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Watch our Megacast presentation! (Demo)

by Catherine Chiang – December 11, 2017

We showcased Igneous’ backup and archive solutions at the Enterprise Storage Megacast on December 6th!

In this twenty-five-minute presentation, Igneous’ VP of Product, Christian Smith, explains:

  • How Igneous delivers cloud agility to your datacenter at scale
  • How Igneous eliminates backup windows through our highly parallel, latency-aware data movement
  • Igneous’ data protection features, including tiering/replication, lifecycle management, versioning, and WORM
  • How Igneous takes care of maintenance, updates, and troubleshooting
  • How to set policies, search for data, and derive insights from Igneous Hybrid Storage Cloud with our user-friendly interface (Demo)

Stay tuned until the end for an exclusive demo, showcasing Igneous’ new web UI for the first time.

We are excited to share this presentation with you!

Megacast thumbnail.png

Watch megacast

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