SlideShare a Scribd company logo
1 of 10
Download to read offline
Accelerate Cloud Migrations and
Architecture with Data Virtualization
Amit Mody
Sr. Manager, Accenture
2
Technology innovation at scale
Accenture develops and scales innovation serving 120 countries through an unparalleled network of more than 50 worldwide
Delivery Centers, comprising of Advanced Technology Centers and Intelligent Operations Centers.
• World’s largest modern software engineering practice - Everest Group
• 30+ years in software delivery excellence & 330K+ technology specialists
• We work with our leading ecosystem partners across digital, cloud, security, data
and analytics, automation, artificial intelligence, Blockchain | Multiparty systems &
industry X.0, IoT, as well as immersive experiences
• CloudFirst – $3B committed investment over next there years, 1500+ clients, 36K
projects with 80% of the global fortune 100 in 68 countries, 81K+ cloud certifications
in the MAAGs
• Data & AI – 30K+intelligent automation engineering service experts, 2.2K patents &
patents pending, 4K data scientists, 100+ technology alliances, 7 Data Innovation
Centers & Data Studios
• Security – 9 Global Cyber Fusion Centers, 1.5K security clients across 67 countries,
100M+ digital identities managed, 25M+ endpoints monitored, 5K security risks
mitigated per year
• Innovation – 8 R&D labs, 39 Liquid Studios globally, 2.3k issued and pending
patents globally in Accenture Labs, including 220 in the past year
• Application Management – 1.2K clients, 50+ delivery centers, 117K application
management professionals, 67K tickets managed per day
For more details on our delivery centers please visit - https://www.accenture.com/us-en/services/technology/delivery-centers
3
No real time access to the data
Time to market is the biggest issue – takes significant time
to create value from the data
Large Enterprises have Federated data landscape with
data distributed across cloud, on-prem and multi-cloud
There is not a centralized way of securing and governing
data
Significant increase in infrastructure and storage cost
Impediments in the current data environment
4
What is a Data Fabric?
01 02
Integrate data from disparate
data sources
Securely deliver an integrated view
of the different data objects
03 04 Automate the entire process using
AI/ML
Consume the integrated data for
analytics and operational
purposes
In Layman Terms
5
Data Virtualization: Logical Data Fabric
A logical data layer – a “data fabric” – that provides high-performant, real-time, and secure access to integrated
business views of disparate data across the enterprise
• Data abstraction: decoupling
applications/data usage from
data sources
• Data integration without
replication of physical data
• Easy access to any data, high
performant and real-time/
right-time
• Data catalog: for self/service data
services and easy discovery
• Unified metadata security &
governance across all data assets
• Data delivery, in any format with
intelligent query optimization that
leverages new and existing
physical data platforms
6
Logical Data Fabric vs. Physical Data Fabric
The Logical Data Fabric will significantly increase accessibility to the data and increase the speed to market
for new analytics initiatives and application integration.
The reduction of ETL by
Data Virtualization (DV)
Technology combined with
a Semantic layer can
deliver improved ROI
home-grown data platform
80% Time/Effort is spent in
Data Plumbing and only
20% is spent in Analysis
/Reporting and Generating
Insights
TODAY
TOMORROW
Today, Physical Data
Fabric focuses on:
• Daily Operations:
ETL, Batch Operations,
Infrastructure Updates,
Patches and Upgrades,
Security Compliance
• Rising Costs
And is missing:
• Data Catalog
• Data Lineage
• Data Quality
• Compliance
• Staff availability to
focus on deploying new
business features
Tomorrow, Data Fabric as
a Service:
• Removes all the
operational burden
• Provides a predicable cost
profile
• Adds Data Lineage,
Tagging and Data Catalog
And allows Business
to fully focus on:
• Deploying new business
features at speed
• Adopting a culture of
data stewardship and
data quality
7
How is Data Virtualization different from
incumbent approaches?
Data virtualization: alternate approach
• Time to Market – less than 3 months
• Ability to really be AGILE
• ROI– higher, returns after 1 yr to 3 yrs
• Data is delivered real-time, fresh from the source
• Distributed federated data accessible using a data wrapper (DV)
across all sources of data across clouds/on-premise as a single
source of data
• Suitability : Organizations with Decentralized structure and several
technologies and toolset , Several products , M&A strategy
• Compute cost for running the queries on the DV platform needs to be
factored in as you consider moving from the centralized DW to a DV
AS-IS Data Flow: Incumbent Tech
• Time to Market : typically, 1 yr
• ROI - Lower , takes about 5 to 7 yrs for returns to kick in.
• Leads to data quality and accuracy issues as a result of the
approach being tied to data movement and Batch.
• Creates data snapshot and silos as we move data from the
source system to the DW. Overtime, you would have copies of
data in multiple places
• Suitability : Data Transformation is required to the data and data
needs to be stored in a different schema. Organization with
strong central data governance in place
Although a technology solution, Data Virtualization has profound Business Implications on Information Agility and Faster decision making in the Enterprise.
8
HEALTHCARE – DATA BRIDGE – DEEP DIVE
THE CHALLENGE THE SOLUTION HIGHLIGHTS
• Client has traditional EDW set up in Teradata and
ODS is built on DB2
• Large number of business teams using Teradata to
build their own DataMart's on top of existing data
assets built through EDW/Data lake
• As client wants to reduce the use of Teradata and
move to data lake Gold layer built on Hadoop.
• Client also has road map to move data assets to
cloud
• Business was not willing to change their approach
on moving from Teradata to data lake
• Business teams pointed multiple challenges
related to data asset migration
• Accenture proposed Data bridge solution
• As part of this solution Denodo was selected
as DV tool along with Spring boot and
ReactJS technologies to build subscription
driven data virtualization
• Business teams doesn’t need to know where
the data is coming from and not required to
build their Datamart's on Teradata
• This approach would help IT move data
assets to cloud in phased manner and
migrate assets to new data technologies
without impacting business needs
• Accenture completed PoC and showed the
results to client based on PoC client went
ahead procured Denodo as DV tool
• Accenture solution also helped to get
business approval to move forward with
solution
• This approach would reduced overhead on
Teradata and business will focus more data
analytics
Company Profile
Client is the largest customer-owned health insurance company in the United States. It offers a wide variety of health and life insurance. The company employs nearly 23,000
people and serves nearly 16 million members. Revenue - $35.9 bn products and related services, through its operating divisions and subsidiaries
9
HEALTHCARE – DATA BRIDGE – OVERVIEW
Solution Architecture
Illustrative
Illustrative
1 Trusted data sources are registered
2
User interfaces provides ability to
connect new data sources and
define semantic views (business
friendly views)
3
Workflow to execute approval
processes and automate manual
process
4
Virtualization layer Denodo
connects to any trusted data source
5
Semantic views provide business
friendly representation of data
6
Subscription repository maintains
record of subscriber info (who, what,
where and how)
7
Data pushed to consuming apps
based on subscription details
SQL
/
JDBC
/
ODBC
DATA
SOURCES
Curated Data
Assets
Domain Data
Assets
Integrated Data
Assets
EDW
SUBSCRIPTION
REPOSITORY
Subscriber 1
Subscriber 2
Subscriber 3
Subscriber N
CONSUMING
APPS
(Gemfire)
File
Teradata
Cloud DB
USERS
VIRTUAL
DB
SEMANTIC
VIEW
USER INTERFACE WORKFLOW
DATA BRIDGE
1
2 3
4 5 6 7
© Copyright Denodo Technologies. All rights reserved
Unless otherwise specified, no part of this PDF file may be reproduced or utilized in any for or by any means, electronic or mechanical, including photocopying and microfilm,
without prior the written authorization from Denodo Technologies.

