Operations | Monitoring | ITSM | DevOps | Cloud

Event Intelligence is Replacing Monitoring - Here's Why That Matters

For more than two decades, monitoring has been the foundation of IT operations. Organizations invested heavily in tools designed to collect metrics, visualize performance, and trigger alerts when thresholds were breached. This model was effective in an era when infrastructure was largely static, workloads were predictable, and system dependencies were relatively easy to trace. That environment no longer exists.

The Hidden Operational Risk Financial Institutions Can No Longer Ignore

Why digital experience is now a regulatory priority In regulated industries like financial services, even minor technology friction can quickly become a regulatory risk. Gaps in visibility, slow systems, and inconsistent performance can trigger audit findings, SLA breaches, and increased compliance scrutiny.

How LogicMonitor Delivers AI Cost Optimization

LogicMonitor delivers AI cost optimization by unifying infrastructure telemetry, AI-specific signals, and cloud financial data into a single workflow, so teams can move from visibility to continuous, operationalized cost control. In Cost Optimization for AI Workloads: From Visibility to Control, we explored why AI workloads introduce new layers of cost complexity—from GPU-heavy compute and token-based pricing to distributed infrastructure that obscures true spend.

Cost Optimization for AI Workloads: From Visibility to Control

ITOps teams can achieve cost management of AI workloads with an observability platform that connects AI usage and performance with cloud spend for clear visibility and predictability. Behind the buzz around artificial intelligence, or AI, many companies are discovering the hidden and compounding costs of AI adoption.

Identify untested code across every level of your codebase

As organizations scale their services and adopt AI-assisted coding, code changes are landing faster and in greater volume than ever before. While this powerful new practice is accelerating the pace of development, it is also increasing the likelihood that untested code may slip into repositories without detection. What makes this problem even worse is that most teams have no reliable way to know which code is covered by tests.
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Forwarding Microsoft SCOM Alerts to the Service Desk

Modern IT operations rely heavily on monitoring solutions like System Center Operations Manager (SCOM) to detect issues across servers, applications, and services. While SCOM excels at generating alerts, organizations often struggle to ensure these alerts translate into actionable incidents in their IT Service Management (ITSM) platforms. Without proper integration, critical alerts may be missed, tickets may be created manually, and incident resolution can be delayed.

How to Make AI-Generated Code Reliable with Runtime Context

AI coding assistants like Cursor and Claude Code are driving massive productivity gains, yet they have introduced a critical validation gap in the software delivery lifecycle. While these tools excel at generating syntax, they lack visibility into live production environments. This article explains how Runtime Context, the missing nervous system of AI development, secures production by moving from probabilistic guessing to deterministic, live code validation.

Kiro Can Now Use Lightrun via MCP

AI code assistants transformed how software is written. They did not transform how it fails. Today, we’re announcing a new MCP integration between Lightrun and Kiro. Kiro now gains live runtime visibility through the Lightrun MCP, grounding AI-assisted development in how code actually behaves at runtime. Kiro, the AI coding assistant from the teams at AWS, is built for velocity and intuition. It helps teams move from specification to production faster by turning intent into working code.