DATA VIRTUALIZATION
APAC WEBINAR SERIES
Sessions Covering Key Data
Integration Challenges Solved
with Data Virtualization
How Data Virtualization Puts Enterprise Machine
Learning Programs into Production
Chris Day
Director, APAC Sales Engineering, Denodo
Sushant Kumar
Product Marketing Manager, Denodo
Agenda
1. What are Advanced Analytics?
2. The Data Challenge
3. The Rise of Logical Data Architectures
4. Tackling the Data Pipeline Problem
5. Customer Stories
6. Key Takeaways
7. Q&A
8. Next Steps
4
VentureBeat AI, July 2019
87% of data science projects never
make it into production.
5
Advanced Analytics & Machine Learning Exercises Need Data
Improving Patient
Outcomes
Data includes patient demographics,
family history, patient vitals, lab test
results, claims data etc.
Predictive Maintenance
Maintenance data logs, data coming in
from sensors – including temperature,
running time, power level duration etc.
Predicting Late Payment
Data includes company or individual
demographics, payment history,
customer support logs etc.
Preventing Frauds
Data includes the location where the
claim originated, time of the day,
claimant history and any recent adverse
events.
Reducing Customer Churn
Data includes customer demographics,
products purchased, products used, pat
transaction, company size, history,
revenue etc.
Logical Data Warehouse
8
Gartner, Adopt the Logical Data Warehouse Architecture to Meet Your Modern
Analytical Needs, May 2018
“When designed properly, Data Virtualization can speed data
integration, lower data latency, offer flexibility and reuse, and reduce
data sprawl across dispersed data sources. Due to its many benefits,
Data Virtualization is often the first step for organizations evolving a
traditional, repository-style data warehouse into a Logical Architecture”
9
Logical Data Warehouse Reference Architecture
10
Why A Logical Architecture Is Needed
ü The analytical technology landscape has shifted over time.
ü You need a flexible architecture that will allow you to embrace those shifts rather
than tie you down to a monolithic approach.
ü Only a logical architecture will easily accommodate such changes, and not a
physical architecture.
ü IT should be able to adopt newer technologies without impacting business users.
Tackling the Data Pipeline Problem
12
Typical Data Science Workflow
A typical workflow for a data scientist is:
1. Gather the requirements for the business problem
2. Identify useful data
§ Ingest data
3. Cleanse data into a useful format
4. Analyze data
5. Prepare input for your algorithms
6. Execute data science algorithms (ML, AI, etc.)
§ Iterate steps 2 to 6 until valuable insights are
produced
7. Visualize and share
Source:http://sudeep.co/data-science/Understanding-the-Data-Science-Lifecycle/
13
Where Does Your Time Go?
• 80% of time – Finding and
preparing the data
• 10% of time – Analysis
• 10% of time – Visualizing data
Source:http://sudeep.co/data-science/Understanding-the-Data-Science-Lifecycle/
14
Where Does Your Time Go?
A large amount of time and effort goes into tasks not intrinsically related to data science:
• Finding where the right data may be
• Getting access to the data
§ Bureaucracy
§ Understand access methods and technology (noSQL, REST APIs, etc.)
• Transforming data into a format easy to work with
• Combining data originally available in different sources and formats
• Profile and cleanse data to eliminate incomplete or inconsistent data points
15
Data Scientist Workflow
Identify useful
data
Modify datainto
auseful format
Analyzedata Executedata
science algorithms
(ML,AI, etc.)
Prepare for
MLalgorithm
16
Identify Useful Data
If the company has a virtual layer with a good coverage of
data sources, this task is greatly simplified.
§ A data virtualization tool like Denodo can offer
