• No results found

Data Analytics as a Service

N/A
N/A
Protected

Academic year: 2021

Share "Data Analytics as a Service"

Copied!
13
0
0

Loading.... (view fulltext now)

Full text

(1)

05-06-2014

Data Analytics as a

Service

unleashing the power of Cloud and

Big Data

(2)
(3)

DAaaS:

(4)

DAaaS:

Data Analytics as a Service

Why Atos

▶ Unique offer with a full Big Data Analytics environment in the cloud

▶ on Canopy and

▶ Partnered bySiemens

▶ First set of anomaly detection algorithms

especially made for the oil and gas industry

▶ Scalable on-demand

▶ Participation of third parties possible to add own apps  ‘Analytics Marketplace’

▶ Based on open source and best of breed COTS

Customer value proposition

Data as a service

▶ Functionality

- Access to raw individual data - Access to pre-aggregated data ▶ Common interfaces ODBC & JDBC

Analytics as a Service (analytics workbench)

▶ Functionality

- Run predefined queries and analytics

- Define and run custom queries and analytics ▶ Common interfaces HTTP, REST and Proprietary

Customer benefits

▶ Low entry hurdle into Business Analytics

▶ Allows to put the focus on insight discovery without worrying about the technology ▶ Quicker feedback loops during Business Analytics strategy definition phases.

Introducing Data Analytics as a Service (DAaaS)

▶ Providing advanced analytical capabilities, like anomaly detection, predictive analytics and advanced pattern recognition

(5)
(6)

The Challenges of a DAaas

▶ Information Lifecycle Management:

– the complete analytical workflow can get very complex with lots of important

steps: data acquisition (data access, setting parameters, transformation, data cleansing, data quality…) data modeling (definition of logical model, linking with other data…), data mining (variable identification, algorithm selection, validation…) and visualization (customized reporting, advanced graphics…).

▶ Data model diversity:

– a diversity of potential types of data models exists for specific business needs

- and these data models are tightly coupled to specific types of analytics.

▶ Analytic knowledge:

– although not really new, many of the advanced techniques related to

advanced analytics (like Machine Learning) are quite complex and demand people with very specific knowledge,

(7)

The Challenges of a DAaas

▶ Data volume:

– even when technology exists for processing huge volumes of data, it is not

easy. Moving big volumes of data to a cloud solution can be difficult, and sometimes, it is much easier to bring computation to where the data is.

▶ Real-time analytics:

– more and more, the value of analytics demands quicker insights, progressing

towards the concept of real-time analytics.

▶ Security:

– like in any other cloud solution, security is a very complex issue. Some

companies, due to the data criticality or regulatory constraints, may be reluctant to move data to the cloud, but could benefit of the analytical capabilities offered in a private cloud.

▶ Privacy:

– for some specific types of data, privacy considerations may impact the

potential of cloud analytics - not only due to the data in itself, but also due to the potential that data will not remain anonymous after analysis.

(8)

Benefits of DAaaS

▶ The main benefit of the DAaaS is to lower the barrier of entry to advanced analytical capabilities, without demanding that the user commits to large internal infrastructures and human resources to the project. Instead of a complex custom project the customer follows simpler steps:

▶ Data Scientists working for the organization explore the AppStore for an Analytical App that fits the problem.

▶ They rent the Analytical App for a specific time or quantity of data.

▶ They configure the Analytical App to its needs including, for example, the usage of external data sources provided by the DAaaS.

▶ Then the data is fed from the internal systems to the Analytical App.

▶ The SMEs in the company validate the results and even enhance them with some customization.

(9)

DAaaS in a Real Life

Value Proposition:

Unique offer with a full Big Data Analytics environment in the cloud on Canopy and powered through Helix Nebula and Pivotal. Partnered by Siemens

▶ First set of anomaly detection algorithms especially made for the oil and gas industry ▶ Scalable on-demand

▶ Participation of third parties possible to add own apps  ‘Analytics Marketplace’ ▶ Based on open source and best of breed COTS

Strategic Partner(s): Siemens / XQH

References (WIP): Vitens, BPCL and Shell

(10)

DAaaS in a Real Life

XHQ Lite Option

DAaaS Cloud Platform

Analytic Apps

Analytical App Store

Cloud Data Management

Cloud Data Sources

Cloud Data Analytics

XHQ Connector & Cloud Gateway External Data Sources Source Systems

Analytic

Algorithms AlgorithmsAnalytic

(11)

Data Analytics

Hidden Information in 4 Domains

The Solution might be hidden in the

massive amounts of data that is streaming through the plant every day on all domains.

The Solution might be hidden in the

massive amounts of data that is streaming through the plant every day on all domains.

Production

Quality

Inventory

Maintenance

(12)

Future Trends

Big Data Will Transition From Hype to Actionable Insights Visualization / Big Data (Analytics) Tools Will Become Essential Enterprise IT Investments More Companies Will Implement Machine Learning and Predictive Analytics

The rise of the Industrial Internet / analytics everywhere 2014 2015 2016 2017202 0

(13)

Atos, the Atos logo, Atos Consulting, Atos Sphere, Atos Cloud and Atos Worldgrid, Worldline, blueKiwi are registered trademarks of Atos Group. November 2013

© 2013 Atos. Confidential information owned by Atos, to be used by the recipient only. This document, or any part of it,

may not be reproduced, copied, circulated and/or distributed nor quoted without prior written approval from Atos.

Thanks

For more information please contact: T+ 385 1 2867003

F+ 385 1 2867300 M+ 385 91 2867003 [email protected]

References

Related documents

Whether grown as freestanding trees or wall- trained fans, established figs should be lightly pruned twice a year: once in spring to thin out old or damaged wood and to maintain

The main wall of the living room has been designated as a "Model Wall" of Delta Gamma girls -- ELLE smiles at us from a Hawaiian Tropic ad and a Miss June USC

Potential explanations for the large and seemingly random price variation are: (i) different cost pricing methods used by hospitals, (ii) uncertainty due to frequent changes in

Players can create characters and participate in any adventure allowed as a part of the D&D Adventurers League.. As they adventure, players track their characters’

А для того, щоб така системна організація інформаційного забезпечення управління існувала необхідно додержуватися наступних принципів:

According to the international experience, federal authorities can carry out six groups of functions for support of mechanisms of development of innovative

Simulating clinical concentrations and delivery rates of a typical intravenous infusion, a variety of routinely used pharmaceutical drugs were tested for potential binding to

This study investigated the fish diversity of Eko – Ende and Owalla reservoirs, which are within the Osun river system in South West, Nigeria with a view to