SlideShare a Scribd company logo
1 of 20
Download to read offline
How to
Migrate to GraphDB
in 10 easy to follow steps
1
Getting an
integrated view
of enterprise
data is
paramount to
taking the right
action in our
data-driven
world.
M a k i n g s e n s e o f t e x t a n d d a t a
2
And this is
exactly what
GraphDB is built for.
3
It’s purpose is
to help organizations
“know” more and
do more with data.
Developed with the view to
handle data only once, GraphDB
is a future-proof system for
managing your data.
4
Legacy data, master data, open data, third-party data, no matter what
type, GraphDB offers a single entry point to all this knowledge,
unleashing the power of data integration.
5
6
It operates like
a smart brain on top
of legacy systems,
capable of bringing
meaning to your data
from diverse external
datasets. Getting this
smart brain for your
enterprise data
is now easier.
7
It takes only 10 steps
8
Welcome to our GraphDB Migration Service!
It’s an A-Z service that will help you prepare for
migrating your data to GraphDB, walking you
through the setup, and monitoring the
performance of your systems.
[Instituting GraphDB as your new RDF database technology is simple, even if you
already have other RDF database in place.]
9
Step 1: Validate Data Modeling
We will help you
analyze your current data
modeling and validate
if it is optimal.
10
Step 2: Profile Slow Queries This is where we will analyze
slow running client queries for
potential optimizations.
We will export your data from the
previous database and prepare it for
import in GraphDB.
11
Step 3: Export Data
12
In this step of the
migration process, you
will be selecting the most
suitable infrastructure for
optimal performance and
then installing GraphDB
on an infrastructure of
choice.
Step 5: Optimize Setup
Step 4: Setup GraphDB
Here, GraphDB setup will
be optimized for the
expected client use.
Step 6: Import Data
13
The data that have been exported from your earlier database will
now be imported into the new GraphDB instance.
Step 7: Analyze “Slow Queries”
14
The previously slow running queries (detected in Step 2) will be
analyzed again on the new GraphDB instance.
Step 8: Optimize Queries for Performance
15
The slow running queries will be rewritten so that you can take
advantage of the strengths of GraphDB’s query optimizer.
Step 9: Monitor Repository Performance for a Month
15
This is where GraphDB’s performance
will be closely monitored and the
product will be tweaked for optimal
performance with the new setup and
potential new user behavior and
workflow.
Step 10: Free Support for a Month
16
In this final stage of the migration process, we will be tackling all
issues and incidents for a month to make sure the setup is stable
and performant.
17
Take the first step today!
Call us and tell us about your specific business
case so that we can assist you in solving your data
challenges.
ontotext.com/migration-service-processes/
www.ontotext.com
You can also reach us via email at
info@ontotext.com
and directly by calling
1-866-972-6686 (North America),
or +359 2 974 61 60 (Europe)
Ready to know more and do more with data?

More Related Content

What's hot

Using a Semantic and Graph-based Data Catalog in a Modern Data Fabric
Using a Semantic and Graph-based Data Catalog in a Modern Data FabricUsing a Semantic and Graph-based Data Catalog in a Modern Data Fabric
Using a Semantic and Graph-based Data Catalog in a Modern Data FabricCambridge Semantics
 
Using Cloud Automation Technologies to Deliver an Enterprise Data Fabric
Using Cloud Automation Technologies to Deliver an Enterprise Data FabricUsing Cloud Automation Technologies to Deliver an Enterprise Data Fabric
Using Cloud Automation Technologies to Deliver an Enterprise Data FabricCambridge Semantics
 
AnzoGraph DB: Driving AI and Machine Insights with Knowledge Graphs in a Conn...
AnzoGraph DB: Driving AI and Machine Insights with Knowledge Graphs in a Conn...AnzoGraph DB: Driving AI and Machine Insights with Knowledge Graphs in a Conn...
AnzoGraph DB: Driving AI and Machine Insights with Knowledge Graphs in a Conn...Cambridge Semantics
 
On Performance Under Hotspots in Hadoop versus Bigdata Replay Platforms
On Performance Under Hotspots in Hadoop versus Bigdata Replay PlatformsOn Performance Under Hotspots in Hadoop versus Bigdata Replay Platforms
On Performance Under Hotspots in Hadoop versus Bigdata Replay PlatformsTokyo University of Science
 
Paris Spark Meetup - Trifacta - 03_04_2017
Paris Spark Meetup - Trifacta - 03_04_2017Paris Spark Meetup - Trifacta - 03_04_2017
Paris Spark Meetup - Trifacta - 03_04_2017Modern Data Stack France
 
Hadoop and Big Data Analytics | Sysfore
Hadoop and Big Data Analytics | SysforeHadoop and Big Data Analytics | Sysfore
Hadoop and Big Data Analytics | SysforeSysfore Technologies
 
