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@CloudExpo Authors: Pat Romanski, Elizabeth White, Zakia Bouachraoui, Liz McMillan, Yeshim Deniz

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Containers Expo Blog: Article

Taking the Leap to Virtualization

Security and Backup Considerations in the Virtual Environment

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Many mid-market companies have invested significant time and resources to secure and back up their servers, client computers, data, and overall network infrastructure in what was the traditional client-server setup. Now, what were considered emerging technologies just a few years ago, cloud computing and virtualization have arrived on the scene, bringing both significant benefits and new challenges. Find out more about this transition to get the most out of your virtual environment.

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