SlideShare uma empresa Scribd logo
1 de 35
Baixar para ler offline
© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
Craig Stires
Head of AI, Analytics, Big Data - Asia Pacific, AWS
Better Business from Exploring Ideas
Modern Data Architectures on AWS
© 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Let’s go on a common customer journey
Meet EarEcstasy, as they move from B2B to B2C
* This case is representative of a common customer journey, but EarEcstasy isn’t an actual business
EarEcstasy manufacturers headsets. They ran
a traditional B2B business since 2005, selling
through distribution and retail channels.
2005
In 2018, they launched their first “Smart
Buds”. These wireless headsets have voice
enablement, GPS tracking, and heartrate
monitors built in, and the device syncs with
the users mobile phone via Bluetooth. The
mobile app also supports scene detection.
2018
EarEcstasy needs to answer new questions and move faster
Raymond, Head of ProductLim, Head of Finance
Which regions are the new earbuds selling well?
What is the demand forecast by product category?
What is the social sentiment about our products?
How do quality issues impact cost of production?
Can I look at supplier performance over time?
How can we reduce our inventory holding costs?
To answer new questions quickly, we look to a
modern data architecture design
Massive upfront costs
Overprovisioned capacity
Long implementation times
Pay as you go, for what you use
Decoupled pipelines and engines
Experimentation platform
Ingest/
Collect
Consume/
visualize
Store Process/
analyze
1 4
0 9
5
© 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Outcome 1: Modernize and consolidate
Start with a set of specific questions to answer, then work
backwards to the data required
Lim, Head of Finance
How do quality issues impact cost of production?
Can I look at supplier performance over time?
How can we reduce our inventory holding costs?
Order History /
Returns (CRM)
Inventory /
Production (ERP)
Ingest ServingData
sources
Modern data architecture
Insights to enhance business applications, new digital services
Transactions
ERP
Data analysts
DATA PIPELINES
Ingest/
Collect
Consume /
visualize
Store Process /
analyze
1 4
0 9
5
© 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Start small and iterate
Ingest ServingData
sources
Modern data architecture
Insights to enhance business applications, new digital services
Transactions
ERP
DATA PIPELINES
Data
Lake
expdp
Data Data analysts
Data Warehouse
Amazon Redshift
Direct Query
Amazon Athena
She asks for the SMALLEST amount of data to answer her questions.
If it isn’t good enough, she asks for another small slice to be loaded to the DATA LAKE
Amazon Redshift – Modern Data Warehousing
Fast, scalable, fully managed data warehouse at 1/10th the cost
Massively parallel, scales from gigabytes to exabytes
Queries data across your Redshift data warehouse and Amazon S3 data lake
Fast at scale
Columnar storage
technology to improve I/O
efficiency and scale query
performance
Open file formats
Analyze optimized data
formats on direct-attached
disks, and all open file
formats in S3
Cost-effective
Start at $0.25 per hour;
as low as $250-$333 per
uncompressed terabyte
per year
$
Secure
Audit everything; encrypt
data end-to-end; extensive
certification and compliance
Characteristics of a Data Lake
Future
Proof
Flexible
Access
Dive in
Anywhere
Collect
Anything
Start with a set of specific questions to answer, then work
backwards to the data required
Raymond, Head of Product
Which regions are the new earbuds selling well?
What is the demand forecast by product category?
What is the social sentiment about our products?
Trending /
Mentions (Social)
Order History /
Returns (CRM)
NOW IN THE DATA LAKE
© 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Experiment, validate, then scale
Ingest ServingData
sources
Modern data architecture
Insights to enhance business applications, new digital services
DATA PIPELINES
Data
Lake
He first looks to the DATA LAKE, and imports only the category data he needs
He imports JUST ENOUGH data to see if the market is responding to products.
Business users
Transactions
ERP
Social media
Data
Stream
Capture
Amazon
Kinesis
Events
Amazon
QuickSight
Data Warehouse
Amazon Redshift
Stream Data
Amazon
ElasticSearch
Common data pipeline configuration
Raw Data
Amazon S3
Highly decoupled configurations scale better, are more fault tolerant, and cost optimized
ETL (Hadoop)
Amazon EMR
Triggered Code
Amazon Lambda
Staged Data
(Data Lake)
Amazon S3
ETL & Catalog Management
AWS Glue
Data Warehouse
Amazon Redshift
Triggered Code
Amazon Lambda
Data security
and management
Encryption
Access Controls
Monitoring and Metrics
Audit Trails
Automation
Serverless Computing
Data Discovery and
Protection
Data Visualization
Data movement
Physical Appliances
Hybrid Storage
Private Networks
File Data
WAN Acceleration
Third-party Applications
Streaming Data
Complete set of building blocks
FileBlock
Object Archival
Storage types
Ingest ServingData
sources
Modern data architecture
Insights to enhance business applications, new digital services
Transactions
ERP
Data analysts
Business users
DATA PIPELINES
EVENT PIPELINES
Data
Event
Insights
Data
Lake
Social media
© 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Outcome 2: Innovate for new revenues
EarEcstasy has its first direct relationship with consumers
Krzysztof, Data ScientistBala, Head of Marketing
What are our customer segments, based on usage?
Can predict music preference from location and HR?
Are there additional signals in the voice commands?
Can we infer user activity, from scenes in pictures?
How are people using the Smart Buds?
How to understand what they listen to and when?
What kinds of people are in/decreasing usage?
Start with a set of specific questions to answer, then work
backwards to the data required
Bala, Head of Marketing
How are people using the Smart Buds?
How to understand what they listen to and when?
What kinds of people are in/decreasing usage?
Media
consumption
(Partner API)
Registration,
usage [time/place]
(Mobile app)
Start with a set of specific questions to answer, then work
backwards to the data required
Krzysztof, Data Scientist
What are our customer segments, based on usage?
Can predict music preference from location and HR?
Are there additional signals in the voice commands?
Can we infer user activity, from scenes in pictures?
HR, Voice, GPS,
Images (Device
data)
DATA LAKE, OR NOT?
Registration,
usage [time/place]
(Mobile app)
LOAD TO DATA LAKE
© 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Sandboxes - fast, cheap, low risk
Ingest ServingData
sources
Modern data architecture
Insights to enhance business applications, new digital services
Transactions
Data scientists
Business users
Connected
devices
DATA PIPELINES
EVENT PIPELINES
Data
Event
Insights
Data
Lake
Sandbox
ML / Analytics / DLWeb logs /
clickstream
Ingest ServingData
sources
Modern data architecture
Innovate for new revenues - personalization and forecasting
Transactions
ERP
Data analysts
Data scientists
Business users
Connected
devices
DATA PIPELINES
EVENT PIPELINES
Data
Event
Insights
Data
Lake
ML / Analytics
Social media
Web logs /
clickstream
© 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Outcome 3: Real-time engagement
EarEcstasy offers a personalized life soundtrack
Personalized, based on
past preferences,
people with similar behaviors,
and environments detected
Use EarEcstasy voice enablement to play music
I’m tired, play me
some music!
Amazon Transcribe
/ Comprehend
Action: PLAY
Category: MUSIC
Genre: <RECOMMEND>
Request content
HISTORY
Twenty One Pilots!
PEOPLE LIKE YOU
Amazon Kinesis
Streams
Connected device data
Location: <FIND GPS>
Mood: <FIND HR>
Use the mobile app to take a picture to identify
activity
A QUIET OFFICE
Amazon SageMaker
Image Classification
Amazon Rekognition
Image
CHAIR
LAPTOP
LAMP
DESK
97%
95%
88%
82%
Object Identification
WORKING!
<HISTORY>
Ingest ServingData
sources
Modern data architecture
Real-time engagement and interactive customer experiences
Transactions
ERP
Data analysts
Data scientists
Business users
Engagement platformsConnected
devices
Automation / events
DATA PIPELINES
EVENT PIPELINES
Data
Event Action
Insights
Data
Lake
ML / Analytics
Predict /
Recommend
AI Services
Social media
Web logs /
clickstream
Business Outcomes on a Modern Data Architecture
Outcome 1 : Modernize and consolidate
• Insights to enhance business applications and create new digital
services
Outcome 2 : Innovate for new revenues
• Personalization, demand forecasting, risk analysis
Outcome 3 : Real-time engagement
• Interactive customer experience, event-driven automation, fraud
detection
Ready to build better business from your ideas?
Short list projects that
directly impact
customer engagement
and adoption
Build simple data
pipelines that allow you
to test new ideas, and
fill your data lake
Ask our solutions architects
and professional services
teams to help you build
© 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Summit sessions to dive deeper:
Wednesday (18-April-18)
12:30 30분만에 만드는 AWS 기반 빅데이터 분석 애플리케이션
(Building AWS Based Big Data and Analytics applications in 30 minutes)
13:30 AWS 기반의 대용량 실시간 스트리밍 데이터 분석 아키텍처 패턴
(Analysis Architecture pattern for AWS based High-Volume Live Streaming Data)
16:10 Amazon Redshift, Redshift Spectrum 아키텍처 및 모범사례
(Amazon Redshift, Quickly Expandable Data warehouse to Exabyte Scale)
17:10 모든 데이터를 위한 단 하나의 저장소, Amazon S3 기반 데이터 레이크
(Single Storage for All Data, Amazon S3 and AWS Glue base Data Lake)
© 2018, Amazon Web Services, Inc. or Its Affiliates. All rights reserved.
AWS Summit 모바일 앱과 QR코드를
통해 강연 평가 및 설문 조사에 참여해
주시기 바랍니다.
내년 Summit을 만들 여러분의 소중한
의견 부탁 드립니다.
#AWSSummit 해시태그로 소셜 미디어에 여러분의 행사
소감을 올려주세요.
발표 자료 및 녹화 동영상은 AWS Korea 공식 소셜 채널로
공유될 예정입니다.
여러분의 피드백을 기다립니다!
© 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved.
Please complete the session survey in the
summit mobile app.
Thank you!