Fireside Chat with Bloor Research: State of the Graph Database Market 2020
Fireside Chat with Bloor Research: State of the Graph Database Market 2020Fireside Chat with Bloor Research: State of the Graph Database Market 2020
Fireside Chat with Bloor Research: State of the Graph Database Market 2020Cambridge Semantics
 
Risk Analytics Using Knowledge Graphs / FIBO with Deep Learning
Risk Analytics Using Knowledge Graphs / FIBO with Deep LearningRisk Analytics Using Knowledge Graphs / FIBO with Deep Learning
Risk Analytics Using Knowledge Graphs / FIBO with Deep LearningCambridge Semantics
 
Big data (4Vs,history,concept,algorithm) analysis and applications #bigdata #...
Big data (4Vs,history,concept,algorithm) analysis and applications #bigdata #...Big data (4Vs,history,concept,algorithm) analysis and applications #bigdata #...
Big data (4Vs,history,concept,algorithm) analysis and applications #bigdata #...yashbheda
 
Future of big data nick kabra speaker compendium march 2013
Future of big data nick kabra speaker compendium march 2013Future of big data nick kabra speaker compendium march 2013
Future of big data nick kabra speaker compendium march 2013nkabra
 
How to visualize Cosmos DB graph data
How to visualize Cosmos DB graph dataHow to visualize Cosmos DB graph data
How to visualize Cosmos DB graph dataLinkurious
 
Graph-driven Data Integration: Accelerating and Automating Data Delivery for ...
Graph-driven Data Integration: Accelerating and Automating Data Delivery for ...Graph-driven Data Integration: Accelerating and Automating Data Delivery for ...
Graph-driven Data Integration: Accelerating and Automating Data Delivery for ...Cambridge Semantics
 
Graph-based Product Lifecycle Management
Graph-based Product Lifecycle ManagementGraph-based Product Lifecycle Management
Graph-based Product Lifecycle ManagementLinkurious
 
Big data peresintaion
Big data peresintaion Big data peresintaion
Big data peresintaion ahmed alshikh
 
LendingClub RealTime BigData Platform with Oracle GoldenGate
LendingClub RealTime BigData Platform with Oracle GoldenGateLendingClub RealTime BigData Platform with Oracle GoldenGate
LendingClub RealTime BigData Platform with Oracle GoldenGateRajit Saha
 
Self Service Analytics at Twitch
Self Service Analytics at TwitchSelf Service Analytics at Twitch
Self Service Analytics at TwitchImply
 

What's hot (20)

Data science big data and analytics
Data science big data and analyticsData science big data and analytics
Data science big data and analytics
 
Using a Semantic and Graph-based Data Catalog in a Modern Data Fabric
Using a Semantic and Graph-based Data Catalog in a Modern Data FabricUsing a Semantic and Graph-based Data Catalog in a Modern Data Fabric
Using a Semantic and Graph-based Data Catalog in a Modern Data Fabric
 
Using Cloud Automation Technologies to Deliver an Enterprise Data Fabric
Using Cloud Automation Technologies to Deliver an Enterprise Data FabricUsing Cloud Automation Technologies to Deliver an Enterprise Data Fabric
Using Cloud Automation Technologies to Deliver an Enterprise Data Fabric
 
AnzoGraph DB: Driving AI and Machine Insights with Knowledge Graphs in a Conn...
AnzoGraph DB: Driving AI and Machine Insights with Knowledge Graphs in a Conn...AnzoGraph DB: Driving AI and Machine Insights with Knowledge Graphs in a Conn...
AnzoGraph DB: Driving AI and Machine Insights with Knowledge Graphs in a Conn...
 
Big data landscape
Big data landscapeBig data landscape
Big data landscape
 
On Performance Under Hotspots in Hadoop versus Bigdata Replay Platforms
On Performance Under Hotspots in Hadoop versus Bigdata Replay PlatformsOn Performance Under Hotspots in Hadoop versus Bigdata Replay Platforms
On Performance Under Hotspots in Hadoop versus Bigdata Replay Platforms
 
Paris Spark Meetup - Trifacta - 03_04_2017
Paris Spark Meetup - Trifacta - 03_04_2017Paris Spark Meetup - Trifacta - 03_04_2017
Paris Spark Meetup - Trifacta - 03_04_2017
 
Hadoop and Big Data Analytics | Sysfore
Hadoop and Big Data Analytics | SysforeHadoop and Big Data Analytics | Sysfore
Hadoop and Big Data Analytics | Sysfore
 
Fireside Chat with Bloor Research: State of the Graph Database Market 2020
Fireside Chat with Bloor Research: State of the Graph Database Market 2020Fireside Chat with Bloor Research: State of the Graph Database Market 2020
Fireside Chat with Bloor Research: State of the Graph Database Market 2020
 
