The Property Graph features are included for free in every edition of the @OracleDatabase - here's what's new in 20c: blogs.oracle.com/oraclespatial/… #oraclegraph #Analytics #DataScience https://t.co/hXlgPgxcxJ
here's what's new in 20c: blogs.oracle.com/oraclespatial/… #oraclegraph #Analytics #DataScience https://t.co/hXlgPgxcxJ
Aaron Bradley retweeted: To help promoting the usage of @wikidata , here's another attempt to explain properties of statements with one of the most used qualifiers "start time" (pq:P850). Try it: https://t.co/tvOeWK7qBM #SPARQL #LinkedData https://t.co/Rs
To help promoting the usage of @wikidata , here's another attempt to explain properties of statements with one of the most used qualifiers "start time" (pq:P850).Try it: https://t.co/tvOeWK7qBM#SPARQL #LinkedData pic.twitter.com/RshdPRx92D— Ivo Velitchkov (@kvistgaard) February 20, 2020
We all talk about #knowledgegraphs but do we really know what it takes to build one? Here's a step-by-step list of how to build a KG assembled by @TheodoraPetkova w/ the help of our #semantictechnology experts. hubs.ly/H0n5B970 #semantics #SPARQL #datamod
step list of how to build a KG assembled by @TheodoraPetkova w/ the help of our #semantictechnology experts. hubs.ly/H0n5B970 #semantics #SPARQL #datamodelling #linkeddata
Very nice article highlighting recent proof that complete graphs can be decomposed into smaller multiple trees. twitter.com/QuantaMagazine… Quoted tweet from @QuantaMagazine: Mathematicians have proved a 60-year-old problem in combinatorics called Ringel’
Very nice article highlighting recent proof that complete graphs can be decomposed into smaller multiple trees. twitter.com/QuantaMagazine…
multiple tables linked by connected fields. Setting up a relational database requires a person who understands data structures. And if new information is added, or new relationships become important, the database administrator will need to change the structure of the database and, most likely, update the user interface as well. So what do you do if you have a data set where you can't map out the relationships ahead of time? Where instead of being connected by a single data point, people can be connected by things you can't predict in advance? Maybe two people are on the same baseball team or like the same types of books or live in the same city. Adding each of those items as a separa
At Madgex, we power job board technology for over 200 brands all around the world, and that number is growing all the time. With our scale and reach, we have a lot of data at our fingertips, so we evolved our Data Science team to look at Machine Learning and Knowledge Graph models to enhance the experience for users of our platform. We started by looking at jobs, and asking the basic question... when we talk about a ‘job’ what exactly do we mean?
How contextual monitoring using graph analytics can improve your data insights
world relationships to be recorded and analysed without losing information. Questions can then be asked of the data, such as the strength and direction of relationships between objects in the graph. Graphs are mathematical structures utilised to model numerous forms of relationships and processes in information
Congratulations Mark! I like this: "the Hy language ... offers transparent access to Python Deep Learning frameworks with a bottom-up Lisp development style that I have used for decades using symbolic AI and knowledge representation." Quoted tweet from @m
up Lisp development style that I have used for decades using symbolic AI and knowledge representation."
The Stanford AI Lab retweeted: The #3dscenegraph automatic semantic labeling and computation code is now available at github.com/StanfordVL/3DS…! To learn more about the project visit https://t.co/vT1sLlTosC https://t.co/eh4xf9DG0v
The #3dscenegraph automatic semantic labeling and computation code is now available at https://t.co/08lm1L35LX! To learn more about the project visit https://t.co/vT1sLlTosC pic.twitter.com/eh4xf9DG0v— Iro Armeni (@ir0armeni) February 19, 2020
See articles in the new DATA INTELLIGENCE Journal: mitpressjournals.org/toc/dint/curre… Editors: @jahendler @barendmons, Ying Ding info.sice.indiana.edu/~dingying/ ————— #LinkedData #BigData #DataScience #AI #MachineLearning #Semantic #Metadata #Knowledge
See articles in the new DATA INTELLIGENCE Journal: mitpressjournals.org/toc/dint/curre…
Scalable graph machine learning: a mountain we can climb?
hand that when trying to apply graph machine learning techniques to identify fraudulent behaviour in the bitcoin blockchain data, scalability was the biggest roadblock. The bitcoin blockchain graph we are using has millions of wallets (nodes) and billions of transactions (edges) which makes most graph machine learning methods infe
Apply web scraping bots , computational linguistics, and natural language processing algorithms to build knowledge graphsContinue reading on Towards Data Science »
"Wikipedia2Vec: An Efficient Toolkit for Learning and Visualizing the Embeddings of Words and Entities from Wikipedia" Python-based open tool for learning word and entity embeddings from #Wikipedia, now with a web demo. demo: https://t.co/Gv5EBXWbuX pap
Wikipedia2Vec: #Python #opensource tool for learning word & entity embeddings from #Wikipedia. Demo: https://t.co/Gv5EBXWbuX #Research paper: https://t.co/GGbQjQolJe #datascience #AI #NLP h/t @aaranged
The role of knowledge graphs in robojournalism at SentiLecto project twib.in/l/BKrz5KbdnXBA via @medium https://t.co/gMXO2WewL8
Facilitating #journalism #automation via #knowledgegraphs. KG nodes corresponding to news articles, arrows show their connections. Generated using @sentilecto_NLU, allows navigating the spacial representation of a set of related texts #AI h/t @aaranged
The new language model our teams built is the largest and most powerful one ever created – a milestone with the promise to transform how technology understands and assists us. https://t.co/YvLM0HAr8u— Satya Nadella (@satyanadella) February 12, 2020
Diego Moussallem retweeted: New from Google Research! REALM: realm.page.link/paper We pretrain an LM that sparsely attends over all of Wikipedia as extra context. We backprop through a latent retrieval step on 13M docs. Yields new SOTA results for open do
New from Google Research! REALM: https://t.co/kS2oTyxAAjWe pretrain an LM that sparsely attends over all of Wikipedia as extra context. We backprop through a latent retrieval step on 13M docs. Yields new SOTA results for open domain QA, breaking 40 on NaturalQuestions-Open! pic.twitter.com/DYDFX69Td8— Kelvin Guu (@kelvin_guu) February 11, 2020
This year, the @UGent Web Development course kicks off with a very special guest: @timberners_lee introduces to our students his invention that changed the world. Not “vague but exciting”—rather crystal clear and as passionate as ever. https://t.co/E4JQH3bFfM
This is great, and don’t miss the other ontologies at this excellent subdomain name. Quoted tweet from @fantasticlife: For anyone with the good fortune to attend the @StudyofParl conference and sit through me & @bitten_ talking about parliamentary procedu
This is great, and don’t miss the other ontologies at this excellent subdomain name.
Our physical embedding model for #knowledgegraphs achieve quasi-linear scalability. Check out the video by @_CaglarDemir at https://t.co/9n8tkZoWXg #MachineLearning #OpenScience @knowgraphs— Axel Ngonga (@NgongaAxel) February 14, 2020
Constructing Knowledge Graph for Social Networks in A Deep and Holistic Way (sites.google.com/view/www2020-t…) by LinkedIn Mining signed networks: theory and applications (justbruno.github.io/signed-network…) by Aalto University #webconf