Mais conteúdo relacionado

Mais procurados

Architecting for Real-Time Insights with Amazon Kinesis (ANT310) - AWS re:Inv...
Architecting for Real-Time Insights with Amazon Kinesis (ANT310) - AWS re:Inv...Architecting for Real-Time Insights with Amazon Kinesis (ANT310) - AWS re:Inv...
Architecting for Real-Time Insights with Amazon Kinesis (ANT310) - AWS re:Inv...Amazon Web Services
 
글로벌 미디어 고객사의 AWS 활용 사례-워싱턴 포스트 ::지정아::AWS Summit Seoul 2018
글로벌 미디어 고객사의 AWS 활용 사례-워싱턴 포스트 ::지정아::AWS Summit Seoul 2018글로벌 미디어 고객사의 AWS 활용 사례-워싱턴 포스트 ::지정아::AWS Summit Seoul 2018
글로벌 미디어 고객사의 AWS 활용 사례-워싱턴 포스트 ::지정아::AWS Summit Seoul 2018Amazon Web Services Korea
 
Creazione del business case per l'adozione del cloud nella tua azienda
Creazione del business case per l'adozione del cloud nella tua aziendaCreazione del business case per l'adozione del cloud nella tua azienda
Creazione del business case per l'adozione del cloud nella tua aziendaAmazon Web Services
 
AWS의 새로운 언어, 음성, 텍스트 처리 인공지능 서비스::Vikram Anbazhagan::AWS Summit Seoul 2018
AWS의 새로운 언어, 음성, 텍스트 처리 인공지능 서비스::Vikram Anbazhagan::AWS Summit Seoul 2018AWS의 새로운 언어, 음성, 텍스트 처리 인공지능 서비스::Vikram Anbazhagan::AWS Summit Seoul 2018
AWS의 새로운 언어, 음성, 텍스트 처리 인공지능 서비스::Vikram Anbazhagan::AWS Summit Seoul 2018Amazon Web Services Korea
 
Connecting the dots - How Amazon Neptune and Graph Databases can transform yo...
Connecting the dots - How Amazon Neptune and Graph Databases can transform yo...Connecting the dots - How Amazon Neptune and Graph Databases can transform yo...
Connecting the dots - How Amazon Neptune and Graph Databases can transform yo...Amazon Web Services
 
Using Amazon Kinesis Data Streams as a Low-Latency Message Bus (ANT361) - AWS...
Using Amazon Kinesis Data Streams as a Low-Latency Message Bus (ANT361) - AWS...Using Amazon Kinesis Data Streams as a Low-Latency Message Bus (ANT361) - AWS...
Using Amazon Kinesis Data Streams as a Low-Latency Message Bus (ANT361) - AWS...Amazon Web Services
 
Easy Rider: How ML, Serverless, and IoT Drive Mobility as a Service (AMT302) ...
Easy Rider: How ML, Serverless, and IoT Drive Mobility as a Service (AMT302) ...Easy Rider: How ML, Serverless, and IoT Drive Mobility as a Service (AMT302) ...
Easy Rider: How ML, Serverless, and IoT Drive Mobility as a Service (AMT302) ...Amazon Web Services
 
BDA304 Build Deep Learning Applications with TensorFlow and Amazon SageMaker
BDA304 Build Deep Learning Applications with TensorFlow and Amazon SageMakerBDA304 Build Deep Learning Applications with TensorFlow and Amazon SageMaker
BDA304 Build Deep Learning Applications with TensorFlow and Amazon SageMakerAmazon Web Services
 
데이터 기반 의사결정을 통한 비지니스 혁신 - 윤석찬 (AWS 테크에반젤리스트)
데이터 기반 의사결정을 통한 비지니스 혁신 - 윤석찬 (AWS 테크에반젤리스트)데이터 기반 의사결정을 통한 비지니스 혁신 - 윤석찬 (AWS 테크에반젤리스트)
데이터 기반 의사결정을 통한 비지니스 혁신 - 윤석찬 (AWS 테크에반젤리스트)Amazon Web Services Korea
 
눈으로 보는 AWS 기반 인공지능 서비스 아키텍처 활용 데모::OliverKlein::AWS Summit Seoul 2018
눈으로 보는 AWS 기반 인공지능 서비스 아키텍처 활용 데모::OliverKlein::AWS Summit Seoul 2018눈으로 보는 AWS 기반 인공지능 서비스 아키텍처 활용 데모::OliverKlein::AWS Summit Seoul 2018
눈으로 보는 AWS 기반 인공지능 서비스 아키텍처 활용 데모::OliverKlein::AWS Summit Seoul 2018Amazon Web Services Korea
 
[NEW LAUNCH!] Building modern applications using Amazon DynamoDB transactions...
[NEW LAUNCH!] Building modern applications using Amazon DynamoDB transactions...[NEW LAUNCH!] Building modern applications using Amazon DynamoDB transactions...
[NEW LAUNCH!] Building modern applications using Amazon DynamoDB transactions...Amazon Web Services
 
物聯網創新應用:車聯網解決方案 IoT Story of Connected Vehicle Solution(Level 300)
物聯網創新應用:車聯網解決方案 IoT Story of Connected Vehicle Solution(Level 300)物聯網創新應用:車聯網解決方案 IoT Story of Connected Vehicle Solution(Level 300)
物聯網創新應用:車聯網解決方案 IoT Story of Connected Vehicle Solution(Level 300)Amazon Web Services
 
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018Amazon Web Services Korea
 
Serverless Stream Processing Pipeline Best Practices (SRV316-R1) - AWS re:Inv...
Serverless Stream Processing Pipeline Best Practices (SRV316-R1) - AWS re:Inv...Serverless Stream Processing Pipeline Best Practices (SRV316-R1) - AWS re:Inv...
Serverless Stream Processing Pipeline Best Practices (SRV316-R1) - AWS re:Inv...Amazon Web Services
 
Migrate-Critical-Workload-to-AWS-From-Domain-Driven-Design-perspective
Migrate-Critical-Workload-to-AWS-From-Domain-Driven-Design-perspectiveMigrate-Critical-Workload-to-AWS-From-Domain-Driven-Design-perspective
Migrate-Critical-Workload-to-AWS-From-Domain-Driven-Design-perspectiveAmazon Web Services
 
Transforming Enterprise IT - AWS Transformation Days Raleigh 2018.pdf
Transforming Enterprise IT - AWS Transformation Days Raleigh 2018.pdfTransforming Enterprise IT - AWS Transformation Days Raleigh 2018.pdf
Transforming Enterprise IT - AWS Transformation Days Raleigh 2018.pdfAmazon Web Services
 
BDA305 Building Data Lakes and Analytics on AWS
BDA305 Building Data Lakes and Analytics on AWSBDA305 Building Data Lakes and Analytics on AWS
BDA305 Building Data Lakes and Analytics on AWSAmazon Web Services
 

Mais procurados (20)

Architecting for Real-Time Insights with Amazon Kinesis (ANT310) - AWS re:Inv...
Architecting for Real-Time Insights with Amazon Kinesis (ANT310) - AWS re:Inv...Architecting for Real-Time Insights with Amazon Kinesis (ANT310) - AWS re:Inv...
Architecting for Real-Time Insights with Amazon Kinesis (ANT310) - AWS re:Inv...
 