Risk Analytics Using Knowledge Graphs / FIBO with Deep Learning
Risk Analytics Using Knowledge Graphs / FIBO with Deep LearningRisk Analytics Using Knowledge Graphs / FIBO with Deep Learning
Risk Analytics Using Knowledge Graphs / FIBO with Deep Learning
 
Big data (4Vs,history,concept,algorithm) analysis and applications #bigdata #...
Big data (4Vs,history,concept,algorithm) analysis and applications #bigdata #...Big data (4Vs,history,concept,algorithm) analysis and applications #bigdata #...
Big data (4Vs,history,concept,algorithm) analysis and applications #bigdata #...
 
Future of big data nick kabra speaker compendium march 2013
Future of big data nick kabra speaker compendium march 2013Future of big data nick kabra speaker compendium march 2013
Future of big data nick kabra speaker compendium march 2013
 
How to visualize Cosmos DB graph data
How to visualize Cosmos DB graph dataHow to visualize Cosmos DB graph data
How to visualize Cosmos DB graph data
 
Graph-driven Data Integration: Accelerating and Automating Data Delivery for ...
Graph-driven Data Integration: Accelerating and Automating Data Delivery for ...Graph-driven Data Integration: Accelerating and Automating Data Delivery for ...
Graph-driven Data Integration: Accelerating and Automating Data Delivery for ...
 
Graph-based Product Lifecycle Management
Graph-based Product Lifecycle ManagementGraph-based Product Lifecycle Management
Graph-based Product Lifecycle Management
 
Big data peresintaion
Big data peresintaion Big data peresintaion
Big data peresintaion
 
Big Data Landscape 2016
Big Data Landscape 2016Big Data Landscape 2016
Big Data Landscape 2016
 
Big Data
Big DataBig Data
Big Data
 
LendingClub RealTime BigData Platform with Oracle GoldenGate
LendingClub RealTime BigData Platform with Oracle GoldenGateLendingClub RealTime BigData Platform with Oracle GoldenGate
LendingClub RealTime BigData Platform with Oracle GoldenGate
 
Self Service Analytics at Twitch
Self Service Analytics at TwitchSelf Service Analytics at Twitch
Self Service Analytics at Twitch
 

Similar to How to migrate to GraphDB in 10 easy to follow steps

Artur Borycki - Beyond Lambda - how to get from logical to physical - code.ta...
Artur Borycki - Beyond Lambda - how to get from logical to physical - code.ta...Artur Borycki - Beyond Lambda - how to get from logical to physical - code.ta...
Artur Borycki - Beyond Lambda - how to get from logical to physical - code.ta...AboutYouGmbH
 
Introduction to data migration
Introduction to data migrationIntroduction to data migration
Introduction to data migrationHubert Manduku
 
In-Hadoop, In-Database and In-Memory Processing for Predictive Analytics
In-Hadoop, In-Database and In-Memory Processing for Predictive AnalyticsIn-Hadoop, In-Database and In-Memory Processing for Predictive Analytics
In-Hadoop, In-Database and In-Memory Processing for Predictive AnalyticsDataWorks Summit
 
Real-time analysis using an in-memory data grid - Cloud Expo 2013
Real-time analysis using an in-memory data grid - Cloud Expo 2013Real-time analysis using an in-memory data grid - Cloud Expo 2013
Real-time analysis using an in-memory data grid - Cloud Expo 2013ScaleOut Software
 
Understanding big data testing
Understanding big data testingUnderstanding big data testing
Understanding big data testingNarola Infotech
 
Operational Intelligence Using Hadoop
Operational Intelligence Using HadoopOperational Intelligence Using Hadoop
Operational Intelligence Using HadoopDataWorks Summit
 
Rda step by step
Rda   step by stepRda   step by step
Rda step by stepPhani Kumar
 
Data sevice architecture
Data sevice architectureData sevice architecture
Data sevice architecturePankaj Sharma
 
November 2013 HUG: Real-time analytics with in-memory grid
November 2013 HUG: Real-time analytics with in-memory gridNovember 2013 HUG: Real-time analytics with in-memory grid
November 2013 HUG: Real-time analytics with in-memory gridYahoo Developer Network
 
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...Denodo
 
Big Data Tools: A Deep Dive into Essential Tools
Big Data Tools: A Deep Dive into Essential ToolsBig Data Tools: A Deep Dive into Essential Tools
Big Data Tools: A Deep Dive into Essential ToolsFredReynolds2
 
