Create and Publish Pipelines for Batch Inferencing with Azure
Offered By: Pluralsight
Course Description
Overview
This Azure tutorial will teach you how to build & run ML pipelines using the drag-and-drop designer interface and cover publishing and deployment of pipelines.
A machine learning model goes through a number of stages in its lifecycle; from training, to evaluation, through deployment and then maintenance. While there are a number of tools available for these stages, their management can become overwhelming even for the seasoned ML engineer. In this course, Create and Publish Pipelines for Batch Inferencing with Azure, you'll experience an intuitive and easy-to-maintain environment for all things ML and focus on building and running pipelines for batch inferences. First, you'll discover the Azure ML service and the breadth of features it has to offer when it comes to building and managing ML models. Then, you'll explore a number of data transformations which can be applied to a dataset by simply dragging and dropping various modules into the pipeline. Next, you'll see that the handling of missing values, the standardization of numeric features as well as one-hot encoding for categorical fields can all be accomplished without writing a line of code. Finally, you'll use the pipeline to make predictions on new data. Once you have finished this course, you will have a clear understanding of the capabilities of Azure ML and specifically its designer when it comes to defining and managing pipelines - which can be used for both training and inferencing.
A machine learning model goes through a number of stages in its lifecycle; from training, to evaluation, through deployment and then maintenance. While there are a number of tools available for these stages, their management can become overwhelming even for the seasoned ML engineer. In this course, Create and Publish Pipelines for Batch Inferencing with Azure, you'll experience an intuitive and easy-to-maintain environment for all things ML and focus on building and running pipelines for batch inferences. First, you'll discover the Azure ML service and the breadth of features it has to offer when it comes to building and managing ML models. Then, you'll explore a number of data transformations which can be applied to a dataset by simply dragging and dropping various modules into the pipeline. Next, you'll see that the handling of missing values, the standardization of numeric features as well as one-hot encoding for categorical fields can all be accomplished without writing a line of code. Finally, you'll use the pipeline to make predictions on new data. Once you have finished this course, you will have a clear understanding of the capabilities of Azure ML and specifically its designer when it comes to defining and managing pipelines - which can be used for both training and inferencing.
Syllabus
- Course Overview 2mins
- Getting Started with the Azure Machine Learning Designer 51mins
- Building a Model Training Pipeline 45mins
- Publishing a Batch Inference Pipeline 35mins
- Deploying a Batch Inference Pipeline 29mins
Taught by
Kishan Iyer
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