SlideShare a Scribd company logo
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Oracle Data Integration
INTRODUCTION, CORE CAPABILITIES AND INVESTMENT ROADMAP
Jeff Pollock
Vice President of Products
Oracle Data Integration
September, 2016
#OpenWorld 2016
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Safe Harbor Statement
The following is intended to outline our general product direction. It is intended for
information purposes only, and may not be incorporated into any contract. It is not a
commitment to deliver any material, code, or functionality, and should not be relied upon
in making purchasing decisions. The development, release, and timing of any features or
functionality described for Oracle’s products remains at the sole discretion of Oracle.
#OpenWorld 2016 2
Five Core
Capabilities
1. Business ContinuityDATA ALWAYS AVAILABLE
2. Data Movement
DATA ANYWHERE IT’S NEEDED
3. Data TransformationDATA ACCESSIBLE IN ANY FORMAT
4. Data GovernanceDATA THAT CAN BE TRUSTED
5. Streaming Data
DATA IN MOTION OR AT RES
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 4
Eight Core
Products
Cloud or On-
Premise
Most
Innovative
Technology
#1
#1
Realtime / Streaming
Data Integration Tool
Pushdown / E-LT
Data Integration Tool
1st to certify replication with
Streaming Big Data
1st to certify E-LT tool with
Apache Spark/Python
1st to power Data Preparation
w/ML + NLP + Graph Data
1st to offer Self-Service &
Hybrid Cloud solution
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016
Data Integration Products
GOLDENGATE – DATA INTEGRATOR – DATA PREPARATION –
STREAM ANALYTICS – DATAFLOW ML – METADATA
MANAGEMENT – DATA QUALITY
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Oracle GoldenGate
Realtime Performance
Extensible & Flexible
Proven & Reliable
Oracle GoldenGate provides low-impact capture, routing,
transformation, and delivery of database transactions
across homogeneous and heterogeneous environments in
real-time with no distance limitations.
Most
Databases
Data
Events
Transaction Streams
Cloud
DBs
Big
Data
Supports Databases, Big Data and NoSQL:
* The most popular enterprise integration tool in history
7
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Oracle Data Integrator
Bulk Data Performance
Non Invasive Footprint
Future Proof IT Skills
Oracle Data Integrator provides high performance bulk
data movement, massively parallel data transformation
using database or big data technologies, and block-level
data loading that leverages native data utilities
Bulk Data
Transformation
Most Apps,
Databases
& Cloud Bulk Data Movement
Cloud
DBs
Big
Data
1000’s of
customers –
more than other
ETL tools
Flexible ELT
workloads run
anywhere: DBs,
Big Data, Cloud
Up to 2x faster
batch processes
and 3x more
efficient tooling
8
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Self-Service
Better Recommendations
Built-in Data Graph Zero software
to install, easy
to use browser
based interface
Better
automation and
less grunt work
for humans
Graph database
of real-world
facts used for
enrichment
Oracle Data Preparation
ReportingApps
Files
ETL
Oracle Data Preparation is a self-service tool that makes
it simple to transform, prepare, enrich and standardize
business data – it can help IT accelerate solutions for the
Business by giving control of data formatting directly to
data analysts.
9
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Business Friendly
Extreme Performance
Spatial Awareness
Oracle Stream Analytics
DB
Web / Devices
Data
Event
Data & Transaction Streams
Downstream
(eg; Hadoop)
Data
Event
Oracle Stream Analytics is a powerful analytic toolkit
designed to work directly on data in motion – simple data
correlations, complex event processing, geo-fencing, and
advanced dashboards run on millions of events per
second.
Innovative dual
model for
Apache Spark or
Coherence grid
Simple to use
spatial and geo-
fencing features
an industry first
Includes Oracle
GoldenGate for
streaming
transactions
10
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Stream or Batch Data
Spark based Pipelines
ML-powered Profiling
Oracle Dataflow ML
Oracle Dataflow ML is big data solution for stream and
batch processing in a single environment – Lambda based
applications that can run streaming ETL for cloud based
analytic solutions.
Batch and
stream
processing at
the same time
Machine
learning guides
users for data
profiling
Data movement
across Oracle
PaaS services
Most Apps,
Databases
& Cloud
Bulk Data
Movement
Streaming Data Cloud
DBs
Big
Data
Big Data
Pipeline
11
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Business Glossary
End-to-End Lineage
100+ Supported Systems
Oracle Metadata Management
Oracle Metadata Management provides an integrated
toolkit that combines business glossary, workflow,
metadata harvesting and rich data steward collaboration
features.
Supports Databases, Big Data, ETL Tools, BI Tools etc:
BI Report Lineage
Taxonomy Lineage
Data Model Lineage
12
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Simple to Use
High Performance Matching
Powerful DQ Rules
Oracle Enterprise Data Quality
Oracle Enterprise Data Quality establishes trusted
business data by providing a foundation for data
profiling, data standardization, match and merge
capabilities and data cleansing.
Profile, Standardize,
Match, Merge and
Cleanse your data
DWMDM
Apps ETL
Health check for
your data; quick
& easy profiling
and cleansing
Intuitive
business user
friendly toolkit
for quality rules
Suitable for high
performance
Applications or
Master Data
13
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016
Powerful Cloud Solutions
For Data Integration
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 15
Self-Service, Streaming or Batch Data Integration
Data Integration Cloud
Easy Self Service Data Preparation
Machine Learning and Semantic Technology
Streaming or Batch Integrations
• Modern Lambda and Kappa style streaming
applications for real-time data pipelines
• ETL integrations for classical Data Warehousing, Data
Marts and Operational Databases
• Real-time Replication with Changed Data Capture
• Point and click deployment of Replication services, ETL,
and Dataflow pipeline services
• Self-Service Data Preparation designed for non-
programmers to prepare rich data transformations
• Spark-based ML platform for Dataflow deployments
• High value Natural Language Processing (NLP) and
built-in data graph for Recommendation Service
Data
Preparation
Streaming
Applications
ETL Data
Processing
Ingest from Sources Automate Publish
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 16
Comprehensive and Differentiated Data Integration in the Public Cloud
Data Integration Cloud – Core Capabilities
Ground to Cloud Data Streams Pushdown ELT/ETL
• GoldenGate realtime Replication
from on-premise to Cloud
• Data Integrator bulk data
movement into Cloud
• From on-premise to pipelines to
analytics in sub-seconds
• Ingest, move, transform and
analyze data 100% in memory
• Ultra-high performance ELT
processing in Hadoop or DBaaS
• Simple to choose which PaaS
you want the workload to run
streaming
batch
Pipelines Analytics
batch
data transformation
Five Cloud
Solutions
1. Data MigrationsREPEATABLE PROVEN DATA MIGRATION TOOLS
2. DW Integration
ENABLE CLOUD DATA WAREHOUSE STRATEGIES
3. Dev & Test CloudOPERATE DEV-TEST DB’S IN CLOUD
4. Data High AvailabilityDATA RELIABILITY AT 99.999% SERVICE LEVELS
5. Heterogeneous Cloud
BEST OF BREED FOR AMAZON AWS ETC.
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Key Benefits – Online/Offline Migrations
3rd Party Cloud Support
Database Migrations
• Seamless data migration from older databases or
poorly optimized Cloud services
• Take advantage of newest Oracle DB versions in a
simple subscription model
• No data loss for phased / online migrations
• Strong automation around provisioning and billing
• Reliable and proven core GoldenGate technology
• Migrate older Amazon RDS instances to Oracle
• Data delivery from on-premise to 3rd party Clouds
#OpenWorld 2016 18
Solution 1: Database Migrations in to Cloud
On Premise
RDS
Oracle DBaaS
I need to migrate my
DBs to newer and less
expensive systems
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Key Capabilities: Comprehensive Solution
3rd Party Cloud Support
Data Warehouse Integration
• Operational or Advanced Analytics in the Cloud
requires reliable data feeds
• Work with data coming from on-premise data sources
or other cloud sources
• Prepare and Ingest data in realtime; built in support for
replication and streaming ingestion to DW/Marts
• Transform and Cleanse data; innovative approach
allows workloads to run on different PaaS resources
• Supports Amazon RDS databases and Redshift
• Big data support with Kinesis and EMR
#OpenWorld 2016 19
Solution 2: Data Warehouse Integration in the Cloud
DW on Exadata
Cloud Service
UNSTRUCTUREDSTRUCTURED
BI & Data
Visualization
RDS & REDSHIFT
Help me run
my analytics
from the Cloud
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Key Benefits: Automate Data Movement
Oracle Database as a Service
Database Dev-Test Environments
• Keep development and test environments continuously
in sync with minimum infrastructure or process
overhead
• Leverage automation rather than manual syncs
• Low Overhead reduces manual and complex scripting
• Repeatable approach standardizes DBA processes
• Simple framework can be used across a variety of DBs
• All Supported Oracle Versions regardless of what you
have running on premise
• Mix and match versions or patch levels
#OpenWorld 2016 20
Solution 3: Dev & Test Systems in the Cloud
On Premise
Oracle DBaaS
12.1 & 12.2
10g & 11g
Make my DBA job
easier and more
productive
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Key Benefits for DBaaS
Powerful Cloud Solution
Regional High Availability
• When you can’t afford to have your mission critical
databases take downtime
• Particularly necessary when disaster recover is
necessary across regional datacenters
• Standby Databases can be always on with Active Data
Guard in the Cloud
• Active-Active can enable you to take read/write
transactions on all databases.
• Strong Automation of service provisioning and billing
• Oracle or Amazon Cloud operate active-active Oracle
Database in any Cloud across regional data centers
#OpenWorld 2016 21
Solution 4: High Availability for DBaaS in the Cloud
Oracle DBaaS
Datacenter Region 1
Active / Active
Oracle DBaaS
or Amazon RDS
Datacenter Region 2
On Premise
My business
applications
can not go
down!
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Heterogeneous and Complete Solution
Bring Enterprise-strength to AWS
• Advanced data integration and availability capabilities
for Kinesis, EMR, Redshift and RDS
• Proven data transfer rates of 10’s of thousands of DB
transactions per second
