Introduction:
In this advanced course on Artificial Intelligence (AI) in Data Analysis, we delve deeper into the intricate world of AI and its transformative impact on organizations. Participants will gain advanced knowledge and skills in leveraging AI technologies to extract valuable insights from vast data sets, optimize decision-making processes, and drive business performance.
Designed for senior and middle management professionals, this course empowers participants to harness the full potential of AI for competitive advantage and prepare for the future of data-driven enterprises.
Objectives: At the end of the Advanced Artificial Intelligence in Data Analysis you will able to:
- Explore the complex concepts and forms of artificial intelligence.
- Apply advanced AI techniques across the entire value chain.
- Analyze cutting-edge techniques and algorithms used in AI.
- Implement best practices in AI projects to achieve optimal outcomes.
- Evaluate the required skills and competencies for AI adoption.
- Engage in insightful discussions with business and data professionals on relevant topics.
- Effectively manage the organizational changes brought about by AI integration.
- Develop strategies to lead successful AI projects.
Who should attend: Advanced Artificial Intelligence in Data Analysis training course is ideal for:
- Senior Managers: Executives, directors, and senior leaders
- Middle Managers: Professionals overseeing functional areas, projects, or teams, who play a pivotal role in implementing AI strategies
- Data Professionals: Individuals involved in data analysis, management
- Technology Enthusiasts: Professionals with a keen interest in the latest advancements in AI and its applications in data analysis.
Course outline
Day 1 Foundations of Artificial Intelligence
- Understanding the anatomy of advanced AI systems.
- Deep dive into neural networks, natural language processing, and computer vision.
- Exploring the latest advancements in AI research and development.
- Ethical considerations and responsible AI practices.
Day 2 Advanced Machine Learning Techniques
- Reinforcement learning: Principles and applications.
- Unsupervised learning: Clustering and anomaly detection.
- Transfer learning and multi-task learning for complex data analysis.
- Cutting-edge advancements in generative models (GANs, VAEs).
Day 3 Knowledge Graphs and Reasoning Systems
- Building knowledge graphs to represent complex relationships in data.
- Advanced reasoning and inference techniques for decision support.
- Explainable AI: Interpreting and justifying AI-based decisions.
Day 4 Big Data Analytics with AI
- Scalable AI frameworks for handling massive datasets.
- Utilizing distributed machine learning techniques for processing large-scale data.
- Integrating AI with cloud-native technologies for optimal performance.
Day 5 AI Governance and Risk Management
- Addressing bias and fairness in AI models.
- AI cybersecurity and protecting AI-powered systems.
- Compliance and legal considerations in AI applications.
- Strategies for managing AI-related risks in an organization.
Advanced Artificial Intelligence in Data Analysis (Course No.044)
Advanced-Artificial-Intelligence-in-Data-Analysis