SlideShare a Scribd company logo
© 2016, Amazon Web Services, Inc. or its Affiliates. All rights reserved.© 2016, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
Maor Kleider, Senior Product Manager, AWS
June 30, 2016
Getting Started with
Amazon Redshift
Agenda
• Introduction
• Benefits
• Use cases
• Getting started
• Q&A
AnalyzeStore
Amazon
Glacier
Amazon S3
Amazon
DynamoDB
Amazon RDS,
Amazon Aurora
AWS big data portfolio
AWS Data Pipeline
Amazon
CloudSearch
Amazon EMR Amazon EC2
Amazon
Redshift
Amazon
Machine
Learning
Amazon
Elasticsearch
Service
AWS Database
Migration Service
Amazon
QuickSight
Amazon
Kinesis
Firehose
AWS Import/Export
AWS Direct
Connect
Collect
Amazon Kinesis
Streams
Relational data warehouse
Massively parallel; petabyte scale
Fully managed
HDD and SSD platforms
$1,000/TB/year; starts at $0.25/hour
Amazon
Redshift
a lot faster
a lot simpler
a lot cheaper
The Amazon Redshift view of data warehousing
10x cheaper
Easy to provision
Higher DBA productivity
10x faster
No programming
Easily leverage BI tools,
Hadoop, machine learning,
streaming
Analysis inline with process
flows
Pay as you go, grow as you
need
Managed availability and
disaster recovery
Enterprise Big data SaaS
The Forrester Wave™ is copyrighted by Forrester Research, Inc. Forrester and Forrester Wave™ are trademarks of Forrester Research, Inc. The Forrester Wave™ is a graphical
representation of Forrester's call on a market and is plotted using a detailed spreadsheet with exposed scores, weightings, and comments. Forrester does not endorse any
vendor, product, or service depicted in the Forrester Wave. Information is based on best available resources. Opinions reflect judgment at the time and are subject to change.
Forrester Wave™ Enterprise Data Warehouse Q4 ’15
Selected Amazon Redshift customers
Amazon Redshift architecture
Leader node
Simple SQL endpoint
Stores metadata
Optimizes query plan
Coordinates query execution
Compute nodes
Local columnar storage
Parallel/distributed execution of all queries, loads,
backups, restores, resizes
Start at just $0.25/hour, grow to 2 PB (compressed)
DC1: SSD; scale from 160 GB to 326 TB
DS2: HDD; scale from 2 TB to 2 PB
Ingestion/Backup
Backup
Restore
JDBC/ODBC
10 GigE
(HPC)
Benefit #1: Amazon Redshift is fast
Dramatically less I/O
Column storage
Data compression
Zone maps
Direct-attached storage
Large data block sizes
analyze compression listing;
Table | Column | Encoding
---------+----------------+----------
listing | listid | delta
listing | sellerid | delta32k
listing | eventid | delta32k
listing | dateid | bytedict
listing | numtickets | bytedict
listing | priceperticket | delta32k
listing | totalprice | mostly32
listing | listtime | raw
10 | 13 | 14 | 26 |…
… | 100 | 245 | 324
375 | 393 | 417…
… 512 | 549 | 623
637 | 712 | 809 …
… | 834 | 921 | 959
10
324
375
623
637
959
Benefit #1: Amazon Redshift is fast
Parallel and distributed
Query
Load
Export
Backup
Restore
Resize
Benefit #1: Amazon Redshift is fast
Hardware optimized for I/O intensive workloads, 4 GB/sec/node
Enhanced networking, over 1 million packets/sec/node
Choice of storage type, instance size
Regular cadence of auto-patched improvements
Benefit #1: Amazon Redshift is fast
New Dense Storage (HDD) instance type (Jun 15)
Improved memory 2x, compute 2x, disk throughput 1.5x
Cost: Same as our prior generation!
Performance improvement: 50%
Enhanced I/O and commit improvements (Jan 16)
Reduce amount of time to commit data
Throughput performance improvement: 35%
Improved memory allocation for query processing (May 16)
Increased overall throughput by up to 60%
Benefit #2: Amazon Redshift is inexpensive
DS2 (HDD)
Price per hour for
DS2.XL single node
Effective annual
price per TB compressed
On-demand $ 0.850 $ 3,725
1 year reservation $ 0.500 $ 2,190
3 year reservation $ 0.228 $ 999
DC1 (SSD)
Price per hour for
DC1.L single node
Effective annual
price per TB compressed
On-demand $ 0.250 $ 13,690
1 year reservation $ 0.161 $ 8,795
3 year reservation $ 0.100 $ 5,500
Pricing is simple
Number of nodes x price/hour
No charge for leader node
No upfront costs
Pay as you go
Benefit #3: Amazon Redshift is fully managed
Continuous/incremental backups
Multiple copies within cluster
Continuous and incremental backups
to Amazon S3
Continuous and incremental backups
across regions
Streaming restore
Amazon S3
Amazon S3
Region 1
Region 2
Benefit #3: Amazon Redshift is fully managed
Amazon S3
Amazon S3
Region 1
Region 2
Fault tolerance
Disk failures
Node failures
Network failures
Availability Zone/region level disasters
Benefit #4: Security is built-in
• Load encrypted from S3
• SSL to secure data in transit
• ECDHE perfect forward security
• Amazon VPC for network isolation
• Encryption to secure data at rest
• All blocks on disks and in S3 encrypted
• Block key, cluster key, master key (AES-256)
• On-premises HSM & AWS CloudHSM support
• Audit logging and AWS CloudTrail integration
• SOC 1/2/3, PCI-DSS, FedRAMP, BAA
10 GigE
(HPC)
Ingestion
Backup
Restore
Customer VPC
Internal
VPC
JDBC/ODBC
Benefit #5: We innovate quickly
Well over 100 new features added since launch
Release every two weeks
Automatic patching
Benefit #6: Redshift is powerful
• Approximate functions
• User defined functions
• Machine learning
• Data science
Benefit #7: Amazon Redshift has a large ecosystem
Data integration Systems integratorsBusiness intelligence
Benefit #8: Service oriented architecture
DynamoDB
EMR
S3
EC2/SSH
RDS/Aurora
Amazon
Redshift
Amazon Kinesis
Amazon ML
Data Pipeline
CloudSearch
Amazon
Mobile
Analytics
Use cases
NTT Docomo: Japan’s largest mobile service provider
68 million customers
Tens of TBs per day of data across a
mobile network
6 PB of total data (uncompressed)
Data science for marketing
operations, logistics, and so on
Greenplum on-premises
Scaling challenges
Performance issues
Need same level of security
Need for a hybrid environment
125 node DS2.8XL cluster
4,500 vCPUs, 30 TB RAM
2 PB compressed
10x faster analytic queries
50% reduction in time for new
BI application deployment
Significantly less operations
overhead
Data
Source
ET
AWS
Direct
Connect
Client
Forwarder
LoaderState
Management