Skillwise Big Data part 2
Skillwise Big Data part 2Skillwise Big Data part 2
Skillwise Big Data part 2Skillwise Group
 
freeDatamap presentation - data visualization BI & GIS -
freeDatamap presentation - data visualization BI & GIS -freeDatamap presentation - data visualization BI & GIS -
freeDatamap presentation - data visualization BI & GIS -free datamap
 
Concept to production Nationwide Insurance BigInsights Journey with Telematics
Concept to production Nationwide Insurance BigInsights Journey with TelematicsConcept to production Nationwide Insurance BigInsights Journey with Telematics
Concept to production Nationwide Insurance BigInsights Journey with TelematicsSeeling Cheung
 
Enabling Fast Data Strategy: What’s new in Denodo Platform 6.0
Enabling Fast Data Strategy: What’s new in Denodo Platform 6.0Enabling Fast Data Strategy: What’s new in Denodo Platform 6.0
Enabling Fast Data Strategy: What’s new in Denodo Platform 6.0Denodo
 
How is sap data services unique for sap hana integration
How is sap data services unique for sap hana integrationHow is sap data services unique for sap hana integration
How is sap data services unique for sap hana integrationFlavio Alejandro Corradini
 
Danny Bickson - Python based predictive analytics with GraphLab Create
Danny Bickson - Python based predictive analytics with GraphLab Create Danny Bickson - Python based predictive analytics with GraphLab Create
Danny Bickson - Python based predictive analytics with GraphLab Create PyData
 

Similar to How to migrate to GraphDB in 10 easy to follow steps (20)

Artur Borycki - Beyond Lambda - how to get from logical to physical - code.ta...
Artur Borycki - Beyond Lambda - how to get from logical to physical - code.ta...Artur Borycki - Beyond Lambda - how to get from logical to physical - code.ta...
Artur Borycki - Beyond Lambda - how to get from logical to physical - code.ta...
 
Introduction to data migration
Introduction to data migrationIntroduction to data migration
Introduction to data migration
 
IBM Dash DB
IBM Dash DBIBM Dash DB
IBM Dash DB
 
In-Hadoop, In-Database and In-Memory Processing for Predictive Analytics
In-Hadoop, In-Database and In-Memory Processing for Predictive AnalyticsIn-Hadoop, In-Database and In-Memory Processing for Predictive Analytics
In-Hadoop, In-Database and In-Memory Processing for Predictive Analytics
 
Data Modeling in SAP Gateway – maximize performance at all levels
Data Modeling in SAP Gateway – maximize performance at all levelsData Modeling in SAP Gateway – maximize performance at all levels
Data Modeling in SAP Gateway – maximize performance at all levels
 
Real-time analysis using an in-memory data grid - Cloud Expo 2013
Real-time analysis using an in-memory data grid - Cloud Expo 2013Real-time analysis using an in-memory data grid - Cloud Expo 2013
Real-time analysis using an in-memory data grid - Cloud Expo 2013
 
Understanding big data testing
Understanding big data testingUnderstanding big data testing
Understanding big data testing
 
Operational Intelligence Using Hadoop
Operational Intelligence Using HadoopOperational Intelligence Using Hadoop
Operational Intelligence Using Hadoop
 
Rda step by step
Rda   step by stepRda   step by step
Rda step by step
 
Data sevice architecture
Data sevice architectureData sevice architecture
Data sevice architecture
 
November 2013 HUG: Real-time analytics with in-memory grid
November 2013 HUG: Real-time analytics with in-memory gridNovember 2013 HUG: Real-time analytics with in-memory grid
November 2013 HUG: Real-time analytics with in-memory grid
 
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
Self Service Analytics and a Modern Data Architecture with Data Virtualizatio...
 
Skilwise Big data
Skilwise Big dataSkilwise Big data
Skilwise Big data
 
Big Data Tools: A Deep Dive into Essential Tools
Big Data Tools: A Deep Dive into Essential ToolsBig Data Tools: A Deep Dive into Essential Tools
Big Data Tools: A Deep Dive into Essential Tools
 
Skillwise Big Data part 2
Skillwise Big Data part 2Skillwise Big Data part 2
Skillwise Big Data part 2
 
freeDatamap presentation - data visualization BI & GIS -
freeDatamap presentation - data visualization BI & GIS -freeDatamap presentation - data visualization BI & GIS -
freeDatamap presentation - data visualization BI & GIS -
 
Concept to production Nationwide Insurance BigInsights Journey with Telematics
Concept to production Nationwide Insurance BigInsights Journey with TelematicsConcept to production Nationwide Insurance BigInsights Journey with Telematics
Concept to production Nationwide Insurance BigInsights Journey with Telematics
 
Enabling Fast Data Strategy: What’s new in Denodo Platform 6.0
Enabling Fast Data Strategy: What’s new in Denodo Platform 6.0Enabling Fast Data Strategy: What’s new in Denodo Platform 6.0
Enabling Fast Data Strategy: What’s new in Denodo Platform 6.0
 
