SlideShare a Scribd company logo
1 of 17
Download to read offline
Data Lake Acceleration vs. Data
Virtualization
What’s the difference?
Pablo Alvarez-Yanez
Global Director of Product Management, Denodo
3
Data and Analytics
DATA
QUESTIONS
Known Unknown
Known
Unknown
Innovation
and Exploration
Expanding
Understanding
and Investigating
Establishing
Value
Foundational
Core
Data
Warehouse
Data lake
Data Science
Operational
Analytics
• Data analysis comes in different sizes and flavors
• Transactional and analytical systems have
traditionally provide data management for OLAP
and OLTP use cases
• During the last decade, a myriad of new systems
have evolved to cover additional scenarios:
noSQL, graphs, indexers, schema-on-read
RDNBMS, etc.
• Additionally, new architectural paradigms, like
data lakes, have flourished
• New techniques, like AI and ML, have also
extended the methods available for data analysis
4
EDW are expanding
• Data warehouse vendors are
adding capabilities to expand
their range:
• Support for additional formats like
JSON and Parquet files to work as
data lake engines
• Embedded ML algorithms to
enable data science capabilities
DATA
QUESTIONS
Known Unknown
Known
Unknown
Innovation
and Exploration
Expanding
Understanding
and Investigating
Establishing
Value
Foundational
Core
Data
Warehouse
Data Warehouse
5
Data Lakes are expanding
• Data lake vendors are also
expanding
• Have added traditional EDW
capabilities like ACID compliance
• Many Also embed ML capabilities
DATA
QUESTIONS
Known Unknown
Known
Unknown
Innovation
and Exploration
Expanding
Understanding
and Investigating
Establishing
Value
Foundational
Core
Data lake
Data lake
6
What’s happening
DATA
QUESTIONS
Known Unknown
Known
Unknown
Innovation
and Exploration
Expanding
Understanding
and Investigating
Establishing
Value
Foundational
Core
• Some vendors argue that the
separation of processing and
storage has finally made possible
to bring all data into a single
repository
• Some data lake and EDW
vendors are luring customers
with the promise of cheap
storage and fast execution for all
your data
Data
Warehouse
Data lake
Data Science
Operational
Analytics
7
Is that true?
• Can a data lake turned EDW (or vice versa)
with data science capabilities be your
ultimate data repository?
• Let’s analyze this in detail
1. Is that technically feasible?
2. Is it realistic to operate such a system?
3. Is it cost efficient?
8
Is it technically feasible?
• Currently, there is not a single system that is
best-of-breed for all kinds of data processing
• Schema-on-write EDW vendors are better for analytical
queries, but lack flexibility for less structured data
• Schema-on-read data lake vendors lag in performance
compared with their EDW counterparts
• Operational RDBMs remain the best option for
transactional data management
• Specialized engines for time-series, graphs, indexers,
etc. provide additional flavors to data processing that
are best-fit for certain scenarios
9
Is it realistic to operate such a system?
• For a single repository to work, it needs to contain
every piece of data in the organization
• This includes all internal and external systems of all kinds
• Ingestion pipelines need to be created, operated, and
maintained for each of the sources
• Some data may need near-real-time replication, requiring
CDC-based replication that is more complex to operate and
maintain
• Raw data within the system will need to be curated
and transformed to adapt to the needs of the
consumer, creating more pipelines
10
Is it cost efficient?
• Is replicating and curating all data cost-effective?
• What do you do with data seldomly used?
• It’s kind of a catch-22 situation:
• If you don’t ingest it, you may be limiting the quality of
your insights.
• If you replicate it, the ROI of the data lake will be
questionable
• Why did you spend so much time and money to ingest
these data nobody has ever used?
• Cost for “expanded” workloads can skyrocket
• E.g. data science with a pricing model designed for OLAP
What else can I do?
12
The challenges of a distributed architecture
DATA
QUESTIONS
Known Unknown
Known
Unknown
Innovation
and Exploration
Expanding
Understanding
and Investigating
Establishing
Value
Foundational
Core
• Extending a single physical system to cover
all the requirements of a modern data
strategy doesn’t seem feasible
• Need for collaboration instead of competition
• However, using multiple different systems
creates a complexity that end users won’t
be able to navigate, or will slow them
down
• Lose agility and quality of insights
• In addition, securing and governing a
distributed landscape poses another
challenge
• Can a logical and distributed architecture
be the solution?
Data
Warehouse
Data lake
Data Science
Operational
Analytics
13
Modern Architectures: LDW and Data Fabric
▪ Distributed: Data resides at multiple systems / locations
▪ Data today is too big and distributed
▪ Modern analytics needs are too diverse: one size never fits all
▪ Hybrid and multicloud
▪ Logical: Consumers access data through semantic models,
decoupled from data location and physical schemas
▪ No need to deal with specific languages, formats and protocols
for each source
▪ Semantic models are business friendly and enforce common
policies
▪ Allows for technology evolution and infrastructure changes
▪ Cloud transition
▪ Flexibility to change integration methods (e.g. real time to persisted)
Source: The Practical Logical Data Warehouse
Gartner, Dec 2020
Source: Demystifying the Data Fabric
Gartner, September 2020
14
Denodo: bridge the gap between infrastructure and business
1. Single Access Point to all Data
at any location
2. Data is exposed using the
formats and conventions most
appropriate for each
consumer through a semantic
layer
3. Access any data using any
technology and style: SQL,
APIs, Streaming,…
4. Trusted Data: enforce
consistent semantics, data
quality, governance and
security at Data Delivery
5. Discoverability: Active Data
Catalog builds a Data
Marketplace for the business
6. Active metadata generates
intelligence for the whole DM
infrastructure
1. EDWs and Data Lakes are key pieces of any modern
data strategy
2. However, extending those systems to centralize all
analytical activities is problematic: loss of capabilities,
harder to operate/govern and skyrocketing costs
3. A logical approach that consolidates all systems to act
as one is a more realistic and cost effective approach
4. Denodo has a proven track record in LDW and Data
Fabric enterprise projects
Thank you for attending!
On-demand sessions and slides will be available soon
Data Lake Acceleration vs. Data Virtualization - What’s the difference?

