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MLOps with Red Hat OpenShift

You're reading from   MLOps with Red Hat OpenShift A cloud-native approach to machine learning operations

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Product type Paperback
Published in Jan 2024
Publisher Packt
ISBN-13 9781805120230
Length 238 pages
Edition 1st Edition
Tools
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Authors (2):
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Ross Brigoli Ross Brigoli
Author Profile Icon Ross Brigoli
Ross Brigoli
Faisal Masood Faisal Masood
Author Profile Icon Faisal Masood
Faisal Masood
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Table of Contents (13) Chapters Close

Preface 1. Part 1: Introduction FREE CHAPTER
2. Chapter 1: Introduction to MLOps and OpenShift 3. Part 2: Provisioning and Configuration
4. Chapter 2: Provisioning an MLOps Platform in the Cloud 5. Chapter 3: Building Machine Learning Models with OpenShift 6. Part 3: Operating ML Workloads
7. Chapter 4: Managing a Model Training Workflow 8. Chapter 5: Deploying ML Models as a Service 9. Chapter 6: Operating ML Workloads 10. Chapter 7: Building a Face Detector Using the Red Hat ML Platform 11. Index 12. Other Books You May Enjoy

Architecting a human face detector system

We will start by defining the business use case, its utility, and an architectural diagram of how the components work together.

The idea is to collect a video feed from where you can detect multiple objects and respond accordingly. For example, in our case, we are detecting a human face in a real-time video feed. This system could capture the feed from the front of your house and work as a security system. Or, you can apply the same workflow to detect potholes on the road through a continuous video feed collected by a car.

Once the camera captures the feed, it sends the video frame by frame to an application running on your OpenShift cluster, which then calls the model for inference. Once the model detects a face, the calling application displays and stores the results in a Redis cache (you can further enhance the application to store the results in a database), from where you can display the result or generate an alert. The backend application...

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