SlideShare a Scribd company logo
1 of 12
Download to read offline
1
From Foundation to Mastery
Building a Mature Analytics Roadmap
Manav Misra
Chief Data and Analytics Officer, Regions Bank
1
The opinions expressed in the presentation are statements of the speaker’s opinion, are intended only for informational
purposes, and are not formal opinions of, nor binding on Regions Bank, its parent company, Regions Financial Corporation
and their subsidiaries, and any representation to the contrary is expressly disclaimed.
Emerging Themes in Financial Services
2
A
Paradigm Shift
CDO to
CDAO
Artificial Intelligence Journey to the Cloud Data Privacy & GDPR
Defense to
Offense
Consumer to
Consumer + Commercial + Wealth
Typical Challenges in FS Data & Analytics Landscapes
3
• Knowledge base that allows sharing of data, and
guidance on best practices
• Each group has built its own data assets and analytics
team. Limited sharing of data assets across the
organization à inefficient & costly
Desired OutcomesChallenge
• Provide a common, standardized data science platform
with strong governance, leading to more accurate,
consistent and actionable intelligence
• Limited use of best practices around data and analytics;
hard to consistently modernize practices across the
organization
• Lack of consistent definitions of data elements across
disparate data marts
1
3
• Small analytics teams provide restricted career paths
and mentoring, hard to create a broader sense of data
science community and therefore retain talent
• Centralize resources into a Center of Excellence and
then leverage resources from the COE to solve business
problems
2
• Lack of easy & secure access to governed data for self
service analytics
• Limits governance on how data are used, hard to ensure
data quality and reliability
• Create self service framework with easy access to data
that allows for standardization and ability to customize
analytics
4
From Foundation to Mastery – Building a Mature Analytics Roadmap
4
Strategy and
Leadership
Team
Culture
Data
Products
Data
Management
Data Science
Platform
Steps in Creating a Data-Driven Organization
1. Strategy and Leadership Team
5
§ Ability to create
bridge between
business units and
data & analytics
§ Understand business
requirements
§ Build business cases
§ Create the roadmap
of deliverable data
products
§ Lead teams to deliver
data products
Captain of the Bridge The Logical Brain Data The Engineer The Navigator
§ Provides guidance on
Data Science
(Predictive AI, ML)
§ How to solve
problems, address
issues
§ Encyclopedic
knowledge of
advanced analytics
algorithms
§ How to use them to
solve business
problems
§ Deep knowledge of
the data in the org
§ Builds the structure &
controls to govern
data
§ Facilitates knowledge
sharing on how the
data is being used
across the Enterprise
§ Fosters sharing of
data assets across the
Enterprise
§ Technical wizard who
knows the data
science platform in
and out
§ Provides architectural
guidance to create
the data science
platform
§ Resourceful and the
one to go to when
you need data
architecture
guidance
§ Visualization expert
who can help a
business user choose
the right type of
visualization
§ Enhance the
effectiveness of data-
driven insight
§ Knows the tools, but
more so, the
visualization
techniques to best
depict specific results
Data Products Data Science / AI Data Management Data Engineering Visualization
DATA &
Analytics
Product
Discipline
Data products are value-based systems whose primary objective is to use data to facilitate end goal
“ - DJ Patil (Former Chief Data Scientists of the United States)
“
2. Data Products
Live Traffic
Route-Optimizations
Intelligent Rebookings
Pricing Optimization
Fraud Analytics
Commercial Analytics
ROSIE
Movie Recommendations
7
Intuitive, Self Guided
UI Experience
Insights powered by
data and analytics
Recommendation
Based Alert/Action
Continuous learning
and closed feedback
loop
Multi-disciplinary Skills Needed
2. Data Products
Business / Domain
Expertise
Data
Management &
User Experience
Data Science
Customer
Obsessed
3. Data Science Platform
OLAP on
Hadoop
(Flat Files,
Log Files)
(Internal)
Deposit, Loan,
Credit Wealth
(Mainframe)
RCIF
External &
Third Party
APIs/Services
Data Sources
Streaming
SFTP
Custom
Parsers
SQOOP
Batch Data
Movement
Data Wrangling
Data
Catalog
Business
Intelligence
ReportingMaster Data
Management
API Management
DataQuality
Modeling
Environment
Model
Management
UI Layer
Storage
Process
Hive
Pig
Batch
Spark
Streaming
Stream
Impala
Hive (on
Spark)
Spark SQL
SQL
Solr
Search
Spark Mllib
Python
R
Scala
Model
Compute
Grid
Current Data Environment
8
Modern Machine Learning Platform
Data
Manipulation
ApplicationDataStorageCompute
App Database
(DynamoDB, Postrgres, Firestore)
Streaming
(Kafka, Flink)
S3, Azure Blob
Storage, GCP
Cloud Storage,
HDFS
Metadata
Management
(Glue, GCP Data
Catalog)
Feature Engineering
(Step Functions+EMR,
Airflow+Spark, Data Proc)
Spark on
Kubernetes
TPU/GPU Hosted Notebooks
BI and OLAP on
Hadoop
(AWS quicksight,
Power BI, Arcadia)
Experimentation
(Polyaxon, MLFlow,
Kubeflow)
Trained model is deployed as a
webservice in a Kubernetes environment
3. Data Science Platform
9
4. Data Management
Smart Data Catalog
Discover, Curate, Glossary
Ratings & Review, Self-Learn
Data Management and
Governance
Operationalize Data Lake
Removing Silos
Data Lake Zones
Data Privacy
Proactive protection
CCPA, GDPR
Data Quality
Define, Assess and Analyze
Improve, Implement and Manage
10
5. Culture
Data Products
Sponsorship
Buy-In
Integration
Measure
Vision
Culture
• Make Regions a best in class Data-Driven Organization
• Develop end-to-end Data Products, with Executive Sponsorship, full
Buy-In and complete Integration with in the business units
• Deliver Measurable bottom-line benefits to Regions by applying
advanced analytics on internal and external data
11
Roadmap to a Data-Driven Future…
12
1 3 5
2 4 6
ORGANIZE TO LEARN ESTABLISH KEY PRIORITIES SECURE EARLY WINS
DEFINE STRATEGIC INTENT BUILD THE LEADERSHIP TEAM CREATE SUPPORTING ALLIANCES

