Cherwell Software joins forces with Resolve Systems, a provider in enterprise automation and AIOps, to help companies better manage their complex IT environments through workflow automation and auto-discovery and dependency mapping.
Cherwell is now an official reseller of Resolve products and can seamlessly deliver the integrated offering to their customers. Cherwell selected Resolve’s automated discovery and dependency mapping solution based on its robust capabilities and customer success.
The collaboration between Resolve and Cherwell provides a complete solution for streamlining IT operations and accelerating service delivery. Combining best-in-class ITSM and robust discovery and dependency mapping immediately provides customers deep visibility into complex, hybrid environments, while also forging a strong foundation to advance AIOps initiatives.
“By partnering with one of the leaders in enterprise service management and ITSM, we’re able to offer a comprehensive solution to automating IT operations and accelerating service desk transformation,” said Rob Kelsall, VP of Global Sales Engineering for Resolve. “We look forward to helping Cherwell customers achieve agile, autonomous operations, starting with automated discovery and dynamic dependency mapping.”
“As a fellow leader in the domain, we couldn’t be more pleased that Resolve is expanding their collaboration with us. Together, our goal is to offer exceptional, end-to-end solutions for the entire enterprise,” said Scott Gainey, CMO of Cherwell.
By combining Resolve’s discovery and dependency mapping solution with Cherwell ITSM, customers can:
- Eliminate manual work by automating discovery and real-time updates to their Cherwell CMDB
- Identify and track dynamic, multi-layer relationships between applications and hybrid infrastructure
- Auto-generate complex topology maps to visualize infrastructure relationships and facilitate troubleshooting
Resolve integrates seamlessly with Cherwell’s flagship offering, Cherwell Service Management — delivered on Cherwell's powerful and flexible no-code CORE™ platform. Cherwell enables IT, HR, Facilities, and other teams to implement, automate and modernize service and support processes to meet new and evolving needs — at a fraction of the cost and complexity of other tools.
Resolve’s discovery and dependency mapping product is part of their comprehensive automation and AIOps platform, which is integrated with Cherwell’s IT Service Management® solution. Resolve provides full-stack visibility into complex, hybrid IT environments by performing agentless auto-discovery of all physical and virtual entities, mapping dependencies, and creating topology maps that enable IT teams to see what they are managing. This integration can be found on the Cherwell Marketplace.
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