How is sap data services unique for sap hana integration
How is sap data services unique for sap hana integrationHow is sap data services unique for sap hana integration
How is sap data services unique for sap hana integration
 
Danny Bickson - Python based predictive analytics with GraphLab Create
Danny Bickson - Python based predictive analytics with GraphLab Create Danny Bickson - Python based predictive analytics with GraphLab Create
Danny Bickson - Python based predictive analytics with GraphLab Create
 

More from Ontotext

Property graph vs. RDF Triplestore comparison in 2020
Property graph vs. RDF Triplestore comparison in 2020Property graph vs. RDF Triplestore comparison in 2020
Property graph vs. RDF Triplestore comparison in 2020Ontotext
 
Reasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven Recipes
Reasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven RecipesReasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven Recipes
Reasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven RecipesOntotext
 
Analytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data Linking
Analytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data LinkingAnalytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data Linking
Analytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data LinkingOntotext
 
The Bounties of Semantic Data Integration for the Enterprise
The Bounties of Semantic Data Integration for the Enterprise The Bounties of Semantic Data Integration for the Enterprise
The Bounties of Semantic Data Integration for the Enterprise Ontotext
 
[Webinar] GraphDB Fundamentals: Adding Meaning to Your Data
[Webinar] GraphDB Fundamentals: Adding Meaning to Your Data[Webinar] GraphDB Fundamentals: Adding Meaning to Your Data
[Webinar] GraphDB Fundamentals: Adding Meaning to Your DataOntotext
 
[Conference] Cognitive Graph Analytics on Company Data and News
[Conference] Cognitive Graph Analytics on Company Data and News[Conference] Cognitive Graph Analytics on Company Data and News
[Conference] Cognitive Graph Analytics on Company Data and NewsOntotext
 
Transforming Your Data with GraphDB: GraphDB Fundamentals, Jan 2018
Transforming Your Data with GraphDB: GraphDB Fundamentals, Jan 2018Transforming Your Data with GraphDB: GraphDB Fundamentals, Jan 2018
Transforming Your Data with GraphDB: GraphDB Fundamentals, Jan 2018Ontotext
 
Hercule: Journalist Platform to Find Breaking News and Fight Fake Ones
Hercule: Journalist Platform to Find Breaking News and Fight Fake OnesHercule: Journalist Platform to Find Breaking News and Fight Fake Ones
Hercule: Journalist Platform to Find Breaking News and Fight Fake OnesOntotext
 
GraphDB Cloud: Enterprise Ready RDF Database on Demand
GraphDB Cloud: Enterprise Ready RDF Database on DemandGraphDB Cloud: Enterprise Ready RDF Database on Demand
GraphDB Cloud: Enterprise Ready RDF Database on DemandOntotext
 
[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...
[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...
[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...Ontotext
 
Efficient Practices for Large Scale Text Mining Process
Efficient Practices for Large Scale Text Mining ProcessEfficient Practices for Large Scale Text Mining Process
Efficient Practices for Large Scale Text Mining ProcessOntotext
 
The Power of Semantic Technologies to Explore Linked Open Data
The Power of Semantic Technologies to Explore Linked Open DataThe Power of Semantic Technologies to Explore Linked Open Data
The Power of Semantic Technologies to Explore Linked Open DataOntotext
 
First Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the CloudFirst Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the CloudOntotext
 
The Knowledge Discovery Quest
The Knowledge Discovery Quest The Knowledge Discovery Quest
The Knowledge Discovery Quest Ontotext
 
Best Practices for Large Scale Text Mining Processing
Best Practices for Large Scale Text Mining ProcessingBest Practices for Large Scale Text Mining Processing
Best Practices for Large Scale Text Mining ProcessingOntotext
 
Build Narratives, Connect Artifacts: Linked Open Data for Cultural Heritage
Build Narratives, Connect Artifacts: Linked Open Data for Cultural HeritageBuild Narratives, Connect Artifacts: Linked Open Data for Cultural Heritage
Build Narratives, Connect Artifacts: Linked Open Data for Cultural HeritageOntotext
 
Semantic Data Normalization For Efficient Clinical Trial Research
Semantic Data Normalization For Efficient Clinical Trial ResearchSemantic Data Normalization For Efficient Clinical Trial Research
Semantic Data Normalization For Efficient Clinical Trial ResearchOntotext
 
Gain Super Powers in Data Science: Relationship Discovery Across Public Data
Gain Super Powers in Data Science: Relationship Discovery Across Public DataGain Super Powers in Data Science: Relationship Discovery Across Public Data
Gain Super Powers in Data Science: Relationship Discovery Across Public DataOntotext
 
