Reconciliation of triple stores and property graphs is an old topic and many have tried to tackle it (from every angle and tech). It's polarizing and the latest RDF-* and SPARQL-* announcements turn an already complex field into more syntax and complexity. When flexibility equals complexity it seldom leads to more adoption.
#GraphDatabases #RDF #KnowledgeGraphs
https://olafhartig.blog.liu.se/
https://www.ontotext.com/knowledgehub/fundamentals/what-is-rdf-star/

🧠⚡️ Drasi + GQL: continuous queries meet the first new international DB language standard since SQL—great for change-driven, evented architectures. Details from Mark Russinovich:
🔗 https://opensource.microsoft.com/blog/2025/10/09/marking-drasis-first-anniversary-introducing-gql-support-for-continuous-queries/

#Drasi #GQL #GraphDatabases #OpenSource #Azure
opensource.microsoft.com

Drasi at one year: now with GQL for change-driven solutions

Drasi’s first year brings GQL support and community growth, empowering developers to build event-driven apps. Learn more.

Microsoft Open Source Blog

🚀 40x Faster Than SQL?
Graph databases aren't just a better data model — they’re the real-time engine behind AI’s biggest breakthroughs.
💡 From fraud detection to LLM grounding, this is the architecture shift you can’t ignore.
⏱️ Read now and see why graphs are quietly rewriting AI.

🔗 https://medium.com/@rogt.x1997/40x-faster-than-sql-how-graph-databases-supercharge-ai-in-real-time-d35a929eb427
#GraphDatabases #AIInfrastructure #LLMs #EnterpriseTech
https://medium.com/@rogt.x1997/40x-faster-than-sql-how-graph-databases-supercharge-ai-in-real-time-d35a929eb427

40x Faster Than SQL: How Graph Databases Supercharge AI in Real Time

What if the most powerful engine behind AI wasn’t the model itself — but the data structure feeding it? While the world obsesses over ChatGPT, Llama 4, or Claude’s latest upgrade, graph databases…

Medium
So, I've been learning #GraphDatabases with #Neo4j this week. I think it would be SUPER fun to recursivlely do an mheard on all the #PacketRadio nodes, to help establish paths around the country.

concept graphs and event graphs for ai memory

https://makertube.net/w/6c7E4LpvFxunm9fGKoe6CF

concept graphs and event graphs for ai memory

PeerTube

Is data unstructured ? Construction of graphs from conversations

https://makertube.net/videos/watch/b1968b1f-7091-485f-ab46-36a383857bfd

Is data unstructured ? Construction of graphs from conversations

PeerTube
Thread by @klarnaseb on Thread Reader App

@klarnaseb: Yes, we did shut down Salesforce a year ago, as we have many SaaS providers—an internal estimate is about 1,200 SaaS shut down. No, I don't think it is the end of Salesforce; might be the...…

Domain Ontologies: Indispensable for Knowledge Graph Construction

AI slop is all around and increasingly extraction of useful information will face difficulties as we start to feed more noise into the already noisy world of knowledge. We are in an era of unprecedented data abundance, yet this deluge of information often lacks the structure necessary to derive meaningful insights. Knowledge graphs (KGs), with their ability to represent entities and their relationships as interconnected nodes and edges, have emerged as a powerful tool for managing and leveraging complex data. However, the efficacy of a KG is critically dependent on the underlying structure provided by domain ontologies. These ontologies, which are formal, machine-readable conceptualizations of a specific field of knowledge, are not merely useful, but essential for the creation of robust and insightful KGs. Let’s explore the role that domain ontologies play in scaffolding KG construction, drawing on various fields such as AI, healthcare, and cultural heritage, to illuminate their importance.

Vassily Kandinsky, 1913 – Composition VII (1913)
According to Kandinsky, this is the most complex piece he ever painted.

At its core, an ontology is a formal representation of knowledge within a specific domain, providing a structured vocabulary and defining the semantic relationships between concepts. In the context of KGs, ontologies serve as the blueprint that defines the types of nodes (entities) and edges (relationships) that can exist within the graph. Without this foundational structure, a KG would be a mere collection of isolated data points with limited utility. The ontology ensures that the KG’s data is not only interconnected but also semantically interoperable. For example, in the biomedical domain, an ontology like the Chemical Entities of Biological Interest (ChEBI) provides a standardized way of representing molecules and their relationships, which is essential for building biomedical KGs. Similarly, in the cultural domain, an ontology provides a controlled vocabulary to define the entities, such as artworks, artists, and historical events, and their relationships, thus creating a consistent representation of cultural heritage information.

One of the primary reasons domain ontologies are crucial for KGs is their role in ensuring data consistency and interoperability. Ontologies provide unique identifiers and clear definitions for each concept, which helps in aligning data from different sources and avoiding ambiguities. Consider, for example, a healthcare KG that integrates data from various clinical trials, patient records, and research publications. Without a shared ontology, terms like “cancer” or “hypertension” may be interpreted differently across these data sets. The use of ontologies standardizes the representation of these concepts, thus allowing for effective integration and analysis. This not only enhances the accuracy of the KG but also makes the information more accessible and reusable. Furthermore, using ontologies that follow the FAIR (Findable, Accessible, Interoperable, Reusable) principles facilitates data integration, unification, and information sharing, essential for building robust KGs.

Moreover, ontologies facilitate the application of advanced AI methods to unlock new knowledge. They support both deductive reasoning to infer new knowledge and provide structured background knowledge for machine learning. In the context of drug discovery, for instance, a KG built on a biomedical ontology can help identify potential drug targets by connecting genes, proteins, and diseases through clearly defined relationships. This structured approach to data also enables the development of explainable AI models, which are critical in fields like medicine where the decision-making process must be transparent and interpretable. The ontology-grounded KGs can then be used to generate hypotheses that can be validated through manual review, in vitro experiments, or clinical studies, highlighting the utility of ontologies in translating complex data into actionable knowledge.