글로벌 미디어 고객사의 AWS 활용 사례-워싱턴 포스트 ::지정아::AWS Summit Seoul 2018
글로벌 미디어 고객사의 AWS 활용 사례-워싱턴 포스트 ::지정아::AWS Summit Seoul 2018글로벌 미디어 고객사의 AWS 활용 사례-워싱턴 포스트 ::지정아::AWS Summit Seoul 2018
글로벌 미디어 고객사의 AWS 활용 사례-워싱턴 포스트 ::지정아::AWS Summit Seoul 2018
 
Creazione del business case per l'adozione del cloud nella tua azienda
Creazione del business case per l'adozione del cloud nella tua aziendaCreazione del business case per l'adozione del cloud nella tua azienda
Creazione del business case per l'adozione del cloud nella tua azienda
 
New Tools for a New World
New Tools for a New WorldNew Tools for a New World
New Tools for a New World
 
Moving forward with AI
Moving forward with AIMoving forward with AI
Moving forward with AI
 
BI & Analytics
BI & AnalyticsBI & Analytics
BI & Analytics
 
AWS의 새로운 언어, 음성, 텍스트 처리 인공지능 서비스::Vikram Anbazhagan::AWS Summit Seoul 2018
AWS의 새로운 언어, 음성, 텍스트 처리 인공지능 서비스::Vikram Anbazhagan::AWS Summit Seoul 2018AWS의 새로운 언어, 음성, 텍스트 처리 인공지능 서비스::Vikram Anbazhagan::AWS Summit Seoul 2018
AWS의 새로운 언어, 음성, 텍스트 처리 인공지능 서비스::Vikram Anbazhagan::AWS Summit Seoul 2018
 
Connecting the dots - How Amazon Neptune and Graph Databases can transform yo...
Connecting the dots - How Amazon Neptune and Graph Databases can transform yo...Connecting the dots - How Amazon Neptune and Graph Databases can transform yo...
Connecting the dots - How Amazon Neptune and Graph Databases can transform yo...
 
Using Amazon Kinesis Data Streams as a Low-Latency Message Bus (ANT361) - AWS...
Using Amazon Kinesis Data Streams as a Low-Latency Message Bus (ANT361) - AWS...Using Amazon Kinesis Data Streams as a Low-Latency Message Bus (ANT361) - AWS...
Using Amazon Kinesis Data Streams as a Low-Latency Message Bus (ANT361) - AWS...
 
Easy Rider: How ML, Serverless, and IoT Drive Mobility as a Service (AMT302) ...
Easy Rider: How ML, Serverless, and IoT Drive Mobility as a Service (AMT302) ...Easy Rider: How ML, Serverless, and IoT Drive Mobility as a Service (AMT302) ...
Easy Rider: How ML, Serverless, and IoT Drive Mobility as a Service (AMT302) ...
 
BDA304 Build Deep Learning Applications with TensorFlow and Amazon SageMaker
BDA304 Build Deep Learning Applications with TensorFlow and Amazon SageMakerBDA304 Build Deep Learning Applications with TensorFlow and Amazon SageMaker
BDA304 Build Deep Learning Applications with TensorFlow and Amazon SageMaker
 
데이터 기반 의사결정을 통한 비지니스 혁신 - 윤석찬 (AWS 테크에반젤리스트)
데이터 기반 의사결정을 통한 비지니스 혁신 - 윤석찬 (AWS 테크에반젤리스트)데이터 기반 의사결정을 통한 비지니스 혁신 - 윤석찬 (AWS 테크에반젤리스트)
데이터 기반 의사결정을 통한 비지니스 혁신 - 윤석찬 (AWS 테크에반젤리스트)
 
눈으로 보는 AWS 기반 인공지능 서비스 아키텍처 활용 데모::OliverKlein::AWS Summit Seoul 2018
눈으로 보는 AWS 기반 인공지능 서비스 아키텍처 활용 데모::OliverKlein::AWS Summit Seoul 2018눈으로 보는 AWS 기반 인공지능 서비스 아키텍처 활용 데모::OliverKlein::AWS Summit Seoul 2018
눈으로 보는 AWS 기반 인공지능 서비스 아키텍처 활용 데모::OliverKlein::AWS Summit Seoul 2018
 
[NEW LAUNCH!] Building modern applications using Amazon DynamoDB transactions...
[NEW LAUNCH!] Building modern applications using Amazon DynamoDB transactions...[NEW LAUNCH!] Building modern applications using Amazon DynamoDB transactions...
[NEW LAUNCH!] Building modern applications using Amazon DynamoDB transactions...
 
物聯網創新應用:車聯網解決方案 IoT Story of Connected Vehicle Solution(Level 300)
物聯網創新應用:車聯網解決方案 IoT Story of Connected Vehicle Solution(Level 300)物聯網創新應用:車聯網解決方案 IoT Story of Connected Vehicle Solution(Level 300)
物聯網創新應用:車聯網解決方案 IoT Story of Connected Vehicle Solution(Level 300)
 
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018
 
Serverless Stream Processing Pipeline Best Practices (SRV316-R1) - AWS re:Inv...
Serverless Stream Processing Pipeline Best Practices (SRV316-R1) - AWS re:Inv...Serverless Stream Processing Pipeline Best Practices (SRV316-R1) - AWS re:Inv...
Serverless Stream Processing Pipeline Best Practices (SRV316-R1) - AWS re:Inv...
 
Migrate-Critical-Workload-to-AWS-From-Domain-Driven-Design-perspective
Migrate-Critical-Workload-to-AWS-From-Domain-Driven-Design-perspectiveMigrate-Critical-Workload-to-AWS-From-Domain-Driven-Design-perspective
Migrate-Critical-Workload-to-AWS-From-Domain-Driven-Design-perspective
 
Transforming Enterprise IT - AWS Transformation Days Raleigh 2018.pdf
Transforming Enterprise IT - AWS Transformation Days Raleigh 2018.pdfTransforming Enterprise IT - AWS Transformation Days Raleigh 2018.pdf
Transforming Enterprise IT - AWS Transformation Days Raleigh 2018.pdf
 
BDA305 Building Data Lakes and Analytics on AWS
BDA305 Building Data Lakes and Analytics on AWSBDA305 Building Data Lakes and Analytics on AWS
BDA305 Building Data Lakes and Analytics on AWS
 

Semelhante a Data Analytics를 통한 비지니스 혁신::Craig Stries::AWS Summit Seoul 2018

Pemahaman Pelanggan & Machine Learning (Level 200 – 300) | Kenali Pelanggan A...
Pemahaman Pelanggan & Machine Learning (Level 200 – 300) | Kenali Pelanggan A...Pemahaman Pelanggan & Machine Learning (Level 200 – 300) | Kenali Pelanggan A...
Pemahaman Pelanggan & Machine Learning (Level 200 – 300) | Kenali Pelanggan A...Amazon Web Services
 
AWS Summit Singapore - Get to Know Your Customers - Modern Data Architecture
AWS Summit Singapore - Get to Know Your Customers - Modern Data ArchitectureAWS Summit Singapore - Get to Know Your Customers - Modern Data Architecture
AWS Summit Singapore - Get to Know Your Customers - Modern Data ArchitectureAmazon Web Services
 
AWS Summit Singapore - Get to Know Your Customers - Modern Data Architecture
AWS Summit Singapore - Get to Know Your Customers - Modern Data ArchitectureAWS Summit Singapore - Get to Know Your Customers - Modern Data Architecture
AWS Summit Singapore - Get to Know Your Customers - Modern Data ArchitectureAmazon Web Services
 