Gaining Advantage in e-Learning with Semantic Adaptive Technology
Gaining Advantage in e-Learning with Semantic Adaptive TechnologyGaining Advantage in e-Learning with Semantic Adaptive Technology
Gaining Advantage in e-Learning with Semantic Adaptive TechnologyOntotext
 
Cooking up the Semantic Web
Cooking up the Semantic WebCooking up the Semantic Web
Cooking up the Semantic WebOntotext
 

More from Ontotext (20)

Property graph vs. RDF Triplestore comparison in 2020
Property graph vs. RDF Triplestore comparison in 2020Property graph vs. RDF Triplestore comparison in 2020
Property graph vs. RDF Triplestore comparison in 2020
 
Reasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven Recipes
Reasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven RecipesReasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven Recipes
Reasoning with Big Knowledge Graphs: Choices, Pitfalls and Proven Recipes
 
Analytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data Linking
Analytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data LinkingAnalytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data Linking
Analytics on Big Knowledge Graphs Deliver Entity Awareness and Help Data Linking
 
The Bounties of Semantic Data Integration for the Enterprise
The Bounties of Semantic Data Integration for the Enterprise The Bounties of Semantic Data Integration for the Enterprise
The Bounties of Semantic Data Integration for the Enterprise
 
[Webinar] GraphDB Fundamentals: Adding Meaning to Your Data
[Webinar] GraphDB Fundamentals: Adding Meaning to Your Data[Webinar] GraphDB Fundamentals: Adding Meaning to Your Data
[Webinar] GraphDB Fundamentals: Adding Meaning to Your Data
 
[Conference] Cognitive Graph Analytics on Company Data and News
[Conference] Cognitive Graph Analytics on Company Data and News[Conference] Cognitive Graph Analytics on Company Data and News
[Conference] Cognitive Graph Analytics on Company Data and News
 
Transforming Your Data with GraphDB: GraphDB Fundamentals, Jan 2018
Transforming Your Data with GraphDB: GraphDB Fundamentals, Jan 2018Transforming Your Data with GraphDB: GraphDB Fundamentals, Jan 2018
Transforming Your Data with GraphDB: GraphDB Fundamentals, Jan 2018
 
Hercule: Journalist Platform to Find Breaking News and Fight Fake Ones
Hercule: Journalist Platform to Find Breaking News and Fight Fake OnesHercule: Journalist Platform to Find Breaking News and Fight Fake Ones
Hercule: Journalist Platform to Find Breaking News and Fight Fake Ones
 
GraphDB Cloud: Enterprise Ready RDF Database on Demand
GraphDB Cloud: Enterprise Ready RDF Database on DemandGraphDB Cloud: Enterprise Ready RDF Database on Demand
GraphDB Cloud: Enterprise Ready RDF Database on Demand
 
[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...
[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...
[Webinar] FactForge Debuts: Trump World Data and Instant Ranking of Industry ...
 
Efficient Practices for Large Scale Text Mining Process
Efficient Practices for Large Scale Text Mining ProcessEfficient Practices for Large Scale Text Mining Process
Efficient Practices for Large Scale Text Mining Process
 
The Power of Semantic Technologies to Explore Linked Open Data
The Power of Semantic Technologies to Explore Linked Open DataThe Power of Semantic Technologies to Explore Linked Open Data
The Power of Semantic Technologies to Explore Linked Open Data
 
First Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the CloudFirst Steps in Semantic Data Modelling and Search & Analytics in the Cloud
First Steps in Semantic Data Modelling and Search & Analytics in the Cloud
 
The Knowledge Discovery Quest
The Knowledge Discovery Quest The Knowledge Discovery Quest
The Knowledge Discovery Quest
 
Best Practices for Large Scale Text Mining Processing
Best Practices for Large Scale Text Mining ProcessingBest Practices for Large Scale Text Mining Processing
Best Practices for Large Scale Text Mining Processing
 
Build Narratives, Connect Artifacts: Linked Open Data for Cultural Heritage
Build Narratives, Connect Artifacts: Linked Open Data for Cultural HeritageBuild Narratives, Connect Artifacts: Linked Open Data for Cultural Heritage
Build Narratives, Connect Artifacts: Linked Open Data for Cultural Heritage
 
Semantic Data Normalization For Efficient Clinical Trial Research
Semantic Data Normalization For Efficient Clinical Trial ResearchSemantic Data Normalization For Efficient Clinical Trial Research
Semantic Data Normalization For Efficient Clinical Trial Research
 
Gain Super Powers in Data Science: Relationship Discovery Across Public Data
Gain Super Powers in Data Science: Relationship Discovery Across Public DataGain Super Powers in Data Science: Relationship Discovery Across Public Data
Gain Super Powers in Data Science: Relationship Discovery Across Public Data
 
