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SEMANTIC WEB
ANALYTICS
PRESENTED BY : 5TH SEM GIBS STUDENTS
ACKNOWLEDGEMENT
• We would like to extend sincere thanks to our guide and professor Mr Tariq for
giving us this opportunity to enhance our knowledge with this detailed work on
semantic web. Without his time, supervision and guidance this work wouldn’t
have delivered the desired outcome.
• We would also like to thank all of our team members for their contribution
towards this presentation.
TOPICS TO BE COVERED
• Introduction
• Versions of web
• Themes
• How is Sematic Web different?
• Elements
• Evolution
• Future
VERSIONS OF WEB
Three versions of web
• Web 1.0
• Web 2.0
• Web 3.0
WEB 1.0
• It was designed to help people better find information.
• This web version dealt was dedicated to users searching for data and its called “the
read-only Web” because it lacks the necessary forms, visuals, controls, and
interactivity we enjoy on today’s Internet.
• It’s made up of static pages connected to a system via hyperlinks
• It has HTML 3.2 elements like frames and tables
• The content comes from the server's filesystem, not a relational database
management system
• It features GIF buttons and graphics
WEB 2.0
• It offers free information sorting, allowing users to retrieve and classify data collectively
• It contains dynamic content that responds to the user’s input
• It employs Developed Application Programming Interfaces (API)
• It encourages self-usage and allows forms of interaction like:
• Podcasting
• Social media
• Tagging
• Blogging
• Commenting
• Curating with RSS
• Social networking
• Web content voting
• It’s used by society at large and not limited to specific communities.
WEB 3.0
• When trying to figure out the definitive web 3.0 meaning, we need to look into the future. Although
there are elements of Web 3.0 currently available today, it still has a way to go before it reaches full
realization.
• Web 3.0, which is also referred to as Web3, is built on a foundation consisting of the core ideas of
decentralization, openness, and more excellent user utility. Web 1.0 is the "read-only Web," Web 2.0 is
the "participative social Web," and Web 3.0 is the "read, write, execute Web."
• This idealized version didn’t quite pan out due to technological limitations, like how expensive and
complicated it is to convert human language into something readily understood by computers.
WEB 3.0
• Web 3.0 ultimately lets users interact, exchange information, and securely
conduct financial transactions without a centralized authority or coordinator. As a
result, each user becomes a content owner instead of just a content user.
• Additionally, Siri is Web 3.0 technology, as is the Internet of Things. However, if
and when the full implementation happens, it will be closer to Berners-Lee's initial
vision of Web 3.0.
• Unfortunately, there is still a lot of work to be done, especially in speech
recognition; human speech has a staggering variety of nuances and terms that
technology can't fully comprehend. There have been advances, but the process
hasn't yet been perfected.
• It's a semantic web, where the web technology evolves into a tool that lets users create, share, and connect
content via search and analysis. It is based on comprehension of words instead of numbers and keywords.
• It incorporates Artificial Intelligence and Machine Learning. If these concepts are combined with Natural
Language Processing (NLP) the result is a computer that uses Web 3.0 to become smarter and more
responsive to user needs.
• It presents the connectivity of multiple devices and applications through the Internet of Things (IoT).
Semantic metadata makes this process possible, allowing all available information to be effectively
leveraged. In addition, people can connect to the Internet anytime, anywhere, without needing a computer
or smart device.
• It offers users the freedom to interact publicly or privately without having an intermediary expose them to
risks, therefore offering people “trustless” data.
• It uses 3-D graphics. In fact, we already see this in computer games, virtual tours, and e-commerce.
• It facilitates participation without needing authorization from a governing body. It’s permissionless.
CHARACTERISTICS OF WEB 3.0
SEMATIC WEB THEMES
1. Linked Data
• Data on the Web should be available in a standard format
• Collection of interrelated datasets on the Web
2. Vocabulary
• Concepts and relationships also refrred to as terms used to describe and represent the
area of cocern
3. Query
• Programmatic mechanisms to retrieve all the data
SEMATIC WEB THEMES
3. Inference
• Automatic procedures can generate
4. Vertical Applications
• Used to explore how Semantic Web technologies can help improve operations,
efficiencies,and provides better user experince
HOW IS SEMANTIC WEB DIFFERENT
• The word “semantic” implies meaning or understanding.
• As such, the fundamental difference between Semantic Web technologies and
other technologies related to data (such as relational databases or the World
Wide Web itself)
• is that the Semantic Web is concerned with the meaning and not the structure of
data
THE SEMANTIC WEB CONSISTS PRIMARILY OF
THREE TECHNICAL STANDARDS:
• RDF (Resource Description Framework): The data modeling language for the Semantic Web.
All Semantic Web information is stored and represented in the RDF.
• SPARQL (SPARQL Protocol and RDF Query Language): The query language of the Semantic
Web. It is specifically designed to query data across various systems.
• OWL (Web Ontology Language): The schema language, or knowledge representation (KR)
language, of the Semantic Web. OWL enables you to define concepts composably so that
these concepts can be reused as much and as often as possible. Composability means that
each concept is carefully defined so that it can be selected and assembled in various
combinations with other concepts as needed for many different applications and purposes.
ELEMENTS
EVOLUTION OF SEMANTIC WEB
FUTURE POTENTIAL OF SEMANTIC WEB
• 1. The goal of the semantic web is to make Internet data in machine readable
• 2. The web is built on my data, your data, data from small company..
• 3. The semantic web is also referred as a web 3.O (2010 - above) which refers to
the future of web.
• 4. In this era computers can interpret information like human via AI and ML
REFERENCES:
• www.google.com
• www.Wikipedia.com
• www.slideshare.com
• Journals of algorithms and computational technology- by Manisha A Kumbhar
THANK YOU!....

