SlideShare a Scribd company logo
1 of 15
Download to read offline
It Don’t Mean a Thing If It Ain‘t
Got Semantics
Why consider an RDF
Graph Database?
1
Making sense of what is given* has always been hard.
*the literal Latin meaning of datum is something given
2
Today it is even harder: we are given tons of bits of data and
we are to turn these data into knowledge.
But if we don't want to be dragged down by dead weight,
we have to turn these tons of bits of data into action.
3
For having data is one thing,
but understanding them is another.
4
True understanding comes with connecting and integrating data
pieces from all kinds of data sets.
5
6
To turn data pieces into building
blocks of smart integrated
approaches to solving complex
business problems, we need
systems and platforms.
7
Systems capable of discovering
relationships and detecting patterns
within all kinds of data. And platforms
that capture and analyze large
volumes of diverse data.
8
One way to build these systems
and platforms is with a graph
database. The graph is one of the
very expressive and powerful
models with which we can
approach thе challenge of the
huge amounts of heterogeneous,
diverse data that surround us.
9
One such graph database
is the RDF Graph Database.
This specific
type of a graph
database,
is used to
manage
unstructured
and structured
data and
is invaluable
when it comes
to finding
intelligent data
management
solutions.
10
An RDF Graph database
has very little viable
alternatives when it comes
to capturing, managing
and storing data
that can be easily consumed by
other users, federated across
different information systems, or
linked by a third party system.
11
But all of them, Ontotext’s GraphDB included, work wonders with serving
information needs and handling the growing amounts of diverse data.
Not all RDF Graph Databases are created equal - each has its strengths
and weaknesses.
12
Integrated smartly and
connected meaningfully
with an RDF graph database,
enterprise data can meet the
complexity of the captured,
created and curated
information bits.
13
Ready to give an RDF Database a chance to bring meaning to your data?
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)
Download GRAPHDB Free
or call us for advice on
how you can do this.

More Related Content

What's hot

Data mining
Data miningData mining
Data mining
Silicon
 
Iterative data discovery and transformation with open refine
Iterative data discovery and transformation with open refineIterative data discovery and transformation with open refine
Iterative data discovery and transformation with open refine
Martin Magdinier
 

What's hot (20)

Real time bi solution architecture
Real time bi solution architectureReal time bi solution architecture
Real time bi solution architecture
 
data warehousing and data mining
data warehousing and data mining data warehousing and data mining
data warehousing and data mining
 
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
 
Linking Open, Big Data Using Semantic Web Technologies - An Introduction
Linking Open, Big Data Using Semantic Web Technologies - An IntroductionLinking Open, Big Data Using Semantic Web Technologies - An Introduction
Linking Open, Big Data Using Semantic Web Technologies - An Introduction
 
Big data and data science
Big data and data scienceBig data and data science
Big data and data science
 
introduction to data warehousing and mining
 introduction to data warehousing and mining introduction to data warehousing and mining
introduction to data warehousing and mining
 
Graph-based Product Lifecycle Management
Graph-based Product Lifecycle ManagementGraph-based Product Lifecycle Management
Graph-based Product Lifecycle Management
 
Data mining
Data miningData mining
Data mining
 
Iterative data discovery and transformation with open refine
Iterative data discovery and transformation with open refineIterative data discovery and transformation with open refine
Iterative data discovery and transformation with open refine
 
Text analytics for Google Spreadsheets using Text Mining add-on
Text analytics for Google Spreadsheets using Text Mining add-on Text analytics for Google Spreadsheets using Text Mining add-on
Text analytics for Google Spreadsheets using Text Mining add-on
 
Big data analytics
Big data analyticsBig data analytics
Big data analytics
 
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
 
Data Café — A Platform For Creating Biomedical Data Lakes
Data Café — A Platform For Creating Biomedical Data LakesData Café — A Platform For Creating Biomedical Data Lakes
Data Café — A Platform For Creating Biomedical Data Lakes
 
5 data preparation and processing2
5 data preparation and processing25 data preparation and processing2
5 data preparation and processing2
 
Data Curation @ SpazioDati - NEXA Lunch Seminar
Data Curation @ SpazioDati - NEXA Lunch SeminarData Curation @ SpazioDati - NEXA Lunch Seminar
Data Curation @ SpazioDati - NEXA Lunch Seminar
 
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
 
Sören Auer | Enterprise Knowledge Graphs
Sören Auer | Enterprise Knowledge GraphsSören Auer | Enterprise Knowledge Graphs
Sören Auer | Enterprise Knowledge Graphs
 
BDS14 Big Data Analytics to the masses
BDS14 Big Data Analytics to the massesBDS14 Big Data Analytics to the masses
BDS14 Big Data Analytics to the masses
 
Apouc 2014-business-analytics-and-big-data
Apouc 2014-business-analytics-and-big-dataApouc 2014-business-analytics-and-big-data
Apouc 2014-business-analytics-and-big-data
 
CRM - Data Collection, Storage and Acces.
CRM - Data Collection, Storage and Acces.CRM - Data Collection, Storage and Acces.
CRM - Data Collection, Storage and Acces.
 