Gaining Advantage in e-Learning with Semantic Adaptive Technology
Gaining Advantage in e-Learning with Semantic Adaptive TechnologyGaining Advantage in e-Learning with Semantic Adaptive Technology
Gaining Advantage in e-Learning with Semantic Adaptive Technology
 
Cooking up the Semantic Web
Cooking up the Semantic WebCooking up the Semantic Web
Cooking up the Semantic Web
 

Recently uploaded

Your enemies use GenAI too - staying ahead of fraud with Neo4j
Your enemies use GenAI too - staying ahead of fraud with Neo4jYour enemies use GenAI too - staying ahead of fraud with Neo4j
Your enemies use GenAI too - staying ahead of fraud with Neo4jNeo4j
 
Introduction to FIDO Authentication and Passkeys.pptx
Introduction to FIDO Authentication and Passkeys.pptxIntroduction to FIDO Authentication and Passkeys.pptx
Introduction to FIDO Authentication and Passkeys.pptxFIDO Alliance
 
Using IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & IrelandUsing IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & IrelandIES VE
 
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...panagenda
 
Hyatt driving innovation and exceptional customer experiences with FIDO passw...
Hyatt driving innovation and exceptional customer experiences with FIDO passw...Hyatt driving innovation and exceptional customer experiences with FIDO passw...
Hyatt driving innovation and exceptional customer experiences with FIDO passw...FIDO Alliance
 
Event-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream ProcessingEvent-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream ProcessingScyllaDB
 
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...FIDO Alliance
 
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...FIDO Alliance
 
WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024Lorenzo Miniero
 
State of the Smart Building Startup Landscape 2024!
State of the Smart Building Startup Landscape 2024!State of the Smart Building Startup Landscape 2024!
State of the Smart Building Startup Landscape 2024!Memoori
 
How we scaled to 80K users by doing nothing!.pdf
How we scaled to 80K users by doing nothing!.pdfHow we scaled to 80K users by doing nothing!.pdf
How we scaled to 80K users by doing nothing!.pdfSrushith Repakula
 
AI mind or machine power point presentation
AI mind or machine power point presentationAI mind or machine power point presentation
AI mind or machine power point presentationyogeshlabana357357
 
TopCryptoSupers 12thReport OrionX May2024
TopCryptoSupers 12thReport OrionX May2024TopCryptoSupers 12thReport OrionX May2024
TopCryptoSupers 12thReport OrionX May2024Stephen Perrenod
 
Microsoft CSP Briefing Pre-Engagement - Questionnaire
Microsoft CSP Briefing Pre-Engagement - QuestionnaireMicrosoft CSP Briefing Pre-Engagement - Questionnaire
Microsoft CSP Briefing Pre-Engagement - QuestionnaireExakis Nelite
 
2024 May Patch Tuesday
2024 May Patch Tuesday2024 May Patch Tuesday
2024 May Patch TuesdayIvanti
 
Working together SRE & Platform Engineering
Working together SRE & Platform EngineeringWorking together SRE & Platform Engineering
Working together SRE & Platform EngineeringMarcus Vechiato
 
Easier, Faster, and More Powerful – Notes Document Properties Reimagined
Easier, Faster, and More Powerful – Notes Document Properties ReimaginedEasier, Faster, and More Powerful – Notes Document Properties Reimagined
Easier, Faster, and More Powerful – Notes Document Properties Reimaginedpanagenda
 
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdfIntroduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdfFIDO Alliance
 
WebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceWebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceSamy Fodil
 
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdfWhere to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdfFIDO Alliance
 

Recently uploaded (20)

Your enemies use GenAI too - staying ahead of fraud with Neo4j
Your enemies use GenAI too - staying ahead of fraud with Neo4jYour enemies use GenAI too - staying ahead of fraud with Neo4j
Your enemies use GenAI too - staying ahead of fraud with Neo4j
 
Introduction to FIDO Authentication and Passkeys.pptx
Introduction to FIDO Authentication and Passkeys.pptxIntroduction to FIDO Authentication and Passkeys.pptx
Introduction to FIDO Authentication and Passkeys.pptx
 
Using IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & IrelandUsing IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & Ireland
 
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
 
Hyatt driving innovation and exceptional customer experiences with FIDO passw...
Hyatt driving innovation and exceptional customer experiences with FIDO passw...Hyatt driving innovation and exceptional customer experiences with FIDO passw...
Hyatt driving innovation and exceptional customer experiences with FIDO passw...
 
Event-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream ProcessingEvent-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream Processing
 
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
 
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...
FDO for Camera, Sensor and Networking Device – Commercial Solutions from VinC...
 
WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024
 
State of the Smart Building Startup Landscape 2024!
State of the Smart Building Startup Landscape 2024!State of the Smart Building Startup Landscape 2024!
State of the Smart Building Startup Landscape 2024!
 
How we scaled to 80K users by doing nothing!.pdf
How we scaled to 80K users by doing nothing!.pdfHow we scaled to 80K users by doing nothing!.pdf
How we scaled to 80K users by doing nothing!.pdf
 
AI mind or machine power point presentation
AI mind or machine power point presentationAI mind or machine power point presentation
AI mind or machine power point presentation
 
TopCryptoSupers 12thReport OrionX May2024
TopCryptoSupers 12thReport OrionX May2024TopCryptoSupers 12thReport OrionX May2024
TopCryptoSupers 12thReport OrionX May2024
 
Microsoft CSP Briefing Pre-Engagement - Questionnaire
Microsoft CSP Briefing Pre-Engagement - QuestionnaireMicrosoft CSP Briefing Pre-Engagement - Questionnaire
Microsoft CSP Briefing Pre-Engagement - Questionnaire
 
2024 May Patch Tuesday
2024 May Patch Tuesday2024 May Patch Tuesday
2024 May Patch Tuesday
 
Working together SRE & Platform Engineering
Working together SRE & Platform EngineeringWorking together SRE & Platform Engineering
Working together SRE & Platform Engineering
 
Easier, Faster, and More Powerful – Notes Document Properties Reimagined
Easier, Faster, and More Powerful – Notes Document Properties ReimaginedEasier, Faster, and More Powerful – Notes Document Properties Reimagined
Easier, Faster, and More Powerful – Notes Document Properties Reimagined
 
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdfIntroduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
 
WebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceWebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM Performance
 
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdfWhere to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
 

How to migrate to GraphDB in 10 easy to follow steps

  • 1. How to Migrate to GraphDB in 10 easy to follow steps
  • 2. 1 Getting an integrated view of enterprise data is paramount to taking the right action in our data-driven world.
  • 3. M a k i n g s e n s e o f t e x t a n d d a t a 2 And this is exactly what GraphDB is built for.
  • 4. 3 It’s purpose is to help organizations “know” more and do more with data.
  • 5. Developed with the view to handle data only once, GraphDB is a future-proof system for managing your data. 4
  • 6. Legacy data, master data, open data, third-party data, no matter what type, GraphDB offers a single entry point to all this knowledge, unleashing the power of data integration. 5
  • 7. 6 It operates like a smart brain on top of legacy systems, capable of bringing meaning to your data from diverse external datasets. Getting this smart brain for your enterprise data is now easier.
  • 8. 7 It takes only 10 steps
  • 9. 8 Welcome to our GraphDB Migration Service! It’s an A-Z service that will help you prepare for migrating your data to GraphDB, walking you through the setup, and monitoring the performance of your systems. [Instituting GraphDB as your new RDF database technology is simple, even if you already have other RDF database in place.]
  • 10. 9 Step 1: Validate Data Modeling We will help you analyze your current data modeling and validate if it is optimal.
  • 11. 10 Step 2: Profile Slow Queries This is where we will analyze slow running client queries for potential optimizations.
  • 12. We will export your data from the previous database and prepare it for import in GraphDB. 11 Step 3: Export Data
  • 13. 12 In this step of the migration process, you will be selecting the most suitable infrastructure for optimal performance and then installing GraphDB on an infrastructure of choice. Step 5: Optimize Setup Step 4: Setup GraphDB Here, GraphDB setup will be optimized for the expected client use.
  • 14. Step 6: Import Data 13 The data that have been exported from your earlier database will now be imported into the new GraphDB instance.
  • 15. Step 7: Analyze “Slow Queries” 14 The previously slow running queries (detected in Step 2) will be analyzed again on the new GraphDB instance.
  • 16. Step 8: Optimize Queries for Performance 15 The slow running queries will be rewritten so that you can take advantage of the strengths of GraphDB’s query optimizer.
  • 17. Step 9: Monitor Repository Performance for a Month 15 This is where GraphDB’s performance will be closely monitored and the product will be tweaked for optimal performance with the new setup and potential new user behavior and workflow.
  • 18. Step 10: Free Support for a Month 16 In this final stage of the migration process, we will be tackling all issues and incidents for a month to make sure the setup is stable and performant.
  • 19. 17 Take the first step today! Call us and tell us about your specific business case so that we can assist you in solving your data challenges. ontotext.com/migration-service-processes/
  • 20. www.ontotext.com You can also reach us via email at info@ontotext.com and directly by calling 1-866-972-6686 (North America), or +359 2 974 61 60 (Europe) Ready to know more and do more with data?