SlideShare a Scribd company logo
1 of 35
Download to read offline
WEBINAR
The Value of Customer
Insights & Analytics in a
Modern Retail Environment
The use of a logical data fabric
WEBINAR
The Value of Customer
Insights & Analytics in a
Modern Retail Environment
Robin Tandon
Director of Product Marketing, EMEA & LATAM
Denodo
The use of a logical data fabric
Speaker
Robin Tandon
Product Marketing Director, Denodo
Agenda
1. The Challenges of Retail
2. The Logical Data Fabric in Retail
3. Case Studies
1. Eroski
2. City Furniture
3. Walmart (Mexico)
The Challenges of Retail
6
The challenges of retail
It all begins and ends with a happy customer
Customer
Experience
Operational
Efficiency
Financial
Performance
7
Typical retail landscape
ERP
Supply Chain
Logistics
Warehousing Warehouse Head Office
Contact Center
In store
Ecommerce
Point of Sale
CRM
ERP
CRM
Call Recording
UCaaS Platform
CRM
Digital Marketing
ERP
Big Data
Supply Chain
BI & Analytics
Data Science
Google Analytics
Marketing Cookies
ERP
Ecommerce Platform
That’s Easy to Figure Out?
9
Can you consolidate all your data to a single location?
Data warehouse Data lake Cloud
10
Just put all the data in one place!
Cloud Data
1990s
Data Warehouse
Age
2010s
Big Data
Age
2020s
Modern Data
Age
2000s
Cloud / Social
Age
Database
ERP
ODS
ERP
ERP
ERP
ERP
Database
Database
Database Database
Data
Warehouse
Social Data
Big Data
Visualization
Mobile
Web
Internet of
Things
Connected
Devices
Autonomous Cars
1980s
Database
Age
11
Data is distributed
Forces of Data Anti Gravity
13
Data anti-gravity
Geography
Ownership
Technology
How Do We Fix This?
15
Gartner – The Evolution of Analytical Environments
This is a Second Major Cycle of Analytical Consolidation
Operational Application
Operational Application
Operational Application
IoT Data
Other NewData
Operational
Application
Operational
Application
Cube
Operational
Application
Cube
? Operational Application
Operational Application
Operational Application
IoT Data
Other NewData
1980s
Pre EDW
1990s
EDW
2010s
2000s
Post EDW
Time
LDW
Operational
Application
Operational
Application
Operational
Application
Data
Warehouse
Data
Warehouse
Data
Lake
?
LDW
Data Warehouse
Data Lake
Marts
ODS
Staging/Ingest
Unified analysis
› Consolidated data
› "Collect the data"
› Single server, multiple nodes
› More analysis than any
one server can provide
©2018 Gartner, Inc.
Unified analysis
› Logically consolidated view of all data
› "Connect and collect"
› Multiple servers, of multiple nodes
› More analysis than any one system can provide
Fragmented/
nonexistent analysis
› Multiple sources
› Multiple structured sources
Fragmented analysis
› "Collect the data" (Into
› different repositories)
› New data types,
› processing, requirements
› Uncoordinated views
Just put all the data in one place!
Data Fabric – A Logical Approach to Data
Integration and Data Management
17
Modern data fabric
Data Fabric Net
Compounds Customers Products Claims
RDBMS/OLTP Traditional Analytics/BI Data Lakes Cloud Data Stores Apps and Document
Repositories
Flat Files
Third Party
Legacy
Mart
Data Warehouse
Mart
ETL ETL
XML • JSON • PDF
DOC • WEB
A data fabric is an architecture pattern that informs and automates the design, integration and
deployment of data objects regardless of deployment platforms and architectural approaches
▪ It utilizes continuous analytics and AI/ML over all metadata assets to provide actionable insights and recommendations
on data management and integration design and deployment patterns.
▪ This results in faster, informed and, in some cases, completely automated data access and sharing
▪ Strongly supported by both Gartner and Forrester
What is a Logical Data Fabric?
19
Logical data fabric
Logical Data
Fabric
Consumers
Data
Science
Machine
Learning
Artificial
Intelligence
Mobile
Applications
Predictive
Analytics
Business
Intelligence
Relational NoSQL Unstructured Docs Cloud Sensors IoT
Sources
Unified Data Security
Abstraction Layer
Universal Access
Self-
Servic
e
Data
Catalo
g
20
Denodo Platform architecture
DATA CATALOG
Discover - Explore - Document
DATA AS A SERVICE
RESTful / OData
GraphQL / GeoJSON
BI Tools Data Science Tools
