
Videa is a cutting-edge AI-powered solution for dentistry, developed by a team of seasoned leaders, engineers, AI scientists, and clinicians spun out of MIT. Our vision is to be the first company to diagnose a billion people globally. Our product is already used by thousands of dental clinicians to enhance the quality of care through faster diagnoses, to increase operating efficiencies, and to improve patient understanding.
We're looking for a Senior Machine Learning Engineer with deep expertise in some area of ML engineering to join our growing ML team and work closely with our software and computer vision teams. This is an opportunity to design, build, and scale machine learning systems that combine structured clinical data with outputs from our core computer vision models to improve patient care and operational performance.
You'll own end-to-end development of production ML systems, integrate them safely into healthcare workflows, and deploy reliable, interpretable, and monitored models that meet medical-grade standards. Depending on your background, that might mean predictive and tabular modeling, multimodal systems, large-scale training and inference infrastructure, model evaluation and reliability, or another specialty where you bring real depth. You'll work alongside ML scientists, clinical experts, and product engineers to translate real clinical questions into systems that ship and hold up over time.
We're looking for a hands-on builder who's excited to work with real-world clinical data, get models into production, and own them across their full lifecycle. If you care about impact and want to help define the future of applied AI in healthcare, we'd love to meet you.
Design, build, and deploy production ML systems for clinical decision support and operational insight, applying deep expertise from your area of specialty.
Develop ML pipelines that integrate structured clinical or EHR data with outputs from computer vision models to power downstream applications.
Ensure the calibration, robustness, and interpretability of deployed models, including clear clinician-facing explanations where relevant.
Implement monitoring, drift detection, evaluation protocols, and retraining or update workflows for production systems.
Partner cross-functionally with product, engineering, clinical, and compliance teams to define requirements and integrate models into live workflows.
Contribute to regulatory documentation for ML systems (data descriptions, validation reports, model versioning).
Mentor engineers and help establish best practices for applied ML and experimentation.
4+ years building and deploying machine learning systems in production, ideally with real-world or clinical data.
Deep, demonstrable expertise in at least one area of ML engineering, such as predictive and tabular modeling, multimodal systems, training and inference infrastructure, or model evaluation and reliability, along with the breadth to contribute across the stack.
Strong development skills in Python with testing, CI/CD, and collaborative coding practices.
Exceptional critical thinking and problem decomposition. Able to turn ambiguous clinical or business questions into measurable hypotheses, design sound experiments, and reason clearly about trade-offs between accuracy, reliability, interpretability, and operational impact.
Familiarity with production ML practices, including monitoring data drift, performance over time, and model health.
Excellent communication skills and a collaborative, product-oriented mindset.
M.S. or Ph.D. in a relevant technical field.
Experience with healthcare data or regulated ML systems.
Background in multimodal or stacked models, especially combining CV outputs with tabular data.
Familiarity with survival analysis, time-series, or longitudinal modeling.
Open-source contributions or published work in applied ML.
Prior leadership or mentorship experience
What We Offer
Fast paced and collaborative work culture in which you can gain experience, grow your technical skills and work on a wide variety of challenges over your time with us
Competitive pay, equity and benefits (flexible PTO)
Agile organization where being senior translates to being a mentor and role model for others. We lead by example.
Technical challenges on the leading edge of innovation where software and machine learning intersect.
Videa is supported by some of the best investors in the world, having raised over $67M in Venture Capital from Tier 1 investors such as Spark Capital (Twitter, SnapChat, SmileDirectClub), Zetta Venture (Kaggle), and Pillar VC (PillPack), as well as angel investors such as Frederic Kerrest (Co-founder of Okta). Our work has been featured in TechCrunch, Wall Street Journal, and many other outlets.
If you want to join a breakthrough healthtech company and help accelerate its impact and growth, we encourage you to apply for this exciting opportunity!

VideaHealth is on a mission to transform dentistry through artificial intelligence. Rooted in AI research conducted at Harvard and MIT, VideaAI is an enterprise-grade AI dental assistant platform that increases patient trust and productivity and drives measurable business value with a scalable impact.
With the largest and most diverse data set in the market, VideaHealth is the partner of choice for the nation's leading DSOs - and is trusted by dentists, hygienists, and patients.
Backed by leading venture capital firms Spark Capital, Zetta Venture Partners and Pillar VC, VideaHealth is headquartered in Boston with an office in New York.