SlideShare une entreprise Scribd logo
1  sur  45
Big Data
Tap into Cloud Infrastructure with FME
March 18, 2014
Meet the presenters.
Don Murray
 President and Co-Founder
@DonAtSafe
Dean Hintz
 Senior Product Specialist
@DeanAtSafe
Ask us. And join the discussion.
Please submit using the
GoToWebinar panel.
We will follow-up with
unanswered questions.
Agenda.
 What is Big Data
 Big Data Challenges
 FME and Big Data
 FME Demos:
 Loading and Extracting from
MarkLogic
 Spatial Indexing and Loading to
DynamoDB
What we do.
www.safe.com
Poll: Which version of FME
are you using?
New to FME?
 Get your bearings from our Getting
Started Page:
www.safe.com/fme/getting-started
 Learn from our crew in one of the
weekly FME Overview webinars:
safe.com/WeeklyIntro
What is Big Data?
Big Data and Cloud
Big Data needs big resources
 Big datastores
 Big processing power
 Big bandwidth
Cloud technology gives you this for fraction of
traditional cost!
Big Data and FME
 Big Data is a new data
“classification” for FME.
 Big Data is no different than
other data to FME
 FME Cloud is a natural fit for
data in the Cloud
FME makes it easy to leverage the power of Big Data.
Big Data and FME Support
Amazon S3
 Limitless internet based
storage
Amazon RDS
 See blog article on Amazon RDS (PostGIS)
Amazon DynamoDB
 NoSQL limitless database service
Amazon RedShift
 Petabyte scale database warehouse service.
Google BigQuery
 Superfast append only tables
MarkLogic
 Large XML based database
Poll: How are you currently
working with Big Data?
Big Data Challenges
 Loading Data
 Lacks spatial support
 Big Data Analysis
 Querying and Exporting
Data
Demo #1
 MarkLogic
Demo #2
 Limitless Spatial
Database
Why Demo FME with
MarkLogic and DynamoDB?
Different from other
databases supported by
FME.
What is ?
 NoSQL database – XML optimized
 Powerful search and analysis
 Native Spatial Support
 XML based data model (GML, XML, etc.)
 Deploy on Hadoop HDFS
FME and MarkLogic – A Natural Fit
 Convert data to XML/GML*
 Easily Load XML into MarkLogic with FME
 Process and convert XML results
 FME 2014: New schema based GML Writer
Demo #1a Loading MarkLogic
Convert GIS / CAD
data to GML (XML)
Compose REST request
to PUT to MarkLogic
database
1. Convert GIS / CAD data into Valid GML
2.Generate Key Fields
3. Build insert message
4. Execute PUT REST call
MarkLogic accepts any valid XML – just PUT it!
Loading GIS to MarkLogic
Loading GIS to MarkLogic with FME
What ​Big Data technology
are you most interested in?
Demo #1b Exporting from MarkLogic
GET Query to find
URI’s for features
of interest
GET Query using URI’s to
get feature XML/GML,
then
Conversion to format of
choice (CAD, GIS …)
/WFS
Exporting XML from MarkLogic
1. Query database via GET request
2. Parse search result and compose GET feature request
3. Extract attributes and geometry from result
4. Validate and Write XML Result
Exporting XML from MarkLogic
Search GET request:
http://localhost:8003/v1/keyvalue?element=comment&value=AIXM.Chicago
Retrieval GET request:
http://localhost:8003/v1/documents?uri=/docs/myXML_653c46c3-fdfb-4837-ae1c-
49735dd29356.xml
AIXM from MarkLogic via FMEServer
http://UHURA/fmedatastreaming/Demos/QueryMarkLogicDB.fmw
?Element=airportCode&Value=CYVR
/AIXM
AIXM from MarkLogic via FMEServer
MarkLogic -> Anything
(JSON, KML, GML …)
MarkLogic to ArcGIS via FME Server:
1. Submit search to MarkLogic as described earlier
2. Extract attributes and geometry from result
3. Generate update ESRIJSON message from feature
4. Post update ESRIJSON to ArcGIS Server
MarkLogic / ArcGIS Integration
ArcGIS Server to MarkLogic
via FME Server
1. Retrive JSON data from ArcGIS Server
2. Generate output GML
3. Write data to MarkLogic via PUT REST call
ArcGIS Server to MarkLogic
Demo #2 – Limitless Spatial Database
DynamoDB
 NoSQL SSD-based database service
 No limit on size of Database
 Specify the needed performance
 Autoscale thru Dynamic DynamoDB
 Amazon EMR (Hadoop) integration
Demo # 2 – Index Strategy
Generate GeoHash Index
for each feature and
Write to
GeoHashSpatialIndex
Demo #2a – Vector, Raster, Lidar
Write small features
to DynamoDB
Write large features
to Amazon S3, link
to DynamoDB
Demo #2b – Geocoded Images
Generate Geohash record
of picture location
Write Image to S3, link
to DynamoDB
Demo #2c – Spatially Store Anything
Generate Geohash
index
Write Document to
S3 and Link to
DynamoDB
location
Demo #2d – Spatially Locate any
internet resource
Write URI Link to
DynamoDB
Generate Geohash
index
location
What data types are you
planning to store in Big Data?
Save the date.
Webinar: How to Automate Practically
Anything with FME Server (March 25th)
Webinar: How to Load Data into Google
Maps Engine (April 16th)
FME World Tour 2014 (April – June 2014)
FME International User Conference 2014
(20th Anniversary Celebration)
• June 10 – 13, 2014 in Vancouver, Canada
Free and fun to learn.
Online Courses - Live & Hands-On
 Feb 18-19: FME Desktop
Tutorials & Recorded Courses
Stay informed.
fmepedia.com/community
fmepedia.com/knowledge
@SafeSoftware
youtube.com/FMEChannel
blog.safe.com
Summary
Big Data = big new opportunities
FME great for working with Big Data
Cloud model is a natural fit for Big Data
This is just the beginning - more to come!
Hand raising has now
been enabled.
 If you’d like to ask a
question over the
air, please click the
hand icon and
ensure your audio
input is set up.
Thank you!
Sales
 info@safe.com
Support
 www.safe.com/support
 (604) 501-9985 ext. 278
Don Murray
 Don.murray@safe.com
Dean Hintz
 dean@safe.com

