SlideShare a Scribd company logo
1 of 59
Siva Raghupathy, Principal Solutions Architect, AWS
November, 2015
Big Data Architectural Patterns
and Best Practices on AWS
© 2015, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
Agenda
Big data challenges
How to simplify big data processing
What technologies should you use?
• Why?
• How?
Reference architecture
Design patterns
Ever Increasing Big Data
Volume
Velocity
Variety
Big Data Evolution
Batch
Report
Real-time
Alerts
Prediction
Forecast
Plethora of Tools
Amazon
Glacier
S3 DynamoDB
RDS
EMR
Amazon
Redshift
Data Pipeline
Amazon
Kinesis CloudSearch
Kinesis-enabled
app
Lambda ML
SQS
ElastiCache
DynamoDB
Streams
Is there a reference architecture?
What tools should I use?
How? Why?
Architectural Principles
Decoupled “data bus”
• Data → Store → Process → Answers
Use the right tool for the job
• Data structure, latency, throughput, access patterns
Use Lambda architecture ideas
• Immutable (append-only) log, batch/speed/serving layer
Leverage AWS managed services
• No/low admin
Big data ≠ big cost
Simplify Big Data Processing
ingest /
collect
store process /
analyze
consume /
visualize
Time to Answer (Latency)
Throughput
Cost
Ingest /
Collect
Types of Data
Transactional
• Database reads & writes (OLTP)
• Cache
Search
• Logs
• Streams
File
• Log files (/var/log)
• Log collectors & frameworks
Stream
• Log records
• Sensors & IoT data
Database
File
Storage
Stream
Storage
A
iOS Android
Web Apps
Logstash
LoggingIoTApplications
Transactional Data
File Data
Stream Data
Mobile
Apps
Search Data
Search
Collect Store
LoggingIoT
Store
Stream
Storage
A
iOS Android
Web Apps
Logstash
Amazon
RDS
Amazon
DynamoDB
Amazon
ES
Amazon
S3
Apache
Kafka
Amazon
Glacier
Amazon
Kinesis
Amazon
DynamoDB
Amazon
ElastiCache
SearchSQLNoSQLCacheStreamStorageFileStorage
Transactional Data
File Data
Stream Data
Mobile
Apps
Search Data
Database
File
Storage
Search
Collect Store
LoggingIoTApplications

Stream Storage Options
AWS managed services
• Amazon Kinesis → streams
• DynamoDB Streams → table + streams
• Amazon SQS → queue
• Amazon SNS → pub/sub
Unmanaged
• Apache Kafka → stream
Why Stream Storage?
Decouple producers & consumers
Persistent buffer
Collect multiple streams
Preserve client ordering
Streaming MapReduce
Parallel consumption
4 4 3 3 2 2 1 1
4 3 2 1
4 3 2 1
4 3 2 1
4 3 2 1
4 4 3 3 2 2 1 1
Shard 1 / Partition 1
Shard 2 / Partition 2
Consumer 1
Count of
Red = 4
Count of
Violet = 4
Consumer 2
Count of
Blue = 4
Count of
Green = 4
DynamoDB Stream Kinesis Stream Kafka Topic
What About Queues & Pub/Sub ?
• Decouple producers &
consumers/subscribers
• Persistent buffer
• Collect multiple streams
• No client ordering
• No parallel consumption for
Amazon SQS
• Amazon SNS can route
to multiple queues or ʎ
functions
• No streaming MapReduce
Consumers
Producers
Producers
Amazon SNS
Amazon SQS
queue
topic
function
ʎ
AWS Lambda
Amazon SQS
queue
Subscriber
Which stream storage should I use?
Amazon
Kinesis
DynamoDB
Streams
Amazon SQS
Amazon SNS
Kafka
Managed Yes Yes Yes No
Ordering Yes Yes No Yes
Delivery at-least-once exactly-once at-least-once at-least-once
Lifetime 7 days 24 hours 14 days Configurable
Replication 3 AZ 3 AZ 3 AZ Configurable
Throughput No Limit No Limit No Limit ~ Nodes
Parallel Clients Yes Yes No (SQS) Yes
MapReduce Yes Yes No Yes
Record size 1MB 400KB 256KB Configurable
Cost Low Higher(table cost) Low-Medium Low (+admin)
File
Storage
A
iOS Android
Web Apps
Logstash
Amazon
RDS
Amazon
DynamoDB
Amazon
ES
Amazon
S3
Apache
Kafka
Amazon
Glacier
Amazon
Kinesis
Amazon
DynamoDB
Amazon
ElastiCache
SearchSQLNoSQLCacheStreamStorageFileStorage
Transactional Data
File Data
Stream Data
Mobile
Apps
Search Data
Database
Search
Collect Store
LoggingIoTApplications

Why is Amazon S3 Good for Big Data?
• Natively supported by big data frameworks (Spark, Hive, Presto, etc.)
• No need to run compute clusters for storage (unlike HDFS)
• Can run transient Hadoop clusters & Amazon EC2 Spot instances
• Multiple distinct (Spark, Hive, Presto) clusters can use the same data
• Unlimited number of objects
• Very high bandwidth – no aggregate throughput limit
• Highly available – can tolerate AZ failure
• Designed for 99.999999999% durability
• Tired-storage (Standard, IA, Amazon Glacier) via life-cycle policy
• Secure – SSL, client/server-side encryption at rest
• Low cost
What about HDFS & Amazon Glacier?
• Use HDFS for very frequently
accessed (hot) data
• Use Amazon S3 Standard for
frequently accessed data
• Use Amazon S3 Standard –
IA for infrequently accessed
data
• Use Amazon Glacier for
archiving cold data
Database +
Search
Tier
A
iOS Android
Web Apps
Logstash
Amazon
RDS
Amazon
DynamoDB
Amazon
ES
Amazon
S3
Apache
Kafka
Amazon
Glacier
Amazon
Kinesis
Amazon
DynamoDB
Amazon
ElastiCache
SearchSQLNoSQLCacheStreamStorageFileStorage
Transactional Data
File Data
Stream Data
Mobile
Apps
Search Data
Collect Store