unified access to all data available in the company.
§ It abstracts the technologies underneath, offering a
standard SQL interface to query and manipulate.
To further simplify the challenge, Denodo offers a Data
Catalog to search, find and explore your data assets.
17
Data Scientist Workflow
Identify useful
data
Modify datainto
auseful format
Analyzedata Executedata
science algorithms
(ML,AI, etc.)
Prepare for
MLalgorithm
18
Data Virtualization offers the unique opportunity of
using standard SQL (joins, aggregations,
transformations, etc.) to access, manipulate and
analyze any data.
Cleansing and transformation steps can be easily
accomplished in SQL.
Its modeling capabilities enable the definition of views
that embed this logic to foster reusability.
Ingestion And Data Manipulation Tasks
Customer Story
20
Prologis Launches Data Analytics Program for Cost Optimization
Background
§ Create a single governed data access layer to create
reusable and consistent analytical assets that could be used
by the rest of the business teams to run their own analytics.
§ Save time for data scientists in finding , transforming and
analysing data sets without having to learn new skills and
create data models that could be refreshed on demand.
§ Efficiently maintain its new data architecture with minimum
downtime and configuration management.
Prologis is the largest industrial real estate
company in the world, serving 5000 customers
in over 20 countries and USD 87 billion in
assets under management.
21
Prologis Architecture Diagram
wc_monthly_occupancy_rpt_f wc_lease_amendment_d w_day_d wc_property_d
MARKET_AVAILABILITY_CURRENT MARKET_AVAILABILITY_FUTURE
Prologis
SnowFlake
API
Access
Informatica
Cloud
ShareHouse
ODBC JDBC
peoplesoft_gl_actuals yardi_unit_leasing p360_property
WAF
AWS Lambda APIs
22
Data Virtualization Benefits Experienced by Prologis
§ The analytics team was able to create business focussed subject areas with
consistent data sets that were 30% faster in speed to analytics.
§ Denodo made it possible for Prologis to quick start advanced analytics projects.
§ The Denodo platform’s deployment was as easy as a click of a button with
centralized configuration management. This simplified Prologis’s data architecture
and also helped bring down the overall maintenance cost.
23
Luke Slotwinski, VP, IT Data and Analytics at Prologis
The speed of business is faster than before. It is now critical
to be able to make decisions on a dime to pivot the business
in its needed direction. This is why Prologis went with the
Denodo Platform.
24
ü Denodo can play key role in the data science ecosystem to reduce data
exploration and analysis timeframes.
ü Extends and integrates with the capabilities of notebooks, Python, R, etc.
to improve the toolset of the data scientist.
ü Provides a modern “SQL-on-Anything” engine.
ü Can leverage Big Data technologies like Spark (as a data source, an
ingestion tool and for external processing) to efficiently work with large
data volumes.
ü New and expanded tools for data scientists and citizen analysts: “Apache
Zeppelin for Denodo” Notebook.
Data Virtualization Benefits for AI and Machine Learning
Projects
Product Demonstration
Chris Day
Director, APAC Sales Engineering, Denodo
26
Key Takeaways
ü Information architectures are getting more complex, more diverse, and more
distributed.
ü Traditional technologies and data replication don’t cut it anymore.
ü Data virtualization makes it quick and easy to expose data from multiple source to your
users.
ü Data virtualization provides a governance and management infrastructure required for
successful data management.
Q&A
Next Steps
29
bit.ly/2AouQLQ
Thanks!
www.denodo.com info@denodo.com
© 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