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Semantic Web Analytics.pptx

  • 1. SEMANTIC WEB ANALYTICS PRESENTED BY : 5TH SEM GIBS STUDENTS
  • 2. ACKNOWLEDGEMENT • We would like to extend sincere thanks to our guide and professor Mr Tariq for giving us this opportunity to enhance our knowledge with this detailed work on semantic web. Without his time, supervision and guidance this work wouldn’t have delivered the desired outcome. • We would also like to thank all of our team members for their contribution towards this presentation.
  • 3. TOPICS TO BE COVERED • Introduction • Versions of web • Themes • How is Sematic Web different? • Elements • Evolution • Future
  • 4. VERSIONS OF WEB Three versions of web • Web 1.0 • Web 2.0 • Web 3.0
  • 5. WEB 1.0 • It was designed to help people better find information. • This web version dealt was dedicated to users searching for data and its called “the read-only Web” because it lacks the necessary forms, visuals, controls, and interactivity we enjoy on today’s Internet. • It’s made up of static pages connected to a system via hyperlinks • It has HTML 3.2 elements like frames and tables • The content comes from the server's filesystem, not a relational database management system • It features GIF buttons and graphics
  • 6. WEB 2.0 • It offers free information sorting, allowing users to retrieve and classify data collectively • It contains dynamic content that responds to the user’s input • It employs Developed Application Programming Interfaces (API) • It encourages self-usage and allows forms of interaction like: • Podcasting • Social media • Tagging • Blogging • Commenting • Curating with RSS • Social networking • Web content voting • It’s used by society at large and not limited to specific communities.
  • 7. WEB 3.0 • When trying to figure out the definitive web 3.0 meaning, we need to look into the future. Although there are elements of Web 3.0 currently available today, it still has a way to go before it reaches full realization. • Web 3.0, which is also referred to as Web3, is built on a foundation consisting of the core ideas of decentralization, openness, and more excellent user utility. Web 1.0 is the "read-only Web," Web 2.0 is the "participative social Web," and Web 3.0 is the "read, write, execute Web." • This idealized version didn’t quite pan out due to technological limitations, like how expensive and complicated it is to convert human language into something readily understood by computers.
  • 8. WEB 3.0 • Web 3.0 ultimately lets users interact, exchange information, and securely conduct financial transactions without a centralized authority or coordinator. As a result, each user becomes a content owner instead of just a content user. • Additionally, Siri is Web 3.0 technology, as is the Internet of Things. However, if and when the full implementation happens, it will be closer to Berners-Lee's initial vision of Web 3.0. • Unfortunately, there is still a lot of work to be done, especially in speech recognition; human speech has a staggering variety of nuances and terms that technology can't fully comprehend. There have been advances, but the process hasn't yet been perfected.
  • 9. • It's a semantic web, where the web technology evolves into a tool that lets users create, share, and connect content via search and analysis. It is based on comprehension of words instead of numbers and keywords. • It incorporates Artificial Intelligence and Machine Learning. If these concepts are combined with Natural Language Processing (NLP) the result is a computer that uses Web 3.0 to become smarter and more responsive to user needs. • It presents the connectivity of multiple devices and applications through the Internet of Things (IoT). Semantic metadata makes this process possible, allowing all available information to be effectively leveraged. In addition, people can connect to the Internet anytime, anywhere, without needing a computer or smart device. • It offers users the freedom to interact publicly or privately without having an intermediary expose them to risks, therefore offering people “trustless” data. • It uses 3-D graphics. In fact, we already see this in computer games, virtual tours, and e-commerce. • It facilitates participation without needing authorization from a governing body. It’s permissionless. CHARACTERISTICS OF WEB 3.0
  • 10. SEMATIC WEB THEMES 1. Linked Data • Data on the Web should be available in a standard format • Collection of interrelated datasets on the Web 2. Vocabulary • Concepts and relationships also refrred to as terms used to describe and represent the area of cocern 3. Query • Programmatic mechanisms to retrieve all the data
  • 11. SEMATIC WEB THEMES 3. Inference • Automatic procedures can generate 4. Vertical Applications • Used to explore how Semantic Web technologies can help improve operations, efficiencies,and provides better user experince
  • 12. HOW IS SEMANTIC WEB DIFFERENT • The word “semantic” implies meaning or understanding. • As such, the fundamental difference between Semantic Web technologies and other technologies related to data (such as relational databases or the World Wide Web itself) • is that the Semantic Web is concerned with the meaning and not the structure of data
  • 13.
  • 14. THE SEMANTIC WEB CONSISTS PRIMARILY OF THREE TECHNICAL STANDARDS: • RDF (Resource Description Framework): The data modeling language for the Semantic Web. All Semantic Web information is stored and represented in the RDF. • SPARQL (SPARQL Protocol and RDF Query Language): The query language of the Semantic Web. It is specifically designed to query data across various systems. • OWL (Web Ontology Language): The schema language, or knowledge representation (KR) language, of the Semantic Web. OWL enables you to define concepts composably so that these concepts can be reused as much and as often as possible. Composability means that each concept is carefully defined so that it can be selected and assembled in various combinations with other concepts as needed for many different applications and purposes.
  • 17. FUTURE POTENTIAL OF SEMANTIC WEB • 1. The goal of the semantic web is to make Internet data in machine readable • 2. The web is built on my data, your data, data from small company.. • 3. The semantic web is also referred as a web 3.O (2010 - above) which refers to the future of web. • 4. In this era computers can interpret information like human via AI and ML
  • 18. REFERENCES: • www.google.com • www.Wikipedia.com • www.slideshare.com • Journals of algorithms and computational technology- by Manisha A Kumbhar