Machine Learning on Oracle Cloud: Mastery of Machine Learning lifecycle on Oracle Cloud

Paperback Published on: 05/09/2025
Price: £33.99
Free UK delivery on orders over £25
Not available
This product is currently unavailable
Make and edit your lists in your account
No stock available in any shop.
Not available
This product is currently unavailable
No stock available in any shop.

Synopsis

Master Machine Learning L lifecycle management with Oracle Cloud and you will be ready to implement ML driven applications.

Key Features

How to decide to make a decision about when to retrain

How to observe the drifting patterns in ML models

How to build cloud networks to support the relevant services and infrastructure

Book DescriptionUnlock the full potential of your ML models with Oracle Cloud data science services. This guide provides a hands-on approach to managing the entire ML lifecycle, from creation to deployment and optimization. Master the art of deployment, serving, and monitoring infrastructure to gain a competitive edge and differentiate yourself from other developers. Learn to easily create, train, test, deploy, monitor and optimize ML models with step-by-step explanations, practical examples and self-assessment questions. With Oracle Cloud, you'll be able to build ML systems from scratch and be up-and-running 24/7 for your ML-driven applications without worrying about scalability. Discover the best storage options for your ML systems, use OCI DS notebook service and create custom conda environments for your projects. Learn to do distributed training with Spark clusters, extract model artifacts and deploy them in a highly scalable infrastructure. Monitor your models using Oracle Cloud services and build cloud networks to go to market with your ML-driven applications quickly. By the end of this guide, you'll be a master of ML lifecycle management with Oracle Cloud and ready to implement ML-driven applications.What you will learn

Choosing the appropriate data storage for your ML systems

Selecting the most suitable ingestion method for your ML systems

Utilizing the collaborative notebook service to create, train, test, and fine-tune your models

Setting up a custom conda environment for the notebook service

Exporting the ML model artifacts

Implementing distributed training using Spark

Deploying the model artifacts in a scalable infrastructure

Monitoring and scaling the serving infrastructure to ensure optimal performance of your models

Who this book is forMachine Learning Engineers, Data scientists and machine learning developers who need practical guidelines to master machine learning lifecycle. From data exploration to model deployment and monitoring.

Companies - customers of Oracle or teams within Oracle who need practical guidelines on how to use Oracle Cloud’s services to build ML driven intelligent applications.

Publisher information

  • Publisher: Packt Publishing Limited
  • ISBN: 9781803239767
  • Number of pages: 306
  • Dimensions: 235 x 191 mm
  • Languages: English

Customer Reviews