KEMBAR78
[Keynote] Data Driven Organizations with AWS Data - 발표자: Agnes Panosian, Head of APJ Data Sales, WWSO, AWS ::: AWS Data Roadshow 2023 | PDF
© 2023, Amazon Web Services, Inc. or its affiliates.
© 2023, Amazon Web Services, Inc. or its affiliates.
Data Driven
Organizations with
AWS for Data
© 2023, Amazon Web Services, Inc. or its affiliates.
© 2023, Amazon Web Services, Inc. or its affiliates.
Agenda
2
• What is a data driven organization?
• Partner with AWS to drive cost savings and
innovation
• Driving sustainability with data
• Next steps on your data journey
© 2023, Amazon Web Services, Inc. or its affiliates.
Gen AI
• Rapid Advancement in Gen AI is driving unparallel business and
social opportunities.
• What has changed?
Autocomplete words to self learning models
Sematic Search and Retrieval Augmented Generation (RAG)
• What do we need?
Compute Capacity to train and process
Data (private / internet) to train and process on
Foundational models
Interfaces to output
3
© 2023, Amazon Web Services, Inc. or its affiliates.
Evolution of AI
4
AI
Reasoning
Machine Learning
(Supervised, Unsupervised)
Non-Neural
(Big Data)
Neural Networks
Deep Learning
Generative
AI
Predictive AI
Shallow Learning
Regression
SVM etc..
© 2023, Amazon Web Services, Inc. or its affiliates.
5
© 2023, Amazon Web Services, Inc. or its affiliates. All rights reserved. Amazon Confidential and Trademark. 6
GenAI Use Case by Vertical
MFG
HCLS
Asset and wealth
management;
Insurance
Vertical Subvertical GenAI Pattern
Selected use cases
Synthesis, analysis
B. Support of life insurance underwriting and pricing through unstructured data
synthesis
FSI Chatbot, analysis
A. Personalized investment portfolio creation through chatbot assistance
B. Scientific literature research through text summary and synthesis
Pharma Data tagging, analysis
A. Personalized HCP engagement plans through automatic data tagging
M&E Publishing Image generation
R&D; Maintenance 3D object design
A. Faster and cheaper part design through generative design
Text synthesis
B. Automation of manual tasks through text summary and synthesis
P&U Energy and plants Text analysis, generation
R/CPG Retail consumer Content generation
A. Improved marketing efforts through enhanced customer segmentation and hyper-
personalized content creation
Analyses, content creation
B. Improve customer journey and product offering through product analyses and
content creation
TTL Shipping Analysis, text synthesis
A. Reduced manual intervention and improved lead time on bill of lading process
through document generation
Text synthesis, chatbot
B. Increased work efficiency and customer satisfaction in disruption handling through
conversational interface
B. A/B testing through rapid generation of headlines and thumbnails
A. Support of text content through image, diagram and visuals generation
Text synthesis
Text generation
A. Acceleration of machine maintenance through semantic search
B. Customer service improvement through text and audio assessment Text/audio synthesis, analysis
© 2023, Amazon Web Services, Inc. or its affiliates. All rights reserved.
GenAI Patterns
Productivity
Text generation
Chat
Virtual assistant
Summarization
Text extraction
Search
Code
generation
Image
generation
Object Creation
Image
classification
Create
music
Generate
videos
7
© 2023, Amazon Web Services, Inc. or its affiliates.
Data is still the currency for
fundamentals of Gen AI
8
© 2023, Amazon Web Services, Inc. or its affiliates.
9
The Data-Driven Organization
Set ‘Think Big’ goals Focus on delivering business
priorities fast
Shared leadership
conviction and
Business-IT alignment
on data ownership
Strong collaboration and
agility concerning data
products across data
producers and consumers
Upskilled and
empowered producers
and consumers who
self-serve
Privacy, security, compliance
and federated governance
without impeding innovation
Key Characteristics
“An organization that harnesses data as an asset,
to drive sustained innovation and create
actionable insights to supercharge the experience
for their customers so they demand more.”