AWS Summit Webinar Edition | Modern Data Architecture | Microsoft Application...
AWS Summit Webinar Edition | Modern Data Architecture | Microsoft Application...AWS Summit Webinar Edition | Modern Data Architecture | Microsoft Application...
AWS Summit Webinar Edition | Modern Data Architecture | Microsoft Application...Amazon Web Services
 
Better Business From Exploring Ideas - AWS Summit Sydney 2018
Better Business From Exploring Ideas - AWS Summit Sydney 2018Better Business From Exploring Ideas - AWS Summit Sydney 2018
Better Business From Exploring Ideas - AWS Summit Sydney 2018Amazon Web Services
 
Better Business from Exploring Ideas - Modern Data Architectures on AWS
Better Business from Exploring Ideas - Modern Data Architectures on AWSBetter Business from Exploring Ideas - Modern Data Architectures on AWS
Better Business from Exploring Ideas - Modern Data Architectures on AWSAmazon Web Services
 
Better Business from Exploring Ideas - Modern Data Architectures on AWS
Better Business from Exploring Ideas - Modern Data Architectures on AWSBetter Business from Exploring Ideas - Modern Data Architectures on AWS
Better Business from Exploring Ideas - Modern Data Architectures on AWSAmazon Web Services
 
Get to Know Your Customers - Build and Innovate with a Modern Data Architecture
Get to Know Your Customers - Build and Innovate with a Modern Data ArchitectureGet to Know Your Customers - Build and Innovate with a Modern Data Architecture
Get to Know Your Customers - Build and Innovate with a Modern Data ArchitectureAmazon Web Services
 
Build and Innovate with a Modern Data Architecture
Build and Innovate with a Modern Data ArchitectureBuild and Innovate with a Modern Data Architecture
Build and Innovate with a Modern Data ArchitectureAmazon Web Services
 
Preparing Your Data for Cloud Analytics & AI/ML
Preparing Your Data for Cloud Analytics & AI/ML Preparing Your Data for Cloud Analytics & AI/ML
Preparing Your Data for Cloud Analytics & AI/ML Amazon Web Services
 
AWS Summit Singapore 2019 | Big Data Analytics Architectural Patterns and Bes...
AWS Summit Singapore 2019 | Big Data Analytics Architectural Patterns and Bes...AWS Summit Singapore 2019 | Big Data Analytics Architectural Patterns and Bes...
AWS Summit Singapore 2019 | Big Data Analytics Architectural Patterns and Bes...AWS Summits
 
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...Building with AWS Databases: Match Your Workload to the Right Database | AWS ...
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...Amazon Web Services
 
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...Building with AWS Databases: Match Your Workload to the Right Database | AWS ...
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...AWS Summits
 
Welcome and AWS Big Data Solution Overview
Welcome and AWS Big Data Solution OverviewWelcome and AWS Big Data Solution Overview
Welcome and AWS Big Data Solution OverviewAmazon Web Services
 
An Overview of Machine Learning on AWS
An Overview of Machine Learning on AWSAn Overview of Machine Learning on AWS
An Overview of Machine Learning on AWSAmazon Web Services
 
Modern Cloud Data Warehousing ft. Equinox Fitness Clubs: Optimize Analytics P...
Modern Cloud Data Warehousing ft. Equinox Fitness Clubs: Optimize Analytics P...Modern Cloud Data Warehousing ft. Equinox Fitness Clubs: Optimize Analytics P...
Modern Cloud Data Warehousing ft. Equinox Fitness Clubs: Optimize Analytics P...Amazon Web Services
 
Driving Business Insights with a Modern Data Architecture AWS Summit SG 2017
Driving Business Insights with a Modern Data Architecture  AWS Summit SG 2017Driving Business Insights with a Modern Data Architecture  AWS Summit SG 2017
Driving Business Insights with a Modern Data Architecture AWS Summit SG 2017Amazon Web Services
 
Building a Data Lake in Amazon S3 & Amazon Glacier (STG401-R1) - AWS re:Inven...
Building a Data Lake in Amazon S3 & Amazon Glacier (STG401-R1) - AWS re:Inven...Building a Data Lake in Amazon S3 & Amazon Glacier (STG401-R1) - AWS re:Inven...
Building a Data Lake in Amazon S3 & Amazon Glacier (STG401-R1) - AWS re:Inven...Amazon Web Services
 
Big Data and Analytics on Amazon Web Services: Building A Business-Friendly P...
Big Data and Analytics on Amazon Web Services: Building A Business-Friendly P...Big Data and Analytics on Amazon Web Services: Building A Business-Friendly P...
Big Data and Analytics on Amazon Web Services: Building A Business-Friendly P...Amazon Web Services
 
Driving Business Outcomes with a Modern Data Architecture - Level 100
Driving Business Outcomes with a Modern Data Architecture - Level 100Driving Business Outcomes with a Modern Data Architecture - Level 100
Driving Business Outcomes with a Modern Data Architecture - Level 100Amazon Web Services
 

Semelhante a Data Analytics를 통한 비지니스 혁신::Craig Stries::AWS Summit Seoul 2018 (20)

Pemahaman Pelanggan & Machine Learning (Level 200 – 300) | Kenali Pelanggan A...
Pemahaman Pelanggan & Machine Learning (Level 200 – 300) | Kenali Pelanggan A...Pemahaman Pelanggan & Machine Learning (Level 200 – 300) | Kenali Pelanggan A...
Pemahaman Pelanggan & Machine Learning (Level 200 – 300) | Kenali Pelanggan A...
 
AWS Summit Singapore - Get to Know Your Customers - Modern Data Architecture
AWS Summit Singapore - Get to Know Your Customers - Modern Data ArchitectureAWS Summit Singapore - Get to Know Your Customers - Modern Data Architecture
AWS Summit Singapore - Get to Know Your Customers - Modern Data Architecture
 
AWS Summit Singapore - Get to Know Your Customers - Modern Data Architecture
AWS Summit Singapore - Get to Know Your Customers - Modern Data ArchitectureAWS Summit Singapore - Get to Know Your Customers - Modern Data Architecture
AWS Summit Singapore - Get to Know Your Customers - Modern Data Architecture
 
AWS Summit Webinar Edition | Modern Data Architecture | Microsoft Application...
AWS Summit Webinar Edition | Modern Data Architecture | Microsoft Application...AWS Summit Webinar Edition | Modern Data Architecture | Microsoft Application...
AWS Summit Webinar Edition | Modern Data Architecture | Microsoft Application...
 
Better Business From Exploring Ideas - AWS Summit Sydney 2018
Better Business From Exploring Ideas - AWS Summit Sydney 2018Better Business From Exploring Ideas - AWS Summit Sydney 2018
Better Business From Exploring Ideas - AWS Summit Sydney 2018
 
Better Business from Exploring Ideas - Modern Data Architectures on AWS
Better Business from Exploring Ideas - Modern Data Architectures on AWSBetter Business from Exploring Ideas - Modern Data Architectures on AWS
Better Business from Exploring Ideas - Modern Data Architectures on AWS
 
Better Business from Exploring Ideas - Modern Data Architectures on AWS
Better Business from Exploring Ideas - Modern Data Architectures on AWSBetter Business from Exploring Ideas - Modern Data Architectures on AWS
Better Business from Exploring Ideas - Modern Data Architectures on AWS
 
Get to Know Your Customers - Build and Innovate with a Modern Data Architecture
Get to Know Your Customers - Build and Innovate with a Modern Data ArchitectureGet to Know Your Customers - Build and Innovate with a Modern Data Architecture
Get to Know Your Customers - Build and Innovate with a Modern Data Architecture
 
Build and Innovate with a Modern Data Architecture
Build and Innovate with a Modern Data ArchitectureBuild and Innovate with a Modern Data Architecture
Build and Innovate with a Modern Data Architecture
 
Preparing Your Data for Cloud Analytics & AI/ML
Preparing Your Data for Cloud Analytics & AI/ML Preparing Your Data for Cloud Analytics & AI/ML
Preparing Your Data for Cloud Analytics & AI/ML
 
AWS Summit Singapore 2019 | Big Data Analytics Architectural Patterns and Bes...
AWS Summit Singapore 2019 | Big Data Analytics Architectural Patterns and Bes...AWS Summit Singapore 2019 | Big Data Analytics Architectural Patterns and Bes...
AWS Summit Singapore 2019 | Big Data Analytics Architectural Patterns and Bes...
 
