Support our efforts, sign up to a full membership!
(Start for free)
Register or login with just your e-mail address
Classical 16/10/2018

Detroit Symphony Orchestra Chooses Scale Computing's HC3 Platform

Hot Songs Around The World

Strangers
Kenya Grace
442 entries in 24 charts
Lovin On Me
Jack Harlow
293 entries in 22 charts
Popular
Weeknd, Playboi Carti & Madonna
266 entries in 18 charts
Lose Control
Teddy Swims
316 entries in 25 charts
Beautiful Things
Benson Boone
159 entries in 24 charts
Water
Tyla
306 entries in 20 charts
Stick Season
Noah Kahan
313 entries in 19 charts
Houdini
Dua Lipa
285 entries in 26 charts
Unwritten
Natasha Bedingfield
291 entries in 22 charts
Si No Estas
Inigo Quintero
283 entries in 17 charts
Greedy
Tate McRae
621 entries in 28 charts
Cruel Summer
Taylor Swift
572 entries in 20 charts
Anti-Hero
Taylor Swift
615 entries in 23 charts
Snooze
SZA
223 entries in 13 charts
Detroit Symphony Orchestra Chooses Scale Computing's HC3 Platform
New York, NY (Top40 Charts) Scale Computing, a market leader in hyperconverged solutions, today announced that the Detroit Symphony Orchestra (DSO) has selected Scale Computing's HC3 platform to underpin its IT infrastructure. The HC3 cluster provides a cost effective and simple-to-manage solution that has helped modernize the organization and cater to future capacity demands.

The DSO is a community-supported orchestra that is celebrated as one of the nation's most forward-thinking. Based in historic Orchestra Hall within the Max M. and Marjorie S. Fisher Music Center, the DSO presents a variety of musical genres and performance types: classical, pops, jazz, and even yoga set to live music. The orchestra looks to be on the leading edge and wanted to utilize the latest technology in order to upgrade its previous SAN system.

Looking to simplify IT management while remaining cost effective, the Detroit Symphony Orchestra decided to pursue a hyperconverged platform and opted for Scale Computing's HC3 cluster. The appliance has no additional software to license and no training is needed. In addition, the HC3 solution is built in a scale-out architecture, where nodes can be added, allowing for future growth and capacity demands.

The Scale Computing HC3 cluster integrates server, storage and virtualization into a single appliance that delivers simplicity, availability and scalability.

"I felt like I was saving from the start. Scale Computing's HC3 solution was easy, simple and a non-profit organization's dream. All I had to do was unbox the product and place on a rack - it was ready to go," commented Jody Harper, director of IT at the Detroit Symphony Orchestra. "HC3 is the best product I've ever purchased as an IT professional. We want to be ahead of the curve and hyperconvergence has enabled us to do just that."

Jeff Ready, CEO at Scale Computing commented, "Organizations need to be able modernize their IT infrastructure while staying agile and cost effective. We are pleased to have enabled the Detroit Symphony Orchestra to implement a solution that meets their growing requirements by simplifying IT management and offering a scale-out platform."

To watch a video on the Detroit Symphony Orchestra HC3 implementation story, visit here. For more information on Scale Computing HC3, visit here.

About Scale Computing
Scale Computing integrates storage, servers and virtualization software into an all-in-one appliance-based system that is scalable, self-healing, and as easy to manage as a single server. Using industry standard components, the HC3 appliances install in under an hour and can be expanded and upgraded with no downtime. High availability insulates the user from any disk or server failure and a unified management capability driven by the patented HyperCore Software™, efficiently integrates all functionality. The result is a data center solution that reduces operational complexity, allows a faster response to business issues, and dramatically reduces costs.






Most read news of the week


© 2001-2024
top40-charts.com (S4)
about | site map
contact | privacy
Page gen. in 0.0086181 secs // 4 () queries in 0.0049512386322021 secs