Datawatch Angoss Simplifies Data Science and Analytic Tasks on the Apache Spark Platform
13 Noviembre 2018 - 6:59AM
KnowledgeSTUDIO for Apache Spark provides scalable data
analysis across large and small data sets to build analytic
workflows without complex coding or scripting
Datawatch Corporation (NASDAQ-CM: DWCH) today announced the general
availability of Datawatch Angoss KnowledgeSTUDIO for Apache Spark,
enabling organizations to act more confidently with their data and
rely on consistent, trustful results in making better business
decisions. In combination with its market-leading data
visualization approach for building, exploring and segmenting data
using patented Decision Tree technology, Datawatch Angoss enables
data science teams to create predictive analytic models using
Apache Spark by means of a drag-and-drop / point-and-click
interface.
Customers now have a clearer path to augment client and
server-based analytics tool sets with a solution that is
specifically built for Big Data solutions like Apache Spark.
“Efficient model building and easy-to-understand visuals that
Decision Trees bring to data science teams allows users to not only
create analytic models to generate insights and predictions, but
they can also manipulate, combine and profile data sources entirely
within a Spark cluster,” said Rami Chahine, Vice President, Product
Management. “All while delivering the same workflow building
experience that customers have come to value, with intuitive,
interactive workflows and no need for coding.”
Data science teams that are modeling in a Big Data environment,
and outside of it, can use Angoss KnowledgeSTUDIO for Apache Spark
to efficiently build analytic workflows using large, small and wide
datasets in a Spark environment. Datawatch Angoss market-leading
decision tree interface can now be used by data scientists and
business analysts, without having to move data out of Spark.
As with other Datawatch solutions, Angoss KnowledgeSTUDIO for
Apache Spark requires no coding expertise. Users working to
address business problems can now support advanced modeling with
open source packages such as SparkML, Spark SQL and file systems
accessible via Spark interfaces. Data preparation and profiling
allow for easy data extraction and manipulation, and data can
easily be transformed for modeling. “Angoss KnowledgeSTUDIO for
Apache Spark allows business users to create predictive models at
scale, from a variety of datasets regardless of their size,”
continued Chahine. “This more efficient use of compute
resources, especially in cloud environments, shortens processing
cycles and can reduce costs.”
About Datawatch CorporationDatawatch
Corporation (NASDAQ-CM: DWCH) is the data intelligence provider
with market leading enterprise data preparation, predictive
analytics and visualization solutions that fuel business analytics.
Only Datawatch can confidently position individuals and
organizations to master all data – no matter the origin, format or
narrative – resulting in faster time to insight. Datawatch
solutions are architected to drive the use of more data, foster
more trust and incorporate more minds into business analytics.
Thousands of organizations of all sizes in more than 100 countries
worldwide use Datawatch products, including 93 of the Fortune 100.
The company is headquartered in Bedford, Massachusetts, with
offices in New York, London, Toronto, Stockholm, Singapore and
Manila. To learn more about Datawatch please visit:
www.datawatch.com.
Safe Harbor Statement under the Private Securities
Litigation Reform Act of 1995Any statements contained in
this press release that do not describe historical facts may
constitute forward-looking statements as that term is defined in
the Private Securities Litigation Reform Act of 1995. Any such
statements contained herein, including but not limited to those
relating to product performance and viability, are based on current
expectations, but are subject to a number of risks and
uncertainties that may cause actual results to differ materially
from expectations. The factors that could cause actual future
results to differ materially from current expectations include the
following: rapid technological change; Datawatch’s dependence on
the introduction of new products and product enhancements and
possible delays in those introductions; acceptance of new products
by the market, competition in the software industry generally, and
in the markets for next generation analytics in particular; and
Datawatch’s dependence on its principal products, proprietary
software technology and software licensed from third parties.
Further information on factors that could cause actual results to
differ from those anticipated is detailed in various
publicly-available documents, which include, but are not limited
to, filings made by Datawatch from time to time with the Securities
and Exchange Commission, including but not limited to, those
appearing in the Company’s Annual Report on Form 10-K for the year
ended September 30, 2015. Any forward-looking statements should be
considered in light of those factors.
Media Contact:Frank MorenoVice
President Worldwide Marketing, Datawatch
Corporationfrank_moreno@datawatch.com 978-275-8225Twitter:
@datawatch
© 2018 Datawatch Corporation. Datawatch and the Datawatch logo
are trademarks or registered trademarks of Datawatch Corporation in
the United States and/or other countries. All other names are
trademarks or registered trademarks of their respective
companies.
Source: Datawatch Corporation
Datawatch Corp. (delisted) (NASDAQ:DWCH)
Gráfica de Acción Histórica
De Oct 2024 a Nov 2024
Datawatch Corp. (delisted) (NASDAQ:DWCH)
Gráfica de Acción Histórica
De Nov 2023 a Nov 2024