Machine Learning Engineer
Role Overview
This senior/staff-level Machine Learning Engineer role involves owning end-to-end ML systems in production, including training and fine-tuning LLMs for clinical applications like reasoning and question-answering. You'll work in a small, high-caliber team focused on real clinical workflows, driving ambiguous problems from definition to deployment with significant impact on patient outcomes. Responsibilities include architecture, modeling, evaluation, and production infrastructure, requiring strong product judgment and ownership of critical systems.
Perks & Benefits
The role is remote with a base in San Francisco, offering competitive compensation of $225,000–$300,000+ salary and meaningful equity in an early-stage Series A company. You'll work on high-stakes problems with real patient impact, gaining significant ownership in a fast-moving environment, though time zone alignment with San Francisco is likely expected for collaboration. The culture emphasizes pushing frontiers while shipping real systems, with a focus on trust in clinical AI decision-making.
Full Job Description
Machine Learning Engineer
About Latent Health
Healthcare today is only truly personalized for two groups: those with wealth and access, and those with physicians in their immediate family.
For everyone else, care is fragmented and impersonal.
Medical history is scattered across systems that don’t communicate. Physicians have minutes to understand decades of context. And when something goes wrong, patients are left with tools that understand medicine broadly—but not the individual.
We believe this can be fundamentally rebuilt.
At Latent Health, we are building systems that understand both:
the population (clinical knowledge at scale)
and the individual (longitudinal patient history)
Our models are designed to answer complex clinical questions with patient-specific context and verifiable reasoning.
Our dataset represents one of the most clinically diverse populations in the United States, including patients with chronic illness and complex disease. Each patient record contains extraordinary depth.
ML at Latent Health
The Machine Learning team is responsible for building systems that run in real clinical workflows.
We work on:
Verifiable reinforcement learning at scale
Mid-training and post-training of foundation models
Novel objectives derived from longitudinal patient data
We are a small group of researchers and engineers focused on pushing the frontier while shipping real systems into production.
We are a small team and expect engineers to take ownership of critical systems, not components.
The Role
As a Machine Learning Engineer, you will own the design, development, and operation of production-grade ML systems that run in real clinical workflows.
You will drive systems from ambiguous problem definition through to reliable production deployment, setting technical direction along the way.
We are primarily hiring for senior and staff-level engineers who are comfortable owning critical systems end-to-end.
This role involves owning systems that directly impact real patient outcomes.
What You’ll Do
Own end-to-end ML systems, including architecture, data, modeling, evaluation, and production infrastructure
Train and fine-tune large language models (LLMs) for:
Clinical reasoning
Medical question answering
Evidence-grounded generation
Make and own tradeoffs across accuracy, latency, cost, and safety in high-stakes production environments
Develop evaluation frameworks to ensure model safety and clinical validity
Integrate ML systems into product workflows and patient-facing applications
Monitor system performance in production and iterate based on real-world usage and feedback
Define what “correct” means in ambiguous clinical workflows in collaboration with engineers and clinicians
What We’re Looking For
Strong foundation in machine learning and software engineering
Track record of building and owning ML systems in production where performance, reliability, or correctness materially mattered
Experience driving ambiguous ML problems from 0→1, including problem formulation, model design, and productionization
Hands-on experience with PyTorch or similar frameworks
Ability to operate independently in high-ambiguity environments with minimal guidance
Strong product and engineering judgment — you know when to use ML, when not to, and how to scope problems accordingly
Comfort working in a fast-moving, early-stage environment
Experience working on systems where decisions have real-world consequences (e.g., healthcare, finance, infrastructure)
Nice to Have
Experience deploying LLMs in production environments
Experience building distributed systems or large-scale data pipelines
Experience working with clinical, biomedical, or other regulated datasets
Why Join Latent Health
Work on high-stakes problems with real impact on patient care
Build systems that define how AI is trusted in clinical decision-making
Significant ownership in a small, high-caliber team
Competitive compensation and meaningful equity
Location
We are based in San Francisco and work together in person.
We spend most of the week in the office and prioritize candidates who are excited to work this way.
Compensation
Base salary: $225,000 – $300,000+
Meaningful equity in an early-stage, Series A company
Closing
If you’re interested in building systems that bring truly personalized healthcare to millions of patients, we’d love to talk.
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