Evolven has released Evolven 4.0, the latest release of the Evolven change and configuration management solution.
This release takes a new approach to change and configuration management for today's dynamic, complex modern data center, incorporating new features and improvements, with more robust analytics, a new knowledgebase editor, improved usability, a remarkable new reporting engine, and greater scalability.
Evolven change and configuration management software analyzes piles of overwhelming configuration data to instantly reveal critical changes, eliminate environment issues, speed up troubleshooting, and help IT ops resolve issues quickly.
Highlights of Evolven 4.0:
- Powerful analytics: Groundbreaking analytics is at the center of the new release allow customers to identify critical changes in a smoother and faster experience.
- Change visualization: Customers can easily pinpoint critical changes with a new change visualization graphical interface, locating the changes in a clean and easy-to-understand view, and flagging suspicious changes for follow up.
- Efficient change layout: Applies statistics-based grouping that automatically groups changes in relevant sets to allow you to quickly identify the changes that matter.
- Better environment consistency analysis: Allows you to analyze and identify inconsistent configuration, by comparing consistency between different environments. You can easily visually spot each inconsistent change and realize if this is consistent or inconsistent with the compared to environment, allowing you to validate releases and deployments.
- Flexible new knowledgebase editor: With the innovative wizard-based modeling, you can set up custom application definitions in less than 5 minutes.
- Improved usability: See the environment state from a simple, graphical single point of view and drill down to understand important details about changes.
- Enhanced reporting engine: The new reporting engine allows customers to edit or create custom reports. Evolven now offers new templates, including an executive summary report containing actionable metrics for IT execs on changes to different layers of the environment.
- Scalability: Runs many more comparisons in parallel, making more efficient usage of the server memory.
"This latest release of our change and configuration management software is based directly on feedback from our customers," said Sasha Gilenson, CEO of Evolven, "It is an advanced analysis tool that takes a major step for improving analytics and providing more useful and actionable information on configuration changes."
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