Database + Search Tier Anti-pattern
Database + Search Tier
Best Practice - Use the Right Tool for the Job
Data Tier
Search
Amazon
Elasticsearch
Service
Amazon
CloudSearch
Cache
Redis
Memcached
SQL
Amazon Aurora
MySQL
PostgreSQL
Oracle
SQL Server
NoSQL
Cassandra
Amazon
DynamoDB
HBase
MongoDB
Database + Search Tier
Materialized Views
What Data Store Should I Use?
Data structure → Fixed schema, JSON, key-value
Access patterns → Store data in the format you will access it
Data / access characteristics → Hot, warm, cold
Cost → Right cost
Data Structure and Access Patterns
Access Patterns What to use?
Put/Get (Key, Value) Cache, NoSQL
Simple relationships → 1:N, M:N NoSQL
Cross table joins, transaction, SQL SQL
Faceting, Search Search
Data Structure What to use?
Fixed schema SQL, NoSQL
Schema-free (JSON) NoSQL, Search
(Key, Value) Cache, NoSQL
What Is the Temperature of Your Data / Access ?
Hot Warm Cold
Volume MB–GB GB–TB PB
Item size B–KB KB–MB KB–TB
Latency ms ms, sec min, hrs
Durability Low–High High Very High
Request rate Very High High Low
Cost/GB $$-$ $-¢¢ ¢
Hot Data Warm Data Cold Data
Data / Access Characteristics: Hot, Warm, Cold
Cache
SQL
Request Rate
High Low
Cost/GB
High Low
Latency
Low High
Data Volume
Low High
Glacier
Structure
NoSQL
Hot Data Warm Data Cold Data
Low
High
Search
Amazon
ElastiCache
Amazon
DynamoDB
Amazon
Aurora
Amazon
Elasticsearch
Amazon
EMR (HDFS)
Amazon S3 Amazon Glacier
Average
latency
ms ms ms, sec ms,sec sec,min,hrs ms,sec,min
(~ size)
hrs
Data volume GB GB–TBs
(no limit)
GB–TB
(64 TB
Max)
GB–TB GB–PB
(~nodes)
MB–PB
(no limit)
GB–PB
(no limit)
Item size B-KB KB
(400 KB
max)
KB
(64 KB)
KB
(1 MB max)
MB-GB KB-GB
(5 TB max)
GB
(40 TB max)
Request rate High -
Very High
Very High
(no limit)
High High Low – Very
High
Low –
Very High
(no limit)
Very Low
Storage cost
GB/month
$$ ¢¢ ¢¢ ¢¢ ¢ ¢ ¢/10
Durability Low -
Moderate
Very High Very High High High Very High Very High
Hot Data Warm Data Cold Data
Hot Data Warm Data Cold Data
What Data Store Should I Use?
Cost Conscious Design
Example: Should I use Amazon S3 or Amazon DynamoDB?
“I’m currently scoping out a project that will greatly increase
my team’s use of Amazon S3. Hoping you could answer
some questions. The current iteration of the design calls for
many small files, perhaps up to a billion during peak. The
total size would be on the order of 1.5 TB per month…”
Request rate
(Writes/sec)
Object size
(Bytes)
Total size
(GB/month)
Objects per month
300 2048 1483 777,600,000
Cost Conscious Design
Example: Should I use Amazon S3 or Amazon DynamoDB?
https://calculator.s3.amazonaws.com/index.html
Simple Monthly
Calculator
Request rate
(Writes/sec)
Object size
(Bytes)
Total size
(GB/month)
Objects per
month
300 2,048 1,483 777,600,000
Amazon S3 or
Amazon
DynamoDB?
Request rate
(Writes/sec)
Object size
(Bytes)
Total size
(GB/month)
Objects per
month
Scenario 1300 2,048 1,483 777,600,000
Scenario 2300 32,768 23,730 777,600,000
Amazon S3
Amazon DynamoDB
use
use
Process /
Analyze
AnalyzeA
iOS Android
Web Apps
Logstash
Amazon
RDS
Amazon
DynamoDB
Amazon
ES
Amazon
S3
Apache
Kafka
Amazon
Glacier
Amazon
Kinesis
Amazon
DynamoDB
Amazon
Redshift
Impala
Pig
Amazon ML
Amazon
Kinesis
AWS
Lambda
AmazonElasticMapReduce
Amazon
ElastiCache
SearchSQLNoSQLCache
StreamProcessingBatchInteractive
Logging
StreamStorage
IoTApplications
FileStorage
Hot
Cold
Warm
Hot
Hot
ML
Transactional Data
File Data
Stream Data
Mobile
Apps
Search Data
Collect Store Analyze
 