SandboxAmazon Redshift
S3
NTT Docomo: Japan’s largest mobile service provider
Nasdaq: powering 100 marketplaces in 50 countries
Orders, quotes, trade executions,
market “tick” data from 7 exchanges
7 billion rows/day
Analyze market share, client activity,
surveillance, billing, and so on
Microsoft SQL Server on-premises
Expensive legacy DW
($1.16 M/yr.)
Limited capacity (1 yr. of data
online)
Needed lower TCO
Must satisfy multiple security
and regulatory requirements
Similar performance
23 node DS2.8XL cluster
828 vCPUs, 5 TB RAM
368 TB compressed
2.7 T rows, 900 B derived
8 tables with 100 B rows
7 man-month migration
¼ the cost, 2x storage, room to
grow
Faster performance, very
secure
Nasdaq: powering 100 marketplaces in 50 countries
Getting started
Provisioning
Enter cluster details
Select node configuration
Select security settings and provision
Point-and-click resize
Resize
• Resize while remaining online
• Provision a new cluster in the
background
• Copy data in parallel from node to
node
• Only charged for source cluster
Data modeling
SELECT COUNT(*) FROM LOGS WHERE DATE = ‘09-JUNE-2013’
MIN: 01-JUNE-2013
MAX: 20-JUNE-2013
MIN: 08-JUNE-2013
MAX: 30-JUNE-2013
MIN: 12-JUNE-2013
MAX: 20-JUNE-2013
MIN: 02-JUNE-2013
MAX: 25-JUNE-2013
Unsorted table
MIN: 01-JUNE-2013
MAX: 06-JUNE-2013
MIN: 07-JUNE-2013
MAX: 12-JUNE-2013
MIN: 13-JUNE-2013
MAX: 18-JUNE-2013
MIN: 19-JUNE-2013
MAX: 24-JUNE-2013
Sorted by date
Zone maps
• Single column
• Compound
• Interleaved
Single Column
• Table is sorted by 1 column
Date Region Country
2-JUN-2015 Oceania New Zealand
2-JUN-2015 Asia Singapore
2-JUN-2015 Africa Zaire
2-JUN-2015 Asia Hong Kong
3-JUN-2015 Europe Germany
3-JUN-2015 Asia Korea
[ SORTKEY ( date ) ]
• Best for:
• Queries that use 1st column (i.e. date) as primary filter
• Can speed up joins and group bys
• Quickest to VACUUM
Compound
• Table is sorted by 1st column , then 2nd column etc.
Date Region Country
2-JUN-2015 Africa Zaire
2-JUN-2015 Asia Korea
2-JUN-2015 Asia Singapore
2-JUN-2015 Europe Germany
3-JUN-2015 Asia Hong Kong
3-JUN-2015 Asia Korea
[ SORTKEY COMPOUND ( date, region, country) ]
• Best for:
• Queries that use 1st column as primary filter, then other cols
• Can speed up joins and group bys
• Slower to VACUUM
Interleaved
• Equal weight is given to each column.
Date Region Country
2-JUN-2015 Africa Zaire
3-JUN-2015 Asia Singapore
2-JUN-2015 Asia Korea
2-JUN-2015 Europe Germany
3-JUN-2015 Asia Hong Kong
2-JUN-2015 Asia Korea
[ SORTKEY INTERLEAVED ( date, region, country) ]
• Best for:
• Queries that use different columns in filter
• Queries get faster the more columns used in the filter
• Slowest to VACUUM
• KEY
• ALL
• EVEN
ID Gender Name
101 M John Smith
292 F Jane Jones
139 M Peter Black
446 M Pat Partridge
658 F Sarah Cyan
164 M Brian Snail
209 M James White
306 F Lisa Green
2
3
4
ID Gender Name
101 M John Smith
306 F Lisa Green
ID Gender Name
292 F Jane Jones
209 M James White
ID Gender Name
139 M Peter Black
164 M Brian Snail
ID Gender Name
446 M Pat Partridge
658 F Sarah Cyan
Round
Robin
DISTSTYLE EVEN
ID Gender Name
101 M John Smith
292 F Jane Jones
139 M Peter Black
446 M Pat Partridge
658 F Sarah Cyan
164 M Brian Snail
209 M James White
306 F Lisa Green
Hash
Function
ID Gender Name
101 M John Smith
306 F Lisa Green
ID Gender Name
292 F Jane Jones
209 M James White
ID Gender Name
139 M Peter Black
164 M Brian Snail
ID Gender Name
446 M Pat Partridge
658 F Sarah Cyan
DISTSTYLE KEY
ID Gender Name
101 M John Smith
292 F Jane Jones
139 M Peter Black
446 M Pat Partridge
658 F Sarah Cyan
164 M Brian Snail
209 M James White
306 F Lisa Green
Hash
Function
ID Gender Name
101 M John Smith
139 M Peter Black
446 M Pat Partridge
164 M Brian Snail
209 M James White
ID Gender Name
292 F Jane Jones
658 F Sarah Cyan
306 F Lisa Green
DISTSTYLE KEY
ID Gender Name
101 M John Smith
292 F Jane Jones
139 M Peter Black
446 M Pat Partridge
658 F Sarah Cyan
164 M Brian Snail
209 M James White
306 F Lisa Green
101 M John Smith
292 F Jane Jones
139 M Peter Black
446 M Pat Partridge
658 F Sarah Cyan
164 M Brian Snail
209 M Lisa Green
306 F James White
101 M John Smith
292 F Jane Jones
139 M Peter Black
446 M Pat Partridge
658 F Sarah Cyan
164 M Brian Snail
209 M Lisa Green
306 F James White
101 M John Smith
292 F Jane Jones
139 M Peter Black
446 M Pat Partridge
658 F Sarah Cyan
164 M Brian Snail
209 M Lisa Green
306 F James White
101 M John Smith
292 F Jane Jones
139 M Peter Black
446 M Pat Partridge
658 F Sarah Cyan
164 M Brian Snail
209 M Lisa Green
306 F James White
ALL
DISTSTYLE ALL
• KEY
• Large Fact tables
• Large dimension tables
• ALL
• Medium dimension tables (1K – 2M)
• EVEN
• Tables with no joins or group by
• Small dimension tables (<1000)
Loading data
AWS CloudCorporate Data center
Amazon S3
Amazon
Redshift
Flat files
Data loading options
AWS CloudCorporate Data center
ETL
Source DBs
Amazon
Redshift
Amazon
Redshift
Data loading options
AWS Cloud
Amazon
Redshift
Amazon
Kinesis
Data loading options
Use multiple input files to maximize
throughput
Use the COPY command
Each slice can load one file at a
time
A single input file means only one
slice is ingesting data
Instead of 100MB/s, you’re only
getting 6.25MB/s
Use multiple input files to maximize
throughput
Use the COPY command
You need at least as many input
files as you have slices
With 16 input files, all slices are
working so you maximize
throughput
Get 100MB/s per node; scale
linearly as you add nodes
Querying
JDBC/ODBC
Amazon Redshift
Amazon Redshift works with your existing BI
tools
ODBC/JDBC
BI Clients
Redshift
ODBC/JDBC
BI Server Redshift
Clients
Monitor query performance
View explain plans
Resources
Maor Kleider | maor@amazon.com |
Detail Pages
• http://aws.amazon.com/redshift
• https://aws.amazon.com/marketplace/redshift/
• Amazon Redshift Utilities - GitHub
Best Practices
• http://docs.aws.amazon.com/redshift/latest/dg/c_loading-data-best-practices.html
• http://docs.aws.amazon.com/redshift/latest/dg/c_designing-tables-best-practices.html
• http://docs.aws.amazon.com/redshift/latest/dg/c-optimizing-query-performance.html
Next breakout sessions
• Deep Dive on Amazon Aurora (3:50 pm – 4:40 pm)
Thank you!

