Operations | Monitoring | ITSM | DevOps | Cloud

CloudFabrix

Taming the Data Problem and Accelerating AIOps implementations with Robotic Data Automation (RDA)

RDA enables enterprises to operationalize machine data at scale to drive AI & analytics driven decisions. RDA automates repetitive data integration, preparation and transformation activities using bots that are invoked in “no-code” data workflows or pipelines. RDA helps to move data in and out of AIOps systems thereby simplifying and accelerating AIOps implementations that otherwise would depend numerous manual data integrations and professional services activities.

Not knowing real time asset intelligence is a non starter

Complexity breaks correlation. Intelligence brings cohesion. This simple principle is what makes real-time asset intelligence a must-have for AIOps that is meant to diffuse complexity. To further create a context for the user, it is critical to understand service dependencies and correlate alerts across the stack to resolve incidents. CMDB systems have been useful to break down configuration items into logical layers. But, that’s not enough because they can become outdated very soon.

AIOps POC no longer have to be long and resource intensive

Gartner predicts that large enterprise exclusive use of AIOps and digital experience monitoring tools to monitor applications and infrastructure will rise from 5% in 2018 to 30% in 2023. And this prediction is soon turning into a reality. AIOps is showing promising business value as it impacts measurable metrics such as mean time to detect (MTTD), mean time to acknowledge (MTTA), mean time to restore/resolve (MTTR), service Availability, percentage of automated versus manual resolution, and so on.

Observability & AIOps, the perfect combination for dynamic environments

IT teams live in dynamic environments and continuous integration/continuous delivery has been on high demand. In the dynamic environment, DevOps and underlying technologies such as containers and microservices, continue to grow more dynamic, and complex. Now, just like DevOps, observability has become a part of the software development life cycle.

Observability is transforming ITOM landscape as next generation monitoring

First things first. Observability is inherent as a principle to a system and not something that is instilled. Here, we are addressing observability as an open source based solution in the context of insightful monitoring within the ITOM landscape. ITOM is now in the middle of addressing the needs of the expanding and dynamic nature of IT infrastructure as a function. It is no longer about being a monolithic computing stack. It is now beyond monitoring discrete infrastructure elements.

Accelerate Incident Response and Incident Management with AIOps. 5 Key Benefits in Cisco Environments

Artificial Intelligence for ITOps (AIOps) can help accelerate incident response with all the incident context, impact assessment, triage data and collaboration & automation tools at one place.

CloudFabrix featured in "Top 20 vendors shaping IT Performance" by Digital Enterprise Journal (DEJ)

Emerging digital IT paradigm shifts like Hybrid IT, Multi-Cloud, Microservices & Containerization, Serverless, Software Defined Datacenter etc. are creating compelling new opportunities for IT leaders. However, these same paradigm shifts have also led to a drastic increase in monitored assets, numerous operational tools, and exponential growth of operational data.

CloudFabrix announces Observability-in-a-Box with Edge AI Capabilities to simplify and accelerate AIOps deployments

CloudFabrix is enhancing its AIOps platform with native Observability and AI at the edge capabilities to bridge the gap between Observability and AIOps solutions. Enterprises are struggling with unifying multitude of expensive monitoring deployments as well as gaps in observability, specifically for modern application architectures that include usage of microservices, containers and Kubernetes.