More Related Content

Similar to Accelerate Cloud Migrations and Architecture with Data Virtualization

Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)Nathan Bijnens
 
Foundational Strategies for Trusted Data: Getting Your Data to the Cloud
Foundational Strategies for Trusted Data: Getting Your Data to the CloudFoundational Strategies for Trusted Data: Getting Your Data to the Cloud
Foundational Strategies for Trusted Data: Getting Your Data to the CloudPrecisely
 
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...Precisely
 
Making the Case for Legacy Data in Modern Data Analytics Platforms
Making the Case for Legacy Data in Modern Data Analytics PlatformsMaking the Case for Legacy Data in Modern Data Analytics Platforms
Making the Case for Legacy Data in Modern Data Analytics PlatformsPrecisely
 
Evolving From Monolithic to Distributed Architecture Patterns in the Cloud
Evolving From Monolithic to Distributed Architecture Patterns in the CloudEvolving From Monolithic to Distributed Architecture Patterns in the Cloud
Evolving From Monolithic to Distributed Architecture Patterns in the CloudDenodo
 
¿En qué se parece el Gobierno del Dato a un parque de atracciones?
¿En qué se parece el Gobierno del Dato a un parque de atracciones?¿En qué se parece el Gobierno del Dato a un parque de atracciones?
¿En qué se parece el Gobierno del Dato a un parque de atracciones?Denodo
 
IBM Relay 2015: Open for Data
IBM Relay 2015: Open for Data IBM Relay 2015: Open for Data
IBM Relay 2015: Open for Data IBM
 
Maximizing Oil and Gas (Data) Asset Utilization with a Logical Data Fabric (A...
Maximizing Oil and Gas (Data) Asset Utilization with a Logical Data Fabric (A...Maximizing Oil and Gas (Data) Asset Utilization with a Logical Data Fabric (A...
Maximizing Oil and Gas (Data) Asset Utilization with a Logical Data Fabric (A...Denodo
 
