Omada Health

Principal Applied Machine Learning Scientist

Omada Health$270K — $338K *
US-AnywhereRemote in United States
Healthcare
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • Ph.D. in Computer Science, Statistics, Machine Learning, Biostatistics, Applied Mathematics, or related quantitative field; Master's with substantial experience considered.
  • Multiple years of experience in machine learning or applied research science, delivering high-impact ML systems.
  • Deep expertise in time-series modeling, healthcare prediction, recommender systems, reinforcement learning, or causal inference.
  • Strong proficiency in Python and modern ML tooling, with experience deploying models on cloud platforms like AWS SageMaker.
  • Ability to translate ambiguous business requirements into clear technical problems and communicate with non-technical stakeholders.

Responsibilities

  • Lead individual- and population-level health trajectory research using real-world healthcare data.
  • Produce technical recommendations that drive product features and impact health trajectories.
  • Design next-best-action algorithms to tailor interventions based on member contexts.
  • Research advanced decision policies to optimize intervention choices in healthcare.
  • Define objective functions and constraints for actionable and interpretable outputs in collaboration with cross-functional teams.
  • Establish algorithmic and evaluation rigor standards for trajectory modeling and next-best-action algorithms.
  • Mentor team members on temporal modeling, reinforcement learning, and causal inference techniques.

Benefits

  • Equity grants
  • Remote-first work culture
  • Flexible Time Off for personal well-being
  • Generous parental leave
  • Health, dental, and vision insurance with above-market contributions
  • 401k retirement savings plan
  • Lifestyle Spending Account (LSA)
  • Mental Health Support Solutions
Full Job Description
Job overview:

Omada Health is looking for a Principal Applied ML Scientist to lead high-impact research and applied algorithm development focused on predicting where a member is headed next and identifying the intervention most likely to improve outcomes at a specific moment. The role sits at the intersection of machine learning research, causal decisioning, and healthcare product impact, translating longitudinal member data into clinically meaningful and operationally deployable algorithms. This position requires deep technical leadership, strong publication-quality rigor, and the ability to work cross-functionally with product, engineering, and clinical stakeholders.

Your Impact:

Health Trajectory Research
  • Lead research and development of individual- and population-level health trajectory models that predict future member states, risks, and likely progression paths using messy, real-world longitudinal healthcare data.
  • Produce high-quality experimental evidence and technical recommendations that can lead to tangible product features and have a real impact on individual and population health trajectories.

Next Best Action Algorithms
  • Lead the design of next-best-action algorithms that convert predicted trajectories into intervention decisions tailored to a member's current context and likely future path.
  • Research and apply advanced decision and recommendation policies to safely optimize intervention choice in a healthcare environment.
  • Define objective functions, reward signals, and policy constraints that balance engagement, clinical effectiveness, fairness, and operational feasibility, partnering with product and clinical teams to ensure outputs are actionable and interpretable.

Technical Leadership
  • Serve as the senior scientific lead for algorithmic and evaluation rigor in trajectories and next-best-action, setting standards for problem formulation, evaluation, and publication-quality analysis.
  • Mentor other scientists and data scientists on advanced methods in temporal modeling, reinforcement learning, and causal inference.
  • Collaborate closely with platform, MLOps, and product engineering teams to ensure research outputs can be productionized reliably and monitored appropriately.

About you:
  • Ph.D. in Computer Science, Statistics, Machine Learning, Biostatistics, Applied Mathematics or a related quantitative field is required, will consider a Master's with substantial, directly related experience at a senior level.
  • Multiple years of post-secondary education experience in machine learning research or applied research science, with a strong record of delivering novel algorithms or high-impact ML systems in production.
  • Deep expertise in time-series or longitudinal modeling, healthcare prediction, recommender systems, reinforcement learning, causal inference, or adjacent research areas relevant to trajectories and next-best-action decisioning.
  • Strong proficiency in Python and modern ML tooling, along with experience deploying models into production environments on cloud platforms such as AWS SageMaker or equivalent.
  • Demonstrated ability to translate ambiguous business questions into well-scoped technical problems, communicate tradeoffs clearly to non-technical stakeholders, and incorporate feedback into model and metric design.

Bonus Points for:
  • Background in healthcare, digital health, health plans/PBMs, or other complex, regulated industries.
  • Peer-reviewed papers, conference presentations or white papers in machine learning, reinforcement learning, causal inference or health AI.

Benefits:
  • Competitive salary with generous annual cash bonus
  • Equity grants
  • Remote first work from home culture
  • Flexible Time Off to help you rest, recharge, and connect with loved ones
  • Generous parental leave
  • Health, dental, and vision insurance (and above market employer contributions)
  • 401k retirement savings plan
  • Lifestyle Spending Account (LSA)
  • Mental Health Support Solutions
  • ...and more!

It takes a village to change health care. As we build together toward our mission, we strive to embody the following values in our day-to-day work. We hope these hold meaning for you as well as you consider Omada!
  • Cultivate Trust. We listen closely and we operate with kindness. We provide respectful and candid feedback to each other.
  • Seek Context. We ask to understand and we build connections. We do our research up front to move faster down the road.
  • Act Boldly. We innovate daily to solve problems, improve processes, and find new opportunities for our members and customers.
  • Deliver Results. We reward impact above output. We set a high bar, we're not afraid to fail, and we take pride in our work.
  • Succeed Together. We prioritize Omada's progress above team or individual. We have fun as we get stuff done, and we celebrate together.
  • Remember Why We're Here. We push through the challenges of changing health care because we know the destination is worth it.

About Omada Health

Omada Health is a digital health company that provides personalized interventions for individuals at risk for chronic diseases. The company was founded in 2011 and offers a variety of programs including diabetes prevention, hypertension management, and behavioral health. Omada Health's programs are designed to help individuals make sustainable lifestyle changes through a combination of coaching, technology, and social support. The company has partnerships with several healthcare providers and insurers and has served over 300,000 participants to date. Omada Health is headquartered in San Francisco, California and has additional offices in New York and Atlanta.
Learn more about Omada Health
Size
500 employees
Industry
Founded
2011

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