More Related Content

What's hot

AWS re:Invent 2016: Attitude of Iteration (ARC209)
AWS re:Invent 2016: Attitude of Iteration (ARC209)AWS re:Invent 2016: Attitude of Iteration (ARC209)
AWS re:Invent 2016: Attitude of Iteration (ARC209)
Amazon Web Services
 
Getting Started with AWS Database Migration Service
Getting Started with AWS Database Migration ServiceGetting Started with AWS Database Migration Service
Getting Started with AWS Database Migration Service
Amazon Web Services
 
Cost Optimization at Scale
 Cost Optimization at Scale Cost Optimization at Scale
Cost Optimization at Scale
Amazon Web Services
 
Seeing More Clearly: How Essilor Overcame 3 Common Cloud Security Challenges ...
Seeing More Clearly: How Essilor Overcame 3 Common Cloud Security Challenges ...Seeing More Clearly: How Essilor Overcame 3 Common Cloud Security Challenges ...
Seeing More Clearly: How Essilor Overcame 3 Common Cloud Security Challenges ...
Amazon Web Services
 
Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery
Getting Started with the Hybrid Cloud: Enterprise Backup and RecoveryGetting Started with the Hybrid Cloud: Enterprise Backup and Recovery
Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery
Amazon Web Services
 
Getting Started on AWS
Getting Started on AWSGetting Started on AWS
Getting Started on AWS
Amazon Web Services
 
Cost Optimisation on AWS
Cost Optimisation on AWSCost Optimisation on AWS
Cost Optimisation on AWS
Amazon Web Services
 
Getting Started with Managed Database Services on AWS - AWS Summit Tel Aviv 2017
Getting Started with Managed Database Services on AWS - AWS Summit Tel Aviv 2017Getting Started with Managed Database Services on AWS - AWS Summit Tel Aviv 2017
Getting Started with Managed Database Services on AWS - AWS Summit Tel Aviv 2017
Amazon Web Services
 
AWS Summit Manila - Opening Keynote by Dr. Werner Vogels
AWS Summit Manila - Opening Keynote by Dr. Werner Vogels AWS Summit Manila - Opening Keynote by Dr. Werner Vogels
AWS Summit Manila - Opening Keynote by Dr. Werner Vogels
Amazon Web Services
 
Introduction to Amazon Web Services
Introduction to Amazon Web ServicesIntroduction to Amazon Web Services
Introduction to Amazon Web Services
Robert Greiner
 
Amazon EC2 and Amazon VPC Hands-on Workshop
Amazon EC2 and Amazon VPC Hands-on WorkshopAmazon EC2 and Amazon VPC Hands-on Workshop
Amazon EC2 and Amazon VPC Hands-on Workshop
Amazon Web Services
 
Databases on AWS Workshop.pdf
Databases on AWS Workshop.pdfDatabases on AWS Workshop.pdf
Databases on AWS Workshop.pdf
Amazon Web Services
 
Migrate from Oracle to Amazon Aurora using AWS Schema Conversion Tool & AWS D...
Migrate from Oracle to Amazon Aurora using AWS Schema Conversion Tool & AWS D...Migrate from Oracle to Amazon Aurora using AWS Schema Conversion Tool & AWS D...
Migrate from Oracle to Amazon Aurora using AWS Schema Conversion Tool & AWS D...
Amazon Web Services
 
Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery
 Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery
Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery
Amazon Web Services
 
Introduction to Cloud Computing with Amazon Web Services
Introduction to Cloud Computing with Amazon Web ServicesIntroduction to Cloud Computing with Amazon Web Services
Introduction to Cloud Computing with Amazon Web Services
Amazon Web Services
 
AWS basics
AWS basicsAWS basics
AWS basics
mbaric
 
Getting Started with Managed Database Services on AWS
Getting Started with Managed Database Services on AWSGetting Started with Managed Database Services on AWS
Getting Started with Managed Database Services on AWS
Amazon Web Services
 
(ARC305) How J&J Manages AWS At Scale For Enterprise Workloads
(ARC305) How J&J Manages AWS At Scale For Enterprise Workloads(ARC305) How J&J Manages AWS At Scale For Enterprise Workloads
(ARC305) How J&J Manages AWS At Scale For Enterprise Workloads
Amazon Web Services
 
Fraud Detection with Amazon Machine Learning on AWS
Fraud Detection with Amazon Machine Learning on AWSFraud Detection with Amazon Machine Learning on AWS
Fraud Detection with Amazon Machine Learning on AWS
Amazon Web Services
 
Expanding your Data Center with Hybrid Cloud Infrastructure
Expanding your Data Center with Hybrid Cloud InfrastructureExpanding your Data Center with Hybrid Cloud Infrastructure
Expanding your Data Center with Hybrid Cloud Infrastructure
Amazon Web Services
 

What's hot (20)

AWS re:Invent 2016: Attitude of Iteration (ARC209)
AWS re:Invent 2016: Attitude of Iteration (ARC209)AWS re:Invent 2016: Attitude of Iteration (ARC209)
AWS re:Invent 2016: Attitude of Iteration (ARC209)
 
Getting Started with AWS Database Migration Service
Getting Started with AWS Database Migration ServiceGetting Started with AWS Database Migration Service
Getting Started with AWS Database Migration Service
 
Cost Optimization at Scale
 Cost Optimization at Scale Cost Optimization at Scale
Cost Optimization at Scale
 
Seeing More Clearly: How Essilor Overcame 3 Common Cloud Security Challenges ...
Seeing More Clearly: How Essilor Overcame 3 Common Cloud Security Challenges ...Seeing More Clearly: How Essilor Overcame 3 Common Cloud Security Challenges ...
Seeing More Clearly: How Essilor Overcame 3 Common Cloud Security Challenges ...
 
Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery
Getting Started with the Hybrid Cloud: Enterprise Backup and RecoveryGetting Started with the Hybrid Cloud: Enterprise Backup and Recovery
Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery
 
Getting Started on AWS
Getting Started on AWSGetting Started on AWS
Getting Started on AWS
 
Cost Optimisation on AWS
Cost Optimisation on AWSCost Optimisation on AWS
Cost Optimisation on AWS
 
Getting Started with Managed Database Services on AWS - AWS Summit Tel Aviv 2017
Getting Started with Managed Database Services on AWS - AWS Summit Tel Aviv 2017Getting Started with Managed Database Services on AWS - AWS Summit Tel Aviv 2017
Getting Started with Managed Database Services on AWS - AWS Summit Tel Aviv 2017
 
AWS Summit Manila - Opening Keynote by Dr. Werner Vogels
AWS Summit Manila - Opening Keynote by Dr. Werner Vogels AWS Summit Manila - Opening Keynote by Dr. Werner Vogels
AWS Summit Manila - Opening Keynote by Dr. Werner Vogels
 
Introduction to Amazon Web Services
Introduction to Amazon Web ServicesIntroduction to Amazon Web Services
Introduction to Amazon Web Services
 
Amazon EC2 and Amazon VPC Hands-on Workshop
Amazon EC2 and Amazon VPC Hands-on WorkshopAmazon EC2 and Amazon VPC Hands-on Workshop
Amazon EC2 and Amazon VPC Hands-on Workshop
 
Databases on AWS Workshop.pdf
Databases on AWS Workshop.pdfDatabases on AWS Workshop.pdf
Databases on AWS Workshop.pdf
 
Migrate from Oracle to Amazon Aurora using AWS Schema Conversion Tool & AWS D...
Migrate from Oracle to Amazon Aurora using AWS Schema Conversion Tool & AWS D...Migrate from Oracle to Amazon Aurora using AWS Schema Conversion Tool & AWS D...
Migrate from Oracle to Amazon Aurora using AWS Schema Conversion Tool & AWS D...
 
Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery
 Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery
Getting Started with the Hybrid Cloud: Enterprise Backup and Recovery
 
Introduction to Cloud Computing with Amazon Web Services
Introduction to Cloud Computing with Amazon Web ServicesIntroduction to Cloud Computing with Amazon Web Services
Introduction to Cloud Computing with Amazon Web Services
 
AWS basics
AWS basicsAWS basics
AWS basics
 
Getting Started with Managed Database Services on AWS
Getting Started with Managed Database Services on AWSGetting Started with Managed Database Services on AWS
Getting Started with Managed Database Services on AWS
 
(ARC305) How J&J Manages AWS At Scale For Enterprise Workloads
(ARC305) How J&J Manages AWS At Scale For Enterprise Workloads(ARC305) How J&J Manages AWS At Scale For Enterprise Workloads
(ARC305) How J&J Manages AWS At Scale For Enterprise Workloads
 
Fraud Detection with Amazon Machine Learning on AWS
Fraud Detection with Amazon Machine Learning on AWSFraud Detection with Amazon Machine Learning on AWS
Fraud Detection with Amazon Machine Learning on AWS
 
Expanding your Data Center with Hybrid Cloud Infrastructure
Expanding your Data Center with Hybrid Cloud InfrastructureExpanding your Data Center with Hybrid Cloud Infrastructure
Expanding your Data Center with Hybrid Cloud Infrastructure
 

Viewers also liked

Partner Solutions: Rackspace - Rethinking Your Migration Strategy to Maximize...
Partner Solutions: Rackspace - Rethinking Your Migration Strategy to Maximize...Partner Solutions: Rackspace - Rethinking Your Migration Strategy to Maximize...
Partner Solutions: Rackspace - Rethinking Your Migration Strategy to Maximize...
Amazon Web Services
 
在雲端開發架構支援大規模流量的行動/網頁應用程式
在雲端開發架構支援大規模流量的行動/網頁應用程式在雲端開發架構支援大規模流量的行動/網頁應用程式
在雲端開發架構支援大規模流量的行動/網頁應用程式
Amazon Web Services
 
Customer Sharing: SET TV - From Broadcast to Narrowcast – New Media Era on Cloud
Customer Sharing: SET TV - From Broadcast to Narrowcast – New Media Era on CloudCustomer Sharing: SET TV - From Broadcast to Narrowcast – New Media Era on Cloud
Customer Sharing: SET TV - From Broadcast to Narrowcast – New Media Era on Cloud
Amazon Web Services
 
AWS re:Invent 2016: [JK REPEAT] The Enterprise Fast Lane - What Your Competit...
AWS re:Invent 2016: [JK REPEAT] The Enterprise Fast Lane - What Your Competit...AWS re:Invent 2016: [JK REPEAT] The Enterprise Fast Lane - What Your Competit...
AWS re:Invent 2016: [JK REPEAT] The Enterprise Fast Lane - What Your Competit...
Amazon Web Services
 
Aws storage for media overview
Aws storage for media overview Aws storage for media overview
Aws storage for media overview
Amazon Web Services
 
Customer Sharing: LnData
Customer Sharing: LnDataCustomer Sharing: LnData
Customer Sharing: LnData
Amazon Web Services
 

Viewers also liked (6)

Partner Solutions: Rackspace - Rethinking Your Migration Strategy to Maximize...
Partner Solutions: Rackspace - Rethinking Your Migration Strategy to Maximize...Partner Solutions: Rackspace - Rethinking Your Migration Strategy to Maximize...
Partner Solutions: Rackspace - Rethinking Your Migration Strategy to Maximize...
 
在雲端開發架構支援大規模流量的行動/網頁應用程式
在雲端開發架構支援大規模流量的行動/網頁應用程式在雲端開發架構支援大規模流量的行動/網頁應用程式
在雲端開發架構支援大規模流量的行動/網頁應用程式
 
Customer Sharing: SET TV - From Broadcast to Narrowcast – New Media Era on Cloud
Customer Sharing: SET TV - From Broadcast to Narrowcast – New Media Era on CloudCustomer Sharing: SET TV - From Broadcast to Narrowcast – New Media Era on Cloud
Customer Sharing: SET TV - From Broadcast to Narrowcast – New Media Era on Cloud
 
AWS re:Invent 2016: [JK REPEAT] The Enterprise Fast Lane - What Your Competit...
AWS re:Invent 2016: [JK REPEAT] The Enterprise Fast Lane - What Your Competit...AWS re:Invent 2016: [JK REPEAT] The Enterprise Fast Lane - What Your Competit...
AWS re:Invent 2016: [JK REPEAT] The Enterprise Fast Lane - What Your Competit...
 
Aws storage for media overview
Aws storage for media overview Aws storage for media overview
Aws storage for media overview
 
Customer Sharing: LnData
Customer Sharing: LnDataCustomer Sharing: LnData
Customer Sharing: LnData
 

Similar to Getting Started with Amazon Redshift

Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
Amazon Web Services
 
Data Warehousing in the Era of Big Data: Intro to Amazon Redshift
Data Warehousing in the Era of Big Data: Intro to Amazon RedshiftData Warehousing in the Era of Big Data: Intro to Amazon Redshift
Data Warehousing in the Era of Big Data: Intro to Amazon Redshift
Amazon Web Services
 
Amazon Redshift
Amazon Redshift Amazon Redshift
Amazon Redshift
Amazon Web Services
 
Introdução ao Data Warehouse Amazon Redshift
Introdução ao Data Warehouse Amazon RedshiftIntrodução ao Data Warehouse Amazon Redshift
Introdução ao Data Warehouse Amazon Redshift
Amazon Web Services LATAM
 
Introdução ao data warehouse Amazon Redshift
Introdução ao data warehouse Amazon RedshiftIntrodução ao data warehouse Amazon Redshift
Introdução ao data warehouse Amazon Redshift
Amazon Web Services LATAM
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
Amazon Web Services
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
Amazon Web Services
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
Amazon Web Services
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
Amazon Web Services
 
Leveraging Amazon Redshift for Your Data Warehouse
Leveraging Amazon Redshift for Your Data WarehouseLeveraging Amazon Redshift for Your Data Warehouse
Leveraging Amazon Redshift for Your Data Warehouse
Amazon Web Services
 
(DAT201) Introduction to Amazon Redshift
(DAT201) Introduction to Amazon Redshift(DAT201) Introduction to Amazon Redshift
(DAT201) Introduction to Amazon Redshift
Amazon Web Services
 
Leveraging Amazon Redshift for your Data Warehouse
Leveraging Amazon Redshift for your Data WarehouseLeveraging Amazon Redshift for your Data Warehouse
Leveraging Amazon Redshift for your Data Warehouse
Amazon Web Services
 
Benefícios e melhores práticas no uso do Amazon Redshift
Benefícios e melhores práticas no uso do Amazon RedshiftBenefícios e melhores práticas no uso do Amazon Redshift
Benefícios e melhores práticas no uso do Amazon Redshift
Amazon Web Services LATAM
 
Uses and Best Practices for Amazon Redshift
Uses and Best Practices for Amazon Redshift Uses and Best Practices for Amazon Redshift
Uses and Best Practices for Amazon Redshift
Amazon Web Services
 
Getting started with Amazon Redshift
Getting started with Amazon RedshiftGetting started with Amazon Redshift
Getting started with Amazon Redshift
Amazon Web Services
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
Amazon Web Services
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
Amazon Web Services
 
