FrontRange Solutions launched a new version of Desktop & Server Management (DSM 7.1). The new Client Management release adds numerous enhancements related to compliance management, reporting and other key capabilities to further facilitate management of complex IT infrastructure.
FrontRange DSM is a Client Management solution to fully automate complex and routine software packaging and provisioning tasks, from installing applications and operating systems to running and maintaining devices over time.
The enhanced capabilities in FrontRange DSM 7.1 include:
* compliance enforcement
* offline support (package delivery) via thumb drives
* DSM web and infrastructure reporting
* self-service for operating system deployments
* mobile device management via optional integration of 3rd-party products
“Although DSM 7.1 was just recently released, numerous customers have participated in the early-adopter program and their overall feedback is very positive. We have delivered a very high quality release and with the additional capabilities to integrate with mobile device management solutions we will further extend our leadership in the client management market,” said Udo Waibel, CTO, FrontRange.
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