A Key to Real-time Insights in a Post-COVID World (ASEAN)
A Key to Real-time Insights in a Post-COVID World (ASEAN)A Key to Real-time Insights in a Post-COVID World (ASEAN)
A Key to Real-time Insights in a Post-COVID World (ASEAN)Denodo
 
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...Denodo
 
MasterClass Series: Unlocking Data Sharing Velocity with Data Virtualization
MasterClass Series: Unlocking Data Sharing Velocity with Data VirtualizationMasterClass Series: Unlocking Data Sharing Velocity with Data Virtualization
MasterClass Series: Unlocking Data Sharing Velocity with Data VirtualizationDenodo
 
Quicker Insights and Sustainable Business Agility Powered By Data Virtualizat...
Quicker Insights and Sustainable Business Agility Powered By Data Virtualizat...Quicker Insights and Sustainable Business Agility Powered By Data Virtualizat...
Quicker Insights and Sustainable Business Agility Powered By Data Virtualizat...Denodo
 
451 Research + NuoDB: What It Means to be a Container-Native SQL Database
451 Research + NuoDB: What It Means to be a Container-Native SQL Database451 Research + NuoDB: What It Means to be a Container-Native SQL Database
451 Research + NuoDB: What It Means to be a Container-Native SQL DatabaseNuoDB
 
Simplifying Your Cloud Architecture with a Logical Data Fabric (APAC)
Simplifying Your Cloud Architecture with a Logical Data Fabric (APAC)Simplifying Your Cloud Architecture with a Logical Data Fabric (APAC)
Simplifying Your Cloud Architecture with a Logical Data Fabric (APAC)Denodo
 
The Shifting Landscape of Data Integration
The Shifting Landscape of Data IntegrationThe Shifting Landscape of Data Integration
The Shifting Landscape of Data IntegrationDATAVERSITY
 
Enabling Next Gen Analytics with Azure Data Lake and StreamSets
Enabling Next Gen Analytics with Azure Data Lake and StreamSetsEnabling Next Gen Analytics with Azure Data Lake and StreamSets
Enabling Next Gen Analytics with Azure Data Lake and StreamSetsStreamsets Inc.
 
Foundational Strategies for Trusted Data: Getting Your Data to the Cloud
Foundational Strategies for Trusted Data: Getting Your Data to the CloudFoundational Strategies for Trusted Data: Getting Your Data to the Cloud
Foundational Strategies for Trusted Data: Getting Your Data to the CloudPrecisely
 
2022 Trends in Enterprise Analytics
2022 Trends in Enterprise Analytics2022 Trends in Enterprise Analytics
2022 Trends in Enterprise AnalyticsDATAVERSITY
 
Accelerate Migration to the Cloud using Data Virtualization (APAC)
Accelerate Migration to the Cloud using Data Virtualization (APAC)Accelerate Migration to the Cloud using Data Virtualization (APAC)
Accelerate Migration to the Cloud using Data Virtualization (APAC)Denodo
 
Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...
Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...
Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...Precisely
 

Similar to Accelerate Cloud Migrations and Architecture with Data Virtualization (20)

Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)
 
Foundational Strategies for Trusted Data: Getting Your Data to the Cloud
Foundational Strategies for Trusted Data: Getting Your Data to the CloudFoundational Strategies for Trusted Data: Getting Your Data to the Cloud
Foundational Strategies for Trusted Data: Getting Your Data to the Cloud
 
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
 
Making the Case for Legacy Data in Modern Data Analytics Platforms
Making the Case for Legacy Data in Modern Data Analytics PlatformsMaking the Case for Legacy Data in Modern Data Analytics Platforms
Making the Case for Legacy Data in Modern Data Analytics Platforms
 
Evolving From Monolithic to Distributed Architecture Patterns in the Cloud
Evolving From Monolithic to Distributed Architecture Patterns in the CloudEvolving From Monolithic to Distributed Architecture Patterns in the Cloud
Evolving From Monolithic to Distributed Architecture Patterns in the Cloud
 
¿En qué se parece el Gobierno del Dato a un parque de atracciones?
¿En qué se parece el Gobierno del Dato a un parque de atracciones?¿En qué se parece el Gobierno del Dato a un parque de atracciones?
¿En qué se parece el Gobierno del Dato a un parque de atracciones?
 
IBM Relay 2015: Open for Data
IBM Relay 2015: Open for Data IBM Relay 2015: Open for Data
IBM Relay 2015: Open for Data
 
Maximizing Oil and Gas (Data) Asset Utilization with a Logical Data Fabric (A...
Maximizing Oil and Gas (Data) Asset Utilization with a Logical Data Fabric (A...Maximizing Oil and Gas (Data) Asset Utilization with a Logical Data Fabric (A...
Maximizing Oil and Gas (Data) Asset Utilization with a Logical Data Fabric (A...
 