Building Your Data Warehouse with Amazon Redshift
Building Your Data Warehouse with Amazon RedshiftBuilding Your Data Warehouse with Amazon Redshift
Building Your Data Warehouse with Amazon Redshift
Amazon Web Services
 
AWS Webcast - Redshift Overview and New Features
AWS Webcast - Redshift Overview and New Features AWS Webcast - Redshift Overview and New Features
AWS Webcast - Redshift Overview and New Features
Amazon Web Services
 
Redshift overview
Redshift overviewRedshift overview
Redshift overview
Amazon Web Services LATAM
 

Similar to Getting Started with Amazon Redshift (20)

Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
 
Data Warehousing in the Era of Big Data: Intro to Amazon Redshift
Data Warehousing in the Era of Big Data: Intro to Amazon RedshiftData Warehousing in the Era of Big Data: Intro to Amazon Redshift
Data Warehousing in the Era of Big Data: Intro to Amazon Redshift
 
Amazon Redshift
Amazon Redshift Amazon Redshift
Amazon Redshift
 
Introdução ao Data Warehouse Amazon Redshift
Introdução ao Data Warehouse Amazon RedshiftIntrodução ao Data Warehouse Amazon Redshift
Introdução ao Data Warehouse Amazon Redshift
 
Introdução ao data warehouse Amazon Redshift
Introdução ao data warehouse Amazon RedshiftIntrodução ao data warehouse Amazon Redshift
Introdução ao data warehouse Amazon Redshift
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
 
Leveraging Amazon Redshift for Your Data Warehouse
Leveraging Amazon Redshift for Your Data WarehouseLeveraging Amazon Redshift for Your Data Warehouse
Leveraging Amazon Redshift for Your Data Warehouse
 
(DAT201) Introduction to Amazon Redshift
(DAT201) Introduction to Amazon Redshift(DAT201) Introduction to Amazon Redshift
(DAT201) Introduction to Amazon Redshift
 
Leveraging Amazon Redshift for your Data Warehouse
Leveraging Amazon Redshift for your Data WarehouseLeveraging Amazon Redshift for your Data Warehouse
Leveraging Amazon Redshift for your Data Warehouse
 
Benefícios e melhores práticas no uso do Amazon Redshift
Benefícios e melhores práticas no uso do Amazon RedshiftBenefícios e melhores práticas no uso do Amazon Redshift
Benefícios e melhores práticas no uso do Amazon Redshift
 
Uses and Best Practices for Amazon Redshift
Uses and Best Practices for Amazon Redshift Uses and Best Practices for Amazon Redshift
Uses and Best Practices for Amazon Redshift
 
Getting started with Amazon Redshift
Getting started with Amazon RedshiftGetting started with Amazon Redshift
Getting started with Amazon Redshift
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
 
Getting Started with Amazon Redshift
Getting Started with Amazon RedshiftGetting Started with Amazon Redshift
Getting Started with Amazon Redshift
 
Building Your Data Warehouse with Amazon Redshift
Building Your Data Warehouse with Amazon RedshiftBuilding Your Data Warehouse with Amazon Redshift
Building Your Data Warehouse with Amazon Redshift
 
AWS Webcast - Redshift Overview and New Features
AWS Webcast - Redshift Overview and New Features AWS Webcast - Redshift Overview and New Features
AWS Webcast - Redshift Overview and New Features
 
Redshift overview
Redshift overviewRedshift overview
Redshift overview
 

More from Amazon Web Services

Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Amazon Web Services
 
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Amazon Web Services
 
Esegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS FargateEsegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS Fargate
Amazon Web Services
 
Costruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWSCostruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWS
Amazon Web Services
 
Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot
Amazon Web Services
 
Open banking as a service
Open banking as a serviceOpen banking as a service
Open banking as a service
Amazon Web Services
 
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Amazon Web Services
 
OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...
Amazon Web Services
 
Microsoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows WorkloadsMicrosoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows Workloads
Amazon Web Services
 
Computer Vision con AWS
Computer Vision con AWSComputer Vision con AWS
Computer Vision con AWS
Amazon Web Services
 
Database Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatareDatabase Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatare
Amazon Web Services
 
Crea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJSCrea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJS
Amazon Web Services
 
API moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e webAPI moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e web
Amazon Web Services
 
Database Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatareDatabase Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatare
Amazon Web Services
 
Tools for building your MVP on AWS
Tools for building your MVP on AWSTools for building your MVP on AWS
Tools for building your MVP on AWSAmazon Web Services
 
How to Build a Winning Pitch Deck
How to Build a Winning Pitch DeckHow to Build a Winning Pitch Deck
How to Build a Winning Pitch DeckAmazon Web Services
 
Building a web application without servers
Building a web application without serversBuilding a web application without servers
Building a web application without serversAmazon Web Services
 
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...Amazon Web Services
 
Introduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container ServiceIntroduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container Service
Amazon Web Services
 

More from Amazon Web Services (20)

Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
 
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
 
Esegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS FargateEsegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS Fargate
 
Costruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWSCostruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWS
 
Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot
 
Open banking as a service
Open banking as a serviceOpen banking as a service
Open banking as a service
 
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
 
OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...
 
Microsoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows WorkloadsMicrosoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows Workloads
 
Computer Vision con AWS
Computer Vision con AWSComputer Vision con AWS
Computer Vision con AWS
 
Database Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatareDatabase Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatare
 
Crea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJSCrea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJS
 
API moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e webAPI moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e web
 
Database Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatareDatabase Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatare
 
Tools for building your MVP on AWS
Tools for building your MVP on AWSTools for building your MVP on AWS
Tools for building your MVP on AWS
 
How to Build a Winning Pitch Deck
How to Build a Winning Pitch DeckHow to Build a Winning Pitch Deck
How to Build a Winning Pitch Deck
 
Building a web application without servers
Building a web application without serversBuilding a web application without servers
Building a web application without servers
 
Fundraising Essentials
Fundraising EssentialsFundraising Essentials
Fundraising Essentials
 
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
 
Introduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container ServiceIntroduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container Service
 

Recently uploaded

AKS UNIVERSITY Satna Final Year Project By OM Hardaha.pdf
AKS UNIVERSITY Satna Final Year Project By OM Hardaha.pdfAKS UNIVERSITY Satna Final Year Project By OM Hardaha.pdf
AKS UNIVERSITY Satna Final Year Project By OM Hardaha.pdf
SamSarthak3
 
Architectural Portfolio Sean Lockwood
Architectural Portfolio Sean LockwoodArchitectural Portfolio Sean Lockwood
Architectural Portfolio Sean Lockwood
seandesed
 
H.Seo, ICLR 2024, MLILAB, KAIST AI.pdf
H.Seo,  ICLR 2024, MLILAB,  KAIST AI.pdfH.Seo,  ICLR 2024, MLILAB,  KAIST AI.pdf
H.Seo, ICLR 2024, MLILAB, KAIST AI.pdf
MLILAB
 
Industrial Training at Shahjalal Fertilizer Company Limited (SFCL)
Industrial Training at Shahjalal Fertilizer Company Limited (SFCL)Industrial Training at Shahjalal Fertilizer Company Limited (SFCL)
Industrial Training at Shahjalal Fertilizer Company Limited (SFCL)
MdTanvirMahtab2
 
Courier management system project report.pdf
Courier management system project report.pdfCourier management system project report.pdf
Courier management system project report.pdf
Kamal Acharya
 
The role of big data in decision making.
The role of big data in decision making.The role of big data in decision making.
The role of big data in decision making.
ankuprajapati0525
 
