Learn Before
Changing Dev/Test Sets or Evaluation Metrics During a Project Is Common
Changing dev/test sets or evaluation metrics during a project is common. Having an initial dev/test set and metric helps the team iterate quickly. If the dev/test sets or metric no longer point the team in the right direction, change them.
0
1
Tags
Machine Learning
Deep Learning
Supervised Learning
Dive into Deep Learning @ D2L
Data Science
Machine Learning Strategy
Related
Purpose of Dev and Test Sets
Choosing Dev and Test Sets to Reflect Future Data
Choosing Dev and Test Sets from the Same Distribution When Possible
Changing Dev/Test Sets or Evaluation Metrics During a Project Is Common
Quickly Establishing Dev/Test Sets and Metric for New Applications
Sizing the Dev Set to Detect Meaningful Accuracy Changes
What is the primary purpose of a development (dev) set in a machine learning project?
The development set is sometimes called the 'hold-out cross validation set'.
The development set is sometimes also called the _____ cross validation set.
Match each development set role to its description in Machine Learning Yearning.
Order the steps for using a dev set to choose between two model configurations.
Which of the following is NOT a stated use of the development set in Machine Learning Yearning?
The dev set and the training set refer to the same data partition in Machine Learning Yearning.
The dev set is used to tune parameters, _____ features, and make other decisions about the learning algorithm.
Match each dev set use from Machine Learning Yearning to the activity that exemplifies it.
Arrange the stages of a machine learning project that involve the dev set in the correct workflow order.
Explain the role and alternative terminology for the development set.
Determine the correct data partition for tuning a model's parameters and features.
List the three primary uses of the development set.
Learn After
What is the recommended action when your dev/test sets or evaluation metric no longer point your team in the right direction?
True or False: Changing dev/test sets or evaluation metrics partway through a machine learning project is considered unusual and should be avoided.
Having an initial dev/test set and metric helps your team _____ quickly during a machine learning project.
What is the primary benefit of establishing an initial dev/test set and evaluation metric at the start of an ML project?
True or False: Changing dev/test sets or evaluation metrics partway through an ML project is considered a rare and problematic event.
Having an initial dev/test set and metric helps you _____ quickly.
Match each dev/test set management situation with its correct description from ML Yearning.
Arrange the steps in the correct order for responding when you discover your current dev/test sets no longer guide your project effectively.
Midway through a project, you find your evaluation metric is no longer pointing your team in the right direction. What does ML Yearning recommend?
True or False: According to ML Yearning, if dev/test sets or metrics no longer point the team in the right direction, changing them is not a big deal.
When the dev/test sets or metric no longer point the team in the right direction, ML Yearning says to _____ them and ensure the team knows the new direction.
Match each role or characteristic of dev/test sets and metrics with the ML Yearning principle it reflects.
Arrange these statements in the order that best reflects ML Yearning's overall philosophy on managing dev/test sets across a project's lifecycle.
Analyzing Iterative Benefits and Adaptations of Dev/Test Sets
Redirecting an ML Team's Target Alignment Mid-Project
ML Yearning's Recommendation for Misaligned Metrics