© 2023, Amazon Web Services, Inc. or its affiliates.
Data-driven organizations
are growing an average of
30%+ annually
68% of organizations
reported they’re still unable
to realize value from data
Only 28% of survey
respondents have a data
strategy in place
Accenture, “Closing the Data-value Gap”
https://accntu.re/33V6sU3
Accenture, “Closing the Data-value Gap,”
https://accntu.re/33V6sU3
Forrester, “Insights-Driven Businesses Set
the Pace for Global Growth”
https://bit.ly/3r4uRiL
Data is imperative, but there is a gap
© 2023, Amazon Web Services, Inc. or its affiliates.
`
Learn from more than 1.5 million AWS customers use database,
analytics, or machine learning services
© 2023, Amazon Web Services, Inc. or its affiliates.
© 2023, Amazon Web Services, Inc. or its affiliates.
Partner with AWS to drive cost savings and innovation
Move to
Managed
Services
Modernize
your data
architecture
Adopt
Serverless
Frameworks
BI Tool
Optimization
© 2023, Amazon Web Services, Inc. or its affiliates.
Self-managed databases can slow your Business
Long release cycles
for new products
and features
Operational
inefficiencies resulting
in overhead costs
Inability to support
changing compliance,
security regulations
Lost revenue due to
missed opportunity,
loss of competitive
edge
Lost productivity or
high costs for
undifferentiated
skills
Non-compliance and
priority disruptions to
resolve compliance or
security issues
© 2023, Amazon Web Services, Inc. or its affiliates.
Samsung
Challenge
The Oracle database was expensive and difficult to maintain. Simple tasks
required manual maintenance.
Solution
By migrating from Oracle to Amazon Aurora, Samsung achieved cost
savings and decreased operational tasks,
all without service disruption during the migration.
Result
“Our Oracle online migration in EU IDC to Amazon Aurora with
PostgreSQL Compatibility completed in 22 weeks without service
disruption. This success is unprecedented in Korea. The biggest win for us
is cost savings, but we also have decreased our operational tasks, thanks
to Aurora.”
- Go Byeong-ryul, Database Architect, Samsung Electronics
Amazon Aurora with
PostgreSQL compatibility
© 2023, Amazon Web Services, Inc. or its affiliates.
AWS has the right database for the right job
Aurora
RDS
DynamoDB DocumentDB Timestream
Neptune
ElastiCache QLDB Keyspaces
Relational
Referential
integrity, ACID
transactions,
schema-
on-write
Key-value
High
throughput,
Low latency
reads and writes,
endless scale
Document
Store documents
and quickly
access querying
on any attribute
In-memory
Query by key
with
microsecond
latency
Graph Time-series
Collect, store,
and process
data sequenced
by time
Ledger
Scalable, highly
available, and
managed Apache
Cassandra-
compatible service
Quickly and easily
create and
navigate
relationships
between data
Wide Column
Complete,
immutable, and
verifiable history
of all changes to
application data
Lift and shift,
ERP, CRM,
finance
Content
management,
personalization,
mobile
Leaderboards,
real-time
analytics,
caching
Fraud detection,
social
networking,
recommendation
engine
IoT
applications,
event tracking
Systems
of record,
supply chain,
health care,
registrations,
financial
AWS
Service(s)
Common
Use Cases
Build low-latency
applications,
leverage open
source, migrate
Cassandra to the
cloud
Real-time
bidding,
shopping cart,
payments,
product catalog,
customer
preferences
© 2023, Amazon Web Services, Inc. or its affiliates.
Capital One completed migration from data
centers to AWS in 2020, becoming the first
US bank to go all in on the cloud.
