SlideShare uma empresa Scribd logo
1 de 63
GAIN BETTER INSIGHTS FROM BIG DATA
USING

RED HAT JBOSS DATA VIRTUALIZATION
Syed Rasheed Product Marketing Manager
Kenny Peeples Technical Marketing Manager
Red Hat Corporation
December 4th, 2013
Red Hat is…

“By running tests and executing numerous examples for specific teams, we were able to prove […] not
only would the solution work, but it will perform better & at a fraction of the costs.”
MICHAEL BLAKE, Director, Systems & Architecture

2

RED HAT CONFIDENTIAL
Agenda
●

Data challenges getting bigger

●

Red Hat Big Data Strategy and Platform

●

Data Virtualization Overview

●

Customer Use Case for Big Data integration using Data
Virtualization

●
●

3

Demo
Q&A

RED HAT CONFIDENTIAL
Poll Question #1
●

What are your plans regarding usage of Hadoop
technology at your company?
–
–

Under consideration

–

Under development

–

Project level deployment

–

4

No plans

Enterprise level deployment

RED HAT CONFIDENTIAL
Poll Question #2
●

What are your plans regarding usage of Data Virtualization
technology at your company?
–
–

Under consideration

–

Under development

–

Project level deployment

–

5

No plans

Enterprise level deployment

RED HAT CONFIDENTIAL
Data Driven Economy

Data is becoming the new raw
material of business: an economic
input almost on a par with capital and
labor. “Every day I wake up and ask,
‘how can I flow data better, manage
data better, analyze data better?”
CIO - Wal-Mart

6

RED HAT CONFIDENTIAL
Data Challenges Getting Bigger
Big Data, Cloud, and Mobile
Existing Data Integration approaches are not sufficient
●

Extracting and moving data adds latency and cost

●

Every project solves data access and integration in a different way

●

Solutions are tightly coupled to data sources

●

Poor flexibility and agility
BI Reports

Operational
Reports

Enterprise
Applications

SOA
Applications

Mobile
Applications

Constant
Change

How to align?

Integration Complexity

Siloed &
Complex
Hadoop

7

NoSQL

Cloud Apps

Data Warehouse
& Databases

Mainframe

RED HAT CONFIDENTIAL

XML, CSV
& Excel Files

Enterprise Apps
Business Objective
Turn Data into Actionable Information
Only

28%

Users have any meaningful
data access

 Reduce costs for finding and
accessing highly fragmented data

Over

70%

BI project efforts lies in the
integration of source data

 Improve time to market for new
products and services by simplifying

data access and integration
 Deliver IT solution agility
necessary to capitalize on constantly
changing market conditions

 Transform fragmented data into
actionable information that delivers
competitive advantage

8

RED HAT CONFIDENTIAL
Red Hat’s Big Data Strategy
●

Reduce Information Gap thru cost effectively making
ALL data easily consumable for analytics

Process

Integrate

Data to Actionable Information Cycle

9

RED HAT CONFIDENTIAL

Analytics

Data

Capture
Red Hat Big Data
Platform

Platform
RHEL
Platform Integration
&
Optimization

Hadoop
Integration

Middleware

JBoss Data
Virtualization

Fedora
Big Data SIG

Apache
Hadoop

Hadoop
Distributions

Hadoop On
Red Hat Storage

Storage

10

RED HAT CONFIDENTIAL

Hadoop
On
OpenStack

Cloud /
Virtualization
Red Hat Big Data
Platform

Platform
RHEL
Platform Integration
&
Optimization

Hadoop
Integration

Middleware

Fedora
Big Data SIG

JBoss Data
Virtualization

Apache
Hadoop

Hadoop
Distributions

Hadoop On
Red Hat Storage

Storage
11

RED HAT CONFIDENTIAL

Hadoop
On
OpenStack

Cloud /
Virtualization
What does Data Virtualization software do?
Turn Fragmented Data into Actionable Information
Data Virtualization software virtually
unifies data spread across various
disparate sources; and makes it
available to applications as a single
consolidated data source.

DATA CONSUMERS
BI Reports

The data virtualization software
implements 3 steps process to bridge
data sources and data consumers:
●

●

●

12

Connect: Fast access to data from
diverse data sources
Compose: Easily create unified
virtual data models and views by
combining and transforming data
from multiple sources.
Consume: Expose consistent
information to data consumers in
the right form thru standard data
access methods.

SOA Applications

Easy,
Real-time
Information
Access

Virtual Consolidated Data Source

Data Virtualization Software

•
•
•

Consume
Compose
Connect

Oracle DW

SAP

Hadoop

DATA SOURCES
RED HAT CONFIDENTIAL

Salesforce.com

Virtualize
Abstract
Federate

Siloed &
Complex
Turn Fragmented Data into Actionable Information
Mobile Applications

Data
Consumers
JBoss
Data Virtualization

ESB, ETL

BI Reports & Analytics

SOA Applications & Portals

Design Tools

Standard based Data Provisioning
JDBC, ODBC, SOAP, REST, OData

Consume

Easy,
Real-time
Information
Access

Dashboard

Unified Virtual Database / Common Data Model
Compose

Unified Customer
View

Unified
Product View

Unified
Supplier View

Optimization
Caching

Virtualize
Abstract
Federate

Security

Connect

Native Data Connectivity

Data
Sources

Metadata

Siloed &
Complex
Hadoop

13

NoSQL

Cloud Apps

Data Warehouse
& Databases

Mainframe

RED HAT CONFIDENTIAL

XML, CSV
& Excel Files

Enterprise Apps
JBoss Data Virtualization:
Supported Data Sources
Enterprise RDBMS:
• Oracle
• IBM DB2
• Microsoft SQL Server
• Sybase ASE
• MySQL
• PostgreSQL
• Ingres

Enterprise EDW:
• Teradata
• Netezza
• Greenplum

14

Hadoop:
• Apache
• HortonWorks
• Cloudera
• More coming…
Office Productivity:
• Microsoft Excel
• Microsoft Access
• Google Spreadsheets
Specialty Data Sources:
• ModeShape Repository
• Mondrian
• MetaMatrix
• LDAP

RED HAT CONFIDENTIAL

NoSQL:
• JBoss Data Grid
• MongoDB
• More coming…
Enterprise & Cloud
Applications:
• Salesforce.com
• SAP
Technology Connectors:
• Flat Files, XML Files,
XML over HTTP
• SOAP Web Services
• REST Web Services
• OData Services
Key New Features and Capabilities
●

Data connectivity enhancements
–
–

NoSQL (MongoDB – Tech Preview) and JBoss Data Grid

–
●

Hadoop Integration (Hive – Big Data),

Odata support (SAP integration)

Developer Productivity improvements
–
–

Enhanced column level security,

–
●

New VDB Designer 8 and integration with JBoss Developer Studio v7
VDB import/reuse, and native queries

Simplify deployment and packaging
–
–

●

Requires JBoss EAP only; included with subscription
Remove dependency with SOA Platform

Business Dashboard
–

15

New rapid data reporting/visualization capability
RED HAT CONFIDENTIAL
JBoss Data Virtualization – Use Cases
Self-Service
Business
Intelligence

The virtual, reusable data model provides business-friendly representation of data,
allowing the user to interact with their data without having to know the complexities of their
database or where the data is stored and allowing multiple BI tools to acquire data from
centralized data layer. Gain better insights from Big Data using JBoss Data Virtualization to
integrate with existing information sources.

