Bringing healthcare to wherever patients call home.
Sprinter Health Logo

Sprinter Health

Applied Scientist, Optimization & Logistics

Posted 15 Minutes Ago
Be an Early Applicant
Hybrid
San Francisco, CA, USA
160K-220K Annually
Mid level
Hybrid
San Francisco, CA, USA
160K-220K Annually
Mid level
Design and deploy optimization, forecasting, and simulation models to match clinicians to patients under constraints. Build baselines, run evaluations and experiments, and productionize decision systems in partnership with engineering, product, and operations to improve operational metrics like cost per visit and clinician utilization.
The summary above was generated by AI

About Sprinter Health:

At Sprinter Health, our mission is reimagining how people access care by bringing it directly to their homes. Nearly 30% of patients in the U.S. skip preventive or chronic care simply because they can’t get to a doctor’s office. For many, the ER becomes their first touchpoint with the healthcare system—driving over $300B in avoidable costs every year.

 

By using the same technologies that power leading marketplace and last-mile platforms, we deliver care where people are, especially those who need it most. So far, we’ve supported more than 2 million patients across 22 states, completed 130,000+ in-home visits, and maintained a 92 NPS. Our team of clinicians, technologists, and operators have raised over $125M to date investors like a16z, General Catalyst, GV, and Accel and enjoy multi-year runway.

 

About the Role

We’re looking for an Applied Scientist to turn Sprinter’s hardest logistics problems into optimization models and decision systems that get the right clinician to the right patient at the right time. Sprinter runs a two-sided operation — clinicians on one side, patients who need care at home on the other — and we must match supply to demand across large regions under complex constraints.

As an Applied Scientist, you will take ambiguous operational problems and shape them into well-posed tasks, strong baselines, and honest evaluations. The algorithms you build will answer questions like which clinician sees which patient, in what order, given drive time, appointment windows, and clinical constraints; how many clinicians to staff in each region next month; and how long a visit will take or whether a patient is likely to cancel.

This role sits at the intersection of research and engineering, blending scientific rigor with a deployment-oriented mindset. It also requires close cross-functional partnership with operations, product, and engineering stakeholders. The ideal candidate is a scientist-engineer who reasons from first principles about uncertainty and constraints, reaches for the simplest model that works, and can move from a formulation on the whiteboard to a decision that runs in production.

 

Hybrid & Office Experience

We operate on a hybrid schedule, working from the office Monday through Thursday, with Fridays designated as work-from-anywhere days.

We care deeply about work-life balance and are happy to provide flexibility when life happens. We ask that employees be in the office Monday through Thursday to collaborate with their teams while maintaining flexibility where it matters most.

Lunch is provided every day, and the entire team takes an hour to eat together. It's one of the ways we stay connected outside of meetings. You'll usually find us playing a board game before getting back to work.

 

What you will do:

Modeling & Optimization
  • Turn ambiguous operational problems into well-posed optimization, forecasting, or simulation tasks.

  • Build strong baselines and improve on them efficiently, adding complexity only when the value justifies it.

  • Develop solutions across operations research, optimization, and machine learning, choosing the right tool for the problem.

  • Run careful analysis and iterate toward decisions that improve real operational outcomes — cost per visit, clinician utilization, patient access, and visits completed.

Evaluation & Scientific Rigor
  • Design offline evaluations, simulated backtests, and live experiments that predict real-world operational impact.

  • Find the gaps between a model’s assumptions and messy operational reality before they reach production.

  • Choose metrics suited to stochastic, constrained, and partially observed operational systems.

  • Interpret and communicate results effectively to cross-functional stakeholders.

Collaboration & Delivery
  • Partner with Engineering to productionize optimization and decision systems reliably.

  • Work with operations partners and SMEs to validate assumptions and review where decisions break down.

  • Explain tradeoffs, uncertainty, and limitations clearly to product and leadership.

 

What you have done:

  • Strong foundations in operations research or optimization: modeling, algorithms, experimental design, and honest evaluation.

  • Strong Python and SQL, the standard optimization and ML libraries, and the ability to run your own experiments end to end.

  • Fluency with AI coding assistants (e.g., Claude Code, Cursor) in your day-to-day development workflow.

  • Ability to turn an ambiguous problem into a well-posed optimization or forecasting task, discover and analyze related literature, and adapt/apply those methods to our tasks.

  • Judgment about how uncertainty, constraints, and edge cases behave in real-world operational data.

  • Interest in operations collaboration and applied healthcare impact.