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...Building with AWS Databases: Match Your Workload to the Right Database | AWS ...
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...
 
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...Building with AWS Databases: Match Your Workload to the Right Database | AWS ...
Building with AWS Databases: Match Your Workload to the Right Database | AWS ...
 
Welcome and AWS Big Data Solution Overview
Welcome and AWS Big Data Solution OverviewWelcome and AWS Big Data Solution Overview
Welcome and AWS Big Data Solution Overview
 
An Overview of Machine Learning on AWS
An Overview of Machine Learning on AWSAn Overview of Machine Learning on AWS
An Overview of Machine Learning on AWS
 
Modern Cloud Data Warehousing ft. Equinox Fitness Clubs: Optimize Analytics P...
Modern Cloud Data Warehousing ft. Equinox Fitness Clubs: Optimize Analytics P...Modern Cloud Data Warehousing ft. Equinox Fitness Clubs: Optimize Analytics P...
Modern Cloud Data Warehousing ft. Equinox Fitness Clubs: Optimize Analytics P...
 
Driving Business Insights with a Modern Data Architecture AWS Summit SG 2017
Driving Business Insights with a Modern Data Architecture  AWS Summit SG 2017Driving Business Insights with a Modern Data Architecture  AWS Summit SG 2017
Driving Business Insights with a Modern Data Architecture AWS Summit SG 2017
 
Building a Data Lake in Amazon S3 & Amazon Glacier (STG401-R1) - AWS re:Inven...
Building a Data Lake in Amazon S3 & Amazon Glacier (STG401-R1) - AWS re:Inven...Building a Data Lake in Amazon S3 & Amazon Glacier (STG401-R1) - AWS re:Inven...
Building a Data Lake in Amazon S3 & Amazon Glacier (STG401-R1) - AWS re:Inven...
 
Big Data and Analytics on Amazon Web Services: Building A Business-Friendly P...
Big Data and Analytics on Amazon Web Services: Building A Business-Friendly P...Big Data and Analytics on Amazon Web Services: Building A Business-Friendly P...
Big Data and Analytics on Amazon Web Services: Building A Business-Friendly P...
 
Driving Business Outcomes with a Modern Data Architecture - Level 100
Driving Business Outcomes with a Modern Data Architecture - Level 100Driving Business Outcomes with a Modern Data Architecture - Level 100
Driving Business Outcomes with a Modern Data Architecture - Level 100
 

Mais de Amazon Web Services Korea

AWS Modern Infra with Storage Roadshow 2023 - Day 2
AWS Modern Infra with Storage Roadshow 2023 - Day 2AWS Modern Infra with Storage Roadshow 2023 - Day 2
AWS Modern Infra with Storage Roadshow 2023 - Day 2Amazon Web Services Korea
 
AWS Modern Infra with Storage Roadshow 2023 - Day 1
AWS Modern Infra with Storage Roadshow 2023 - Day 1AWS Modern Infra with Storage Roadshow 2023 - Day 1
AWS Modern Infra with Storage Roadshow 2023 - Day 1Amazon Web Services Korea
 
사례로 알아보는 Database Migration Service : 데이터베이스 및 데이터 이관, 통합, 분리, 분석의 도구 - 발표자: ...
사례로 알아보는 Database Migration Service : 데이터베이스 및 데이터 이관, 통합, 분리, 분석의 도구 - 발표자: ...사례로 알아보는 Database Migration Service : 데이터베이스 및 데이터 이관, 통합, 분리, 분석의 도구 - 발표자: ...
사례로 알아보는 Database Migration Service : 데이터베이스 및 데이터 이관, 통합, 분리, 분석의 도구 - 발표자: ...Amazon Web Services Korea
 
Amazon DocumentDB - Architecture 및 Best Practice (Level 200) - 발표자: 장동훈, Sr. ...
Amazon DocumentDB - Architecture 및 Best Practice (Level 200) - 발표자: 장동훈, Sr. ...Amazon DocumentDB - Architecture 및 Best Practice (Level 200) - 발표자: 장동훈, Sr. ...
Amazon DocumentDB - Architecture 및 Best Practice (Level 200) - 발표자: 장동훈, Sr. ...Amazon Web Services Korea
 
Amazon Elasticache - Fully managed, Redis & Memcached Compatible Service (Lev...
Amazon Elasticache - Fully managed, Redis & Memcached Compatible Service (Lev...Amazon Elasticache - Fully managed, Redis & Memcached Compatible Service (Lev...
Amazon Elasticache - Fully managed, Redis & Memcached Compatible Service (Lev...Amazon Web Services Korea
 
Internal Architecture of Amazon Aurora (Level 400) - 발표자: 정달영, APAC RDS Speci...
Internal Architecture of Amazon Aurora (Level 400) - 발표자: 정달영, APAC RDS Speci...Internal Architecture of Amazon Aurora (Level 400) - 발표자: 정달영, APAC RDS Speci...
Internal Architecture of Amazon Aurora (Level 400) - 발표자: 정달영, APAC RDS Speci...Amazon Web Services Korea
 
[Keynote] 슬기로운 AWS 데이터베이스 선택하기 - 발표자: 강민석, Korea Database SA Manager, WWSO, A...
[Keynote] 슬기로운 AWS 데이터베이스 선택하기 - 발표자: 강민석, Korea Database SA Manager, WWSO, A...[Keynote] 슬기로운 AWS 데이터베이스 선택하기 - 발표자: 강민석, Korea Database SA Manager, WWSO, A...
[Keynote] 슬기로운 AWS 데이터베이스 선택하기 - 발표자: 강민석, Korea Database SA Manager, WWSO, A...Amazon Web Services Korea
 
Demystify Streaming on AWS - 발표자: 이종혁, Sr Analytics Specialist, WWSO, AWS :::...
Demystify Streaming on AWS - 발표자: 이종혁, Sr Analytics Specialist, WWSO, AWS :::...Demystify Streaming on AWS - 발표자: 이종혁, Sr Analytics Specialist, WWSO, AWS :::...
Demystify Streaming on AWS - 발표자: 이종혁, Sr Analytics Specialist, WWSO, AWS :::...Amazon Web Services Korea
 
Amazon EMR - Enhancements on Cost/Performance, Serverless - 발표자: 김기영, Sr Anal...
Amazon EMR - Enhancements on Cost/Performance, Serverless - 발표자: 김기영, Sr Anal...Amazon EMR - Enhancements on Cost/Performance, Serverless - 발표자: 김기영, Sr Anal...
Amazon EMR - Enhancements on Cost/Performance, Serverless - 발표자: 김기영, Sr Anal...Amazon Web Services Korea
 
Amazon OpenSearch - Use Cases, Security/Observability, Serverless and Enhance...
Amazon OpenSearch - Use Cases, Security/Observability, Serverless and Enhance...Amazon OpenSearch - Use Cases, Security/Observability, Serverless and Enhance...
Amazon OpenSearch - Use Cases, Security/Observability, Serverless and Enhance...Amazon Web Services Korea
 
Enabling Agility with Data Governance - 발표자: 김성연, Analytics Specialist, WWSO,...
Enabling Agility with Data Governance - 발표자: 김성연, Analytics Specialist, WWSO,...Enabling Agility with Data Governance - 발표자: 김성연, Analytics Specialist, WWSO,...
Enabling Agility with Data Governance - 발표자: 김성연, Analytics Specialist, WWSO,...Amazon Web Services Korea
 
Amazon Redshift Deep Dive - Serverless, Streaming, ML, Auto Copy (New feature...
Amazon Redshift Deep Dive - Serverless, Streaming, ML, Auto Copy (New feature...Amazon Redshift Deep Dive - Serverless, Streaming, ML, Auto Copy (New feature...
Amazon Redshift Deep Dive - Serverless, Streaming, ML, Auto Copy (New feature...Amazon Web Services Korea
 
From Insights to Action, How to build and maintain a Data Driven Organization...
From Insights to Action, How to build and maintain a Data Driven Organization...From Insights to Action, How to build and maintain a Data Driven Organization...
From Insights to Action, How to build and maintain a Data Driven Organization...Amazon Web Services Korea
 