360◦
Unified
View

Deliver a complete view of master & transactional data in real-time. The virtual data layer
serves as a unified, enterprise-wide view of business information that improves users’ ability
to understand and leverage enterprise data.

Agile SOA
Data
Services

A data virtualization layer deliver the missing data services layer to SOA applications. JBoss
Data Virtualization increases agility and loose coupling with virtual data stores without the
need to touch underlying sources and creation of data services that encapsulate the data
access logic and allowing multiple business service to acquire data from centralized data
layer.

Regulatory
Compliance

Data Virtualization layer deliver the data firewall functionality. JBoss Data Virtualization
improves data quality via centralized access control, robust security infrastructure and
reduction in physical copies of data thus reducing risk. Furthermore, the metadata
repository catalogs enterprise data locations and the relationships between the data in
various data stores, enabling transparency and visibility.

16

RED HAT CONFIDENTIAL
Big Data integration
use case

Retail Customer Use Case

Gain Better Insight from Big Data for Intelligent Inventory Management
●

Objective:
–

●

Right merchandise, at right time and price
JBoss
BRMS

Problem:
–

●

Analytical Apps

Data Driven
Decision
Management

Cannot utilize social data and sentiment
analysis with their inventory and purchase
management system

Solution:
–

Leverage JBoss Data Virtualization to
mashup Sentiment analysis data with
inventory and purchasing system data.
Leveraged BRMS to optimize pricing and
stocking decisions.

Consume
Compose
Connect

JBoss Data Virtualization

Hive
Purchase Mgmt
Application

Inventory
Databases
Sentiment
Analysis
17

RED HAT CONFIDENTIAL
Better Together - Big Data and Data Virtualization
Hadoop not another Silo - Customers Combine Multiple Technologies

●

Combine structured and unstructured analysis
–

●

Combine high velocity and historical analysis
–

●

Analyze and react to data in motion; adjust models with deep
historical analysis

Reuse structured data for analysis
–

18

Augment data warehouse with additional external sources, such as
social media

Experimentation and ad-hoc analysis with structured data

RED HAT CONFIDENTIAL
Better Together - Big Data and Data Virtualization
BI Analytics
(historical, operational, predictive)

SOA Composite Applications

Data Integration
JBoss Data Virtualization

Capture & Process

In-memory Cache
JBoss Data Grid

Messaging and Event Processing
JBoss A-MQ and JBoss BRMS
J

Structured Data

19

Streaming
Data

RED HAT CONFIDENTIAL

Hadoop

Semi-Structured
Data

Red Hat Storage
Red Hat Enterprise Linux & Virtualization

Integrate & Analyze

Capture, Process and Integrate Data Volume, Velocity, Variety
Consider...
Inconsistent,
Incomplete
Information

Uninformed,
Delayed Decisions

Costly Business Risk
and Exposure

How would your organization change…
●

●

●

20

If data were readily reusable in place rather than
requiring significant effort to build new intermediary data
tiers?
If data could be repurposed quickly into new applications
and business processes?
If all applications and business processes could get all of
the information needed in the form needed, where
needed and when needed?
RED HAT CONFIDENTIAL
Red Hat JBoss Middleware

Business Process
Management

•
•

JBoss BRMS
JBoss BPM Suite

Application
Integration

•
•
•

JBoss A-MQ
JBoss Fuse
JBoss Fuse Service Works

Data Integration

Foundation

ACCELERATE

21

•

•
•
•

JBoss Data
Virtualization
JBoss EAP
JBoss Web Server
JBoss Data Grid

INTEGRATE

RED HAT CONFIDENTIAL

AUTOMATE

JBoss Operations Network

JBoss Developer Studio

JBoss Portal

•

•

•

Management
Tools

Development
Toolsh

User Interaction
Big Data Integration using JBoss Data Virtualization

DEMO
Demo Scenario
●

Objective:
–

●

Determine if sentiment data from the
first week of the Iron Man 3 movie is a
predictor of sales

Problem:
–

●

Excel Powerview and
DV Dashboard to
analyze the
aggregated data

Cannot utilize social data and
sentiment analysis with sales
management system

Consume
Compose
Connect

Solution:
–

JBoss Data Virtualization

Leverage JBoss Data Virtualization to
mashup Sentiment analysis data with
ticket and merchandise sales data on
MySQL into a single view of the data.

Hive

SOURCE 1: Hive/Hadoop
contains twitter data
including sentiment
23

RED HAT CONFIDENTIAL

SOURCE 2: MySQL data
that includes ticket and
merchandise sales
Demonstration System Requirements
• JDK
– Oracle JDK 1.6, 1.7 or OpenJDK 1.6 or 1.7

• JBoss Data Virtualization v6 Beta
– http://jboss.org/products/datavirt.html

• JBoss Developer Studio
– http://jboss.org/products

• JBoss Integration Stack Tools (Teiid)
– https://devstudio.jboss.com/updates/7.0-development/integration-stack/

• Slides, Code and References for demo
– https://github.com/DataVirtualizationByExample/Mashup-with-Hive-andMySQL

• Hortonworks Data Platform (A VM for testing Hive/Hadoop)
– http://hortonworks.com/products/hdp-2/#install

