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LogicMonitor's Edwin AI Available in AWS Marketplace AI Agents and Tools Category

LogicMonitor announced the availability of Edwin AI, LogicMonitor’s AI Agent for ITOps (IT Operations), in the new AI Agents and Tools category of AWS Marketplace.

Customers can now use AWS Marketplace to easily discover, buy, and deploy AI agent solutions, including LogicMonitor’s Edwin AI using their AWS accounts, accelerating AI agent and agentic workflow development.

Edwin AI is an AI agent for ITOps: purpose-built to accelerate incident investigation and resolution while cutting through operational noise. It correlates alerts, pinpoints root causes, and recommends or initiates remediation to help teams resolve issues faster and operate more efficiently. With Edwin AI, IT teams can shift from firefighting to proactive operations, boosting productivity without adding headcount.

"By offering Edwin AI in AWS Marketplace we're providing customers with a streamlined way to access our AI agent for ITOps, helping them buy and deploy agent solutions faster and more efficiently,” said Karthik SJ, GM of AI, LogicMonitor. "Our customers in healthcare and financial services, as well as MSPs, are already using these capabilities to reduce alert noise, lower IT service management incidents, drive faster resolution, and boost operational efficiency, demonstrating the real-world value of agentic AIOps with Edwin AI.”

Edwin AI delivers essential capabilities including event intelligence, AI agents, and incident automation intelligence. These features enable customers to focus on higher value work and scale more quickly.

With the availability of AI Agents and Tools in AWS Marketplace, customers can significantly accelerate their procurement process to drive AI innovation, reducing the time needed for vendor evaluations and complex negotiations. With centralized purchasing using AWS accounts, customers maintain visibility and control over licensing, payments, and access through AWS. 

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LogicMonitor's Edwin AI Available in AWS Marketplace AI Agents and Tools Category

LogicMonitor announced the availability of Edwin AI, LogicMonitor’s AI Agent for ITOps (IT Operations), in the new AI Agents and Tools category of AWS Marketplace.

Customers can now use AWS Marketplace to easily discover, buy, and deploy AI agent solutions, including LogicMonitor’s Edwin AI using their AWS accounts, accelerating AI agent and agentic workflow development.

Edwin AI is an AI agent for ITOps: purpose-built to accelerate incident investigation and resolution while cutting through operational noise. It correlates alerts, pinpoints root causes, and recommends or initiates remediation to help teams resolve issues faster and operate more efficiently. With Edwin AI, IT teams can shift from firefighting to proactive operations, boosting productivity without adding headcount.

"By offering Edwin AI in AWS Marketplace we're providing customers with a streamlined way to access our AI agent for ITOps, helping them buy and deploy agent solutions faster and more efficiently,” said Karthik SJ, GM of AI, LogicMonitor. "Our customers in healthcare and financial services, as well as MSPs, are already using these capabilities to reduce alert noise, lower IT service management incidents, drive faster resolution, and boost operational efficiency, demonstrating the real-world value of agentic AIOps with Edwin AI.”

Edwin AI delivers essential capabilities including event intelligence, AI agents, and incident automation intelligence. These features enable customers to focus on higher value work and scale more quickly.

With the availability of AI Agents and Tools in AWS Marketplace, customers can significantly accelerate their procurement process to drive AI innovation, reducing the time needed for vendor evaluations and complex negotiations. With centralized purchasing using AWS accounts, customers maintain visibility and control over licensing, payments, and access through AWS. 

The Latest

80% of respondents agree that the IT role is shifting from operators to orchestrators, according to the 2026 IT Trends Report: The Human Side of Autonomous IT from SolarWinds ...

40% of organizations deploying AI will implement dedicated AI observability tools by 2028 to monitor model performance, bias and outputs, according to Gartner ...

Until AI-powered engineering tools have live visibility of how code behaves at runtime, they cannot be trusted to autonomously ensure reliable systems, according to the State of AI-Powered Engineering Report 2026 report from Lightrun. The report reveals that a major volume of manual work is required when AI-generated code is deployed: 43% of AI-generated code requires manual debugging in production, even after passing QA or staging tests. Furthermore, an average of three manual redeploy cycles are required to verify a single AI-suggested code fix in production ...

Many organizations describe AI as strategic, but they do not manage it strategically. When AI plans are disconnected from strategy, detached from organizational learning, and protected from serious assumptions testing, the problem is no longer technical immaturity; it is a failure of management discipline ... Executives too often tell organizations to "use AI" before they define what AI is supposed to change. The problem deepens in organizations where strategy isn't well articulated in the first place ...

Across the enterprise technology landscape, a quiet crisis is playing out. Organizations have run hundreds, sometimes thousands, of generative AI pilots. Leadership has celebrated the proof of concept (POCs) ... Industry experience points to a sobering reality: only 5-10% of AI POCs that progress to the pilot stage successfully reach scaled production. The remaining 90% fail because the enterprise environment around them was never ready to absorb them, not the AI models ...

Today's modern systems are not what they once were. Organizations now rely on distributed systems, event-driven workflows, hybrid and multi-cloud environments and continuous delivery pipelines. While each adds flexibility, it also introduces new, often invisible failures. Development speed is no longer the primary bottleneck of innovation. Reliability is ...

Seeing is believing, or in this case, seeing is understanding, according to New Relic's 2025 Observability Forecast for Retail and eCommerce report. Retailers who want to provide exceptional customer experiences while improving IT operations efficiency are leaning on observability ... Here are five key takeaways from the report ...

Technology leaders across the federal landscape are facing, and will continue to face, an uphill battle when it comes to fortifying their digital environments against hostile and persistent threat actors. On one hand, they are being asked to push digital transformation ... On the other hand, they are facing the fiscal uncertainty of continuing resolutions (CR) and government shutdowns looming near and far. In the face of these challenges, CIOs, CTOs, and CISOs must figure out how to modernize legacy systems and infrastructure while doing more with less and still defending against external and internal threats ...

Reliability is no longer proven by uptime alone, according to the The SRE Report 2026 from LogicMonitor. In the AI era, it is experienced through speed, consistency, and user trust, and increasingly judged by business impact. As digital services grow more complex and AI systems move into production, traditional monitoring approaches are struggling to keep pace, increasing the need for AI-first observability that spans applications, infrastructure, and the Internet ...

If AI is the engine of a modern organization, then data engineering is the road system beneath it. You can build the most powerful engine in the world, but without paved roads, traffic signals, and bridges that can support its weight, it will stall. In many enterprises, the engine is ready. The roads are not ...