SQL
CONSUMERS
DATA VIRTUALIZATION
CONNECT
to disparate data
in any location, format
or latency
COMBINE
related data into views
with universal semantic
model
CONSUME
using BI & data science
tools, data catalog,
and APIs
Self-Service
Hybrid/
Multi-Cloud
Data
Governance
Query
Optimization
AI//ML
Recommendations
Security
LOGICAL
DATA
FABRIC
SOURCES
Traditional
DB & DW
150+
data
adapters
Cloud
Stores
Hadoop
& NoSQL OLAP Files Apps Streaming SaaS
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
The Denodo Platform
• Data Abstraction: decoupling
applications/data usage from data
sources
• Data Integration without
replication or relocation 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
22
Three core components of a logical data fabric
AI/ML
Features
Logical Data
Warehouse
DATA VIRTUALIZATION
Enterprise Systems NoSQL
Hadoop
Data Warehouse
ETL
BI / Reporting
Analytics
Key Retail Use Case Studies
24
Customer use case: Eroski
Business Need
▪ Eroski wanted to improve their view of
the customer, but their customer data
was held across over 30 different data
sources. These included customer
service, online activity, the Eroski loyalty
program as well as other sources, such
as consumer partnership data. Eroski
wanted to create a true 360 view of the
customer.
▪ Eroski’s marketing intelligence division
needed to create segment based
customer marketing initiatives based on
the demographic profile of their
customers
▪ The Denodo Platform for Data
Virtualization was invaluable in achieving
the business objectives of creating a
unified view. Denodo creates a virtualized
master data mart. Denodo connects to all
the disparate data sources seamlessly
creating a single unified view of the
customer. Denodo is also completely
flexible allowing Eroski to add data
sources such as social media or new
partnership data in real time allowing for
instant knowledge of end consumer.
Denodo helps Eroski have a full 360
view of the client.
Eroski was able to:
▪ Build client cards for individual customers
and make them available to stakeholders
▪ Enable customer analytics, based on all
available information through studies,
segmentation, and models
▪ Create comprehensive reports of
customer behavior
▪ Improve security and reduce risks related
to customers’ personal information
Solution Benefits
Operates approximately 2,000 retail outlets in particular supermarket
and hypermarkets across Spain as well as travel offices and gas
stations.
25
Customer use case: Eroski
360° View of Customer
Enabled business users with
360° view of customer to
better understand
customer emotions, brand
preferences and purchase
patterns
With Denodo acting as a
unifying layer on top of
multiple data sources, a
consolidated view of the
customer was created.
Enabling Eroski to better
understand and react to
customer needs
26
Why? Let’s use a case study
• Need to reduce package delivery time to remain competitive in the online
shopping arena.
▪ Original delivery time was 3 days
▪ Wanted to offer next-day delivery
• From online shopping cart to delivery, data goes through multiple applications
▪ Accumulated delay for status updates and communication between
applications adds up
• Real-time analytics could provide a fresher look at data to speed up the
process
• Huge ROI potential
• Challenges:
▪ Complex ecosystem, multiple data source types, large data volumes
27
Customer use case: Walmart - Mexico
Business Need
▪ Ecommerce Poor Sync with Inventory
resulting in 5 mins delay between order
being placed and store receiving the
order
▪ Data Lake: Slow Access and Poor
processing on Queries
▪ Data migrations & Restore – Issues with
data access during migration and time to
restore
▪ Data Governance & Security – Complex
point to Point Data Governance
▪ Real Time Access to Ecommerce Data
Sources – Leads to Real time sync
avoiding process pitfalls, inconsistencies
& loses.
▪ Denodo Real time Access with our logical
layer & Data Catalogue helps remove
layers of data replication costs to
expensive data marts and data lakes
▪ Data Virtualization layer used as a logical
layer between relational data bases and
cloud migration to Azure
