AI 201 Advanced-Artificial-Intelligence Concepts

Overview
Curriculum
Reviews

This on-demand course is designed to help learners understand key artificial intelligence (AI) concepts, including popular terminologies, practical applications, and emerging trends in AI technologies. It is ideal for individuals who have a basic understanding of AI and want to deepen their knowledge in areas such as Generative AI, AI agents, AI models, and quantum computing. The course includes interactive elements, video lectures, and slides to guide you through each topic.

 

Curriculum

  • 9 Sections
  • 43 Lessons
  • 0m Duration
Collapse All
Welcome
1 Lesson
  1. Welcome
Module 1: Key AI Terminologies
6 Lessons
  1. Introduction
  2. 1.1: AI Models
  3. 1.2: Model Types
  4. 1.3: Neural Networks
  5. 1.4: Additional Terminologies
  6. 1.5: Key Takeaways
Module 2: Utilization of Generative AI
6 Lessons
  1. Introduction
  2. 2.1: Chatbots and Virtual Assistants
  3. 2.2: Content Generation
  4. 2.3: Business Applications
  5. 2.4: Agents and Automation
  6. 2.5: Key Takeaways
Module 3: Retrieval-Augmented Generation (RAG) and Related Concepts
6 Lessons
  1. Introduction
  2. 3.1: Retrieval-Augmented Generation (RAG)
  3. 3.2: Comparison with Traditional Models
  4. 3.3: Other Related Concepts
  5. 3.4: Practical Applications
  6. 3.5: Key Takeaways
Module 4: AI Agents and Agentic Architectures
6 Lessons
  1. Introduction
  2. 4.1: AI Agents
  3. 4.2: Agentic Architectures
  4. 4.3: Interaction with Environments
  5. 4.4: Use Cases
  6. 4.5: Key Takeaways
Module 5: The Future of AI and Compound Systems
6 Lessons
  1. Introduction
  2. 5.1: Multi-Agent Systems
  3. 5.2: Multi-Model Systems
  4. 5.3: Compound Systems
  5. 5.4: Future Trends
  6. 5.5: Key Takeaways
Module 6: Quantum Computing and Its Correlation with AI
6 Lessons
  1. Introduction
  2. 6.1: Quantum Computing Basics
  3. 6.2: Quantum AI
  4. 6.3: Current Research and Developments
  5. 6.4: Potential Applications
  6. 6.5: Key Takeaways
Module 7: Additional Advanced AI Concepts
5 Lessons
  1. 7.1: Explainable AI (XAI)
  2. 7.2: Ethical AI
  3. 7.3: AI in Edge Computing
  4. 7.4: Human-AI Collaboration
  5. 7.5: Key Takeaways
Conclusion
1 Lesson
  1. Conclusion

Create a new review.

×

Free Lesson Videos:

Deleting Course Review

Are you sure? You can't restore this back

Course Access

This course is password protected. To access it please enter your password below:

Related Courses

AI 102: AI/ML Related Jobs for Beginners

  • Explore data analyst roles to gain insights into data patterns and trends.
  • Start with entry-level machine learning engineer positions to build practical experience.
  • Consider internships or freelance projects to enhance skills and showcase work.
0m
0
2
20

AI 321 AI Security & Ethics Master Class

  • Develop a deep understanding of AI fundamentals, security vulnerabilities, and ethical frameworks
  • Master practical strategies for identifying and mitigating risks in AI systems
  • Learn to implement governance structures that ensure accountability and compliance
0m
0
4
91

AI-101- An Introduction to AI, ML, and Generative AI

  • AI stands for Artificial Intelligence.
  • ML refers to Machine Learning.
  • Generative AI involves creating new content based on patterns in existing data.
0m
0
0
18