Application Progress Favors Same-Distribution Dev and Test Sets
For progress on a specific machine learning application rather than research progress, dev and test sets should be chosen from the same distribution because this makes the team more efficient.
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Application Progress Favors Same-Distribution Dev and Test Sets
What does ML Yearning recommend when your goal is progress on a specific application rather than research?
Domain adaptation methods are widely applicable and broadly used across most machine learning problems.
Domain adaptation involves training an algorithm on one _____ and having it generalize to a different one.
Match each concept from ML Yearning's domain adaptation discussion to its correct description.
Order the reasoning steps ML Yearning recommends when deciding how to handle differing data distributions in an application project.
How does ML Yearning characterize the scope of applicability of domain adaptation methods?
Choosing dev and test sets from the same distribution makes your ML team more efficient, according to ML Yearning.
ML Yearning recommends choosing dev and test sets drawn from the _____ distribution to efficiently make application progress.
Match each project goal to the strategy ML Yearning associates with it.
Order the key ideas in ML Yearning's argument for preferring same-distribution dev/test sets over domain adaptation in application work.
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When your goal is progress on a specific ML application, how should dev and test sets be chosen?
True or False: Developing algorithms that train on one distribution and generalize to another is described as an important research problem.
For progress on a specific ML application, dev and test sets should be drawn from the _____ distribution to make the team more efficient.
When your goal is application progress, which dev/test set strategy does Andrew Ng recommend?
Choosing dev and test sets from the same distribution makes a team more efficient when building a specific ML application.
For application progress, dev and test sets should be drawn from the _____ distribution.
Match each term to its correct description from Machine Learning Yearning Chapter 5.
Order the reasoning steps for selecting dev/test distributions in an application-focused ML project.
What does Machine Learning Yearning describe as an 'important research problem' regarding data distributions?
Ng's recommendation to use same-distribution dev/test sets applies equally to both application progress and research progress goals.
Choosing dev and test sets from the same distribution will make your _____ more efficient.
Match each recommendation or outcome to the correct project goal from Machine Learning Yearning.
Order the steps for distinguishing application vs. research goals when deciding on dev/test distributions.
Explain how the choice of data distributions for dev and test sets impacts team efficiency in machine learning application development.
Evaluate the dev and test set distribution strategy for a mobile app development team experiencing slow progress.
Contrast the dev/test set distribution strategy for application progress versus research progress.