PDF
SAP Analytics Cloud: Haben Sie schon alle Datenquellen im Live-Zugriff?
PDF
KASHTECH AND DENODO: ROI and Economic Value of Data Virtualization
PDF
Introduction to Modern Data Virtualization (US)
PDF
A Successful Data Strategy for Insurers in Volatile Times (ASEAN)
PDF
Data Virtualization: From Zero to Hero
PDF
Advanced Analytics and Machine Learning with Data Virtualization
PDF
Why Data Virtualization? An Introduction.
PDF
Analyst Webinar: Best Practices In Enabling Data-Driven Decision Making
SAP Analytics Cloud: Haben Sie schon alle Datenquellen im Live-Zugriff?
KASHTECH AND DENODO: ROI and Economic Value of Data Virtualization
Introduction to Modern Data Virtualization (US)
A Successful Data Strategy for Insurers in Volatile Times (ASEAN)
Data Virtualization: From Zero to Hero
Advanced Analytics and Machine Learning with Data Virtualization
Why Data Virtualization? An Introduction.
Analyst Webinar: Best Practices In Enabling Data-Driven Decision Making

What's hot (20)

PPTX
Fast Data Strategy Houston Roadshow Presentation
PDF
Accelerate Self-Service Analytics with Data Virtualization and Visualization
PDF
Data Virtualization: An Essential Component of a Cloud Data Lake
PDF
Empowering your Enterprise with a Self-Service Data Marketplace (EMEA)
PPTX
Data Virtualization: An Introduction
PDF
Cloud Migration headache? Ease the pain with Data Virtualization! (EMEA)
PPTX
Applying Big Data Superpowers to Healthcare
PPTX
Denodo Data Virtualization - IT Days in Luxembourg with Oktopus
PDF
Logical Data Fabric: Maturing Implementation from Small to Big (APAC)
PDF
Data Lake Acceleration vs. Data Virtualization - What’s the difference?
PDF
Solution Centric Architectural Presentation - Implementing a Logical Data War...
PDF
Accelerate Self-Service Analytics with Data Virtualization and Visualization
PDF
Best Practices in the Cloud for Data Management (US)
PDF
Logical Data Warehouse and Data Lakes
PDF
Customer Keynote: Data Service and Security at an Enterprise Scale with Logic...
PDF
Self Service Analytics enabled by Data Virtualization from Denodo
PDF
Multi-Cloud Integration with Data Virtualization (ASEAN)
PPTX
Data fabric and VMware
PDF
Modern Data Management for Federal Modernization
PDF
Bridging the Last Mile: Getting Data to the People Who Need It (APAC)
Fast Data Strategy Houston Roadshow Presentation
Accelerate Self-Service Analytics with Data Virtualization and Visualization
Data Virtualization: An Essential Component of a Cloud Data Lake
Empowering your Enterprise with a Self-Service Data Marketplace (EMEA)
Data Virtualization: An Introduction
Cloud Migration headache? Ease the pain with Data Virtualization! (EMEA)
Applying Big Data Superpowers to Healthcare
Denodo Data Virtualization - IT Days in Luxembourg with Oktopus
Logical Data Fabric: Maturing Implementation from Small to Big (APAC)
Data Lake Acceleration vs. Data Virtualization - What’s the difference?
Solution Centric Architectural Presentation - Implementing a Logical Data War...
Accelerate Self-Service Analytics with Data Virtualization and Visualization
Best Practices in the Cloud for Data Management (US)
Logical Data Warehouse and Data Lakes
Customer Keynote: Data Service and Security at an Enterprise Scale with Logic...
Self Service Analytics enabled by Data Virtualization from Denodo
Multi-Cloud Integration with Data Virtualization (ASEAN)
Data fabric and VMware
Modern Data Management for Federal Modernization
Bridging the Last Mile: Getting Data to the People Who Need It (APAC)
Ad

Similar to How Data Virtualization Puts Machine Learning into Production (APAC) (20)

