DevOps and AI on AWS: AIOps

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

DevOps and AI on AWS: AIOps

Coursera · Beginner ·☁️ DevOps & Cloud ·3mo ago

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

Related Reads

📰
One login for you and your AI agents. Zero long-lived keys.
Simplify cloud access for humans and AI agents with a single login and no long-lived keys
Medium · DevOps
📰
Your n8n Workflow Is Green. Prove the Outcome Anyway.
Learn to validate n8n workflow outcomes despite successful executions to catch duplicate side effects and stale data
Dev.to · Luna
📰
One Pipeline, Sixteen Databases: Parameterised SQL Deployments in Azure DevOps
Learn to deploy SQL changes to multiple databases using a single pipeline in Azure DevOps with runtime parameterization
Dev.to · Vignesh Athiappan
📰
Stop Hallucinating Terraform: Building a Private Internal Developer Portal with RAG and Gemma 2
Build a private Internal Developer Portal using Terraform RAG pipeline and Gemma 2 to stop hallucinating AI code
Medium · DevOps
Up next
What is Observability Explained with Examples
VLR Software Training
Watch →