• Red Hat Storage
– http://www.redhat.com/products/storage-server/
24

RED HAT CONFIDENTIAL
25

RED HAT CONFIDENTIAL
26

RED HAT CONFIDENTIAL
27

RED HAT CONFIDENTIAL
28

RED HAT CONFIDENTIAL
29

RED HAT CONFIDENTIAL
30

RED HAT CONFIDENTIAL
31

RED HAT CONFIDENTIAL
32

RED HAT CONFIDENTIAL
33

RED HAT CONFIDENTIAL
34

RED HAT CONFIDENTIAL
35

RED HAT CONFIDENTIAL
36

RED HAT CONFIDENTIAL
37

RED HAT CONFIDENTIAL
38

RED HAT CONFIDENTIAL
39

RED HAT CONFIDENTIAL
40

RED HAT CONFIDENTIAL
41

RED HAT CONFIDENTIAL
42

RED HAT CONFIDENTIAL
43

RED HAT CONFIDENTIAL
44

RED HAT CONFIDENTIAL
45

RED HAT CONFIDENTIAL
46

RED HAT CONFIDENTIAL
47

RED HAT CONFIDENTIAL
48

RED HAT CONFIDENTIAL
49

RED HAT CONFIDENTIAL
50

RED HAT CONFIDENTIAL
51

RED HAT CONFIDENTIAL
52

RED HAT CONFIDENTIAL
53

RED HAT CONFIDENTIAL
54

RED HAT CONFIDENTIAL
55

RED HAT CONFIDENTIAL
56

RED HAT CONFIDENTIAL
57

RED HAT CONFIDENTIAL
58

RED HAT CONFIDENTIAL
59

RED HAT CONFIDENTIAL
60

RED HAT CONFIDENTIAL
Why Red Hat for Big Data?
●

Transform ALL data into actionable information
–

Cost Effective, Comprehensive Platform

–

Community based Innovation

–

Enterprise Class Software and Support

Process

Integrate

Data to Actionable Information Cycle

61

RED HAT CONFIDENTIAL

Information

Data

Capture
Red Hat Big Data
Platform

Platform
RHEL
Platform Integration
&
Optimization

Hadoop
Integration

Middleware

JBoss Data
Virtualization

Fedora
Big Data SIG

Apache
Hadoop

Hadoop
Distributions

Hadoop On
Red Hat Storage

Storage

62

RED HAT CONFIDENTIAL

Hadoop
On
OpenStack

Cloud /
Virtualization
Thank You
Q&A

Mais conteúdo relacionado

Mais procurados

Parallel In-Memory Processing and Data Virtualization Redefine Analytics Arch...
Parallel In-Memory Processing and Data Virtualization Redefine Analytics Arch...Parallel In-Memory Processing and Data Virtualization Redefine Analytics Arch...
Parallel In-Memory Processing and Data Virtualization Redefine Analytics Arch...Denodo
 
Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)
Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)
Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)Denodo
 
Consumption based analytics enabled by Data Virtualization
Consumption based analytics enabled by Data VirtualizationConsumption based analytics enabled by Data Virtualization
Consumption based analytics enabled by Data VirtualizationDenodo
 
Enabling Cloud Data Integration (EMEA)
Enabling Cloud Data Integration (EMEA)Enabling Cloud Data Integration (EMEA)
Enabling Cloud Data Integration (EMEA)Denodo
 
Denodo Data Virtualization - IT Days in Luxembourg with Oktopus
Denodo Data Virtualization - IT Days in Luxembourg with OktopusDenodo Data Virtualization - IT Days in Luxembourg with Oktopus
Denodo Data Virtualization - IT Days in Luxembourg with OktopusDenodo
 
Best Practices: Data Virtualization Perspectives and Best Practices
Best Practices: Data Virtualization Perspectives and Best PracticesBest Practices: Data Virtualization Perspectives and Best Practices
Best Practices: Data Virtualization Perspectives and Best PracticesDenodo
 
Data Virtualization Primer - Introduction
Data Virtualization Primer - IntroductionData Virtualization Primer - Introduction
Data Virtualization Primer - IntroductionKenneth Peeples
 
Case Study - Ibotta Builds A Self-Service Data Lake To Enable Business Growth...
Case Study - Ibotta Builds A Self-Service Data Lake To Enable Business Growth...Case Study - Ibotta Builds A Self-Service Data Lake To Enable Business Growth...
Case Study - Ibotta Builds A Self-Service Data Lake To Enable Business Growth...Vasu S
 
Virtual Sandbox for Data Scientists at Enterprise Scale
Virtual Sandbox for Data Scientists at Enterprise ScaleVirtual Sandbox for Data Scientists at Enterprise Scale
Virtual Sandbox for Data Scientists at Enterprise ScaleDenodo
 
Denodo as the Core Pillar of your API Strategy
Denodo as the Core Pillar of your API StrategyDenodo as the Core Pillar of your API Strategy
Denodo as the Core Pillar of your API StrategyDenodo
 
Logical Data Warehouse and Data Lakes
Logical Data Warehouse and Data Lakes Logical Data Warehouse and Data Lakes
Logical Data Warehouse and Data Lakes Denodo
 
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Denodo
 
In Memory Parallel Processing for Big Data Scenarios
In Memory Parallel Processing for Big Data ScenariosIn Memory Parallel Processing for Big Data Scenarios
In Memory Parallel Processing for Big Data ScenariosDenodo
 
Hadoop Integration with Microstrategy
Hadoop Integration with Microstrategy Hadoop Integration with Microstrategy
Hadoop Integration with Microstrategy snehal parikh
 
Microsoft SQL Azure - Scaling Out with SQL Azure Whitepaper
Microsoft SQL Azure - Scaling Out with SQL Azure WhitepaperMicrosoft SQL Azure - Scaling Out with SQL Azure Whitepaper
Microsoft SQL Azure - Scaling Out with SQL Azure WhitepaperMicrosoft Private Cloud
 
Data Science Operationalization: The Journey of Enterprise AI
Data Science Operationalization: The Journey of Enterprise AIData Science Operationalization: The Journey of Enterprise AI
Data Science Operationalization: The Journey of Enterprise AIDenodo
 
SAP Analytics Cloud: Haben Sie schon alle Datenquellen im Live-Zugriff?
SAP Analytics Cloud: Haben Sie schon alle Datenquellen im Live-Zugriff?SAP Analytics Cloud: Haben Sie schon alle Datenquellen im Live-Zugriff?
SAP Analytics Cloud: Haben Sie schon alle Datenquellen im Live-Zugriff?Denodo
 
GDPR Noncompliance: Avoid the Risk with Data Virtualization
GDPR Noncompliance: Avoid the Risk with Data VirtualizationGDPR Noncompliance: Avoid the Risk with Data Virtualization
GDPR Noncompliance: Avoid the Risk with Data VirtualizationDenodo
 
THE FUTURE OF DATA: PROVISIONING ANALYTICS-READY DATA AT SPEED
THE FUTURE OF DATA: PROVISIONING ANALYTICS-READY DATA AT SPEEDTHE FUTURE OF DATA: PROVISIONING ANALYTICS-READY DATA AT SPEED
THE FUTURE OF DATA: PROVISIONING ANALYTICS-READY DATA AT SPEEDwebwinkelvakdag
 
Denodo’s Data Catalog: Bridging the Gap between Data and Business (APAC)
Denodo’s Data Catalog: Bridging the Gap between Data and Business (APAC)Denodo’s Data Catalog: Bridging the Gap between Data and Business (APAC)
Denodo’s Data Catalog: Bridging the Gap between Data and Business (APAC)Denodo
 

Mais procurados (20)

Parallel In-Memory Processing and Data Virtualization Redefine Analytics Arch...
Parallel In-Memory Processing and Data Virtualization Redefine Analytics Arch...Parallel In-Memory Processing and Data Virtualization Redefine Analytics Arch...
Parallel In-Memory Processing and Data Virtualization Redefine Analytics Arch...
 
Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)
Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)
Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)
 
Consumption based analytics enabled by Data Virtualization
Consumption based analytics enabled by Data VirtualizationConsumption based analytics enabled by Data Virtualization
Consumption based analytics enabled by Data Virtualization
 
Enabling Cloud Data Integration (EMEA)
Enabling Cloud Data Integration (EMEA)Enabling Cloud Data Integration (EMEA)
Enabling Cloud Data Integration (EMEA)
 
Denodo Data Virtualization - IT Days in Luxembourg with Oktopus
Denodo Data Virtualization - IT Days in Luxembourg with OktopusDenodo Data Virtualization - IT Days in Luxembourg with Oktopus
Denodo Data Virtualization - IT Days in Luxembourg with Oktopus
 
Best Practices: Data Virtualization Perspectives and Best Practices
Best Practices: Data Virtualization Perspectives and Best PracticesBest Practices: Data Virtualization Perspectives and Best Practices
Best Practices: Data Virtualization Perspectives and Best Practices
 
Data Virtualization Primer - Introduction
Data Virtualization Primer - IntroductionData Virtualization Primer - Introduction
Data Virtualization Primer - Introduction
 
Case Study - Ibotta Builds A Self-Service Data Lake To Enable Business Growth...
Case Study - Ibotta Builds A Self-Service Data Lake To Enable Business Growth...Case Study - Ibotta Builds A Self-Service Data Lake To Enable Business Growth...
Case Study - Ibotta Builds A Self-Service Data Lake To Enable Business Growth...
 
Virtual Sandbox for Data Scientists at Enterprise Scale
Virtual Sandbox for Data Scientists at Enterprise ScaleVirtual Sandbox for Data Scientists at Enterprise Scale
Virtual Sandbox for Data Scientists at Enterprise Scale
 
Denodo as the Core Pillar of your API Strategy
Denodo as the Core Pillar of your API StrategyDenodo as the Core Pillar of your API Strategy
Denodo as the Core Pillar of your API Strategy
 
Logical Data Warehouse and Data Lakes
Logical Data Warehouse and Data Lakes Logical Data Warehouse and Data Lakes
Logical Data Warehouse and Data Lakes
 
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
 
In Memory Parallel Processing for Big Data Scenarios
In Memory Parallel Processing for Big Data ScenariosIn Memory Parallel Processing for Big Data Scenarios
In Memory Parallel Processing for Big Data Scenarios
 
Hadoop Integration with Microstrategy
Hadoop Integration with Microstrategy Hadoop Integration with Microstrategy
Hadoop Integration with Microstrategy
 
Microsoft SQL Azure - Scaling Out with SQL Azure Whitepaper
Microsoft SQL Azure - Scaling Out with SQL Azure WhitepaperMicrosoft SQL Azure - Scaling Out with SQL Azure Whitepaper
Microsoft SQL Azure - Scaling Out with SQL Azure Whitepaper
 
Data Science Operationalization: The Journey of Enterprise AI
Data Science Operationalization: The Journey of Enterprise AIData Science Operationalization: The Journey of Enterprise AI
Data Science Operationalization: The Journey of Enterprise AI
 
SAP Analytics Cloud: Haben Sie schon alle Datenquellen im Live-Zugriff?
SAP Analytics Cloud: Haben Sie schon alle Datenquellen im Live-Zugriff?SAP Analytics Cloud: Haben Sie schon alle Datenquellen im Live-Zugriff?
SAP Analytics Cloud: Haben Sie schon alle Datenquellen im Live-Zugriff?
 
GDPR Noncompliance: Avoid the Risk with Data Virtualization
GDPR Noncompliance: Avoid the Risk with Data VirtualizationGDPR Noncompliance: Avoid the Risk with Data Virtualization
GDPR Noncompliance: Avoid the Risk with Data Virtualization
 
THE FUTURE OF DATA: PROVISIONING ANALYTICS-READY DATA AT SPEED
THE FUTURE OF DATA: PROVISIONING ANALYTICS-READY DATA AT SPEEDTHE FUTURE OF DATA: PROVISIONING ANALYTICS-READY DATA AT SPEED
THE FUTURE OF DATA: PROVISIONING ANALYTICS-READY DATA AT SPEED
 
Denodo’s Data Catalog: Bridging the Gap between Data and Business (APAC)
Denodo’s Data Catalog: Bridging the Gap between Data and Business (APAC)Denodo’s Data Catalog: Bridging the Gap between Data and Business (APAC)
Denodo’s Data Catalog: Bridging the Gap between Data and Business (APAC)
 

Semelhante a JDV Big Data Webinar v2

Transforming Business in a Digital Era with Big Data and Microsoft
Transforming Business in a Digital Era with Big Data and MicrosoftTransforming Business in a Digital Era with Big Data and Microsoft
Transforming Business in a Digital Era with Big Data and MicrosoftPerficient, Inc.
 
Getting more out of your big data
Getting more out of your big dataGetting more out of your big data
Getting more out of your big dataGeert Van Landeghem
 
Slides: Success Stories for Data-to-Cloud
Slides: Success Stories for Data-to-CloudSlides: Success Stories for Data-to-Cloud
Slides: Success Stories for Data-to-CloudDATAVERSITY
 
Data Virtualization: An Introduction
Data Virtualization: An IntroductionData Virtualization: An Introduction
Data Virtualization: An IntroductionDenodo
 
Where does Fast Data Strategy Fit within IT Projects
Where does Fast Data Strategy Fit within IT ProjectsWhere does Fast Data Strategy Fit within IT Projects
Where does Fast Data Strategy Fit within IT ProjectsDenodo
 
Fast and Furious: From POC to an Enterprise Big Data Stack in 2014
Fast and Furious: From POC to an Enterprise Big Data Stack in 2014Fast and Furious: From POC to an Enterprise Big Data Stack in 2014
Fast and Furious: From POC to an Enterprise Big Data Stack in 2014MapR Technologies
 
Big Data Expo 2015 - Pentaho The Future of Analytics
Big Data Expo 2015 - Pentaho The Future of AnalyticsBig Data Expo 2015 - Pentaho The Future of Analytics
Big Data Expo 2015 - Pentaho The Future of AnalyticsBigDataExpo
 
Skillwise Big Data part 2
Skillwise Big Data part 2Skillwise Big Data part 2
Skillwise Big Data part 2Skillwise Group
 
Opportunity: Data, Analytic & Azure
Opportunity: Data, Analytic & Azure Opportunity: Data, Analytic & Azure
Opportunity: Data, Analytic & Azure Abhimanyu Singhal
 
Data Ninja Webinar Series: Accelerating Business Value with Data Virtualizati...
Data Ninja Webinar Series: Accelerating Business Value with Data Virtualizati...Data Ninja Webinar Series: Accelerating Business Value with Data Virtualizati...
Data Ninja Webinar Series: Accelerating Business Value with Data Virtualizati...Denodo
 
Open Source Ecosystem Future of Enterprise IT
Open Source Ecosystem Future of Enterprise ITOpen Source Ecosystem Future of Enterprise IT
Open Source Ecosystem Future of Enterprise ITandreas kuncoro
 