More Related Content

What's hot

What's hot (19)

How Do We Use a Business or Regulatory Event to Improve Your Data Management ...
How Do We Use a Business or Regulatory Event to Improve Your Data Management ...How Do We Use a Business or Regulatory Event to Improve Your Data Management ...
How Do We Use a Business or Regulatory Event to Improve Your Data Management ...
 
Business Value of Data
Business Value of Data Business Value of Data
Business Value of Data
 
Abn amro altares Marijne le Comte
Abn amro altares Marijne le ComteAbn amro altares Marijne le Comte
Abn amro altares Marijne le Comte
 
The Data Driven Enterprise - Roadmap to Big Data & Analytics Success
The Data Driven Enterprise - Roadmap to Big Data & Analytics SuccessThe Data Driven Enterprise - Roadmap to Big Data & Analytics Success
The Data Driven Enterprise - Roadmap to Big Data & Analytics Success
 
How big data is transforming BI
How big data is transforming BIHow big data is transforming BI
How big data is transforming BI
 
Enterprise Information Architecture: Empowering AI in the Digital Workplace
Enterprise Information Architecture: Empowering AI in the Digital WorkplaceEnterprise Information Architecture: Empowering AI in the Digital Workplace
Enterprise Information Architecture: Empowering AI in the Digital Workplace
 
Operationalizing Data Science: The Right Architecture and Tools
Operationalizing Data Science: The Right Architecture and ToolsOperationalizing Data Science: The Right Architecture and Tools
Operationalizing Data Science: The Right Architecture and Tools
 