 

What gives you an edge:

  • MS or PhD in operations research, industrial engineering, computer science, applied math, statistics, machine learning, or a related quantitative field; exceptional applied experience can substitute.

  • Depth in a relevant area such as vehicle routing, scheduling, stochastic optimization, discrete-event simulation, queueing, or demand forecasting.

  • Experience shipping optimization or decision systems that reached production and had material real-world impact.

  • Hands-on experience with supply-and-demand matching in a marketplace, dispatch, or field-operations setting.

  • Fluency deciding when an exact optimization approach beats a heuristic or learned one, and vice versa.

 

Interview Process:

  • We aim to complete the interview process between 2–3 weeks. It will usually consist of:

    • Recruiter Screen (30 minutes)

    • Hiring Manager Introduction (30 minutes)

    • Hands-on-Keys Technical Assessment (1 hour)

    • Onsite Interview: Systems Design / Technical Case Study + Research Presentation + Behavioral Interview + Lunch with the Team (4 hours)

    • References

 

What we offer:

  • Meaningful pre-IPO equity

  • Medical, dental, and vision plans 100% paid for you and your dependents

  • Flexible PTO + 10 paid holidays per year

  • 401(k) with match

  • 16-week parental leave policy for birthing parent, 8 weeks for all other parents

  • HSA + FSA contributions

  • Life insurance, plus short and long-term disability coverage

  • Free daily lunch in-office

  • Annual learning stipend

 

Sprinter Health Menlo Park, California, USA Office

4600 Bohannon Drive , Menlo Park, CA, United States, 94025

Sprinter Health San Francisco, California, USA Office

Sprinter Health San Francisco Bay Area Office

San Francisco, CA, United States, 94111

Similar Jobs at Sprinter Health

15 Minutes Ago
Hybrid
2 Locations
160K-220K Annually
Senior level
160K-220K Annually
Senior level
Artificial Intelligence • Healthtech • Logistics • Social Impact • Software • Telehealth
Lead and conduct ML research aligned to Sprinter Health's strategy: define research agenda, design rigorous experiments, develop novel methods and evaluations, publish and patent findings, translate research into production-ready tools, and collaborate with clinicians and cross-functional teams to validate and deploy clinically robust AI solutions.
Yesterday
Remote or Hybrid
United States
50K-60K Annually
Junior
50K-60K Annually
Junior
Artificial Intelligence • Healthtech • Logistics • Social Impact • Software • Telehealth
Support in-home clinical leadership by managing workforce and payroll compliance, tracking attendance and training, preparing operational reports, maintaining SOPs and dashboards, routing non-clinical issues, and participating in audits to ensure HIPAA and policy adherence.
Top Skills: Ehr SystemsGoogle DocsGoogle SheetsGoogle SlidesRipplingSlack
3 Days Ago
Hybrid
Menlo Park, CA, USA
165K-200K Annually
Senior level
165K-200K Annually
Senior level
Artificial Intelligence • Healthtech • Logistics • Social Impact • Software • Telehealth
Design and build backend services, APIs, and full-stack features that power patient booking, clinician routing, logistics, and device integrations. Own projects 0→1, solve scheduling/dispatch challenges, integrate external health systems, and collaborate with product, data, ops, and clinical teams to ship reliable, secure healthcare software.
Top Skills: AmplifyAppsyncAWSCloudFormationDynamoDBGraphQLJavaScriptLambdaNode.jsReact NativeReact Native For WebTypescript

What you need to know about the San Francisco Tech Scene

San Francisco and the surrounding Bay Area attracts more startup funding than any other region in the world. Home to Stanford University and UC Berkeley, leading VC firms and several of the world’s most valuable companies, the Bay Area is the place to go for anyone looking to make it big in the tech industry. That said, San Francisco has a lot to offer beyond technology thanks to a thriving art and music scene, excellent food and a short drive to several of the country’s most beautiful recreational areas.

Key Facts About San Francisco Tech

  • Number of Tech Workers: 365,500; 13.9% of overall workforce (2024 CompTIA survey)
  • Major Tech Employers: Google, Apple, Salesforce, Meta
  • Key Industries: Artificial intelligence, cloud computing, fintech, consumer technology, software
  • Funding Landscape: $50.5 billion in venture capital funding in 2024 (Pitchbook)
  • Notable Investors: Sequoia Capital, Andreessen Horowitz, Bessemer Venture Partners, Greylock Partners, Khosla Ventures, Kleiner Perkins
  • Research Centers and Universities: Stanford University; University of California, Berkeley; University of San Francisco; Santa Clara University; Ames Research Center; Center for AI Safety; California Institute for Regenerative Medicine

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account