Contenu connexe

Tendances

Tendances (20)

Hadoop 2 cluster architecture
Hadoop 2 cluster architectureHadoop 2 cluster architecture
Hadoop 2 cluster architecture
 
When OLAP Meets Real-Time, What Happens in eBay?
When OLAP Meets Real-Time, What Happens in eBay?When OLAP Meets Real-Time, What Happens in eBay?
When OLAP Meets Real-Time, What Happens in eBay?
 
Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...
Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...
Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...
 
Producing Standardized Data Using a Master FME Workspace
Producing Standardized Data Using a Master FME WorkspaceProducing Standardized Data Using a Master FME Workspace
Producing Standardized Data Using a Master FME Workspace
 
Spark Summit EU talk by Heiko Korndorf
Spark Summit EU talk by Heiko KorndorfSpark Summit EU talk by Heiko Korndorf
Spark Summit EU talk by Heiko Korndorf
 
Presto talk @ Global AI conference 2018 Boston
Presto talk @ Global AI conference 2018 BostonPresto talk @ Global AI conference 2018 Boston
Presto talk @ Global AI conference 2018 Boston
 
Back to FME School - Day 1: Your Data and FME
Back to FME School - Day 1: Your Data and FMEBack to FME School - Day 1: Your Data and FME
Back to FME School - Day 1: Your Data and FME
 
Introduction to Data Engineer and Data Pipeline at Credit OK
Introduction to Data Engineer and Data Pipeline at Credit OKIntroduction to Data Engineer and Data Pipeline at Credit OK
Introduction to Data Engineer and Data Pipeline at Credit OK
 
Lessons From Officeworks on Optimising Persistent Storage on AWS (Sponsored b...
Lessons From Officeworks on Optimising Persistent Storage on AWS (Sponsored b...Lessons From Officeworks on Optimising Persistent Storage on AWS (Sponsored b...
Lessons From Officeworks on Optimising Persistent Storage on AWS (Sponsored b...
 
Apache Iceberg - A Table Format for Hige Analytic Datasets
Apache Iceberg - A Table Format for Hige Analytic DatasetsApache Iceberg - A Table Format for Hige Analytic Datasets
Apache Iceberg - A Table Format for Hige Analytic Datasets
 
Presto@Netflix Presto Meetup 03-19-15
Presto@Netflix Presto Meetup 03-19-15Presto@Netflix Presto Meetup 03-19-15
Presto@Netflix Presto Meetup 03-19-15
 
Ch-Ch-Ch-Ch-Changes: Taking Your MongoDB Stitch Application to the Next Level...
Ch-Ch-Ch-Ch-Changes: Taking Your MongoDB Stitch Application to the Next Level...Ch-Ch-Ch-Ch-Changes: Taking Your MongoDB Stitch Application to the Next Level...
Ch-Ch-Ch-Ch-Changes: Taking Your MongoDB Stitch Application to the Next Level...
 