▪ Denodo Single Point of Entry Walmart to
simplify maintenance, Data Governance
& Security to manage final users
privileges & Access
• Ecommerce Challenge: Reduction in
order cancellation due to optimized
inventory and improvements in in store
order processing
• Data Lake Challenge: Access very slow
Outcome: Denodo’s query optimization
technology vastly improved query
processing.
• Cloud Migrations: Data virtualization
provides a logical layer to safely migrate
in real time data to the Azure cloud
• Data Governance & Security
Challenge: The Denodo platform
provides a single intelligent interface to
manage security and governance-
improving regulatory compliance
Solution Benefits
Part of the global Walmart group, operates 2,755 stores across
Mexico, including 294 Walmart Supercentre stores and 166 Sam’s
Club outlets. Walmart Mexico (Walmex).
28
Data virtualization benefits for Walmart
Sources Data Virtualization
STAGIN
G
REPOSITO
RY
Data
Caching
Master
Catalo
g
Sensors
ED
W
Early
Discovery
Global
Local
Social
Data Platform
OD
S
No
SQ
L
Data
Produc
ts
DATA
MART
S
Cost
Based
Optimizer
Local Data
Marts &
Consumption
External
Located
on Cloud
Located
on
Premise
Custom
Catalog
Files
Data Discovery /
Self Service
Advanced
Analytics
DATA GOVERNANCE
Dashboar
ds
Streamin
g
Batc
h
SQ
L
Project Highlights:
• Data Governance across the data
sources
• Simplification of data estate
• Supply chain
29
Customer use case: City Furniture
Business Need
▪ Their ETL processes were slow
and cumbersome impeding many
important initiatives
▪ The com needed a centralized data
source to provide real time
accurate data to diverse teams
▪ City Furniture integrated the
Denodo Platform into its data
architecture as the highest-level
data layer for all analytics and
operational systems. City Furniture
connected all data sources, from
basic flat-file Excel spreadsheets,
to cloud databases, to a legacy
IBM iSeries server platform, to the
Denodo Platform's virtual layer.
• Accelerate data access, which,
during the pandemic, helped in
timing the market, picking up
market share, and maximizing
profits
• Enabled City Furniture to deliver 40
new reports that are full of
actionable production insight, and
they are driving better business
decisions every day.
• This project resulted in a deep
cultural shift. It moved data from
having an “orbital” position in the
organization to being part of the
very nucleus of it.
Solution Benefits
Founded in 1971 by Kevin Kong has grown to include 2 key brands,
City Furniture and Ashley Furniture Homestore, operating from 29
outlets across the state of Florida, with planned expansions through
out the south east of the United States
30
Enterprise Applications
(e.g.: MyDay, ASAP, Web, High Jump)
Vendor
SFTP,
APIs
Sales
Supply Chain
Operations
Marketing
Digital
Merchandising
DW
Real Time
KPIs
1 E. Architect
2 IBM
Consultant
4 Data
Engineer
0 Data
Scientist
5 Analysts
2019
Q4
Linux ETL
and
Monitoring
Server
Data
Modeling
Confidentiality Disclaimer:
The content of this presentation is proprietary and confidential information of City Furniture. It is not intended to be distributed to any third party without consent of City Furniture.
31
2020-
21
Base View Virtual Layer
Enterprise Applications
(e.g.: MyDay, ASAP, Opportunities)
High
Jump
Spreadsheet SMTP
Business
Intelligence/DS/ML
Data Modeling
GS
Linux ETL
and
Monitori
ng Server
Machine
Learning
Docker
Sales
Supply
Chain
Operations
Marketing
Digital
Merchandising
DW
Scheduling Server
Data Catalogue
Base View Data Modeling
BigQuery
32
Conclusions
✔ Retail have specific data integration and data management
needs
✔ A logical approach helps businesses become more agile and
derive value faster
✔ Data virtualization empowers retailers to know their
customers with a 360° view
✔ Its not possible to centralize all data into a single location –
so modern data architectures such as a logical data fabric
need to be embraced.
Q&A
34
Next Steps
Access Denodo Platform in the Cloud.
Start your Free Trial today!
G E T S TA R T E D TO DAY
www.denodo.com/free-trials
Logical Data Fabric
A Technical Whitepaper
DOWNLOAD WHITEPAPER
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

