AI-Scientist (MIND-MATTER)

DEVELOPED FOR
UK innovation agencies and deep-tech materials/semiconductor partners (advancing autonomous scientific discovery)

The challenge

  • Reconfigurable Nonlinear Processing Units (RNPUs) self-learn in matter, but their transport mechanism is unknown.
  • Competing transport theories (e.g., VRH, SCLC) cannot be discriminated by existing methods.
  • Manual experimentation cannot cover the full parameter space due to slow pave, and no AI autonomously runs the end-to-end scientific loop.

The Solution

A 9-month, CKL × U Twente (BRAINS Lab) initiative funded by ARIA’s AI-Scientist Programme.

  • Closes the AI discovery loop: hypothesis → experiment → inference, with human-in-the-loop gates.
  • Built on Model Context Protocol (MCP) servers, each scientific capability packaged as an AI-accessible tool.

Core innovations:

  • MCP-based scientific toolchain: Simulation, DoE, inference, and literature tools — composable for any LLM agent.
  • Bayesian optimal design: Selects experiments that maximize information gain between rival theories.
  • Auditable orchestration: Full audit log of AI vs human decisions across the loop.

Impact

Industrial Directions

  • Neuromorphic hardware and low-energy AI computing.
  • Materials science R&D and semiconductor industries.
  • Self-driving lab platforms for autonomous scientific discovery.

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.

Quantum Spin Chain ML (SDRG-GNN)

MiAD Crystal Generation (Mirage Atoms)

Systematics Audit (DL advocatus)