[Keynote] Accelerating Business Outcomes with AWS Data - 발표자: Saeed Gharadagh...
[Keynote] Accelerating Business Outcomes with AWS Data - 발표자: Saeed Gharadagh...[Keynote] Accelerating Business Outcomes with AWS Data - 발표자: Saeed Gharadagh...
[Keynote] Accelerating Business Outcomes with AWS Data - 발표자: Saeed Gharadagh...Amazon Web Services Korea
 
Amazon DynamoDB - Use Cases and Cost Optimization - 발표자: 이혁, DynamoDB Special...
Amazon DynamoDB - Use Cases and Cost Optimization - 발표자: 이혁, DynamoDB Special...Amazon DynamoDB - Use Cases and Cost Optimization - 발표자: 이혁, DynamoDB Special...
Amazon DynamoDB - Use Cases and Cost Optimization - 발표자: 이혁, DynamoDB Special...Amazon Web Services Korea
 
LG전자 - Amazon Aurora 및 RDS 블루/그린 배포를 이용한 데이터베이스 업그레이드 안정성 확보 - 발표자: 이은경 책임, L...
LG전자 - Amazon Aurora 및 RDS 블루/그린 배포를 이용한 데이터베이스 업그레이드 안정성 확보 - 발표자: 이은경 책임, L...LG전자 - Amazon Aurora 및 RDS 블루/그린 배포를 이용한 데이터베이스 업그레이드 안정성 확보 - 발표자: 이은경 책임, L...
LG전자 - Amazon Aurora 및 RDS 블루/그린 배포를 이용한 데이터베이스 업그레이드 안정성 확보 - 발표자: 이은경 책임, L...Amazon Web Services Korea
 
KB국민카드 - 클라우드 기반 분석 플랫폼 혁신 여정 - 발표자: 박창용 과장, 데이터전략본부, AI혁신부, KB카드│강병억, Soluti...
KB국민카드 - 클라우드 기반 분석 플랫폼 혁신 여정 - 발표자: 박창용 과장, 데이터전략본부, AI혁신부, KB카드│강병억, Soluti...KB국민카드 - 클라우드 기반 분석 플랫폼 혁신 여정 - 발표자: 박창용 과장, 데이터전략본부, AI혁신부, KB카드│강병억, Soluti...
KB국민카드 - 클라우드 기반 분석 플랫폼 혁신 여정 - 발표자: 박창용 과장, 데이터전략본부, AI혁신부, KB카드│강병억, Soluti...Amazon Web Services Korea
 
SK Telecom - 망관리 프로젝트 TANGO의 오픈소스 데이터베이스 전환 여정 - 발표자 : 박승전, Project Manager, ...
SK Telecom - 망관리 프로젝트 TANGO의 오픈소스 데이터베이스 전환 여정 - 발표자 : 박승전, Project Manager, ...SK Telecom - 망관리 프로젝트 TANGO의 오픈소스 데이터베이스 전환 여정 - 발표자 : 박승전, Project Manager, ...
SK Telecom - 망관리 프로젝트 TANGO의 오픈소스 데이터베이스 전환 여정 - 발표자 : 박승전, Project Manager, ...Amazon Web Services Korea
 
코리안리 - 데이터 분석 플랫폼 구축 여정, 그 시작과 과제 - 발표자: 김석기 그룹장, 데이터비즈니스센터, 메가존클라우드 ::: AWS ...
코리안리 - 데이터 분석 플랫폼 구축 여정, 그 시작과 과제 - 발표자: 김석기 그룹장, 데이터비즈니스센터, 메가존클라우드 ::: AWS ...코리안리 - 데이터 분석 플랫폼 구축 여정, 그 시작과 과제 - 발표자: 김석기 그룹장, 데이터비즈니스센터, 메가존클라우드 ::: AWS ...
코리안리 - 데이터 분석 플랫폼 구축 여정, 그 시작과 과제 - 발표자: 김석기 그룹장, 데이터비즈니스센터, 메가존클라우드 ::: AWS ...Amazon Web Services Korea
 
LG 이노텍 - Amazon Redshift Serverless를 활용한 데이터 분석 플랫폼 혁신 과정 - 발표자: 유재상 선임, LG이노...
LG 이노텍 - Amazon Redshift Serverless를 활용한 데이터 분석 플랫폼 혁신 과정 - 발표자: 유재상 선임, LG이노...LG 이노텍 - Amazon Redshift Serverless를 활용한 데이터 분석 플랫폼 혁신 과정 - 발표자: 유재상 선임, LG이노...
LG 이노텍 - Amazon Redshift Serverless를 활용한 데이터 분석 플랫폼 혁신 과정 - 발표자: 유재상 선임, LG이노...Amazon Web Services Korea
 

Mais de Amazon Web Services Korea (20)

AWS Modern Infra with Storage Roadshow 2023 - Day 2
AWS Modern Infra with Storage Roadshow 2023 - Day 2AWS Modern Infra with Storage Roadshow 2023 - Day 2
AWS Modern Infra with Storage Roadshow 2023 - Day 2
 
AWS Modern Infra with Storage Roadshow 2023 - Day 1
AWS Modern Infra with Storage Roadshow 2023 - Day 1AWS Modern Infra with Storage Roadshow 2023 - Day 1
AWS Modern Infra with Storage Roadshow 2023 - Day 1
 
사례로 알아보는 Database Migration Service : 데이터베이스 및 데이터 이관, 통합, 분리, 분석의 도구 - 발표자: ...
사례로 알아보는 Database Migration Service : 데이터베이스 및 데이터 이관, 통합, 분리, 분석의 도구 - 발표자: ...사례로 알아보는 Database Migration Service : 데이터베이스 및 데이터 이관, 통합, 분리, 분석의 도구 - 발표자: ...
사례로 알아보는 Database Migration Service : 데이터베이스 및 데이터 이관, 통합, 분리, 분석의 도구 - 발표자: ...
 
Amazon DocumentDB - Architecture 및 Best Practice (Level 200) - 발표자: 장동훈, Sr. ...
Amazon DocumentDB - Architecture 및 Best Practice (Level 200) - 발표자: 장동훈, Sr. ...Amazon DocumentDB - Architecture 및 Best Practice (Level 200) - 발표자: 장동훈, Sr. ...
Amazon DocumentDB - Architecture 및 Best Practice (Level 200) - 발표자: 장동훈, Sr. ...
 
Amazon Elasticache - Fully managed, Redis & Memcached Compatible Service (Lev...
Amazon Elasticache - Fully managed, Redis & Memcached Compatible Service (Lev...Amazon Elasticache - Fully managed, Redis & Memcached Compatible Service (Lev...
Amazon Elasticache - Fully managed, Redis & Memcached Compatible Service (Lev...
 
Internal Architecture of Amazon Aurora (Level 400) - 발표자: 정달영, APAC RDS Speci...
Internal Architecture of Amazon Aurora (Level 400) - 발표자: 정달영, APAC RDS Speci...Internal Architecture of Amazon Aurora (Level 400) - 발표자: 정달영, APAC RDS Speci...
Internal Architecture of Amazon Aurora (Level 400) - 발표자: 정달영, APAC RDS Speci...
 
[Keynote] 슬기로운 AWS 데이터베이스 선택하기 - 발표자: 강민석, Korea Database SA Manager, WWSO, A...
[Keynote] 슬기로운 AWS 데이터베이스 선택하기 - 발표자: 강민석, Korea Database SA Manager, WWSO, A...[Keynote] 슬기로운 AWS 데이터베이스 선택하기 - 발표자: 강민석, Korea Database SA Manager, WWSO, A...
[Keynote] 슬기로운 AWS 데이터베이스 선택하기 - 발표자: 강민석, Korea Database SA Manager, WWSO, A...
 
Demystify Streaming on AWS - 발표자: 이종혁, Sr Analytics Specialist, WWSO, AWS :::...
Demystify Streaming on AWS - 발표자: 이종혁, Sr Analytics Specialist, WWSO, AWS :::...Demystify Streaming on AWS - 발표자: 이종혁, Sr Analytics Specialist, WWSO, AWS :::...
Demystify Streaming on AWS - 발표자: 이종혁, Sr Analytics Specialist, WWSO, AWS :::...
 
Amazon EMR - Enhancements on Cost/Performance, Serverless - 발표자: 김기영, Sr Anal...
Amazon EMR - Enhancements on Cost/Performance, Serverless - 발표자: 김기영, Sr Anal...Amazon EMR - Enhancements on Cost/Performance, Serverless - 발표자: 김기영, Sr Anal...
Amazon EMR - Enhancements on Cost/Performance, Serverless - 발표자: 김기영, Sr Anal...
 