PDF
How Data Virtualization Puts Enterprise Machine Learning Programs into Produc...
PDF
Advanced Analytics and Machine Learning with Data Virtualization (India)
PDF
Advanced Analytics and Machine Learning with Data Virtualization
PDF
Why Your Data Science Architecture Should Include a Data Virtualization Tool ...
PDF
Advanced Analytics and Machine Learning with Data Virtualization
PDF
How Data Virtualization Adds Value to Your Data Science Stack
PDF
Unlock Your Data for ML & AI using Data Virtualization
PDF
Quicker Insights and Sustainable Business Agility Powered By Data Virtualizat...
PDF
Data Virtualization: An Introduction
PDF
Virtualisation de données : Enjeux, Usages & Bénéfices
PDF
Data Science Operationalization: The Journey of Enterprise AI
PDF
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
PDF
Belgium & Luxembourg dedicated online Data Virtualization discovery workshop
PDF
Minimizing the Complexities of Machine Learning with Data Virtualization
PDF
Advanced Analytics and Machine Learning with Data Virtualization
PDF
What is the future of data strategy?
PDF
Data Virtualization enabled Data Fabric: Operationalize the Data Lake (APAC)
PDF
The Role of the Logical Data Fabric in a Unified Platform for Modern Analytics
PDF
The Role of Logical Data Fabric in a Unified Platform for Modern Analytics (A...
PDF
Cloud Migration Strategies that Ensure Greater Value for the Business
How Data Virtualization Puts Enterprise Machine Learning Programs into Produc...
Advanced Analytics and Machine Learning with Data Virtualization (India)
Advanced Analytics and Machine Learning with Data Virtualization
Why Your Data Science Architecture Should Include a Data Virtualization Tool ...
Advanced Analytics and Machine Learning with Data Virtualization
How Data Virtualization Adds Value to Your Data Science Stack
Unlock Your Data for ML & AI using Data Virtualization
Quicker Insights and Sustainable Business Agility Powered By Data Virtualizat...
Data Virtualization: An Introduction
Virtualisation de données : Enjeux, Usages & Bénéfices
Data Science Operationalization: The Journey of Enterprise AI
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
Belgium & Luxembourg dedicated online Data Virtualization discovery workshop
Minimizing the Complexities of Machine Learning with Data Virtualization
Advanced Analytics and Machine Learning with Data Virtualization
What is the future of data strategy?
Data Virtualization enabled Data Fabric: Operationalize the Data Lake (APAC)
The Role of the Logical Data Fabric in a Unified Platform for Modern Analytics
The Role of Logical Data Fabric in a Unified Platform for Modern Analytics (A...
Cloud Migration Strategies that Ensure Greater Value for the Business
Ad

More from Denodo (20)

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

Recently uploaded (20)

PDF
Introduction to Database Systems Lec # 1
PPTX
inbound2857676998455010149.pptxmmmmmmmmm
PPTX
Stats annual compiled ipd opd ot br 2024
PDF
Q1-wK1-Human-and-Cultural-Variation-sy-2024-2025-Copy-1.pdf
PPTX
DIGITAL DESIGN AND.pptx hhhhhhhhhhhhhhhhh
PDF
PPT IEPT 2025_Ms. Nurul Presentation 10.pdf
PPTX
DATA ANALYTICS COURSE IN PITAMPURA.pptx
PDF
Delhi c@ll girl# cute girls in delhi with travel girls in delhi call now
PPTX
inbound6529290805104538764.pptxmmmmmmmmm
PDF
Lesson 1 - intro Cybersecurity and Cybercrime.pptx.pdf
PPTX
AI-Augmented Business Process Management Systems
PDF
Mcdonald's : a half century growth . pdf
PPTX
Bussiness Plan S Group of college 2020-23 Final
PDF
book-34714 (2).pdfhjkkljgfdssawtjiiiiiujj
PPTX
PPT for Diseases (1)-2, types of diseases.pptx
PPTX
cyber row.pptx for cyber proffesionals and hackers
PDF
Hikvision-IR-PPT---EN.pdfSADASDASSAAAAAAAAAAAAAAA
PDF
9 FinOps Tools That Simplify Cloud Cost Reporting.pdf
PPTX
Basic Statistical Analysis for experimental data.pptx
PPTX
Overview_of_Computing_Presentation.pptxxx
Introduction to Database Systems Lec # 1
inbound2857676998455010149.pptxmmmmmmmmm
Stats annual compiled ipd opd ot br 2024
Q1-wK1-Human-and-Cultural-Variation-sy-2024-2025-Copy-1.pdf
DIGITAL DESIGN AND.pptx hhhhhhhhhhhhhhhhh
PPT IEPT 2025_Ms. Nurul Presentation 10.pdf
DATA ANALYTICS COURSE IN PITAMPURA.pptx
Delhi c@ll girl# cute girls in delhi with travel girls in delhi call now
inbound6529290805104538764.pptxmmmmmmmmm
Lesson 1 - intro Cybersecurity and Cybercrime.pptx.pdf
AI-Augmented Business Process Management Systems
Mcdonald's : a half century growth . pdf
Bussiness Plan S Group of college 2020-23 Final
book-34714 (2).pdfhjkkljgfdssawtjiiiiiujj
PPT for Diseases (1)-2, types of diseases.pptx
cyber row.pptx for cyber proffesionals and hackers
Hikvision-IR-PPT---EN.pdfSADASDASSAAAAAAAAAAAAAAA
9 FinOps Tools That Simplify Cloud Cost Reporting.pdf
Basic Statistical Analysis for experimental data.pptx
Overview_of_Computing_Presentation.pptxxx

