Operations | Monitoring | ITSM | DevOps | Cloud

How Generative AI Can Prevent Downtime with AI-Powered Observability

Generative AI (GenAI) is still in its infancy, but its impact is already being felt across industries. Over the past year, production applications leveraging GenAI have gone from proof-of-concept to delivering real-world value. According to the World Economic Forum, 75% of surveyed companies plan to adopt AI technologies by 2027. Leading cloud providers like AWS are making significant investments.

Troubleshoot and resolve Kubernetes issues with AI-powered guided remediation

As teams adopt Kubernetes at greater scale, they face increased complexity in keeping their growing list of workloads and services up and running. Achieving the visibility and context needed to detect and resolve incidents quickly is difficult amid a constant flood of telemetry data and alerts. Furthermore, Kubernetes expertise often remains siloed in DevOps and infrastructure teams.

Ethical AI: What Are the Risks and How Can We Ensure Fairness?

AI technology has taken over the world in the recent few years. Because of the importance that it has nowadays in our lives, there is a big need for technology to be ethical. There are many things that have to be considered to ensure that everything is fair and square, and here we are going to talk about potential problems and solutions.

Troubleshooting RAG-based LLM applications

LLMs like GPT-4, Claude, and Llama are behind popular tools like intelligent assistants, customer service chatbots, natural language query interfaces, and many more. These solutions are incredibly useful, but they are often constrained by the information they were trained on. This often means that LLM applications are limited to providing generic responses that lack proprietary or context-specific knowledge, reducing their usefulness in specialized settings.

From Zero to Hero in AI: My Serverless LLM Adventure!

In this Civo Navigate 2024 session, Engin Diri shares his unexpected journey into managing Open-Source Large Language Models (LLMs) in a cloud infrastructure setting. Discover the three key strategies he proposed to clients, weighing the pros and cons of each approach. Engin also addresses the challenges faced along the way and the solutions implemented to overcome them.

The Battle of AI: ChatGPT vs Gemini

We all know that AI is becoming as integral to our lives as the internet. Regardless of how you use it, whether for work or just for fun, it is a decent tool for getting information and ideas quickly. Whichever one you use, you can ask it for whatever you want without searching through dozens of web pages that are often filled with ads or data trackers. That being said, there are still privacy concerns regarding AI, so while we will look at ChatGPT vs.

Introducing AI-Enhanced Data Generation to Redgate Test Data Manager

We’re excited to reveal our latest effort towards simplifying and accelerating the test data management process: AI Synthetic Data Generation, part of Redgate Test Data Manager. Officially introduced in a session at the recent PASS Data Community Summit, the capability uses machine learning to rapidly generate realistic yet entirely synthetic data – all while maintaining data integrity and with data privacy built-in as priority.

How to Prepare Your Data Estate for AI Success

It’s hard not to speak in cliches when we talk about artificial intelligence (AI). Today, AI seems to be all around us. And whatever its cultural impact, its rapid evolution is leading to widespread adoption across industries. Much of the discourse focuses on what machine intelligence can do to enrich our lives and businesses. But less has been said about data, and how every AI system relies on it to operate.