At the developer event New Relic Advance, New Relic introduced its Agentic Platform, a no-code environment for building and governing AI agents directly within observability systems.
Imagine this scenario.
A payment gateway fails at 2 a.m. Traffic spikes. Customers abandon carts. Support queues explode.
The SRE team scrambles through dashboards, logs, and alerts. Slack channels flood with guesses. Someone restarts a service. Another scans telemetry data. Thirty minutes later, the problem surfaces.
The damage is already done.
Lost revenue. Frustrated customers. A stressed engineering team.
This reactive firefighting still defines operations across many enterprises. Engineers spend nearly 33% of their time responding to incidents instead of building better products.
But a new shift is emerging. AI agents are starting to move operations from monitoring problems to autonomously resolving them.
That shift took a major step forward at New Relic’s developer event New Relic Advance, where the company unveiled its Agentic Platform, a no-code environment designed to help enterprises build and manage AI agents directly within their observability stack.
The announcement signals a broader transformation: observability is evolving from insight to action.
An agentic platform allows organizations to create AI agents that analyze data, reason through problems, and execute actions autonomously.
Instead of humans responding to alerts, agents investigate incidents and trigger fixes automatically.
For CX and EX leaders, this matters more than it seems.
Every digital experience depends on system reliability. Slow apps, broken checkout flows, or unavailable services quickly destroy customer trust.
Observability tools traditionally help teams see problems faster.
Agentic AI helps them solve problems automatically.
According to International Data Corporation, enterprises increasingly see AI agents as the next evolution of IT operations.
As Stephen Elliot, Group Vice President at IDC, explains:
He adds that organizations deploying agents within strong governance frameworks will unlock a new level of operational efficiency.
Rule-based automation struggles to handle modern cloud complexity.
Today’s digital environments contain microservices, APIs, containers, and distributed architectures. A single outage may involve dozens of interconnected services.
Traditional automation follows fixed rules:
But real incidents rarely follow predictable patterns.
That creates three major operational problems.
Teams wait for alerts before investigating.
Too many signals dilute focus.
Institutional knowledge lives in engineers’ heads.
The result? Slower incident resolution and higher operational stress.
Agentic platforms aim to solve this by capturing expertise and embedding it into AI-driven workflows.
The platform enables enterprises to build, deploy, and govern AI agents that analyze observability data and execute operational workflows.
Unlike standalone AI copilots, the platform integrates directly into observability pipelines.
This allows agents to operate where operational data already lives.
Key capabilities include:
SREs and operations leaders can design agents using a drag-and-drop visual interface.
No coding skills required.
This democratizes AI across operations teams.
The platform includes ready-to-use agents such as SRE Nerd, designed to accelerate adoption.
These agents handle common operational workflows immediately.
Agents use reasoning logic to handle complex, multi-step investigations.
They adapt to unfamiliar failure scenarios.
A centralized command center coordinates and manages agents across environments.
This allows organizations to scale automation safely.
Autonomous agents require strict governance frameworks to ensure reliability and compliance.
Uncontrolled automation can create new operational risks.
The platform addresses this challenge through:
It also supports the Model Context Protocol (MCP) for secure tool access.
This governance layer builds trust in autonomous operations.
As Brian Emerson, Chief Product Officer at New Relic, explains:
In short, the platform attempts to bridge the talent gap and trust gap slowing AI adoption.
Operational resilience directly shapes digital customer experience.
Every CX leader knows the ripple effect of outages:
Agentic observability introduces three powerful CX benefits.
AI agents detect patterns across telemetry data instantly.
They investigate root causes faster than manual teams.
Agents analyze signals continuously.
They flag risks before customers notice issues.
SREs spend less time firefighting.
They focus on innovation and reliability improvements.
These improvements translate into better uptime, smoother journeys, and happier customers.
Organizations worldwide rely on New Relic’s observability platform to maintain digital experiences.
These include companies such as:
Adidas Runtastic
Domino’s
Swiggy
Ryanair
Topgolf
William Hill
These businesses operate complex digital environments where downtime directly impacts revenue.
Agentic capabilities could significantly accelerate operational automation across such ecosystems.
Agentic automation introduces cultural and technical challenges.
Organizations must prepare for several hurdles.
Many teams lack experience building AI workflows.
Autonomous systems must align with security policies.
Teams must trust agents to take operational actions.
Agentic AI represents a shift from observability insights to automated action.
Here are the most important implications:
Organizations that integrate these capabilities early could gain a strong operational advantage.
Before deploying agentic AI, enterprises should watch for common mistakes.
Over-automation too quickly
Start with narrow workflows before scaling.
Ignoring governance frameworks
Autonomous systems require strict controls.
Underestimating cultural resistance
Teams must trust AI before relying on it.
Fragmented observability data
Agents need unified telemetry for accurate decisions.
Agentic AI refers to autonomous systems that analyze telemetry data, investigate incidents, and execute remediation actions without human intervention.
AI agents reduce operational toil, accelerate incident resolution, and enable teams to focus on innovation rather than firefighting.
No-code tools allow domain experts like SREs to build automation workflows without programming expertise, accelerating adoption.
Enterprises need RBAC controls, audit logging, testing frameworks, and security protocols to ensure agents act safely.
AI agents will handle repetitive tasks, allowing engineers to focus on architecture, reliability engineering, and innovation.
Industry forecasts suggest 40% of enterprise applications will include AI agents by 2026, indicating rapid adoption.
The rise of agentic AI marks a turning point in enterprise operations.
Observability platforms no longer just detect problems.
They increasingly solve them automatically.
For CX leaders navigating complex digital ecosystems, this shift could redefine reliability, resilience, and the customer experience itself.
The post Agentic Observability: How New Relic’s Agentic Platform Is Transforming AI-Driven Operations appeared first on CX Quest.