Data Driven Strategy Analytics Technology Approach Corporate
Data Driven Strategy Analytics Technology Approach CorporateData Driven Strategy Analytics Technology Approach Corporate
Data Driven Strategy Analytics Technology Approach Corporate
 
Slides: Go Beyond Dashboards With the Next Generation of Analytics
Slides: Go Beyond Dashboards With the Next Generation of AnalyticsSlides: Go Beyond Dashboards With the Next Generation of Analytics
Slides: Go Beyond Dashboards With the Next Generation of Analytics
 
Five Pitfalls when Operationalizing Data Science and a Strategy for Success
Five Pitfalls when Operationalizing Data Science and a Strategy for SuccessFive Pitfalls when Operationalizing Data Science and a Strategy for Success
Five Pitfalls when Operationalizing Data Science and a Strategy for Success
 
Competitive Intelligence and Big Data
Competitive Intelligence and Big DataCompetitive Intelligence and Big Data
Competitive Intelligence and Big Data
 
NLB Analytics Overview
NLB Analytics OverviewNLB Analytics Overview
NLB Analytics Overview
 
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
 
Seagate
SeagateSeagate
Seagate
 
Bigdata for sme-industrial intelligence information-24july2017-final
Bigdata for sme-industrial intelligence information-24july2017-finalBigdata for sme-industrial intelligence information-24july2017-final
Bigdata for sme-industrial intelligence information-24july2017-final
 
Foundational Strategies for Trust in Big Data Part 2: Understanding Your Data
Foundational Strategies for Trust in Big Data Part 2: Understanding Your DataFoundational Strategies for Trust in Big Data Part 2: Understanding Your Data
Foundational Strategies for Trust in Big Data Part 2: Understanding Your Data
 
Big Data for Finance – Challenges in High-Frequency Trading
Big Data for Finance – Challenges in High-Frequency TradingBig Data for Finance – Challenges in High-Frequency Trading
Big Data for Finance – Challenges in High-Frequency Trading
 
Five Critical Success Factors for Embedded Analytics
Five Critical Success Factors for Embedded AnalyticsFive Critical Success Factors for Embedded Analytics
Five Critical Success Factors for Embedded Analytics
 
Business Analytics Overview
Business Analytics OverviewBusiness Analytics Overview
Business Analytics Overview
 

Similar to From Foundation to Mastery – Building a Mature Analytics Roadmap - Manav Misra

Governed Self-service BI
Governed Self-service BIGoverned Self-service BI
Governed Self-service BI
Frank Silva
 
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...
Aggregage
 
Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!
Jeffrey T. Pollock
 

Similar to From Foundation to Mastery – Building a Mature Analytics Roadmap - Manav Misra (20)

Gse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-sharedGse uk-cedrinemadera-2018-shared
Gse uk-cedrinemadera-2018-shared
 
ADV Slides: What the Aspiring or New Data Scientist Needs to Know About the E...
ADV Slides: What the Aspiring or New Data Scientist Needs to Know About the E...ADV Slides: What the Aspiring or New Data Scientist Needs to Know About the E...
ADV Slides: What the Aspiring or New Data Scientist Needs to Know About the E...
 
Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)
Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)
Empowering your Enterprise with a Self-Service Data Marketplace (ASEAN)
 
Data Profiling: The First Step to Big Data Quality
Data Profiling: The First Step to Big Data QualityData Profiling: The First Step to Big Data Quality
Data Profiling: The First Step to Big Data Quality
 
Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...
Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...
Apache Hadoop Summit 2016: The Future of Apache Hadoop an Enterprise Architec...
 