More Related Content

What's hot

What's hot (20)

Introduction to Data Virtualization (session 1 from Packed Lunch Webinar Series)
Introduction to Data Virtualization (session 1 from Packed Lunch Webinar Series)Introduction to Data Virtualization (session 1 from Packed Lunch Webinar Series)
Introduction to Data Virtualization (session 1 from Packed Lunch Webinar Series)
 
Performance Acceleration: Summaries, Recommendation, MPP and more
Performance Acceleration: Summaries, Recommendation, MPP and morePerformance Acceleration: Summaries, Recommendation, MPP and more
Performance Acceleration: Summaries, Recommendation, MPP and more
 
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)
 
Getting Started with Data Virtualization – What problems DV solves
Getting Started with Data Virtualization – What problems DV solvesGetting Started with Data Virtualization – What problems DV solves
Getting Started with Data Virtualization – What problems DV solves
 
GDPR Noncompliance: Avoid the Risk with Data Virtualization
GDPR Noncompliance: Avoid the Risk with Data VirtualizationGDPR Noncompliance: Avoid the Risk with Data Virtualization
GDPR Noncompliance: Avoid the Risk with Data Virtualization
 
DW 101
DW 101DW 101
DW 101
 
Data Virtualization: An Essential Component of a Cloud Data Lake
Data Virtualization: An Essential Component of a Cloud Data LakeData Virtualization: An Essential Component of a Cloud Data Lake
Data Virtualization: An Essential Component of a Cloud Data Lake
 
A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)
 
Data Virtualization: From Zero to Hero (Middle East)
Data Virtualization: From Zero to Hero (Middle East)Data Virtualization: From Zero to Hero (Middle East)
Data Virtualization: From Zero to Hero (Middle East)
 
Data Virtualization - Enabling Next Generation Analytics
Data Virtualization - Enabling Next Generation AnalyticsData Virtualization - Enabling Next Generation Analytics
Data Virtualization - Enabling Next Generation Analytics
 
Are You Killing the Benefits of Your Data Lake?
Are You Killing the Benefits of Your Data Lake?Are You Killing the Benefits of Your Data Lake?
Are You Killing the Benefits of Your Data Lake?
 
Why Data Virtualization? An Introduction.
Why Data Virtualization? An Introduction.Why Data Virtualization? An Introduction.
Why Data Virtualization? An Introduction.
 