Despite their many advantages, domain ontologies are not without their challenges. One major hurdle is the lack of direct integration between data and ontologies, meaning that most ontologies are abstract knowledge models not designed to contain or integrate data. This necessitates the use of (semi-)automated approaches to integrate data with the ontological knowledge model, which can be complex and resource-intensive. Additionally, the existence of multiple ontologies within a domain can lead to semantic inconsistencies that impede the construction of holistic KGs. Integrating different ontologies with overlapping information may result in semantic irreconcilability, making it difficult to reuse the ontologies for the purpose of KG construction. Careful planning is therefore required when choosing or building an ontology.

As we move forward, the development of integrated, holistic solutions will be crucial to unlocking the full potential of domain ontologies in KG construction. This means creating methods for integrating multiple ontologies, ensuring data quality and credibility, and focusing on semantic expansion techniques to leverage existing resources. Furthermore, there needs to be a greater emphasis on creating ontologies with the explicit purpose of instantiating them, and storing data directly in graph databases. The integration of expert knowledge into KG learning systems, by using ontological rules, is crucial to ensure that KGs not only capture data, but also the logical patterns, inferences, and analytic approaches of a specific domain.

Domain ontologies will prove to be the key to building robust and useful KGs. They provide the necessary structure, consistency, and interpretability that enables AI systems to extract valuable insights from complex data. By understanding and addressing the challenges associated with ontology design and implementation, we can harness the power of KGs to solve complex problems across diverse domains, from healthcare and science to culture and beyond. The future of knowledge management lies not just in the accumulation of data but in the development of intelligent, ontologically-grounded systems that can bridge the gap between information and meaningful understanding.

References

  • Al-Moslmi, T., El Alaoui, I., Tsokos, C.P., & Janjua, N. (2021). Knowledge graph construction approaches: A survey of recent research works. arXiv preprint. https://arxiv.org/abs/2011.00235
  • Chandak, P., Huang, K., & Zitnik, M. (2023). PrimeKG: A multimodal knowledge graph for precision medicine. Scientific Data. https://www.nature.com/articles/s41597-023-01960-3
  • Gilbert, S., & others. (2024). Augmented non-hallucinating large language models using ontologies and knowledge graphs in biomedicine. npj Digital Medicine. https://www.nature.com/articles/s41746-024-01081-0
  • Guzmán, A.L., et al. (2022). Applications of Ontologies and Knowledge Graphs in Cancer Research: A Systematic Review. Cancers, 14(8), 1906. https://www.mdpi.com/2072-6694/14/8/1906
  • Hura, A., & Janjua, N. (2024). Constructing domain-specific knowledge graphs from text: A case study on subprime mortgage crisis. Semantic Web Journal. https://www.semantic-web-journal.net/content/constructing-domain-specific-knowledge-graphs-text-case-study-subprime-mortgage-crisis
  • Kilicoglu, H., et al. (2024). Towards better understanding of biomedical knowledge graphs: A survey. arXiv preprint. https://arxiv.org/abs/2402.06098
  • Noy, N.F., & McGuinness, D.L. (2001). Ontology Development 101: A Guide to Creating Your First Ontology. Semantic Scholar. https://www.semanticscholar.org/paper/Ontology-Development-101%3A-A-Guide-to-Creating-Your-Noy/c15cf32df98969af5eaf85ae3098df6d2180b637
  • Taneja, S.B., et al. (2023). NP-KG: A knowledge graph for pharmacokinetic natural product-drug interaction discovery. Journal of Biomedical Informatics. https://www.sciencedirect.com/science/article/pii/S153204642300062X
  • Zhao, X., & Han, Y. (2023). Architecture of Knowledge Graph Construction. Semantic Scholar. https://www.semanticscholar.org/paper/Architecture-of-Knowledge-Graph-Construction-Zhao-Han/dcd600619962d5c1f1cfa08a85d0be43a626b301
  • #AIInHealthcare #ArtificialIntelligence #BiomedicalOntologies #CulturalHeritageData #DataIntegration #DataInteroperability #DomainOntologies #DrugDiscovery #ExplainableAI #FAIRPrinciples #GraphDatabases #KnowledgeGraphs #KnowledgeManagement #LLMs #Ontology #OntologyDesign #OntologyDevelopment #OntologyDrivenAI #SemanticRelationships #SemanticWeb

    📣 REMINDER 📣 NODES 2024 is right around the corner! We can’t wait to dive into this year’s content on LLMs, AI, data science, knowledge graphs and applications. It’d be amazing if you could join us. Sign up here 👉 https://neo4j.registration.goldcast.io/events/03805ea9-fe3a-4cac-8c15-aa622666531a?utm_campaign=pyladies_berlin&utm_source=partners

    #graphdatabases #knowledgegraphs #datascience #ML #AI #NODES2024 #GraphRAG

    NODES 2024

    NODES 2024 is Neo4j's biggest online conference, loaded with presentations by community experts on graph-enabled applications, contextual AI and more. Register for free.

    We are excited to partner with #NODES2024, #Neo4j's ONLINE developer conference! On November 7, join us for 24 hours of free live talks. Don't miss out, sign up today! https://neo4j.registration.goldcast.io/events/03805ea9-fe3a-4cac-8c15-aa622666531a?utm_campaign=pyladies_berlin&utm_source=partners
    #graphdatabases #graphs #datascience #GraphRAG #ML #AI #NODES2024
    NODES 2024

    NODES 2024 is Neo4j's biggest online conference, loaded with presentations by community experts on graph-enabled applications, contextual AI and more. Register for free.