#29 Machine Learning Engineering for Production (MLOps) Specialization [Course 1, Week 3, Lesson 5] | Summary and Q&A

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April 20, 2022
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#29 Machine Learning Engineering for Production (MLOps) Specialization [Course 1, Week 3, Lesson 5]

TL;DR

Learn how to improve the consistency of labels in machine learning data through iterative processes, standardized definitions, merging classes, and creating new labels for uncertainty.

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Key Insights

  • 💦 Consistency in labeling can be achieved by having multiple labelers work on the same examples and reaching a consensus on labeling definitions.
  • 🏛️ In cases of unclear or inconsistent labels, merging classes can simplify the task and improve consistency.
  • 🏷️ Creating new labels or classes for uncertain examples can help reduce label ambiguity.
  • 🤩 Iterative processes and continuous improvement are key to achieving better label consistency.
  • ❓ Providing clear instructions and improving the quality of the data can contribute to better labeling consistency.
  • 🏷️ Label voting should be used as a last resort and efforts should be made to establish consistent label definitions beforehand.
  • 🎰 Tools and machine learning operations (MLOps) are needed to facilitate and automate the process of improving label consistency.

Transcript

let's take a look at some ways to improve the consistency of your labels here's a general process you can use if you are worried about labels being inconsistent find a few examples and have multiple labelers label the same example in some cases you can also have the same labeler label an example wait a while until they've hopefully forgotten or tec... Read More

Questions & Answers

Q: What is the first step in improving label consistency?

The first step is to have multiple labelers label the same examples to identify inconsistencies and disagreements.

Q: How can the illumination of images be improved to ensure better labeling?

If labelers find it difficult to discern certain details due to low illumination, it is advisable to consider increasing the lighting or illumination when capturing the images.

Q: When should classes be merged in labeling?

Classes should be merged when the distinction between them is unclear or inconsistent. This simplifies the task for the learning algorithm.

Q: How can label ambiguity be addressed?

Label ambiguity can be addressed by creating a new label or class to capture uncertain examples, allowing labelers to differentiate between "clearly not a defect," "clearly a defect," and "borderline" cases.

Summary & Key Takeaways

  • Use a general process of having multiple labelers label the same examples to identify inconsistencies and reach a consensus on defining labels.

  • Consider changing the input data if labelers find it difficult to provide consistent labels due to lack of information.

  • Standardize label definitions and merge classes to simplify the task for the machine learning algorithm.

  • Create new labels to capture uncertainty and improve labeling consistency in ambiguous cases.

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