• Security controls work correctly across Amazon secure
data centers
• Flexible solution can leverage DB or Big Data from
within the AWS services
• Most Trusted data replication engine over all others
• Top most popular ETL/ELT tool in worldwide market
• Fastest growing data integration for big data
• Oracle Data Integration is a heterogeneous capability
that works across different data platforms and different
cloud platforms.
#OpenWorld 2016 22
Solution 5: Make Amazon AWS Enterprise Grade
Oracle Database
Active-Active
Realtime Big Data
GoldenGate
Datacenter A Datacenter B
GoldenGate
Data Integrator
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016
Big Data Solutions
For Data Integration & Governance
Pragmatic
Big Data
Solutions
1. Data IngestionINDUSTRIAL STRENGTH DATA INGESTION LAYER
2. Transformations
FUTURE-PROOF TOOLING FOR CODE GENERATION
3. GovernanceMETADATA LINEAGE AND BUSINESS GLOSSARY
4. ConnectorsHIGH SPEED PARALLEL LOADERS FOR BULK DATA
5. Streaming Big Data
INGEST & ANALYTICS 100% IN-MEMORY
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 25
Business
Data
Serving
Layer
Apps
Analytics
EDWsRaw
Data
Staging
Data Discovery
ETL Offload
Batch Layer
Data Streams
Social and Logs
Enterprise Data
Highly Available
Databases
Databus
(Pub/Sub)
Streaming Analytics
Streaming Data Pipelines
...Speed Layer data broadcasting & streaming data processing
...Batch Layer data processing for huge data volumes
...Serving Layer for consumption
Pub / Sub
REST APIs
NoSQL
Bulk Data
Vision = Lambda/Kappa
Databus
(Pub/Sub)
Speed Layer
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 26
Hybrid Open-Source
...Open Source at the core of speed & batch processing engines
...Enterprise Vendor tools for connecting to existing IT system and
...Cloud Platforms for data fabric
Business
Data
Serving
Layer
Apps
Analytics
Batch Layer
Data Streams
Social and Logs
Enterprise Data
Highly Available
Databases
Pub / Sub
REST APIs
NoSQL
Bulk Data
Speed Layer
Raw Data Stream Processing
Batch Processing
Prepared Data
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Examples
#OpenWorld 2016 27
Reference Architecture
Business
Data
Serving
Layer
Apps
Analytics
Batch Layer
Data Streams
Social and Logs
Enterprise Data
Highly Available
Databases
Pub / Sub
REST APIs
NoSQL
Bulk Data
Speed Layer
GoldenGate
Data Preparation
Data Quality, Metadata Management & Business Glossary
Oracle Data Integrator
Active DataGuard
Comprehensive architecture covers key areas – #1. Data Ingestion, #2. Data Preparation &
Transformation, #3. Streaming Big Data, #4. Parallel Connectivity, and #5. Data Governance –
and Oracle Data Integration has it covered.
Dataflow ML
Stream Analytics
Connectors
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
ApplicationsApplications DatabusApplications Speed Layer
Batch Layer
Capture
Trail
Route
Deliver
Pump
#OpenWorld 2016 28
Streaming Analytics
Application
Serving
Layer
REST
Services
Visualization
Tools
Reporting
Tools
Data Marts
User
Updates
DBMS
Updates
GoldenGate for Ingest
GG GG
Applications Serving
Layer
Speed Layer
Batch Layer
Platforms
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 29
ODI for Transformations
ETL Engines
Big Data Frameworks
Speed Layer
Batch Layer
Serving
Layer
ApplicationsApplications DatabusApplications
Application
REST
Services
Visualization
Tools
Reporting
Tools
Data Marts
User
Updates
DBMS
Updates
Applications Serving
Layer
Speed Layer
Batch Layer
Oracle Data Integrator
Spark Streaming
Spark SQLSqoop
ERP
Oozie
Pig
Hive
Loaders
Kafka
NoSQL
OGG
SQL
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Data Catalog
Speed Layer
Batch Layer
Serving
Layer
#OpenWorld 2016 30
OEMM for Data Governance
ApplicationsApplications DatabusApplications
Application
REST
Services
Visualization
Tools
Reporting
Tools
Data Marts
User
Updates
DBMS
Updates
Applications Serving
Layer
Speed Layer
Batch Layer
Kafka
Generated Streaming
Generated ETL CodeSqoop
OLTP Databases
HDFS Files
HCatalog
Hive
NoSQL
ETL
Tools
Data Warehouses
BI Models
ER Models
Oracle Enterprise Metadata Management
140+ Supported Tools
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
from Devices
Batch Layer
#OpenWorld 2016 31
Streaming Data
ApplicationsApplications
Databus
Applications
Speed Layer Serving
Layer
REST
Services
Visualization
Tools
Reporting
Tools
Data Marts
Applications
Serving
Layer
Speed Layer
Batch Layer
Oracle Stream Analytics
Oracle Dataflow ML
Oracle GoldenGate
Application
ApplicationsApplicationsDevices
from Databases
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016
World Class Solutions
For Data Integration & Governance
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 33
140+ Open Source, Standards and Third Party Integrations
 Adaptive
 Altova
 Apache HCatalog
 Apache Hive/HQL
 Borland
 CA ERwin
 Cloudera Impala
 COBOL Copybook
 DataStax
 Embarcadero
 EMC ProActivity
 GentleWare
 Google BigQuery
 Grandite
 Hadapt Hive
 Hortonworks Hive
 IBM Cognos
 IBM DB2
 IBM DataStage
 IBM Discovery
 IBM Federation Server
 IBM Lotus Notes
 IBM Netezza
 IBM Rational Rose
 IBM Rational Architect
 Informatica Metadata Manager
 Informatica PowerCenter
 CoSORT
 ISO SQL Standard (DDL)
 MapR Hadoop Hive
 MicroFocus
 Microsoft Access
 Microsoft Office Excel
 Microsoft Visio
 Microsoft SQL Server
 Microsoft SSIS
 Microsoft Visual Studio
 Microstrategy
 Magic Draw
 OMG CWM Standard
 OMG UML Standard
 Oracle BI Answers
 Oracle BI Enterprise Edition
 Oracle BI Server
 Oracle DAC
 Oracle Data Integrator
 Oracle Data Modeler
 Oracle Database
 Oracle Designer
 Oracle Hyperion Applications
 Oracle Hyperion Essbase
 Oracle Warehouse Builder
 Pivotal Greenplum
 PostgreSQL
 QlikView
 SAP BO Crystal Reports
 SAP BO Designer
 SAP BO Desktop Intelligence
 SAP BO Repository
 SAP BO Data Integrator
 SAP BO Data Steward
 SAP Master Data Management
 SAP Sybase PowerDesigner
 SAP Sybase ASE Database
 SAS Data Integration Studio
 SAS BI Server
 SAS Information Map
 SAS Metadata Management
 SAS OLAP Server
 Select
 Sparx Architect
 Syncsort
 Tableau
 Talend
 Teradata
 Tigris
 Visible
 W3C DTD & XSD Schema
Metadata Harvesting (Glossary, Lineage & Impact Analysis)Key Standards
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 34
Data Integration Cloud
Data Integration
SaaS Data
Quality
DaaS Data
Quality
ODI on Big Data
Cloud Service
Data
Preparation
ODI Cloud
Service
Dataflow ML
Cloud Service
EDQ Cloud
Service
GoldenGate
Cloud Service
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 35
• Use Starbucks loyalty card to buy a Latte
• Pay for a purchase with PayPal
• Withdraw cash at an ATM from Bank of America, or Citibank, or Wells Fargo,
or CapitalOne, or American Express, or JP Morgan Chase, or… most other
banks in the world
• Click on an Google AdWords link
• Select a recommended item from EBay.com
• Buy something from Amazon
• Use a store coupon from Safeway
• Browse the catalog from Overstock.com
• Check flight availability on American Airlines
• Use the Cartwheel App at Target stores
• Take your General Motors car in for service
• Go shopping at Macy’s online store on Black Friday
• Deposit your payroll check issued by Paychex
• Take care of your small business accounting on Quickbooks.com
• Buy a song on Apple iTunes
• Change your profile or add a skill on LinkedIn.com
Everyday Moments
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Presen-
tations
on:
#OpenWorld 2016 36
Data Integration Solutions Program - tinyurl.com/DISOOW16
Demo
Stations:
Hands-
on labs:
Oracle
Enterprise
Metadata
Management
Oracle
Enterprise
Data Quality
Oracle
GoldenGate
Oracle
Data
Integrator
Oracle
Big Data
Preparation
Cloud Service
Oracle
Enterprise
Data Quality
HOL7466
Oracle
GoldenGate
Deep Dive
HOL7528
ODI and OGG
for Big Data
HOL7434
Oracle Big Data
Preparation
Cloud Service
HOL7432
Middleware
Demoground
- Moscone South
Big Data
Showcase
- Moscone South
Database
Demoground
- Moscone South
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 37
Data Integration Solutions Program - tinyurl.com/DISOOW16
Monday, Sept 19
• Oracle Data Integration Solutions – Platform Overview and Roadmap
[CON6619 ]
• Oracle Data Integration: the Foundation for Cloud Integration [CON6620 ]
• A Practical Path to Enterprise Data Governance with Cummins [CON6621]
• Oracle Data Integrator Product Update and Strategy [CON6622]
• Deep Dive into Oracle GoldenGate 12.3 New Features for the Oracle 12.2
Database [CON6555]
Tuesday, Sept 20
• Oracle Big Data Integration in the Cloud [CON7472]
• Oracle Data Integration Platform: a Cornerstone for Big Data [CON6624]
• Oracle Data Integrator and Oracle GoldenGate for Big Data [HOL7434]
• Oracle Enterprise Data Quality – Product Overview and Roadmap
[CON6627]
• Self Service Data Preparation for Domain Experts – No Programming
Required [CON6630]
• Oracle Big Data Preparation Cloud Service: Self-Service Data Prep for
Business Users [HOL7432]
• Oracle GoldenGate 12.3 Product Update and Strategy [CON6631]
• New GoldenGate 12.3 Services Architecture [CON6551]
• Meet the Experts: Oracle GoldenGate Cloud Service [MTE7119]
Wednesday, Sept 21
• Data Quality for the Cloud: Enabling Cloud Applications with Trusted Data
[CON6629]
• Transforming Streaming Analytical Business Intelligence to Business
Advantage [CON7352]
• Oracle Enterprise Data Quality for All Types of Data [HOL7466]
• Oracle GoldenGate for Big Data [CON6632]
• Accelerate Cloud On-Boarding using Oracle GoldenGate Cloud Service
[CON6633]
• Oracle GoldenGate Deep Dive and Oracle GoldenGate Cloud Service for Cloud
Onboarding [HOL7528]
Thursday, Sept 22
• Best Practices for Migrating to Oracle Data Integrator [CON6623]
• Best Practices for Oracle Data Integrator: Hear from the Experts [CON6625]
• Dataflow, Machine Learning and Streaming Big Data Preparation [CON6626]
• Data Governance with Oracle Enterprise Data Quality and Metadata
Management [CON6628]
• Faster Design, Development and Deployment with Oracle GoldenGate Studio
[CON6634]
• Getting started with Oracle GoldenGate [CON7318]
• Best Practice for High Availability and Performance Tuning for Oracle
GoldenGate [CON6558]
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Connect with Oracle Data Integration
@OracleDI
Blogs.oracle.com/DataIntegration/
Oracle Data Integration
Oracle Data Integration
#OpenWorld 2016 38
Copyright © 2016, Oracle and/or its affiliates. All rights reserved. |
Safe Harbor Statement
The preceding is intended to outline our general product direction. It is intended for
information purposes only, and may not be incorporated into any contract. It is not a
commitment to deliver any material, code, or functionality, and should not be relied upon
in making purchasing decisions. The development, release, and timing of any features or
functionality described for Oracle’s products remains at the sole discretion of Oracle.
#OpenWorld 2016 40