Transformed credit line technology on AWS
leveraging DynamoDB, RDS, Aurora and
other services
• Shifted mindset from designing for the
data center to cloud‐native design
• Upskilled teams to engineer for
resilience and inner-sourcing
• Delivered wins with consistent UX,
faster time to market, and increased
business income
We are able to manage data at a much larger scale
and unlock the power of machine learning to deliver
enhanced customer experiences.
—Chris Sims
Senior VP, Cloud and Productivity Engineering
“ “
© 2023, Amazon Web Services, Inc. or its affiliates.
Modern Data Architecture
From traditional . . . . . . to microservices, decoupled architectures
Web servers
Presentation layers
Application servers
Business logic
Database servers
Data layer
Events
Queues + Caches + Messages
Events
Presentation
Business
logic
Data
© 2022, Amazon Web Services, Inc. or its affiliates. All rights reserved.
As organizations accelerate delivery of high-quality data applications, many are taking advantage of serverless services to
remove undifferentiated heavy lifting with no infrastructure to manage, scale automatically, and have high availability
Move from idea to
deployment, faster
Eliminate operational overhead
so your teams can release quickly,
get feedback, and iterate to get
to deployment faster
Time to deploy improvements:
89% for new compute,
96% for new storage*
Lower your costs
With a pay-for-value billing
model, resource utilization is
automatically optimized, and you
never pay for over-provisioning
409% 5-year ROI*
Adapt at scale
With technologies that automatically
scale from zero to peak demands,
you can adapt to business and
customer needs faster than ever
71% fewer unplanned outages*
Build better
applications, easier
Serverless applications have
built-in service integrations, so you
can focus on building your
application instead of configuring it
80% more efficient
IT infrastructure teams*
Build and Innovate with Serverless
SERVERLESS DATA SERVICES
Amazon
OpenSearch
Amazon
Athena
Amazon
Redshift
AWS Glue Amazon EMR
Amazon
Kinesis
Amazon MSK
Amazon
Quicksight
Amazon
Aurora
Amazon
DynamoDB
Amazon
Keyspaces
(for Apache
Cassandra)
Amazon
Timestream
Amazon
Neptune
© 2023, Amazon Web Services, Inc. or its affiliates.
Modernizing leads to maximum innovation velocity and
optimal total cost of ownership
On-premises Lift
and shift
Move to managed
databases
Modernize with
purpose-built
databases
Innovation
velocity
Total
cost of
ownership
(TCO)
Break-free from
legacy databases
A P P S
D E V I C E S
P E O P L E
A P P / L O G S
T H I R D - P A R T Y D A T A
I O T / D E V I C E S
Data sources
Modernize your data architecture
Catalog & govern | AWS Lake Formation, Amazon DataZone
Amazon
Redshift
Amazon
EMR
B U S I N E S S
I N T E L L I G E N C E
Amazon
QuickSight
M A C H I N E
L E A R N I N G
Amazon
SageMaker
A N A L Y T I C S
F O R
A P P L I C A T I O N S
Amazon
Aurora
Amazon Kinesis
& Amazon MSK
F O R A N A L Y T I C S &
M A C H I N E L E A R N I N G
Data Lake
Amazon S3
Amazon Redshift
Data Warehouse
Amazon
DynamoDB
AWS Glue
© 2023, Amazon Web Services, Inc. or its affiliates.
© 2023, Amazon Web Services, Inc. or its affiliates.
Amazon S3
data lake storage
LOB 1
Amazon
Redshift
Amazon
EMR
Amazon
Athena
Consumer 1
Amazon S3
data lake storage
LOB N
Amazon
Redshift
Amazon
EMR SageMaker
Consumer N
Amazon S3
data lake storage
LOB 2
BI Reports
Amazon
EMR Notebook
Consumer 2
Data organizations also talk about data mesh
A decentralized, light-weight federated governance across domain-oriented data systems to
drive governed sharing
….
Unified Policy Management
Enhanced
Governance
Federated Governance
Blueprints Resource
Share
Centralized
Data Catalog
Federated Access Control
Organization wide Sharing
Centralized Governance & Audit
….
