Assured is transforming the infrastructure of U.S. healthcare using intelligent automation. We’re building an AI-native system of action for provider operations to automate the most painful parts of healthcare - credentialing, licensing, and payer enrollment. These are slow, error-prone processes that cost the healthcare system billions and delay patient care.
We’re backed by top Silicon Valley investors and trusted by the most innovative provider groups and health systems. This is a rare opportunity to join an elite team reimagining one of the most broken parts of healthcare - using cutting-edge ML in the real world, at scale.
The Role: Data ScientistWe’re looking for a full-stack Data Scientist to join us as our first dedicated data science hire. You'll partner with our AI/ML engineers and product/engineering teams to build, deploy, and scale machine learning solutions that automate key pieces of the healthcare provider lifecycle.
This role is ideal for someone who thrives in early-stage environments, enjoys owning things end to end, and wants their work to have a measurable impact on an industry that desperately needs modern infrastructure.
What You’ll DoML Innovation & Research
Lead the design, prototyping, and deployment of models across document processing, LLM-based automation, risk prediction, and compliance inference
Apply foundation models, deep learning, and generative AI to healthcare operational data, working on real problems. Designing retrieval + LLM pipelines to interpret ambiguous state license rules and payer policy text.
Scaling intelligent document intake across 100+ formats using foundation models and structured rules
Collaborate closely with engineering and product to take models from concept to production
Healthcare Data Integration & Insight
Develop and manage data pipelines using structured and semi-structured data (e.g., provider rosters, credentialing forms, payer rules, licensing board data)
Analyze large-scale customer data to derive insights that guide product decisions and customer strategy
Use operational and compliance data to surface anomalies, inefficiencies, and automation opportunities
Stakeholder-Facing & Thought Leadership
Interface directly with customers and internal stakeholders to understand use cases and shape the right ML approach
Share learnings via internal memos, external blogs, or whitepapers to grow Assured’s ML thought leadership
Champion practices around reproducibility, model governance, and continuous learning
Team-Building & Mentorship
Mentor engineers and future data science hires; help shape the team’s technical direction
Establish baseline tooling and processes for experimentation, deployment, and monitoring of ML solutions
Work closely with leadership to align ML strategy with business objectives
Must-Haves
3-5+ years of experience building and shipping ML or deep learning models in production
Strong Python skills and fluency with ML libraries (e.g., PyTorch, TensorFlow, Hugging Face)
Deep understanding of machine learning algorithms, NLP, and modern data processing workflows
Ability to design experiments, evaluate models rigorously, and iterate fast
Comfortable working autonomously in ambiguous, fast-changing environments
Excellent written and verbal communication for technical and non-technical audiences
Preferred
Graduate degree (MS/PhD) in a quantitative field (e.g., CS, Statistics, Physics, Applied Math)
Experience working with healthcare, insurance, or compliance data
Familiarity with AWS/GCP and production ML workflows (CI/CD, model monitoring, etc)
Experience with LLMs, GenAI, and tools like LangChain, vector databases, or Retrieval-Augmented Generation
Publications, blog posts, or open-source contributions in ML or AI
You’ll Love This Role If You
Want to lead ML projects from idea to deployment
Thrive in a 0-to-1 environment and like building from scratch
Care about real-world impact, especially in healthcare
Enjoy building systems—not just training models
Believe great ML products come from close collaboration with product, engineering, and users
High-impact work - Tackle bottlenecks that slow down provider access to patients
Real-world AI - Work on meaningful applications of LLMs and applied ML in compliance, forms, automation, and document intelligence
Cross-functional exposure - Collaborate with customers, clinical ops, engineers, and founders
Early-stage upside - Equity, early influence, and a high-growth trajectory
People-first culture - Remote flexibility, mental health time, and a focus on outcomes, not hours
Top Skills
Assured (withassured.com) New York, New York, USA Office
287 Park Avenue S, Suite 511, New York, New York, United States, 10010
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