How Data Virtualization Puts Machine Learning into Production (APAC)

  • 1. DATA VIRTUALIZATION APAC WEBINAR SERIES Sessions Covering Key Data Integration Challenges Solved with Data Virtualization
  • 2. How Data Virtualization Puts Enterprise Machine Learning Programs into Production Chris Day Director, APAC Sales Engineering, Denodo Sushant Kumar Product Marketing Manager, Denodo
  • 3. Agenda 1. What are Advanced Analytics? 2. The Data Challenge 3. The Rise of Logical Data Architectures 4. Tackling the Data Pipeline Problem 5. Customer Stories 6. Key Takeaways 7. Q&A 8. Next Steps
  • 4. 4 VentureBeat AI, July 2019 87% of data science projects never make it into production.
  • 5. 5 Advanced Analytics & Machine Learning Exercises Need Data Improving Patient Outcomes Data includes patient demographics, family history, patient vitals, lab test results, claims data etc. Predictive Maintenance Maintenance data logs, data coming in from sensors – including temperature, running time, power level duration etc. Predicting Late Payment Data includes company or individual demographics, payment history, customer support logs etc. Preventing Frauds Data includes the location where the claim originated, time of the day, claimant history and any recent adverse events. Reducing Customer Churn Data includes customer demographics, products purchased, products used, pat transaction, company size, history, revenue etc.
  • 7. 8 Gartner, Adopt the Logical Data Warehouse Architecture to Meet Your Modern Analytical Needs, May 2018 “When designed properly, Data Virtualization can speed data integration, lower data latency, offer flexibility and reuse, and reduce data sprawl across dispersed data sources. Due to its many benefits, Data Virtualization is often the first step for organizations evolving a traditional, repository-style data warehouse into a Logical Architecture”
  • 8. 9 Logical Data Warehouse Reference Architecture
  • 9. 10 Why A Logical Architecture Is Needed ü The analytical technology landscape has shifted over time. ü You need a flexible architecture that will allow you to embrace those shifts rather than tie you down to a monolithic approach. ü Only a logical architecture will easily accommodate such changes, and not a physical architecture. ü IT should be able to adopt newer technologies without impacting business users.
  • 10. Tackling the Data Pipeline Problem
  • 11. 12 Typical Data Science Workflow A typical workflow for a data scientist is: 1. Gather the requirements for the business problem 2. Identify useful data § Ingest data 3. Cleanse data into a useful format 4. Analyze data 5. Prepare input for your algorithms 6. Execute data science algorithms (ML, AI, etc.) § Iterate steps 2 to 6 until valuable insights are produced 7. Visualize and share Source:http://sudeep.co/data-science/Understanding-the-Data-Science-Lifecycle/
  • 12. 13 Where Does Your Time Go? • 80% of time – Finding and preparing the data • 10% of time – Analysis • 10% of time – Visualizing data Source:http://sudeep.co/data-science/Understanding-the-Data-Science-Lifecycle/
  • 13. 14 Where Does Your Time Go? A large amount of time and effort goes into tasks not intrinsically related to data science: • Finding where the right data may be • Getting access to the data § Bureaucracy § Understand access methods and technology (noSQL, REST APIs, etc.) • Transforming data into a format easy to work with • Combining data originally available in different sources and formats • Profile and cleanse data to eliminate incomplete or inconsistent data points
  • 14. 15 Data Scientist Workflow Identify useful data Modify datainto auseful format Analyzedata Executedata science algorithms (ML,AI, etc.) Prepare for MLalgorithm