Accelerate Self-Service Analytics with Data Virtualization and Visualization
Accelerate Self-Service Analytics with Data Virtualization and VisualizationAccelerate Self-Service Analytics with Data Virtualization and Visualization
Accelerate Self-Service Analytics with Data Virtualization and Visualization
 
How Data Virtualization Puts Machine Learning into Production (APAC)
How Data Virtualization Puts Machine Learning into Production (APAC)How Data Virtualization Puts Machine Learning into Production (APAC)
How Data Virtualization Puts Machine Learning into Production (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)
Simplifying Your Cloud Architecture with a Logical Data Fabric (APAC)
 
Agile Data Management with Enterprise Data Fabric (ASEAN)
Agile Data Management with Enterprise Data Fabric (ASEAN)Agile Data Management with Enterprise Data Fabric (ASEAN)
Agile Data Management with Enterprise Data Fabric (ASEAN)
 
Datamesh community meetup 28th jan 2021
Datamesh community meetup 28th jan 2021Datamesh community meetup 28th jan 2021
Datamesh community meetup 28th jan 2021
 
Virtualisation de données : Enjeux, Usages & Bénéfices
Virtualisation de données : Enjeux, Usages & BénéficesVirtualisation de données : Enjeux, Usages & Bénéfices
Virtualisation de données : Enjeux, Usages & Bénéfices
 
In Memory Parallel Processing for Big Data Scenarios
In Memory Parallel Processing for Big Data ScenariosIn Memory Parallel Processing for Big Data Scenarios
In Memory Parallel Processing for Big Data Scenarios
 
Logical Data Warehouse and Data Lakes
Logical Data Warehouse and Data Lakes Logical Data Warehouse and Data Lakes
Logical Data Warehouse and Data Lakes
 

Similar to Data Lake Acceleration vs. Data Virtualization - What’s the difference?

Data Science Machine Lerning Bigdat.pptx
Data Science Machine Lerning Bigdat.pptxData Science Machine Lerning Bigdat.pptx
Data Science Machine Lerning Bigdat.pptx
Priyadarshini648418
 
Data Warehouse Optimization
Data Warehouse OptimizationData Warehouse Optimization
Data Warehouse Optimization
Cloudera, Inc.
 
NoSQLDatabases
NoSQLDatabasesNoSQLDatabases
NoSQLDatabases
Adi Challa
 

Similar to Data Lake Acceleration vs. Data Virtualization - What’s the difference? (20)

ADV Slides: When and How Data Lakes Fit into a Modern Data Architecture
ADV Slides: When and How Data Lakes Fit into a Modern Data ArchitectureADV Slides: When and How Data Lakes Fit into a Modern Data Architecture
ADV Slides: When and How Data Lakes Fit into a Modern Data Architecture
 
Unlock Your Data for ML & AI using Data Virtualization
Unlock Your Data for ML & AI using Data VirtualizationUnlock Your Data for ML & AI using Data Virtualization
Unlock Your Data for ML & AI using Data Virtualization
 
ADV Slides: Platforming Your Data for Success – Databases, Hadoop, Managed Ha...
ADV Slides: Platforming Your Data for Success – Databases, Hadoop, Managed Ha...ADV Slides: Platforming Your Data for Success – Databases, Hadoop, Managed Ha...
ADV Slides: Platforming Your Data for Success – Databases, Hadoop, Managed Ha...
 
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization
 
The Shifting Landscape of Data Integration
The Shifting Landscape of Data IntegrationThe Shifting Landscape of Data Integration
The Shifting Landscape of Data Integration
 
Designing modern dw and data lake
Designing modern dw and data lakeDesigning modern dw and data lake
Designing modern dw and data lake
 
Hadoop and the Data Warehouse: When to Use Which
Hadoop and the Data Warehouse: When to Use Which Hadoop and the Data Warehouse: When to Use Which
Hadoop and the Data Warehouse: When to Use Which
 
Data Science Machine Lerning Bigdat.pptx
Data Science Machine Lerning Bigdat.pptxData Science Machine Lerning Bigdat.pptx
Data Science Machine Lerning Bigdat.pptx
 