WATER CRISIS and its solutions-pptx 1234
WATER CRISIS and its solutions-pptx 1234WATER CRISIS and its solutions-pptx 1234
WATER CRISIS and its solutions-pptx 1234
AafreenAbuthahir2
 
Top 10 Oil and Gas Projects in Saudi Arabia 2024.pdf
Top 10 Oil and Gas Projects in Saudi Arabia 2024.pdfTop 10 Oil and Gas Projects in Saudi Arabia 2024.pdf
Top 10 Oil and Gas Projects in Saudi Arabia 2024.pdf
Teleport Manpower Consultant
 
Quality defects in TMT Bars, Possible causes and Potential Solutions.
Quality defects in TMT Bars, Possible causes and Potential Solutions.Quality defects in TMT Bars, Possible causes and Potential Solutions.
Quality defects in TMT Bars, Possible causes and Potential Solutions.
PrashantGoswami42
 
The Benefits and Techniques of Trenchless Pipe Repair.pdf
The Benefits and Techniques of Trenchless Pipe Repair.pdfThe Benefits and Techniques of Trenchless Pipe Repair.pdf
The Benefits and Techniques of Trenchless Pipe Repair.pdf
Pipe Restoration Solutions
 
LIGA(E)11111111111111111111111111111111111111111.ppt
LIGA(E)11111111111111111111111111111111111111111.pptLIGA(E)11111111111111111111111111111111111111111.ppt
LIGA(E)11111111111111111111111111111111111111111.ppt
ssuser9bd3ba
 
CME397 Surface Engineering- Professional Elective
CME397 Surface Engineering- Professional ElectiveCME397 Surface Engineering- Professional Elective
CME397 Surface Engineering- Professional Elective
karthi keyan
 
在线办理(ANU毕业证书)澳洲国立大学毕业证录取通知书一模一样
在线办理(ANU毕业证书)澳洲国立大学毕业证录取通知书一模一样在线办理(ANU毕业证书)澳洲国立大学毕业证录取通知书一模一样
在线办理(ANU毕业证书)澳洲国立大学毕业证录取通知书一模一样
obonagu
 
MCQ Soil mechanics questions (Soil shear strength).pdf
MCQ Soil mechanics questions (Soil shear strength).pdfMCQ Soil mechanics questions (Soil shear strength).pdf
MCQ Soil mechanics questions (Soil shear strength).pdf
Osamah Alsalih
 
ASME IX(9) 2007 Full Version .pdf
ASME IX(9)  2007 Full Version       .pdfASME IX(9)  2007 Full Version       .pdf
ASME IX(9) 2007 Full Version .pdf
AhmedHussein950959
 
addressing modes in computer architecture
addressing modes  in computer architectureaddressing modes  in computer architecture
addressing modes in computer architecture
ShahidSultan24
 
road safety engineering r s e unit 3.pdf
road safety engineering  r s e unit 3.pdfroad safety engineering  r s e unit 3.pdf
road safety engineering r s e unit 3.pdf
VENKATESHvenky89705
 
Immunizing Image Classifiers Against Localized Adversary Attacks
Immunizing Image Classifiers Against Localized Adversary AttacksImmunizing Image Classifiers Against Localized Adversary Attacks
Immunizing Image Classifiers Against Localized Adversary Attacks
gerogepatton
 
block diagram and signal flow graph representation
block diagram and signal flow graph representationblock diagram and signal flow graph representation
block diagram and signal flow graph representation
Divya Somashekar
 
Democratizing Fuzzing at Scale by Abhishek Arya
Democratizing Fuzzing at Scale by Abhishek AryaDemocratizing Fuzzing at Scale by Abhishek Arya
Democratizing Fuzzing at Scale by Abhishek Arya
abh.arya
 

Recently uploaded (20)

AKS UNIVERSITY Satna Final Year Project By OM Hardaha.pdf
AKS UNIVERSITY Satna Final Year Project By OM Hardaha.pdfAKS UNIVERSITY Satna Final Year Project By OM Hardaha.pdf
AKS UNIVERSITY Satna Final Year Project By OM Hardaha.pdf
 
Architectural Portfolio Sean Lockwood
Architectural Portfolio Sean LockwoodArchitectural Portfolio Sean Lockwood
Architectural Portfolio Sean Lockwood
 
H.Seo, ICLR 2024, MLILAB, KAIST AI.pdf
H.Seo,  ICLR 2024, MLILAB,  KAIST AI.pdfH.Seo,  ICLR 2024, MLILAB,  KAIST AI.pdf
H.Seo, ICLR 2024, MLILAB, KAIST AI.pdf
 
Industrial Training at Shahjalal Fertilizer Company Limited (SFCL)
Industrial Training at Shahjalal Fertilizer Company Limited (SFCL)Industrial Training at Shahjalal Fertilizer Company Limited (SFCL)
Industrial Training at Shahjalal Fertilizer Company Limited (SFCL)
 
Courier management system project report.pdf
Courier management system project report.pdfCourier management system project report.pdf
Courier management system project report.pdf
 
The role of big data in decision making.
The role of big data in decision making.The role of big data in decision making.
The role of big data in decision making.
 
WATER CRISIS and its solutions-pptx 1234
WATER CRISIS and its solutions-pptx 1234WATER CRISIS and its solutions-pptx 1234
WATER CRISIS and its solutions-pptx 1234
 
Top 10 Oil and Gas Projects in Saudi Arabia 2024.pdf
Top 10 Oil and Gas Projects in Saudi Arabia 2024.pdfTop 10 Oil and Gas Projects in Saudi Arabia 2024.pdf
Top 10 Oil and Gas Projects in Saudi Arabia 2024.pdf
 
Quality defects in TMT Bars, Possible causes and Potential Solutions.
Quality defects in TMT Bars, Possible causes and Potential Solutions.Quality defects in TMT Bars, Possible causes and Potential Solutions.
Quality defects in TMT Bars, Possible causes and Potential Solutions.
 
The Benefits and Techniques of Trenchless Pipe Repair.pdf
The Benefits and Techniques of Trenchless Pipe Repair.pdfThe Benefits and Techniques of Trenchless Pipe Repair.pdf
The Benefits and Techniques of Trenchless Pipe Repair.pdf
 
LIGA(E)11111111111111111111111111111111111111111.ppt
LIGA(E)11111111111111111111111111111111111111111.pptLIGA(E)11111111111111111111111111111111111111111.ppt
LIGA(E)11111111111111111111111111111111111111111.ppt
 
CME397 Surface Engineering- Professional Elective
CME397 Surface Engineering- Professional ElectiveCME397 Surface Engineering- Professional Elective
CME397 Surface Engineering- Professional Elective
 
在线办理(ANU毕业证书)澳洲国立大学毕业证录取通知书一模一样
在线办理(ANU毕业证书)澳洲国立大学毕业证录取通知书一模一样在线办理(ANU毕业证书)澳洲国立大学毕业证录取通知书一模一样
在线办理(ANU毕业证书)澳洲国立大学毕业证录取通知书一模一样
 
MCQ Soil mechanics questions (Soil shear strength).pdf
MCQ Soil mechanics questions (Soil shear strength).pdfMCQ Soil mechanics questions (Soil shear strength).pdf
MCQ Soil mechanics questions (Soil shear strength).pdf
 
