How graph technology can help strengthen your organization’s security program by providing the right level of context, visibility, and control over its APIs.
Structured Data | 2022 | The Web Almanac by HTTP Archive
Structured Data chapter of the 2022 Web Almanac covering adoption and year on year change of RDFa, Opne Graph, Twitter, JSON-LD, Microdata, Facebook, Dublin Core, Microformats and microformats2 structured data.
Graph Neural Networks for Natural Language Processing: A Survey
Deep learning has become the dominant approach in coping with various tasks
in Natural LanguageProcessing (NLP). Although text inputs are typically
represented as a sequence of tokens, there isa...
Announcing GUAC, a great pairing with SLSA (and SBOM)!
#Google GUAC (Graph for Understanding Artifact Composition)
Early stage, yet could change how the industry understands software #supplychains
Free tool brings together sources of #software security metadata
Collection - Ingestion - Collation - Query
Saga: A Platform for Continuous Construction and Serving of...
We introduce Saga, a next-generation knowledge construction and serving platform for powering knowledge-based applications at industrial scale. Saga follows a hybrid batch-incremental design to...
Summarizing in figures this excellent systematic survey of 507 papers on the state of #KnowledgeGraphs in #NLP since the first Internet-age KG was announced 10 years ago, in the order of appearance:
Summarizing in figures this excellent systematic survey of 507 papers on the state of #KnowledgeGraphs in #NLP since the first Internet-age KG was announced 10… | 12 comments on LinkedIn
We’ve all seen the signs in front of McDonald’s announcing “Over X Billion Served” and have watched the number rise over the years. But tracking how many burgers are sold every day, month, or year is a relic of the past. Today ask: Do we know where each consumer buys her burgers? At what time? What does she drink with it? What does she do before or after buying a burger? How can we satisfy more of her needs so that she keeps coming back? Datagraphs capture this information, helping to reshape competition in every sector. Leaders must invest in upgrading their data architecture to enable a real-time, comprehensive view of how consumers interact with their products and services so that they can develop unique ways to solve customer problems.
Embrace Complexity — Conclusion Building Your Organisation's Knowledge Graph
A powerful idea has been slowly building for many years now, originally known as the Semantic Web, and then later as Linked Data. This idea has finally... 27 comments on LinkedIn
The Four Principles of Semantic Parsing - DataScienceCentral.com
Learn about the Four Principles of Semantic Parsing: The Parser Principle, The Data Uncertainty Principle, The Data Entropy Principle, and The Principle of Deferred Semantics.
A Decade of Knowledge Graphs in Natural Language Processing: A Survey
In pace with developments in the research field of artificial intelligence, knowledge graphs (KGs) have attracted a surge of interest from both academia and industry. As a representation of...
A Library for Representing Python Programs as Graphs for Machine Learning
Graph representations of programs are commonly a central element of machine learning for code research. We introduce an open source Python library python_graphs that applies static analysis to...
AWS Deep Graph Knowledge Embedding for Bond Trading Predictions
AWS developed the Deep Graph Knowledge Embedding Library (DGL-KE), a knowledge graph embedding library built on the Deep Graph Library (DGL). DGL is a scalable, high performance Python library for deep learning in graphs. This library is used by the advanced machine learning systems developed with Trumid to build a credit trading platform.
Elsevier just published a #linkeddata extension for #VSCode
Happy to announce that we just published our #linkeddata extension for #VSCode. Visualize, transform, validate and query your #rdf directly on your files...