Fast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationFast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationDenodo
 
ds_Pivotal_Big_Data_Suite_Product_Suite
ds_Pivotal_Big_Data_Suite_Product_Suiteds_Pivotal_Big_Data_Suite_Product_Suite
ds_Pivotal_Big_Data_Suite_Product_SuiteRobin Fong 方俊强
 
Integration intervention: Get your apps and data up to speed
Integration intervention: Get your apps and data up to speedIntegration intervention: Get your apps and data up to speed
Integration intervention: Get your apps and data up to speedKenneth Peeples
 
Powering Real-Time Analytics with Data Virtualization on AWS (ASEAN & ANZ)
Powering Real-Time Analytics with Data Virtualization on AWS (ASEAN & ANZ)Powering Real-Time Analytics with Data Virtualization on AWS (ASEAN & ANZ)
Powering Real-Time Analytics with Data Virtualization on AWS (ASEAN & ANZ)Denodo
 
Data Ninja Webinar Series: Realizing the Promise of Data Lakes
Data Ninja Webinar Series: Realizing the Promise of Data LakesData Ninja Webinar Series: Realizing the Promise of Data Lakes
Data Ninja Webinar Series: Realizing the Promise of Data LakesDenodo
 
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...Denodo
 
SendGrid Improves Email Delivery with Hybrid Data Warehousing
SendGrid Improves Email Delivery with Hybrid Data WarehousingSendGrid Improves Email Delivery with Hybrid Data Warehousing
SendGrid Improves Email Delivery with Hybrid Data WarehousingAmazon Web Services
 

Semelhante a JDV Big Data Webinar v2 (20)

Transforming Business in a Digital Era with Big Data and Microsoft
Transforming Business in a Digital Era with Big Data and MicrosoftTransforming Business in a Digital Era with Big Data and Microsoft
Transforming Business in a Digital Era with Big Data and Microsoft
 
Getting more out of your big data
Getting more out of your big dataGetting more out of your big data
Getting more out of your big data
 
Slides: Success Stories for Data-to-Cloud
Slides: Success Stories for Data-to-CloudSlides: Success Stories for Data-to-Cloud
Slides: Success Stories for Data-to-Cloud
 
Data Virtualization: An Introduction
Data Virtualization: An IntroductionData Virtualization: An Introduction
Data Virtualization: An Introduction
 
Where does Fast Data Strategy Fit within IT Projects
Where does Fast Data Strategy Fit within IT ProjectsWhere does Fast Data Strategy Fit within IT Projects
Where does Fast Data Strategy Fit within IT Projects
 
Fast and Furious: From POC to an Enterprise Big Data Stack in 2014
Fast and Furious: From POC to an Enterprise Big Data Stack in 2014Fast and Furious: From POC to an Enterprise Big Data Stack in 2014
Fast and Furious: From POC to an Enterprise Big Data Stack in 2014
 
Big Data Expo 2015 - Pentaho The Future of Analytics
Big Data Expo 2015 - Pentaho The Future of AnalyticsBig Data Expo 2015 - Pentaho The Future of Analytics
Big Data Expo 2015 - Pentaho The Future of Analytics
 
Hadoop in the Cloud
Hadoop in the CloudHadoop in the Cloud
Hadoop in the Cloud
 
Skillwise Big Data part 2
Skillwise Big Data part 2Skillwise Big Data part 2
Skillwise Big Data part 2
 
Skilwise Big data
Skilwise Big dataSkilwise Big data
Skilwise Big data
 
Opportunity: Data, Analytic & Azure
Opportunity: Data, Analytic & Azure Opportunity: Data, Analytic & Azure
Opportunity: Data, Analytic & Azure
 
Data Ninja Webinar Series: Accelerating Business Value with Data Virtualizati...
Data Ninja Webinar Series: Accelerating Business Value with Data Virtualizati...Data Ninja Webinar Series: Accelerating Business Value with Data Virtualizati...
Data Ninja Webinar Series: Accelerating Business Value with Data Virtualizati...
 
Open Source Ecosystem Future of Enterprise IT
Open Source Ecosystem Future of Enterprise ITOpen Source Ecosystem Future of Enterprise IT
Open Source Ecosystem Future of Enterprise IT
 
Fast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationFast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow Presentation
 
ds_Pivotal_Big_Data_Suite_Product_Suite
ds_Pivotal_Big_Data_Suite_Product_Suiteds_Pivotal_Big_Data_Suite_Product_Suite
ds_Pivotal_Big_Data_Suite_Product_Suite
 
Integration intervention: Get your apps and data up to speed
Integration intervention: Get your apps and data up to speedIntegration intervention: Get your apps and data up to speed
Integration intervention: Get your apps and data up to speed
 
Powering Real-Time Analytics with Data Virtualization on AWS (ASEAN & ANZ)
Powering Real-Time Analytics with Data Virtualization on AWS (ASEAN & ANZ)Powering Real-Time Analytics with Data Virtualization on AWS (ASEAN & ANZ)
Powering Real-Time Analytics with Data Virtualization on AWS (ASEAN & ANZ)
 
Data Ninja Webinar Series: Realizing the Promise of Data Lakes
Data Ninja Webinar Series: Realizing the Promise of Data LakesData Ninja Webinar Series: Realizing the Promise of Data Lakes
Data Ninja Webinar Series: Realizing the Promise of Data Lakes
 
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
 
SendGrid Improves Email Delivery with Hybrid Data Warehousing
SendGrid Improves Email Delivery with Hybrid Data WarehousingSendGrid Improves Email Delivery with Hybrid Data Warehousing
SendGrid Improves Email Delivery with Hybrid Data Warehousing
 

Mais de Kenneth Peeples

Data Virtualization Primer -
Data Virtualization Primer -Data Virtualization Primer -
Data Virtualization Primer -Kenneth Peeples
 
Connect to the IoT with a lightweight protocol MQTT
Connect to the IoT with a lightweight protocol MQTTConnect to the IoT with a lightweight protocol MQTT
Connect to the IoT with a lightweight protocol MQTTKenneth Peeples
 
Maximize information exchange in your enterprise with AMQP
Maximize information exchange in your enterprise with AMQPMaximize information exchange in your enterprise with AMQP
Maximize information exchange in your enterprise with AMQPKenneth Peeples
 
Understanding and Using Client JBoss A-MQ APIs
Understanding and Using Client JBoss A-MQ APIsUnderstanding and Using Client JBoss A-MQ APIs
Understanding and Using Client JBoss A-MQ APIsKenneth Peeples
 
Using Red Hat JBoss Fuse on OpenShift
Using Red Hat JBoss Fuse on OpenShiftUsing Red Hat JBoss Fuse on OpenShift
Using Red Hat JBoss Fuse on OpenShiftKenneth Peeples
 
Service Lifecycle Management with Fuse Service Works
Service Lifecycle Management with Fuse Service WorksService Lifecycle Management with Fuse Service Works
Service Lifecycle Management with Fuse Service WorksKenneth Peeples
 
