GraphNews

3951 bookmarks
Custom sorting
Sign Up | LinkedIn
Sign Up | LinkedIn
500 million+ members | Manage your professional identity. Build and engage with your professional network. Access knowledge, insights and opportunities.
·linkedin.com·
Sign Up | LinkedIn
Linked Data Benchmark Council on Twitter
Linked Data Benchmark Council on Twitter
Congratulations to @TigerGraphDB on being the first to successfully pass an LDBC SNB Business Intelligence workload audit on scale factor 1000. Their setup used the @AMD EPYC 9354 (Genoa) CPUs announced today. The results are available on the LDBC website.https://t.co/X3QocaTsRR pic.twitter.com/3F3J56wa96— Linked Data Benchmark Council (@LDBCouncil) November 10, 2022
·twitter.com·
Linked Data Benchmark Council on Twitter
Sign Up | LinkedIn
Sign Up | LinkedIn
500 million+ members | Manage your professional identity. Build and engage with your professional network. Access knowledge, insights and opportunities.
·linkedin.com·
Sign Up | LinkedIn
Sign Up | LinkedIn
Sign Up | LinkedIn
500 million+ members | Manage your professional identity. Build and engage with your professional network. Access knowledge, insights and opportunities.
·linkedin.com·
Sign Up | LinkedIn
Rules for Knowledge Graphs Rules
Rules for Knowledge Graphs Rules
Should you store business rules in your Enterprise Knowledge Graph (EKG)? This is a non-trivial question, and how you answer it might…
·dmccreary.medium.com·
Rules for Knowledge Graphs Rules
Fraud Detection with Graph Features and GNN
Fraud Detection with Graph Features and GNN
Identifying fraudulent behaviors is becoming increasingly more complex as technology advances and fraudsters constantly evolve new ways to exploit people, companies, and institutions. The complexity grows as companies introduce new channels, platforms, and devices for customers to engage with their brand, manage their accounts, and make transactions. Graph neural networks (GNN) are increasingly being used to identify suspicious behavior. GNNs can combine graph structures, such as email accounts, addresses, phone numbers, and purchasing behavior to find meaningful patterns and enhance fraud detection. In this video we will discuss: - Introduction to TigerGraph - Fraud Detection Challenges - Graph Model, Data Exploration, and Investigation - Visual Rules, Red Flags, and Feature Generation - TigerGraph Machine Learning Workbench: - XGBoost with Graph Features - Graph Neural Network and Explainability
·youtube.com·
Fraud Detection with Graph Features and GNN
Graph Neural Networks as gradient flows
Graph Neural Networks as gradient flows
GNNs derived as gradient flows minimising a learnable energy that describes attractive and repulsive forces between graph nodes.
·towardsdatascience.com·
Graph Neural Networks as gradient flows
Introducing Amazon Neptune Serverless – A Fully Managed Graph Database that Adjusts Capacity for Your Workloads | Amazon Web Services
Introducing Amazon Neptune Serverless – A Fully Managed Graph Database that Adjusts Capacity for Your Workloads | Amazon Web Services
Amazon Neptune is a fully managed graph database service that makes it easy to build and run applications that work with highly connected datasets. With Neptune, you can use open and popular graph query languages to execute powerful queries that are easy to write and perform well on connected data. You can use Neptune for […]
·aws.amazon.com·
Introducing Amazon Neptune Serverless – A Fully Managed Graph Database that Adjusts Capacity for Your Workloads | Amazon Web Services
Why API Security Needs Graph Technology
Why API Security Needs Graph Technology
How graph technology can help strengthen your organization’s security program by providing the right level of context, visibility, and control over its APIs.
·processtempo.com·
Why API Security Needs Graph Technology
Structured Data | 2022 | The Web Almanac by HTTP Archive
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.
·almanac.httparchive.org·
Structured Data | 2022 | The Web Almanac by HTTP Archive
Graph Neural Networks for Natural Language Processing: A Survey
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...
·arxiv.org·
Graph Neural Networks for Natural Language Processing: A Survey
Announcing GUAC, a great pairing with SLSA (and SBOM)!
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
·security.googleblog.com·
Announcing GUAC, a great pairing with SLSA (and SBOM)!
Saga: A Platform for Continuous Construction and Serving of...
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...
·arxiv.org·
Saga: A Platform for Continuous Construction and Serving of...
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 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
·linkedin.com·
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:
The Next Great Digital Advantage
The Next Great Digital Advantage
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.
·hbr.org·
The Next Great Digital Advantage