Similar to The Value of Customer Insights & Analytics in a Modern Retail Environment

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)Denodo
 
Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)Denodo
 
Fast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationFast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationDenodo
 
How to Place Data at the Center of Digital Transformation in BFSI
How to Place Data at the Center of Digital Transformation in BFSIHow to Place Data at the Center of Digital Transformation in BFSI
How to Place Data at the Center of Digital Transformation in BFSIDenodo
 
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 VisualizationDenodo
 
Data Virtualization. An Introduction (ASEAN)
Data Virtualization. An Introduction (ASEAN)Data Virtualization. An Introduction (ASEAN)
Data Virtualization. An Introduction (ASEAN)Denodo
 
Finding Your Ideal Data Architecture: Data Fabric, Data Mesh or Both?
Finding Your Ideal Data Architecture: Data Fabric, Data Mesh or Both?Finding Your Ideal Data Architecture: Data Fabric, Data Mesh or Both?
Finding Your Ideal Data Architecture: Data Fabric, Data Mesh or Both?Denodo
 
Data Virtualization: From Zero to Hero
Data Virtualization: From Zero to HeroData Virtualization: From Zero to Hero
Data Virtualization: From Zero to HeroDenodo
 
Accelerate Digital Transformation with Data Virtualization in Banking, Financ...
Accelerate Digital Transformation with Data Virtualization in Banking, Financ...Accelerate Digital Transformation with Data Virtualization in Banking, Financ...
Accelerate Digital Transformation with Data Virtualization in Banking, Financ...Denodo
 
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 Denodo
 
Rethink Your 2021 Data Management Strategy with Data Virtualization (ASEAN)
Rethink Your 2021 Data Management Strategy with Data Virtualization (ASEAN)Rethink Your 2021 Data Management Strategy with Data Virtualization (ASEAN)
Rethink Your 2021 Data Management Strategy with Data Virtualization (ASEAN)Denodo
 
Your Data is Waiting. What are the Top 5 Trends for Data in 2022? (ASEAN)
Your Data is Waiting. What are the Top 5 Trends for Data in 2022? (ASEAN)Your Data is Waiting. What are the Top 5 Trends for Data in 2022? (ASEAN)
Your Data is Waiting. What are the Top 5 Trends for Data in 2022? (ASEAN)Denodo
 
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
 
Big Data LDN 2018: DATA MANAGEMENT AUTOMATION AND THE INFORMATION SUPPLY CHAI...
Big Data LDN 2018: DATA MANAGEMENT AUTOMATION AND THE INFORMATION SUPPLY CHAI...Big Data LDN 2018: DATA MANAGEMENT AUTOMATION AND THE INFORMATION SUPPLY CHAI...
Big Data LDN 2018: DATA MANAGEMENT AUTOMATION AND THE INFORMATION SUPPLY CHAI...Matt Stubbs
 
Real World Use Cases and Success Stories for In-Memory Data Grids (TIBCO Acti...
Real World Use Cases and Success Stories for In-Memory Data Grids (TIBCO Acti...Real World Use Cases and Success Stories for In-Memory Data Grids (TIBCO Acti...
Real World Use Cases and Success Stories for In-Memory Data Grids (TIBCO Acti...Kai Wähner
 
Logitech Accelerates Cloud Analytics Using Data Virtualization by Avinash Des...
Logitech Accelerates Cloud Analytics Using Data Virtualization by Avinash Des...Logitech Accelerates Cloud Analytics Using Data Virtualization by Avinash Des...
Logitech Accelerates Cloud Analytics Using Data Virtualization by Avinash Des...Data Con LA
 
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
 
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Denodo
 
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 ArchitectureDATAVERSITY
 
Why Your Data Science Architecture Should Include a Data Virtualization Tool ...
Why Your Data Science Architecture Should Include a Data Virtualization Tool ...Why Your Data Science Architecture Should Include a Data Virtualization Tool ...
Why Your Data Science Architecture Should Include a Data Virtualization Tool ...Denodo
 

Similar to The Value of Customer Insights & Analytics in a Modern Retail Environment (20)

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: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)
 
Fast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationFast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow Presentation
 
How to Place Data at the Center of Digital Transformation in BFSI
How to Place Data at the Center of Digital Transformation in BFSIHow to Place Data at the Center of Digital Transformation in BFSI
How to Place Data at the Center of Digital Transformation in BFSI
 
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
 
Data Virtualization. An Introduction (ASEAN)
Data Virtualization. An Introduction (ASEAN)Data Virtualization. An Introduction (ASEAN)
Data Virtualization. An Introduction (ASEAN)
 
Finding Your Ideal Data Architecture: Data Fabric, Data Mesh or Both?
Finding Your Ideal Data Architecture: Data Fabric, Data Mesh or Both?Finding Your Ideal Data Architecture: Data Fabric, Data Mesh or Both?
Finding Your Ideal Data Architecture: Data Fabric, Data Mesh or Both?
 