© 2022, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Drive data governance with Amazon DataZone
U N L O C K T H E P O W E R O F A L L D A T A F O R A L L U S E R S W I T H T R U S T E D A U T O N O M Y
23
Team who runs the
data marketplace
Teams who want to share data Teams who want to use data
Amazon DataZone
Data producers Data consumers
© 2022, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Amazon DataZone pillars
D I S C O V E R , S H A R E , A N D G O V E R N D A T A A T S C A L E A C R O S S O R G A N I Z A T I O N A L B O U N D A R I E S
Governed data sharing
Automate workflows to facilitate
sharing of data more securely
between producers and consumers
to make sure that the right data is
accessed by the right users
for the right purpose
Efficiently audit who is using
which datasets for what business
use case, and monitor usage and
costs across projects and lines of
business (LOBs).
Simplified access to
analytics
Create business use case–based
data projects to group teams,
tools, and data
Work with the tool of your
choice seamlessly without the
undifferentiated heavy lifting
needed when switching
between services
Self-service portal
Experience an integrated data
environment to promote
exploration and
drive innovation with a
personalized homepage
Facilitate streamlined cross-
functional collaboration while
working with data and tools in a
self-service fashion
Enterprise-wide
business data catalog
Make data visible with context
for all your users to find and
understand data quickly and
more easily
Catalog any data type across the
organization, in the cloud,
on premises, or in SaaS
applications with rich metadata
and business context
© 2022, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Optimize your BI / reporting solution
Legacy
Reports
PRODUCT A
• Unified serverless BI at hyperscale
• Unparalleled ease of use – no technical training required
• Same UI, new features every 2-4 weeks
• Eliminate costly licenses, pay-as-you-go
• Silos of BI environments
• Specialized training, staff for each
• Different UI for each platform
• Separate costly licenses and maintenance
Dashboards
PRODUCT B PRODUCT C
Embedded
Analytics
NLQ
PRODUCT D
Natural
Language
Queries
Dashboards Reports Embedded
Analytics
© 2022, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Sustainability drives business growth
Tomorrow’s strongest-performing businesses are likely
to be the “Twin Transformers”—companies that find
new value at the intersection of digital technologies
and sustainability.
Powered by these twin engines of growth, they’re
2.5x more likely to outperform their peers.
-Accenture, April 2021
© 2021, Amazon Web Services, Inc. or its Affiliates.
ENGIE builds the Common Data
Hub on AWS, accelerates
zero-carbon transition
Challenge
ENGIE’s decentralized global customer base had accumulated lots of data,
and it required a smarter, unique approach and solution to align its initiatives
and to efficiently provide data across its global business units.
Solution
ENGIE built its Common Data Hub data lake on AWS, enabling the company’s
business units to collect and analyze data to support a data-driven strategy
and to lead the zero-carbon transition.
Result
• Collected 95 TB of data across 351 projects
• Automated energy predictions
• Maximized wind farm energy production
Benefits
Since implementing the CDH, ENGIE’s renewable fleet of wind farms, solar
farms and hydroelectric dams is significantly more efficient. If you improve
the availability and performance of an asset that's worth $100 million or
$500 million by just 1% because you tap into the right data— well, I’ll let
you do the math.
Yves Le Gélard CDO and CIO.
Amazon Redshift
Amazon Kinesis Data Streams Amazon S3 Amazon SageMaker
AWS Glue Amazon Athena
© 2023, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential. |
Need peer-level
guidance?
✓ Discuss mental models and strategies
based on experience and learnings
working with AWS customers
✓ Get peer-level sounding board
Jumpstart the development
of your modern data strategy
Need a strategy and
help executing it?
✓ Align business and technical leaders
on data related use cases and
initiatives to support business goals
✓ Align on priorities and where to start
activating the modern data strategy
✓ Leave with an actionable delivery
plan and architecture to activate an
initial business driven use case in 90
days
Come with an idea,
leave with a modern data
strategy and a solution
Need to align executive
stakeholders?
