Mathematics of AI Research Associate
Listed on 2026-06-04
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IT/Tech
Data Scientist, Artificial Intelligence, AI Engineer -
Research/Development
Data Scientist, Artificial Intelligence
About the Project
TODS Ventures is developing a highly ambitious Enterprise AI Governance Platform — a research-led project at the intersection of artificial intelligence, mathematics, law, ethics, and enterprise technology. The platform applies rigorous, multi-dimensional governance to AI interactions project combines original academic research with practical software engineering, and is preparing for peer-reviewed publication alongside a commercial product launch. This is an early-stage, high-calibre founding team engagement.
The RoleWe are looking for a strong technical academic or research scientist with a background in Mathematics, Physics, or Computer Science — at MSc or PhD level. You will serve as a core intellectual contributor to the project's mathematical and AI foundations, working directly with the CEO/CTO to formalise the platform's theoretical basis, review quantitative approaches, and co-author peer-reviewed papers. Deep fluency in linear algebra, vector spaces, statistics, probability, and AI is central to the role.
This is a fractional advisory engagement at approximately 30% FTE, with flexibility on scheduling.
- Provide mathematical and theoretical guidance on the core platform architecture — with a strong focus on linear algebra, vector spaces, metric spaces, and multi-dimensional decision frameworks.
- Co-author and review peer-reviewed research papers targeting top AI, ML, and fairness venues.
- Advise on statistical and probabilistic modelling approaches — including drift detection, composite scoring, and distributional analysis across large interaction datasets.
- Review and validate quantitative methods, proofs, and mathematical formal isms embedded in the platform design.
- Contribute to the academic research agenda — helping to frame open questions, select methodologies, and position contributions within the existing literature.
- Engage with relevant prior work in areas such as knowledge graph embeddings, statistical learning theory, multi-criteria decision analysis, and AI safety.
- Degree in Mathematics, Physics, or Computer Science at MSc or PhD level — with strong quantitative foundations.
- Deep fluency in linear algebra and vector spaces — as applied to computational or AI problems.
- Strong grounding in statistics and probability — modelling, inference, and distributional reasoning.
- Solid understanding of artificial intelligence and machine learning, including familiarity with large language model research.
- Experience translating mathematical theory into computational approaches or engineering designs.
- Ability to engage constructively with a small, fast-moving research and engineering team.
- A PhD in a relevant discipline, or an active research profile with peer-reviewed publications in AI, ML, or mathematics.
- Background in knowledge graph embeddings, geometric deep learning, or representation learning.
- Familiarity with multi-criteria decision analysis (MCDA) or social choice theory.
- Interest in or prior work on AI fairness, accountability, transparency, or ethics.
- Experience with drift detection, distribution shift, or statistical process control.
- Comfort with information theory, formal logic, or applied optimisation.
- Prior engagement with industry AI projects alongside academic research.
Type Freelance Advisory
Duration 1 Jul 2026 – 31 Mar 2027
Commitment Part-time · ~30% FTE
Location UK or EU
· Remote / Hybrid
Rate To be negotiated
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