Data Virtualization: From Zero to Hero
Data Virtualization: From Zero to HeroData Virtualization: From Zero to Hero
Data Virtualization: From Zero to Hero
 
Accelerate Digital Transformation with Data Virtualization in Banking, Financ...
Accelerate Digital Transformation with Data Virtualization in Banking, Financ...Accelerate Digital Transformation with Data Virtualization in Banking, Financ...
Accelerate Digital Transformation with Data Virtualization in Banking, Financ...
 
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
 
Rethink Your 2021 Data Management Strategy with Data Virtualization (ASEAN)
Rethink Your 2021 Data Management Strategy with Data Virtualization (ASEAN)Rethink Your 2021 Data Management Strategy with Data Virtualization (ASEAN)
Rethink Your 2021 Data Management Strategy with Data Virtualization (ASEAN)
 
Your Data is Waiting. What are the Top 5 Trends for Data in 2022? (ASEAN)
Your Data is Waiting. What are the Top 5 Trends for Data in 2022? (ASEAN)Your Data is Waiting. What are the Top 5 Trends for Data in 2022? (ASEAN)
Your Data is Waiting. What are the Top 5 Trends for Data in 2022? (ASEAN)
 
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)
 
Big Data LDN 2018: DATA MANAGEMENT AUTOMATION AND THE INFORMATION SUPPLY CHAI...
Big Data LDN 2018: DATA MANAGEMENT AUTOMATION AND THE INFORMATION SUPPLY CHAI...Big Data LDN 2018: DATA MANAGEMENT AUTOMATION AND THE INFORMATION SUPPLY CHAI...
Big Data LDN 2018: DATA MANAGEMENT AUTOMATION AND THE INFORMATION SUPPLY CHAI...
 
Real World Use Cases and Success Stories for In-Memory Data Grids (TIBCO Acti...
Real World Use Cases and Success Stories for In-Memory Data Grids (TIBCO Acti...Real World Use Cases and Success Stories for In-Memory Data Grids (TIBCO Acti...
Real World Use Cases and Success Stories for In-Memory Data Grids (TIBCO Acti...
 
Logitech Accelerates Cloud Analytics Using Data Virtualization by Avinash Des...
Logitech Accelerates Cloud Analytics Using Data Virtualization by Avinash Des...Logitech Accelerates Cloud Analytics Using Data Virtualization by Avinash Des...
Logitech Accelerates Cloud Analytics Using Data Virtualization by Avinash Des...
 
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
 
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
 
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
 
Why Your Data Science Architecture Should Include a Data Virtualization Tool ...
Why Your Data Science Architecture Should Include a Data Virtualization Tool ...Why Your Data Science Architecture Should Include a Data Virtualization Tool ...
Why Your Data Science Architecture Should Include a Data Virtualization Tool ...
 

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

Data Science Project: Advancements in Fetal Health Classification
Data Science Project: Advancements in Fetal Health ClassificationData Science Project: Advancements in Fetal Health Classification
Data Science Project: Advancements in Fetal Health ClassificationBoston Institute of Analytics
 
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
 
Data Warehouse , Data Cube Computation
Data Warehouse   , Data Cube ComputationData Warehouse   , Data Cube Computation
Data Warehouse , Data Cube Computationsit20ad004
 
{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
 
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Serviceranjana rawat
 
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
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Callshivangimorya083
 
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝soniya singh
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfgstagge
 
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Service
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts ServiceCall Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Service
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Servicejennyeacort
 
Ukraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICSUkraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICSAishani27
 
Unveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystUnveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystSamantha Rae Coolbeth
 
04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationshipsccctableauusergroup
 
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 High Class Call Girls Bikaner Anushka 8250192130 Independent Escort Servi...
VIP High Class Call Girls Bikaner Anushka 8250192130 Independent Escort Servi...VIP High Class Call Girls Bikaner Anushka 8250192130 Independent Escort Servi...
VIP High Class Call Girls Bikaner Anushka 8250192130 Independent Escort Servi...Suhani Kapoor
 
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
 
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Callshivangimorya083
 
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiLow Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiSuhani Kapoor
 
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...Jack DiGiovanna
 
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfMarket Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfRachmat Ramadhan H
 

Recently uploaded (20)

Data Science Project: Advancements in Fetal Health Classification
Data Science Project: Advancements in Fetal Health ClassificationData Science Project: Advancements in Fetal Health Classification
Data Science Project: Advancements in Fetal Health Classification
 
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
 
Data Warehouse , Data Cube Computation
Data Warehouse   , Data Cube ComputationData Warehouse   , Data Cube Computation
Data Warehouse , Data Cube Computation
 
{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...
 