Streaming
Process / Analyze
Analysis of data is a process of inspecting, cleaning,
transforming, and modeling data with the goal of discovering
useful information, suggesting conclusions, and supporting
decision-making.
Examples
Interactive dashboards → Interactive analytics
Daily/weekly/monthly reports → Batch analytics
Billing/fraud alerts, 1 minute metrics → Real-time analytics
Sentiment analysis, prediction models → Machine learning
Interactive Analytics
Takes large amount of (warm/cold) data
Takes seconds to get answers back
Example: Self-service dashboards
Batch Analytics
Takes large amount of (warm/cold) data
Takes minutes or hours to get answers back
Example: Generating daily, weekly, or monthly reports
Real-Time Analytics
Take small amount of hot data and ask questions
Takes short amount of time (milliseconds or seconds) to
get your answer back
Real-time (event)
• Real-time response to events in data streams
• Example: Billing/Fraud Alerts
Near real-time (micro-batch)
• Near real-time operations on small batches of events in data
streams
• Example: 1 Minute Metrics
Predictions via Machine Learning
ML gives computers the ability to learn without being explicitly
programmed
Machine Learning Algorithms:
Supervised Learning ← “teach” program
- Classification ← Is this transaction fraud? (Yes/No)
- Regression ← Customer Life-time value?
Unsupervised Learning ← let it learn by itself
- Clustering ← Market Segmentation
Analysis Tools and Frameworks
Machine Learning
• Mahout, Spark ML, Amazon ML
Interactive Analytics
• Amazon Redshift, Presto, Impala, Spark
Batch Processing
• MapReduce, Hive, Pig, Spark
Stream Processing
• Micro-batch: Spark Streaming, KCL, Hive, Pig
• Real-time: Storm, AWS Lambda, KCL
Amazon
Redshift
Impala
Pig
Amazon Machine
Learning
Amazon
Kinesis
AWS
Lambda
AmazonElasticMapReduce
StreamProcessingBatchInteractiveML
Analyze
Streaming
What Stream Processing Technology Should I Use?
Spark Streaming Apache Storm Amazon Kinesis
Client Library
AWS Lambda Amazon EMR (Hive,
Pig)
Scale /
Throughput
~ Nodes ~ Nodes ~ Nodes Automatic ~ Nodes
Batch or Real-
time
Real-time Real-time Real-time Real-time Batch
Manageability Yes (Amazon EMR) Do it yourself Amazon EC2 +
Auto Scaling
AWS managed Yes (Amazon EMR)
Fault Tolerance Single AZ Configurable Multi-AZ Multi-AZ Single AZ
Programming
languages
Java, Python, Scala Any language
via Thrift
Java, via
MultiLangDaemon (
.Net, Python, Ruby,
Node.js)
Node.js, Java,
Python
Hive, Pig, Streaming
languages
High
What Data Processing Technology Should I Use?
Amazon
Redshift
Impala Presto Spark Hive
Query
Latency
Low Low Low Low Medium (Tez) –
High (MapReduce)
Durability High High High High High
Data Volume 1.6 PB
Max
~Nodes ~Nodes ~Nodes ~Nodes
Managed Yes Yes (EMR) Yes (EMR) Yes (EMR) Yes (EMR)
Storage Native HDFS / S3A* HDFS / S3 HDFS / S3 HDFS / S3
SQL
Compatibility
High Medium High Low (SparkSQL) Medium (HQL)
HighMedium
What about ETL?
Store Analyze
https://aws.amazon.com/big-data/partner-solutions/
ETL
Consume /
Visualize
Collect Store Analyze Consume
A
iOS Android
Web Apps
Logstash
Amazon
RDS
Amazon
DynamoDB
Amazon
ES
Amazon
S3
Apache
Kafka
Amazon
Glacier
Amazon
Kinesis
Amazon
DynamoDB
Amazon
Redshift
Impala
Pig
Amazon ML
Amazon
Kinesis
AWS
Lambda
AmazonElasticMapReduce
Amazon
ElastiCache
SearchSQLNoSQLCache
StreamProcessingBatchInteractive
Logging
StreamStorage
IoTApplications
FileStorage
Analysis&Visualization
Hot
Cold
Warm
Hot
Slow
Hot
ML
Fast
Fast
Transactional Data
File Data
Stream Data
Notebooks
Predictions
Apps & APIs
Mobile
Apps
IDE
Search Data
ETL
Streaming
Amazon
QuickSight
Consume
Predictions
Analysis and Visualization
Notebooks
IDE
Applications & API
Consume
Analysis&VisualizationNotebooks
Predictions
Apps & APIs
IDE
Store Analyze ConsumeETL
Business
users
Data Scientist,
Developers
Amazon
QuickSight
Putting It All Together
Collect Store Analyze Consume
A
iOS Android
Web Apps
Logstash
Amazon
RDS
Amazon
DynamoDB
Amazon
ES
Amazon
S3
Apache
Kafka
Amazon
Glacier
Amazon
Kinesis
Amazon
DynamoDB
Amazon
Redshift
Impala
Pig
Amazon ML
Amazon
Kinesis
AWS
Lambda
AmazonElasticMapReduce
Amazon
ElastiCache
SearchSQLNoSQLCache
StreamProcessingBatchInteractive
Logging
StreamStorage
IoTApplications
FileStorage
Analysis&Visualization
Hot
Cold
Warm
Hot
Slow
Hot
ML
Fast
Fast
Transactional Data
File Data
Stream Data
Notebooks
Predictions
Apps & APIs
Mobile
Apps
IDE
Search Data
ETL
Reference Architecture
Streaming
Amazon
QuickSight
Design Patterns
Multi-Stage Decoupled “Data Bus”
Multiple stages
Storage decoupled from processing
Store Process Store Process
process
store
Multiple Processing Applications (or
Connectors) Can Read from or Write to Multiple
Data Stores
Amazon
Kinesis
AWS
Lambda
Amazon
DynamoDB
Amazon
Kinesis S3
Connector
Amazon S3
process
store
Processing Frameworks (KCL, Storm, Hive,
Spark, etc.) Could Read from Multiple Data
Stores
Amazon
Kinesis
AWS
Lambda
Amazon
S3
Amazon
DynamoDB
Hive SparkStorm
Amazon
Kinesis S3
Connector
process
store
Spark Streaming
Apache Storm
AWS Lambda
KCL
Amazon
Redshift Spark
Impala
Presto
Hive
Amazon
Redshift
Hive
Spark
Presto
Impala
Amazon Kinesis
Apache Kafka
Amazon
DynamoDB
Amazon S3data
Hot Cold
Data Temperature
ProcessingLatency
Low
High Answers
Amazon EMR
(HDFS)
Hive
Native
KCL
AWS Lambda
Data Temperature vs. Processing Latency
Batch
Real-time Analytics
Producer
Apache
Kafka
KCL
AWS Lambda
Spark
Streaming
Apache
Storm
Amazon
SNS
Amazon
ML
Notifications
Amazon
ElastiCache
(Redis)
Amazon
DynamoDB
Amazon
RDS
Amazon
ES
Alert
App state
Real-time Prediction
KPI
process
store
DynamoDB
Streams
Amazon
Kinesis
Interactive &
Batch
Analytics
Producer Amazon S3
Amazon EMR
Hive
Pig
Spark
Amazon
ML
process
store
Consume
Amazon
Redshift
Amazon EMR
Presto
Impala
Spark
Batch
Interactive
Batch Prediction
Real-time Prediction
Batch Layer
Amazon
Kinesis
data
process
store
Amazon
Kinesis S3
Connector
Amazon S3
A
p
p
l
i
c
a
t
i
o
n
s
Amazon
Redshift
Amazon EMR
Presto
Hive
Pig
Spark
answer
Speed Layer
answer
Serving
Layer
Amazon
ElastiCache
Amazon
DynamoDB
Amazon
RDS
Amazon
ES
answer
Amazon
ML
KCL
AWS Lambda
Spark Streaming
Storm
Lambda
Architecture
Summary
Build decoupled “data bus”
• Data → Store ↔ Process → Answers
Use the right tool for the job
• Latency, throughput, access patterns
Use Lambda architecture ideas
• Immutable (append-only) log, batch/speed/serving layer
Leverage AWS managed services
• No/low admin
Be cost conscious
• Big data ≠ big cost
Thank you!
Find Getting Started Guides | Tutorials | Labs
aws.amazon.com/big-data

More Related Content

What's hot

Architecting a Serverless Data Lake on AWS
Architecting a Serverless Data Lake on AWSArchitecting a Serverless Data Lake on AWS
Architecting a Serverless Data Lake on AWSAmazon Web Services
 
Build Data Lakes & Analytics on AWS: Patterns & Best Practices
Build Data Lakes & Analytics on AWS: Patterns & Best PracticesBuild Data Lakes & Analytics on AWS: Patterns & Best Practices
Build Data Lakes & Analytics on AWS: Patterns & Best PracticesAmazon Web Services
 
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...Amazon Web Services
 
Visualization with Amazon QuickSight
Visualization with Amazon QuickSightVisualization with Amazon QuickSight
Visualization with Amazon QuickSightAmazon Web Services
 
Visualize your data in Data Lake with AWS Athena and AWS Quicksight Hands-on ...
Visualize your data in Data Lake with AWS Athena and AWS Quicksight Hands-on ...Visualize your data in Data Lake with AWS Athena and AWS Quicksight Hands-on ...
Visualize your data in Data Lake with AWS Athena and AWS Quicksight Hands-on ...Amazon Web Services
 
Building Data Lakes That Cost Less and Deliver Results Faster - AWS Online Te...
Building Data Lakes That Cost Less and Deliver Results Faster - AWS Online Te...Building Data Lakes That Cost Less and Deliver Results Faster - AWS Online Te...
Building Data Lakes That Cost Less and Deliver Results Faster - AWS Online Te...Amazon Web Services
 
AWS Webcast - Managing Big Data in the AWS Cloud_20140924
AWS Webcast - Managing Big Data in the AWS Cloud_20140924AWS Webcast - Managing Big Data in the AWS Cloud_20140924
AWS Webcast - Managing Big Data in the AWS Cloud_20140924Amazon Web Services
 
The Power of Big Data - AWS Summit Bahrain 2017
The Power of Big Data - AWS Summit Bahrain 2017The Power of Big Data - AWS Summit Bahrain 2017
The Power of Big Data - AWS Summit Bahrain 2017Amazon Web Services
 
