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Posts tagged #semanticWeb

Everyone naturally wants to have personal agency, even a brand. But forcing people to become master exploiters ain't it. Given the #SemanticWeb, it seems necessary to separate ('zone') between the commercial and the informational. Who is working on this? @baychi.org

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Our #JOWO #Plato paper out in #CEUR:
lnkd.in/drB7F3De

Presenting the #T2B2T paradigm to blend #BDI agents with #KnowledgeGraphs and #SemanticWeb

Here full presentation for a full presentation applying to #systemdynamics:
doi.org/10.5281/zeno...
#FOSSR #IRPPS #ISTC #CNR

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KMi Seminar - Embedding Complex Knowledge: From Geometric to Language Models The University of Manchester

KMi seminar - Embedding Complex Knowledge: From Geometric to Language Models

3 March 2026, 11:30 (GMT)

#AI #SemanticWeb #Ontologies #KnowledgeRepresentation #MachineLearning #ResearchTalk

kmi.open.ac.uk/seminars/4001

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GitHub - yasenstar/protege_pizza: Practice building pizza.owl ontology using Protege modeling tool, base on Michael DeBillis' great guide. Practice building pizza.owl ontology using Protege modeling tool, base on Michael DeBillis' great guide. - yasenstar/protege_pizza

🍕 92 Stars & Growing! 🌟

Ready to master Ontology? 🧐 Dive into my "Protege Pizza" repo to learn how to build semantically rich models using Protégé and the famous Pizza.owl.

Perfect for #KnowledgeGraph & #SemanticWeb beginners!

Check it out:
🔗 github.com/yasenstar/pr...

#OWL #Ontology #Protege

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This reminds me of #SirTim when asked what if people just lie on the #SemanticWeb so then it didn't happen.

The solution of course was #SemanticMediawiki because the solution to lies is trolls and then more trolls to troll the trolls and then still more trolls until liars won't cross that bridge.

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@context in JSON-LD: every property links to an ontology via URI. Machines determine credentials from different jurisdictions refer to the same concept.
SD-JWT VC: flat pairs. mdoc: namespace IDs. W3C-VC: self-describing linked data.
#LinkedData #SemanticWeb #Interoperability

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GitHub - yasenstar/protege_pizza: Practice building pizza.owl ontology using Protege modeling tool, base on Michael DeBillis' great guide. Practice building pizza.owl ontology using Protege modeling tool, base on Michael DeBillis' great guide. - yasenstar/protege_pizza

Gemini said
Dive into Ontology Modeling with the classic Pizza Ontology! 🍕

Perfect for beginners wanting to learn Semantic Web & Protégé. Check out the repo, explore the model, and please give it a ⭐ if it helps!

🔗 github.com/yasenstar/pr...

#Ontology #Protege #SemanticWeb #KnowledgeGraph

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KMi Seminar - Embedding Complex Knowledge: From Geometric to Language Models The University of Manchester

KMi seminar - Embedding Complex Knowledge: From Geometric to Language Models

3 March 2026, 11:30 (GMT)

#AI #SemanticWeb #Ontologies #KnowledgeRepresentation #MachineLearning #ResearchTalk

kmi.open.ac.uk/seminars/4001

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i got fired 😕

over 30% got the boot.

hit me up for #frontend #wcag #accessibillity #css #semanticWeb

have some kickass frontend colleagues available too

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Call for Workshops – ISWC 2026

Don’t forget to send your workshop proposal, you have just over 24 hours to submit! ⏰

Details & submission guidelines: lnkd.in/dZQzfhBk

Please share with colleagues and networks who may be interested!

#ISWC2026 #SemanticWeb #KnowledgeGraphs #LinkedData

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Who's doing the FOAF analysis on the Epstein Files to build the people network?