Amazon OpenSearch - Use Cases, Security/Observability, Serverless and Enhance...
Amazon OpenSearch - Use Cases, Security/Observability, Serverless and Enhance...Amazon OpenSearch - Use Cases, Security/Observability, Serverless and Enhance...
Amazon OpenSearch - Use Cases, Security/Observability, Serverless and Enhance...
 
Enabling Agility with Data Governance - 발표자: 김성연, Analytics Specialist, WWSO,...
Enabling Agility with Data Governance - 발표자: 김성연, Analytics Specialist, WWSO,...Enabling Agility with Data Governance - 발표자: 김성연, Analytics Specialist, WWSO,...
Enabling Agility with Data Governance - 발표자: 김성연, Analytics Specialist, WWSO,...
 
Amazon Redshift Deep Dive - Serverless, Streaming, ML, Auto Copy (New feature...
Amazon Redshift Deep Dive - Serverless, Streaming, ML, Auto Copy (New feature...Amazon Redshift Deep Dive - Serverless, Streaming, ML, Auto Copy (New feature...
Amazon Redshift Deep Dive - Serverless, Streaming, ML, Auto Copy (New feature...
 
From Insights to Action, How to build and maintain a Data Driven Organization...
From Insights to Action, How to build and maintain a Data Driven Organization...From Insights to Action, How to build and maintain a Data Driven Organization...
From Insights to Action, How to build and maintain a Data Driven Organization...
 
[Keynote] Accelerating Business Outcomes with AWS Data - 발표자: Saeed Gharadagh...
[Keynote] Accelerating Business Outcomes with AWS Data - 발표자: Saeed Gharadagh...[Keynote] Accelerating Business Outcomes with AWS Data - 발표자: Saeed Gharadagh...
[Keynote] Accelerating Business Outcomes with AWS Data - 발표자: Saeed Gharadagh...
 
Amazon DynamoDB - Use Cases and Cost Optimization - 발표자: 이혁, DynamoDB Special...
Amazon DynamoDB - Use Cases and Cost Optimization - 발표자: 이혁, DynamoDB Special...Amazon DynamoDB - Use Cases and Cost Optimization - 발표자: 이혁, DynamoDB Special...
Amazon DynamoDB - Use Cases and Cost Optimization - 발표자: 이혁, DynamoDB Special...
 
LG전자 - Amazon Aurora 및 RDS 블루/그린 배포를 이용한 데이터베이스 업그레이드 안정성 확보 - 발표자: 이은경 책임, L...
LG전자 - Amazon Aurora 및 RDS 블루/그린 배포를 이용한 데이터베이스 업그레이드 안정성 확보 - 발표자: 이은경 책임, L...LG전자 - Amazon Aurora 및 RDS 블루/그린 배포를 이용한 데이터베이스 업그레이드 안정성 확보 - 발표자: 이은경 책임, L...
LG전자 - Amazon Aurora 및 RDS 블루/그린 배포를 이용한 데이터베이스 업그레이드 안정성 확보 - 발표자: 이은경 책임, L...
 
KB국민카드 - 클라우드 기반 분석 플랫폼 혁신 여정 - 발표자: 박창용 과장, 데이터전략본부, AI혁신부, KB카드│강병억, Soluti...
KB국민카드 - 클라우드 기반 분석 플랫폼 혁신 여정 - 발표자: 박창용 과장, 데이터전략본부, AI혁신부, KB카드│강병억, Soluti...KB국민카드 - 클라우드 기반 분석 플랫폼 혁신 여정 - 발표자: 박창용 과장, 데이터전략본부, AI혁신부, KB카드│강병억, Soluti...
KB국민카드 - 클라우드 기반 분석 플랫폼 혁신 여정 - 발표자: 박창용 과장, 데이터전략본부, AI혁신부, KB카드│강병억, Soluti...
 
SK Telecom - 망관리 프로젝트 TANGO의 오픈소스 데이터베이스 전환 여정 - 발표자 : 박승전, Project Manager, ...
SK Telecom - 망관리 프로젝트 TANGO의 오픈소스 데이터베이스 전환 여정 - 발표자 : 박승전, Project Manager, ...SK Telecom - 망관리 프로젝트 TANGO의 오픈소스 데이터베이스 전환 여정 - 발표자 : 박승전, Project Manager, ...
SK Telecom - 망관리 프로젝트 TANGO의 오픈소스 데이터베이스 전환 여정 - 발표자 : 박승전, Project Manager, ...
 
코리안리 - 데이터 분석 플랫폼 구축 여정, 그 시작과 과제 - 발표자: 김석기 그룹장, 데이터비즈니스센터, 메가존클라우드 ::: AWS ...
코리안리 - 데이터 분석 플랫폼 구축 여정, 그 시작과 과제 - 발표자: 김석기 그룹장, 데이터비즈니스센터, 메가존클라우드 ::: AWS ...코리안리 - 데이터 분석 플랫폼 구축 여정, 그 시작과 과제 - 발표자: 김석기 그룹장, 데이터비즈니스센터, 메가존클라우드 ::: AWS ...
코리안리 - 데이터 분석 플랫폼 구축 여정, 그 시작과 과제 - 발표자: 김석기 그룹장, 데이터비즈니스센터, 메가존클라우드 ::: AWS ...
 
LG 이노텍 - Amazon Redshift Serverless를 활용한 데이터 분석 플랫폼 혁신 과정 - 발표자: 유재상 선임, LG이노...
LG 이노텍 - Amazon Redshift Serverless를 활용한 데이터 분석 플랫폼 혁신 과정 - 발표자: 유재상 선임, LG이노...LG 이노텍 - Amazon Redshift Serverless를 활용한 데이터 분석 플랫폼 혁신 과정 - 발표자: 유재상 선임, LG이노...
LG 이노텍 - Amazon Redshift Serverless를 활용한 데이터 분석 플랫폼 혁신 과정 - 발표자: 유재상 선임, LG이노...
 

Último

Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Zilliz
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Victor Rentea
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDropbox
 
Vector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptxVector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptxRemote DBA Services
 
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...Orbitshub
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProduct Anonymous
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...DianaGray10
 
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...apidays
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAndrey Devyatkin
 
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering DevelopersWSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering DevelopersWSO2
 
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfRising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfOrbitshub
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businesspanagenda
 
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Angeliki Cooney
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobeapidays
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FMESafe Software
 
Corporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptxCorporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptxRustici Software
 
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityPlatformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityWSO2
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsNanddeep Nachan
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfsudhanshuwaghmare1
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc
 

Último (20)

Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
 
Vector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptxVector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptx
 
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering DevelopersWSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering Developers
 
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfRising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Corporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptxCorporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptx
 
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityPlatformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 