How to build a data lake with aws glue data catalog (ABD213-R) re:Invent 2017
How to build a data lake with aws glue data catalog (ABD213-R)  re:Invent 2017How to build a data lake with aws glue data catalog (ABD213-R)  re:Invent 2017
How to build a data lake with aws glue data catalog (ABD213-R) re:Invent 2017Amazon Web Services
 
Big Data and Analytics – End to End on AWS – Russell Nash
Big Data and Analytics – End to End on AWS – Russell NashBig Data and Analytics – End to End on AWS – Russell Nash
Big Data and Analytics – End to End on AWS – Russell NashAmazon Web Services
 

What's hot (20)

Securing Your Big Data on AWS
Securing Your Big Data on AWSSecuring Your Big Data on AWS
Securing Your Big Data on AWS
 
Architecting a Serverless Data Lake on AWS
Architecting a Serverless Data Lake on AWSArchitecting a Serverless Data Lake on AWS
Architecting a Serverless Data Lake on AWS
 
Build Data Lakes & Analytics on AWS: Patterns & Best Practices
Build Data Lakes & Analytics on AWS: Patterns & Best PracticesBuild Data Lakes & Analytics on AWS: Patterns & Best Practices
Build Data Lakes & Analytics on AWS: Patterns & Best Practices
 
Log Analytics with AWS
Log Analytics with AWSLog Analytics with AWS
Log Analytics with AWS
 
Using Data Lakes
Using Data LakesUsing Data Lakes
Using Data Lakes
 
Analyzing Streams
Analyzing StreamsAnalyzing Streams
Analyzing Streams
 
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...
 
Visualization with Amazon QuickSight
Visualization with Amazon QuickSightVisualization with Amazon QuickSight
Visualization with Amazon QuickSight
 
How Amazon uses AWS Analytics
How Amazon uses AWS AnalyticsHow Amazon uses AWS Analytics
How Amazon uses AWS Analytics
 
Data Warehouses and Data Lakes
Data Warehouses and Data LakesData Warehouses and Data Lakes
Data Warehouses and Data Lakes
 
Data Warehouses and Data Lakes
Data Warehouses and Data LakesData Warehouses and Data Lakes
Data Warehouses and Data Lakes
 
Visualize your data in Data Lake with AWS Athena and AWS Quicksight Hands-on ...
Visualize your data in Data Lake with AWS Athena and AWS Quicksight Hands-on ...Visualize your data in Data Lake with AWS Athena and AWS Quicksight Hands-on ...
Visualize your data in Data Lake with AWS Athena and AWS Quicksight Hands-on ...
 
Building Data Lakes That Cost Less and Deliver Results Faster - AWS Online Te...
Building Data Lakes That Cost Less and Deliver Results Faster - AWS Online Te...Building Data Lakes That Cost Less and Deliver Results Faster - AWS Online Te...
Building Data Lakes That Cost Less and Deliver Results Faster - AWS Online Te...
 
AWS Webcast - Managing Big Data in the AWS Cloud_20140924
AWS Webcast - Managing Big Data in the AWS Cloud_20140924AWS Webcast - Managing Big Data in the AWS Cloud_20140924
AWS Webcast - Managing Big Data in the AWS Cloud_20140924
 
Building Data Lakes with AWS
Building Data Lakes with AWSBuilding Data Lakes with AWS
Building Data Lakes with AWS
 
The Power of Big Data - AWS Summit Bahrain 2017
The Power of Big Data - AWS Summit Bahrain 2017The Power of Big Data - AWS Summit Bahrain 2017
The Power of Big Data - AWS Summit Bahrain 2017
 
Data Warehouses and Data Lakes
Data Warehouses and Data LakesData Warehouses and Data Lakes
Data Warehouses and Data Lakes
 
How to build a data lake with aws glue data catalog (ABD213-R) re:Invent 2017
How to build a data lake with aws glue data catalog (ABD213-R)  re:Invent 2017How to build a data lake with aws glue data catalog (ABD213-R)  re:Invent 2017
How to build a data lake with aws glue data catalog (ABD213-R) re:Invent 2017
 
Analyzing Streams
Analyzing StreamsAnalyzing Streams
Analyzing Streams
 
Big Data and Analytics – End to End on AWS – Russell Nash
Big Data and Analytics – End to End on AWS – Russell NashBig Data and Analytics – End to End on AWS – Russell Nash
Big Data and Analytics – End to End on AWS – Russell Nash
 

Viewers also liked

Think Big Analytics Corporate Deck Hadoop Summit June 2011
Think Big Analytics Corporate Deck Hadoop Summit June 2011Think Big Analytics Corporate Deck Hadoop Summit June 2011
Think Big Analytics Corporate Deck Hadoop Summit June 2011r_farnell
 
Design Patterns for Developers - Technical 201
Design Patterns for Developers - Technical 201Design Patterns for Developers - Technical 201
Design Patterns for Developers - Technical 201Amazon Web Services
 
Architectural Professional Practice - Career Essentials
Architectural Professional Practice - Career EssentialsArchitectural Professional Practice - Career Essentials
Architectural Professional Practice - Career EssentialsGalala University
 
ARC302 AWS Cloud Design Patterns - AWS re: Invent 2012
ARC302 AWS Cloud Design Patterns - AWS re: Invent 2012ARC302 AWS Cloud Design Patterns - AWS re: Invent 2012
ARC302 AWS Cloud Design Patterns - AWS re: Invent 2012Amazon Web Services
 
(CMP201) All You Need To Know About Auto Scaling
(CMP201) All You Need To Know About Auto Scaling(CMP201) All You Need To Know About Auto Scaling
(CMP201) All You Need To Know About Auto ScalingAmazon Web Services
 
AWS Storage and Database Architecture Best Practices (DAT203) | AWS re:Invent...
AWS Storage and Database Architecture Best Practices (DAT203) | AWS re:Invent...AWS Storage and Database Architecture Best Practices (DAT203) | AWS re:Invent...
AWS Storage and Database Architecture Best Practices (DAT203) | AWS re:Invent...Amazon Web Services
 
Cloud application architecture with sql azure and windows azure
Cloud application architecture with sql azure and windows azureCloud application architecture with sql azure and windows azure
Cloud application architecture with sql azure and windows azureEduardo Castro
 

Viewers also liked (8)

Think Big Analytics Corporate Deck Hadoop Summit June 2011
Think Big Analytics Corporate Deck Hadoop Summit June 2011Think Big Analytics Corporate Deck Hadoop Summit June 2011
Think Big Analytics Corporate Deck Hadoop Summit June 2011
 
Design Patterns for Developers - Technical 201
Design Patterns for Developers - Technical 201Design Patterns for Developers - Technical 201
Design Patterns for Developers - Technical 201
 
Architectural Professional Practice - Career Essentials
Architectural Professional Practice - Career EssentialsArchitectural Professional Practice - Career Essentials
Architectural Professional Practice - Career Essentials
 
ARC302 AWS Cloud Design Patterns - AWS re: Invent 2012
ARC302 AWS Cloud Design Patterns - AWS re: Invent 2012ARC302 AWS Cloud Design Patterns - AWS re: Invent 2012
ARC302 AWS Cloud Design Patterns - AWS re: Invent 2012
 
(CMP201) All You Need To Know About Auto Scaling
(CMP201) All You Need To Know About Auto Scaling(CMP201) All You Need To Know About Auto Scaling
(CMP201) All You Need To Know About Auto Scaling
 
Application Architecture
Application ArchitectureApplication Architecture
Application Architecture
 
AWS Storage and Database Architecture Best Practices (DAT203) | AWS re:Invent...
AWS Storage and Database Architecture Best Practices (DAT203) | AWS re:Invent...AWS Storage and Database Architecture Best Practices (DAT203) | AWS re:Invent...
AWS Storage and Database Architecture Best Practices (DAT203) | AWS re:Invent...
 
