Debugging AI: Strategies for Upcoming Talents
Offered By: Conf42 via YouTube
Course Description
Overview
Syllabus
Introduction and Session Overview
Importance of Debugging in AI
Practical Tips for Debugging
Continuous Improvement in ML Models
Preventing Big Mistakes in AI Systems
High Demand for Debugging Skills
Gaps Between Academic and Practical ML
Scaling and Training Complex Models
Data Privacy and Sensitivity Filtering
Post-Training Model Delivery
Balancing Engagement: Organic Content vs. Advertisements
Creating a Diverse and Effective Timeline
Continuous Monitoring and Real-World Validation
The Importance of A/B Testing
Practical Debugging Skills for ML Systems
Understanding ML System Components
Handling Data Failures and Their Impact
Debugging Techniques for Junior Engineers
The Role of Mentorship and Community
Building a Supportive Culture and Effective Tooling
Conclusion and Final Thoughts
Taught by
Conf42
Related Courses
Introduction to Artificial IntelligenceStanford University via Udacity Probabilistic Graphical Models 1: Representation
Stanford University via Coursera Artificial Intelligence for Robotics
Stanford University via Udacity Computer Vision: The Fundamentals
University of California, Berkeley via Coursera Learning from Data (Introductory Machine Learning course)
California Institute of Technology via Independent