Similar to It Don’t Mean a Thing If It Ain’t Got Semantics

Whitepaper-The-Data-Lake-3_0
Whitepaper-The-Data-Lake-3_0Whitepaper-The-Data-Lake-3_0
Whitepaper-The-Data-Lake-3_0
Jane Roberts
 
Discuss the advantages of Hadoop technology and distributed data fil.pdf
Discuss the advantages of Hadoop technology and distributed data fil.pdfDiscuss the advantages of Hadoop technology and distributed data fil.pdf
Discuss the advantages of Hadoop technology and distributed data fil.pdf
arhamgarmentsdelhi
 

Similar to It Don’t Mean a Thing If It Ain’t Got Semantics (20)

Keynote: Anything is Possible: Apply Graphs to Your Most Complex Data Problem...
Keynote: Anything is Possible: Apply Graphs to Your Most Complex Data Problem...Keynote: Anything is Possible: Apply Graphs to Your Most Complex Data Problem...
Keynote: Anything is Possible: Apply Graphs to Your Most Complex Data Problem...
 
Data lake ppt
Data lake pptData lake ppt
Data lake ppt
 
IJARCCE_49
IJARCCE_49IJARCCE_49
IJARCCE_49
 
Hadoop(Term Paper)
Hadoop(Term Paper)Hadoop(Term Paper)
Hadoop(Term Paper)
 
Top 20 Big Data Tools 2019
Top 20 Big Data Tools 2019Top 20 Big Data Tools 2019
Top 20 Big Data Tools 2019
 
Whitepaper-The-Data-Lake-3_0
Whitepaper-The-Data-Lake-3_0Whitepaper-The-Data-Lake-3_0
Whitepaper-The-Data-Lake-3_0
 
Big data abstract
Big data abstractBig data abstract
Big data abstract
 
Hadoop hdfs interview questions
Hadoop hdfs interview questionsHadoop hdfs interview questions
Hadoop hdfs interview questions
 
Discuss the advantages of Hadoop technology and distributed data fil.pdf
Discuss the advantages of Hadoop technology and distributed data fil.pdfDiscuss the advantages of Hadoop technology and distributed data fil.pdf
Discuss the advantages of Hadoop technology and distributed data fil.pdf
 
Presentation on BigData by Swapnaja
Presentation on BigData by Swapnaja Presentation on BigData by Swapnaja
Presentation on BigData by Swapnaja
 
Teradata Aster Discovery Platform
Teradata Aster Discovery PlatformTeradata Aster Discovery Platform
Teradata Aster Discovery Platform
 
Big Data Fundamentals
Big Data FundamentalsBig Data Fundamentals
Big Data Fundamentals
 
U0 vqmtq3m tc=
U0 vqmtq3m tc=U0 vqmtq3m tc=
U0 vqmtq3m tc=
 
Ramya ppt.pptx
Ramya ppt.pptxRamya ppt.pptx
Ramya ppt.pptx
 
Big data rmoug
Big data rmougBig data rmoug
Big data rmoug
 
A STUDY ON GRAPH STORAGE DATABASE OF NOSQL
A STUDY ON GRAPH STORAGE DATABASE OF NOSQLA STUDY ON GRAPH STORAGE DATABASE OF NOSQL
A STUDY ON GRAPH STORAGE DATABASE OF NOSQL
 
A Study on Graph Storage Database of NOSQL
A Study on Graph Storage Database of NOSQLA Study on Graph Storage Database of NOSQL
A Study on Graph Storage Database of NOSQL
 
A STUDY ON GRAPH STORAGE DATABASE OF NOSQL
A STUDY ON GRAPH STORAGE DATABASE OF NOSQLA STUDY ON GRAPH STORAGE DATABASE OF NOSQL
A STUDY ON GRAPH STORAGE DATABASE OF NOSQL
 
A Study on Graph Storage Database of NOSQL
A Study on Graph Storage Database of NOSQLA Study on Graph Storage Database of NOSQL
A Study on Graph Storage Database of NOSQL
 
Lecture 5 - Big Data and Hadoop Intro.ppt
Lecture 5 - Big Data and Hadoop Intro.pptLecture 5 - Big Data and Hadoop Intro.ppt
Lecture 5 - Big Data and Hadoop Intro.ppt
 

More from 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 Processing
Ontotext
 

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
 
[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
 
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 ...
 
How is smart data cooked?
How is smart data cooked?How is smart data cooked?
How is smart data cooked?
 
