Key challenges

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Skills You'll Learn

Concept Drift, ML Deployment Challenges, Human-level Performance (HLP), Project Scoping and Design, Model baseline

Reviews

4.8 (3,206 ratings)

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IU

Dec 5, 2021

I have been involved with deep learning for more than 5 years (in academia), nevertheless learned a lot already. I am very curious about the next courses. Thanks for putting together this course!

DC

May 20, 2021

Practical and well-structured advices throughout the lifecycle of ML. Examples from real world problems & experiences make the advices more tangible and helps to reflect on own problems.

From the lesson

Week 2: Modeling Challenges and Strategies

This week is about model strategies and key challenges in model development. It covers error analysis and strategies to work with different data types. It also addresses how to cope with class imbalance and highly skewed data sets.

Taught By

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    Andrew Ng

    Instructor

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