✓ Begin to align on what a modern
data strategy is and why it’s
important
✓ Dive deeper into the non-technical
and technical concerns of a modern
data strategy
Inspire and accelerate your
data driven transformation
Next steps on your data journey

[Keynote] Data Driven Organizations with AWS Data - 발표자: Agnes Panosian, Head of APJ Data Sales, WWSO, AWS ::: AWS Data Roadshow 2023

  • 1.
    © 2023, AmazonWeb Services, Inc. or its affiliates. © 2023, Amazon Web Services, Inc. or its affiliates. Data Driven Organizations with AWS for Data
  • 2.
    © 2023, AmazonWeb Services, Inc. or its affiliates. © 2023, Amazon Web Services, Inc. or its affiliates. Agenda 2 • What is a data driven organization? • Partner with AWS to drive cost savings and innovation • Driving sustainability with data • Next steps on your data journey
  • 3.
    © 2023, AmazonWeb Services, Inc. or its affiliates. Gen AI • Rapid Advancement in Gen AI is driving unparallel business and social opportunities. • What has changed? Autocomplete words to self learning models Sematic Search and Retrieval Augmented Generation (RAG) • What do we need? Compute Capacity to train and process Data (private / internet) to train and process on Foundational models Interfaces to output 3
  • 4.
    © 2023, AmazonWeb Services, Inc. or its affiliates. Evolution of AI 4 AI Reasoning Machine Learning (Supervised, Unsupervised) Non-Neural (Big Data) Neural Networks Deep Learning Generative AI Predictive AI Shallow Learning Regression SVM etc..
  • 5.
    © 2023, AmazonWeb Services, Inc. or its affiliates. 5
  • 6.
    © 2023, AmazonWeb Services, Inc. or its affiliates. All rights reserved. Amazon Confidential and Trademark. 6 GenAI Use Case by Vertical MFG HCLS Asset and wealth management; Insurance Vertical Subvertical GenAI Pattern Selected use cases Synthesis, analysis B. Support of life insurance underwriting and pricing through unstructured data synthesis FSI Chatbot, analysis A. Personalized investment portfolio creation through chatbot assistance B. Scientific literature research through text summary and synthesis Pharma Data tagging, analysis A. Personalized HCP engagement plans through automatic data tagging M&E Publishing Image generation R&D; Maintenance 3D object design A. Faster and cheaper part design through generative design Text synthesis B. Automation of manual tasks through text summary and synthesis P&U Energy and plants Text analysis, generation R/CPG Retail consumer Content generation A. Improved marketing efforts through enhanced customer segmentation and hyper- personalized content creation Analyses, content creation B. Improve customer journey and product offering through product analyses and content creation TTL Shipping Analysis, text synthesis A. Reduced manual intervention and improved lead time on bill of lading process through document generation Text synthesis, chatbot B. Increased work efficiency and customer satisfaction in disruption handling through conversational interface B. A/B testing through rapid generation of headlines and thumbnails A. Support of text content through image, diagram and visuals generation Text synthesis Text generation A. Acceleration of machine maintenance through semantic search B. Customer service improvement through text and audio assessment Text/audio synthesis, analysis
  • 7.
    © 2023, AmazonWeb Services, Inc. or its affiliates. All rights reserved. GenAI Patterns Productivity Text generation Chat Virtual assistant Summarization Text extraction Search Code generation Image generation Object Creation Image classification Create music Generate videos 7
  • 8.
    © 2023, AmazonWeb Services, Inc. or its affiliates. Data is still the currency for fundamentals of Gen AI 8
  • 9.