More Related Content

What's hot

Oracle Planning and Budgeting Cloud Service
Oracle Planning and Budgeting Cloud ServiceOracle Planning and Budgeting Cloud Service
Oracle Planning and Budgeting Cloud Service
Datavail
 
Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)
James Serra
 
Introduction to Data Engineering
Introduction to Data EngineeringIntroduction to Data Engineering
Introduction to Data Engineering
Vivek Aanand Ganesan
 
Understanding the Salesforce Architecture: How We Do the Magic We Do
Understanding the Salesforce Architecture: How We Do the Magic We DoUnderstanding the Salesforce Architecture: How We Do the Magic We Do
Understanding the Salesforce Architecture: How We Do the Magic We Do
Salesforce Developers
 
Architect’s Open-Source Guide for a Data Mesh Architecture
Architect’s Open-Source Guide for a Data Mesh ArchitectureArchitect’s Open-Source Guide for a Data Mesh Architecture
Architect’s Open-Source Guide for a Data Mesh Architecture
Databricks
 
Data warehouse,data mining & Big Data
Data warehouse,data mining & Big DataData warehouse,data mining & Big Data
Data warehouse,data mining & Big Data
Ravinder Kamboj
 
Altis: AWS Snowflake Practice
Altis: AWS Snowflake PracticeAltis: AWS Snowflake Practice
Altis: AWS Snowflake Practice
Altis Consulting
 
Introduction to salesforce ppt
Introduction to salesforce pptIntroduction to salesforce ppt
Introduction to salesforce ppt
Tania Yeasmin (Preity)
 
Demystifying Oracle Cloud ERP Financials
Demystifying Oracle Cloud ERP FinancialsDemystifying Oracle Cloud ERP Financials
Demystifying Oracle Cloud ERP Financials
Perficient, Inc.
 
Oracle Security Presentation
Oracle Security PresentationOracle Security Presentation
Oracle Security Presentation
Francisco Alvarez
 
Best Practices with Apex in 2022.pdf
Best Practices with Apex in 2022.pdfBest Practices with Apex in 2022.pdf
Best Practices with Apex in 2022.pdf
Mohith Shrivastava
 
Databricks Platform.pptx
Databricks Platform.pptxDatabricks Platform.pptx
Databricks Platform.pptx
Alex Ivy
 
Designing a modern data warehouse in azure
Designing a modern data warehouse in azure   Designing a modern data warehouse in azure
Designing a modern data warehouse in azure
Antonios Chatzipavlis
 
Odi interview questions
Odi interview questionsOdi interview questions
Odi interview questions
Udaykumar Sarana
 
Extensibility
ExtensibilityExtensibility
Extensibility
mohamed refaei
 
Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2
Databricks
 
Introduction to snowflake
Introduction to snowflakeIntroduction to snowflake
Introduction to snowflake
Sunil Gurav
 
Oracle Identity & Access Management
Oracle Identity & Access ManagementOracle Identity & Access Management
Oracle Identity & Access Management
DLT Solutions
 
Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4
Databricks
 
Microservices Technology Stack
Microservices Technology StackMicroservices Technology Stack
Microservices Technology Stack
Eberhard Wolff
 

What's hot (20)

Oracle Planning and Budgeting Cloud Service
Oracle Planning and Budgeting Cloud ServiceOracle Planning and Budgeting Cloud Service
Oracle Planning and Budgeting Cloud Service
 
Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)
 
Introduction to Data Engineering
Introduction to Data EngineeringIntroduction to Data Engineering
Introduction to Data Engineering
 
Understanding the Salesforce Architecture: How We Do the Magic We Do
Understanding the Salesforce Architecture: How We Do the Magic We DoUnderstanding the Salesforce Architecture: How We Do the Magic We Do
Understanding the Salesforce Architecture: How We Do the Magic We Do
 
Architect’s Open-Source Guide for a Data Mesh Architecture
Architect’s Open-Source Guide for a Data Mesh ArchitectureArchitect’s Open-Source Guide for a Data Mesh Architecture
Architect’s Open-Source Guide for a Data Mesh Architecture
 
Data warehouse,data mining & Big Data
Data warehouse,data mining & Big DataData warehouse,data mining & Big Data
Data warehouse,data mining & Big Data
 
Altis: AWS Snowflake Practice
Altis: AWS Snowflake PracticeAltis: AWS Snowflake Practice
Altis: AWS Snowflake Practice
 
Introduction to salesforce ppt
Introduction to salesforce pptIntroduction to salesforce ppt
Introduction to salesforce ppt
 
Demystifying Oracle Cloud ERP Financials
Demystifying Oracle Cloud ERP FinancialsDemystifying Oracle Cloud ERP Financials
Demystifying Oracle Cloud ERP Financials
 
Oracle Security Presentation
Oracle Security PresentationOracle Security Presentation
Oracle Security Presentation
 
Best Practices with Apex in 2022.pdf
Best Practices with Apex in 2022.pdfBest Practices with Apex in 2022.pdf
Best Practices with Apex in 2022.pdf
 
Databricks Platform.pptx
Databricks Platform.pptxDatabricks Platform.pptx
Databricks Platform.pptx
 
Designing a modern data warehouse in azure
Designing a modern data warehouse in azure   Designing a modern data warehouse in azure
Designing a modern data warehouse in azure
 
Odi interview questions
Odi interview questionsOdi interview questions
Odi interview questions
 
Extensibility
ExtensibilityExtensibility
Extensibility
 
Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2Data Lakehouse Symposium | Day 1 | Part 2
Data Lakehouse Symposium | Day 1 | Part 2
 
