Observability in the AI-Native Era

£31.99

Observability in the AI-Native Era

Leveraging AIOps to build, observe, and operate resilient systems

Systems analysis and design Parallel processing Artificial intelligence

Authors: Hilliary Lipsig, Andreas Grabner, Robert Rati

Dinosaur mascot

Language: English

Published by: Packt Publishing

Published on: 13th March 2026

Format: LCP-protected ePub

ISBN: 9781806389582


Discover how AIOps is transforming the observability landscape for cloud-native and traditional systems.

Learn how to build, monitor, and operate resilient services using AI-drive dynamic insights for smarter and more scalable operations

Key Features

Practical Integration of AI and Observability in Modern Engineering Workflows

Real-World Use Cases Grounded in Industry Experience

Tailored for Modern Engineering Roles and Organizations

Book Description

Observability is mandatory for building and operating cloud-native distributed systems. Tools like OpenTelemetry have standardized how observability data is sourced, and AI now transforms how we extract value from the vast amounts of observability data generated by modern systems. This book guides you in implementing scalable observability, improving engineering efficiency with AI, and integrating observability throughout the Software Development Lifecycle (SDLC) via modern self-service internal developer platforms.

You'll start with observability basics and learn how AIOps enhances signal correlation, anomaly detection, and root-cause analysis. Using real-world examples, the book demonstrates how to implement AIOps, build proactive detection pipelines, and automate diagnostics and remediation. You'll explore best practices for expanding observability using OpenTelemetry, Prometheus, Grafana, Dynatrace, Datadog, and New Relic alongside machine learning models, ensuring your systems are accurate, efficient, and secure.

You'll also learn how to benchmark, measure, and secure your AIOps implementation, and gain a practical understanding of software compliance and how it applies to your systems. By the end of this book, you'll be ready to design and deliver AIOps-enabled observability solutions that make cloud-native systems more resilient, efficient, and secure.

What you will learn

Build observability pipelines for logs, metrics, traces and events

Implement standards such as OpenTelemetry and Prometheus

Correlate signals from multiple sources for better incident triage

Apply AI/ML for anomaly detection and root cause analysis

Design scalable architectures for intelligent monitoring

Automate resiliency through self-healing and remediation agents

Who this book is for

This book is for Software engineers and engineering leaders working on teams with operational responsibilities, such as platform engineering, site reliability engineering (SRE), DevOps, or application development, who want to integrate AIOps capabilities into their workflows will benefit from this book. If your team is responsible for building and running high-performing, resilient software systems, this book is for you.

Show moreShow less