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The Machine Learning Solutions Architect Handbook

You're reading from   The Machine Learning Solutions Architect Handbook Create machine learning platforms to run solutions in an enterprise setting

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Product type Paperback
Published in Jan 2022
Publisher Packt
ISBN-13 9781801072168
Length 442 pages
Edition 1st Edition
Languages
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Author (1):
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David Ping David Ping
Author Profile Icon David Ping
David Ping
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Toc

Table of Contents (17) Chapters Close

Preface 1. Section 1: Solving Business Challenges with Machine Learning Solution Architecture
2. Chapter 1: Machine Learning and Machine Learning Solutions Architecture FREE CHAPTER 3. Chapter 2: Business Use Cases for Machine Learning 4. Section 2: The Science, Tools, and Infrastructure Platform for Machine Learning
5. Chapter 3: Machine Learning Algorithms 6. Chapter 4: Data Management for Machine Learning 7. Chapter 5: Open Source Machine Learning Libraries 8. Chapter 6: Kubernetes Container Orchestration Infrastructure Management 9. Section 3: Technical Architecture Design and Regulatory Considerations for Enterprise ML Platforms
10. Chapter 7: Open Source Machine Learning Platforms 11. Chapter 8: Building a Data Science Environment Using AWS ML Services 12. Chapter 9: Building an Enterprise ML Architecture with AWS ML Services 13. Chapter 10: Advanced ML Engineering 14. Chapter 11: ML Governance, Bias, Explainability, and Privacy 15. Chapter 12: Building ML Solutions with AWS AI Services 16. Other Books You May Enjoy

Open source technologies for building ML platforms

While it is possible to run different ML tasks by creating and deploying different standalone ML containers in a Kubernetes cluster, this can become quite complex to manage when you have to do this at scale for a large number of users and ML workloads. This is where open source technologies such as Kubeflow, MLflow, Seldon Core, GitHub, and Airflow come in. Next, let's take a closer look at how these open source technologies can be used for building data science environments, model training services, model inference services, and ML workflow automation.

Using Kubeflow for data science environments

Kubeflow is a Kubernetes-based, open source ML platform that provides a number of ML-specific components. Kubeflow runs on top of Kubernetes and provides the following capabilities:

  • A central UI dashboard
  • A Jupyter notebook server for code authoring and model building
  • A Kubeflow pipeline for ML pipeline orchestration...
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