The Future of Apache Hadoop an Enterprise Architecture View
The Future of Apache Hadoop an Enterprise Architecture ViewThe Future of Apache Hadoop an Enterprise Architecture View
The Future of Apache Hadoop an Enterprise Architecture View
 
ADV Slides: Data Pipelines in the Enterprise and Comparison
ADV Slides: Data Pipelines in the Enterprise and ComparisonADV Slides: Data Pipelines in the Enterprise and Comparison
ADV Slides: Data Pipelines in the Enterprise and Comparison
 
Augmentation, Collaboration, Governance: Defining the Future of Self-Service BI
Augmentation, Collaboration, Governance: Defining the Future of Self-Service BIAugmentation, Collaboration, Governance: Defining the Future of Self-Service BI
Augmentation, Collaboration, Governance: Defining the Future of Self-Service BI
 
Governed Self-service BI
Governed Self-service BIGoverned Self-service BI
Governed Self-service BI
 
DataOps - Big Data and AI World London - March 2020 - Harvinder Atwal
DataOps - Big Data and AI World London - March 2020 - Harvinder AtwalDataOps - Big Data and AI World London - March 2020 - Harvinder Atwal
DataOps - Big Data and AI World London - March 2020 - Harvinder Atwal
 
Building enterprise advance analytics platform
Building enterprise advance analytics platformBuilding enterprise advance analytics platform
Building enterprise advance analytics platform
 
Big data Analytics
Big data AnalyticsBig data Analytics
Big data Analytics
 
Building the Artificially Intelligent Enterprise
Building the Artificially Intelligent EnterpriseBuilding the Artificially Intelligent Enterprise
Building the Artificially Intelligent Enterprise
 
BAR360 open data platform presentation at DAMA, Sydney
BAR360 open data platform presentation at DAMA, SydneyBAR360 open data platform presentation at DAMA, Sydney
BAR360 open data platform presentation at DAMA, Sydney
 
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...
 
When and How Data Lakes Fit into a Modern Data Architecture
When and How Data Lakes Fit into a Modern Data ArchitectureWhen and How Data Lakes Fit into a Modern Data Architecture
When and How Data Lakes Fit into a Modern Data Architecture
 
What Data Do You Have and Where is It?
What Data Do You Have and Where is It? What Data Do You Have and Where is It?
What Data Do You Have and Where is It?
 
Big data analytics presented at meetup big data for decision makers
Big data analytics presented at meetup big data for decision makersBig data analytics presented at meetup big data for decision makers
Big data analytics presented at meetup big data for decision makers
 
How to Consume Your Data for AI
How to Consume Your Data for AIHow to Consume Your Data for AI
How to Consume Your Data for AI
 
Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!
 

Recently uploaded

Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...
lizamodels9
 
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
Renandantas16
 
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service BangaloreCall Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
amitlee9823
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
dollysharma2066
 
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pillsMifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
Abortion pills in Kuwait Cytotec pills in Kuwait
 

Recently uploaded (20)

Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...
Russian Call Girls In Gurgaon ❤️8448577510 ⊹Best Escorts Service In 24/7 Delh...
 
Call Girls in Gomti Nagar - 7388211116 - With room Service
Call Girls in Gomti Nagar - 7388211116  - With room ServiceCall Girls in Gomti Nagar - 7388211116  - With room Service
Call Girls in Gomti Nagar - 7388211116 - With room Service
 
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
 
Grateful 7 speech thanking everyone that has helped.pdf
Grateful 7 speech thanking everyone that has helped.pdfGrateful 7 speech thanking everyone that has helped.pdf
Grateful 7 speech thanking everyone that has helped.pdf
 
Regression analysis: Simple Linear Regression Multiple Linear Regression
Regression analysis:  Simple Linear Regression Multiple Linear RegressionRegression analysis:  Simple Linear Regression Multiple Linear Regression
Regression analysis: Simple Linear Regression Multiple Linear Regression
 
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service BangaloreCall Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
 
Organizational Transformation Lead with Culture
Organizational Transformation Lead with CultureOrganizational Transformation Lead with Culture
Organizational Transformation Lead with Culture
 
Cracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptxCracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptx
 
