Visual One Intelligence® announced the availability of their hybrid infrastructure observability tool in the Microsoft Azure Marketplace, an online store providing applications and services for use on Azure.
Visual One Intelligence® customers can now take advantage of the productive and trusted Azure cloud platform, with streamlined deployment and management.
Built primarily on Azure, Visual One Intelligence® is an all-in-one hybrid infrastructure monitoring, FinOps, and planning tool compatible across more than 100 cloud, on-prem, virtualization, database, and container devices (including Azure Cloud).
Availability in the Azure marketplace benefits potential customers of Visual One Intelligence® through:
- Simplified Procurement: Azure customers can now purchase Visual One Intelligence® directly through their existing Azure agreements, streamlining the buying process and reducing administrative overhead.
- Integrated Billing: Customers can consolidate Visual One Intelligence® costs with their Azure spending, simplifying budget management and creating additional options for utilizing committed Azure funds.
- Enhanced Security and Compliance: Customers can deploy Visual One Intelligence® with confidence, knowing it is SOC 2 Type 2 compliant and adheres to Microsoft's strict security standards.
- Seamless Integration: Visual One Intelligence® can be easily integrated with other Azure services, allowing for a more cohesive and efficient cloud ecosystem.
The Azure Marketplace is a premier destination for organizations seeking cloud-based solutions. As more enterprise infrastructures evolve into the cloud, marketplaces like Azure's are relied upon by more companies than ever before. And as many of those companies look to balance hybrid infrastructures that are split between the cloud and on-prem, solutions that can integrate both environments into centralized analytics are especially valuable.
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