A Key to Real-time Insights in a Post-COVID World (ASEAN)
A Key to Real-time Insights in a Post-COVID World (ASEAN)A Key to Real-time Insights in a Post-COVID World (ASEAN)
A Key to Real-time Insights in a Post-COVID World (ASEAN)
 
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
 
MasterClass Series: Unlocking Data Sharing Velocity with Data Virtualization
MasterClass Series: Unlocking Data Sharing Velocity with Data VirtualizationMasterClass Series: Unlocking Data Sharing Velocity with Data Virtualization
MasterClass Series: Unlocking Data Sharing Velocity with Data Virtualization
 
Quicker Insights and Sustainable Business Agility Powered By Data Virtualizat...
Quicker Insights and Sustainable Business Agility Powered By Data Virtualizat...Quicker Insights and Sustainable Business Agility Powered By Data Virtualizat...
Quicker Insights and Sustainable Business Agility Powered By Data Virtualizat...
 
451 Research + NuoDB: What It Means to be a Container-Native SQL Database
451 Research + NuoDB: What It Means to be a Container-Native SQL Database451 Research + NuoDB: What It Means to be a Container-Native SQL Database
451 Research + NuoDB: What It Means to be a Container-Native SQL Database
 
Simplifying Your Cloud Architecture with a Logical Data Fabric (APAC)
Simplifying Your Cloud Architecture with a Logical Data Fabric (APAC)Simplifying Your Cloud Architecture with a Logical Data Fabric (APAC)
Simplifying Your Cloud Architecture with a Logical Data Fabric (APAC)
 
The Shifting Landscape of Data Integration
The Shifting Landscape of Data IntegrationThe Shifting Landscape of Data Integration
The Shifting Landscape of Data Integration
 
Enabling Next Gen Analytics with Azure Data Lake and StreamSets
Enabling Next Gen Analytics with Azure Data Lake and StreamSetsEnabling Next Gen Analytics with Azure Data Lake and StreamSets
Enabling Next Gen Analytics with Azure Data Lake and StreamSets
 
Foundational Strategies for Trusted Data: Getting Your Data to the Cloud
Foundational Strategies for Trusted Data: Getting Your Data to the CloudFoundational Strategies for Trusted Data: Getting Your Data to the Cloud
Foundational Strategies for Trusted Data: Getting Your Data to the Cloud
 
2022 Trends in Enterprise Analytics
2022 Trends in Enterprise Analytics2022 Trends in Enterprise Analytics
2022 Trends in Enterprise Analytics
 
Accelerate Migration to the Cloud using Data Virtualization (APAC)
Accelerate Migration to the Cloud using Data Virtualization (APAC)Accelerate Migration to the Cloud using Data Virtualization (APAC)
Accelerate Migration to the Cloud using Data Virtualization (APAC)
 
Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...
Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...
Introducing Trillium DQ for Big Data: Powerful Profiling and Data Quality for...
 

More from Denodo

Enterprise Monitoring and Auditing in Denodo
Enterprise Monitoring and Auditing in DenodoEnterprise Monitoring and Auditing in Denodo
Enterprise Monitoring and Auditing in DenodoDenodo
 
Lunch and Learn ANZ: Mastering Cloud Data Cost Control: A FinOps Approach
Lunch and Learn ANZ: Mastering Cloud Data Cost Control: A FinOps ApproachLunch and Learn ANZ: Mastering Cloud Data Cost Control: A FinOps Approach
Lunch and Learn ANZ: Mastering Cloud Data Cost Control: A FinOps ApproachDenodo
 
Achieving Self-Service Analytics with a Governed Data Services Layer
Achieving Self-Service Analytics with a Governed Data Services LayerAchieving Self-Service Analytics with a Governed Data Services Layer
Achieving Self-Service Analytics with a Governed Data Services LayerDenodo
 
What you need to know about Generative AI and Data Management?
What you need to know about Generative AI and Data Management?What you need to know about Generative AI and Data Management?
What you need to know about Generative AI and Data Management?Denodo
 
Mastering Data Compliance in a Dynamic Business Landscape
Mastering Data Compliance in a Dynamic Business LandscapeMastering Data Compliance in a Dynamic Business Landscape
Mastering Data Compliance in a Dynamic Business LandscapeDenodo
 
Denodo Partner Connect: Business Value Demo with Denodo Demo Lite
Denodo Partner Connect: Business Value Demo with Denodo Demo LiteDenodo Partner Connect: Business Value Demo with Denodo Demo Lite
Denodo Partner Connect: Business Value Demo with Denodo Demo LiteDenodo
 
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...Denodo
 
Drive Data Privacy Regulatory Compliance
Drive Data Privacy Regulatory ComplianceDrive Data Privacy Regulatory Compliance
Drive Data Privacy Regulatory ComplianceDenodo
 
Знакомство с виртуализацией данных для профессионалов в области данных
Знакомство с виртуализацией данных для профессионалов в области данныхЗнакомство с виртуализацией данных для профессионалов в области данных
Знакомство с виртуализацией данных для профессионалов в области данныхDenodo
 
