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Data Labeling in Machine Learning with Python

Data Labeling in Machine Learning with Python

By : Vijaya Kumar Suda
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Data Labeling in Machine Learning with Python

Data Labeling in Machine Learning with Python

5 (3)
By: Vijaya Kumar Suda

Overview of this book

Data labeling is the invisible hand that guides the power of artificial intelligence and machine learning. In today’s data-driven world, mastering data labeling is not just an advantage, it’s a necessity. Data Labeling in Machine Learning with Python empowers you to unearth value from raw data, create intelligent systems, and influence the course of technological evolution. With this book, you'll discover the art of employing summary statistics, weak supervision, programmatic rules, and heuristics to assign labels to unlabeled training data programmatically. As you progress, you'll be able to enhance your datasets by mastering the intricacies of semi-supervised learning and data augmentation. Venturing further into the data landscape, you'll immerse yourself in the annotation of image, video, and audio data, harnessing the power of Python libraries such as seaborn, matplotlib, cv2, librosa, openai, and langchain. With hands-on guidance and practical examples, you'll gain proficiency in annotating diverse data types effectively. By the end of this book, you’ll have the practical expertise to programmatically label diverse data types and enhance datasets, unlocking the full potential of your data.
Table of Contents (18 chapters)
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1
Part 1: Labeling Tabular Data
5
Part 2: Labeling Image Data
9
Part 3: Labeling Text, Audio, and Video Data

Summary

In this chapter, we have explored a range of techniques to tackle the challenge of data labeling in regression tasks. We began by delving into the power of summary statistics, harnessing the mean of each feature in the labeled dataset to predict labels for unlabeled data. This technique not only simplifies the labeling process but also introduces a foundation for accurate predictions.

Further enriching our labeling arsenal, we ventured into semi-supervised learning, leveraging a small set of labeled data to generate pseudo-labels. The amalgamation of genuine and pseudo-labels in model training not only extends our labeled data but also equips our models to make more informed predictions for unlabeled data.

Data augmentation has emerged as a vital tool in enhancing regression data. Techniques such as scaling and noise injection have breathed new life into our dataset, providing varied instances that empower models to discern patterns better and boost prediction accuracy...

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