Vision and Image

AITH05 Data Labeling in Azure Machine Learning: A Comprehensive Guide for Image and Text Data

11/21/2024

1:00pm - 2:15pm

Level: Introductory

Jean Joseph

Technical Trainer/Data Engineer

Microsoft

Data labeling is a crucial step in any machine learning project, as it provides the ground truth for training and evaluating models. However, data labeling can also be a tedious, time-consuming, and error-prone task, especially for large and complex datasets. To address this challenge, Azure Machine Learning offers a data labeling tool that enables you to create, manage, and monitor data labeling projects with ease and efficiency.

In this presentation, you will learn how to:

  • Use the data labeling tool in Azure Machine Learning to label image and text data for various machine learning tasks, such as classification, object detection, instance segmentation, semantic segmentation, and named entity recognition.
  • Leverage machine learning-assisted data labeling and human-in-the-loop labeling to accelerate and improve the quality of your labeling process.
  • Coordinate data, labels, and team members to efficiently manage labeling tasks and track progress.
  • Review and export the labeled data as an Azure Machine Learning dataset for further analysis and modeling.
  • Integrate the data labeling tool with other Azure Machine Learning services, such as MLflow, AutoML, and pipelines, to streamline and automate your machine learning lifecycle.

Join this session to discover how data labeling in Azure Machine Learning can help you prepare high-quality data for your machine learning projects.

You will learn:

  • Master Data Labeling in Azure ML: Learn how to use the data labeling tool in Azure Machine Learning to label image and text data for various machine learning tasks, such as classification, object detection, instance segmentation, semantic segmentation, and named entity recognition.
  • Improve Labeling Efficiency: Understand how to leverage machine learning-assisted data labeling and human-in-the-loop labeling to accelerate and improve the quality of your labeling process. Learn how to coordinate data, labels, and team members to efficiently manage labeling tasks and track progress.
  • Integrate and Automate: Learn how to review and export the labeled data as an Azure Machine Learning dataset for further analysis and modeling. Discover how to integrate the data labeling tool with other Azure Machine Learning services, such as MLflow, AutoML, and pipelines, to streamline and automate your machine learning lifecycle.