New Research from EMA Determines that DataCore™ Adaptive Parallel I/O Technology Significantly Lowers Server and Storage Costs

Industry Impact Brief Explores How

Parallel I/O Enables Organizations to Reclaim the Savings of Virtualization That Had Become Diminished Due to the I/O Gap


FORT LAUDERDALE, Fla., April 7, 2016
– DataCore, the leader in Parallel-Powered Software, Application-Adaptive Data Infrastructure and Hyper-converged Virtual SAN solutions, today announced the results of new
research conducted by Enteprise Management Associates (EMA). Detailed in a recently-published
Industry Impact Brief
, EMA senior analyst Jim Miller states, “DataCore has been delivering significant cost savings with comprehensive storage services for heterogeneous
environments long before the creation of the term ‘Software-Defined Storage.’ By putting multi-core servers to work using Adaptive Parallel I/O technology,
DataCore has added a capability to save on capital and operational expenses for both storage and servers.”

The economic and productivity impact goes beyond the “consolidation” boom that server virtualization started, but did not finish. More virtual machines
running on the same CPU delivered the first wave of consolidation savings but on today’s multi-core systems with dozens to hundreds of CPU cores available,
the potential for more savings is greatly multiplied. However as the number of CPU cores has grown, new performance issues have surfaced in virtualized
environments as only a single CPU core is typically assigned by the hypervisor to process input/output (I/O) operations – despite the abundance of CPU
cores available. This restriction creates an “I/O gap” between application processing and I/O processing, and when paired with the aggregation of mixed
workloads, a bottleneck in performance arises.

Enterprise application workloads, and especially databases, achieved limited cost saving benefits since they had to resort to larger cluster complexes and
utilize many more systems to overcome the “I/O gap” and serial processing bottlenecks. Counter to consolidation, this led to more server sprawl to process
these demanding business workloads.

DataCore™ Adaptive Parallel I/O software solves this problem by multiplying the performance of virtualized and hyper-converged systems by enabling the
execution of many independent I/O streams simultaneously across multiple CPU cores, significantly reducing the latency to service and process I/Os. Rather
than serializing I/O as competing products do, parallel I/O software automatically allocates the number of core resources needed to eliminate the mismatch
between computational and I/O processing. This dramatically reduces the I/O limitations and bottlenecks that restrict the number of virtual machines (VMs)
and workloads that can be consolidated on server and hyper-converged platforms. The impact of harnessing untapped multi-cores with parallel I/O software
completely redefines performance and the economics of total cost of ownership; it enables the next wave of hyper-consolidation productivity that allows IT
shops to “do far more with less” and significantly lower server and storage costs.

According to EMA, there are two primary benefits of parallel I/O software: it significantly reduces the number of physical servers while achieving faster
application response times using lower-cost, commodity-based storage hardware. This reduction in servers increases in importance as the market transitions
from traditional enterprise storage (NAS, SAN, DAS) to enterprise server SAN storage, or hyper-converged systems. Next is the savings in storage costs. By
treating the root cause of the problem, performance requirements can be met or exceeded with less costly storage resources. As a result, DataCore Adaptive
Parallel I/O software enables IT organizations to reclaim the savings of virtualization that had become diminished due to the I/O gap.

The Industry Impact Brief makes note of several recent benchmarks results that independently quantify the economic and performance capability of parallel
I/O technology. The first result referenced is DataCore’s world record for price performance ($0.08/SPC-1 IOPS™) achieved with DataCore™ SANsymphony™
Software-Defined Storage and DataCore™ Hyper-converged Virtual SAN software featuring Adaptive Parallel I/O technology. DataCore also recorded the fastest
response time ever measured on the SPC-1 benchmark at that time with an incredible 0.32 milliseconds at 100% load (459,000 SPC-1 IOPS™) on a
hyper-converged system running on a compact off-the-shelf 2U Lenovo server, total costs were only $38,400 [1].
That’s 3x to 10x faster than competing systems that cost several hundreds to millions of dollars.

Newer results validated on software from DataCore use parallel I/O technology to enable compact, power and space saving 2U servers to utilize multicores to
multiply server performance; DataCore’s parallel server elevated the numbers to 1.5 million SPC-1 IOPS™, while setting a new record response time of 0.10
milliseconds at 100% load [2].
The result of this is a decreased number of physical servers from five to one, offering a significant savings in capital, software licensing,
administrative effort, and environmental expense.

EMA stated that DataCore has long been known for delivering significant cost savings with comprehensive storage services for heterogeneous environments.
Lenovo, Fujitsu, Huawei and Dell currently offer solutions that include DataCore software with their servers. As Adaptive Parallel I/O technology gains
traction, EMA believes that other server vendors will follow suit and offer the DataCore software. Not to do so would put these vendors at a significant
disadvantage.

“EMA applauds DataCore for approaching the virtualized server performance problem in a new, more efficient way,” continued Miller. “DataCore was recently
awarded “Best Enterprise Solution for Software-Defined Storage” in the recent EMA Radar™ Report for Enterprise Software-Defined Storage. For parallel I/O
technology, DataCore currently has no competition.”

The complete Impact Brief can be viewed here:
http://ift.tt/1MhgU8N


About DataCore


DataCore, the Data Infrastructure Software company, is the leading provider of Software-Defined Storage and
Adaptive Parallel I/O Software
– harnessing today’s powerful and cost-efficient server platforms with Parallel I/O to overcome the IT industry’s biggest problem, the I/O bottleneck, in
order to deliver unsurpassed performance, hyper-consolidation efficiencies and cost savings. The company’s comprehensive and flexible storage virtualization and hyper-converged virtual SAN solutions free users from the pain of
labor-intensive storage management and provide true independence from solutions that cannot offer a hardware agnostic architecture. DataCore’s
Software-Defined and Parallel I/O powered platforms revolutionize data infrastructure and serve as the cornerstone of the next-generation, software-defined
data center – delivering greater value, industry-best performance, availability and simplicity. Visit http://www.datacore.com or call (877) 780-5111 for more information.

###


Storage Performance Council, SPC-1, SPC-1 IOPS, SPC-1 Price-Performance and SPC-1 Result are trademarks or registered trademarks of the Storage
Performance Council.


DataCore, the DataCore logo and SANsymphony are trademarks or registered trademarks of DataCore Software Corporation. Other DataCore product or service
names or logos referenced herein are trademarks of DataCore Software Corporation. All other products, services and company names mentioned herein may
be trademarks of their respective owners.


CONTACT


For media & PR inquiries:

SVM on behalf of DataCore

Jill Colna or Sarah Anderson

401.490.9700

DataCore@svmpr.com

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