Vertica announced integration
with H3C
ONEStor to deliver the benefits of cloud-native analytics to
enterprise data centers. Together, Vertica and H3C empower analytically driven
companies to elastically scale capacity and performance as data volumes grow
and as machine learning initiatives become a business imperative - all from
within hybrid environments.
"With this integration, data-driven
leaders in the APAC region will benefit from a powerful combination of
industry-leading platforms that accommodate any present and future strategic
analytical and machine learning initiatives," said Scott Richards, vice
president and general manager of Vertica. "H3C has a solid presence in this
region, enabling our joint customers to run Vertica's cloud-optimized
architecture with H3C's ONEStor to meet the most demanding performance and
financial requirements - from enterprise data centers or private clouds."
Vertica with H3C ONEStor enables
organizations to adopt cloud innovation for analytics wherever their data
resides, even if the timing or costs of cloud migration is not feasible.
Combining these two technologies offers fast analytics while simplifying data
protection with easy backup and replication features. In addition, it provides
99.9999999 percent of reliability for storing mission-critical data as it
leverages cloud technologies for on-premises deployments.
"We're delighted to offer Vertica
analytics and machine learning on top of our ONEStor from H3C. The analytical
performance offered by Vertica combined with the data reliability of ONEStor
offer ultra-large-scale and capacity, unmatched analytical performance, and
high data reliability," said Yili Liu, VP of Cloud and Intelligence
Product Line from H3C.
The combined offering delivers high-performance analytics and
machine learning with enterprise-grade object storage to enable organizations
to:
- Address scalability needsfor now and in the future-
Elastically scale-out to support terabytes to petabytes of data and thousands
of users as your analytical and machine learning needs increase.
- Leverage separation of compute and storage
architecture-
Administrators can scale compute and data storage resources separately to
address varying dynamic workload requirements.
- Simplify database operations- The solution offers excellent
reliability by including many features for data protection. Data loss is
extremely rare, offering up to nine 9's of reliability.
- Address all data consumer needs- Isolate analytical workloads to
accommodate various data consumer needs - from business analysts to data
scientists - without competing for resources.