Interest Taxonomy: A knowledge graph management system for content understanding at Pinterest
To understand trends as they’re happening, @pinteresteng needs to understand content & categories. To do that, they built a taxonomy-based knowledge management system that enables content understanding in a highly efficient way #knowledgegraph #AI #data
Interest Taxonomy: A knowledge graph management system for content understanding at Pinterest
Song Cui and Dhananjay Shrouty | Software Engineers, Content KnowledgeInterest Taxonomy at PinterestWe recently began rolling out the beta version of Pinterest Trends, a new tool that gives a view...
Interview with Oshani Seneviratne – Healthier eating for diabetics with the RPI + IBM Food KG Interview – RPI Food KG with Oshani Seneviratne Tell us about your project. The food knowledge graph (or foodkg) is a joint project between Rensselaer Polytechnic Institute and IBM (part of the IBM AI Horizons Network). The project’s official […]
This short video illustrates weaving #linkeddata image descriptions from an @internetarchive collection and demonstrates machine inference with @dbpedia & @wikidata. An intro for @Imagesnippets #SEO #semantics #knowledgegraph #EmergingTech
After building and selling Heyzap back in 2016 I had free reign to dig into the question of “what should I really be working on?” and how to create something that would have a lasting impact on society. In part of this journey I’ve had the privilege to invest
Introducing Gremlin query hints for Amazon Neptune | AWS Database Blog
Amazon Neptune is a fast, reliable, fully managed graph database, optimized for storing and querying highly connected data. It is ideal for online applications that rely on navigating and leveraging connections in their data. Amazon Neptune supports W3C RDF graphs that can be queried using the SPARQL query language. It also supports Apache TinkerPop property […]
Introducing the Neo4j Graph Data Science plugin with examples from the “Graph Algorithms…
Introducing the Neo4j Graph Data Science plugin with examples from the “Graph Algorithms: Practical Examples in Apache Spark and Neo4j” bookIn the past couple of years, the field of data science has gained much traction. It has become an essential part of business and academic research. Combined with the increasing popularity of graphs and graph databases, folks at Neo4j decided to release a Graph Data Science (GDS) plugin. It is the successor of the Graph Algorithms plugin, that is to be deprecated.Those of you who are familiar with Graph Algorithms plugin will notice that the syntax hasn’t changed much to allow for a smoother transition. To show what has changed, I have prepared the migration guides in the form of Apache Zeppelin notebooks that can be found on GitHub.Neo4j connector for Apache Zeppelin was developed by Andrea Santurbano, who also designed the beautiful home page notebook of this project and helped with his ideas. In the migrations guides, we used the ex
Introduction to Knowledge Graphs and their Applications
#KnowledgeGraphs & #Applications. What makes a KG what it is, is that, unlike a regular database that gets populated & stays dormant, a KG is supposed to re-purpose itself, provide new insights and inferences #datascience #AI #analytics @AnalyticsVidhya
Intuit Tax Knowledge Engine: Practical AI for a Smarter and More Personalized TurboTax
authored by Intuit Distinguished Engineer and Architect, Jay Yu, Distinguished Engineer and Director, Kevin McCluskey, and Distinguished Data Scientist, Saikat Mukherjee.