Mysore Call Girls 8617370543 WhatsApp Number 24x7 Best Services
Mysore Call Girls 8617370543 WhatsApp Number 24x7 Best ServicesMysore Call Girls 8617370543 WhatsApp Number 24x7 Best Services
Mysore Call Girls 8617370543 WhatsApp Number 24x7 Best Services
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
 
The Coffee Bean & Tea Leaf(CBTL), Business strategy case study
The Coffee Bean & Tea Leaf(CBTL), Business strategy case studyThe Coffee Bean & Tea Leaf(CBTL), Business strategy case study
The Coffee Bean & Tea Leaf(CBTL), Business strategy case study
 
A DAY IN THE LIFE OF A SALESMAN / WOMAN
A DAY IN THE LIFE OF A  SALESMAN / WOMANA DAY IN THE LIFE OF A  SALESMAN / WOMAN
A DAY IN THE LIFE OF A SALESMAN / WOMAN
 
John Halpern sued for sexual assault.pdf
John Halpern sued for sexual assault.pdfJohn Halpern sued for sexual assault.pdf
John Halpern sued for sexual assault.pdf
 
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pillsMifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
 
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
 
7.pdf This presentation captures many uses and the significance of the number...
7.pdf This presentation captures many uses and the significance of the number...7.pdf This presentation captures many uses and the significance of the number...
7.pdf This presentation captures many uses and the significance of the number...
 
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
 
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptxB.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
 
Ensure the security of your HCL environment by applying the Zero Trust princi...
Ensure the security of your HCL environment by applying the Zero Trust princi...Ensure the security of your HCL environment by applying the Zero Trust princi...
Ensure the security of your HCL environment by applying the Zero Trust princi...
 
Best VIP Call Girls Noida Sector 40 Call Me: 8448380779
Best VIP Call Girls Noida Sector 40 Call Me: 8448380779Best VIP Call Girls Noida Sector 40 Call Me: 8448380779
Best VIP Call Girls Noida Sector 40 Call Me: 8448380779
 

