Artificial Intelligence (AI) represents a transformative field that combines computer science, mathematics, and cognitive models to replicate intelligent behavior. It provides structured approaches to problem-solving, decision-making, and pattern recognition through data-driven methods. This program introduces the frameworks, algorithms, and architectures that define AI systems. It also highlights ethical, governance, and industry structures that shape AI adoption across sectors.
Analyze the fundamental concepts, history, and scope of Artificial Intelligence.
Evaluate core AI techniques, including machine learning, natural language processing, and computer vision.
Interpret the role of data, algorithms, and architectures in building AI systems.
Classify ethical, regulatory, and governance considerations in AI applications.
Design structured perspectives on the impact of AI across industries and organizational functions.
IT Managers and System Engineers.
Data and Business Intelligence Specialists.
Innovation and Digital Transformation Officers.
Governance and Compliance Professionals.
Researchers and Consultants in emerging technologies.
Concept, scope, and history of AI.
Key branches and classifications of AI.
Symbolic AI vs. data-driven AI.
The role of mathematics, logic, and statistics.
Major milestones in AI development.
Machine learning principles and categories.
Neural networks and deep learning frameworks.
Natural Language Processing (NLP).
Computer vision and image recognition.
Reinforcement learning and decision-making.
Importance of big data in AI systems.
Data preprocessing and feature engineering.
Model architectures (CNNs, RNNs, Transformers).
AI development platforms and tools.
Scalability and performance considerations.
Ethical frameworks for responsible AI.
Risks of bias, discrimination, and misuse.
Global AI governance and policy models.
Transparency, explainability, and accountability.
Cybersecurity and privacy in AI systems.
AI in healthcare, finance, and manufacturing.
AI in government, education, and smart cities.
Impact on workforce and organizational change.
Trends in generative AI and autonomous systems.
Future challenges and opportunities for AI adoption.