3DSculptor/Getty Images Every big company now manages a proliferation of sites, apps, and technology systems for interacting with buyers and managing everything in the business, from customers and clients to inventory and products. These systems are spitting out data continuously. But even after multiple generations of investments and billions of dollars of digital transformations, organizations struggle to use that data to improve customer service, reduce costs, and speed the core processes that provide competitive advantage. AI was supposed to help with that. But as an executive at a major life insurance company recently told me (Seth), “Every one of our competitors and most of the organizations of our size in other industries have spent at least a few million dollars on failed AI initiatives.” Why? My 20 years of experience working with companies on their information technology have shown me the reason: because promises of AI vendors don’t pay off unless a company’
On the Role of #KnowledgeGraphs in Explainable #AI: A #MachineLearning Perspective @freddylecue @Inria h/t @aaranged @iswc_conf #iswc2019 #semex2019 #research http://www-sop.inria.fr/members/Freddy.Lecue/presentation/ISWC2019-FreddyLecue-Thales-OnTheRoleOfKnowledgeGraphsInExplainableAI.pdf
ClaimsKG, a #knowledgegraph of fact-checked claims, which facilitates structured queries about their truth values, authors, dates, journalistic reviews and other kinds of metadata. Harvests data from popular fact-checking sites, annotates w @DBpedia
Ivo Velitchkov on Twitter: "Microsoft Academic Knowledge Graph A #SPARQL endpoint to and #RDF dumps of 8 Billion Triples of Scholarly Data. https://t.co/bs6pXoh9Z7 https://t.co/orZEq9Dt8J https://t.co/IUP8FQWk5j… https://t.co/7AchKF5Urw"
Microsoft Academic Knowledge GraphA #SPARQL endpoint to and #RDF dumps of8 Billion Triples of Scholarly Data.https://t.co/bs6pXoh9Z7https://t.co/orZEq9Dt8Jhttps://t.co/IUP8FQWk5j pic.twitter.com/KBvtdAOzwd— Ivo Velitchkov (@kvistgaard) January 8, 2019
JanusGraph on Twitter: "We are proud to announce the release of #JanusGraph 0.4.0 with CQL OLAP support, performance improvements for pre-fetching of properties, and many updated dependencies: TinkerPop, Cassandra, HBase, Bigtable, and BerkeleyDB! Downloa
We are proud to announce the release of #JanusGraph 0.4.0 with CQL OLAP support, performance improvements for pre-fetching of properties, and many updated dependencies: TinkerPop, Cassandra, HBase, Bigtable, and BerkeleyDB! Download now: https://t.co/tEkjTojUs2— JanusGraph (@JanusGraph) July 11, 2019
We just launched official #JanusGraph @Docker images to simplify production deployments and testing! Check out the images at https://t.co/Vo44Bokwpu and see the docs for more info: https://t.co/VLaLwR6jcI— JanusGraph (@JanusGraph) May 8, 2019
John Murray on Twitter: "This is what the resultant 100 retail outlet isochrone map looks like, built using Spatia and @rapidsai #cuGraph SSSP using @OrdnanceSurvey Open Roads as road graph + drive times estimated from @transportgovuk road stats #opendata
This is what the resultant 100 retail outlet isochrone map looks like, built using Spatia and @rapidsai #cuGraph SSSP using @OrdnanceSurvey Open Roads as road graph + drive times estimated from @transportgovuk road stats #opendata cc @puntofisso pic.twitter.com/rGhDinkaVX— John Murray (@MurrayData) May 28, 2019
jQAssistant | Your Software . Your Structures . Your Rules
.@jQAssistant is a #QA tool which allows definition & validation of project specific rules on a structural level. Built upon #Neo4j #graphdatabase, can be plugged into build process. Now w/ #PlantUML class diagrams #dataviz #softwareengineering
Juan Sequeda on Twitter: "#W3CGraphWorkshop @b2ebs’s Keynote - Neptune seems to be favorite amazon product launch of 2018. People love graphs - “Graph let’s me integrate data like crazy” - View market as customers who could benefit from graphs - Devs from
#W3CGraphWorkshop @b2ebs’s Keynote- Neptune seems to be favorite amazon product launch of 2018. People love graphs- “Graph let’s me integrate data like crazy”- View market as customers who could benefit from graphs- Devs from RDB find PG natural. Info arch find RDF natural pic.twitter.com/6tJDy0FKDz— Juan Sequeda (@juansequeda) March 4, 2019
Juan Sequeda on Twitter: "#W3CGraphWorkshop Alastair Green @neo4j: - It’s always hard to agree. It’s a social process! - PG has to get organized. A lot going on: openCypher, PGQL, SQL/PGQ, G-CORE. RDF seems to be more organized. - Cooperate to define reas
#W3CGraphWorkshop Alastair Green @neo4j: - It’s always hard to agree. It’s a social process!- PG has to get organized. A lot going on: openCypher, PGQL, SQL/PGQ, G-CORE. RDF seems to be more organized. - Cooperate to define reasonable interoperation standards. pic.twitter.com/uEpZg4Jyd4— Juan Sequeda (@juansequeda) March 4, 2019
Happy to share what the Property Graph Schema Working Group has been working on for a few months. Slides https://t.co/7TzSMPobnqIndustry Survey https://t.co/MdfK1fL2wiUse Case & Requirements https://t.co/4ZuCy6zT6ZAcademic Survey https://t.co/J7rZYioIHG #W3CGraphWorkshop— Juan Sequeda (@juansequeda) March 4, 2019