Data Democratization: A Secret Sauce to Say Goodbye to Data Fragmentation
Data Democratization: A Secret Sauce to Say Goodbye to Data FragmentationData Democratization: A Secret Sauce to Say Goodbye to Data Fragmentation
Data Democratization: A Secret Sauce to Say Goodbye to Data FragmentationDenodo
 
Denodo Partner Connect - Technical Webinar - Ask Me Anything
Denodo Partner Connect - Technical Webinar - Ask Me AnythingDenodo Partner Connect - Technical Webinar - Ask Me Anything
Denodo Partner Connect - Technical Webinar - Ask Me AnythingDenodo
 
Lunch and Learn ANZ: Key Takeaways for 2023!
Lunch and Learn ANZ: Key Takeaways for 2023!Lunch and Learn ANZ: Key Takeaways for 2023!
Lunch and Learn ANZ: Key Takeaways for 2023!Denodo
 
It’s a Wrap! 2023 – A Groundbreaking Year for AI and The Way Forward
It’s a Wrap! 2023 – A Groundbreaking Year for AI and The Way ForwardIt’s a Wrap! 2023 – A Groundbreaking Year for AI and The Way Forward
It’s a Wrap! 2023 – A Groundbreaking Year for AI and The Way ForwardDenodo
 
Quels sont les facteurs-clés de succès pour appliquer au mieux le RGPD à votr...
Quels sont les facteurs-clés de succès pour appliquer au mieux le RGPD à votr...Quels sont les facteurs-clés de succès pour appliquer au mieux le RGPD à votr...
Quels sont les facteurs-clés de succès pour appliquer au mieux le RGPD à votr...Denodo
 
Lunch and Learn ANZ: Achieving Self-Service Analytics with a Governed Data Se...
Lunch and Learn ANZ: Achieving Self-Service Analytics with a Governed Data Se...Lunch and Learn ANZ: Achieving Self-Service Analytics with a Governed Data Se...
Lunch and Learn ANZ: Achieving Self-Service Analytics with a Governed Data Se...Denodo
 
How to Build Your Data Marketplace with Data Virtualization?
How to Build Your Data Marketplace with Data Virtualization?How to Build Your Data Marketplace with Data Virtualization?
How to Build Your Data Marketplace with Data Virtualization?Denodo
 
Webinar #2 - Transforming Challenges into Opportunities for Credit Unions
Webinar #2 - Transforming Challenges into Opportunities for Credit UnionsWebinar #2 - Transforming Challenges into Opportunities for Credit Unions
Webinar #2 - Transforming Challenges into Opportunities for Credit UnionsDenodo
 
Enabling Data Catalog users with advanced usability
Enabling Data Catalog users with advanced usabilityEnabling Data Catalog users with advanced usability
Enabling Data Catalog users with advanced usabilityDenodo
 
Denodo Partner Connect: Technical Webinar - Architect Associate Certification...
Denodo Partner Connect: Technical Webinar - Architect Associate Certification...Denodo Partner Connect: Technical Webinar - Architect Associate Certification...
Denodo Partner Connect: Technical Webinar - Architect Associate Certification...Denodo
 
GenAI y el futuro de la gestión de datos: mitos y realidades
GenAI y el futuro de la gestión de datos: mitos y realidadesGenAI y el futuro de la gestión de datos: mitos y realidades
GenAI y el futuro de la gestión de datos: mitos y realidadesDenodo
 

More from Denodo (20)

Enterprise Monitoring and Auditing in Denodo
Enterprise Monitoring and Auditing in DenodoEnterprise Monitoring and Auditing in Denodo
Enterprise Monitoring and Auditing in Denodo
 
Lunch and Learn ANZ: Mastering Cloud Data Cost Control: A FinOps Approach
Lunch and Learn ANZ: Mastering Cloud Data Cost Control: A FinOps ApproachLunch and Learn ANZ: Mastering Cloud Data Cost Control: A FinOps Approach
Lunch and Learn ANZ: Mastering Cloud Data Cost Control: A FinOps Approach
 
Achieving Self-Service Analytics with a Governed Data Services Layer
Achieving Self-Service Analytics with a Governed Data Services LayerAchieving Self-Service Analytics with a Governed Data Services Layer
Achieving Self-Service Analytics with a Governed Data Services Layer
 
What you need to know about Generative AI and Data Management?
What you need to know about Generative AI and Data Management?What you need to know about Generative AI and Data Management?
What you need to know about Generative AI and Data Management?
 
