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You're reading from  Data-Centric Machine Learning with Python

Product typeBook
Published inFeb 2024
PublisherPackt
ISBN-139781804618127
Edition1st Edition
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Authors (3):
Jonas Christensen
Jonas Christensen
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Jonas Christensen

Jonas Christensen has spent his career leading data science functions across multiple industries. He is an international keynote speaker, postgraduate educator, and advisor in the fields of data science, analytics leadership, and machine learning and host of the Leaders of Analytics podcast.
Read more about Jonas Christensen

Nakul Bajaj
Nakul Bajaj
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Nakul Bajaj

Nakul Bajaj is a data scientist, MLOps engineer, educator and mentor, helping students and junior engineers navigate their data journey. He has a strong passion for MLOps, with a focus on reducing complexity and delivering value from machine learning use-cases in business and healthcare.
Read more about Nakul Bajaj

Manmohan Gosada
Manmohan Gosada
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Manmohan Gosada

Manmohan Gosada is a seasoned professional with a proven track record in the dynamic field of data science. With a comprehensive background spanning various data science functions and industries, Manmohan has emerged as a leader in driving innovation and delivering impactful solutions. He has successfully led large-scale data science projects, leveraging cutting-edge technologies to implement transformative products. With a postgraduate degree, he is not only well-versed in the theoretical foundations of data science but is also passionate about sharing insights and knowledge. A captivating speaker, he engages audiences with a blend of expertise and enthusiasm, demystifying complex concepts in the world of data science.
Read more about Manmohan Gosada

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Summary

In this chapter, we explored various programmatic labeling techniques in machine learning. Labeling data is essential for training effective models, and manual labeling can be time-consuming and expensive. Programmatic labeling offers automated ways to assign meaningful categories or classes to instances of data. We discussed a range of techniques, including pattern matching, DB lookup, Boolean flags, weak supervision, semi-weak supervision, slicing functions, active learning, transfer learning, and semi-supervised learning.

Each technique offers unique benefits and considerations based on the nature of the data and the specific labeling requirements. By leveraging these techniques, practitioners can streamline the labeling process, reduce manual effort, and train effective models using large amounts of labeled or weakly labeled data. Understanding and utilizing programmatic labeling techniques are crucial for building robust and scalable machine learning systems.

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Data-Centric Machine Learning with Python
Published in: Feb 2024Publisher: PacktISBN-13: 9781804618127

Authors (3)

author image
Jonas Christensen

Jonas Christensen has spent his career leading data science functions across multiple industries. He is an international keynote speaker, postgraduate educator, and advisor in the fields of data science, analytics leadership, and machine learning and host of the Leaders of Analytics podcast.
Read more about Jonas Christensen

author image
Nakul Bajaj

Nakul Bajaj is a data scientist, MLOps engineer, educator and mentor, helping students and junior engineers navigate their data journey. He has a strong passion for MLOps, with a focus on reducing complexity and delivering value from machine learning use-cases in business and healthcare.
Read more about Nakul Bajaj

author image
Manmohan Gosada

Manmohan Gosada is a seasoned professional with a proven track record in the dynamic field of data science. With a comprehensive background spanning various data science functions and industries, Manmohan has emerged as a leader in driving innovation and delivering impactful solutions. He has successfully led large-scale data science projects, leveraging cutting-edge technologies to implement transformative products. With a postgraduate degree, he is not only well-versed in the theoretical foundations of data science but is also passionate about sharing insights and knowledge. A captivating speaker, he engages audiences with a blend of expertise and enthusiasm, demystifying complex concepts in the world of data science.
Read more about Manmohan Gosada