SolarWinds announced the upcoming release of SolarWinds IP Address Manager (IPAM) with feature enhancements positioned to give IT professionals a powerful new choice in the DDI market.
SolarWinds' latest version of IPAM combines feature-rich IP address management capabilities, support for Microsoft DHCP and DNS management, Cisco DHCP management and Cisco Adaptive Security Appliances (ASA), and integration with key SolarWinds IT management products.
By tightly integrating IP address management with DHCP/DNS management and monitoring, IT pros achieve better manageability of their IP infrastructure through a centralized view. As a result, users will gain improved network security, decreased network downtime due to IP address conflicts, increased efficiency by eliminating duplicate efforts in IP administration, and improved regulatory compliance through historical tracking and event recording of all IP-related activities.
"Appliance-based DDI solutions like Infoblox are costly, time-intensive and require a 'rip and replace' approach to existing infrastructure that budget-conscious enterprises are just not willing to undertake," said Sanjay Castelino, VP and market leader, SolarWinds. "SolarWinds is delivering IT pros a better DDI management option -- an extension of best-in-class IP infrastructure plus centralized management at a fraction of the price."
SolarWinds IPAM Highlights:
- Manage the entire IP infrastructure from a single, intuitive Web console
- Get integrated Microsoft DHCP and DNS and Cisco DHCP management and monitoring
- Gain detailed visibility into IP address space usage through real-time views and historical tracking
- Quickly troubleshoot IP address problems with a unified, at-a-glance dashboard
- Deploy as a standalone application or extend the IPAM view with SolarWinds' product integration, including performance monitoring, configuration management and device/port tracking
Click here to find out more about SolarWinds IPAM and download a free trial
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