InfluxDB 2.0: Dashboarding 101 by David G. Simmons
InfluxDB 2.0: Dashboarding 101 by David G. SimmonsInfluxDB 2.0: Dashboarding 101 by David G. Simmons
InfluxDB 2.0: Dashboarding 101 by David G. Simmons
 
Bring Satellite and Drone Imagery into your Data Science Workflows
Bring Satellite and Drone Imagery into your Data Science WorkflowsBring Satellite and Drone Imagery into your Data Science Workflows
Bring Satellite and Drone Imagery into your Data Science Workflows
 
Tailored for Spark
Tailored for SparkTailored for Spark
Tailored for Spark
 
Data Warehousing with Spark Streaming at Zalando
Data Warehousing with Spark Streaming at ZalandoData Warehousing with Spark Streaming at Zalando
Data Warehousing with Spark Streaming at Zalando
 
Graph Processing with Apache TinkerPop
Graph Processing with Apache TinkerPopGraph Processing with Apache TinkerPop
Graph Processing with Apache TinkerPop
 
Presto Summit 2018 - 03 - Starburst CBO
Presto Summit 2018  - 03 - Starburst CBOPresto Summit 2018  - 03 - Starburst CBO
Presto Summit 2018 - 03 - Starburst CBO
 
Key Challenges in Cloud Computing and How Yahoo! is Approaching Them
Key Challenges in Cloud Computing and How Yahoo! is Approaching ThemKey Challenges in Cloud Computing and How Yahoo! is Approaching Them
Key Challenges in Cloud Computing and How Yahoo! is Approaching Them
 
Powering Custom Apps at Facebook using Spark Script Transformation
Powering Custom Apps at Facebook using Spark Script TransformationPowering Custom Apps at Facebook using Spark Script Transformation
Powering Custom Apps at Facebook using Spark Script Transformation
 

Similaire à Big Data – Tap into Cloud Infrastructure with FME

Taste Test: FME 2011 & Beyond
Taste Test: FME 2011 & BeyondTaste Test: FME 2011 & Beyond
Taste Test: FME 2011 & Beyond
Safe Software
 
Cloud Revolution: Exploring the New Wave of Serverless Spatial Data
Cloud Revolution: Exploring the New Wave of Serverless Spatial DataCloud Revolution: Exploring the New Wave of Serverless Spatial Data
Cloud Revolution: Exploring the New Wave of Serverless Spatial Data
Safe Software
 

Similaire à Big Data – Tap into Cloud Infrastructure with FME (20)

Deep Dive into FME Desktop 2014
Deep Dive into FME Desktop 2014Deep Dive into FME Desktop 2014
Deep Dive into FME Desktop 2014
 
Taste Test: FME 2011 & Beyond
Taste Test: FME 2011 & BeyondTaste Test: FME 2011 & Beyond
Taste Test: FME 2011 & Beyond
 
FME, The Tool to Use When Standing Up a New Fiber Utility
FME, The Tool to Use When Standing Up a New Fiber UtilityFME, The Tool to Use When Standing Up a New Fiber Utility
FME, The Tool to Use When Standing Up a New Fiber Utility
 
FME World Tour 2015 - Around the World - Ken Bragg
FME World Tour 2015 - Around the World - Ken BraggFME World Tour 2015 - Around the World - Ken Bragg
FME World Tour 2015 - Around the World - Ken Bragg
 
Improve Data Exchange in Intergraph Using FME
Improve Data Exchange in Intergraph Using FMEImprove Data Exchange in Intergraph Using FME
Improve Data Exchange in Intergraph Using FME
 
Data in the Real World: FME AR and FME Data Express
Data in the Real World: FME AR and FME Data ExpressData in the Real World: FME AR and FME Data Express
Data in the Real World: FME AR and FME Data Express
 