Transform your DBMS to drive engagement innovation with Big Data
Transform your DBMS to drive engagement innovation with Big DataTransform your DBMS to drive engagement innovation with Big Data
Transform your DBMS to drive engagement innovation with Big Data
 
ADV Slides: Building and Growing Organizational Analytics with Data Lakes
ADV Slides: Building and Growing Organizational Analytics with Data LakesADV Slides: Building and Growing Organizational Analytics with Data Lakes
ADV Slides: Building and Growing Organizational Analytics with Data Lakes
 
Data Mesh
Data MeshData Mesh
Data Mesh
 
Logical Data Fabric and Data Mesh – Driving Business Outcomes
Logical Data Fabric and Data Mesh – Driving Business OutcomesLogical Data Fabric and Data Mesh – Driving Business Outcomes
Logical Data Fabric and Data Mesh – Driving Business Outcomes
 
Bitkom Cray presentation - on HPC affecting big data analytics in FS
Bitkom Cray presentation - on HPC affecting big data analytics in FSBitkom Cray presentation - on HPC affecting big data analytics in FS
Bitkom Cray presentation - on HPC affecting big data analytics in FS
 
Data Lakehouse, Data Mesh, and Data Fabric (r1)
Data Lakehouse, Data Mesh, and Data Fabric (r1)Data Lakehouse, Data Mesh, and Data Fabric (r1)
Data Lakehouse, Data Mesh, and Data Fabric (r1)
 
Data Warehouse Optimization
Data Warehouse OptimizationData Warehouse Optimization
Data Warehouse Optimization
 
Big Data Boom
Big Data BoomBig Data Boom
Big Data Boom
 
Meta scale kognitio hadoop webinar
Meta scale kognitio hadoop webinarMeta scale kognitio hadoop webinar
Meta scale kognitio hadoop webinar
 
Hadoop and Your Enterprise Data Warehouse
Hadoop and Your Enterprise Data WarehouseHadoop and Your Enterprise Data Warehouse
Hadoop and Your Enterprise Data Warehouse
 
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
 
NoSQLDatabases
NoSQLDatabasesNoSQLDatabases
NoSQLDatabases
 

More from 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 Landscape
Denodo
 
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
 
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
Denodo
 
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
 

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 Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
amitlee9823
 
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
amitlee9823
 
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service BangaloreCall Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
amitlee9823
 
Call Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
Call Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts ServiceCall Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
Call Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
➥🔝 7737669865 🔝▻ Thrissur Call-girls in Women Seeking Men 🔝Thrissur🔝 Escor...
➥🔝 7737669865 🔝▻ Thrissur Call-girls in Women Seeking Men  🔝Thrissur🔝   Escor...➥🔝 7737669865 🔝▻ Thrissur Call-girls in Women Seeking Men  🔝Thrissur🔝   Escor...
➥🔝 7737669865 🔝▻ Thrissur Call-girls in Women Seeking Men 🔝Thrissur🔝 Escor...
amitlee9823
 
➥🔝 7737669865 🔝▻ Dindigul Call-girls in Women Seeking Men 🔝Dindigul🔝 Escor...
➥🔝 7737669865 🔝▻ Dindigul Call-girls in Women Seeking Men  🔝Dindigul🔝   Escor...➥🔝 7737669865 🔝▻ Dindigul Call-girls in Women Seeking Men  🔝Dindigul🔝   Escor...
➥🔝 7737669865 🔝▻ Dindigul Call-girls in Women Seeking Men 🔝Dindigul🔝 Escor...
amitlee9823
 
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
amitlee9823
 
➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men 🔝malwa🔝 Escorts Ser...
➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men  🔝malwa🔝   Escorts Ser...➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men  🔝malwa🔝   Escorts Ser...
➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men 🔝malwa🔝 Escorts Ser...
amitlee9823
 
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
amitlee9823
 
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men 🔝Bangalore🔝 Esc...
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men  🔝Bangalore🔝   Esc...➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men  🔝Bangalore🔝   Esc...
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men 🔝Bangalore🔝 Esc...
amitlee9823
 
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
only4webmaster01
 
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...
amitlee9823
 

Recently uploaded (20)

Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
 
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort ServiceBDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
 
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
 
April 2024 - Crypto Market Report's Analysis
April 2024 - Crypto Market Report's AnalysisApril 2024 - Crypto Market Report's Analysis
April 2024 - Crypto Market Report's Analysis
 
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...
 