    © 2023, AmazonWeb Services, Inc. or its affiliates. 9 The Data-Driven Organization Set ‘Think Big’ goals Focus on delivering business priorities fast Shared leadership conviction and Business-IT alignment on data ownership Strong collaboration and agility concerning data products across data producers and consumers Upskilled and empowered producers and consumers who self-serve Privacy, security, compliance and federated governance without impeding innovation Key Characteristics “An organization that harnesses data as an asset, to drive sustained innovation and create actionable insights to supercharge the experience for their customers so they demand more.”
  • 10.
    © 2023, AmazonWeb Services, Inc. or its affiliates. Data-driven organizations are growing an average of 30%+ annually 68% of organizations reported they’re still unable to realize value from data Only 28% of survey respondents have a data strategy in place Accenture, “Closing the Data-value Gap” https://accntu.re/33V6sU3 Accenture, “Closing the Data-value Gap,” https://accntu.re/33V6sU3 Forrester, “Insights-Driven Businesses Set the Pace for Global Growth” https://bit.ly/3r4uRiL Data is imperative, but there is a gap
  • 11.
    © 2023, AmazonWeb Services, Inc. or its affiliates. ` Learn from more than 1.5 million AWS customers use database, analytics, or machine learning services
  • 12.
    © 2023, AmazonWeb Services, Inc. or its affiliates.
  • 13.
    © 2023, AmazonWeb Services, Inc. or its affiliates. Partner with AWS to drive cost savings and innovation Move to Managed Services Modernize your data architecture Adopt Serverless Frameworks BI Tool Optimization
  • 14.
    © 2023, AmazonWeb Services, Inc. or its affiliates. Self-managed databases can slow your Business Long release cycles for new products and features Operational inefficiencies resulting in overhead costs Inability to support changing compliance, security regulations Lost revenue due to missed opportunity, loss of competitive edge Lost productivity or high costs for undifferentiated skills Non-compliance and priority disruptions to resolve compliance or security issues
  • 15.
    © 2023, AmazonWeb Services, Inc. or its affiliates. Samsung Challenge The Oracle database was expensive and difficult to maintain. Simple tasks required manual maintenance. Solution By migrating from Oracle to Amazon Aurora, Samsung achieved cost savings and decreased operational tasks, all without service disruption during the migration. Result “Our Oracle online migration in EU IDC to Amazon Aurora with PostgreSQL Compatibility completed in 22 weeks without service disruption. This success is unprecedented in Korea. The biggest win for us is cost savings, but we also have decreased our operational tasks, thanks to Aurora.” - Go Byeong-ryul, Database Architect, Samsung Electronics Amazon Aurora with PostgreSQL compatibility
  • 16.
    © 2023, AmazonWeb Services, Inc. or its affiliates. AWS has the right database for the right job Aurora RDS DynamoDB DocumentDB Timestream Neptune ElastiCache QLDB Keyspaces Relational Referential integrity, ACID transactions, schema- on-write Key-value High throughput, Low latency reads and writes, endless scale Document Store documents and quickly access querying on any attribute In-memory Query by key with microsecond latency Graph Time-series Collect, store, and process data sequenced by time Ledger Scalable, highly available, and managed Apache Cassandra- compatible service Quickly and easily create and navigate relationships between data Wide Column Complete, immutable, and verifiable history of all changes to application data Lift and shift, ERP, CRM, finance Content management, personalization, mobile Leaderboards, real-time analytics, caching Fraud detection, social networking, recommendation engine IoT applications, event tracking Systems of record, supply chain, health care, registrations, financial AWS Service(s) Common Use Cases Build low-latency applications, leverage open source, migrate Cassandra to the cloud Real-time bidding, shopping cart, payments, product catalog, customer preferences
  • 17.
    © 2023, AmazonWeb Services, Inc. or its affiliates. Capital One completed migration from data centers to AWS in 2020, becoming the first US bank to go all in on the cloud. Transformed credit line technology on AWS leveraging DynamoDB, RDS, Aurora and other services • Shifted mindset from designing for the data center to cloud‐native design • Upskilled teams to engineer for resilience and inner-sourcing • Delivered wins with consistent UX, faster time to market, and increased business income We are able to manage data at a much larger scale and unlock the power of machine learning to deliver enhanced customer experiences. —Chris Sims Senior VP, Cloud and Productivity Engineering “ “
  • 18.