FME 2022.0: Driving Data Decisions, Fueling Innovation
FME 2022.0: Driving Data Decisions, Fueling InnovationFME 2022.0: Driving Data Decisions, Fueling Innovation
FME 2022.0: Driving Data Decisions, Fueling Innovation
 
Ibm db2 big sql
Ibm db2 big sqlIbm db2 big sql
Ibm db2 big sql
 
How to Exchange Data between CAD and GIS
How to Exchange Data between CAD and GISHow to Exchange Data between CAD and GIS
How to Exchange Data between CAD and GIS
 
How to Efficiently Transform Non-Spatial Data using FME
How to Efficiently Transform Non-Spatial Data using FMEHow to Efficiently Transform Non-Spatial Data using FME
How to Efficiently Transform Non-Spatial Data using FME
 
How to Transform Data between AutoCAD and GIS
How to Transform Data between AutoCAD and GISHow to Transform Data between AutoCAD and GIS
How to Transform Data between AutoCAD and GIS
 
Still on IBM BigInsights? We have the right path for you
Still on IBM BigInsights? We have the right path for youStill on IBM BigInsights? We have the right path for you
Still on IBM BigInsights? We have the right path for you
 
Efficiently Implementing INSPIRE & Creating INSPIRE Mashups with FME
Efficiently Implementing INSPIRE & Creating INSPIRE Mashups with FMEEfficiently Implementing INSPIRE & Creating INSPIRE Mashups with FME
Efficiently Implementing INSPIRE & Creating INSPIRE Mashups with FME
 
Deep Dive into FME Desktop 2018
Deep Dive into FME Desktop 2018Deep Dive into FME Desktop 2018
Deep Dive into FME Desktop 2018
 
Automating Enterprise Workflows with FME Server
 Automating Enterprise Workflows with FME Server Automating Enterprise Workflows with FME Server
Automating Enterprise Workflows with FME Server
 
Migration DB2 to EDB - Project Experience
 Migration DB2 to EDB - Project Experience Migration DB2 to EDB - Project Experience
Migration DB2 to EDB - Project Experience
 
Data Integration Solutions for Airports
Data Integration Solutions for AirportsData Integration Solutions for Airports
Data Integration Solutions for Airports
 
Unveiling FME 2018
Unveiling FME 2018Unveiling FME 2018
Unveiling FME 2018
 
FME Around the World
FME Around the WorldFME Around the World
FME Around the World
 
Cloud Revolution: Exploring the New Wave of Serverless Spatial Data
Cloud Revolution: Exploring the New Wave of Serverless Spatial DataCloud Revolution: Exploring the New Wave of Serverless Spatial Data
Cloud Revolution: Exploring the New Wave of Serverless Spatial Data
 

Plus de Safe Software

Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration WorkflowsIgniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Safe Software
 
Introducing the New FME Community Webinar - Feb 21, 2024 (2).pdf
Introducing the New FME Community Webinar - Feb 21, 2024 (2).pdfIntroducing the New FME Community Webinar - Feb 21, 2024 (2).pdf
Introducing the New FME Community Webinar - Feb 21, 2024 (2).pdf
Safe Software
 
Cloud Revolution: Exploring the New Wave of Serverless Spatial Data
Cloud Revolution: Exploring the New Wave of Serverless Spatial DataCloud Revolution: Exploring the New Wave of Serverless Spatial Data
Cloud Revolution: Exploring the New Wave of Serverless Spatial Data
Safe Software
 
Taking Off with FME: Elevating Airport Operations to New Heights
Taking Off with FME: Elevating Airport Operations to New HeightsTaking Off with FME: Elevating Airport Operations to New Heights
Taking Off with FME: Elevating Airport Operations to New Heights
Safe Software
 
Initiating and Advancing Your Strategic GIS Governance Strategy
Initiating and Advancing Your Strategic GIS Governance StrategyInitiating and Advancing Your Strategic GIS Governance Strategy
Initiating and Advancing Your Strategic GIS Governance Strategy
Safe Software
 
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration Workflows Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Safe Software
 
Geospatial Synergy: Amplifying Efficiency with FME & Esri ft. Peak Guest Spea...
Geospatial Synergy: Amplifying Efficiency with FME & Esri ft. Peak Guest Spea...Geospatial Synergy: Amplifying Efficiency with FME & Esri ft. Peak Guest Spea...
Geospatial Synergy: Amplifying Efficiency with FME & Esri ft. Peak Guest Spea...
Safe Software
 

Plus de Safe Software (20)

Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action:  Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action:  Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
 
Powering Real-Time Decisions with Continuous Data Streams
Powering Real-Time Decisions with Continuous Data StreamsPowering Real-Time Decisions with Continuous Data Streams
Powering Real-Time Decisions with Continuous Data Streams
 
The Critical Role of Spatial Data in Today's Data Ecosystem
The Critical Role of Spatial Data in Today's Data EcosystemThe Critical Role of Spatial Data in Today's Data Ecosystem
The Critical Role of Spatial Data in Today's Data Ecosystem
 
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration WorkflowsIgniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
 
The Zero-ETL Approach: Enhancing Data Agility and Insight
The Zero-ETL Approach: Enhancing Data Agility and InsightThe Zero-ETL Approach: Enhancing Data Agility and Insight
The Zero-ETL Approach: Enhancing Data Agility and Insight
 
Mastering MicroStation DGN: How to Integrate CAD and GIS
Mastering MicroStation DGN: How to Integrate CAD and GISMastering MicroStation DGN: How to Integrate CAD and GIS
Mastering MicroStation DGN: How to Integrate CAD and GIS
 
Geospatial Synergy: Amplifying Efficiency with FME & Esri
Geospatial Synergy: Amplifying Efficiency with FME & EsriGeospatial Synergy: Amplifying Efficiency with FME & Esri
Geospatial Synergy: Amplifying Efficiency with FME & Esri
 
Introducing the New FME Community Webinar - Feb 21, 2024 (2).pdf
Introducing the New FME Community Webinar - Feb 21, 2024 (2).pdfIntroducing the New FME Community Webinar - Feb 21, 2024 (2).pdf
Introducing the New FME Community Webinar - Feb 21, 2024 (2).pdf
 
Breaking Barriers & Leveraging the Latest Developments in AI Technology
Breaking Barriers & Leveraging the Latest Developments in AI TechnologyBreaking Barriers & Leveraging the Latest Developments in AI Technology
Breaking Barriers & Leveraging the Latest Developments in AI Technology
 
Best Practices to Navigating Data and Application Integration for the Enterpr...
Best Practices to Navigating Data and Application Integration for the Enterpr...Best Practices to Navigating Data and Application Integration for the Enterpr...
Best Practices to Navigating Data and Application Integration for the Enterpr...
 
Cloud Revolution: Exploring the New Wave of Serverless Spatial Data
Cloud Revolution: Exploring the New Wave of Serverless Spatial DataCloud Revolution: Exploring the New Wave of Serverless Spatial Data
Cloud Revolution: Exploring the New Wave of Serverless Spatial Data
 
New Year's Fireside Chat with Safe Software’s Founders
New Year's Fireside Chat with Safe Software’s FoundersNew Year's Fireside Chat with Safe Software’s Founders
New Year's Fireside Chat with Safe Software’s Founders
 
Taking Off with FME: Elevating Airport Operations to New Heights
Taking Off with FME: Elevating Airport Operations to New HeightsTaking Off with FME: Elevating Airport Operations to New Heights
Taking Off with FME: Elevating Airport Operations to New Heights
 
Initiating and Advancing Your Strategic GIS Governance Strategy
Initiating and Advancing Your Strategic GIS Governance StrategyInitiating and Advancing Your Strategic GIS Governance Strategy
Initiating and Advancing Your Strategic GIS Governance Strategy
 
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration Workflows Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
 
Geospatial Synergy: Amplifying Efficiency with FME & Esri ft. Peak Guest Spea...
Geospatial Synergy: Amplifying Efficiency with FME & Esri ft. Peak Guest Spea...Geospatial Synergy: Amplifying Efficiency with FME & Esri ft. Peak Guest Spea...
Geospatial Synergy: Amplifying Efficiency with FME & Esri ft. Peak Guest Spea...
 