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service BangaloreCall Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Begur Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
 
Call Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
Call Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts ServiceCall Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
Call Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
 
➥🔝 7737669865 🔝▻ Thrissur Call-girls in Women Seeking Men 🔝Thrissur🔝 Escor...
➥🔝 7737669865 🔝▻ Thrissur Call-girls in Women Seeking Men  🔝Thrissur🔝   Escor...➥🔝 7737669865 🔝▻ Thrissur Call-girls in Women Seeking Men  🔝Thrissur🔝   Escor...
➥🔝 7737669865 🔝▻ Thrissur Call-girls in Women Seeking Men 🔝Thrissur🔝 Escor...
 
➥🔝 7737669865 🔝▻ Dindigul Call-girls in Women Seeking Men 🔝Dindigul🔝 Escor...
➥🔝 7737669865 🔝▻ Dindigul Call-girls in Women Seeking Men  🔝Dindigul🔝   Escor...➥🔝 7737669865 🔝▻ Dindigul Call-girls in Women Seeking Men  🔝Dindigul🔝   Escor...
➥🔝 7737669865 🔝▻ Dindigul Call-girls in Women Seeking Men 🔝Dindigul🔝 Escor...
 
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
 
➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men 🔝malwa🔝 Escorts Ser...
➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men  🔝malwa🔝   Escorts Ser...➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men  🔝malwa🔝   Escorts Ser...
➥🔝 7737669865 🔝▻ malwa Call-girls in Women Seeking Men 🔝malwa🔝 Escorts Ser...
 
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
 
Call Girls in Sarai Kale Khan Delhi 💯 Call Us 🔝9205541914 🔝( Delhi) Escorts S...
Call Girls in Sarai Kale Khan Delhi 💯 Call Us 🔝9205541914 🔝( Delhi) Escorts S...Call Girls in Sarai Kale Khan Delhi 💯 Call Us 🔝9205541914 🔝( Delhi) Escorts S...
Call Girls in Sarai Kale Khan Delhi 💯 Call Us 🔝9205541914 🔝( Delhi) Escorts S...
 
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
 
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
 
Midocean dropshipping via API with DroFx
Midocean dropshipping via API with DroFxMidocean dropshipping via API with DroFx
Midocean dropshipping via API with DroFx
 
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 nightCheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
 
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men 🔝Bangalore🔝 Esc...
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men  🔝Bangalore🔝   Esc...➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men  🔝Bangalore🔝   Esc...
➥🔝 7737669865 🔝▻ Bangalore Call-girls in Women Seeking Men 🔝Bangalore🔝 Esc...
 
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
 
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...
 

Data Lake Acceleration vs. Data Virtualization - What’s the difference?