Mastering Data Compliance in a Dynamic Business Landscape
Mastering Data Compliance in a Dynamic Business LandscapeMastering Data Compliance in a Dynamic Business Landscape
Mastering Data Compliance in a Dynamic Business Landscape
 
Denodo Partner Connect: Business Value Demo with Denodo Demo Lite
Denodo Partner Connect: Business Value Demo with Denodo Demo LiteDenodo Partner Connect: Business Value Demo with Denodo Demo Lite
Denodo Partner Connect: Business Value Demo with Denodo Demo Lite
 
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...
Expert Panel: Overcoming Challenges with Distributed Data to Maximize Busines...
 
Drive Data Privacy Regulatory Compliance
Drive Data Privacy Regulatory ComplianceDrive Data Privacy Regulatory Compliance
Drive Data Privacy Regulatory Compliance
 
Знакомство с виртуализацией данных для профессионалов в области данных
Знакомство с виртуализацией данных для профессионалов в области данныхЗнакомство с виртуализацией данных для профессионалов в области данных
Знакомство с виртуализацией данных для профессионалов в области данных
 
Data Democratization: A Secret Sauce to Say Goodbye to Data Fragmentation
Data Democratization: A Secret Sauce to Say Goodbye to Data FragmentationData Democratization: A Secret Sauce to Say Goodbye to Data Fragmentation
Data Democratization: A Secret Sauce to Say Goodbye to Data Fragmentation
 
Denodo Partner Connect - Technical Webinar - Ask Me Anything
Denodo Partner Connect - Technical Webinar - Ask Me AnythingDenodo Partner Connect - Technical Webinar - Ask Me Anything
Denodo Partner Connect - Technical Webinar - Ask Me Anything
 
Lunch and Learn ANZ: Key Takeaways for 2023!
Lunch and Learn ANZ: Key Takeaways for 2023!Lunch and Learn ANZ: Key Takeaways for 2023!
Lunch and Learn ANZ: Key Takeaways for 2023!
 
It’s a Wrap! 2023 – A Groundbreaking Year for AI and The Way Forward
It’s a Wrap! 2023 – A Groundbreaking Year for AI and The Way ForwardIt’s a Wrap! 2023 – A Groundbreaking Year for AI and The Way Forward
It’s a Wrap! 2023 – A Groundbreaking Year for AI and The Way Forward
 
Quels sont les facteurs-clés de succès pour appliquer au mieux le RGPD à votr...
Quels sont les facteurs-clés de succès pour appliquer au mieux le RGPD à votr...Quels sont les facteurs-clés de succès pour appliquer au mieux le RGPD à votr...
Quels sont les facteurs-clés de succès pour appliquer au mieux le RGPD à votr...
 
Lunch and Learn ANZ: Achieving Self-Service Analytics with a Governed Data Se...
Lunch and Learn ANZ: Achieving Self-Service Analytics with a Governed Data Se...Lunch and Learn ANZ: Achieving Self-Service Analytics with a Governed Data Se...
Lunch and Learn ANZ: Achieving Self-Service Analytics with a Governed Data Se...
 
How to Build Your Data Marketplace with Data Virtualization?
How to Build Your Data Marketplace with Data Virtualization?How to Build Your Data Marketplace with Data Virtualization?
How to Build Your Data Marketplace with Data Virtualization?
 
Webinar #2 - Transforming Challenges into Opportunities for Credit Unions
Webinar #2 - Transforming Challenges into Opportunities for Credit UnionsWebinar #2 - Transforming Challenges into Opportunities for Credit Unions
Webinar #2 - Transforming Challenges into Opportunities for Credit Unions
 
Enabling Data Catalog users with advanced usability
Enabling Data Catalog users with advanced usabilityEnabling Data Catalog users with advanced usability
Enabling Data Catalog users with advanced usability
 
Denodo Partner Connect: Technical Webinar - Architect Associate Certification...
Denodo Partner Connect: Technical Webinar - Architect Associate Certification...Denodo Partner Connect: Technical Webinar - Architect Associate Certification...
Denodo Partner Connect: Technical Webinar - Architect Associate Certification...
 
GenAI y el futuro de la gestión de datos: mitos y realidades
GenAI y el futuro de la gestión de datos: mitos y realidadesGenAI y el futuro de la gestión de datos: mitos y realidades
GenAI y el futuro de la gestión de datos: mitos y realidades
 

Recently uploaded

VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...Suhani Kapoor
 
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130Suhani Kapoor
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptxthyngster
 
RA-11058_IRR-COMPRESS Do 198 series of 1998
RA-11058_IRR-COMPRESS Do 198 series of 1998RA-11058_IRR-COMPRESS Do 198 series of 1998
RA-11058_IRR-COMPRESS Do 198 series of 1998YohFuh
 
GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]📊 Markus Baersch
 
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一F sss
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...dajasot375
 
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...ThinkInnovation
 
{Pooja: 9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...
{Pooja:  9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...{Pooja:  9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...
{Pooja: 9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...Pooja Nehwal
 
Schema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfSchema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfLars Albertsson
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDRafezzaman
 
