Knowledge Discovery

DEVELOPED FOR
International academic research institutions and science funding bodies (investing in next-generation knowledge infrastructure)

The challenge

Scientific knowledge is largely unstructured and static, while existing LLM- and RAG-based approaches do not represent how concepts and expertise evolve over time. This limits systematic analysis, reproducibility, and the identification of knowledge gaps across domains.

The Solution

Knowledge Discovery is a 3-year research initiative led by PI Andrey Ustyuzhanin, focused on building temporal, semantically grounded cognitive maps of scientific knowledge and researcher competences.

The project introduces Temporal Knowledge Hypergraphs (TKH) and Temporal Competence Hypergraphs (TCH) to model the evolution of concepts, methods, and expertise across time, domains, and research communities.

Core innovations include:

  • Semantic structuring: Transformation of unstructured data (papers, code, dialogue) into machine-actionable, interpretable graphs.
  • Time-aware representations: Explicit modeling of how concepts, methods, and hypotheses evolve over time.
  • Competence mapping: Linking scientific outputs (TKH) to researcher profiles (TCH) to support automated expertise search and team formation.
  • Task-aware reasoning: Explainable, traceable, user-specific reasoning beyond black-box LLM behavior.

Impact

Industrial Directions

The solution applies to research-intensive organizations and institutions that manage large volumes of evolving scientific knowledge and expertise. It supports applications such as analytics, expertise discovery, team formresearchation, and AI-assisted scientific reasoning in domains where explainability, temporal context, and reproducibility are critical.

Research Team

Meet Our PIs

Discover the principal investigators behind this project and the expertise that made it possible.

Prof. Dr. Andrey Ustyuzhanin

Open Vacancies

Join our team working on cutting-edge autonomous transport systems. Explore opportunities in machine learning, computer vision, and robotics.

Related Projects

Explore our innovative research work

Discover a selection of our key projects that highlight our commitment to advancing education through research.

Systematics Audit (DL advocatus)

CERN Detector Optimization (Co-design)