#SemanticWeb

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Toutes ces données sont en même temps sourcées à partir des documents numériques produits par mon atelier, mais aussi dans la mesure du possible, à partir des œuvres et des ouvrages conservés dans les collections publiques. #art #semanticweb #collection

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Je viens de terminer l’hackathon de mon atelier en externalisant sur @wikidatacommunity.bsky.social mes systèmes d’œuvres organisées en ontologie. Toutes ces données sont maintenant open source et interopérables.
#art #studio #semanticweb #ontology www.instagram.com/p/DUX1YiHCGA...

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Mastering Ontology Visualization: A Complete Guide to Setting Up and Using WebVOWL
Mastering Ontology Visualization: A Complete Guide to Setting Up and Using WebVOWL YouTube video by Yasen - Enterprise Architecture

🚀 Tutorial: Stop struggling with static ontology diagrams! Learn how to set up and use WebVOWL for dynamic, interactive OWL/RDF visualization. I even show you how to host it locally for maximum data security. 💻

Watch here: youtu.be/B0apKTxiVjU

#Ontology #KnowledgeGraph #SemanticWeb #WebVOWL

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KMi seminar - Embedding Complex Knowledge: From Geometric to Language Models

3 March 2026, 11:30 (GMT)

#AI #SemanticWeb #Ontologies #KnowledgeRepresentation #MachineLearning #ResearchTalk

kmi.open.ac.uk/seminars/4001

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Learn SPARQL 021 - 03.01 More Readable Query Results - using labels by DBpedia
Learn SPARQL 021 - 03.01 More Readable Query Results - using labels by DBpedia YouTube video by Yasen - Enterprise Architecture

Unlock the power of the Semantic Web! 🕸️✨

New video: Mastering #SPARQL labels & troubleshooting DBpedia schema changes. 📊

Watch: youtu.be/-l1kWg-7lWY

🚀 Want exclusive perks? Join my Channel Membership to support the mission! 💎

#SemanticWeb #GraphDB #Neo4j #DataScience

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Who says using RDF is hard? The Linked Data ecosystem and RDF as its graph data model have been around for many years already. Even though there is an increasing interest in knowledge graphs, many developers...

Who says using #RDF is hard?

#web #semanticweb #blogpost

www.rubensworks.net/blog/2019/10/06/using-rd...

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Je viens de créer une nouvelle police de caractères exclusive & à graisse unique, pour organiser mes systèmes d’œuvres.
«S» (composé en Information system). #typography #informationsystem #semanticweb www.instagram.com/p/DULYe2zCJn...

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If you are a Python Architect (Zope/Django lineage) who understands why "Object Traversal" > "URL Routing" for complex data, we want to talk.

Remote. Equity-Heavy. Pre-Series A. axius-sdc.github.io/careers.html

#SemanticWeb #KGs #TechJobs

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AI Agents are Distributed Systems and Need Reliability
AI Agents are Distributed Systems and Need Reliability YouTube video by Temporal

Nice @youtube video #Ai are #cloud #distributedsystems, I say also #semanticweb #hashtags & #opensource transparent #distributedsystems to fix 30% #AIhallucinations from their #blackbox i line your video for @temporal.ai youtube.com/watch?v=3Ox9...

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Ontology Practice - Build pizza.owl in Protégé - YouTube Using protégé tool to practice Ontology (OWL, RDF, SPARQL), total 54 videos Protégé Learning Repository: https://github.com/yasenstar/protege_pizza Protégé P...

Master Protégé & Ontology Engineering with the 🍕 Pizza Tutorial!

Learn to build Knowledge Graphs, SWRL rules, and AI logic step-by-step.

📺 Course: bit.ly/3hKMK1t 💻 Repo: github.com/yasenstar/pr...

#Ontology #Protege #SemanticWeb #AI #KnowledgeGraph

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📢 Das nächste Treffen der TWG Community-Standards for modelling #fuzziness & #wobbliness in research data using Semantic Web technologies and formalisms - kurz FuzzyWobblySW - findet am 27.1.2026 von 10-11:30 über Zoom statt.