Cloud application architecture with sql azure and windows azure
Cloud application architecture with sql azure and windows azureCloud application architecture with sql azure and windows azure
Cloud application architecture with sql azure and windows azure
 

Similar to AWS November Webinar Series - Architectural Patterns & Best Practices for Big Data on AWS

February 2016 Webinar Series - Architectural Patterns for Big Data on AWS
February 2016 Webinar Series - Architectural Patterns for Big Data on AWSFebruary 2016 Webinar Series - Architectural Patterns for Big Data on AWS
February 2016 Webinar Series - Architectural Patterns for Big Data on AWSAmazon Web Services
 
(BDT310) Big Data Architectural Patterns and Best Practices on AWS
(BDT310) Big Data Architectural Patterns and Best Practices on AWS(BDT310) Big Data Architectural Patterns and Best Practices on AWS
(BDT310) Big Data Architectural Patterns and Best Practices on AWSAmazon Web Services
 
Big Data and Architectural Patterns on AWS - Pop-up Loft Tel Aviv
Big Data and Architectural Patterns on AWS - Pop-up Loft Tel AvivBig Data and Architectural Patterns on AWS - Pop-up Loft Tel Aviv
Big Data and Architectural Patterns on AWS - Pop-up Loft Tel AvivAmazon Web Services
 
AWS Enterprise Summit Netherlands - Big Data Architectural Patterns & Best Pr...
AWS Enterprise Summit Netherlands - Big Data Architectural Patterns & Best Pr...AWS Enterprise Summit Netherlands - Big Data Architectural Patterns & Best Pr...
AWS Enterprise Summit Netherlands - Big Data Architectural Patterns & Best Pr...Amazon Web Services
 
AWS re:Invent 2016: Big Data Architectural Patterns and Best Practices on AWS...
AWS re:Invent 2016: Big Data Architectural Patterns and Best Practices on AWS...AWS re:Invent 2016: Big Data Architectural Patterns and Best Practices on AWS...
AWS re:Invent 2016: Big Data Architectural Patterns and Best Practices on AWS...Amazon Web Services
 
Big Data Architectural Patterns and Best Practices
Big Data Architectural Patterns and Best PracticesBig Data Architectural Patterns and Best Practices
Big Data Architectural Patterns and Best PracticesAmazon Web Services
 
Big Data Architectural Patterns and Best Practices
Big Data Architectural Patterns and Best PracticesBig Data Architectural Patterns and Best Practices
Big Data Architectural Patterns and Best PracticesAmazon Web Services
 
Big Data adoption success using AWS Big Data Services - Pop-up Loft TLV 2017
Big Data adoption success using AWS Big Data Services - Pop-up Loft TLV 2017Big Data adoption success using AWS Big Data Services - Pop-up Loft TLV 2017
Big Data adoption success using AWS Big Data Services - Pop-up Loft TLV 2017Amazon Web Services
 
AWS APAC Webinar Week - Big Data on AWS. RedShift, EMR, & IOT
AWS APAC Webinar Week - Big Data on AWS. RedShift, EMR, & IOTAWS APAC Webinar Week - Big Data on AWS. RedShift, EMR, & IOT
AWS APAC Webinar Week - Big Data on AWS. RedShift, EMR, & IOTAmazon Web Services
 
Big Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWSBig Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWSAmazon Web Services
 
Database and Analytics on the AWS Cloud
Database and Analytics on the AWS CloudDatabase and Analytics on the AWS Cloud
Database and Analytics on the AWS CloudAmazon Web Services
 
Big Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWSBig Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWSAmazon Web Services
 
Big Data Analytics Architectural Patterns and Best Practices (ANT201-R1) - AW...
Big Data Analytics Architectural Patterns and Best Practices (ANT201-R1) - AW...Big Data Analytics Architectural Patterns and Best Practices (ANT201-R1) - AW...
Big Data Analytics Architectural Patterns and Best Practices (ANT201-R1) - AW...Amazon Web Services
 
Rethinking the database for the cloud (iJAWS)
Rethinking the database for the cloud (iJAWS)Rethinking the database for the cloud (iJAWS)
Rethinking the database for the cloud (iJAWS)Rasmus Ekman
 
Choosing the Right Database Service (김상필, 유타카 호시노) - AWS DB Day
Choosing the Right Database Service (김상필, 유타카 호시노) - AWS DB DayChoosing the Right Database Service (김상필, 유타카 호시노) - AWS DB Day
Choosing the Right Database Service (김상필, 유타카 호시노) - AWS DB DayAmazon Web Services Korea
 
Fast Track to Your Data Lake on AWS
Fast Track to Your Data Lake on AWSFast Track to Your Data Lake on AWS
Fast Track to Your Data Lake on AWSAmazon Web Services
 
Build Data Lakes and Analytics on AWS: Patterns & Best Practices - BDA305 - A...
Build Data Lakes and Analytics on AWS: Patterns & Best Practices - BDA305 - A...Build Data Lakes and Analytics on AWS: Patterns & Best Practices - BDA305 - A...
Build Data Lakes and Analytics on AWS: Patterns & Best Practices - BDA305 - A...Amazon Web Services
 

Similar to AWS November Webinar Series - Architectural Patterns & Best Practices for Big Data on AWS (20)

February 2016 Webinar Series - Architectural Patterns for Big Data on AWS
February 2016 Webinar Series - Architectural Patterns for Big Data on AWSFebruary 2016 Webinar Series - Architectural Patterns for Big Data on AWS
February 2016 Webinar Series - Architectural Patterns for Big Data on AWS
 
(BDT310) Big Data Architectural Patterns and Best Practices on AWS
(BDT310) Big Data Architectural Patterns and Best Practices on AWS(BDT310) Big Data Architectural Patterns and Best Practices on AWS
(BDT310) Big Data Architectural Patterns and Best Practices on AWS
 
Big Data and Architectural Patterns on AWS - Pop-up Loft Tel Aviv
Big Data and Architectural Patterns on AWS - Pop-up Loft Tel AvivBig Data and Architectural Patterns on AWS - Pop-up Loft Tel Aviv
Big Data and Architectural Patterns on AWS - Pop-up Loft Tel Aviv
 
Big Data Architectural Patterns
Big Data Architectural PatternsBig Data Architectural Patterns
Big Data Architectural Patterns
 
AWS Enterprise Summit Netherlands - Big Data Architectural Patterns & Best Pr...
AWS Enterprise Summit Netherlands - Big Data Architectural Patterns & Best Pr...AWS Enterprise Summit Netherlands - Big Data Architectural Patterns & Best Pr...
AWS Enterprise Summit Netherlands - Big Data Architectural Patterns & Best Pr...
 