    © 2023, AmazonWeb Services, Inc. or its affiliates. Modern Data Architecture From traditional . . . . . . to microservices, decoupled architectures Web servers Presentation layers Application servers Business logic Database servers Data layer Events Queues + Caches + Messages Events Presentation Business logic Data
  • 19.
    © 2022, AmazonWeb Services, Inc. or its affiliates. All rights reserved. As organizations accelerate delivery of high-quality data applications, many are taking advantage of serverless services to remove undifferentiated heavy lifting with no infrastructure to manage, scale automatically, and have high availability Move from idea to deployment, faster Eliminate operational overhead so your teams can release quickly, get feedback, and iterate to get to deployment faster Time to deploy improvements: 89% for new compute, 96% for new storage* Lower your costs With a pay-for-value billing model, resource utilization is automatically optimized, and you never pay for over-provisioning 409% 5-year ROI* Adapt at scale With technologies that automatically scale from zero to peak demands, you can adapt to business and customer needs faster than ever 71% fewer unplanned outages* Build better applications, easier Serverless applications have built-in service integrations, so you can focus on building your application instead of configuring it 80% more efficient IT infrastructure teams* Build and Innovate with Serverless SERVERLESS DATA SERVICES Amazon OpenSearch Amazon Athena Amazon Redshift AWS Glue Amazon EMR Amazon Kinesis Amazon MSK Amazon Quicksight Amazon Aurora Amazon DynamoDB Amazon Keyspaces (for Apache Cassandra) Amazon Timestream Amazon Neptune
  • 20.
    © 2023, AmazonWeb Services, Inc. or its affiliates. Modernizing leads to maximum innovation velocity and optimal total cost of ownership On-premises Lift and shift Move to managed databases Modernize with purpose-built databases Innovation velocity Total cost of ownership (TCO) Break-free from legacy databases
  • 21.
    A P PS D E V I C E S P E O P L E A P P / L O G S T H I R D - P A R T Y D A T A I O T / D E V I C E S Data sources Modernize your data architecture Catalog & govern | AWS Lake Formation, Amazon DataZone Amazon Redshift Amazon EMR B U S I N E S S I N T E L L I G E N C E Amazon QuickSight M A C H I N E L E A R N I N G Amazon SageMaker A N A L Y T I C S F O R A P P L I C A T I O N S Amazon Aurora Amazon Kinesis & Amazon MSK F O R A N A L Y T I C S & M A C H I N E L E A R N I N G Data Lake Amazon S3 Amazon Redshift Data Warehouse Amazon DynamoDB AWS Glue © 2023, Amazon Web Services, Inc. or its affiliates.
  • 22.
    © 2023, AmazonWeb Services, Inc. or its affiliates. Amazon S3 data lake storage LOB 1 Amazon Redshift Amazon EMR Amazon Athena Consumer 1 Amazon S3 data lake storage LOB N Amazon Redshift Amazon EMR SageMaker Consumer N Amazon S3 data lake storage LOB 2 BI Reports Amazon EMR Notebook Consumer 2 Data organizations also talk about data mesh A decentralized, light-weight federated governance across domain-oriented data systems to drive governed sharing …. Unified Policy Management Enhanced Governance Federated Governance Blueprints Resource Share Centralized Data Catalog Federated Access Control Organization wide Sharing Centralized Governance & Audit ….
  • 23.
    © 2022, AmazonWeb Services, Inc. or its affiliates. All rights reserved. Drive data governance with Amazon DataZone U N L O C K T H E P O W E R O F A L L D A T A F O R A L L U S E R S W I T H T R U S T E D A U T O N O M Y 23 Team who runs the data marketplace Teams who want to share data Teams who want to use data Amazon DataZone Data producers Data consumers
  • 24.