Mastering DevOps-Driven Data Integration with FME
Mastering DevOps-Driven Data Integration with FMEMastering DevOps-Driven Data Integration with FME
Mastering DevOps-Driven Data Integration with FME
 

Dernier

+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
?#DUbAI#??##{{(☎️+971_581248768%)**%*]'#abortion pills for sale in dubai@
 

Dernier (20)

presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
 
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
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
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
 
Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
HTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation StrategiesHTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation Strategies
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
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...
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
 

Big Data – Tap into Cloud Infrastructure with FME

  • 1. Big Data Tap into Cloud Infrastructure with FME March 18, 2014
  • 2. Meet the presenters. Don Murray  President and Co-Founder @DonAtSafe Dean Hintz  Senior Product Specialist @DeanAtSafe
  • 3. Ask us. And join the discussion. Please submit using the GoToWebinar panel. We will follow-up with unanswered questions.
  • 4. Agenda.  What is Big Data  Big Data Challenges  FME and Big Data  FME Demos:  Loading and Extracting from MarkLogic  Spatial Indexing and Loading to DynamoDB
  • 5.
  • 7. Poll: Which version of FME are you using?
  • 8. New to FME?  Get your bearings from our Getting Started Page: www.safe.com/fme/getting-started  Learn from our crew in one of the weekly FME Overview webinars: safe.com/WeeklyIntro
  • 9. What is Big Data?
  • 10. Big Data and Cloud Big Data needs big resources  Big datastores  Big processing power  Big bandwidth Cloud technology gives you this for fraction of traditional cost!
  • 11. Big Data and FME  Big Data is a new data “classification” for FME.  Big Data is no different than other data to FME  FME Cloud is a natural fit for data in the Cloud FME makes it easy to leverage the power of Big Data.
  • 12. Big Data and FME Support Amazon S3  Limitless internet based storage Amazon RDS  See blog article on Amazon RDS (PostGIS) Amazon DynamoDB  NoSQL limitless database service Amazon RedShift  Petabyte scale database warehouse service. Google BigQuery  Superfast append only tables MarkLogic  Large XML based database
  • 13. Poll: How are you currently working with Big Data?
  • 14. Big Data Challenges  Loading Data  Lacks spatial support  Big Data Analysis  Querying and Exporting Data
  • 15. Demo #1  MarkLogic Demo #2  Limitless Spatial Database
  • 16. Why Demo FME with MarkLogic and DynamoDB? Different from other databases supported by FME.
  • 17. What is ?  NoSQL database – XML optimized  Powerful search and analysis  Native Spatial Support  XML based data model (GML, XML, etc.)  Deploy on Hadoop HDFS
  • 18. FME and MarkLogic – A Natural Fit  Convert data to XML/GML*  Easily Load XML into MarkLogic with FME  Process and convert XML results  FME 2014: New schema based GML Writer
  • 19. Demo #1a Loading MarkLogic Convert GIS / CAD data to GML (XML) Compose REST request to PUT to MarkLogic database
  • 20. 1. Convert GIS / CAD data into Valid GML 2.Generate Key Fields 3. Build insert message 4. Execute PUT REST call MarkLogic accepts any valid XML – just PUT it! Loading GIS to MarkLogic
  • 21. Loading GIS to MarkLogic with FME
  • 22. What ​Big Data technology are you most interested in?
  • 23. Demo #1b Exporting from MarkLogic GET Query to find URI’s for features of interest GET Query using URI’s to get feature XML/GML, then Conversion to format of choice (CAD, GIS …) /WFS
  • 24. Exporting XML from MarkLogic 1. Query database via GET request 2. Parse search result and compose GET feature request 3. Extract attributes and geometry from result 4. Validate and Write XML Result
  • 25. Exporting XML from MarkLogic Search GET request: http://localhost:8003/v1/keyvalue?element=comment&value=AIXM.Chicago Retrieval GET request: http://localhost:8003/v1/documents?uri=/docs/myXML_653c46c3-fdfb-4837-ae1c- 49735dd29356.xml
  • 26. AIXM from MarkLogic via FMEServer http://UHURA/fmedatastreaming/Demos/QueryMarkLogicDB.fmw ?Element=airportCode&Value=CYVR /AIXM
  • 27. AIXM from MarkLogic via FMEServer
  • 29. MarkLogic to ArcGIS via FME Server: 1. Submit search to MarkLogic as described earlier 2. Extract attributes and geometry from result 3. Generate update ESRIJSON message from feature 4. Post update ESRIJSON to ArcGIS Server MarkLogic / ArcGIS Integration
  • 30. ArcGIS Server to MarkLogic via FME Server 1. Retrive JSON data from ArcGIS Server 2. Generate output GML 3. Write data to MarkLogic via PUT REST call
  • 31. ArcGIS Server to MarkLogic
  • 32. Demo #2 – Limitless Spatial Database
  • 33. DynamoDB  NoSQL SSD-based database service  No limit on size of Database  Specify the needed performance  Autoscale thru Dynamic DynamoDB  Amazon EMR (Hadoop) integration
  • 34. Demo # 2 – Index Strategy Generate GeoHash Index for each feature and Write to GeoHashSpatialIndex
  • 35. Demo #2a – Vector, Raster, Lidar Write small features to DynamoDB Write large features to Amazon S3, link to DynamoDB
  • 36. Demo #2b – Geocoded Images Generate Geohash record of picture location Write Image to S3, link to DynamoDB
  • 37. Demo #2c – Spatially Store Anything Generate Geohash index Write Document to S3 and Link to DynamoDB location
  • 38. Demo #2d – Spatially Locate any internet resource Write URI Link to DynamoDB Generate Geohash index location
  • 39. What data types are you planning to store in Big Data?
  • 40. Save the date. Webinar: How to Automate Practically Anything with FME Server (March 25th) Webinar: How to Load Data into Google Maps Engine (April 16th) FME World Tour 2014 (April – June 2014) FME International User Conference 2014 (20th Anniversary Celebration) • June 10 – 13, 2014 in Vancouver, Canada
  • 41. Free and fun to learn. Online Courses - Live & Hands-On  Feb 18-19: FME Desktop Tutorials & Recorded Courses
  • 43. Summary Big Data = big new opportunities FME great for working with Big Data Cloud model is a natural fit for Big Data This is just the beginning - more to come!
  • 44. Hand raising has now been enabled.  If you’d like to ask a question over the air, please click the hand icon and ensure your audio input is set up.
  • 45. Thank you! Sales  info@safe.com Support  www.safe.com/support  (604) 501-9985 ext. 278 Don Murray  Don.murray@safe.com Dean Hintz  dean@safe.com

