Artificial Intelligence & Machine Learning

Understanding what Artificial Intelligence and Machine Learning are, their history, and why they matter today. Difference between AI, ML, and traditional programming.

Exploring the idea of machines mimicking human intelligence. Overview of natural language processing, computer vision, and decision-making systems.

Learning how machines use data to improve performance. Introduction to supervised, unsupervised, and reinforcement learning with simple examples.

Why data is the fuel for AI. Role of datasets, features, and algorithms like regression, classification, and clustering.

How cloud platforms (AWS, Azure, Google Cloud) make AI accessible. Introduction to pre-built AI services like chatbots, translation, and image recognition.

Understanding the challenges of AI: bias in algorithms, privacy concerns, and responsible AI usage.

Practical examples of AI and ML in healthcare, cybersecurity, finance, and daily life (voice assistants, recommendation engines).

No Content