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
(PARI) Call Girls Wanowrie ( 7001035870 ) HI-Fi Pune Escorts Service
 
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
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
 
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Defence Colony Delhi 💯Call Us 🔝8264348440🔝
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdf
 
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Service
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts ServiceCall Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Service
Call Girls In Noida City Center Metro 24/7✡️9711147426✡️ Escorts Service
 
Ukraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICSUkraine War presentation: KNOW THE BASICS
Ukraine War presentation: KNOW THE BASICS
 
Unveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data AnalystUnveiling Insights: The Role of a Data Analyst
Unveiling Insights: The Role of a Data Analyst
 
04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships04242024_CCC TUG_Joins and Relationships
04242024_CCC TUG_Joins and Relationships
 
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 High Class Call Girls Bikaner Anushka 8250192130 Independent Escort Servi...
VIP High Class Call Girls Bikaner Anushka 8250192130 Independent Escort Servi...VIP High Class Call Girls Bikaner Anushka 8250192130 Independent Escort Servi...
VIP High Class Call Girls Bikaner Anushka 8250192130 Independent Escort Servi...
 
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
 
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
꧁❤ Greater Noida Call Girls Delhi ❤꧂ 9711199171 ☎️ Hard And Sexy Vip Call
 
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service BhilaiLow Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
Low Rate Call Girls Bhilai Anika 8250192130 Independent Escort Service Bhilai
 
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
 
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfMarket Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
 

