
Nastel Technologies announced the immediate availability of Nastel Navigator X.
Nastel Technologies offers a complete Middleware Management, Monitoring and Tracking solution in the market to help businesses fully optimize and exploit their investment in commercial and Open Source messaging middleware including IBM’s messaging stack, Tibco/EMS, Kafka, ActiveMQ RabbitMQ, JMS etc. It acts as a “Single source of truth” for the entire Middleware Estate with optional integration into any ESM, APM tools to help reduce customer issues and outages significantly.
“Out of the box, Navigator X provides automation, machine learning, and rapid deployment, saving time and money. This is a paradigm shifting, Category-Maker that will jump start significant business improvements for companies of all sizes” said Hari Mohanan, VP of Worldwide Sales at Nastel. “Add to that the Enterprise Grade security features that it comes with, makes your Middleware Environment virtually impenetrable.”
Nastel Navigator X is an AIOps solution for messaging middleware. It is available in various cloud environments ranging from private – on premises, hybrid-cloud or public clouds. The solution provides, management, monitoring and self-service for DevOps and it drastically reduces the time and effort associated with managing complex messaging environments, as well as stripping potentially thousands of FTE hours out of cloud migrations.
Designed for development, operations, QA testing, GRC and the business side of applications, Nastel Navigator X is the one stop solution to improve Time-To-Market (TTM), reduce MTTR, lower MTBF, simplify regulatory reporting and improve user experience.
“We know this sounds like a lot in one solution, but this is exactly the benefits our customers are achieving on a daily basis.” said Albert Mavashev CTO of Nastel. “We’ve spent 25 years building the perfect solution for today, and while we never expected the pandemic, the need for Navigator X is even greater now that the focus is on saving money, rapidly deploying complex updates and allowing remote workers secure access to critical systems”
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