Data Analytics를 통한 비지니스 혁신::Craig Stries::AWS Summit Seoul 2018

  • 1. © 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Craig Stires Head of AI, Analytics, Big Data - Asia Pacific, AWS Better Business from Exploring Ideas Modern Data Architectures on AWS
  • 2. © 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved. Let’s go on a common customer journey
  • 3. Meet EarEcstasy, as they move from B2B to B2C * This case is representative of a common customer journey, but EarEcstasy isn’t an actual business EarEcstasy manufacturers headsets. They ran a traditional B2B business since 2005, selling through distribution and retail channels. 2005 In 2018, they launched their first “Smart Buds”. These wireless headsets have voice enablement, GPS tracking, and heartrate monitors built in, and the device syncs with the users mobile phone via Bluetooth. The mobile app also supports scene detection. 2018
  • 4. EarEcstasy needs to answer new questions and move faster Raymond, Head of ProductLim, Head of Finance Which regions are the new earbuds selling well? What is the demand forecast by product category? What is the social sentiment about our products? How do quality issues impact cost of production? Can I look at supplier performance over time? How can we reduce our inventory holding costs?
  • 5. To answer new questions quickly, we look to a modern data architecture design Massive upfront costs Overprovisioned capacity Long implementation times Pay as you go, for what you use Decoupled pipelines and engines Experimentation platform Ingest/ Collect Consume/ visualize Store Process/ analyze 1 4 0 9 5
  • 6. © 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved. Outcome 1: Modernize and consolidate
  • 7. Start with a set of specific questions to answer, then work backwards to the data required Lim, Head of Finance How do quality issues impact cost of production? Can I look at supplier performance over time? How can we reduce our inventory holding costs? Order History / Returns (CRM) Inventory / Production (ERP)
  • 8. Ingest ServingData sources Modern data architecture Insights to enhance business applications, new digital services Transactions ERP Data analysts DATA PIPELINES Ingest/ Collect Consume / visualize Store Process / analyze 1 4 0 9 5
  • 9. © 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved. Start small and iterate
  • 10. Ingest ServingData sources Modern data architecture Insights to enhance business applications, new digital services Transactions ERP DATA PIPELINES Data Lake expdp Data Data analysts Data Warehouse Amazon Redshift Direct Query Amazon Athena She asks for the SMALLEST amount of data to answer her questions. If it isn’t good enough, she asks for another small slice to be loaded to the DATA LAKE
  • 11. Amazon Redshift – Modern Data Warehousing Fast, scalable, fully managed data warehouse at 1/10th the cost Massively parallel, scales from gigabytes to exabytes Queries data across your Redshift data warehouse and Amazon S3 data lake Fast at scale Columnar storage technology to improve I/O efficiency and scale query performance Open file formats Analyze optimized data formats on direct-attached disks, and all open file formats in S3 Cost-effective Start at $0.25 per hour; as low as $250-$333 per uncompressed terabyte per year $ Secure Audit everything; encrypt data end-to-end; extensive certification and compliance
  • 12. Characteristics of a Data Lake Future Proof Flexible Access Dive in Anywhere Collect Anything
  • 13. Start with a set of specific questions to answer, then work backwards to the data required Raymond, Head of Product Which regions are the new earbuds selling well? What is the demand forecast by product category? What is the social sentiment about our products? Trending / Mentions (Social) Order History / Returns (CRM) NOW IN THE DATA LAKE
  • 14. © 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved. Experiment, validate, then scale
  • 15. Ingest ServingData sources Modern data architecture Insights to enhance business applications, new digital services DATA PIPELINES Data Lake He first looks to the DATA LAKE, and imports only the category data he needs He imports JUST ENOUGH data to see if the market is responding to products. Business users Transactions ERP Social media Data Stream Capture Amazon Kinesis Events Amazon QuickSight Data Warehouse Amazon Redshift Stream Data Amazon ElasticSearch
  • 16. Common data pipeline configuration Raw Data Amazon S3 Highly decoupled configurations scale better, are more fault tolerant, and cost optimized ETL (Hadoop) Amazon EMR Triggered Code Amazon Lambda Staged Data (Data Lake) Amazon S3 ETL & Catalog Management AWS Glue Data Warehouse Amazon Redshift Triggered Code Amazon Lambda
  • 17. Data security and management Encryption Access Controls Monitoring and Metrics Audit Trails Automation Serverless Computing Data Discovery and Protection Data Visualization Data movement Physical Appliances Hybrid Storage Private Networks File Data WAN Acceleration Third-party Applications Streaming Data Complete set of building blocks FileBlock Object Archival Storage types
  • 18. Ingest ServingData sources Modern data architecture Insights to enhance business applications, new digital services Transactions ERP Data analysts Business users DATA PIPELINES EVENT PIPELINES Data Event Insights Data Lake Social media
  • 19. © 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved. Outcome 2: Innovate for new revenues
  • 20. EarEcstasy has its first direct relationship with consumers Krzysztof, Data ScientistBala, Head of Marketing What are our customer segments, based on usage? Can predict music preference from location and HR? Are there additional signals in the voice commands? Can we infer user activity, from scenes in pictures? How are people using the Smart Buds? How to understand what they listen to and when? What kinds of people are in/decreasing usage?
  • 21. Start with a set of specific questions to answer, then work backwards to the data required Bala, Head of Marketing How are people using the Smart Buds? How to understand what they listen to and when? What kinds of people are in/decreasing usage? Media consumption (Partner API) Registration, usage [time/place] (Mobile app)
  • 22. Start with a set of specific questions to answer, then work backwards to the data required Krzysztof, Data Scientist What are our customer segments, based on usage? Can predict music preference from location and HR? Are there additional signals in the voice commands? Can we infer user activity, from scenes in pictures? HR, Voice, GPS, Images (Device data) DATA LAKE, OR NOT? Registration, usage [time/place] (Mobile app) LOAD TO DATA LAKE
  • 23. © 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved. Sandboxes - fast, cheap, low risk
  • 24. Ingest ServingData sources Modern data architecture Insights to enhance business applications, new digital services Transactions Data scientists Business users Connected devices DATA PIPELINES EVENT PIPELINES Data Event Insights Data Lake Sandbox ML / Analytics / DLWeb logs / clickstream
  • 25. Ingest ServingData sources Modern data architecture Innovate for new revenues - personalization and forecasting Transactions ERP Data analysts Data scientists Business users Connected devices DATA PIPELINES EVENT PIPELINES Data Event Insights Data Lake ML / Analytics Social media Web logs / clickstream
  • 26. © 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved. Outcome 3: Real-time engagement
  • 27. EarEcstasy offers a personalized life soundtrack Personalized, based on past preferences, people with similar behaviors, and environments detected
  • 28. Use EarEcstasy voice enablement to play music I’m tired, play me some music! Amazon Transcribe / Comprehend Action: PLAY Category: MUSIC Genre: <RECOMMEND> Request content HISTORY Twenty One Pilots! PEOPLE LIKE YOU Amazon Kinesis Streams Connected device data Location: <FIND GPS> Mood: <FIND HR>
  • 29. Use the mobile app to take a picture to identify activity A QUIET OFFICE Amazon SageMaker Image Classification Amazon Rekognition Image CHAIR LAPTOP LAMP DESK 97% 95% 88% 82% Object Identification WORKING! <HISTORY>
  • 30. Ingest ServingData sources Modern data architecture Real-time engagement and interactive customer experiences Transactions ERP Data analysts Data scientists Business users Engagement platformsConnected devices Automation / events DATA PIPELINES EVENT PIPELINES Data Event Action Insights Data Lake ML / Analytics Predict / Recommend AI Services Social media Web logs / clickstream
  • 31. Business Outcomes on a Modern Data Architecture Outcome 1 : Modernize and consolidate • Insights to enhance business applications and create new digital services Outcome 2 : Innovate for new revenues • Personalization, demand forecasting, risk analysis Outcome 3 : Real-time engagement • Interactive customer experience, event-driven automation, fraud detection
  • 32. Ready to build better business from your ideas? Short list projects that directly impact customer engagement and adoption Build simple data pipelines that allow you to test new ideas, and fill your data lake Ask our solutions architects and professional services teams to help you build
  • 33. © 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved. Summit sessions to dive deeper: Wednesday (18-April-18) 12:30 30분만에 만드는 AWS 기반 빅데이터 분석 애플리케이션 (Building AWS Based Big Data and Analytics applications in 30 minutes) 13:30 AWS 기반의 대용량 실시간 스트리밍 데이터 분석 아키텍처 패턴 (Analysis Architecture pattern for AWS based High-Volume Live Streaming Data) 16:10 Amazon Redshift, Redshift Spectrum 아키텍처 및 모범사례 (Amazon Redshift, Quickly Expandable Data warehouse to Exabyte Scale) 17:10 모든 데이터를 위한 단 하나의 저장소, Amazon S3 기반 데이터 레이크 (Single Storage for All Data, Amazon S3 and AWS Glue base Data Lake)
  • 34. © 2018, Amazon Web Services, Inc. or Its Affiliates. All rights reserved. AWS Summit 모바일 앱과 QR코드를 통해 강연 평가 및 설문 조사에 참여해 주시기 바랍니다. 내년 Summit을 만들 여러분의 소중한 의견 부탁 드립니다. #AWSSummit 해시태그로 소셜 미디어에 여러분의 행사 소감을 올려주세요. 발표 자료 및 녹화 동영상은 AWS Korea 공식 소셜 채널로 공유될 예정입니다. 여러분의 피드백을 기다립니다!
  • 35. © 2018, Amazon Web Services, Inc. or its affiliates. All rights reserved. Please complete the session survey in the summit mobile app. Thank you!