DeepGraph AI is open-sourcing GraphLite—the first fully open-source embedded graph database implementing the ISO GQL standard
I'm excited to announce that DeepGraph AI is open-sourcing GraphLite—the first fully open-source embedded graph database implementing the ISO GQL standard (ISO/IEC 39075:2024) in Rust.
Facebook, one of the world's largest social media platforms, fundamentally organizes its billions of users and their interactions as a vast social network. At the heart of this organization lies the concept of a graph—a mathematical structure consisting of nodes (or vertices) connected by edges (or
QLever's distinguishing features · ad-freiburg/qlever Wiki · GitHub
Graph database implementing the RDF and SPARQL standards. Very fast and scales to hundreds of billions of triples on a single commodity machine. - ad-freiburg/qlever
When we present QLever, people often ask "how is this possible" as our speed and scale is on another dimension. We now have a page in the wiki that goes into a bit more detail on why and how this is possible. In short:
• Purpose built for large scale graph data, not retrofitted
• Indexing optimized for fast queries without full in-memory loading
• Designed in C++ for efficiency and low overhead
• Integrated full text and spatial search in the same engine
• Fast interactive queries even on hundreds of billions of triples
Link to the wiki page in the comments.
Qlever: graph database implementing the RDF and SPARQL standards. Very fast and scales to hundreds of billions of triples on a single commodity machine.
Sounds to good to be true, anyone tested this out?
https://lnkd.in/esXKt79J #GraphDatbase #ontology #RDF | 14 comments on LinkedIn
Labeled Meta Property Graphs (LMPG): A Property-Centric Approach to Graph Database Architecture
Discover how LMPG transforms graph databases by treating properties as first-class citizens rather than simple node attributes. This comprehensive technical guide explores RushDB's groundbreaking architecture that enables automatic schema evolution, property-first queries, and cross-domain analytics impossible in traditional property graphs or RDF systems.
A sophisticated knowledge graph memory system that stores interconnected information with rich semantic structure using Neo4j.
A sophisticated knowledge graph memory system that stores interconnected information with rich semantic structure using Neo4j. - shuruheel/mcp-neo4j-shan
Announcing the formation of a Data Façades W3C Community Group
I am excited to announce the formation of a Data Façades W3C Community Group.
Façade-X, initially introduced at SEMANTICS 2021 and successfully implemented by the SPARQL Anything project, provides a simple yet powerful, homogeneous view over diverse and heterogeneous data sources (e.g., CSV, JSON, XML, and many others). With the recent v1.0.0 release of SPARQL Anything, the time was right to work on the long-term stability and widespread adoption of this approach by developing an open, vendor-neutral technology.
The Façade-X concept was born to allow SPARQL users to query data in any structured format in plain SPARQL. Therefore, the choice of a W3C community group to lead efforts on specifications is just natural. Specifications will enhance its reliability, foster innovation, and encourage various vendors and projects—including graph database developers — to provide their own compatible implementations.
The primary goals of the Data Façades Community Group is to:
Define the core specification of the Façade-X method.
Define Standard Mappings: Formalize the required mappings and profiles for connecting Façade-X to common data formats.
Define the specification of the query dialect: Provide a reference for the SPARQL dialect, configuration conventions (like SERVICE IRIs), and the functions/magic properties used.
Establish Governance: Create a monitored, robust process for adding support for new data formats.
Foster Collaboration: Build connections with relevant W3C groups (e.g., RDF & SPARQL, Data Shapes) and encourage involvement from developers, businesses, and adopters.
Join us!
With Luigi Asprino Ivo Velitchkov Justin Dowdy Paul Mulholland Andy Seaborne Ryan Shaw ...
CG: https://lnkd.in/eSxuqsvn
Github: https://lnkd.in/dkHGT8N3
SPARQL Anything #RDF #SPARQL #W3C #FX
announce the formation of a Data Façades W3C Community Group
Many teams adopt graph databases believing they need specialized tools for relationship data, adding unnecessary complexity to their stack. This session reveals that for most use cases, the performance benefits don't justify the overhead. You'll learn to evaluate whether you truly need graph DB capabilities and how to implement graph patterns using simpler alternatives.
Introducing Brahmand: a Graph Database built on top of ClickHouse
Introducing Brahmand: a Graph Database built on top of ClickHouse. Extending ClickHouse with native graph modeling and OpenCypher, merging OLAP speed with graph analysis.
While it’s still in early development, it’s been fun writing my own Cypher parser, query planner with logical plan, analyzer, and optimizer in Rust.
On the roadmap: native JSON support, bolt protocol, missing Cypher features like WITH, EXISTS, and variable-length relationship matches, along with bitmap-based optimizations and distributed cluster support.
Feel free to check out the repo: https://lnkd.in/d-Bhh-qD
I’d really appreciate a ⭐ if you find it useful!
Introducing Brahmand: a Graph Database built on top of ClickHouse
Stop Context Switching: Directly Run ISO GQL Queries in VS Code | LinkedIn
Ever caught yourself bouncing between your code editor and database client just to test a single query? Annoying, right? That context switching kills your flow. Now you can bring the Ultipa VS Code Extensions for ISO GQL to your workflow! Write, validate, and execute ISO GQL queries right where you
A Comparative Analysis of Vector and Graph Database Semantics | LinkedIn
Executive Summary While both Vector Databases and Graph Databases are pivotal technologies in modern artificial intelligence (AI) and data management, they operate on fundamentally different principles of data organization and retrieval. Vector Databases manage data based on statistical similarity w
Neo4j Launches Breakthrough Architecture to Unify Transactional and Operational Workloads - Graph Database & Analytics
Meet Infinigraph, a scalable, distributed graph architecture that allows you to run 100TB+ operational and analytical graph workloads in a single system.