Consolidation in the Semantic Software Industry - Enterprise Knowledge
As a technology SME in the KM space, I am excited about the changes happening in the semantic software industry. Just two years ago, in my book, I provided a complete analysis of the leading providers of taxonomy and ontology management systems, as well as graph providers, auto-tagging systems, and more. While the software products I evaluated are still around, most of them have new owners.
RDF vs LPG: Friends or Foes? For over a decade, ever since #KnowledgeGraphs (KGs) gained prominence, there has been intense competition between #RDF (also…
After a period of more than a year (can't believe time flew by so quick!), I had the pleasure of going back for a second time on the Practical AI Podcast with…
How to Generate a Knowledge Graph from Text Using a 3.8B Parameter Model
500 million+ members | Manage your professional identity. Build and engage with your professional network. Access knowledge, insights and opportunities.
How to Generate a Knowledge Graph from Text Using a 3.8B Parameter Model
cosdata/cosdata: Cosdata: A cutting-edge AI data platform for next-gen search pipelines. Features semantic search, knowledge graphs, hybrid capabilities, real-time scalability, and ML integration. Designed for immutability and version control to enhance AI projects.
Cosdata: A cutting-edge AI data platform for next-gen search pipelines. Features semantic search, knowledge graphs, hybrid capabilities, real-time scalability, and ML integration. Designed for immu...
Recently, knowledge-graph-enhanced recommendation systems have attracted much attention, since knowledge graph (KG) can help improving the dataset quality and offering rich semantics for explainable recommendation. However, current KG-enhanced solutions focus on analyzing user behaviors on the product level and lack effective approaches to extract user preference towards product category, which is essential for better recommendation because users shopping online normally have strong preference towards distinctive product categories, not merely on products, according to various user studies. Moreover, the existing pure embedding-based recommendation methods can only utilize KGs with a limited size, which is not adaptable to many real-world applications. In this paper, we generalize the recommendation problem with preference mining as a compound knowledge reasoning task and propose a novel multi-agent system, called Mcore, which can promote model performance by mining users’ high-level interests and is adaptable to large KGs. Specifically, we split the overall problem and allocate sub-task to each agent: Coordinate Agent takes charge of recognizing the product-category preference of current user, while Relation Agent and Entity Agent perform KG reasoning cooperatively from a user node towards the preferred categories and terminate at a product node as recommendation. To train this heterogeneous multi-agent system, where agents own various functionalities, we propose an asynchronous reinforcement training pipeline, called Multi-agent Collaborative Learning. The extensive experiments on real datasets demonstrate the effectiveness and adaptability of Mcore on recommendation tasks.
Author Dan Selman shows how easy it is to implement convert natural language text to nodes and edges in a knowledge graph using a new class and method in his demonstration project.
Implementing Semantic Data Products: A Comprehensive Blueprint for Success
Implementing Semantic Data Products: A Comprehensive Blueprint for Success As we conclude our series on semantic data products, let's put all the pieces… | 15 comments on LinkedIn
Implementing Semantic Data Products: A Comprehensive Blueprint for Success
Knowledge Graph / Concept Model: Same or Different?
Knowledge Graph / Concept Model: Same or Different? In my understanding when people say 'knowledge graph' they are usually talking about something OWL/RDF-ish,… | 42 comments on LinkedIn
Knowledge Graph / Concept Model: Same or Different?
Vendors offering intelligent document processing, graph technologies (knowledge graphs and graph databases) for GraphRAG and LLM fine tuning, enterprise retrieval, and services surrounding these technologies, will be best positioned for this new wave of data and metadata management needs
💡 The relevance, trustworthiness and quality of AI and #GenAI applications is increasingly dependent on the quality of enterprise private data and documents…
Vendors offering hashtag#intelligentdocumentprocessing, hashtag#graphtechnologies (hashtag#knowledgegraphs and hashtag#graphdatabases) for hashtag#GraphRAG and hashtag#LLMfinetuning, hashtag#enterpriseretrieval, and services surrounding these technologies, will be best positioned for this new wave of data and metadata management needs
Nine FAQs about Knowledge Graphs for the Enterprise | LinkedIn
1. Where does a knowledge graph fit in an enterprise data architecture? A knowledge graph typically sits above data entry/storage systems and below data consumption/visualization systems.
Just learned yesterday that GNOME has been using SPARQL in desktop search for quite a while—and I had no idea! 😲 Turns out their tool, "Tracker", is powered…
Your first ontology doesn’t need to be an ontology
Your first ontology doesn’t need to be an ontology. Here’s what I mean. Combining ontologies with knowledge graphs is a powerful approach. But implementing… | 21 comments on LinkedIn
a RAG agent that connects directly to Wikidata for facts about medalists in the 2024 Olympic Games
Hey Knowledge Graph friends! As I imagine some of you are, I've been a bit annoyed that many "Knowledge Graph and AI" demos and tools—while definitely… | 13 comments on LinkedIn
a RAG agent that connects directly to Wikidata for facts about medalists in the 2024 Olympic Games
How do you maintain an ontology over time? Today, I had a wonderful meeting with Kurt Cagle about ontologies, AI, and beyond. We spent some time on this… | 27 comments on LinkedIn
#Alhamdulillah, Our iText2KG has achieved over 300 stars and 27 forks in just 10 days after its release, and it is currently ranked among the top 12 trending…
Adding Secondary Node Labels Increases Context and Understanding
Your first ontology doesn’t need to be an ontology. Here’s what I mean. Combining ontologies with knowledge graphs is a powerful approach. But implementing…
Unlocking the Power of Generative AI: Why OWL Leads in Knowledge Representation and Semantic Layers
Web Ontology Language (OWL) emerges as a superior choice for knowledge representation in generative AI, offering unparalleled expressiveness, reasoning capabilities, and semantic richness. By leveraging OWL-based knowledge graphs, AI systems can generate more accurate, context-aware, and nuanced outputs across diverse ...
As the volume of digital content increases, the ability to manage it becomes more important. Taxonomy and metadata are vital to finding products, conducting scientific research, and keeping track of organizational information. They also enable a wide variety of analytics on unstructured data. We can see the results of a well-designed taxonomy, but behind the scenes, there's a lot more going on than meets the eye.
My presentation at the "First International Workshop on Scaling Knowledge Graphs for Industry" at the SEMANTICS 2024 Conference in Amsterdam was focused on the…
Steps to generate text to sql through an ontology instead of an LLM
i want to share the actual steps we’re using to generate text to sql through an ontology instead of an LLM [explained with a library analogy]: 𝟭… | 15 comments on LinkedIn
✨ Operationalizing the information architecture 👇 There are three main ways to operationalize the information architecture, depending on how the data plane… | 14 comments on LinkedIn