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Structuring Unstructured Content: The Power of Knowledge Graphs and Content Deconstruction
Structuring Unstructured Content: The Power of Knowledge Graphs and Content Deconstruction
Unstructured content is ubiquitous in today’s business environment. In fact, the IDC estimates that 80% of the world’s data will be unstructured by 2025, with many organizations already at that volume. Every organization possesses libraries, shared drives, and content management systems full of unstructured data contained in Word documents, power points, PDFs, and more. Documents like these often contain pieces of information that are critical to business operations, but these “nuggets” of information can be difficult to find when they’re buried within lengthy volumes of text. For example, legal teams may need information that is hidden in process and policy documents, and call center employees might require fast access to information in product guides. Users search for and use the information found in unstructured content all the time, but its management and retrieval can be quite challenging when content is long, text heavy, and has few descriptive attributes (metada
·enterprise-knowledge.com·
Structuring Unstructured Content: The Power of Knowledge Graphs and Content Deconstruction
Studio's Been Studious - Stardog
Studio's Been Studious - Stardog
We’ve just released a new version of our Stardog Studio IDE. Now we want to tell you all about it.
·stardog.com·
Studio's Been Studious - Stardog
Subgraphing without subgraph()
Subgraphing without subgraph()
Subgraphing is a common use case when working with graphs. We often find ourselves wanting to take some small portion of a graph and then operate only upon it. Gremlin provides subgraph() step, which helps to make this operation relatively easy by exposing a way to produce an edge-induced subgraph that is detached from the parent graph.
·stephen.genoprime.com·
Subgraphing without subgraph()
Szymon Klarman on LinkedIn: #linkeddata #sdgs #sustainability
Szymon Klarman on LinkedIn: #linkeddata #sdgs #sustainability
LinkedSDGs: linking information resources & discovering connections to #SDGs 1) upload document 2) extract key concepts 3) find links to #SDGs & relevant stats #linkeddata & knowledge extraction resources @SustDev #opendata #data #tech #sustainability [LINK]https://www.linkedin.com/feed/update/urn:li:activity:6628584405906661376/ [LINK]https://media-exp1.licdn.com/dms/image/C5622AQELLgccoCKFCw/feedshare-shrink_800/0?e=1583366400&v=beta&t=pfry2nj7rsH7Ex5cOs36op-Wdn0Y1lyvsYVUhMzEj7k
·linkedin.com·
Szymon Klarman on LinkedIn: #linkeddata #sdgs #sustainability
Taxonomies vs. Ontologies
Taxonomies vs. Ontologies
Ontological metadata, being machine- as well as human-, readable, can drive processes, reduce data redundancy, and can be used to surface new information through inferencing and rich querying/updates. Ontologies will enrich taxonomies and make them more useful to the organization overall.
·forbes.com·
Taxonomies vs. Ontologies
Taxonomy Development in a Linked Data World
Taxonomy Development in a Linked Data World
Taxonomy Development in a #LinkedData World by @aaranged @cosmicangler at @tbc_london The big idea: Because the world we live in is big and complex, we need to go about the job of taxonomy development in a way that matches that
·slideshare.net·
Taxonomy Development in a Linked Data World
Taxonomy is dead... | LinkedIn
Taxonomy is dead... | LinkedIn
One might expect to see “Long Live Taxonomy!” following the above statement just to keep the tradition going of announcing a new king, but sadly that’s not the case. Taxonomy, as we’ve known it, built it, used it, sold it and relied on it for a living for a long time, is, according to Gartner’s 2018
·linkedin.com·
Taxonomy is dead... | LinkedIn
Temporal Graph Networks
Temporal Graph Networks
world problems involving networks of transactions of various nature and social interactions and engagements are dynamic and can be modelled as graphs where nodes and edges appear over time. In this post, we describe Temporal Graph Network, a generic framework for deep learning on dynamic graphs.
·experfy.com·
Temporal Graph Networks
TerminusDB Community – Medium
TerminusDB Community – Medium
An open source database for data people. Join the data-centric revolution!
·medium.com·
TerminusDB Community – Medium
That’s why Google is so reluctant to answer… even if it knows the answer!
That’s why Google is so reluctant to answer… even if it knows the answer!
Photo by AndreyPopov on iStockWe all use the Google Knowledge Graph tens of times a day, but maybe not many of us are aware to be actually querying the Graph while making a simple search on Google.When you search for something, for example, “Goldman Sachs”, what you get is a list of snippets of web pages plus an Infobox next to the search results.The Knowledge Graph behind your Google search allows to enhance the search engine with specific and possibly useful features on the “entity” you are looking for (in this case Goldman Sachs), gathered from a variety of sources. So, allegedly, Google Knowledge Graph enhances the result of our search with semantics [4].Let’s now try to consider reasoning.Now, say we are studying Goldman Sachs for some reason and we wish to know whether there is some person x in Goldman Sachs board who is the CEO of some other company y that is in the Tech field?Or in other terms, in a ‘fancy’ logic conjunctive query fashion:∃ x y board(Goldm
·medium.com·
That’s why Google is so reluctant to answer… even if it knows the answer!
The AI That Can Accelerate the Development of New Drugs amid the Coronavirus Outbreak
The AI That Can Accelerate the Development of New Drugs amid the Coronavirus Outbreak
Cases of the Wuhan coronavirus have been confirmed around the globe, reminding us that the capacity to quickly develop, test and deploy new drugs is essential to save lives. Unfortunately, experts say we still are years away from a vaccine for the virus. However, a type of artificial intelligence can speed up the drug development process that already exists, but it hasn’t yet been deployed at scale.
·linkedin.com·
The AI That Can Accelerate the Development of New Drugs amid the Coronavirus Outbreak
The Art of Compromise — finding an optimal Knowledge Graph solution
The Art of Compromise — finding an optimal Knowledge Graph solution
time.Therefore, we have recognised that building a “Talent Knowledge Graph” will allow us to effectively operate in our domain as well as to fully unlock the predictive power of artificial intelligence and provide unique insights from our heterogeneous data sources.After Google’s reveal of its Knowledge Graph platform in 2012, the term has been rapidly growing in popularit
·medium.com·
The Art of Compromise — finding an optimal Knowledge Graph solution
The Benefits of Graph Databases [Infographic]
The Benefits of Graph Databases [Infographic]
What’s the difference between AnzoGraph and many other graph databases on the market? This infographic highlights the many nuances between them.
·blog.cambridgesemantics.com·
The Benefits of Graph Databases [Infographic]
The best (and new) survey on the theoretical aspects of GNNs I'm aware of. So many illustrative examples of what GNN can and cannot distinguish. A Survey on The Expressive Power of Graph Neural Networks arxiv.org/abs/2003.04078 #gnn #gml
The best (and new) survey on the theoretical aspects of GNNs I'm aware of. So many illustrative examples of what GNN can and cannot distinguish. A Survey on The Expressive Power of Graph Neural Networks arxiv.org/abs/2003.04078 #gnn #gml
The best (and new) survey on the theoretical aspects of GNNs I'm aware of. So many illustrative examples of what GNN can and cannot distinguish.
·twitter.com·
The best (and new) survey on the theoretical aspects of GNNs I'm aware of. So many illustrative examples of what GNN can and cannot distinguish. A Survey on The Expressive Power of Graph Neural Networks arxiv.org/abs/2003.04078 #gnn #gml