Machine and deep learning applications bring new workflows and challenges to enterprise data center architectures. One of the key challenges revolves around data and the storage solutions needed to store, manage, and deliver up to AI’s demands. Today’s intelligent applications require infrastructure that is very different from traditional analytics workloads, and an organization’s data architecture decisions will have a big impact on the success of its AI projects.