Simplify your integrations with Apache Camel
Simplify your integrations with Apache CamelSimplify your integrations with Apache Camel
Simplify your integrations with Apache CamelKenneth Peeples
 
Fuse Service Works Design Time Governance and S-RAMP
Fuse Service Works Design Time Governance and S-RAMPFuse Service Works Design Time Governance and S-RAMP
Fuse Service Works Design Time Governance and S-RAMPKenneth Peeples
 
Peeples authentication authorization_services_with_saml_xacml_with_jboss_eap6
Peeples authentication authorization_services_with_saml_xacml_with_jboss_eap6Peeples authentication authorization_services_with_saml_xacml_with_jboss_eap6
Peeples authentication authorization_services_with_saml_xacml_with_jboss_eap6Kenneth Peeples
 
Sap webinar-briefing-sep-2013-final
Sap webinar-briefing-sep-2013-finalSap webinar-briefing-sep-2013-final
Sap webinar-briefing-sep-2013-finalKenneth Peeples
 
CamelOne 2013 Karaf A-MQ Camel CXF Security
CamelOne 2013 Karaf A-MQ Camel CXF SecurityCamelOne 2013 Karaf A-MQ Camel CXF Security
CamelOne 2013 Karaf A-MQ Camel CXF SecurityKenneth Peeples
 

Mais de Kenneth Peeples (14)

dvprimer-concepts
dvprimer-conceptsdvprimer-concepts
dvprimer-concepts
 
Data Virtualization Primer -
Data Virtualization Primer -Data Virtualization Primer -
Data Virtualization Primer -
 
Connect to the IoT with a lightweight protocol MQTT
Connect to the IoT with a lightweight protocol MQTTConnect to the IoT with a lightweight protocol MQTT
Connect to the IoT with a lightweight protocol MQTT
 
Maximize information exchange in your enterprise with AMQP
Maximize information exchange in your enterprise with AMQPMaximize information exchange in your enterprise with AMQP
Maximize information exchange in your enterprise with AMQP
 
Understanding and Using Client JBoss A-MQ APIs
Understanding and Using Client JBoss A-MQ APIsUnderstanding and Using Client JBoss A-MQ APIs
Understanding and Using Client JBoss A-MQ APIs
 
Using Red Hat JBoss Fuse on OpenShift
Using Red Hat JBoss Fuse on OpenShiftUsing Red Hat JBoss Fuse on OpenShift
Using Red Hat JBoss Fuse on OpenShift
 
Service Lifecycle Management with Fuse Service Works
Service Lifecycle Management with Fuse Service WorksService Lifecycle Management with Fuse Service Works
Service Lifecycle Management with Fuse Service Works
 
SOA Summit 2014
SOA Summit 2014SOA Summit 2014
SOA Summit 2014
 
Simplify your integrations with Apache Camel
Simplify your integrations with Apache CamelSimplify your integrations with Apache Camel
Simplify your integrations with Apache Camel
 
Fuse Service Works Design Time Governance and S-RAMP
Fuse Service Works Design Time Governance and S-RAMPFuse Service Works Design Time Governance and S-RAMP
Fuse Service Works Design Time Governance and S-RAMP
 
Peeples authentication authorization_services_with_saml_xacml_with_jboss_eap6
Peeples authentication authorization_services_with_saml_xacml_with_jboss_eap6Peeples authentication authorization_services_with_saml_xacml_with_jboss_eap6
Peeples authentication authorization_services_with_saml_xacml_with_jboss_eap6
 
Sap webinar-briefing-sep-2013-final
Sap webinar-briefing-sep-2013-finalSap webinar-briefing-sep-2013-final
Sap webinar-briefing-sep-2013-final
 
Bitmoney Demonstration
Bitmoney DemonstrationBitmoney Demonstration
Bitmoney Demonstration
 
CamelOne 2013 Karaf A-MQ Camel CXF Security
CamelOne 2013 Karaf A-MQ Camel CXF SecurityCamelOne 2013 Karaf A-MQ Camel CXF Security
CamelOne 2013 Karaf A-MQ Camel CXF Security
 

Último

DSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningDSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningLars Bell
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Enterprise Knowledge
 
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek SchlawackFwdays
 
Take control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteTake control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteDianaGray10
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebUiPathCommunity
 
Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Scott Keck-Warren
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfAddepto
 
From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .Alan Dix
 
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo Day
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo DayH2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo Day
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo DaySri Ambati
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clashcharlottematthew16
 
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024BookNet Canada
 
How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.Curtis Poe
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...Fwdays
 
"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii SoldatenkoFwdays
 
Advanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionAdvanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionDilum Bandara
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Mattias Andersson
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubKalema Edgar
 
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfHyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfPrecisely
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 3652toLead Limited
 

Último (20)

DSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningDSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine Tuning
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024
 
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
 
Take control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteTake control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test Suite
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio Web
 
Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdf
 
DMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special EditionDMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special Edition
 
From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .
 
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo Day
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo DayH2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo Day
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo Day
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clash
 
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
 
How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
 
"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko
 
Advanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionAdvanced Computer Architecture – An Introduction
Advanced Computer Architecture – An Introduction
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding Club
 
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfHyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365
 

