Dani Kiyasseh
Founder & CEO at Halsted AI
About
I'm Dani Kiyasseh, the Founder and CEO of Halsted AI. My career has been dedicated to the intersection of machine learning and healthcare, moving from a PhD at Oxford and a postdoc at Caltech to building frontier AI for the operating room. At Halsted AI, we are focused on surgical intelligence—specifically automating operative notes and mapping surgical workflows using nimble, deployment-ready vision-language models. I’m passionate about surgeon-led innovation and ensuring that the tools we build actually survive the 'maelstrom' of real-world surgery. I’m currently looking to connect with surgery residents for our fellowship program and health systems interested in the future of surgical documentation. Whether you're a clinician or a technologist, I'm always open to discussing how we can achieve true surgical mastery through better data and more efficient AI.
Networking
What I can offer
- ›Expertise in surgical AI and vision-language models
- ›Access to the Halsted platform for practicing surgeons
- ›Insights into bridging clinical practice and AI development
Looking for
- ›Surgery residents and fellows for the Halsted AI Fellowship
- ›Partnerships with health systems and payers
- ›Engagement with the digital surgery community
Best fit for
Current Interests
Background
Career
Transitioned from deep academic research at Oxford and Caltech into industry roles at Vicarious Surgical and Cedars-Sinai before founding Halsted AI.
Education
Postdoctoral Fellowship at Caltech (2021–2022); PhD in Machine Learning/Biomedical Engineering from University of Oxford (2018–2021); BS in Biomedical Engineering from Johns Hopkins University (2014–2018).
Achievements
- ›Named to Forbes 30 Under 30 (MENA) and MIT Innovators Under 35 (MENA)
- ›Featured on the front cover of Nature Biomedical Engineering
- ›Developed Halsted VLM, a surgical vision-language model covering 8 specialties
- ›Built an annotated surgical video library of 1M+ videos
Opinions
- Bigger is not better: lightweight models can outperform billion-parameter models in specialized fields.
- Surgical AI often fails because it is evaluated on controlled steps rather than the 'maelstrom' of real surgery.
- Surgeons, not technologists, should dictate the tools used in the operating room.
- Specialty-specific models rarely make economic sense; models should be specialty-agnostic.