Introduction to snowflake
Introduction to snowflakeIntroduction to snowflake
Introduction to snowflake
 
Oracle Identity & Access Management
Oracle Identity & Access ManagementOracle Identity & Access Management
Oracle Identity & Access Management
 
Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4Data Lakehouse Symposium | Day 4
Data Lakehouse Symposium | Day 4
 
Microservices Technology Stack
Microservices Technology StackMicroservices Technology Stack
Microservices Technology Stack
 

Viewers also liked

Intelligent Integration OOW2017 - Jeff Pollock
Intelligent Integration OOW2017 - Jeff PollockIntelligent Integration OOW2017 - Jeff Pollock
Intelligent Integration OOW2017 - Jeff Pollock
Jeffrey T. Pollock
 
2010.03.16 Pollock.Edw2010.Modern D Ifor Warehousing
2010.03.16 Pollock.Edw2010.Modern D Ifor Warehousing2010.03.16 Pollock.Edw2010.Modern D Ifor Warehousing
2010.03.16 Pollock.Edw2010.Modern D Ifor Warehousing
Jeffrey T. Pollock
 
Tapping into the Big Data Reservoir (CON7934)
Tapping into the Big Data Reservoir (CON7934)Tapping into the Big Data Reservoir (CON7934)
Tapping into the Big Data Reservoir (CON7934)
Jeffrey T. Pollock
 
Unlocking Big Data Silos in the Enterprise or the Cloud (Con7877)
Unlocking Big Data Silos in the Enterprise or the Cloud (Con7877)Unlocking Big Data Silos in the Enterprise or the Cloud (Con7877)
Unlocking Big Data Silos in the Enterprise or the Cloud (Con7877)
Jeffrey T. Pollock
 
CDO - Chief Data Officer Momentum and Trends
CDO - Chief Data Officer Momentum and TrendsCDO - Chief Data Officer Momentum and Trends
CDO - Chief Data Officer Momentum and Trends
Jeffrey T. Pollock
 
Oracle Big Data Governance Webcast Charts
Oracle Big Data Governance Webcast ChartsOracle Big Data Governance Webcast Charts
Oracle Big Data Governance Webcast Charts
Jeffrey T. Pollock
 
One Slide Overview: ORCL Big Data Integration and Governance
One Slide Overview: ORCL Big Data Integration and GovernanceOne Slide Overview: ORCL Big Data Integration and Governance
One Slide Overview: ORCL Big Data Integration and Governance
Jeffrey T. Pollock
 
Brief lessons from the greatest product managers
Brief lessons from the greatest product managersBrief lessons from the greatest product managers
Brief lessons from the greatest product managers
Jeffrey T. Pollock
 
Big Data at Oracle - Strata 2015 San Jose
Big Data at Oracle - Strata 2015 San JoseBig Data at Oracle - Strata 2015 San Jose
Big Data at Oracle - Strata 2015 San Jose
Jeffrey T. Pollock
 
Oracle Data Integration CON9737 at OpenWorld
Oracle Data Integration CON9737 at OpenWorldOracle Data Integration CON9737 at OpenWorld
Oracle Data Integration CON9737 at OpenWorld
Jeffrey T. Pollock
 

Viewers also liked (10)

Intelligent Integration OOW2017 - Jeff Pollock
Intelligent Integration OOW2017 - Jeff PollockIntelligent Integration OOW2017 - Jeff Pollock
Intelligent Integration OOW2017 - Jeff Pollock
 
2010.03.16 Pollock.Edw2010.Modern D Ifor Warehousing
2010.03.16 Pollock.Edw2010.Modern D Ifor Warehousing2010.03.16 Pollock.Edw2010.Modern D Ifor Warehousing
2010.03.16 Pollock.Edw2010.Modern D Ifor Warehousing
 
Tapping into the Big Data Reservoir (CON7934)
Tapping into the Big Data Reservoir (CON7934)Tapping into the Big Data Reservoir (CON7934)
Tapping into the Big Data Reservoir (CON7934)
 
Unlocking Big Data Silos in the Enterprise or the Cloud (Con7877)
Unlocking Big Data Silos in the Enterprise or the Cloud (Con7877)Unlocking Big Data Silos in the Enterprise or the Cloud (Con7877)
Unlocking Big Data Silos in the Enterprise or the Cloud (Con7877)
 
CDO - Chief Data Officer Momentum and Trends
CDO - Chief Data Officer Momentum and TrendsCDO - Chief Data Officer Momentum and Trends
CDO - Chief Data Officer Momentum and Trends
 
Oracle Big Data Governance Webcast Charts
Oracle Big Data Governance Webcast ChartsOracle Big Data Governance Webcast Charts
Oracle Big Data Governance Webcast Charts
 
One Slide Overview: ORCL Big Data Integration and Governance
One Slide Overview: ORCL Big Data Integration and GovernanceOne Slide Overview: ORCL Big Data Integration and Governance
One Slide Overview: ORCL Big Data Integration and Governance
 
Brief lessons from the greatest product managers
Brief lessons from the greatest product managersBrief lessons from the greatest product managers
Brief lessons from the greatest product managers
 
Big Data at Oracle - Strata 2015 San Jose
Big Data at Oracle - Strata 2015 San JoseBig Data at Oracle - Strata 2015 San Jose
Big Data at Oracle - Strata 2015 San Jose
 
Oracle Data Integration CON9737 at OpenWorld
Oracle Data Integration CON9737 at OpenWorldOracle Data Integration CON9737 at OpenWorld
Oracle Data Integration CON9737 at OpenWorld
 

Similar to Oracle Data Integration - Overview

Data Integration for Big Data (OOW 2016, Co-Presented With Oracle)
Data Integration for Big Data (OOW 2016, Co-Presented With Oracle)Data Integration for Big Data (OOW 2016, Co-Presented With Oracle)
Data Integration for Big Data (OOW 2016, Co-Presented With Oracle)
Rittman Analytics
 
2017 OpenWorld Keynote for Data Integration
2017 OpenWorld Keynote for Data Integration2017 OpenWorld Keynote for Data Integration
2017 OpenWorld Keynote for Data Integration
Jeffrey T. Pollock
 
Hortonworks Oracle Big Data Integration
Hortonworks Oracle Big Data Integration Hortonworks Oracle Big Data Integration
Hortonworks Oracle Big Data Integration
Hortonworks
 
Oracle Big Data Appliance and Big Data SQL for advanced analytics
Oracle Big Data Appliance and Big Data SQL for advanced analyticsOracle Big Data Appliance and Big Data SQL for advanced analytics
Oracle Big Data Appliance and Big Data SQL for advanced analytics
jdijcks
 
Analytics and Lakehouse Integration Options for Oracle Applications
Analytics and Lakehouse Integration Options for Oracle ApplicationsAnalytics and Lakehouse Integration Options for Oracle Applications
Analytics and Lakehouse Integration Options for Oracle Applications
Ray Février
 
Cloudera Big Data Integration Speedpitch at TDWI Munich June 2017
Cloudera Big Data Integration Speedpitch at TDWI Munich June 2017Cloudera Big Data Integration Speedpitch at TDWI Munich June 2017
Cloudera Big Data Integration Speedpitch at TDWI Munich June 2017
Stefan Lipp
 
Valor diferencial de la propuesta cloud
Valor diferencial de la propuesta cloudValor diferencial de la propuesta cloud
Valor diferencial de la propuesta cloud
OracleIberia
 
클라우드 시대 완벽한 데이터 관리 방법
클라우드 시대 완벽한 데이터 관리 방법 클라우드 시대 완벽한 데이터 관리 방법
클라우드 시대 완벽한 데이터 관리 방법
오라클 클라우드
 
A3 transforming data_management_in_the_cloud
A3 transforming data_management_in_the_cloudA3 transforming data_management_in_the_cloud
A3 transforming data_management_in_the_cloud
Dr. Wilfred Lin (Ph.D.)
 