Big Data Architectural Patterns
Big Data Architectural PatternsBig Data Architectural Patterns
Big Data Architectural Patterns
 
AWS re:Invent 2016: Big Data Architectural Patterns and Best Practices on AWS...
AWS re:Invent 2016: Big Data Architectural Patterns and Best Practices on AWS...AWS re:Invent 2016: Big Data Architectural Patterns and Best Practices on AWS...
AWS re:Invent 2016: Big Data Architectural Patterns and Best Practices on AWS...
 
Big Data Architectural Patterns and Best Practices
Big Data Architectural Patterns and Best PracticesBig Data Architectural Patterns and Best Practices
Big Data Architectural Patterns and Best Practices
 
Big Data Architectural Patterns and Best Practices
Big Data Architectural Patterns and Best PracticesBig Data Architectural Patterns and Best Practices
Big Data Architectural Patterns and Best Practices
 
Deep Dive in Big Data
Deep Dive in Big DataDeep Dive in Big Data
Deep Dive in Big Data
 
Big Data adoption success using AWS Big Data Services - Pop-up Loft TLV 2017
Big Data adoption success using AWS Big Data Services - Pop-up Loft TLV 2017Big Data adoption success using AWS Big Data Services - Pop-up Loft TLV 2017
Big Data adoption success using AWS Big Data Services - Pop-up Loft TLV 2017
 
AWS APAC Webinar Week - Big Data on AWS. RedShift, EMR, & IOT
AWS APAC Webinar Week - Big Data on AWS. RedShift, EMR, & IOTAWS APAC Webinar Week - Big Data on AWS. RedShift, EMR, & IOT
AWS APAC Webinar Week - Big Data on AWS. RedShift, EMR, & IOT
 
Big Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWSBig Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWS
 
Database and Analytics on the AWS Cloud
Database and Analytics on the AWS CloudDatabase and Analytics on the AWS Cloud
Database and Analytics on the AWS Cloud
 
Big Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWSBig Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWS
 
Big Data Analytics Architectural Patterns and Best Practices (ANT201-R1) - AW...
Big Data Analytics Architectural Patterns and Best Practices (ANT201-R1) - AW...Big Data Analytics Architectural Patterns and Best Practices (ANT201-R1) - AW...
Big Data Analytics Architectural Patterns and Best Practices (ANT201-R1) - AW...
 
Rethinking the database for the cloud (iJAWS)
Rethinking the database for the cloud (iJAWS)Rethinking the database for the cloud (iJAWS)
Rethinking the database for the cloud (iJAWS)
 
Choosing the Right Database Service (김상필, 유타카 호시노) - AWS DB Day
Choosing the Right Database Service (김상필, 유타카 호시노) - AWS DB DayChoosing the Right Database Service (김상필, 유타카 호시노) - AWS DB Day
Choosing the Right Database Service (김상필, 유타카 호시노) - AWS DB Day
 
Fast Track to Your Data Lake on AWS
Fast Track to Your Data Lake on AWSFast Track to Your Data Lake on AWS
Fast Track to Your Data Lake on AWS
 
Build Data Lakes and Analytics on AWS: Patterns & Best Practices - BDA305 - A...
Build Data Lakes and Analytics on AWS: Patterns & Best Practices - BDA305 - A...Build Data Lakes and Analytics on AWS: Patterns & Best Practices - BDA305 - A...
Build Data Lakes and Analytics on AWS: Patterns & Best Practices - BDA305 - A...
 

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 FargateAmazon Web Services
 
Costruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWSCostruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWSAmazon 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
 
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 WorkloadsAmazon 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 sfatareAmazon 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 NodeJSAmazon 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 webAmazon 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 sfatareAmazon 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 ServiceAmazon 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

Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsMaria Levchenko
 
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...Igalia
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking MenDelhi Call girls
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEarley Information Science
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreternaman860154
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerThousandEyes
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processorsdebabhi2
 
Developing An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilDeveloping An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilV3cube
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...Martijn de Jong
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024The Digital Insurer
 
Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024The Digital Insurer
 
Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Allon Mureinik
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityPrincipled Technologies
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Drew Madelung
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonetsnaman860154
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountPuma Security, LLC
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024Rafal Los
 
Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slidespraypatel2
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...apidays
 

Recently uploaded (20)

Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 
Developing An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilDeveloping An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of Brazil
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024
 
Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024
 
Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path Mount
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slides
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 

AWS November Webinar Series - Architectural Patterns & Best Practices for Big Data on AWS

