Knowledge Graph Insights

Quentin Reul: Solving Business Problems with Neuro-Symbolic AI – Episode 44

26 snips
Feb 16, 2026
Quentin Reul, an AI strategy executive and long-time semantic tech practitioner, blends generative AI, knowledge graphs, and agentic workflows. He discusses combining symbolic structure with LLM pattern-finding. Topics include entity resolution limits, using graphs to prevent hallucinations, LLM-driven graph population, pragmatic mixes of rules and ML, and starting designs from concrete business problems.
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ANECDOTE

Early SKOS Contribution From PhD Work

  • Quentin described working on his PhD mapping ontologies using WordNet and linguistic labels to improve taxonomy mapping.
  • He pushed for SKOS to include broaderTransitive and narrowerTransitive to support transitive relationships.
INSIGHT

Symbolic Structure Versus Pattern Discovery

  • Quentin contrasted symbolic AI's explainability and structure with ML's flexibility on new patterns.
  • He noted LLMs excel at surfacing unseen patterns by interpreting sentence structure across many texts.
INSIGHT

Model Cutoffs Limit Timeliness

  • Quentin highlighted LLMs' training data cutoff and the lag between real-world events and model knowledge.
  • He emphasized training new models takes days to months, making up-to-date knowledge a challenge.
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