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January 19, 2026

In the next post from our new guide produced with AWS, Five principles for developing AI applications at scale, Vaibhav Shah, Senior Solutions Architect and Mark van der Walle, Lead Software Architect explains how building observability into apps can help turn insight into advantage for your business.

Modern organizations operate within complex application landscapes. A mix of legacy systems, new applications, and cloud platforms is often the result of years of growth, rearchitecting, and acquisitions. These ecosystems become increasingly hard to manage and understand, which makes implementing improvements challenging. Full visibility across applications, infrastructure, and platforms is now no longer optional; it’s become essential for operational excellence, early issue detection, and performance optimization.

From reactive to proactive

Many businesses already use logs and metrics, but all too often they are only used after something goes wrong. This reactive approach limits cost savings and efficiency improvements, yet observability and evaluation are critical to maintaining trust, transparency, and continuous improvement. As we enter the agentic era, in which AI can make real-time decisions, continuous automated improvement and adaptation are real tools.

Imagine a premium coffee machine in a busy office. Without observability, you only know there’s a problem when the coffee tastes off or the machine breaks down mid-morning. You’re left scrambling to fix the issue after it has already impacted customers.

In our eBook, Five principles for developing AI applications at scale, we demonstrate how full observability could work for a machine made by the fictional company Smart Koffee. Thanks to continuous tracking of water levels, bean quality, brewing temperature, and pressure, the machine can predict when filters need replacing, automatically order supplies, and even correlate user satisfaction with environmental factors like temperature. Instead of reacting, you can plans and anticipate. Rather than merely monitoring what’s going on, you can understand why it’s happening and work out what to do next.

Observability transforms operations from firefighting to foresight. It’s not just about avoiding downtime; it’s about delivering a consistently premium experience that keeps operations smooth. And that means customers will come back.

The observability mindset shift

Building observability is both a technical and strategic move. Like the Smart Koffee machine flagging predicted maintenance before a failure, observability enables businesses to forecast issues and act before customers are affected. This shift from reaction to prevention enhances performance, reduces downtime, and leads to smarter business decisions.

Observability also unites business, technology, and customer experience teams around a shared vision. When a conductor is conducting a symphony, every instrument must stay in tune and respond to the others. With observability, each team sees the same data, understands dependencies, and can collaborate to improve outcomes.

In the Smart Koffee example, understanding performance metrics like energy use or brew frequency helps predict demand, adjust operations, and control costs, and the end result of that is enhanced customer satisfaction and operational efficiency.

Guidance, Tools, and Best Practices

Implementing observability isn’t a solo journey. Integrating these systems into complex, legacy-heavy environments requires the right expertise, partnering with specialists is key, to ensure smooth adoption, minimize risk, and drive long-term value.

AWS X-Ray provides distributed tracing for cloud applications, helping you visualize how requests move across services, databases, and external APIs. Combined with other AWS tools, it forms a holistic observability framework based on Amazon Bedrock AgentCore, including:

  • Amazon CloudWatch for centralized monitoring, logging, and alerting.
  • Amazon CloudTrail for API call tracking and ensuring auditability.
  • Amazon Kinesis Firehose & Amazon OpenSearch Service for enabling real-time streaming and deep analytics.
  • Amazon Bedrock AgentCore for OpenTelemetry-aligned observability for AI agents, giving insight into reasoning and trace behavior.

AI-powered tools like these provide the clarity needed to identify bottlenecks, optimize costs, enhance user experiences, and align performance metrics with business KPIs.

To get the most out of observability we’ve put together three golden rules:

  • Start small, scale up. Focus on critical business functions first, then expand.
  • Leverage cloud-native tools. Simplify integration and reduce development costs by using the cloud.
  • Engage business leaders. Ensure observability data ties directly to business outcomes.

Turning insight into advantage

The bottom line here, is that observability is more than a technical capability; it’s a strategic differentiator. Observability transforms data into foresight, which means that businesses gain the agility to adapt, innovate, and outperform competitors. With solutions like AWS X-Ray and Bedrock AgentCore, organizations can ensure every part of their ecosystem operates in harmony.

In a world where reacting too late can cost you customers, observability turns insight into decisive advantage.

Download Five Principles for developing AI applications at scale, now.

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Mark van der Walle

Mark van der Walle

Lead Software Architect

Vaibhav Shah

Vaibhav Shah

Senior Solutions Architect

Intelligent Apps

Five principles for scaling AI applications

Discover how to build adaptable, intelligent AI apps at scale with our AWS-powered guide. Download now to explore five key principles for modernizing your app portfolio.

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