Webinar future dataintegration-datamesh-and-goldengatekafka
Webinar future dataintegration-datamesh-and-goldengatekafkaWebinar future dataintegration-datamesh-and-goldengatekafka
Webinar future dataintegration-datamesh-and-goldengatekafka
Jeffrey T. Pollock
 
[CON6985]Expanding DBaaS Beyond Data Centers Hybrid Cloud Onboarding via Orac...
[CON6985]Expanding DBaaS Beyond Data Centers Hybrid Cloud Onboarding via Orac...[CON6985]Expanding DBaaS Beyond Data Centers Hybrid Cloud Onboarding via Orac...
[CON6985]Expanding DBaaS Beyond Data Centers Hybrid Cloud Onboarding via Orac...
Bharat Paliwal
 
Oracle Openworld Presentation with Paul Kent (SAS) on Big Data Appliance and ...
Oracle Openworld Presentation with Paul Kent (SAS) on Big Data Appliance and ...Oracle Openworld Presentation with Paul Kent (SAS) on Big Data Appliance and ...
Oracle Openworld Presentation with Paul Kent (SAS) on Big Data Appliance and ...
jdijcks
 
LinkedInSaxoBankDataWorkbench
LinkedInSaxoBankDataWorkbenchLinkedInSaxoBankDataWorkbench
LinkedInSaxoBankDataWorkbench
Sheetal Pratik
 
Oracle Cloud : Big Data Use Cases and Architecture
Oracle Cloud : Big Data Use Cases and ArchitectureOracle Cloud : Big Data Use Cases and Architecture
Oracle Cloud : Big Data Use Cases and Architecture
Riccardo Romani
 
Hybrid Cloud : Database-as-a-Service: OOW 16
Hybrid Cloud : Database-as-a-Service: OOW 16 Hybrid Cloud : Database-as-a-Service: OOW 16
Hybrid Cloud : Database-as-a-Service: OOW 16
Bala Kuchibhotla
 
Verizon Centralizes Data into a Data Lake in Real Time for Analytics
Verizon Centralizes Data into a Data Lake in Real Time for AnalyticsVerizon Centralizes Data into a Data Lake in Real Time for Analytics
Verizon Centralizes Data into a Data Lake in Real Time for Analytics
DataWorks Summit
 
Stream based Data Integration
Stream based Data IntegrationStream based Data Integration
Stream based Data Integration
Jeffrey T. Pollock
 
Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...
Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...
Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...
Innovative Management Services
 
A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...
A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...
A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...
Hortonworks
 
Oracle NoSQL Database -- Big Data Bellevue Meetup - 02-18-15
Oracle NoSQL Database -- Big Data Bellevue Meetup - 02-18-15Oracle NoSQL Database -- Big Data Bellevue Meetup - 02-18-15
Oracle NoSQL Database -- Big Data Bellevue Meetup - 02-18-15
Dave Segleau
 

Similar to Oracle Data Integration - Overview (20)

Data Integration for Big Data (OOW 2016, Co-Presented With Oracle)
Data Integration for Big Data (OOW 2016, Co-Presented With Oracle)Data Integration for Big Data (OOW 2016, Co-Presented With Oracle)
Data Integration for Big Data (OOW 2016, Co-Presented With Oracle)
 
2017 OpenWorld Keynote for Data Integration
2017 OpenWorld Keynote for Data Integration2017 OpenWorld Keynote for Data Integration
2017 OpenWorld Keynote for Data Integration
 
Hortonworks Oracle Big Data Integration
Hortonworks Oracle Big Data Integration Hortonworks Oracle Big Data Integration
Hortonworks Oracle Big Data Integration
 
Oracle Big Data Appliance and Big Data SQL for advanced analytics
Oracle Big Data Appliance and Big Data SQL for advanced analyticsOracle Big Data Appliance and Big Data SQL for advanced analytics
Oracle Big Data Appliance and Big Data SQL for advanced analytics
 
Analytics and Lakehouse Integration Options for Oracle Applications
Analytics and Lakehouse Integration Options for Oracle ApplicationsAnalytics and Lakehouse Integration Options for Oracle Applications
Analytics and Lakehouse Integration Options for Oracle Applications
 
Cloudera Big Data Integration Speedpitch at TDWI Munich June 2017
Cloudera Big Data Integration Speedpitch at TDWI Munich June 2017Cloudera Big Data Integration Speedpitch at TDWI Munich June 2017
Cloudera Big Data Integration Speedpitch at TDWI Munich June 2017
 
Valor diferencial de la propuesta cloud
Valor diferencial de la propuesta cloudValor diferencial de la propuesta cloud
Valor diferencial de la propuesta cloud
 
클라우드 시대 완벽한 데이터 관리 방법
클라우드 시대 완벽한 데이터 관리 방법 클라우드 시대 완벽한 데이터 관리 방법
클라우드 시대 완벽한 데이터 관리 방법
 
A3 transforming data_management_in_the_cloud
A3 transforming data_management_in_the_cloudA3 transforming data_management_in_the_cloud
A3 transforming data_management_in_the_cloud
 
Webinar future dataintegration-datamesh-and-goldengatekafka
Webinar future dataintegration-datamesh-and-goldengatekafkaWebinar future dataintegration-datamesh-and-goldengatekafka
Webinar future dataintegration-datamesh-and-goldengatekafka
 
[CON6985]Expanding DBaaS Beyond Data Centers Hybrid Cloud Onboarding via Orac...
[CON6985]Expanding DBaaS Beyond Data Centers Hybrid Cloud Onboarding via Orac...[CON6985]Expanding DBaaS Beyond Data Centers Hybrid Cloud Onboarding via Orac...
[CON6985]Expanding DBaaS Beyond Data Centers Hybrid Cloud Onboarding via Orac...
 
Oracle Openworld Presentation with Paul Kent (SAS) on Big Data Appliance and ...
Oracle Openworld Presentation with Paul Kent (SAS) on Big Data Appliance and ...Oracle Openworld Presentation with Paul Kent (SAS) on Big Data Appliance and ...
Oracle Openworld Presentation with Paul Kent (SAS) on Big Data Appliance and ...
 
LinkedInSaxoBankDataWorkbench
LinkedInSaxoBankDataWorkbenchLinkedInSaxoBankDataWorkbench
LinkedInSaxoBankDataWorkbench
 
Oracle Cloud : Big Data Use Cases and Architecture
Oracle Cloud : Big Data Use Cases and ArchitectureOracle Cloud : Big Data Use Cases and Architecture
Oracle Cloud : Big Data Use Cases and Architecture
 
Hybrid Cloud : Database-as-a-Service: OOW 16
Hybrid Cloud : Database-as-a-Service: OOW 16 Hybrid Cloud : Database-as-a-Service: OOW 16
Hybrid Cloud : Database-as-a-Service: OOW 16
 
Verizon Centralizes Data into a Data Lake in Real Time for Analytics
Verizon Centralizes Data into a Data Lake in Real Time for AnalyticsVerizon Centralizes Data into a Data Lake in Real Time for Analytics
Verizon Centralizes Data into a Data Lake in Real Time for Analytics
 
Stream based Data Integration
Stream based Data IntegrationStream based Data Integration
Stream based Data Integration
 
Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...
Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...
Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...
 
A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...
A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...
A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...
 
Oracle NoSQL Database -- Big Data Bellevue Meetup - 02-18-15
Oracle NoSQL Database -- Big Data Bellevue Meetup - 02-18-15Oracle NoSQL Database -- Big Data Bellevue Meetup - 02-18-15
Oracle NoSQL Database -- Big Data Bellevue Meetup - 02-18-15
 

More from Jeffrey T. Pollock

Data Mesh Part 4 Monolith to Mesh
Data Mesh Part 4 Monolith to MeshData Mesh Part 4 Monolith to Mesh
Data Mesh Part 4 Monolith to Mesh
Jeffrey T. Pollock
 
Webinar Data Mesh - Part 3
Webinar Data Mesh - Part 3Webinar Data Mesh - Part 3
Webinar Data Mesh - Part 3
Jeffrey T. Pollock
 
Microservices Patterns with GoldenGate
Microservices Patterns with GoldenGateMicroservices Patterns with GoldenGate
Microservices Patterns with GoldenGate
Jeffrey T. Pollock
 
Flash session -streaming--ses1243-lon
Flash session -streaming--ses1243-lonFlash session -streaming--ses1243-lon
Flash session -streaming--ses1243-lon
Jeffrey T. Pollock
 
Flash session -goldengate--lht1053-lon
Flash session -goldengate--lht1053-lonFlash session -goldengate--lht1053-lon
Flash session -goldengate--lht1053-lon
Jeffrey T. Pollock
 
Version Control Training - First Lego League
Version Control Training - First Lego LeagueVersion Control Training - First Lego League
Version Control Training - First Lego League
Jeffrey T. Pollock
 
Oracle Stream Analytics - Developer Introduction
Oracle Stream Analytics - Developer IntroductionOracle Stream Analytics - Developer Introduction
Oracle Stream Analytics - Developer Introduction
Jeffrey T. Pollock
 
GoldenGate and Stream Processing with Special Guest Rakuten
GoldenGate and Stream Processing with Special Guest RakutenGoldenGate and Stream Processing with Special Guest Rakuten
GoldenGate and Stream Processing with Special Guest Rakuten
Jeffrey T. Pollock
 
Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!
Jeffrey T. Pollock
 
Accelerate Return on Data
Accelerate Return on DataAccelerate Return on Data
Accelerate Return on Data
Jeffrey T. Pollock
 
2009.10.22 S308460 Cloud Data Services
2009.10.22 S308460  Cloud Data Services2009.10.22 S308460  Cloud Data Services
2009.10.22 S308460 Cloud Data Services
Jeffrey T. Pollock
 
Semantic Web For Dummies
Semantic Web For DummiesSemantic Web For Dummies
Semantic Web For Dummies
Jeffrey T. Pollock
 

More from Jeffrey T. Pollock (12)

Data Mesh Part 4 Monolith to Mesh
Data Mesh Part 4 Monolith to MeshData Mesh Part 4 Monolith to Mesh
Data Mesh Part 4 Monolith to Mesh
 
Webinar Data Mesh - Part 3
Webinar Data Mesh - Part 3Webinar Data Mesh - Part 3
Webinar Data Mesh - Part 3
 
Microservices Patterns with GoldenGate
Microservices Patterns with GoldenGateMicroservices Patterns with GoldenGate
Microservices Patterns with GoldenGate
 
Flash session -streaming--ses1243-lon
Flash session -streaming--ses1243-lonFlash session -streaming--ses1243-lon
Flash session -streaming--ses1243-lon
 
Flash session -goldengate--lht1053-lon
Flash session -goldengate--lht1053-lonFlash session -goldengate--lht1053-lon
Flash session -goldengate--lht1053-lon
 
Version Control Training - First Lego League
Version Control Training - First Lego LeagueVersion Control Training - First Lego League
Version Control Training - First Lego League
 
Oracle Stream Analytics - Developer Introduction
Oracle Stream Analytics - Developer IntroductionOracle Stream Analytics - Developer Introduction
Oracle Stream Analytics - Developer Introduction
 
GoldenGate and Stream Processing with Special Guest Rakuten
GoldenGate and Stream Processing with Special Guest RakutenGoldenGate and Stream Processing with Special Guest Rakuten
GoldenGate and Stream Processing with Special Guest Rakuten
 
Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!
 
