Cambridge Intelligence launches ReGraph for React developers - Cambridge Intelligence
Looking for a visualization element to add to your React application? Cambridge Intelligence today launched an Early Access Program for ReGraph, a brand new graph data visualization toolkit for React developers.
Cambridge Semantics Adds OpenCypher to AnzoGraph- Cambridge Semantics is First Vendor to Offer both RDF/SPARQL and OpenCypher Graph Data Access
BOSTON (PRWEB) March 25, 2019 Cambridge Semantics, the leading provider of modern data discovery and integration software for enterprise data fabrics, today announced the addition of OpenCypher t
Cambridge Semantics Adds Unstructured 2.0 Capabilities to Its AnzoⓇ Data Management and Analytics Platform
BOSTON (PRWEB) August 22, 2019 Cambridge Semantics, the leading provider of modern data management and analytics software, today announced significant updates to its award-winning Anzo® data disc
Cambridge Semantics AnzoGraph™ Debuts on Amazon AWS Marketplace
BOSTON (PRWEB) January 31, 2019 Cambridge Semantics, the leading provider of big data management and enterprise analytics software, today announces availability of its AnzoGraph Graph warehouse (
Cambridge Semantics Awarded Highest Rating for Analytic Processing Environments in the Graph Database Market Update 2019 by Bloor Research
BOSTON (PRWEB) January 23, 2019 Cambridge Semantics, the leading provider of big data management and enterprise analytics software, announced that its AnzoGraph Graph Database product was rated h
Cambridge Semantics Recognized for Leadership in Use of OLAP Knowledge Graph Technology for Accelerated Data Integration
This week, Cambridge Semantics was named a Leader in The Forrester Wave™: Enterprise Data Fabric, Q2 2020, and we could not be more delighted. Forrester used 25 criteria to evaluate the 15 most significant enterprise data fabric vendors to show how each vendors' platforms measure up in their ability to accelerate data integration, minimize the complexity of data management, and quickly deliver use cases. Cambridge Semantics received top scores for Vision, Road Map, Solution Awareness, Data Preparation, Data Integration, Data Catalog, and Data Processing. This evaluation, we believe, validates Cambridge Semantics' breakthrough approach to the data fabric, and reflects the feedback we are hearing from customers and partners using our solution to integrate and manage large volumes of data quickly and at scale.
Can knowledge graphs help untangle the RegTech data management puzzle
based Technology Enables Companies in the Financial Sector to Quickly and Efficiently Integrate and Analyze the Explosion of Disparate Data from RegulatorsOver the past decade, the advance of digital innovation combined with the growing number of regulatory guidelines in all jurisdictions has sped up the rise of Regulatory Technology, or RegTech for short. Originally, its main application was to enhance regulatory processes in the Financial sector, but nowadays it is expanding more and more in to any regulated business. A good sign that this technology is steadily going mainstream is also the fact that more and more regulatory bodies are supporting RegTech development and implementation.According to a September 2019 report from Juniper Research, the value of global spending on RegTech is expected to jump to more than US $127 billion by 2024, up from US$25 billion spent in 2019. Automation in Know Your Customer (KYC) processes and background checks are set to be so
Capture graph changes using Neptune Streams | AWS Database Blog
Many graph applications can benefit from the ability to capture changes to items stored in an Amazon Neptune database, at the point in time when such changes occur. Amazon Neptune now supports Neptune Streams, a fully managed feature of Neptune that reliably logs every change to your graph as it happens, in the order that […]
Case Study: Semantic Web Ontologies and Geoscience Collaboration Helps the Planet - DATAVERSITY
Case Study: In the geoscience community, collaboration is critical. Different disciplines — engineering geologists, geochemists, hydrologists — need to share their findings with each other to address big questions about the earth. Ontologies and knowledge graph technology is leveraged with COR to manage and exchange terms and vocabularies that assist scientists in publishing, discovering, and reusing data.
Roundup of #AWS Neptune #graphDB recent announcements, plus insights by @TonyBaer: Given much data, #IoT #socialnetworks etc, captured by graphs lives outside #datacenter, one more reason #cloud should be natural home for graph #databases. Getting there
Roundup of #AWS Neptune #graphDB recent announcements, plus insights by @TonyBaer: Given much data, #IoT #socialnetworks etc, captured by graphs lives outside #datacenter, one more reason #cloud should be natural home for graph #databases. Getting there
Causaly Raises $5M Series A by Pentech, EBRD & Marathon
.@CausalyAI #AI #medical #research #startup gets $5M investment to enable discovery of causal evidence, insights from documents. Machine-reading platform turns text to causal #knowledgegraphs applies #machinelearning to surface new knowledge #EmergingTech
Cf. this discussion on the #schema.org mailing list kicked off by this post's author lists.w3.org/Archives/Publi… Quoted tweet from @datao: blog.sparna.fr/2020/02/20/sem…
Cf. this discussion on the #schema.org mailing list kicked off by this post's author lists.w3.org/Archives/Publi…
Clinical Knowledge Graph Integrates Proteomics Data into Clinical Decision-Making
making process will be essential to accomplish precision medicine goals. However, quantity and diversity of biomedical data, and the spread of clinically relevant knowledge across myriad biomedical databases and publications makes this exceptionally difficult. To address this, we developed the Clinical Knowledge Graph (CKG), an open source platform currently comprised of more than 16 million nodes and 220 million relationships to represent relevant experimental data, public databases and the literature. The CKG also incorporates the latest statistical and machine learning algorithms, drastically accelerating analysis and interpretation of typical proteomics workflows. We use several biomarker studies to i
Collaborative Policy Learning for Open Knowledge Graph Reasoning. (arXiv:1909.00230v1 [cs.AI])
In recent years, there has been a surge of interests in interpretable graph reasoning methods. However, these models often suffer from limited performance when working on sparse and incomplete...
Coloring a Sudoku graph with #Neo4j #opensource #GraphDB. The K-1 coloring #algorithm in Neo4j's latest release tries to assign colors to the nodes of a graph in such a way that adjacent nodes are different colors. #datascience #software #data #tech
Money laundering is among the hardest activities to detect in the world of financial crime. Funds move in plain sight through standard financial instruments, transactions, intermediaries, legal entities and institutions – avoiding detection by banks and law enforcement. The costs in regulatory fines and damaged reputation for financial institutions are all too real. Neo4j provides an advanced, extensible foundation for fighting money laundering, reducing compliance costs and protecting brand value.
Combining Knowledge Graphs and Ontologies for Dynamic Apps | AI3:::Adaptive Information
When used for KR, we can treat the terms 'knowledge graph' and 'ontology' as interchangeable. But ontologies also have a broader use as specifications for dynamic, ontology-driven applications, a distinction this article emphasizes.
Combining knowledge graphs, quickly and accurately
answering service — among other things.Expanding a knowledge graph often involves integrating it with another knowledge graph. But different graphs may use different terms for the same entities, which can lead to errors and inconsistencies during integration. Hence the need for automated techniques of entity alignment, or determining which elements of different graphs refer to the same entities.In a paper accepted to the Web Conference, my colleagues and I describe a new entity alignment technique that factors in information about the graph in the vicinity of the entity name. In tests involving the in