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
 
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
 
Diving in Panama Papers and Open Data to Discover Emerging News
Diving in Panama Papers and Open Data to Discover Emerging NewsDiving in Panama Papers and Open Data to Discover Emerging News
Diving in Panama Papers and Open Data to Discover Emerging News
 
How to Reveal Hidden Relationships in Data and Risk Analytics
How to Reveal Hidden Relationships in Data and Risk AnalyticsHow to Reveal Hidden Relationships in Data and Risk Analytics
How to Reveal Hidden Relationships in Data and Risk Analytics
 
Why Semantics Matter? Adding the semantic edge to your content, right from au...
Why Semantics Matter? Adding the semantic edge to your content,right from au...Why Semantics Matter? Adding the semantic edge to your content,right from au...
Why Semantics Matter? Adding the semantic edge to your content, right from au...
 

Recently uploaded

Breaking Down the Flutterwave Scandal What You Need to Know.pdf
Breaking Down the Flutterwave Scandal What You Need to Know.pdfBreaking Down the Flutterwave Scandal What You Need to Know.pdf
Breaking Down the Flutterwave Scandal What You Need to Know.pdf
UK Journal
 
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
 
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptxHarnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
FIDO Alliance
 

Recently uploaded (20)

Oauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoftOauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoft
 
Breaking Down the Flutterwave Scandal What You Need to Know.pdf
Breaking Down the Flutterwave Scandal What You Need to Know.pdfBreaking Down the Flutterwave Scandal What You Need to Know.pdf
Breaking Down the Flutterwave Scandal What You Need to Know.pdf
 
Event-Driven Architecture Masterclass: Integrating Distributed Data Stores Ac...
Event-Driven Architecture Masterclass: Integrating Distributed Data Stores Ac...Event-Driven Architecture Masterclass: Integrating Distributed Data Stores Ac...
Event-Driven Architecture Masterclass: Integrating Distributed Data Stores Ac...
 
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...
 
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
 
ADP Passwordless Journey Case Study.pptx
ADP Passwordless Journey Case Study.pptxADP Passwordless Journey Case Study.pptx
ADP Passwordless Journey Case Study.pptx
 
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdfLinux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
 
Google I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGoogle I/O Extended 2024 Warsaw
Google I/O Extended 2024 Warsaw
 
(Explainable) Data-Centric AI: what are you explaininhg, and to whom?
(Explainable) Data-Centric AI: what are you explaininhg, and to whom?(Explainable) Data-Centric AI: what are you explaininhg, and to whom?
(Explainable) Data-Centric AI: what are you explaininhg, and to whom?
 
Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...
Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...
Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...
 
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
 
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!
 
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptxHarnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
 
Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024
 
TopCryptoSupers 12thReport OrionX May2024
TopCryptoSupers 12thReport OrionX May2024TopCryptoSupers 12thReport OrionX May2024
TopCryptoSupers 12thReport OrionX May2024
 
2024 May Patch Tuesday
2024 May Patch Tuesday2024 May Patch Tuesday
2024 May Patch Tuesday
 
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...
 
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
 
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
 
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdfThe Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
 

It Don’t Mean a Thing If It Ain’t Got Semantics

  • 1. It Don’t Mean a Thing If It Ain‘t Got Semantics Why consider an RDF Graph Database?
  • 2. 1 Making sense of what is given* has always been hard. *the literal Latin meaning of datum is something given
  • 3. 2 Today it is even harder: we are given tons of bits of data and we are to turn these data into knowledge.
  • 4. But if we don't want to be dragged down by dead weight, we have to turn these tons of bits of data into action. 3
  • 5. For having data is one thing, but understanding them is another. 4
  • 6. True understanding comes with connecting and integrating data pieces from all kinds of data sets. 5
  • 7. 6 To turn data pieces into building blocks of smart integrated approaches to solving complex business problems, we need systems and platforms.
  • 8. 7 Systems capable of discovering relationships and detecting patterns within all kinds of data. And platforms that capture and analyze large volumes of diverse data.
  • 9. 8 One way to build these systems and platforms is with a graph database. The graph is one of the very expressive and powerful models with which we can approach thе challenge of the huge amounts of heterogeneous, diverse data that surround us.
  • 10. 9 One such graph database is the RDF Graph Database. This specific type of a graph database, is used to manage unstructured and structured data and is invaluable when it comes to finding intelligent data management solutions.
  • 11. 10 An RDF Graph database has very little viable alternatives when it comes to capturing, managing and storing data that can be easily consumed by other users, federated across different information systems, or linked by a third party system.
  • 12. 11 But all of them, Ontotext’s GraphDB included, work wonders with serving information needs and handling the growing amounts of diverse data. Not all RDF Graph Databases are created equal - each has its strengths and weaknesses.
  • 13. 12 Integrated smartly and connected meaningfully with an RDF graph database, enterprise data can meet the complexity of the captured, created and curated information bits.
  • 14. 13 Ready to give an RDF Database a chance to bring meaning to your data?
  • 15. 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) Download GRAPHDB Free or call us for advice on how you can do this.