QA-GNN: Reasoning with Language Models and Knowledge Graphs for Question Answering
GraphNews
Google Researchers Open-Source the TensorFlow GNN (TF-GNN): A Scalable Python Library for Graph Neural Networks in TensorFlow
A knowledge graph to interpret clinical proteomics data
Nature Biotechnology - A knowledge graph platform integrates proteomics with other omics data and biomedical databases.
Graph Neural Networks: a learning journey since 2008 — Graph Attention Networks
Today we’ll dive into the theory and implementation of the Graph Attention Network (GAT). In a nutshell: attention rocks, graphs rock…
Learning on graphs with missing features
Feature Propagation is a simple and surprisingly efficient solution for learning on graphs with missing node features
How graph databases took over relationship mapping
It was a thing long before big tech firms used it to work out who knew who, explains AWS
Signal AI opens External Intelligence Graph for enterprise use
Signal AI unveiled its new tool, a data structure that constantly tracks the major and minor events for companies that course through the news sphere each day.
Massive Graph Analytics
Graphs. Such a simple idea. Map a problem onto a graph then solve it by searching over the graph or by exploring the structure of the graph. What could be easier? Turns out, however, that working with graphs is a vast and complex field. Keeping up is challenging. To help keep up, you just need an editor who knows most people working with graphs, and have that editor gather nearly 70 researchers to summarize their work with graphs. The result is the book Massive Graph Analytics. — Timothy G. Mattson, Senior Principal Engineer, Intel Corp Expertise in massive-scale graph analytics is key for solving real-world grand challenges from healthcare to sustainability to detecting insider threats, cyber defense, and more. This book provides a comprehensive introduction to massive graph analytics, featuring contributions from thought leaders across academia, industry, and government. Massive Graph Analytics will be beneficial to students, researchers, and practitioners in academia, national
Data Commons: Making sustainability data accessible
Data Commons brings together sustainability-related data from over 100 sources — on everything from temperature to water availability.
Announcing my new (FREE) course: Basics of Graph Neural Networks ( - Zak Jost on LinkedIn | 12 comments
Announcing my new (FREE) course: Basics of Graph Neural Networks (https://lnkd.in/gkP2VNYz). The focus is to give you a fast, high-level overview of common... 12 comments on LinkedIn
Introduction to Graph Signal Processing
Cambridge Core - Communications and Signal Processing - Introduction to Graph Signal Processing
How to Use a Knowledge Graph to Power a Semantic Data Layer for Databricks
Learn how Databricks and Stardog solve the last mile challenge in democratizing data and insights, providing organizations with the enterprise-wide data fabric architecture to ask and answer complex queries across domain silos.
A curated, ontology-based, large-scale knowledge graph of artificial intelligence tasks and benchmarks
Scientific Data - A curated, ontology-based, large-scale knowledge graph of artificial intelligence tasks and benchmarks
How to Get Started on an Ontology Without Really Trying
Studying the schema of a 'legacy' data warehouse can lead to an ontology hack so easy, it almost feels like cheating.
Why Graph-modeling Frameworks are the Future of Unsupervised Learning
Co-authored by Abhishek Singh, Machine Learning Engineer at Bayer Pharmaceuticals, former Microsoft, JPMorgan Chase & Co, HSBC, and by…
What do graph database benchmarks mean for enterprises?
Emerging graph database benchmarks are already helping to overcome performance, scalability and reliability issues.
Using IRIs in ontologies
I've become increasingly convinced that it's very important to use opaque IRIs when creating ontologies and data in the semantic web space. (For those... 25 comments on LinkedIn
Knowledge Graphs Applied
Knowledge graphs help understand relationships between the objects, events, situations, and concepts in your data so you can readily identify important patterns and make better decisions. This book provides tools and techniques for efficiently labeling data, modeling a knowledge graph, and using it to derive useful insights. /b
In Knowledge Graphs Applied/i you will learn how to:
Model knowledge graphs with an iterative top-down approach based in business needs/li
Create a knowledge graph starting from ontologies, taxonomies, and structured data/li
Use machine learning algorithms to hone and complete your graphs/li
Build knowledge graphs from unstructured text data sources/li
Reason on the knowledge graph and apply machine learning algorithms/li
/ul
Move beyond analyzing data and start making decisions based on useful, contextual knowledge. The cutting-edge knowledge graphs (KG) approach puts that power in your hands. In Knowledge Graphs Applied/i, you’ll discover the theory of knowledge graphs and learn how to build services that can demonstrate intelligent behavior. You’ll learn to create KGs from first principles and go hands-on to develop advisor applications for real-world domains like healthcare and finance.
TigerGraph unveils new tool for machine learning modeling
TigerGraph unveiled a new tool that provides users with a dedicated, open source environment for building machine learning models with graph databases.
Aaron Bradley on LinkedIn: "Huge advances in peer-to-peer systems and attempts to develop the
"Huge advances in peer-to-peer systems and attempts to develop the semantic web have revealed a critical issue in information systems across multiple domains...
TigerGraph launches Workbench for graph neural network ML/AI modeling
TigerGraph's ML Workbench should enable data scientists to build deep-learning AI models using connected data directly from the business.
Beyond Message Passing: a Physics-Inspired Paradigm for Graph Neural Networks
On going beyond message-passing based graph neural networks with physics-inspired “continuous” learning models
Lingfei (Teddy) Wu on LinkedIn: Graph4NLP_Survey.pdf | 17 comments
Apollo launches Supergraph to curate enterprise knowledge
Apollo's new platform, Supergraph, is a collection of tools that can work together to generate reports, dashboards and general answers.
Shifting left on governance: DataHub and schema annotations
Co-authors: Joshua Shinavier and Shirshanka Das
Why Graph-modeling Frameworks are the Future of Unsupervised Learning
Co-authored by Abhishek Singh, Machine Learning Engineer at Bayer Pharmaceuticals, former Microsoft, JPMorgan Chase & Co, HSBC, and by…
Ricky ҈̿҈̿҈̿҈̿҈̿҈̿Costa̿҈̿҈̿҈̿҈̿҈̿҈̿҈̿҈̿҈̿҈̿҈̿҈̿҈̿҈̿҈̿҈ on LinkedIn: GitHub - Cartus/AGGCN: Attention Guided Graph Convolutional Networks
🔥 Attention Guided Graph Convolutional Networks for Relation Extraction 🔥 Code: https://bit.ly/3KdGOKy Graph: https://bit.ly/3FJMRmN...
Knowledge Graph Conference 2022 Themes & Top Takeaways | LinkedIn
Last week I had the pleasure and privilege of attending the 4th annual Knowledge Graph Conference (KGC) at Cornell Tech in NYC. In addition to contributing my own talk on “Boutique Knowledge Graphs” and participating in a panel on “Content Knowledge Graphs,” I attended two days of inspiring and insi
Meet Logseq, an open-source knowledge management system that ‘stores data like a brain’
Logseq is pitching a privacy-focused open-source platform that helps people manage and collaborate around their knowledge bases.
KGTK: Tools for Creating and Exploiting Large Knowledge Graphs, The Web Conference 2022 Tutorial
ISI's Center on Knowledge Graphs research group combines artificial intelligence, the semantic web, and database integration techniques to solve complex information integration problems