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...Suhani Kapoor
 
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...Florian Roscheck
 
Call Girls In Mahipalpur O9654467111 Escorts Service
Call Girls In Mahipalpur O9654467111  Escorts ServiceCall Girls In Mahipalpur O9654467111  Escorts Service
Call Girls In Mahipalpur O9654467111 Escorts ServiceSapana Sha
 
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改atducpo
 
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptdokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptSonatrach
 
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPramod Kumar Srivastava
 
Data Science Jobs and Salaries Analysis.pptx
Data Science Jobs and Salaries Analysis.pptxData Science Jobs and Salaries Analysis.pptx
Data Science Jobs and Salaries Analysis.pptxFurkanTasci3
 
9654467111 Call Girls In Munirka Hotel And Home Service
9654467111 Call Girls In Munirka Hotel And Home Service9654467111 Call Girls In Munirka Hotel And Home Service
9654467111 Call Girls In Munirka Hotel And Home ServiceSapana Sha
 

Recently uploaded (20)

VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
 
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
 
RA-11058_IRR-COMPRESS Do 198 series of 1998
RA-11058_IRR-COMPRESS Do 198 series of 1998RA-11058_IRR-COMPRESS Do 198 series of 1998
RA-11058_IRR-COMPRESS Do 198 series of 1998
 
GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]
 
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
 
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...
 
{Pooja: 9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...
{Pooja:  9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...{Pooja:  9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...
{Pooja: 9892124323 } Call Girl in Mumbai | Jas Kaur Rate 4500 Free Hotel Del...
 
Schema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfSchema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdf
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
 
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
 
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
 
Call Girls In Mahipalpur O9654467111 Escorts Service
Call Girls In Mahipalpur O9654467111  Escorts ServiceCall Girls In Mahipalpur O9654467111  Escorts Service
Call Girls In Mahipalpur O9654467111 Escorts Service
 
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
 
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptdokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
 
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
 
Data Science Jobs and Salaries Analysis.pptx
Data Science Jobs and Salaries Analysis.pptxData Science Jobs and Salaries Analysis.pptx
Data Science Jobs and Salaries Analysis.pptx
 
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
 
9654467111 Call Girls In Munirka Hotel And Home Service
9654467111 Call Girls In Munirka Hotel And Home Service9654467111 Call Girls In Munirka Hotel And Home Service
9654467111 Call Girls In Munirka Hotel And Home Service
 

