Intelligence (AI) and Machine Learning (ML): Provide a comprehensive overview of the fundamental concepts theories and principles of artificial intelligence and machine learning including their historical development basic algorithms and applications across various domains. Algorithms and Techniques: Explore a wide range of AI and ML algorithms and techniques including supervised learning unsupervised learning reinforcement learning deep learning neural networks support vector machines decision trees clustering algorithms and natural language processing (NLP) with explanations of their underlying principles and practical implementations. Applications and Use Cases: Present real-world applications and use cases of AI and ML across different industries and domains including healthcare finance marketing cybersecurity autonomous vehicles robotics smart cities and personalized recommendation systems with insights into how AI and ML technologies are transforming businesses and society. Future Trends and Challenges: Examine emerging trends and future directions in AI and ML research and development including advancements in deep learning reinforcement learning AI explainability AI ethics human-AI collaboration AI-driven automation and the potential risks and challenges associated with the widespread adoption of AI technologies.