The Value of Customer Insights & Analytics in a Modern Retail Environment

  • 1. WEBINAR The Value of Customer Insights & Analytics in a Modern Retail Environment The use of a logical data fabric
  • 2. WEBINAR The Value of Customer Insights & Analytics in a Modern Retail Environment Robin Tandon Director of Product Marketing, EMEA & LATAM Denodo The use of a logical data fabric
  • 4. Agenda 1. The Challenges of Retail 2. The Logical Data Fabric in Retail 3. Case Studies 1. Eroski 2. City Furniture 3. Walmart (Mexico)
  • 6. 6 The challenges of retail It all begins and ends with a happy customer Customer Experience Operational Efficiency Financial Performance
  • 7. 7 Typical retail landscape ERP Supply Chain Logistics Warehousing Warehouse Head Office Contact Center In store Ecommerce Point of Sale CRM ERP CRM Call Recording UCaaS Platform CRM Digital Marketing ERP Big Data Supply Chain BI & Analytics Data Science Google Analytics Marketing Cookies ERP Ecommerce Platform
  • 8. That’s Easy to Figure Out?
  • 9. 9 Can you consolidate all your data to a single location? Data warehouse Data lake Cloud
  • 10. 10 Just put all the data in one place! Cloud Data 1990s Data Warehouse Age 2010s Big Data Age 2020s Modern Data Age 2000s Cloud / Social Age Database ERP ODS ERP ERP ERP ERP Database Database Database Database Data Warehouse Social Data Big Data Visualization Mobile Web Internet of Things Connected Devices Autonomous Cars 1980s Database Age
  • 12. Forces of Data Anti Gravity
  • 14. How Do We Fix This?
  • 15. 15 Gartner – The Evolution of Analytical Environments This is a Second Major Cycle of Analytical Consolidation Operational Application Operational Application Operational Application IoT Data Other NewData Operational Application Operational Application Cube Operational Application Cube ? Operational Application Operational Application Operational Application IoT Data Other NewData 1980s Pre EDW 1990s EDW 2010s 2000s Post EDW Time LDW Operational Application Operational Application Operational Application Data Warehouse Data Warehouse Data Lake ? LDW Data Warehouse Data Lake Marts ODS Staging/Ingest Unified analysis › Consolidated data › "Collect the data" › Single server, multiple nodes › More analysis than any one server can provide ©2018 Gartner, Inc. Unified analysis › Logically consolidated view of all data › "Connect and collect" › Multiple servers, of multiple nodes › More analysis than any one system can provide Fragmented/ nonexistent analysis › Multiple sources › Multiple structured sources Fragmented analysis › "Collect the data" (Into › different repositories) › New data types, › processing, requirements › Uncoordinated views Just put all the data in one place!
  • 16. Data Fabric – A Logical Approach to Data Integration and Data Management
  • 17. 17 Modern data fabric Data Fabric Net Compounds Customers Products Claims RDBMS/OLTP Traditional Analytics/BI Data Lakes Cloud Data Stores Apps and Document Repositories Flat Files Third Party Legacy Mart Data Warehouse Mart ETL ETL XML • JSON • PDF DOC • WEB A data fabric is an architecture pattern that informs and automates the design, integration and deployment of data objects regardless of deployment platforms and architectural approaches ▪ It utilizes continuous analytics and AI/ML over all metadata assets to provide actionable insights and recommendations on data management and integration design and deployment patterns. ▪ This results in faster, informed and, in some cases, completely automated data access and sharing ▪ Strongly supported by both Gartner and Forrester
  • 18. What is a Logical Data Fabric?
  • 19. 19 Logical data fabric Logical Data Fabric Consumers Data Science Machine Learning Artificial Intelligence Mobile Applications Predictive Analytics Business Intelligence Relational NoSQL Unstructured Docs Cloud Sensors IoT Sources Unified Data Security Abstraction Layer Universal Access Self- Servic e Data Catalo g
  • 20. 20 Denodo Platform architecture DATA CATALOG Discover - Explore - Document DATA AS A SERVICE RESTful / OData GraphQL / GeoJSON BI Tools Data Science Tools SQL CONSUMERS DATA VIRTUALIZATION CONNECT to disparate data in any location, format or latency COMBINE related data into views with universal semantic model CONSUME using BI & data science tools, data catalog, and APIs Self-Service Hybrid/ Multi-Cloud Data Governance Query Optimization AI//ML Recommendations Security LOGICAL DATA FABRIC SOURCES Traditional DB & DW 150+ data adapters Cloud Stores Hadoop & NoSQL OLAP Files Apps Streaming SaaS
  • 21. 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 The Denodo Platform • Data Abstraction: decoupling applications/data usage from data sources • Data Integration without replication or relocation 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
  • 22. 22 Three core components of a logical data fabric AI/ML Features Logical Data Warehouse DATA VIRTUALIZATION Enterprise Systems NoSQL Hadoop Data Warehouse ETL BI / Reporting Analytics
  • 23. Key Retail Use Case Studies
  • 24. 24 Customer use case: Eroski Business Need ▪ Eroski wanted to improve their view of the customer, but their customer data was held across over 30 different data sources. These included customer service, online activity, the Eroski loyalty program as well as other sources, such as consumer partnership data. Eroski wanted to create a true 360 view of the customer. ▪ Eroski’s marketing intelligence division needed to create segment based customer marketing initiatives based on the demographic profile of their customers ▪ The Denodo Platform for Data Virtualization was invaluable in achieving the business objectives of creating a unified view. Denodo creates a virtualized master data mart. Denodo connects to all the disparate data sources seamlessly creating a single unified view of the customer. Denodo is also completely flexible allowing Eroski to add data sources such as social media or new partnership data in real time allowing for instant knowledge of end consumer. Denodo helps Eroski have a full 360 view of the client. Eroski was able to: ▪ Build client cards for individual customers and make them available to stakeholders ▪ Enable customer analytics, based on all available information through studies, segmentation, and models ▪ Create comprehensive reports of customer behavior ▪ Improve security and reduce risks related to customers’ personal information Solution Benefits Operates approximately 2,000 retail outlets in particular supermarket and hypermarkets across Spain as well as travel offices and gas stations.