JDV Big Data Webinar v2

  • 1. GAIN BETTER INSIGHTS FROM BIG DATA USING RED HAT JBOSS DATA VIRTUALIZATION Syed Rasheed Product Marketing Manager Kenny Peeples Technical Marketing Manager Red Hat Corporation December 4th, 2013
  • 2. Red Hat is… “By running tests and executing numerous examples for specific teams, we were able to prove […] not only would the solution work, but it will perform better & at a fraction of the costs.” MICHAEL BLAKE, Director, Systems & Architecture 2 RED HAT CONFIDENTIAL
  • 3. Agenda ● Data challenges getting bigger ● Red Hat Big Data Strategy and Platform ● Data Virtualization Overview ● Customer Use Case for Big Data integration using Data Virtualization ● ● 3 Demo Q&A RED HAT CONFIDENTIAL
  • 4. Poll Question #1 ● What are your plans regarding usage of Hadoop technology at your company? – – Under consideration – Under development – Project level deployment – 4 No plans Enterprise level deployment RED HAT CONFIDENTIAL
  • 5. Poll Question #2 ● What are your plans regarding usage of Data Virtualization technology at your company? – – Under consideration – Under development – Project level deployment – 5 No plans Enterprise level deployment RED HAT CONFIDENTIAL
  • 6. Data Driven Economy Data is becoming the new raw material of business: an economic input almost on a par with capital and labor. “Every day I wake up and ask, ‘how can I flow data better, manage data better, analyze data better?” CIO - Wal-Mart 6 RED HAT CONFIDENTIAL
  • 7. Data Challenges Getting Bigger Big Data, Cloud, and Mobile Existing Data Integration approaches are not sufficient ● Extracting and moving data adds latency and cost ● Every project solves data access and integration in a different way ● Solutions are tightly coupled to data sources ● Poor flexibility and agility BI Reports Operational Reports Enterprise Applications SOA Applications Mobile Applications Constant Change How to align? Integration Complexity Siloed & Complex Hadoop 7 NoSQL Cloud Apps Data Warehouse & Databases Mainframe RED HAT CONFIDENTIAL XML, CSV & Excel Files Enterprise Apps
  • 8. Business Objective Turn Data into Actionable Information Only 28% Users have any meaningful data access  Reduce costs for finding and accessing highly fragmented data Over 70% BI project efforts lies in the integration of source data  Improve time to market for new products and services by simplifying data access and integration  Deliver IT solution agility necessary to capitalize on constantly changing market conditions  Transform fragmented data into actionable information that delivers competitive advantage 8 RED HAT CONFIDENTIAL
  • 9. Red Hat’s Big Data Strategy ● Reduce Information Gap thru cost effectively making ALL data easily consumable for analytics Process Integrate Data to Actionable Information Cycle 9 RED HAT CONFIDENTIAL Analytics Data Capture
  • 10. Red Hat Big Data Platform Platform RHEL Platform Integration & Optimization Hadoop Integration Middleware JBoss Data Virtualization Fedora Big Data SIG Apache Hadoop Hadoop Distributions Hadoop On Red Hat Storage Storage 10 RED HAT CONFIDENTIAL Hadoop On OpenStack Cloud / Virtualization
  • 11. Red Hat Big Data Platform Platform RHEL Platform Integration & Optimization Hadoop Integration Middleware Fedora Big Data SIG JBoss Data Virtualization Apache Hadoop Hadoop Distributions Hadoop On Red Hat Storage Storage 11 RED HAT CONFIDENTIAL Hadoop On OpenStack Cloud / Virtualization
  • 12. What does Data Virtualization software do? Turn Fragmented Data into Actionable Information Data Virtualization software virtually unifies data spread across various disparate sources; and makes it available to applications as a single consolidated data source. DATA CONSUMERS BI Reports The data virtualization software implements 3 steps process to bridge data sources and data consumers: ● ● ● 12 Connect: Fast access to data from diverse data sources Compose: Easily create unified virtual data models and views by combining and transforming data from multiple sources. Consume: Expose consistent information to data consumers in the right form thru standard data access methods. SOA Applications Easy, Real-time Information Access Virtual Consolidated Data Source Data Virtualization Software • • • Consume Compose Connect Oracle DW SAP Hadoop DATA SOURCES RED HAT CONFIDENTIAL Salesforce.com Virtualize Abstract Federate Siloed & Complex
  • 13. Turn Fragmented Data into Actionable Information Mobile Applications Data Consumers JBoss Data Virtualization ESB, ETL BI Reports & Analytics SOA Applications & Portals Design Tools Standard based Data Provisioning JDBC, ODBC, SOAP, REST, OData Consume Easy, Real-time Information Access Dashboard Unified Virtual Database / Common Data Model Compose Unified Customer View Unified Product View Unified Supplier View Optimization Caching Virtualize Abstract Federate Security Connect Native Data Connectivity Data Sources Metadata Siloed & Complex Hadoop 13 NoSQL Cloud Apps Data Warehouse & Databases Mainframe RED HAT CONFIDENTIAL XML, CSV & Excel Files Enterprise Apps
  • 14. JBoss Data Virtualization: Supported Data Sources Enterprise RDBMS: • Oracle • IBM DB2 • Microsoft SQL Server • Sybase ASE • MySQL • PostgreSQL • Ingres Enterprise EDW: • Teradata • Netezza • Greenplum 14 Hadoop: • Apache • HortonWorks • Cloudera • More coming… Office Productivity: • Microsoft Excel • Microsoft Access • Google Spreadsheets Specialty Data Sources: • ModeShape Repository • Mondrian • MetaMatrix • LDAP RED HAT CONFIDENTIAL NoSQL: • JBoss Data Grid • MongoDB • More coming… Enterprise & Cloud Applications: • Salesforce.com • SAP Technology Connectors: • Flat Files, XML Files, XML over HTTP • SOAP Web Services • REST Web Services • OData Services
  • 15. Key New Features and Capabilities ● Data connectivity enhancements – – NoSQL (MongoDB – Tech Preview) and JBoss Data Grid – ● Hadoop Integration (Hive – Big Data), Odata support (SAP integration) Developer Productivity improvements – – Enhanced column level security, – ● New VDB Designer 8 and integration with JBoss Developer Studio v7 VDB import/reuse, and native queries Simplify deployment and packaging – – ● Requires JBoss EAP only; included with subscription Remove dependency with SOA Platform Business Dashboard – 15 New rapid data reporting/visualization capability RED HAT CONFIDENTIAL
  • 16. JBoss Data Virtualization – Use Cases Self-Service Business Intelligence The virtual, reusable data model provides business-friendly representation of data, allowing the user to interact with their data without having to know the complexities of their database or where the data is stored and allowing multiple BI tools to acquire data from centralized data layer. Gain better insights from Big Data using JBoss Data Virtualization to integrate with existing information sources. 360◦ Unified View Deliver a complete view of master & transactional data in real-time. The virtual data layer serves as a unified, enterprise-wide view of business information that improves users’ ability to understand and leverage enterprise data. Agile SOA Data Services A data virtualization layer deliver the missing data services layer to SOA applications. JBoss Data Virtualization increases agility and loose coupling with virtual data stores without the need to touch underlying sources and creation of data services that encapsulate the data access logic and allowing multiple business service to acquire data from centralized data layer. Regulatory Compliance Data Virtualization layer deliver the data firewall functionality. JBoss Data Virtualization improves data quality via centralized access control, robust security infrastructure and reduction in physical copies of data thus reducing risk. Furthermore, the metadata repository catalogs enterprise data locations and the relationships between the data in various data stores, enabling transparency and visibility. 16 RED HAT CONFIDENTIAL
  • 17. Big Data integration use case Retail Customer Use Case Gain Better Insight from Big Data for Intelligent Inventory Management ● Objective: – ● Right merchandise, at right time and price JBoss BRMS Problem: – ● Analytical Apps Data Driven Decision Management Cannot utilize social data and sentiment analysis with their inventory and purchase management system Solution: – Leverage JBoss Data Virtualization to mashup Sentiment analysis data with inventory and purchasing system data. Leveraged BRMS to optimize pricing and stocking decisions. Consume Compose Connect JBoss Data Virtualization Hive Purchase Mgmt Application Inventory Databases Sentiment Analysis 17 RED HAT CONFIDENTIAL
  • 18. Better Together - Big Data and Data Virtualization Hadoop not another Silo - Customers Combine Multiple Technologies ● Combine structured and unstructured analysis – ● Combine high velocity and historical analysis – ● Analyze and react to data in motion; adjust models with deep historical analysis Reuse structured data for analysis – 18 Augment data warehouse with additional external sources, such as social media Experimentation and ad-hoc analysis with structured data RED HAT CONFIDENTIAL
  • 19. Better Together - Big Data and Data Virtualization BI Analytics (historical, operational, predictive) SOA Composite Applications Data Integration JBoss Data Virtualization Capture & Process In-memory Cache JBoss Data Grid Messaging and Event Processing JBoss A-MQ and JBoss BRMS J Structured Data 19 Streaming Data RED HAT CONFIDENTIAL Hadoop Semi-Structured Data Red Hat Storage Red Hat Enterprise Linux & Virtualization Integrate & Analyze Capture, Process and Integrate Data Volume, Velocity, Variety
  • 20. Consider... Inconsistent, Incomplete Information Uninformed, Delayed Decisions Costly Business Risk and Exposure How would your organization change… ● ● ● 20 If data were readily reusable in place rather than requiring significant effort to build new intermediary data tiers? If data could be repurposed quickly into new applications and business processes? If all applications and business processes could get all of the information needed in the form needed, where needed and when needed? RED HAT CONFIDENTIAL
  • 21. Red Hat JBoss Middleware Business Process Management • • JBoss BRMS JBoss BPM Suite Application Integration • • • JBoss A-MQ JBoss Fuse JBoss Fuse Service Works Data Integration Foundation ACCELERATE 21 • • • • JBoss Data Virtualization JBoss EAP JBoss Web Server JBoss Data Grid INTEGRATE RED HAT CONFIDENTIAL AUTOMATE JBoss Operations Network JBoss Developer Studio JBoss Portal • • • Management Tools Development Toolsh User Interaction
  • 22. Big Data Integration using JBoss Data Virtualization DEMO
  • 23. Demo Scenario ● Objective: – ● Determine if sentiment data from the first week of the Iron Man 3 movie is a predictor of sales Problem: – ● Excel Powerview and DV Dashboard to analyze the aggregated data Cannot utilize social data and sentiment analysis with sales management system Consume Compose Connect Solution: – JBoss Data Virtualization Leverage JBoss Data Virtualization to mashup Sentiment analysis data with ticket and merchandise sales data on MySQL into a single view of the data. Hive SOURCE 1: Hive/Hadoop contains twitter data including sentiment 23 RED HAT CONFIDENTIAL SOURCE 2: MySQL data that includes ticket and merchandise sales
  • 24. Demonstration System Requirements • JDK – Oracle JDK 1.6, 1.7 or OpenJDK 1.6 or 1.7 • JBoss Data Virtualization v6 Beta – http://jboss.org/products/datavirt.html • JBoss Developer Studio – http://jboss.org/products • JBoss Integration Stack Tools (Teiid) – https://devstudio.jboss.com/updates/7.0-development/integration-stack/ • Slides, Code and References for demo – https://github.com/DataVirtualizationByExample/Mashup-with-Hive-andMySQL • Hortonworks Data Platform (A VM for testing Hive/Hadoop) – http://hortonworks.com/products/hdp-2/#install • Red Hat Storage – http://www.redhat.com/products/storage-server/ 24 RED HAT CONFIDENTIAL
  • 61. Why Red Hat for Big Data? ● Transform ALL data into actionable information – Cost Effective, Comprehensive Platform – Community based Innovation – Enterprise Class Software and Support Process Integrate Data to Actionable Information Cycle 61 RED HAT CONFIDENTIAL Information Data Capture
  • 62. Red Hat Big Data Platform Platform RHEL Platform Integration & Optimization Hadoop Integration Middleware JBoss Data Virtualization Fedora Big Data SIG Apache Hadoop Hadoop Distributions Hadoop On Red Hat Storage Storage 62 RED HAT CONFIDENTIAL Hadoop On OpenStack Cloud / Virtualization

