MD, PhD · Physician‑Scientist · Architecture + evaluation + deployment
I work at the point where clinical responsibility meets engineering reality: architecture, evaluation, safety controls, and deployment discipline.
The goal is simple: systems that remain safe and operable when the workflow, data, and incentives are not.
Background that matters for serious clinical AI work.
Clinical AI fails when model performance is mistaken for clinical performance.
Most damage shows up after launch: workflows and data shift, quality erodes, and the system becomes hard to trace, debug, and own operationally.
If you cannot explain what the system is allowed to do, how you know it is safe enough, and what happens when it is wrong, you do not have a clinical system. You have a demo.
I start from the clinical job and the harm surface. Then I design controls the team can actually run.
Typical sequence:
Examples of what teams bring—scoped, written, and tied to a concrete decision.
Claims, datasets, failure modes, and the gaps you have not tested—before you commit in front of clinicians, customers, or regulators.
Data paths, versioning, reliability, monitoring hooks, and clear ownership when pipelines and products change—beyond a pilot or demo environment.
Boundaries, tool use, escalation, red-team coverage, and continuous checks—not prompt theater.
Evidence versus demo, deployment realism, and the shortest list of risks that can kill the thesis—for boards, funds, and executive teams.
Senior Medical AI Engineer working on clinical AI architecture and evaluation practice: safety boundaries, failure‑mode coverage, and deployment discipline in real medical workflows.
Research and clinical work under real constraints: traceability, defensible analysis, and execution discipline that transfers directly into evidence and governance for clinical AI.
Applied ML for clinical data analysis inside institutional constraints. Secured NOK 1.5M in research funding and built collaborations that held up in practice.
Science Director. Built operational analytics for mental health workflows: monitoring, semantic pipelines, and decision‑relevant dashboards designed for real usage.
Co-founder. Built an AI-driven wellbeing product with focus on user safety, clear system boundaries, and practical delivery.
Built LLM-enabled workflows for user-facing products: safe tool use, content organization, and operational reliability beyond prompt demos.
Co-founder. Built and operated a wellbeing business with high responsibility constraints; partnerships with academia; data/automation work that improved operations and outcomes.
Coordinated a €1M ERC-funded program and ran end-to-end clinical research execution: protocol discipline, data analysis, and defensible reporting.
Work with EUDA (formerly EMCDDA), EPA, and IIASA on evidence and analytics under public-sector constraints: traceability, defensible methods, and decisions under uncertainty.
Applied ML and analytics in noisy, adversarial environments: signal extraction, monitoring, and decision-making under shifting distributions.
Alexander is one of the most inspirational and brilliant minds I’ve encountered. A compassionate thinker who improves lives through innovation.
— Jonathan DekleA brilliant physician, scientist, and leader. His ability to listen, analyse, and guide with wisdom is rare.
— Tatiana SantiniAlexander brings together neuroscience, finance, behavioural economics and data to create inspiring, high-performing environments.
— Luigi Espasiano, MDHis expertise in big data analytics and statistical methods has been crucial in multiple high-impact research projects.
— Christoph Abé, PhDHe combines deep technical insight with creativity and rapid execution — nothing is impossible.
— Ivan DimoskiA fantastic researcher and developer, warm and empathetic, with outstanding productivity and intelligence.
— Pierre de BoerMD/PhD physician‑scientist and medical AI engineer. I build clinical AI systems where evaluation, safety controls, and change discipline matter more than benchmarks.
If you are building or shipping clinical AI—or reviewing it for investment—and need architecture, safety, or evaluation judgment, send a brief note.
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