  • 25. 25 Customer use case: Eroski 360° View of Customer Enabled business users with 360° view of customer to better understand customer emotions, brand preferences and purchase patterns With Denodo acting as a unifying layer on top of multiple data sources, a consolidated view of the customer was created. Enabling Eroski to better understand and react to customer needs
  • 26. 26 Why? Let’s use a case study • Need to reduce package delivery time to remain competitive in the online shopping arena. ▪ Original delivery time was 3 days ▪ Wanted to offer next-day delivery • From online shopping cart to delivery, data goes through multiple applications ▪ Accumulated delay for status updates and communication between applications adds up • Real-time analytics could provide a fresher look at data to speed up the process • Huge ROI potential • Challenges: ▪ Complex ecosystem, multiple data source types, large data volumes
  • 27. 27 Customer use case: Walmart - Mexico Business Need ▪ Ecommerce Poor Sync with Inventory resulting in 5 mins delay between order being placed and store receiving the order ▪ Data Lake: Slow Access and Poor processing on Queries ▪ Data migrations & Restore – Issues with data access during migration and time to restore ▪ Data Governance & Security – Complex point to Point Data Governance ▪ Real Time Access to Ecommerce Data Sources – Leads to Real time sync avoiding process pitfalls, inconsistencies & loses. ▪ Denodo Real time Access with our logical layer & Data Catalogue helps remove layers of data replication costs to expensive data marts and data lakes ▪ Data Virtualization layer used as a logical layer between relational data bases and cloud migration to Azure ▪ Denodo Single Point of Entry Walmart to simplify maintenance, Data Governance & Security to manage final users privileges & Access • Ecommerce Challenge: Reduction in order cancellation due to optimized inventory and improvements in in store order processing • Data Lake Challenge: Access very slow Outcome: Denodo’s query optimization technology vastly improved query processing. • Cloud Migrations: Data virtualization provides a logical layer to safely migrate in real time data to the Azure cloud • Data Governance & Security Challenge: The Denodo platform provides a single intelligent interface to manage security and governance- improving regulatory compliance Solution Benefits Part of the global Walmart group, operates 2,755 stores across Mexico, including 294 Walmart Supercentre stores and 166 Sam’s Club outlets. Walmart Mexico (Walmex).
  • 28. 28 Data virtualization benefits for Walmart Sources Data Virtualization STAGIN G REPOSITO RY Data Caching Master Catalo g Sensors ED W Early Discovery Global Local Social Data Platform OD S No SQ L Data Produc ts DATA MART S Cost Based Optimizer Local Data Marts & Consumption External Located on Cloud Located on Premise Custom Catalog Files Data Discovery / Self Service Advanced Analytics DATA GOVERNANCE Dashboar ds Streamin g Batc h SQ L Project Highlights: • Data Governance across the data sources • Simplification of data estate • Supply chain
  • 29. 29 Customer use case: City Furniture Business Need ▪ Their ETL processes were slow and cumbersome impeding many important initiatives ▪ The com needed a centralized data source to provide real time accurate data to diverse teams ▪ City Furniture integrated the Denodo Platform into its data architecture as the highest-level data layer for all analytics and operational systems. City Furniture connected all data sources, from basic flat-file Excel spreadsheets, to cloud databases, to a legacy IBM iSeries server platform, to the Denodo Platform's virtual layer. • Accelerate data access, which, during the pandemic, helped in timing the market, picking up market share, and maximizing profits • Enabled City Furniture to deliver 40 new reports that are full of actionable production insight, and they are driving better business decisions every day. • This project resulted in a deep cultural shift. It moved data from having an “orbital” position in the organization to being part of the very nucleus of it. Solution Benefits Founded in 1971 by Kevin Kong has grown to include 2 key brands, City Furniture and Ashley Furniture Homestore, operating from 29 outlets across the state of Florida, with planned expansions through out the south east of the United States
  • 30. 30 Enterprise Applications (e.g.: MyDay, ASAP, Web, High Jump) Vendor SFTP, APIs Sales Supply Chain Operations Marketing Digital Merchandising DW Real Time KPIs 1 E. Architect 2 IBM Consultant 4 Data Engineer 0 Data Scientist 5 Analysts 2019 Q4 Linux ETL and Monitoring Server Data Modeling Confidentiality Disclaimer: The content of this presentation is proprietary and confidential information of City Furniture. It is not intended to be distributed to any third party without consent of City Furniture.
  • 31. 31 2020- 21 Base View Virtual Layer Enterprise Applications (e.g.: MyDay, ASAP, Opportunities) High Jump Spreadsheet SMTP Business Intelligence/DS/ML Data Modeling GS Linux ETL and Monitori ng Server Machine Learning Docker Sales Supply Chain Operations Marketing Digital Merchandising DW Scheduling Server Data Catalogue Base View Data Modeling BigQuery
  • 32. 32 Conclusions ✔ Retail have specific data integration and data management needs ✔ A logical approach helps businesses become more agile and derive value faster ✔ Data virtualization empowers retailers to know their customers with a 360° view ✔ Its not possible to centralize all data into a single location – so modern data architectures such as a logical data fabric need to be embraced.
  • 33. Q&A
  • 34. 34 Next Steps Access Denodo Platform in the Cloud. Start your Free Trial today! G E T S TA R T E D TO DAY www.denodo.com/free-trials Logical Data Fabric A Technical Whitepaper DOWNLOAD WHITEPAPER
  • 35. 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.