Notas do Editor

  1. Today the collaboration between Red Hat and SAP continues.Engineers from both companies are working towards a common target — enhancing the interoperability of JBoss Enterprise middleware with the existing SAP landscape. Specifically, Red Hat and SAP are collaborating on development efforts for tools that are designed to simplify the integration of SAP data and business processes with other enterprise data and applications.The aim of such integration, of course, is a more intelligent enterprise — one that can maximize the value of your data assets in accelerating business decisions.
  2. To remember the pragmatic definition of big data, think SPA — the three questions of big data:Store. Can you capture and store the data?Process. Can you cleanse, enrich, and analyze the data? Access. Can you retrieve, search, integrate, and visualize the data?
  3. Easy data accessibility thru standard interfaces e.g SQL, Web Services etc.Exposes non-relational sources as relationalRead and write data in placeReal time accessNo data replication/duplication requiredSo lets define what are the attributes of Data Virtualization solution. The first thing that data virtualization product does is virtualizes the data, regardless of where it is. It makes the data look as if it was in one place. So applications don’t need to know where the data is, because the data virtualization software does that for you.The second thing that data virtualization does is federating the data. You’re running a query which spans multiple databases or data warehouses. You want that query to run sufficiently and with optimum performance. So in order to do that, you need a variety of techniques, like caching, like pushdown optimization, you need to have knowledge of the source databases to make this whole environment run as smoothly and efficiently as possible.Thirdly, it abstracts the data into the format of choice. It conforms the data so that it’s in a consistent format, and that’s regardless of the native structure or syntax of the data. And one point I should make here is that you want to be able to – you don’t want a tool which will force you to have a particular format. What you want is a format that suits your business, rather than one which is imposed on you. So you need to have, the data virtualization tool itself needs to be agile and flexible, in the sense of being able to provide a data format that suits you.And then the fourth thing you have a requirement for is to present the data in a consistent fashion. And it doesn’t matter whether it’s a business intelligence application, it’s a mash-up, it’s a regular application; whatever it is, you want to be able to present the data in a consistent format to the business, to participating applications. Imagine if all the up-to-date data you need to take informed action, is available to you on demand as one unified source. This is the capability provided by Data Virtualization software.
  4. Easy data accessibility thru standard interfaces e.g SQL, Web Services etc.Exposes non-relational sources as relationalRead and write data in placeReal time accessNo data replication/duplication requiredThe data virtualization software provides 3 step process to connect data sources and data consumers:Connect: Fast Access to data from disparate systems (databases, files, services, applications, etc.) with disparate access method and storage models. Compose: Easily create reusable, unified common data model and virtual data views by combining and transforming data from multiple sources.Consume: Seamlessly exposing unified, virtual data model and views available in real-time through a variety of open standards data access methods to support different tools and applications.JBoss Data Virtualization software implements all three steps internally while isolating/hiding complexity of data access methods, transformation and data merge logic details from information consumers.This enables organization to acquire actionable, unified information when they want it and the way they want it; i.e. at the business speed.
  5. To remember the pragmatic definition of big data, think SPA — the three questions of big data:Store. Can you capture and store the data?Process. Can you cleanse, enrich, and analyze the data? Access. Can you retrieve, search, integrate, and visualize the data?