  • 1. Siva Raghupathy, Principal Solutions Architect, AWS November, 2015 Big Data Architectural Patterns and Best Practices on AWS © 2015, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
  • 2. Agenda Big data challenges How to simplify big data processing What technologies should you use? • Why? • How? Reference architecture Design patterns
  • 3. Ever Increasing Big Data Volume Velocity Variety
  • 5. Plethora of Tools Amazon Glacier S3 DynamoDB RDS EMR Amazon Redshift Data Pipeline Amazon Kinesis CloudSearch Kinesis-enabled app Lambda ML SQS ElastiCache DynamoDB Streams
  • 6. Is there a reference architecture? What tools should I use? How? Why?
  • 7. Architectural Principles Decoupled “data bus” • Data → Store → Process → Answers Use the right tool for the job • Data structure, latency, throughput, access patterns Use Lambda architecture ideas • Immutable (append-only) log, batch/speed/serving layer Leverage AWS managed services • No/low admin Big data ≠ big cost
  • 8. Simplify Big Data Processing ingest / collect store process / analyze consume / visualize Time to Answer (Latency) Throughput Cost
  • 10. Types of Data Transactional • Database reads & writes (OLTP) • Cache Search • Logs • Streams File • Log files (/var/log) • Log collectors & frameworks Stream • Log records • Sensors & IoT data Database File Storage Stream Storage A iOS Android Web Apps Logstash LoggingIoTApplications Transactional Data File Data Stream Data Mobile Apps Search Data Search Collect Store LoggingIoT
  • 11. Store
  • 13. Stream Storage Options AWS managed services • Amazon Kinesis → streams • DynamoDB Streams → table + streams • Amazon SQS → queue • Amazon SNS → pub/sub Unmanaged • Apache Kafka → stream
  • 14. Why Stream Storage? Decouple producers & consumers Persistent buffer Collect multiple streams Preserve client ordering Streaming MapReduce Parallel consumption 4 4 3 3 2 2 1 1 4 3 2 1 4 3 2 1 4 3 2 1 4 3 2 1 4 4 3 3 2 2 1 1 Shard 1 / Partition 1 Shard 2 / Partition 2 Consumer 1 Count of Red = 4 Count of Violet = 4 Consumer 2 Count of Blue = 4 Count of Green = 4 DynamoDB Stream Kinesis Stream Kafka Topic
  • 15. What About Queues & Pub/Sub ? • Decouple producers & consumers/subscribers • Persistent buffer • Collect multiple streams • No client ordering • No parallel consumption for Amazon SQS • Amazon SNS can route to multiple queues or ʎ functions • No streaming MapReduce Consumers Producers Producers Amazon SNS Amazon SQS queue topic function ʎ AWS Lambda Amazon SQS queue Subscriber
  • 16. Which stream storage should I use? Amazon Kinesis DynamoDB Streams Amazon SQS Amazon SNS Kafka Managed Yes Yes Yes No Ordering Yes Yes No Yes Delivery at-least-once exactly-once at-least-once at-least-once Lifetime 7 days 24 hours 14 days Configurable Replication 3 AZ 3 AZ 3 AZ Configurable Throughput No Limit No Limit No Limit ~ Nodes Parallel Clients Yes Yes No (SQS) Yes MapReduce Yes Yes No Yes Record size 1MB 400KB 256KB Configurable Cost Low Higher(table cost) Low-Medium Low (+admin)
  • 18. Why is Amazon S3 Good for Big Data? • Natively supported by big data frameworks (Spark, Hive, Presto, etc.) • No need to run compute clusters for storage (unlike HDFS) • Can run transient Hadoop clusters & Amazon EC2 Spot instances • Multiple distinct (Spark, Hive, Presto) clusters can use the same data • Unlimited number of objects • Very high bandwidth – no aggregate throughput limit • Highly available – can tolerate AZ failure • Designed for 99.999999999% durability • Tired-storage (Standard, IA, Amazon Glacier) via life-cycle policy • Secure – SSL, client/server-side encryption at rest • Low cost
  • 19. What about HDFS & Amazon Glacier? • Use HDFS for very frequently accessed (hot) data • Use Amazon S3 Standard for frequently accessed data • Use Amazon S3 Standard – IA for infrequently accessed data • Use Amazon Glacier for archiving cold data
  • 20. Database + Search Tier A iOS Android Web Apps Logstash Amazon RDS Amazon DynamoDB Amazon ES Amazon S3 Apache Kafka Amazon Glacier Amazon Kinesis Amazon DynamoDB Amazon ElastiCache SearchSQLNoSQLCacheStreamStorageFileStorage Transactional Data File Data Stream Data Mobile Apps Search Data Collect Store 
  • 21. Database + Search Tier Anti-pattern Database + Search Tier
  • 22. Best Practice - Use the Right Tool for the Job Data Tier Search Amazon Elasticsearch Service Amazon CloudSearch Cache Redis Memcached SQL Amazon Aurora MySQL PostgreSQL Oracle SQL Server NoSQL Cassandra Amazon DynamoDB HBase MongoDB Database + Search Tier
  • 24. What Data Store Should I Use? Data structure → Fixed schema, JSON, key-value Access patterns → Store data in the format you will access it Data / access characteristics → Hot, warm, cold Cost → Right cost
  • 25. Data Structure and Access Patterns Access Patterns What to use? Put/Get (Key, Value) Cache, NoSQL Simple relationships → 1:N, M:N NoSQL Cross table joins, transaction, SQL SQL Faceting, Search Search Data Structure What to use? Fixed schema SQL, NoSQL Schema-free (JSON) NoSQL, Search (Key, Value) Cache, NoSQL
  • 26. What Is the Temperature of Your Data / Access ?
  • 27. Hot Warm Cold Volume MB–GB GB–TB PB Item size B–KB KB–MB KB–TB Latency ms ms, sec min, hrs Durability Low–High High Very High Request rate Very High High Low Cost/GB $$-$ $-¢¢ ¢ Hot Data Warm Data Cold Data Data / Access Characteristics: Hot, Warm, Cold
  • 28. Cache SQL Request Rate High Low Cost/GB High Low Latency Low High Data Volume Low High Glacier Structure NoSQL Hot Data Warm Data Cold Data Low High Search
  • 29. Amazon ElastiCache Amazon DynamoDB Amazon Aurora Amazon Elasticsearch Amazon EMR (HDFS) Amazon S3 Amazon Glacier Average latency ms ms ms, sec ms,sec sec,min,hrs ms,sec,min (~ size) hrs Data volume GB GB–TBs (no limit) GB–TB (64 TB Max) GB–TB GB–PB (~nodes) MB–PB (no limit) GB–PB (no limit) Item size B-KB KB (400 KB max) KB (64 KB) KB (1 MB max) MB-GB KB-GB (5 TB max) GB (40 TB max) Request rate High - Very High Very High (no limit) High High Low – Very High Low – Very High (no limit) Very Low Storage cost GB/month $$ ¢¢ ¢¢ ¢¢ ¢ ¢ ¢/10 Durability Low - Moderate Very High Very High High High Very High Very High Hot Data Warm Data Cold Data Hot Data Warm Data Cold Data What Data Store Should I Use?
  • 30. Cost Conscious Design Example: Should I use Amazon S3 or Amazon DynamoDB? “I’m currently scoping out a project that will greatly increase my team’s use of Amazon S3. Hoping you could answer some questions. The current iteration of the design calls for many small files, perhaps up to a billion during peak. The total size would be on the order of 1.5 TB per month…” Request rate (Writes/sec) Object size (Bytes) Total size (GB/month) Objects per month 300 2048 1483 777,600,000
  • 31. Cost Conscious Design Example: Should I use Amazon S3 or Amazon DynamoDB? https://calculator.s3.amazonaws.com/index.html Simple Monthly Calculator
  • 32. Request rate (Writes/sec) Object size (Bytes) Total size (GB/month) Objects per month 300 2,048 1,483 777,600,000 Amazon S3 or Amazon DynamoDB?