ASME IX(9) 2007 Full Version .pdf
ASME IX(9)  2007 Full Version       .pdfASME IX(9)  2007 Full Version       .pdf
ASME IX(9) 2007 Full Version .pdf
 
addressing modes in computer architecture
addressing modes  in computer architectureaddressing modes  in computer architecture
addressing modes in computer architecture
 
road safety engineering r s e unit 3.pdf
road safety engineering  r s e unit 3.pdfroad safety engineering  r s e unit 3.pdf
road safety engineering r s e unit 3.pdf
 
Immunizing Image Classifiers Against Localized Adversary Attacks
Immunizing Image Classifiers Against Localized Adversary AttacksImmunizing Image Classifiers Against Localized Adversary Attacks
Immunizing Image Classifiers Against Localized Adversary Attacks
 
block diagram and signal flow graph representation
block diagram and signal flow graph representationblock diagram and signal flow graph representation
block diagram and signal flow graph representation
 
Democratizing Fuzzing at Scale by Abhishek Arya
Democratizing Fuzzing at Scale by Abhishek AryaDemocratizing Fuzzing at Scale by Abhishek Arya
Democratizing Fuzzing at Scale by Abhishek Arya
 

Getting Started with Amazon Redshift

  • 1. © 2016, Amazon Web Services, Inc. or its Affiliates. All rights reserved.© 2016, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Maor Kleider, Senior Product Manager, AWS June 30, 2016 Getting Started with Amazon Redshift
  • 2. Agenda • Introduction • Benefits • Use cases • Getting started • Q&A
  • 3. AnalyzeStore Amazon Glacier Amazon S3 Amazon DynamoDB Amazon RDS, Amazon Aurora AWS big data portfolio AWS Data Pipeline Amazon CloudSearch Amazon EMR Amazon EC2 Amazon Redshift Amazon Machine Learning Amazon Elasticsearch Service AWS Database Migration Service Amazon QuickSight Amazon Kinesis Firehose AWS Import/Export AWS Direct Connect Collect Amazon Kinesis Streams
  • 4. Relational data warehouse Massively parallel; petabyte scale Fully managed HDD and SSD platforms $1,000/TB/year; starts at $0.25/hour Amazon Redshift a lot faster a lot simpler a lot cheaper
  • 5. The Amazon Redshift view of data warehousing 10x cheaper Easy to provision Higher DBA productivity 10x faster No programming Easily leverage BI tools, Hadoop, machine learning, streaming Analysis inline with process flows Pay as you go, grow as you need Managed availability and disaster recovery Enterprise Big data SaaS
  • 6. The Forrester Wave™ is copyrighted by Forrester Research, Inc. Forrester and Forrester Wave™ are trademarks of Forrester Research, Inc. The Forrester Wave™ is a graphical representation of Forrester's call on a market and is plotted using a detailed spreadsheet with exposed scores, weightings, and comments. Forrester does not endorse any vendor, product, or service depicted in the Forrester Wave. Information is based on best available resources. Opinions reflect judgment at the time and are subject to change. Forrester Wave™ Enterprise Data Warehouse Q4 ’15
  • 8. Amazon Redshift architecture Leader node Simple SQL endpoint Stores metadata Optimizes query plan Coordinates query execution Compute nodes Local columnar storage Parallel/distributed execution of all queries, loads, backups, restores, resizes Start at just $0.25/hour, grow to 2 PB (compressed) DC1: SSD; scale from 160 GB to 326 TB DS2: HDD; scale from 2 TB to 2 PB Ingestion/Backup Backup Restore JDBC/ODBC 10 GigE (HPC)
  • 9. Benefit #1: Amazon Redshift is fast Dramatically less I/O Column storage Data compression Zone maps Direct-attached storage Large data block sizes analyze compression listing; Table | Column | Encoding ---------+----------------+---------- listing | listid | delta listing | sellerid | delta32k listing | eventid | delta32k listing | dateid | bytedict listing | numtickets | bytedict listing | priceperticket | delta32k listing | totalprice | mostly32 listing | listtime | raw 10 | 13 | 14 | 26 |… … | 100 | 245 | 324 375 | 393 | 417… … 512 | 549 | 623 637 | 712 | 809 … … | 834 | 921 | 959 10 324 375 623 637 959
  • 10. Benefit #1: Amazon Redshift is fast Parallel and distributed Query Load Export Backup Restore Resize
  • 11. Benefit #1: Amazon Redshift is fast Hardware optimized for I/O intensive workloads, 4 GB/sec/node Enhanced networking, over 1 million packets/sec/node Choice of storage type, instance size Regular cadence of auto-patched improvements
  • 12. Benefit #1: Amazon Redshift is fast New Dense Storage (HDD) instance type (Jun 15) Improved memory 2x, compute 2x, disk throughput 1.5x Cost: Same as our prior generation! Performance improvement: 50% Enhanced I/O and commit improvements (Jan 16) Reduce amount of time to commit data Throughput performance improvement: 35% Improved memory allocation for query processing (May 16) Increased overall throughput by up to 60%
  • 13. Benefit #2: Amazon Redshift is inexpensive DS2 (HDD) Price per hour for DS2.XL single node Effective annual price per TB compressed On-demand $ 0.850 $ 3,725 1 year reservation $ 0.500 $ 2,190 3 year reservation $ 0.228 $ 999 DC1 (SSD) Price per hour for DC1.L single node Effective annual price per TB compressed On-demand $ 0.250 $ 13,690 1 year reservation $ 0.161 $ 8,795 3 year reservation $ 0.100 $ 5,500 Pricing is simple Number of nodes x price/hour No charge for leader node No upfront costs Pay as you go
  • 14. Benefit #3: Amazon Redshift is fully managed Continuous/incremental backups Multiple copies within cluster Continuous and incremental backups to Amazon S3 Continuous and incremental backups across regions Streaming restore Amazon S3 Amazon S3 Region 1 Region 2
  • 15. Benefit #3: Amazon Redshift is fully managed Amazon S3 Amazon S3 Region 1 Region 2 Fault tolerance Disk failures Node failures Network failures Availability Zone/region level disasters
  • 16. Benefit #4: Security is built-in • Load encrypted from S3 • SSL to secure data in transit • ECDHE perfect forward security • Amazon VPC for network isolation • Encryption to secure data at rest • All blocks on disks and in S3 encrypted • Block key, cluster key, master key (AES-256) • On-premises HSM & AWS CloudHSM support • Audit logging and AWS CloudTrail integration • SOC 1/2/3, PCI-DSS, FedRAMP, BAA 10 GigE (HPC) Ingestion Backup Restore Customer VPC Internal VPC JDBC/ODBC
  • 17. Benefit #5: We innovate quickly Well over 100 new features added since launch Release every two weeks Automatic patching
  • 18. Benefit #6: Redshift is powerful • Approximate functions • User defined functions • Machine learning • Data science
  • 19. Benefit #7: Amazon Redshift has a large ecosystem Data integration Systems integratorsBusiness intelligence
