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Multi-Cloud Strategy for Cloud Architects

You're reading from   Multi-Cloud Strategy for Cloud Architects Learn how to adopt and manage public clouds by leveraging BaseOps, FinOps, and DevSecOps

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Product type Paperback
Published in Apr 2023
Publisher Packt
ISBN-13 9781804616734
Length 470 pages
Edition 2nd Edition
Tools
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Author (1):
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Jeroen Mulder Jeroen Mulder
Author Profile Icon Jeroen Mulder
Jeroen Mulder
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Table of Contents (23) Chapters Close

Preface 1. Introduction to Multi-Cloud FREE CHAPTER 2. Collecting Business Requirements 3. Starting the Multi-Cloud Journey 4. Service Designs for Multi-Cloud 5. Managing the Enterprise Cloud Architecture 6. Controlling the Foundation Using Well-Architected Frameworks 7. Designing Applications for Multi-Cloud 8. Creating a Foundation for Data Platforms 9. Creating a Foundation for IoT 10. Managing Costs with FinOps 11. Maturing FinOps 12. Cost Modeling in the Cloud 13. Implementing DevSecOps 14. Defining Security Policies 15. Implementing Identity and Access Management 16. Defining Security Policies for Data 17. Implementing and Integrating Security Monitoring 18. Developing for Multi-Cloud with DevOps and DevSecOps 19. Introducing AIOps and GreenOps in Multi-Cloud 20. Conclusion: The Future of Multi-Cloud 21. Other Books You May Enjoy
22. Index

Optimizing cloud environments using AIOps

The two major benefits of AIOps are, first, the speed and accuracy in detecting anomalies and responding to them without human intervention. Second, AIOps can be used for capacity optimization. Most cloud providers offer some form of scale-out/-up mechanism driven by metrics, already available natively within the platform. AIOps can optimize this scaling since it knows what thresholds are required to do this, whereas the cloud provider requires engineers to define and hardcode it.

Since the system is learning, it can help in predicting when and what resources are needed. The following diagram shows the evaluation of operations, from descriptive to prescriptive. Most monitoring tools are descriptive, whereas AIOps is predictive:

Figure 19.1 – Evolution of monitoring to AIOps

Figure 19.1: Evolution of monitoring to AIOps

Monitoring simply registers what’s happening. With log analytics, companies can set a diagnosis of events and take remediation actions based on...

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