Georgia Tech, UC Davis, Texas A&M Join NVAIL Program with Focus on Graph Analytics - NVIDIA Developer News CenterNVIDIA Developer News Center
GitHub - Accenture/AmpliGraph: Python library for Representation Learning on Knowledge Graphs
Python library for Representation Learning on Knowledge Graphs https://docs.ampligraph.org - Accenture/AmpliGraph
GitHub - knowsys/vlog4j: Java library based on the VLog rule engine
VLog, a new rule based reasoner on #KnowledgeGraphs, with #opensource implementation on #Github #iswc_conf #research #sfotwareengineering h/t
GitHub - opencypher/cypher-for-gremlin: Cypher for Gremlin adds Cypher support to any Gremlin graph database.
Cypher for Gremlin adds Cypher support to any Gremlin graph database. - opencypher/cypher-for-gremlin
Global Graph Database Market is projected to be around USD 5.6 Billion by 2024 – Industry News Network
Global Graph Database Market Size, Prospects, Growth Trends, Key Trend, Future Expectations and Forecast from 2019 to 2025 – Express Press Release Distribution
Albany, US, 2019-Jan-23 — /EPR Network/ —Market Research Hub (MRH) has actively included a new research study titled “Global Graph Database Market” Size
Graph Algorithms in Neo4j: Closeness Centrality
Learn more about the Closeness Centrality graph database algorithm, which measures how a central a node is within its cluster.
Graph Data Modeling: Categorical Variables - Neo4j Developer Blog - Medium
Property graphs provide a lot of flexibility in data modeling; but how do you know when to use which feature?
Graph data modelling - inferred vs explicit categories and labels – pablissimo.com
When building graph data models we frequently have to deal with a degree of polymorphism for our entities just like the real world. For instance – I’m a person, but I’m also a parent, a spouse, a sibling, a child, a… Implicit categorisation Sometimes the entity categories are entirely defined by relationships to other entities. […]
Graph Database vs. Document Database: Different Levels of Abstraction - DATAVERSITY
Graph databases and document databases make up a subcategory of non-relational databases or NoSQL. NoSQL databases were created to get a handle on large amounts of messy Big Data, moving very quickly. Managers use the non-relational toolkit to gain business insights and detect patterns in information on the fly, as Big Data streams into the system. Many companies, especially those with a large web presence like Google, Facebook, and Twitter, consider NoSQL databases a must-have.
Graph databases - why so hard?
Graph databases are shaped the way we think, so why can't people get their heads around them?
Graph Databases: The Key to Groundbreaking Medical Research
Neo4j’s Alicia Frame explains how life science researchers can exploit graph databases to get truly granular insight into big data to make major leaps forward in medical research.Complex data sets hold the key to advancing medical breakthroughs. These data sets tend to be voluminous and heterogeneous by nature, presenting an insurmountable challenge for traditional data analysis methods as they struggle to link patterns and outcomes. The unfortunate consequence is a slowdown in the progress of research.Anyone who works in life sciences is aware that they are working with highly connected information; the challenge is making sense of these connections. Unfortunately, many scientists are still using relational databases and spreadsheets which makes mapping important patterns and connections unintuitive and difficult, if not impossible.Graph technologyGraph technology is emerging as an enabler for researchers to trawl gargantuan amounts of unstructured data, turning it into valuab
graph visualization - April.mydearest.co
GraphDB 9.2 Supports RDF* to Match the Expressivity of Property Graphs - Ontotext
Ontotext releases GraphDB 9.2 featuring the anticipated support for RDF*/SPARQL* and improvements in the plug-ins for semantic similarity and versioning.
Graphs Analytics for Fraud Detection - Towards Data Science
Graphs #Analytics for Fraud Detection, using Graph #NeuralNetworks for Anomaly detection. GraphSAGE is Stanford #opensource project: deep neural network-based NRL toolkit, implemented in Tensorflow, making it ideal to develop an anomaly detection system
Graphs and ML: Remembering Models – neo4j – Medium
A Developer’s Log
Home - Trovares
How many truths can you handle?
Managing multiple truths in #datamodeling, #ontologies & #knowledgegraphs by @palexop #semantics #vagueness #datascience #dataengineering #EmergingTech #dmzone #presentation
How to Avoid Doppelgängers in a Graph Database
Comunica: a Modular SPARQL Query Engine for the Web
Apache Atlas and JanusGraph – graph-based meta data management
Gain a basic understanding of graph-based meta data management in enterprise data governance with Apache Atlas as a prime example.
Trying Not to Die Benchmarking | Proceedings of the 13th International Conference on Semantic Systems
What Are the Criteria to Differentiate Between Graph Databases? - DZone Database
This article takes a look at insight into evaluating a graph database gained from benchmarking different graph databases. Also explore loading capabilities.
TigerGraph Announces Free Trial Program for Graph Analytics
Enables Users to Experience the World’s Fastest Graph Analytics Platform Designed to Unleash the Power of Interconnected Data for Deeper Insights and Better Outcomes
RDF.js: The new RDF and Linked Data JavaScript library from Thomas Bergwinkl on 2018-04-23 (public-rdfjs@w3.org from April 2018)
An introduction to using Keras with Neo4j
We demonstrate connecting a Neo4j graph database to Keras. We build a neural network achieving 100% test accuracy on a simple review…
Decyphering Your Graph Model
Watch the GraphConnect presentation by Dom Davis, cofounder of Tech Marionette, to discover the benefits of building a meta graph model for your domain.
Introducing Neo4j Bloom: Graph Data Visualization for Everyone
Discover Neo4j Bloom, the latest product from the Neo4j team. This graph data visualization tool helps traditional Neo4j users communicate with their non-technical peers in a simple manner that reveals and explains the concepts of data connectedness for all people, regardless of technical background.
Meet SemSpect: A Different Approach to Graph Visualization [Community Post]
Discover a new way to visualize and explore your connected data with SemSpect: a unique approach to graph visualization that doesn't depend on using random or best-guess Cypher queries in order to explore your data's meta-graph and that is compatible with Neo4j (including RDF datasets).
Why You Should Start Thinking About Your Organization as a Graph
Discover why your organization is a knowledge graph is essentail to build a competitive advantage with a graph dabase and machine learning algorithms.