From Foundation to Mastery – Building a Mature Analytics Roadmap - Manav Misra

  • 1. 1 From Foundation to Mastery Building a Mature Analytics Roadmap Manav Misra Chief Data and Analytics Officer, Regions Bank 1 The opinions expressed in the presentation are statements of the speaker’s opinion, are intended only for informational purposes, and are not formal opinions of, nor binding on Regions Bank, its parent company, Regions Financial Corporation and their subsidiaries, and any representation to the contrary is expressly disclaimed.
  • 2. Emerging Themes in Financial Services 2 A Paradigm Shift CDO to CDAO Artificial Intelligence Journey to the Cloud Data Privacy & GDPR Defense to Offense Consumer to Consumer + Commercial + Wealth
  • 3. Typical Challenges in FS Data & Analytics Landscapes 3 • Knowledge base that allows sharing of data, and guidance on best practices • Each group has built its own data assets and analytics team. Limited sharing of data assets across the organization à inefficient & costly Desired OutcomesChallenge • Provide a common, standardized data science platform with strong governance, leading to more accurate, consistent and actionable intelligence • Limited use of best practices around data and analytics; hard to consistently modernize practices across the organization • Lack of consistent definitions of data elements across disparate data marts 1 3 • Small analytics teams provide restricted career paths and mentoring, hard to create a broader sense of data science community and therefore retain talent • Centralize resources into a Center of Excellence and then leverage resources from the COE to solve business problems 2 • Lack of easy & secure access to governed data for self service analytics • Limits governance on how data are used, hard to ensure data quality and reliability • Create self service framework with easy access to data that allows for standardization and ability to customize analytics 4
  • 4. From Foundation to Mastery – Building a Mature Analytics Roadmap 4 Strategy and Leadership Team Culture Data Products Data Management Data Science Platform Steps in Creating a Data-Driven Organization
  • 5. 1. Strategy and Leadership Team 5 § Ability to create bridge between business units and data & analytics § Understand business requirements § Build business cases § Create the roadmap of deliverable data products § Lead teams to deliver data products Captain of the Bridge The Logical Brain Data The Engineer The Navigator § Provides guidance on Data Science (Predictive AI, ML) § How to solve problems, address issues § Encyclopedic knowledge of advanced analytics algorithms § How to use them to solve business problems § Deep knowledge of the data in the org § Builds the structure & controls to govern data § Facilitates knowledge sharing on how the data is being used across the Enterprise § Fosters sharing of data assets across the Enterprise § Technical wizard who knows the data science platform in and out § Provides architectural guidance to create the data science platform § Resourceful and the one to go to when you need data architecture guidance § Visualization expert who can help a business user choose the right type of visualization § Enhance the effectiveness of data- driven insight § Knows the tools, but more so, the visualization techniques to best depict specific results Data Products Data Science / AI Data Management Data Engineering Visualization
  • 6. DATA & Analytics Product Discipline Data products are value-based systems whose primary objective is to use data to facilitate end goal “ - DJ Patil (Former Chief Data Scientists of the United States) “ 2. Data Products
  • 7. Live Traffic Route-Optimizations Intelligent Rebookings Pricing Optimization Fraud Analytics Commercial Analytics ROSIE Movie Recommendations 7 Intuitive, Self Guided UI Experience Insights powered by data and analytics Recommendation Based Alert/Action Continuous learning and closed feedback loop Multi-disciplinary Skills Needed 2. Data Products Business / Domain Expertise Data Management & User Experience Data Science Customer Obsessed
  • 8. 3. Data Science Platform OLAP on Hadoop (Flat Files, Log Files) (Internal) Deposit, Loan, Credit Wealth (Mainframe) RCIF External & Third Party APIs/Services Data Sources Streaming SFTP Custom Parsers SQOOP Batch Data Movement Data Wrangling Data Catalog Business Intelligence ReportingMaster Data Management API Management DataQuality Modeling Environment Model Management UI Layer Storage Process Hive Pig Batch Spark Streaming Stream Impala Hive (on Spark) Spark SQL SQL Solr Search Spark Mllib Python R Scala Model Compute Grid Current Data Environment 8
  • 9. Modern Machine Learning Platform Data Manipulation ApplicationDataStorageCompute App Database (DynamoDB, Postrgres, Firestore) Streaming (Kafka, Flink) S3, Azure Blob Storage, GCP Cloud Storage, HDFS Metadata Management (Glue, GCP Data Catalog) Feature Engineering (Step Functions+EMR, Airflow+Spark, Data Proc) Spark on Kubernetes TPU/GPU Hosted Notebooks BI and OLAP on Hadoop (AWS quicksight, Power BI, Arcadia) Experimentation (Polyaxon, MLFlow, Kubeflow) Trained model is deployed as a webservice in a Kubernetes environment 3. Data Science Platform 9
  • 10. 4. Data Management Smart Data Catalog Discover, Curate, Glossary Ratings & Review, Self-Learn Data Management and Governance Operationalize Data Lake Removing Silos Data Lake Zones Data Privacy Proactive protection CCPA, GDPR Data Quality Define, Assess and Analyze Improve, Implement and Manage 10
  • 11. 5. Culture Data Products Sponsorship Buy-In Integration Measure Vision Culture • Make Regions a best in class Data-Driven Organization • Develop end-to-end Data Products, with Executive Sponsorship, full Buy-In and complete Integration with in the business units • Deliver Measurable bottom-line benefits to Regions by applying advanced analytics on internal and external data 11
  • 12. Roadmap to a Data-Driven Future… 12 1 3 5 2 4 6 ORGANIZE TO LEARN ESTABLISH KEY PRIORITIES SECURE EARLY WINS DEFINE STRATEGIC INTENT BUILD THE LEADERSHIP TEAM CREATE SUPPORTING ALLIANCES