DevOps and AI on AWS: AIOps
Key Takeaways
Implements AI techniques to improve DevOps operational efficiency on AWS
Original Description
In this course, we focus on how we can use AI techniques to improve our DevOps operational efficiency. We have added AI features to our applications, now it’s time to do the same for our DevOps processes. With our travel guide now in production, let’s dive into the challenges we’ll face as we scale – and how we can mitigate those challenges. As we scale, we’ll undoubtedly experience some monitoring alarms as we scan our development environment. In this scenario, information overload without the right tools can leave you stuck: you either have too much data with no clear direction on what’s actionable, or, in some cases, you don’t have enough of the right information and visibility to make informed decisions. That’s where AIOps can make a huge difference. AIOps is the process of using machine learning techniques to solve operational problems. The goal of AIOps is to reduce human intervention in the IT operations processes, reduce operational incidents, and improve your applications. Let’s learn how AIOps can help streamline operations, improve the way we monitor applications, and automate responses to common problems.
Watch on External: Coursera ↗
(saves to browser)
Sign in to unlock AI tutor explanation · ⚡30
More on: AI Systems Design
View skill →Related Reads
📰
📰
📰
📰
4 self-hosting failures that return success
Dev.to · Maxime Baelde
Stop Using 6 Chrome Tabs for Code Reviews—Do It in Your Terminal
Dev.to · Learn AI Resource
Roadmap for infrastructure/backend development in the .NET ecosystem?
Reddit r/devops
Your NOC Video Wall Is Just a Linux Box Now (Architecture + the 5-Year Math)
Dev.to · Pavel Suchkov
🎓
Tutor Explanation
DeepCamp AI