  • 33. Request rate (Writes/sec) Object size (Bytes) Total size (GB/month) Objects per month Scenario 1300 2,048 1,483 777,600,000 Scenario 2300 32,768 23,730 777,600,000 Amazon S3 Amazon DynamoDB use use
  • 35. AnalyzeA iOS Android Web Apps Logstash Amazon RDS Amazon DynamoDB Amazon ES Amazon S3 Apache Kafka Amazon Glacier Amazon Kinesis Amazon DynamoDB Amazon Redshift Impala Pig Amazon ML Amazon Kinesis AWS Lambda AmazonElasticMapReduce Amazon ElastiCache SearchSQLNoSQLCache StreamProcessingBatchInteractive Logging StreamStorage IoTApplications FileStorage Hot Cold Warm Hot Hot ML Transactional Data File Data Stream Data Mobile Apps Search Data Collect Store Analyze   Streaming
  • 36. Process / Analyze Analysis of data is a process of inspecting, cleaning, transforming, and modeling data with the goal of discovering useful information, suggesting conclusions, and supporting decision-making. Examples Interactive dashboards → Interactive analytics Daily/weekly/monthly reports → Batch analytics Billing/fraud alerts, 1 minute metrics → Real-time analytics Sentiment analysis, prediction models → Machine learning
  • 37. Interactive Analytics Takes large amount of (warm/cold) data Takes seconds to get answers back Example: Self-service dashboards
  • 38. Batch Analytics Takes large amount of (warm/cold) data Takes minutes or hours to get answers back Example: Generating daily, weekly, or monthly reports
  • 39. Real-Time Analytics Take small amount of hot data and ask questions Takes short amount of time (milliseconds or seconds) to get your answer back Real-time (event) • Real-time response to events in data streams • Example: Billing/Fraud Alerts Near real-time (micro-batch) • Near real-time operations on small batches of events in data streams • Example: 1 Minute Metrics
  • 40. Predictions via Machine Learning ML gives computers the ability to learn without being explicitly programmed Machine Learning Algorithms: Supervised Learning ← “teach” program - Classification ← Is this transaction fraud? (Yes/No) - Regression ← Customer Life-time value? Unsupervised Learning ← let it learn by itself - Clustering ← Market Segmentation
  • 41. Analysis Tools and Frameworks Machine Learning • Mahout, Spark ML, Amazon ML Interactive Analytics • Amazon Redshift, Presto, Impala, Spark Batch Processing • MapReduce, Hive, Pig, Spark Stream Processing • Micro-batch: Spark Streaming, KCL, Hive, Pig • Real-time: Storm, AWS Lambda, KCL Amazon Redshift Impala Pig Amazon Machine Learning Amazon Kinesis AWS Lambda AmazonElasticMapReduce StreamProcessingBatchInteractiveML Analyze Streaming
  • 42. What Stream Processing Technology Should I Use? Spark Streaming Apache Storm Amazon Kinesis Client Library AWS Lambda Amazon EMR (Hive, Pig) Scale / Throughput ~ Nodes ~ Nodes ~ Nodes Automatic ~ Nodes Batch or Real- time Real-time Real-time Real-time Real-time Batch Manageability Yes (Amazon EMR) Do it yourself Amazon EC2 + Auto Scaling AWS managed Yes (Amazon EMR) Fault Tolerance Single AZ Configurable Multi-AZ Multi-AZ Single AZ Programming languages Java, Python, Scala Any language via Thrift Java, via MultiLangDaemon ( .Net, Python, Ruby, Node.js) Node.js, Java, Python Hive, Pig, Streaming languages High
  • 43. What Data Processing Technology Should I Use? Amazon Redshift Impala Presto Spark Hive Query Latency Low Low Low Low Medium (Tez) – High (MapReduce) Durability High High High High High Data Volume 1.6 PB Max ~Nodes ~Nodes ~Nodes ~Nodes Managed Yes Yes (EMR) Yes (EMR) Yes (EMR) Yes (EMR) Storage Native HDFS / S3A* HDFS / S3 HDFS / S3 HDFS / S3 SQL Compatibility High Medium High Low (SparkSQL) Medium (HQL) HighMedium
  • 44. What about ETL? Store Analyze https://aws.amazon.com/big-data/partner-solutions/ ETL
  • 46. Collect Store Analyze Consume A iOS Android Web Apps Logstash Amazon RDS Amazon DynamoDB Amazon ES Amazon S3 Apache Kafka Amazon Glacier Amazon Kinesis Amazon DynamoDB Amazon Redshift Impala Pig Amazon ML Amazon Kinesis AWS Lambda AmazonElasticMapReduce Amazon ElastiCache SearchSQLNoSQLCache StreamProcessingBatchInteractive Logging StreamStorage IoTApplications FileStorage Analysis&Visualization Hot Cold Warm Hot Slow Hot ML Fast Fast Transactional Data File Data Stream Data Notebooks Predictions Apps & APIs Mobile Apps IDE Search Data ETL Streaming Amazon QuickSight
  • 47. Consume Predictions Analysis and Visualization Notebooks IDE Applications & API Consume Analysis&VisualizationNotebooks Predictions Apps & APIs IDE Store Analyze ConsumeETL Business users Data Scientist, Developers Amazon QuickSight
  • 48. Putting It All Together
  • 49. Collect Store Analyze Consume A iOS Android Web Apps Logstash Amazon RDS Amazon DynamoDB Amazon ES Amazon S3 Apache Kafka Amazon Glacier Amazon Kinesis Amazon DynamoDB Amazon Redshift Impala Pig Amazon ML Amazon Kinesis AWS Lambda AmazonElasticMapReduce Amazon ElastiCache SearchSQLNoSQLCache StreamProcessingBatchInteractive Logging StreamStorage IoTApplications FileStorage Analysis&Visualization Hot Cold Warm Hot Slow Hot ML Fast Fast Transactional Data File Data Stream Data Notebooks Predictions Apps & APIs Mobile Apps IDE Search Data ETL Reference Architecture Streaming Amazon QuickSight
  • 51. Multi-Stage Decoupled “Data Bus” Multiple stages Storage decoupled from processing Store Process Store Process process store
  • 52. Multiple Processing Applications (or Connectors) Can Read from or Write to Multiple Data Stores Amazon Kinesis AWS Lambda Amazon DynamoDB Amazon Kinesis S3 Connector Amazon S3 process store
  • 53. Processing Frameworks (KCL, Storm, Hive, Spark, etc.) Could Read from Multiple Data Stores Amazon Kinesis AWS Lambda Amazon S3 Amazon DynamoDB Hive SparkStorm Amazon Kinesis S3 Connector process store
  • 54. Spark Streaming Apache Storm AWS Lambda KCL Amazon Redshift Spark Impala Presto Hive Amazon Redshift Hive Spark Presto Impala Amazon Kinesis Apache Kafka Amazon DynamoDB Amazon S3data Hot Cold Data Temperature ProcessingLatency Low High Answers Amazon EMR (HDFS) Hive Native KCL AWS Lambda Data Temperature vs. Processing Latency Batch
  • 56. Interactive & Batch Analytics Producer Amazon S3 Amazon EMR Hive Pig Spark Amazon ML process store Consume Amazon Redshift Amazon EMR Presto Impala Spark Batch Interactive Batch Prediction Real-time Prediction
  • 57. Batch Layer Amazon Kinesis data process store Amazon Kinesis S3 Connector Amazon S3 A p p l i c a t i o n s Amazon Redshift Amazon EMR Presto Hive Pig Spark answer Speed Layer answer Serving Layer Amazon ElastiCache Amazon DynamoDB Amazon RDS Amazon ES answer Amazon ML KCL AWS Lambda Spark Streaming Storm Lambda Architecture
  • 58. Summary Build decoupled “data bus” • Data → Store ↔ Process → Answers Use the right tool for the job • Latency, throughput, access patterns Use Lambda architecture ideas • Immutable (append-only) log, batch/speed/serving layer Leverage AWS managed services • No/low admin Be cost conscious • Big data ≠ big cost
  • 59. Thank you! Find Getting Started Guides | Tutorials | Labs aws.amazon.com/big-data