  • 15. 16 Identify Useful Data If the company has a virtual layer with a good coverage of data sources, this task is greatly simplified. § A data virtualization tool like Denodo can offer unified access to all data available in the company. § It abstracts the technologies underneath, offering a standard SQL interface to query and manipulate. To further simplify the challenge, Denodo offers a Data Catalog to search, find and explore your data assets.
  • 16. 17 Data Scientist Workflow Identify useful data Modify datainto auseful format Analyzedata Executedata science algorithms (ML,AI, etc.) Prepare for MLalgorithm
  • 17. 18 Data Virtualization offers the unique opportunity of using standard SQL (joins, aggregations, transformations, etc.) to access, manipulate and analyze any data. Cleansing and transformation steps can be easily accomplished in SQL. Its modeling capabilities enable the definition of views that embed this logic to foster reusability. Ingestion And Data Manipulation Tasks
  • 19. 20 Prologis Launches Data Analytics Program for Cost Optimization Background § Create a single governed data access layer to create reusable and consistent analytical assets that could be used by the rest of the business teams to run their own analytics. § Save time for data scientists in finding , transforming and analysing data sets without having to learn new skills and create data models that could be refreshed on demand. § Efficiently maintain its new data architecture with minimum downtime and configuration management. Prologis is the largest industrial real estate company in the world, serving 5000 customers in over 20 countries and USD 87 billion in assets under management.
  • 20. 21 Prologis Architecture Diagram wc_monthly_occupancy_rpt_f wc_lease_amendment_d w_day_d wc_property_d MARKET_AVAILABILITY_CURRENT MARKET_AVAILABILITY_FUTURE Prologis SnowFlake API Access Informatica Cloud ShareHouse ODBC JDBC peoplesoft_gl_actuals yardi_unit_leasing p360_property WAF AWS Lambda APIs
  • 21. 22 Data Virtualization Benefits Experienced by Prologis § The analytics team was able to create business focussed subject areas with consistent data sets that were 30% faster in speed to analytics. § Denodo made it possible for Prologis to quick start advanced analytics projects. § The Denodo platform’s deployment was as easy as a click of a button with centralized configuration management. This simplified Prologis’s data architecture and also helped bring down the overall maintenance cost.
  • 22. 23 Luke Slotwinski, VP, IT Data and Analytics at Prologis The speed of business is faster than before. It is now critical to be able to make decisions on a dime to pivot the business in its needed direction. This is why Prologis went with the Denodo Platform.
  • 23. 24 ü Denodo can play key role in the data science ecosystem to reduce data exploration and analysis timeframes. ü Extends and integrates with the capabilities of notebooks, Python, R, etc. to improve the toolset of the data scientist. ü Provides a modern “SQL-on-Anything” engine. ü Can leverage Big Data technologies like Spark (as a data source, an ingestion tool and for external processing) to efficiently work with large data volumes. ü New and expanded tools for data scientists and citizen analysts: “Apache Zeppelin for Denodo” Notebook. Data Virtualization Benefits for AI and Machine Learning Projects
  • 24. Product Demonstration Chris Day Director, APAC Sales Engineering, Denodo
  • 25. 26 Key Takeaways ü Information architectures are getting more complex, more diverse, and more distributed. ü Traditional technologies and data replication don’t cut it anymore. ü Data virtualization makes it quick and easy to expose data from multiple source to your users. ü Data virtualization provides a governance and management infrastructure required for successful data management.
  • 26. Q&A
  • 29. Thanks! www.denodo.com [email protected] © 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.