Accelerate Return on Data
Accelerate Return on DataAccelerate Return on Data
Accelerate Return on Data
 
2009.10.22 S308460 Cloud Data Services
2009.10.22 S308460  Cloud Data Services2009.10.22 S308460  Cloud Data Services
2009.10.22 S308460 Cloud Data Services
 
Semantic Web For Dummies
Semantic Web For DummiesSemantic Web For Dummies
Semantic Web For Dummies
 

Recently uploaded

GraphSummit Singapore | Graphing Success: Revolutionising Organisational Stru...
GraphSummit Singapore | Graphing Success: Revolutionising Organisational Stru...GraphSummit Singapore | Graphing Success: Revolutionising Organisational Stru...
GraphSummit Singapore | Graphing Success: Revolutionising Organisational Stru...
Neo4j
 
Climate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing DaysClimate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing Days
Kari Kakkonen
 
Generative AI Deep Dive: Advancing from Proof of Concept to Production
Generative AI Deep Dive: Advancing from Proof of Concept to ProductionGenerative AI Deep Dive: Advancing from Proof of Concept to Production
Generative AI Deep Dive: Advancing from Proof of Concept to Production
Aggregage
 
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
Neo4j
 
Essentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FMEEssentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FME
Safe Software
 
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
James Anderson
 
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
Edge AI and Vision Alliance
 
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Speck&Tech
 
Mind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AIMind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AI
Kumud Singh
 
How to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptxHow to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptx
danishmna97
 
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
名前 です男
 
Removing Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software FuzzingRemoving Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software Fuzzing
Aftab Hussain
 
20240609 QFM020 Irresponsible AI Reading List May 2024
20240609 QFM020 Irresponsible AI Reading List May 202420240609 QFM020 Irresponsible AI Reading List May 2024
20240609 QFM020 Irresponsible AI Reading List May 2024
Matthew Sinclair
 
20240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 202420240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 2024
Matthew Sinclair
 
Microsoft - Power Platform_G.Aspiotis.pdf
Microsoft - Power Platform_G.Aspiotis.pdfMicrosoft - Power Platform_G.Aspiotis.pdf
Microsoft - Power Platform_G.Aspiotis.pdf
Uni Systems S.M.S.A.
 
Building RAG with self-deployed Milvus vector database and Snowpark Container...
Building RAG with self-deployed Milvus vector database and Snowpark Container...Building RAG with self-deployed Milvus vector database and Snowpark Container...
Building RAG with self-deployed Milvus vector database and Snowpark Container...
Zilliz
 
A tale of scale & speed: How the US Navy is enabling software delivery from l...
A tale of scale & speed: How the US Navy is enabling software delivery from l...A tale of scale & speed: How the US Navy is enabling software delivery from l...
A tale of scale & speed: How the US Navy is enabling software delivery from l...
sonjaschweigert1
 
PCI PIN Basics Webinar from the Controlcase Team
PCI PIN Basics Webinar from the Controlcase TeamPCI PIN Basics Webinar from the Controlcase Team
PCI PIN Basics Webinar from the Controlcase Team
ControlCase
 
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
Neo4j
 
20240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 202420240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 2024
Matthew Sinclair
 

Recently uploaded (20)

GraphSummit Singapore | Graphing Success: Revolutionising Organisational Stru...
GraphSummit Singapore | Graphing Success: Revolutionising Organisational Stru...GraphSummit Singapore | Graphing Success: Revolutionising Organisational Stru...
GraphSummit Singapore | Graphing Success: Revolutionising Organisational Stru...
 
Climate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing DaysClimate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing Days
 
Generative AI Deep Dive: Advancing from Proof of Concept to Production
Generative AI Deep Dive: Advancing from Proof of Concept to ProductionGenerative AI Deep Dive: Advancing from Proof of Concept to Production
Generative AI Deep Dive: Advancing from Proof of Concept to Production
 
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
GraphSummit Singapore | Neo4j Product Vision & Roadmap - Q2 2024
 
Essentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FMEEssentials of Automations: The Art of Triggers and Actions in FME
Essentials of Automations: The Art of Triggers and Actions in FME
 
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
 
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
“Building and Scaling AI Applications with the Nx AI Manager,” a Presentation...
 
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
 
Mind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AIMind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AI
 
How to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptxHow to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptx
 
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
みなさんこんにちはこれ何文字まで入るの?40文字以下不可とか本当に意味わからないけどこれ限界文字数書いてないからマジでやばい文字数いけるんじゃないの?えこ...
 
Removing Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software FuzzingRemoving Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software Fuzzing
 
20240609 QFM020 Irresponsible AI Reading List May 2024
20240609 QFM020 Irresponsible AI Reading List May 202420240609 QFM020 Irresponsible AI Reading List May 2024
20240609 QFM020 Irresponsible AI Reading List May 2024
 
20240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 202420240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 2024
 
Microsoft - Power Platform_G.Aspiotis.pdf
Microsoft - Power Platform_G.Aspiotis.pdfMicrosoft - Power Platform_G.Aspiotis.pdf
Microsoft - Power Platform_G.Aspiotis.pdf
 
Building RAG with self-deployed Milvus vector database and Snowpark Container...
Building RAG with self-deployed Milvus vector database and Snowpark Container...Building RAG with self-deployed Milvus vector database and Snowpark Container...
Building RAG with self-deployed Milvus vector database and Snowpark Container...
 
A tale of scale & speed: How the US Navy is enabling software delivery from l...
A tale of scale & speed: How the US Navy is enabling software delivery from l...A tale of scale & speed: How the US Navy is enabling software delivery from l...
A tale of scale & speed: How the US Navy is enabling software delivery from l...
 
PCI PIN Basics Webinar from the Controlcase Team
PCI PIN Basics Webinar from the Controlcase TeamPCI PIN Basics Webinar from the Controlcase Team
PCI PIN Basics Webinar from the Controlcase Team
 
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
 
20240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 202420240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 2024
 