🔗Zoom: uni-frankfurt.zoom-x.de/j/9165593309...

#SemanticWeb #FDM #LOD

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Love the semantic knowledge graph example, this kind of linked context view is exactly what makes graphs so powerful for discovery & insight! We had an event last year where an example was made using D&D, if anyone is interested: www.youtube.com/watch?v=vaF5... #KnowledgeGraphs #SemanticWeb #GRAPHIA

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Knowledge Representation of a Multicenter Adolescent and Young Adult Cancer Infrastructure: Development of the STRONG AYA Knowledge Graph | JCO Clinical Cancer Informatics PURPOSERare diseases are difficult to fully capture, and regularly call for large, geographically dispersed initiatives. Such initiatives are often met with data harmonization challenges. These challe...

📖 New STRONG AYA resource: How do we make AYA cancer data #interoperable across systems and regions? STRONG AYA researchers built a knowledge graph & semantic map making heterogeneous cancer data more #FAIR.
👉 ascopubs.org/doi/full/10....
#HealthData #CancerResearch #SemanticWeb
@tngri.bsky.social

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Jim Hendler: scaling AI and knowledge with the semantic web Jim Hendler is a long-time AI expert and a co-creator of the semantic web, which has given meaning to the content on the internet.

25 years ago, @jahendler.bsky.social, web inventor @timbl.bsky.social, and early #AIagent expert Ora Lassila set out their #semanticWeb vision in Scientific American. Listen in on this fascinating behind-the-scenes account of the origins of their work.

