Red Hat OpenShift users can now access Sosivio Predictive Troubleshooting for Kubernetes directly through the Red Hat Ecosystem Catalog.
With Sosivio, customers can predict and prevent critical failures in their Red Hat OpenShift environments, while optimizing resources to improve performance and drastically cut cloud spend.
As a certified Red Hat OpenShift Operator, Sosivio's platform provides a way for enterprises to more confidently adopt and scale Kubernetes using Red Hat OpenShift by reducing ambiguity in the troubleshooting process. The platform uses air-gapped proprietary data collectors that are tightly coupled with cloud-native machine learning engines to provide real-time insights and recommendations without ever moving data off the customer's environment. Sosivio collects and analyzes data from all layers of the infrastructure, filtering out irrelevant information, to ensure prompt identification and resolution of infrastructure and application issues for DevOps, IT, Developer, and Security teams.
"If you are an enterprise figuring out how to adopt or scale Kubernetes, Sosivio is the tool you need. Sosivio doesn't help you just troubleshoot, it gives you the answers in real-time. Take back control of your time," said Nuri Golan, CEO & Co-Founder, Sosivio
Sosivio's platform is built upon an architecture specifically designed for Kubernetes. In addition to failure detection and prediction, Sosivio offers a suite of features including Application Profiling Insights and Recommendations, Networking Insights, ultra-granular Real-Time Metrics, and more. All of this is offered with no impact to Red Hat OpenShift environments including no persistent storage requirements, no data-offloading, and is fully operational 100% inside Red Hat OpenShift clusters.
Red Hat customers can use Sosivio with Red Hat OpenShift for advanced observability. Users can manage and improve security for their Kubernetes environment with Red Hat OpenShift, optimizing their workflows, and maximizing their efficiency. With Sosivio, users can develop and debug Red Hat OpenShift workloads faster, optimize resources more efficiently, and eliminate mean-time-to-recovery. Users can also migrate applications to Red Hat OpenShift faster and maintain higher uptime through stable workloads, even in on-premise and air-gapped deployments.
The Latest
Broad proliferation of cloud infrastructure combined with continued support for remote workers is driving increased complexity and visibility challenges for network operations teams, according to new research conducted by Dimensional Research and sponsored by Broadcom ...
New research from ServiceNow and ThoughtLab reveals that less than 30% of banks feel their transformation efforts are meeting evolving customer digital needs. Additionally, 52% say they must revamp their strategy to counter competition from outside the sector. Adapting to these challenges isn't just about staying competitive — it's about staying in business ...
Leaders in the financial services sector are bullish on AI, with 95% of business and IT decision makers saying that AI is a top C-Suite priority, and 96% of respondents believing it provides their business a competitive advantage, according to Riverbed's Global AI and Digital Experience Survey ...
SLOs have long been a staple for DevOps teams to monitor the health of their applications and infrastructure ... Now, as digital trends have shifted, more and more teams are looking to adapt this model for the mobile environment. This, however, is not without its challenges ...
Modernizing IT infrastructure has become essential for organizations striving to remain competitive. This modernization extends beyond merely upgrading hardware or software; it involves strategically leveraging new technologies like AI and cloud computing to enhance operational efficiency, increase data accessibility, and improve the end-user experience ...
AI sure grew fast in popularity, but are AI apps any good? ... If companies are going to keep integrating AI applications into their tech stack at the rate they are, then they need to be aware of AI's limitations. More importantly, they need to evolve their testing regiment ...
If you were lucky, you found out about the massive CrowdStrike/Microsoft outage last July by reading about it over coffee. Those less fortunate were awoken hours earlier by frantic calls from work ... Whether you were directly affected or not, there's an important lesson: all organizations should be conducting in-depth reviews of testing and change management ...
In MEAN TIME TO INSIGHT Episode 11, Shamus McGillicuddy, VP of Research, Network Infrastructure and Operations, at EMA discusses Secure Access Service Edge (SASE) ...
On average, only 48% of digital initiatives enterprise-wide meet or exceed their business outcome targets according to Gartner's annual global survey of CIOs and technology executives ...
Artificial intelligence (AI) is rapidly reshaping industries around the world. From optimizing business processes to unlocking new levels of innovation, AI is a critical driver of success for modern enterprises. As a result, business leaders — from DevOps engineers to CTOs — are under pressure to incorporate AI into their workflows to stay competitive. But the question isn't whether AI should be adopted — it's how ...