Accelerate Cloud Migrations and Architecture with Data Virtualization

  • 1. Accelerate Cloud Migrations and Architecture with Data Virtualization Amit Mody Sr. Manager, Accenture
  • 2. 2 Technology innovation at scale Accenture develops and scales innovation serving 120 countries through an unparalleled network of more than 50 worldwide Delivery Centers, comprising of Advanced Technology Centers and Intelligent Operations Centers. • World’s largest modern software engineering practice - Everest Group • 30+ years in software delivery excellence & 330K+ technology specialists • We work with our leading ecosystem partners across digital, cloud, security, data and analytics, automation, artificial intelligence, Blockchain | Multiparty systems & industry X.0, IoT, as well as immersive experiences • CloudFirst – $3B committed investment over next there years, 1500+ clients, 36K projects with 80% of the global fortune 100 in 68 countries, 81K+ cloud certifications in the MAAGs • Data & AI – 30K+intelligent automation engineering service experts, 2.2K patents & patents pending, 4K data scientists, 100+ technology alliances, 7 Data Innovation Centers & Data Studios • Security – 9 Global Cyber Fusion Centers, 1.5K security clients across 67 countries, 100M+ digital identities managed, 25M+ endpoints monitored, 5K security risks mitigated per year • Innovation – 8 R&D labs, 39 Liquid Studios globally, 2.3k issued and pending patents globally in Accenture Labs, including 220 in the past year • Application Management – 1.2K clients, 50+ delivery centers, 117K application management professionals, 67K tickets managed per day For more details on our delivery centers please visit - https://www.accenture.com/us-en/services/technology/delivery-centers
  • 3. 3 No real time access to the data Time to market is the biggest issue – takes significant time to create value from the data Large Enterprises have Federated data landscape with data distributed across cloud, on-prem and multi-cloud There is not a centralized way of securing and governing data Significant increase in infrastructure and storage cost Impediments in the current data environment
  • 4. 4 What is a Data Fabric? 01 02 Integrate data from disparate data sources Securely deliver an integrated view of the different data objects 03 04 Automate the entire process using AI/ML Consume the integrated data for analytics and operational purposes In Layman Terms
  • 5. 5 Data Virtualization: Logical Data Fabric A logical data layer – a “data fabric” – that provides high-performant, real-time, and secure access to integrated business views of disparate data across the enterprise • Data abstraction: decoupling applications/data usage from data sources • Data integration without replication of physical data • Easy access to any data, high performant and real-time/ right-time • Data catalog: for self/service data services and easy discovery • Unified metadata security & governance across all data assets • Data delivery, in any format with intelligent query optimization that leverages new and existing physical data platforms
  • 6. 6 Logical Data Fabric vs. Physical Data Fabric The Logical Data Fabric will significantly increase accessibility to the data and increase the speed to market for new analytics initiatives and application integration. The reduction of ETL by Data Virtualization (DV) Technology combined with a Semantic layer can deliver improved ROI home-grown data platform 80% Time/Effort is spent in Data Plumbing and only 20% is spent in Analysis /Reporting and Generating Insights TODAY TOMORROW Today, Physical Data Fabric focuses on: • Daily Operations: ETL, Batch Operations, Infrastructure Updates, Patches and Upgrades, Security Compliance • Rising Costs And is missing: • Data Catalog • Data Lineage • Data Quality • Compliance • Staff availability to focus on deploying new business features Tomorrow, Data Fabric as a Service: • Removes all the operational burden • Provides a predicable cost profile • Adds Data Lineage, Tagging and Data Catalog And allows Business to fully focus on: • Deploying new business features at speed • Adopting a culture of data stewardship and data quality
  • 7. 7 How is Data Virtualization different from incumbent approaches? Data virtualization: alternate approach • Time to Market – less than 3 months • Ability to really be AGILE • ROI– higher, returns after 1 yr to 3 yrs • Data is delivered real-time, fresh from the source • Distributed federated data accessible using a data wrapper (DV) across all sources of data across clouds/on-premise as a single source of data • Suitability : Organizations with Decentralized structure and several technologies and toolset , Several products , M&A strategy • Compute cost for running the queries on the DV platform needs to be factored in as you consider moving from the centralized DW to a DV AS-IS Data Flow: Incumbent Tech • Time to Market : typically, 1 yr • ROI - Lower , takes about 5 to 7 yrs for returns to kick in. • Leads to data quality and accuracy issues as a result of the approach being tied to data movement and Batch. • Creates data snapshot and silos as we move data from the source system to the DW. Overtime, you would have copies of data in multiple places • Suitability : Data Transformation is required to the data and data needs to be stored in a different schema. Organization with strong central data governance in place Although a technology solution, Data Virtualization has profound Business Implications on Information Agility and Faster decision making in the Enterprise.
  • 8. 8 HEALTHCARE – DATA BRIDGE – DEEP DIVE THE CHALLENGE THE SOLUTION HIGHLIGHTS • Client has traditional EDW set up in Teradata and ODS is built on DB2 • Large number of business teams using Teradata to build their own DataMart's on top of existing data assets built through EDW/Data lake • As client wants to reduce the use of Teradata and move to data lake Gold layer built on Hadoop. • Client also has road map to move data assets to cloud • Business was not willing to change their approach on moving from Teradata to data lake • Business teams pointed multiple challenges related to data asset migration • Accenture proposed Data bridge solution • As part of this solution Denodo was selected as DV tool along with Spring boot and ReactJS technologies to build subscription driven data virtualization • Business teams doesn’t need to know where the data is coming from and not required to build their Datamart's on Teradata • This approach would help IT move data assets to cloud in phased manner and migrate assets to new data technologies without impacting business needs • Accenture completed PoC and showed the results to client based on PoC client went ahead procured Denodo as DV tool • Accenture solution also helped to get business approval to move forward with solution • This approach would reduced overhead on Teradata and business will focus more data analytics Company Profile Client is the largest customer-owned health insurance company in the United States. It offers a wide variety of health and life insurance. The company employs nearly 23,000 people and serves nearly 16 million members. Revenue - $35.9 bn products and related services, through its operating divisions and subsidiaries
  • 9. 9 HEALTHCARE – DATA BRIDGE – OVERVIEW Solution Architecture Illustrative Illustrative 1 Trusted data sources are registered 2 User interfaces provides ability to connect new data sources and define semantic views (business friendly views) 3 Workflow to execute approval processes and automate manual process 4 Virtualization layer Denodo connects to any trusted data source 5 Semantic views provide business friendly representation of data 6 Subscription repository maintains record of subscriber info (who, what, where and how) 7 Data pushed to consuming apps based on subscription details SQL / JDBC / ODBC DATA SOURCES Curated Data Assets Domain Data Assets Integrated Data Assets EDW SUBSCRIPTION REPOSITORY Subscriber 1 Subscriber 2 Subscriber 3 Subscriber N CONSUMING APPS (Gemfire) File Teradata Cloud DB USERS VIRTUAL DB SEMANTIC VIEW USER INTERFACE WORKFLOW DATA BRIDGE 1 2 3 4 5 6 7
  • 10. © Copyright Denodo Technologies. All rights reserved Unless otherwise specified, no part of this PDF file may be reproduced or utilized in any for or by any means, electronic or mechanical, including photocopying and microfilm, without prior the written authorization from Denodo Technologies.