knowledgegraphinsights.com/jim-hendler/

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Challenges with Semantic Mappings There are many challenges associated with the curation, publication, acquisition, and usage of semantic mappings. This post examines their philosophical, technical, and practical implications, highlights existing solutions, and describes opportunities for next steps for the community of curators, semantic engineers, software developers, and data scientists who make and use semantic mappings. ### Proliferation of Formats The first major challenge with semantic mappings is the variety of forms they can take. This both includes different data models and serializations of those models. Let’s start with a lightning review (please let me know if I missed something): Simple Knowledge Organization System (SKOS) is a data model for RDF to represent controlled vocabularies, taxonomies, dictionaries, thesauri, and other semantic artifacts. It defines several semantic mapping predicates including for broad matches, narrow matches, close matches, related matches, and exact matches. JSKOS (JSON for Knowledge Organization Systems), a JSON-based extension of the SKOS data model. I recently wrote a post about converting between SSSOM and JSKOS. Web Ontology Language (OWL) is primarily used for ontologies. It has first-class language support for encoding equivalences between classes, properties, or individuals. Other semantic mappings can be encoded as annotation properties on classes, properties, or individuals, e.g., using SKOS predicates. The OBO Flat File Format is a simplified version of OWL with macros most useful for curating biomedical ontologies. It has the same abilities as OWL, but also the `xref` macro which corresponds to `oboInOwl:hasDbXref` relations, which are by nature imprecise and therefore used in a variety of ways. The Simple Standard for Sharing Ontological Mappings (SSSOM) is a fit-for-purpose format for semantic mappings between classes, properties, or individuals. SSSOM guides curators towards inputting key metadata that are typically missing from other formalisms and is gaining wider community adoption. Importantly, SSSOM integrates into ontology curation workflows, especially for Ontology Development Kit (ODK) users. The Expressive and Declarative Ontology Alignment Language (EDOAL) lives in a similar space to SSSOM, but IMO was much less approachable (c.f. XML + Java), and has not seen a lot of traction in the biomedical space. OntoPortal has its own data model for semantic mappings that has low metadata precision. I recently wrote a post on converting OntoPortal to SSSOM. OntoPortal would also like to invest more in SSSOM infrastructure if it can organize funding and human resources. Wikidata has its own data model for semantic mappings that include higher precision metadata. I recently wrote a post on mapping between the data models from SSSOM and Wikidata. Finally, there’s a long tail of mappings that live in poorly annotated CSV, TSV, Excel, and other formats. Similarly, mappings can live in plain RDF files, e.g., encoded with SKOS predicates, but without high precision metadata. ### Scattered, Partially Overlapping, and Incomplete Semantic mappings are not centralized, meaning that multiple sources of semantic mappings often need to be integrated to map between two semantic spaces. Even then, these integrated mappings are often incomplete. Using Medical Subject Headings (MeSH) and the Human Phenotype Ontology (HPO) as an example, we can see the following: 1. MeSH doesn’t maintain any mappings to HPO. 2. HPO maintains some mappings as primary mappings. 3. The Unified Medical Language System (UMLS) maintains some mappings as secondary mappings. HPO suggests using UMLS as a supplementary mapping resource. 4. Biomappings maintains some community-curated mappings as secondary mappings. This actually might not be the best example - it would have been better to show a pair of resources that both partially map to the other. When I first made this chart, I had to engineer the UMLS inference by hand. Eventually, the need to generalize this workflow led to the development of the Semantic Mapping Reasoner and Assembler (SeMRA) Python package which does this automatically and at scale. The fact that there were missing mappings that even UMLS inference couldn’t retrieve led to establishing the Biomappings project for prediction and semi-automated curation of semantic mappings. The underlying technology stack from Biomappings eventually got spun out to SSSOM Curator and is now fully domain-agnostic. ### Different Precision or Conflicts Another challenge with semantic mappings is when different resources have different level of precision. In the example below, OrphaNet uses low-precision mapping predicates (i.e., `oboInOwl:hasDbXref`) while MONDO uses high-precision mapping predicates (i.e., `skos:exactMatch`). It makes sense to take the highest quality mapping in this situation, but having a coherent software stack to do this at scale was the big challenge (solved by SeMRA). This can get a bit dicier when there might be conflicting information, for example, if one resource says exact match and another says broader match. In SeMRA, I devised a confidence assessment scheme (which should get its own post later). ### Common Conflations There are three flavors of conflations that make curating and reviewing mappings difficult that I want to highlight. #### Different Ontology Encodings Classes, instances, and properties are mutually exclusive by design. This means that any semantic mappings between them are nonsense, but there are many situations where these mappings might get produced by an automated system or by a curator who is less knowledgable