  • 20. Benefit #8: Service oriented architecture DynamoDB EMR S3 EC2/SSH RDS/Aurora Amazon Redshift Amazon Kinesis Amazon ML Data Pipeline CloudSearch Amazon Mobile Analytics
  • 22. NTT Docomo: Japan’s largest mobile service provider 68 million customers Tens of TBs per day of data across a mobile network 6 PB of total data (uncompressed) Data science for marketing operations, logistics, and so on Greenplum on-premises Scaling challenges Performance issues Need same level of security Need for a hybrid environment
  • 23. 125 node DS2.8XL cluster 4,500 vCPUs, 30 TB RAM 2 PB compressed 10x faster analytic queries 50% reduction in time for new BI application deployment Significantly less operations overhead Data Source ET AWS Direct Connect Client Forwarder LoaderState Management SandboxAmazon Redshift S3 NTT Docomo: Japan’s largest mobile service provider
  • 24. Nasdaq: powering 100 marketplaces in 50 countries Orders, quotes, trade executions, market “tick” data from 7 exchanges 7 billion rows/day Analyze market share, client activity, surveillance, billing, and so on Microsoft SQL Server on-premises Expensive legacy DW ($1.16 M/yr.) Limited capacity (1 yr. of data online) Needed lower TCO Must satisfy multiple security and regulatory requirements Similar performance
  • 25. 23 node DS2.8XL cluster 828 vCPUs, 5 TB RAM 368 TB compressed 2.7 T rows, 900 B derived 8 tables with 100 B rows 7 man-month migration ¼ the cost, 2x storage, room to grow Faster performance, very secure Nasdaq: powering 100 marketplaces in 50 countries
  • 30. Select security settings and provision
  • 32. Resize • Resize while remaining online • Provision a new cluster in the background • Copy data in parallel from node to node • Only charged for source cluster
  • 34. SELECT COUNT(*) FROM LOGS WHERE DATE = ‘09-JUNE-2013’ MIN: 01-JUNE-2013 MAX: 20-JUNE-2013 MIN: 08-JUNE-2013 MAX: 30-JUNE-2013 MIN: 12-JUNE-2013 MAX: 20-JUNE-2013 MIN: 02-JUNE-2013 MAX: 25-JUNE-2013 Unsorted table MIN: 01-JUNE-2013 MAX: 06-JUNE-2013 MIN: 07-JUNE-2013 MAX: 12-JUNE-2013 MIN: 13-JUNE-2013 MAX: 18-JUNE-2013 MIN: 19-JUNE-2013 MAX: 24-JUNE-2013 Sorted by date Zone maps
  • 35. • Single column • Compound • Interleaved
  • 36. Single Column • Table is sorted by 1 column Date Region Country 2-JUN-2015 Oceania New Zealand 2-JUN-2015 Asia Singapore 2-JUN-2015 Africa Zaire 2-JUN-2015 Asia Hong Kong 3-JUN-2015 Europe Germany 3-JUN-2015 Asia Korea [ SORTKEY ( date ) ] • Best for: • Queries that use 1st column (i.e. date) as primary filter • Can speed up joins and group bys • Quickest to VACUUM
  • 37. Compound • Table is sorted by 1st column , then 2nd column etc. Date Region Country 2-JUN-2015 Africa Zaire 2-JUN-2015 Asia Korea 2-JUN-2015 Asia Singapore 2-JUN-2015 Europe Germany 3-JUN-2015 Asia Hong Kong 3-JUN-2015 Asia Korea [ SORTKEY COMPOUND ( date, region, country) ] • Best for: • Queries that use 1st column as primary filter, then other cols • Can speed up joins and group bys • Slower to VACUUM
  • 38. Interleaved • Equal weight is given to each column. Date Region Country 2-JUN-2015 Africa Zaire 3-JUN-2015 Asia Singapore 2-JUN-2015 Asia Korea 2-JUN-2015 Europe Germany 3-JUN-2015 Asia Hong Kong 2-JUN-2015 Asia Korea [ SORTKEY INTERLEAVED ( date, region, country) ] • Best for: • Queries that use different columns in filter • Queries get faster the more columns used in the filter • Slowest to VACUUM
  • 40. ID Gender Name 101 M John Smith 292 F Jane Jones 139 M Peter Black 446 M Pat Partridge 658 F Sarah Cyan 164 M Brian Snail 209 M James White 306 F Lisa Green 2 3 4 ID Gender Name 101 M John Smith 306 F Lisa Green ID Gender Name 292 F Jane Jones 209 M James White ID Gender Name 139 M Peter Black 164 M Brian Snail ID Gender Name 446 M Pat Partridge 658 F Sarah Cyan Round Robin DISTSTYLE EVEN
  • 41. ID Gender Name 101 M John Smith 292 F Jane Jones 139 M Peter Black 446 M Pat Partridge 658 F Sarah Cyan 164 M Brian Snail 209 M James White 306 F Lisa Green Hash Function ID Gender Name 101 M John Smith 306 F Lisa Green ID Gender Name 292 F Jane Jones 209 M James White ID Gender Name 139 M Peter Black 164 M Brian Snail ID Gender Name 446 M Pat Partridge 658 F Sarah Cyan DISTSTYLE KEY
  • 42. ID Gender Name 101 M John Smith 292 F Jane Jones 139 M Peter Black 446 M Pat Partridge 658 F Sarah Cyan 164 M Brian Snail 209 M James White 306 F Lisa Green Hash Function ID Gender Name 101 M John Smith 139 M Peter Black 446 M Pat Partridge 164 M Brian Snail 209 M James White ID Gender Name 292 F Jane Jones 658 F Sarah Cyan 306 F Lisa Green DISTSTYLE KEY
  • 43. ID Gender Name 101 M John Smith 292 F Jane Jones 139 M Peter Black 446 M Pat Partridge 658 F Sarah Cyan 164 M Brian Snail 209 M James White 306 F Lisa Green 101 M John Smith 292 F Jane Jones 139 M Peter Black 446 M Pat Partridge 658 F Sarah Cyan 164 M Brian Snail 209 M Lisa Green 306 F James White 101 M John Smith 292 F Jane Jones 139 M Peter Black 446 M Pat Partridge 658 F Sarah Cyan 164 M Brian Snail 209 M Lisa Green 306 F James White 101 M John Smith 292 F Jane Jones 139 M Peter Black 446 M Pat Partridge 658 F Sarah Cyan 164 M Brian Snail 209 M Lisa Green 306 F James White 101 M John Smith 292 F Jane Jones 139 M Peter Black 446 M Pat Partridge 658 F Sarah Cyan 164 M Brian Snail 209 M Lisa Green 306 F James White ALL DISTSTYLE ALL
  • 44. • KEY • Large Fact tables • Large dimension tables • ALL • Medium dimension tables (1K – 2M) • EVEN • Tables with no joins or group by • Small dimension tables (<1000)
  • 46. AWS CloudCorporate Data center Amazon S3 Amazon Redshift Flat files Data loading options
  • 47. AWS CloudCorporate Data center ETL Source DBs Amazon Redshift Amazon Redshift Data loading options
  • 49. Use multiple input files to maximize throughput Use the COPY command Each slice can load one file at a time A single input file means only one slice is ingesting data Instead of 100MB/s, you’re only getting 6.25MB/s
  • 50. Use multiple input files to maximize throughput Use the COPY command You need at least as many input files as you have slices With 16 input files, all slices are working so you maximize throughput Get 100MB/s per node; scale linearly as you add nodes
  • 52. JDBC/ODBC Amazon Redshift Amazon Redshift works with your existing BI tools
  • 57. Resources Maor Kleider | maor@amazon.com | Detail Pages • http://aws.amazon.com/redshift • https://aws.amazon.com/marketplace/redshift/ • Amazon Redshift Utilities - GitHub Best Practices • http://docs.aws.amazon.com/redshift/latest/dg/c_loading-data-best-practices.html • http://docs.aws.amazon.com/redshift/latest/dg/c_designing-tables-best-practices.html • http://docs.aws.amazon.com/redshift/latest/dg/c-optimizing-query-performance.html Next breakout sessions • Deep Dive on Amazon Aurora (3:50 pm – 4:40 pm)