Notes de l'éditeur

  1. Video plays here - what is big dataFuzzy term sort of like “cloud”. What does big data look like?As a catch-all term, “big data” can be pretty nebulous, in the same way that the term “cloud” covers diverse technologies. Input data to big data systems could be chatter from social networks, web server logs, traffic flow sensors, satellite imagery, broadcast audio streams, banking transactions, MP3s of rock music, the content of web pages, scans of government documents, GPS trails, telemetry from automobiles, financial market data, the list goes on. Are these all really the same thing? To clarify matters, the three Vs of volume, velocity and variety are commonly used to characterize different aspects of big data. They’re a helpful lens through which to view and understand the nature of the data and the software platforms available to exploit them. Most probably you will contend with each of the Vs to one degree or another.
  2. Big data holds all of it
  3. - on premise - cloud (amazon web services) - cloud (google) - cloud (other) - not currently using Big Data
  4. Loading DataConversion: big data not spatial friendly (CAD, GIS)Expensive to upload / downloadGeoreferencing and spatial indexingmost big data repositories have limited geospatialBig Data AnalysisQuerying and Exporting DataTricky to find and access stored dataNeed to generate appropriate keys on load
  5. Loading DataConversion: big data not spatial friendly (CAD, GIS)Expensive to upload / downloadGeoreferencing and spatial indexingmost big data repositories have limited geospatialBig Data AnalysisQuerying and Exporting DataTricky to find and access stored dataNeed to generate appropriate keys on load
  6. Loading DataConversion: big data not spatial friendly (CAD, GIS)Expensive to upload / downloadGeoreferencing and spatial indexingmost big data repositories have limited geospatialBig Data AnalysisQuerying and Exporting DataTricky to find and access stored dataNeed to generate appropriate keys on load
  7. Big data repository – scale as big as you wantNoSQL database – optimized for XML / GMLPowerful search and analysis (BI, semantic queries)Stores location, not just geohashXML based data model – rapid XML exportStore any documents: GML, XML (metadata)Deploy on Hadoop HDFS
  8. * As applicable (e.g. cant convert raster to gml!)FME2014’s new schema based GML writer which allows FME to convert almost any CAD / GIS or even BIM data to GML or CityGML. This makes FME a very powerful loader tool for MarkLogicFME - A Natural Fit to support MarkLogic:Converts almost any spatial data to GMLWrite almost any XML with XMLTemplaterLoading XML into MarkLogic is a simple HTTP PUT operation easily done with HTTPUploaderQuery, process and reconvert XML results
  9. Converting features to GML/XML usually involves a GeometryExtractor transformer or some combination of CoordinateExtractor and XMLTemplaterKey fields can be captured from the source data or use UUIDGenerator to generate unique IDs for URIs etc.Build insert message with XMLTemplaterExecute REST PUT call with HTTPUploader
  10. Converting features to GML/XML usually involves a GeometryExtractor transformer or some combination of CoordinateExtractor and XMLTemplaterKey fields can be captured from the source data or use UUIDGenerator to generate unique IDs for URIs etc.Build insert message with XMLTemplaterExecute REST PUT call with HTTPUploader<?xml version="1.0" encoding="UTF-8"?><xml><docID>{fme:get-attribute("_uuid")}</docID><docAuthor>{fme:get-attribute("user")}</docAuthor><modType>{fme:get-attribute("updateType")}</modType><UpdateDate>{fme:get-attribute("_timestamp")}</UpdateDate><filePath>{fme:get-attribute("filePath")}</filePath><comment>{fme:get-attribute("comment")}</comment><doc_xml>{fme:get-xml-attribute("_file_contents")}</doc_xml></xml>