about the ontology aspect of semantic mappings. There’s also a much more subtle discussion about classes, instances, and metaclasses ( see this discussion) that I would set aside. As a concrete example, the Information Artifact Ontology (IAO) has a class that represents the section of a document that contains its abstract: abstract (IAO:0000315). Schema.org has an annotation property whose range is a creative work and whose domain is the text of the abstract itself: schema:abstract. These both have the same label `abstract`, which means that it’s possible to conflate (i.e., accidentally map them). #### Different Entity Types The second kind of conflation is even more subtle, when two classes, instances, or properties come from similar but distinct hierarchies. For example, there’s a subtle difference between what is a phenotype and what is a disease. Ontologies are highly apt at encoding this subtlety with _axioms_ that can then be used by reasoners. This can become a problem for curating and reviewing semantic mappings because some diseases are named after the phenotype that it presents or that causes it. Using MeSH’s disease hierarchy and HPO’s phenotype hierarchy as an example, we can see that Staghorn Calculi (mesh:D000069856) and Staghorn calculus (HP:0033591) should not get mapped. Many more examples can be produced (which also show there are even more subtleties here) using SSSOM Curator with the command: `sssom_curator predict lexical doid hp`. See the SSSOM Curator documentation for more information on the lexical matching workflow. #### Different Senses The basic formal ontology (BFO) is an upper-level ontology that is used by many ontologies, including almost the entire Open Biomedical Ontologies (OBO) Foundry. However, as Chris Mungall described in his blog post, Shadow Concepts Considered Harmful, there are many different senses in which an entity can be described, each falling under a different, mutually exclusive branch of BFO. The figure below, from Chris’s post, represents different senses in which a human heart can be described: This problem is particularly bad in disease modeling. Here are only a few examples (of many more) that illustrate this: * the Ontology for General Medical Science (OGMS) term for disease (OGMS:0000031), the Experimental Factor Ontology (EFO) term for disease (EFO:0000408), Monarch Disease Ontology (MONDO) term for disease (MONDO:0000001) is a disposition (BFO:0000016) * the Gender, Sex, and Sexual Orientation Ontology (GSSO) term for disease (GSSO:000486) is a process (BFO:0000015) * the Human Disease Ontology (DOID) informally mentions that a disease is a disposition, but doesn’t make an ontological commitment to BFO * many more controlled vocabularies including NCIT, SNOMED-CT, and MI have their own terms for diseases but don’t use BFO as an upper-level ontology nor are constructed in a way conducive towards integration with other ontologies Schultz _et al._ (2011) proposed a way to formalize the connections between the various senses for diseases in Scalable representations of diseases in biomedical ontologies. However, the OBO community has yet to resolve the long and taxing discussion on how to standardize disease modeling practices. For semantic mappings, this becomes a problem because a reasoner will explode if diseases under two different BFO branches get marked as equivalent, because the BFO upper level terms are marked as disjoint - this is a feature, not a bug. However, while useful for creating carefully constructed, logically (self-)consistent descriptions of diseases, these modeling choices can be confusing when curating or reviewing mappings. These modeling choices might not be so important in downstream applications, such as assembling a knowledge graph to support graph machine learning, where many different knowledge sources with lower levels of accuracy and precision must be merged. In practice, I have merged triples using conflicting senses for diseases in a useful way, without issue. ### Interpretation is Important While the last few examples were cautionary tales for when things (probably) shouldn’t be mapped, the next examples are about when things (probably) should be mapped. #### Definitions Here are three vocabularies’ terms for proteins and their textual definitions (though, many more contain their own term for proteins): Entity | Label | Description ---|---|--- wikidata:Q8054 | protein | biomolecule or biomolecule complex largely consisting of chains of amino acid residues SIO:010043 | protein | A protein is an organic polymer that is composed of one or more linear polymers of amino acids. PR:000000001 | protein | An amino acid chain that is canonically produced _de novo_ by ribosome-mediated translation of a genetically-encoded mRNA, and any derivatives thereof. As semantic mapping curator, we have two options: 1. We can reasonably assume that the intent from all three resources was to represent the same thing, despite the definitions being quite different. This assumption can be built on our prior knowledge about what a protein is, why Wikidata, SIO, and PR exist, and then infer the intent of the term’s definition’s author 2. We can make a very literal reading of the definition and conclude that these three terms represent very different things I think that the latter is really unconstructive for several reasons, but I have worked with colleagues, especially from the linguistics background, who take this approach. First, this is unconstructive because it means you’ll probably never map anything. Second, if you want to be rigorous, use an ontology formalism with proper logical definitions. For example, the Cell Ontology (CL) exhaustively defines its cells using appropriate logical