    © 2022, AmazonWeb Services, Inc. or its affiliates. All rights reserved. Amazon DataZone pillars D I S C O V E R , S H A R E , A N D G O V E R N D A T A A T S C A L E A C R O S S O R G A N I Z A T I O N A L B O U N D A R I E S Governed data sharing Automate workflows to facilitate sharing of data more securely between producers and consumers to make sure that the right data is accessed by the right users for the right purpose Efficiently audit who is using which datasets for what business use case, and monitor usage and costs across projects and lines of business (LOBs). Simplified access to analytics Create business use case–based data projects to group teams, tools, and data Work with the tool of your choice seamlessly without the undifferentiated heavy lifting needed when switching between services Self-service portal Experience an integrated data environment to promote exploration and drive innovation with a personalized homepage Facilitate streamlined cross- functional collaboration while working with data and tools in a self-service fashion Enterprise-wide business data catalog Make data visible with context for all your users to find and understand data quickly and more easily Catalog any data type across the organization, in the cloud, on premises, or in SaaS applications with rich metadata and business context
  • 25.
    © 2022, AmazonWeb Services, Inc. or its affiliates. All rights reserved. Optimize your BI / reporting solution Legacy Reports PRODUCT A • Unified serverless BI at hyperscale • Unparalleled ease of use – no technical training required • Same UI, new features every 2-4 weeks • Eliminate costly licenses, pay-as-you-go • Silos of BI environments • Specialized training, staff for each • Different UI for each platform • Separate costly licenses and maintenance Dashboards PRODUCT B PRODUCT C Embedded Analytics NLQ PRODUCT D Natural Language Queries Dashboards Reports Embedded Analytics
  • 26.
    © 2022, AmazonWeb Services, Inc. or its affiliates. All rights reserved. Sustainability drives business growth Tomorrow’s strongest-performing businesses are likely to be the “Twin Transformers”—companies that find new value at the intersection of digital technologies and sustainability. Powered by these twin engines of growth, they’re 2.5x more likely to outperform their peers. -Accenture, April 2021
  • 27.
    © 2021, AmazonWeb Services, Inc. or its Affiliates. ENGIE builds the Common Data Hub on AWS, accelerates zero-carbon transition Challenge ENGIE’s decentralized global customer base had accumulated lots of data, and it required a smarter, unique approach and solution to align its initiatives and to efficiently provide data across its global business units. Solution ENGIE built its Common Data Hub data lake on AWS, enabling the company’s business units to collect and analyze data to support a data-driven strategy and to lead the zero-carbon transition. Result • Collected 95 TB of data across 351 projects • Automated energy predictions • Maximized wind farm energy production Benefits Since implementing the CDH, ENGIE’s renewable fleet of wind farms, solar farms and hydroelectric dams is significantly more efficient. If you improve the availability and performance of an asset that's worth $100 million or $500 million by just 1% because you tap into the right data— well, I’ll let you do the math. Yves Le Gélard CDO and CIO. Amazon Redshift Amazon Kinesis Data Streams Amazon S3 Amazon SageMaker AWS Glue Amazon Athena
  • 28.
    © 2023, AmazonWeb Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential. | Need peer-level guidance? ✓ Discuss mental models and strategies based on experience and learnings working with AWS customers ✓ Get peer-level sounding board Jumpstart the development of your modern data strategy Need a strategy and help executing it? ✓ Align business and technical leaders on data related use cases and initiatives to support business goals ✓ Align on priorities and where to start activating the modern data strategy ✓ Leave with an actionable delivery plan and architecture to activate an initial business driven use case in 90 days Come with an idea, leave with a modern data strategy and a solution Need to align executive stakeholders? ✓ Begin to align on what a modern data strategy is and why it’s important ✓ Dive deeper into the non-technical and technical concerns of a modern data strategy Inspire and accelerate your data driven transformation Next steps on your data journey