  • 1.
  • 2. Data Lake Acceleration vs. Data Virtualization What’s the difference? Pablo Alvarez-Yanez Global Director of Product Management, Denodo
  • 3. 3 Data and Analytics DATA QUESTIONS Known Unknown Known Unknown Innovation and Exploration Expanding Understanding and Investigating Establishing Value Foundational Core Data Warehouse Data lake Data Science Operational Analytics • Data analysis comes in different sizes and flavors • Transactional and analytical systems have traditionally provide data management for OLAP and OLTP use cases • During the last decade, a myriad of new systems have evolved to cover additional scenarios: noSQL, graphs, indexers, schema-on-read RDNBMS, etc. • Additionally, new architectural paradigms, like data lakes, have flourished • New techniques, like AI and ML, have also extended the methods available for data analysis
  • 4. 4 EDW are expanding • Data warehouse vendors are adding capabilities to expand their range: • Support for additional formats like JSON and Parquet files to work as data lake engines • Embedded ML algorithms to enable data science capabilities DATA QUESTIONS Known Unknown Known Unknown Innovation and Exploration Expanding Understanding and Investigating Establishing Value Foundational Core Data Warehouse Data Warehouse
  • 5. 5 Data Lakes are expanding • Data lake vendors are also expanding • Have added traditional EDW capabilities like ACID compliance • Many Also embed ML capabilities DATA QUESTIONS Known Unknown Known Unknown Innovation and Exploration Expanding Understanding and Investigating Establishing Value Foundational Core Data lake Data lake
  • 6. 6 What’s happening DATA QUESTIONS Known Unknown Known Unknown Innovation and Exploration Expanding Understanding and Investigating Establishing Value Foundational Core • Some vendors argue that the separation of processing and storage has finally made possible to bring all data into a single repository • Some data lake and EDW vendors are luring customers with the promise of cheap storage and fast execution for all your data Data Warehouse Data lake Data Science Operational Analytics
  • 7. 7 Is that true? • Can a data lake turned EDW (or vice versa) with data science capabilities be your ultimate data repository? • Let’s analyze this in detail 1. Is that technically feasible? 2. Is it realistic to operate such a system? 3. Is it cost efficient?
  • 8. 8 Is it technically feasible? • Currently, there is not a single system that is best-of-breed for all kinds of data processing • Schema-on-write EDW vendors are better for analytical queries, but lack flexibility for less structured data • Schema-on-read data lake vendors lag in performance compared with their EDW counterparts • Operational RDBMs remain the best option for transactional data management • Specialized engines for time-series, graphs, indexers, etc. provide additional flavors to data processing that are best-fit for certain scenarios
  • 9. 9 Is it realistic to operate such a system? • For a single repository to work, it needs to contain every piece of data in the organization • This includes all internal and external systems of all kinds • Ingestion pipelines need to be created, operated, and maintained for each of the sources • Some data may need near-real-time replication, requiring CDC-based replication that is more complex to operate and maintain • Raw data within the system will need to be curated and transformed to adapt to the needs of the consumer, creating more pipelines
  • 10. 10 Is it cost efficient? • Is replicating and curating all data cost-effective? • What do you do with data seldomly used? • It’s kind of a catch-22 situation: • If you don’t ingest it, you may be limiting the quality of your insights. • If you replicate it, the ROI of the data lake will be questionable • Why did you spend so much time and money to ingest these data nobody has ever used? • Cost for “expanded” workloads can skyrocket • E.g. data science with a pricing model designed for OLAP
  • 11. What else can I do?
  • 12. 12 The challenges of a distributed architecture DATA QUESTIONS Known Unknown Known Unknown Innovation and Exploration Expanding Understanding and Investigating Establishing Value Foundational Core • Extending a single physical system to cover all the requirements of a modern data strategy doesn’t seem feasible • Need for collaboration instead of competition • However, using multiple different systems creates a complexity that end users won’t be able to navigate, or will slow them down • Lose agility and quality of insights • In addition, securing and governing a distributed landscape poses another challenge • Can a logical and distributed architecture be the solution? Data Warehouse Data lake Data Science Operational Analytics
  • 13. 13 Modern Architectures: LDW and Data Fabric ▪ Distributed: Data resides at multiple systems / locations ▪ Data today is too big and distributed ▪ Modern analytics needs are too diverse: one size never fits all ▪ Hybrid and multicloud ▪ Logical: Consumers access data through semantic models, decoupled from data location and physical schemas ▪ No need to deal with specific languages, formats and protocols for each source ▪ Semantic models are business friendly and enforce common policies ▪ Allows for technology evolution and infrastructure changes ▪ Cloud transition ▪ Flexibility to change integration methods (e.g. real time to persisted) Source: The Practical Logical Data Warehouse Gartner, Dec 2020 Source: Demystifying the Data Fabric Gartner, September 2020
  • 14. 14 Denodo: bridge the gap between infrastructure and business 1. Single Access Point to all Data at any location 2. Data is exposed using the formats and conventions most appropriate for each consumer through a semantic layer 3. Access any data using any technology and style: SQL, APIs, Streaming,… 4. Trusted Data: enforce consistent semantics, data quality, governance and security at Data Delivery 5. Discoverability: Active Data Catalog builds a Data Marketplace for the business 6. Active metadata generates intelligence for the whole DM infrastructure
  • 15. 1. EDWs and Data Lakes are key pieces of any modern data strategy 2. However, extending those systems to centralize all analytical activities is problematic: loss of capabilities, harder to operate/govern and skyrocketing costs 3. A logical approach that consolidates all systems to act as one is a more realistic and cost effective approach 4. Denodo has a proven track record in LDW and Data Fabric enterprise projects
  • 16. Thank you for attending! On-demand sessions and slides will be available soon