Oracle Data Integration - Overview

  • 1. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Oracle Data Integration INTRODUCTION, CORE CAPABILITIES AND INVESTMENT ROADMAP Jeff Pollock Vice President of Products Oracle Data Integration September, 2016 #OpenWorld 2016
  • 2. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Safe Harbor Statement The following is intended to outline our general product direction. It is intended for information purposes only, and may not be incorporated into any contract. It is not a commitment to deliver any material, code, or functionality, and should not be relied upon in making purchasing decisions. The development, release, and timing of any features or functionality described for Oracle’s products remains at the sole discretion of Oracle. #OpenWorld 2016 2
  • 3. Five Core Capabilities 1. Business ContinuityDATA ALWAYS AVAILABLE 2. Data Movement DATA ANYWHERE IT’S NEEDED 3. Data TransformationDATA ACCESSIBLE IN ANY FORMAT 4. Data GovernanceDATA THAT CAN BE TRUSTED 5. Streaming Data DATA IN MOTION OR AT RES
  • 4. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 4 Eight Core Products Cloud or On- Premise
  • 5. Most Innovative Technology #1 #1 Realtime / Streaming Data Integration Tool Pushdown / E-LT Data Integration Tool 1st to certify replication with Streaming Big Data 1st to certify E-LT tool with Apache Spark/Python 1st to power Data Preparation w/ML + NLP + Graph Data 1st to offer Self-Service & Hybrid Cloud solution
  • 6. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 Data Integration Products GOLDENGATE – DATA INTEGRATOR – DATA PREPARATION – STREAM ANALYTICS – DATAFLOW ML – METADATA MANAGEMENT – DATA QUALITY
  • 7. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Oracle GoldenGate Realtime Performance Extensible & Flexible Proven & Reliable Oracle GoldenGate provides low-impact capture, routing, transformation, and delivery of database transactions across homogeneous and heterogeneous environments in real-time with no distance limitations. Most Databases Data Events Transaction Streams Cloud DBs Big Data Supports Databases, Big Data and NoSQL: * The most popular enterprise integration tool in history 7
  • 8. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Oracle Data Integrator Bulk Data Performance Non Invasive Footprint Future Proof IT Skills Oracle Data Integrator provides high performance bulk data movement, massively parallel data transformation using database or big data technologies, and block-level data loading that leverages native data utilities Bulk Data Transformation Most Apps, Databases & Cloud Bulk Data Movement Cloud DBs Big Data 1000’s of customers – more than other ETL tools Flexible ELT workloads run anywhere: DBs, Big Data, Cloud Up to 2x faster batch processes and 3x more efficient tooling 8
  • 9. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Self-Service Better Recommendations Built-in Data Graph Zero software to install, easy to use browser based interface Better automation and less grunt work for humans Graph database of real-world facts used for enrichment Oracle Data Preparation ReportingApps Files ETL Oracle Data Preparation is a self-service tool that makes it simple to transform, prepare, enrich and standardize business data – it can help IT accelerate solutions for the Business by giving control of data formatting directly to data analysts. 9
  • 10. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Business Friendly Extreme Performance Spatial Awareness Oracle Stream Analytics DB Web / Devices Data Event Data & Transaction Streams Downstream (eg; Hadoop) Data Event Oracle Stream Analytics is a powerful analytic toolkit designed to work directly on data in motion – simple data correlations, complex event processing, geo-fencing, and advanced dashboards run on millions of events per second. Innovative dual model for Apache Spark or Coherence grid Simple to use spatial and geo- fencing features an industry first Includes Oracle GoldenGate for streaming transactions 10
  • 11. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Stream or Batch Data Spark based Pipelines ML-powered Profiling Oracle Dataflow ML Oracle Dataflow ML is big data solution for stream and batch processing in a single environment – Lambda based applications that can run streaming ETL for cloud based analytic solutions. Batch and stream processing at the same time Machine learning guides users for data profiling Data movement across Oracle PaaS services Most Apps, Databases & Cloud Bulk Data Movement Streaming Data Cloud DBs Big Data Big Data Pipeline 11
  • 12. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Business Glossary End-to-End Lineage 100+ Supported Systems Oracle Metadata Management Oracle Metadata Management provides an integrated toolkit that combines business glossary, workflow, metadata harvesting and rich data steward collaboration features. Supports Databases, Big Data, ETL Tools, BI Tools etc: BI Report Lineage Taxonomy Lineage Data Model Lineage 12
  • 13. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Simple to Use High Performance Matching Powerful DQ Rules Oracle Enterprise Data Quality Oracle Enterprise Data Quality establishes trusted business data by providing a foundation for data profiling, data standardization, match and merge capabilities and data cleansing. Profile, Standardize, Match, Merge and Cleanse your data DWMDM Apps ETL Health check for your data; quick & easy profiling and cleansing Intuitive business user friendly toolkit for quality rules Suitable for high performance Applications or Master Data 13
  • 14. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 Powerful Cloud Solutions For Data Integration
  • 15. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 15 Self-Service, Streaming or Batch Data Integration Data Integration Cloud Easy Self Service Data Preparation Machine Learning and Semantic Technology Streaming or Batch Integrations • Modern Lambda and Kappa style streaming applications for real-time data pipelines • ETL integrations for classical Data Warehousing, Data Marts and Operational Databases • Real-time Replication with Changed Data Capture • Point and click deployment of Replication services, ETL, and Dataflow pipeline services • Self-Service Data Preparation designed for non- programmers to prepare rich data transformations • Spark-based ML platform for Dataflow deployments • High value Natural Language Processing (NLP) and built-in data graph for Recommendation Service Data Preparation Streaming Applications ETL Data Processing Ingest from Sources Automate Publish
  • 16. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 16 Comprehensive and Differentiated Data Integration in the Public Cloud Data Integration Cloud – Core Capabilities Ground to Cloud Data Streams Pushdown ELT/ETL • GoldenGate realtime Replication from on-premise to Cloud • Data Integrator bulk data movement into Cloud • From on-premise to pipelines to analytics in sub-seconds • Ingest, move, transform and analyze data 100% in memory • Ultra-high performance ELT processing in Hadoop or DBaaS • Simple to choose which PaaS you want the workload to run streaming batch Pipelines Analytics batch data transformation
  • 17. Five Cloud Solutions 1. Data MigrationsREPEATABLE PROVEN DATA MIGRATION TOOLS 2. DW Integration ENABLE CLOUD DATA WAREHOUSE STRATEGIES 3. Dev & Test CloudOPERATE DEV-TEST DB’S IN CLOUD 4. Data High AvailabilityDATA RELIABILITY AT 99.999% SERVICE LEVELS 5. Heterogeneous Cloud BEST OF BREED FOR AMAZON AWS ETC.
  • 18. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Key Benefits – Online/Offline Migrations 3rd Party Cloud Support Database Migrations • Seamless data migration from older databases or poorly optimized Cloud services • Take advantage of newest Oracle DB versions in a simple subscription model • No data loss for phased / online migrations • Strong automation around provisioning and billing • Reliable and proven core GoldenGate technology • Migrate older Amazon RDS instances to Oracle • Data delivery from on-premise to 3rd party Clouds #OpenWorld 2016 18 Solution 1: Database Migrations in to Cloud On Premise RDS Oracle DBaaS I need to migrate my DBs to newer and less expensive systems
  • 19. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Key Capabilities: Comprehensive Solution 3rd Party Cloud Support Data Warehouse Integration • Operational or Advanced Analytics in the Cloud requires reliable data feeds • Work with data coming from on-premise data sources or other cloud sources • Prepare and Ingest data in realtime; built in support for replication and streaming ingestion to DW/Marts • Transform and Cleanse data; innovative approach allows workloads to run on different PaaS resources • Supports Amazon RDS databases and Redshift • Big data support with Kinesis and EMR #OpenWorld 2016 19 Solution 2: Data Warehouse Integration in the Cloud DW on Exadata Cloud Service UNSTRUCTUREDSTRUCTURED BI & Data Visualization RDS & REDSHIFT Help me run my analytics from the Cloud
  • 20. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Key Benefits: Automate Data Movement Oracle Database as a Service Database Dev-Test Environments • Keep development and test environments continuously in sync with minimum infrastructure or process overhead • Leverage automation rather than manual syncs • Low Overhead reduces manual and complex scripting • Repeatable approach standardizes DBA processes • Simple framework can be used across a variety of DBs • All Supported Oracle Versions regardless of what you have running on premise • Mix and match versions or patch levels #OpenWorld 2016 20 Solution 3: Dev & Test Systems in the Cloud On Premise Oracle DBaaS 12.1 & 12.2 10g & 11g Make my DBA job easier and more productive
  • 21. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Key Benefits for DBaaS Powerful Cloud Solution Regional High Availability • When you can’t afford to have your mission critical databases take downtime • Particularly necessary when disaster recover is necessary across regional datacenters • Standby Databases can be always on with Active Data Guard in the Cloud • Active-Active can enable you to take read/write transactions on all databases. • Strong Automation of service provisioning and billing • Oracle or Amazon Cloud operate active-active Oracle Database in any Cloud across regional data centers #OpenWorld 2016 21 Solution 4: High Availability for DBaaS in the Cloud Oracle DBaaS Datacenter Region 1 Active / Active Oracle DBaaS or Amazon RDS Datacenter Region 2 On Premise My business applications can not go down!
