WINDOWS STORAGE SERVER 2019
- Integrate storage in an existing Windows infrastructure.
- Have an unlimited number of users on the Active Directory Support.
- Deployment is easy, quick, and simple.
- Network File System (NFS) are used to provide access over the network.
- Data deduplication and compression
About
Windows® Storage Server 2019 is a dedicated file and print server based on Windows Server 2019 that is designed for dependability, seamless integration, and best value in networked storage. Windows Storage Server 2019 integrates with existing infrastructures and supports heterogeneous file serving as well as backup and replication of stored data. Windows Storage Server is also an ideal solution for consolidating multiple file servers into a single solution that enables cost reduction and policy-based management of storage resources.
Specification
Specifications
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