axioms. However, this also has a caveat, that to make mappings based on logical definitions, then the different modelers have to agree on the same axioms and same modeling paradigm. As far as I know, there aren’t any groups out there that use the same modeling paradigm that haven’t just combine forces to work on the same resource. So we’re stuck back at option 1 either way :) #### Context Sometimes Matters In contrast to the discussion about mapping phenotypes and diseases, there are context-dependent reasons to make semantic mappings, which can be illustrated in biomedicine using genes and proteins. Let’s start with some definitions: 1. SO:0000704 A gene is a region of a chromosome that encodes a transcript 2. PR:000000001 A protein is a chain of amino acids The biomedical literature often uses gene symbols to discuss the proteins they encode. While this isn’t precise, it’s still useful in many cases. Therefore, when reading the COVID-19 literature, you will likely see discussion of the IL6-STAT cascade, where IL6 is the HGNC gene symbol for the Interleukin 6 protein. Most of the time, the HGNC approved gene symbol is an initialism or other abbreviation of the protein, but this isn’t always the case. Similar to the literature, many pathway databases that accumulate knowledge about the processes and reactions in which proteins take part actually use gene symbols (or other gene identifiers) to curate proteins. The take-home message here is that genes and proteins are indeed not the same thing, but in some contexts, it’s useful to map between them. There’s also a compromise - the Relation Ontology (RO) has a predicate has gene product (RO:0002205) that explicitly models the relationship between IL6 and Interleukin 6, which can then be automatically inferred to mean a less precise mapping for certain scenarios (SeMRA implements this). Outside of biomedicine, I have also heard that context-specific mappings are very important in the digital humanities. As I’m better understanding the use cases of colleagues in other NFDI Consortia that focus on the digital humanities, I will try and update this section to have alternate perspectives. ### Evidence A key challenged that motivated the development of SSSOM as a standard was to associate high-quality metadata with semantic mappings, such as the reason the mapping was produced (e.g., manual curation, lexical matching, structural matching), who produced it (e.g., a person, algorithm, agent), when, how, and more. We developed the Semantic Mapping Vocabulary (semapv) to encode different kinds of evidence such as for manual curation of mappings, lexical matching, structural matching, and others. SSSOM is well-suited towards capturing simple evidences (blue). #### Provenance for Inferences The purple evidence from the figure in the last section requires a more detailed data model to represent provenance for inferred semantic mappings that simply doesn’t fit in the SSSOM paradigm (and it shouldn’t be hacked in, either). I proposed a more detailed data model for capturing how inference is done in Assembly and reasoning over semantic mappings at scale for biomedical data integration and provided a reference implementation in the Semantic Reasoning Mapper and Reasoner (SeMRA) Python software package. Here’s what that data model looks like, which also has a Neo4j counterpart: ### Negative Semantic Mappings SSSOM also has first-class support for encoding _negative_ relationships, meaning that the following can be represented: This means that SSSOM curators can keep track of non-trivial negative mappings, e.g., when curating the results of semantic mapping prediction or automated inference. In a semi-automated curation loop, this allows us to avoid re-reviewing zombie mappings over and over again. High quality, non-trivial negative mappings also enable more accurate machine learning, as opposed to using negative sampling. For example, we have been working on developing graph machine learning-based ontology matching and merging using PyKEEN (a graph machine learning package I helped develop and maintain). An open challenge is that we neither have support from data modeling formalisms (e.g., ontologies in OWL, knowledge graphs in RDF or Neo4j) to encode negative knowledge (in this case negative mappings) nor tooling support. This means that when we output SSSOM to RDF, we use our own formalism, which won’t be correctly recognized by any other tooling that wasn’t developed with SSSOM in mind. I’m keeping notes about this in a separate post about negative knowledge that I update periodically. * * * Despite the challenges, I think that the mapping world is actually getting quite mature. I am currently working with NFDI and RDA colleagues to further unify the SSSOM and JSKOS worlds, especially given that the Cocoda mapping curation tool solved many of these problems (from the digital humanities perspective) many years ago, and we simply were unaware of it. I hope this post can continue as a living document - if I missed something, please let me know and I will update the post to include it!

i wrote about some of the challenges with semantic mappings 🗺️

cthoyt.com/2026/01/20/semantic-mapp...

#ontology #owl #rdf #sssom #semanticweb #knowledgegraphs

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Will AI Get Rid of this Turbulent Priest? From medieval misunderstandings to modern AI: why precision matters and how the Semantic Web can help.

From a turbulent priest in the Middle Ages to GenAI today, ambiguity has real consequences. I wrote a short article on how Semantic Web technologies can help:
www.newresalhaider.com/post/turbule...
#GenAI #LLM #Turtle #SPARQL #LinkedData #SemanticWeb

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