  • 22. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Heterogeneous and Complete Solution Bring Enterprise-strength to AWS • Advanced data integration and availability capabilities for Kinesis, EMR, Redshift and RDS • Proven data transfer rates of 10’s of thousands of DB transactions per second • Security controls work correctly across Amazon secure data centers • Flexible solution can leverage DB or Big Data from within the AWS services • Most Trusted data replication engine over all others • Top most popular ETL/ELT tool in worldwide market • Fastest growing data integration for big data • Oracle Data Integration is a heterogeneous capability that works across different data platforms and different cloud platforms. #OpenWorld 2016 22 Solution 5: Make Amazon AWS Enterprise Grade Oracle Database Active-Active Realtime Big Data GoldenGate Datacenter A Datacenter B GoldenGate Data Integrator
  • 23. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 Big Data Solutions For Data Integration & Governance
  • 24. Pragmatic Big Data Solutions 1. Data IngestionINDUSTRIAL STRENGTH DATA INGESTION LAYER 2. Transformations FUTURE-PROOF TOOLING FOR CODE GENERATION 3. GovernanceMETADATA LINEAGE AND BUSINESS GLOSSARY 4. ConnectorsHIGH SPEED PARALLEL LOADERS FOR BULK DATA 5. Streaming Big Data INGEST & ANALYTICS 100% IN-MEMORY
  • 25. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 25 Business Data Serving Layer Apps Analytics EDWsRaw Data Staging Data Discovery ETL Offload Batch Layer Data Streams Social and Logs Enterprise Data Highly Available Databases Databus (Pub/Sub) Streaming Analytics Streaming Data Pipelines ...Speed Layer data broadcasting & streaming data processing ...Batch Layer data processing for huge data volumes ...Serving Layer for consumption Pub / Sub REST APIs NoSQL Bulk Data Vision = Lambda/Kappa Databus (Pub/Sub) Speed Layer
  • 26. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 26 Hybrid Open-Source ...Open Source at the core of speed & batch processing engines ...Enterprise Vendor tools for connecting to existing IT system and ...Cloud Platforms for data fabric Business Data Serving Layer Apps Analytics Batch Layer Data Streams Social and Logs Enterprise Data Highly Available Databases Pub / Sub REST APIs NoSQL Bulk Data Speed Layer Raw Data Stream Processing Batch Processing Prepared Data
  • 27. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Examples #OpenWorld 2016 27 Reference Architecture Business Data Serving Layer Apps Analytics Batch Layer Data Streams Social and Logs Enterprise Data Highly Available Databases Pub / Sub REST APIs NoSQL Bulk Data Speed Layer GoldenGate Data Preparation Data Quality, Metadata Management & Business Glossary Oracle Data Integrator Active DataGuard Comprehensive architecture covers key areas – #1. Data Ingestion, #2. Data Preparation & Transformation, #3. Streaming Big Data, #4. Parallel Connectivity, and #5. Data Governance – and Oracle Data Integration has it covered. Dataflow ML Stream Analytics Connectors
  • 28. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | ApplicationsApplications DatabusApplications Speed Layer Batch Layer Capture Trail Route Deliver Pump #OpenWorld 2016 28 Streaming Analytics Application Serving Layer REST Services Visualization Tools Reporting Tools Data Marts User Updates DBMS Updates GoldenGate for Ingest GG GG Applications Serving Layer Speed Layer Batch Layer Platforms
  • 29. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 29 ODI for Transformations ETL Engines Big Data Frameworks Speed Layer Batch Layer Serving Layer ApplicationsApplications DatabusApplications Application REST Services Visualization Tools Reporting Tools Data Marts User Updates DBMS Updates Applications Serving Layer Speed Layer Batch Layer Oracle Data Integrator Spark Streaming Spark SQLSqoop ERP Oozie Pig Hive Loaders Kafka NoSQL OGG SQL
  • 30. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Data Catalog Speed Layer Batch Layer Serving Layer #OpenWorld 2016 30 OEMM for Data Governance ApplicationsApplications DatabusApplications Application REST Services Visualization Tools Reporting Tools Data Marts User Updates DBMS Updates Applications Serving Layer Speed Layer Batch Layer Kafka Generated Streaming Generated ETL CodeSqoop OLTP Databases HDFS Files HCatalog Hive NoSQL ETL Tools Data Warehouses BI Models ER Models Oracle Enterprise Metadata Management 140+ Supported Tools
  • 31. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | from Devices Batch Layer #OpenWorld 2016 31 Streaming Data ApplicationsApplications Databus Applications Speed Layer Serving Layer REST Services Visualization Tools Reporting Tools Data Marts Applications Serving Layer Speed Layer Batch Layer Oracle Stream Analytics Oracle Dataflow ML Oracle GoldenGate Application ApplicationsApplicationsDevices from Databases
  • 32. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 World Class Solutions For Data Integration & Governance
  • 33. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 33 140+ Open Source, Standards and Third Party Integrations  Adaptive  Altova  Apache HCatalog  Apache Hive/HQL  Borland  CA ERwin  Cloudera Impala  COBOL Copybook  DataStax  Embarcadero  EMC ProActivity  GentleWare  Google BigQuery  Grandite  Hadapt Hive  Hortonworks Hive  IBM Cognos  IBM DB2  IBM DataStage  IBM Discovery  IBM Federation Server  IBM Lotus Notes  IBM Netezza  IBM Rational Rose  IBM Rational Architect  Informatica Metadata Manager  Informatica PowerCenter  CoSORT  ISO SQL Standard (DDL)  MapR Hadoop Hive  MicroFocus  Microsoft Access  Microsoft Office Excel  Microsoft Visio  Microsoft SQL Server  Microsoft SSIS  Microsoft Visual Studio  Microstrategy  Magic Draw  OMG CWM Standard  OMG UML Standard  Oracle BI Answers  Oracle BI Enterprise Edition  Oracle BI Server  Oracle DAC  Oracle Data Integrator  Oracle Data Modeler  Oracle Database  Oracle Designer  Oracle Hyperion Applications  Oracle Hyperion Essbase  Oracle Warehouse Builder  Pivotal Greenplum  PostgreSQL  QlikView  SAP BO Crystal Reports  SAP BO Designer  SAP BO Desktop Intelligence  SAP BO Repository  SAP BO Data Integrator  SAP BO Data Steward  SAP Master Data Management  SAP Sybase PowerDesigner  SAP Sybase ASE Database  SAS Data Integration Studio  SAS BI Server  SAS Information Map  SAS Metadata Management  SAS OLAP Server  Select  Sparx Architect  Syncsort  Tableau  Talend  Teradata  Tigris  Visible  W3C DTD & XSD Schema Metadata Harvesting (Glossary, Lineage & Impact Analysis)Key Standards
  • 34. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 34 Data Integration Cloud Data Integration SaaS Data Quality DaaS Data Quality ODI on Big Data Cloud Service Data Preparation ODI Cloud Service Dataflow ML Cloud Service EDQ Cloud Service GoldenGate Cloud Service
  • 35. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 35 • Use Starbucks loyalty card to buy a Latte • Pay for a purchase with PayPal • Withdraw cash at an ATM from Bank of America, or Citibank, or Wells Fargo, or CapitalOne, or American Express, or JP Morgan Chase, or… most other banks in the world • Click on an Google AdWords link • Select a recommended item from EBay.com • Buy something from Amazon • Use a store coupon from Safeway • Browse the catalog from Overstock.com • Check flight availability on American Airlines • Use the Cartwheel App at Target stores • Take your General Motors car in for service • Go shopping at Macy’s online store on Black Friday • Deposit your payroll check issued by Paychex • Take care of your small business accounting on Quickbooks.com • Buy a song on Apple iTunes • Change your profile or add a skill on LinkedIn.com Everyday Moments
  • 36. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Presen- tations on: #OpenWorld 2016 36 Data Integration Solutions Program - tinyurl.com/DISOOW16 Demo Stations: Hands- on labs: Oracle Enterprise Metadata Management Oracle Enterprise Data Quality Oracle GoldenGate Oracle Data Integrator Oracle Big Data Preparation Cloud Service Oracle Enterprise Data Quality HOL7466 Oracle GoldenGate Deep Dive HOL7528 ODI and OGG for Big Data HOL7434 Oracle Big Data Preparation Cloud Service HOL7432 Middleware Demoground - Moscone South Big Data Showcase - Moscone South Database Demoground - Moscone South
  • 37. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | #OpenWorld 2016 37 Data Integration Solutions Program - tinyurl.com/DISOOW16 Monday, Sept 19 • Oracle Data Integration Solutions – Platform Overview and Roadmap [CON6619 ] • Oracle Data Integration: the Foundation for Cloud Integration [CON6620 ] • A Practical Path to Enterprise Data Governance with Cummins [CON6621] • Oracle Data Integrator Product Update and Strategy [CON6622] • Deep Dive into Oracle GoldenGate 12.3 New Features for the Oracle 12.2 Database [CON6555] Tuesday, Sept 20 • Oracle Big Data Integration in the Cloud [CON7472] • Oracle Data Integration Platform: a Cornerstone for Big Data [CON6624] • Oracle Data Integrator and Oracle GoldenGate for Big Data [HOL7434] • Oracle Enterprise Data Quality – Product Overview and Roadmap [CON6627] • Self Service Data Preparation for Domain Experts – No Programming Required [CON6630] • Oracle Big Data Preparation Cloud Service: Self-Service Data Prep for Business Users [HOL7432] • Oracle GoldenGate 12.3 Product Update and Strategy [CON6631] • New GoldenGate 12.3 Services Architecture [CON6551] • Meet the Experts: Oracle GoldenGate Cloud Service [MTE7119] Wednesday, Sept 21 • Data Quality for the Cloud: Enabling Cloud Applications with Trusted Data [CON6629] • Transforming Streaming Analytical Business Intelligence to Business Advantage [CON7352] • Oracle Enterprise Data Quality for All Types of Data [HOL7466] • Oracle GoldenGate for Big Data [CON6632] • Accelerate Cloud On-Boarding using Oracle GoldenGate Cloud Service [CON6633] • Oracle GoldenGate Deep Dive and Oracle GoldenGate Cloud Service for Cloud Onboarding [HOL7528] Thursday, Sept 22 • Best Practices for Migrating to Oracle Data Integrator [CON6623] • Best Practices for Oracle Data Integrator: Hear from the Experts [CON6625] • Dataflow, Machine Learning and Streaming Big Data Preparation [CON6626] • Data Governance with Oracle Enterprise Data Quality and Metadata Management [CON6628] • Faster Design, Development and Deployment with Oracle GoldenGate Studio [CON6634] • Getting started with Oracle GoldenGate [CON7318] • Best Practice for High Availability and Performance Tuning for Oracle GoldenGate [CON6558]
  • 38. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Connect with Oracle Data Integration @OracleDI Blogs.oracle.com/DataIntegration/ Oracle Data Integration Oracle Data Integration #OpenWorld 2016 38
  • 39.
  • 40. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Safe Harbor Statement The preceding is intended to outline our general product direction. It is intended for information purposes only, and may not be incorporated into any contract. It is not a commitment to deliver any material, code, or functionality, and should not be relied upon in making purchasing decisions. The development, release, and timing of any features or functionality described for Oracle’s products remains at the sole discretion of Oracle. #OpenWorld 2016 40