ML Projects - Full Stack Deep Learning - Spring 2021

ML Projects - Full Stack Deep Learning - Spring 2021

The Full Stack via YouTube Direct link

- Lecture Overview and Running Case Study

3 of 9

3 of 9

- Lecture Overview and Running Case Study

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Classroom Contents

ML Projects - Full Stack Deep Learning - Spring 2021

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  1. 1 - Introduction
  2. 2 - Why Do ML Projects Fail?
  3. 3 - Lecture Overview and Running Case Study
  4. 4 - Lifecycle Thinking about the activities in an ML project
  5. 5 - Prioritizing Projects Assessing the feasibility and impact of the projects
  6. 6 - Archetypes Knowing the main categories of projects and implications for project management
  7. 7 - Metrics Picking a single number to optimize
  8. 8 - Baselines Figuring out if your model is performing well
  9. 9 - Conclusion

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