  11. As simple as 1,2,3,4!
  12. - on premise - cloud (amazon web services) - cloud (google) - cloud (other) - not currently using Big Data
  13. * need bubble here for XML/WFS – maybe a circle with something like this in it:<gml:featureMember> <gn:NamedPlacegml:id=“abc.123"> <gn:geometry> <gml:Pointgml:id=“p.abc.123" srsName="EPSG:4258"><gml:pos>15.2 36.7</gml:pos> </gml:Point> </gn:geometry>…
  14. This workspace can support the retrieval of any type of XML/GML regardless of schema. The same query workspace can be used to retrieve AIXM, INSPIRE or any other type of XML/GML.StringConcatenator composes search GET request based on input parametersHTTPFetcher sends search GET request to MarkLogicXMLFlattener flattens the response so result.uri can be exposedSecond StringConcatenatorcomposes document GET request based on matching URISecond HTTPFetcher sends document retrieval GET request to MarkLogicXMLFragmenter pulls out the doc_xml from the MarkLogic responseXML writer outputs the XML as a file or streams it to the FMEServer client once workspace is publishedSearch GET request to find URI based on query:http://localhost:8003/v1/keyvalue?element=comment&value=AIXM.ChicagoDocument Retrieval GET request based on URI:http://localhost:8003/v1/documents?uri=/docs/myXML_653c46c3-fdfb-4837-ae1c-49735dd29356.xml
  15. For this demo the previous workspace was published to FME Server to make a feature service hosted by FMEServer on top of MarkLogic. The example here supports a simple REST based XML data stream.We could easily use this approach to build a FMEServer hosted WFS on top of MarkLogic.
  16. This demo shows Inspector reading AIXM5 GML directly from the GET query: http://UHURA/fmedatastreaming/Demos/QueryMarkLogicDB.fmw?Element=airportCode&Value=CYVRThe query goes to FMEServer’s data streaming serviceFMEServer uses the URL parameters to run the published QueryMarkLogicDB.fmw workspace.QueryMarkLogicDB.fmw uses the values of Element and Value to build a search request and send that to MarkLogicQueryMarkLogicDB.fmw uses the URI from MarkLogic’s search result to compose and submit a document request to MarkLogicQueryMarkLogicDB.fmw extracts the feature XML from the MarkLogic’s document response and streams it back to the FMEServer client
  17. This just shows how FME can read XML from MarkLogic and use the GeometryReplacer to covert it to virtually any format FME supports
  18. Shows how FME can be used to integrateMarkLogic and ArcGIS Server.These are the steps to move data from MarkLogic to Arc Server Feature Service
  19. Shows how FME can be used to integrateMarkLogic and ArcGIS Server.These are the steps to move data from Arc Server Feature Service to MarkLogic. Note this workflow could be event driven, real time or as a scheduled update.
  20. Workspace showing data flow from ArcServer toMarkLogic. REST call to feature service retrieves the feature of interest.JSON is extracted and GeometryReplacer generates an FME geometry from it.GeometryExtractor renders the FME geometry as GMLGML is added to an XML update message and posted to MarkLogic
  21. Demo #2 Limitless Spatial Indexed Database:Geohash spatial indexStore Vector DataStore Raster DataStore Lidar DataStore geotagged images by locationStore and associate any document with a location
  22. - on premise - cloud (amazon web services) - cloud (google) - cloud (other) - not currently using Big Data