Decision Intelligence Engineer – Next Best Action
Job Description:
- Design, implement, and evaluate algorithms suited to long-horizon, sparse-reward sequential decision-making in healthcare.
- Frame member decisioning problems as Markov Decision Processes (MDPs) or Partially Observable MDPs.
- Manage exploration-exploitation tradeoffs appropriate for a production healthcare environment.
- Build simulation and backtesting environments to evaluate policy or decision quality before production promotion.
- Own the nightly Databricks training workflow involving feature engineering from upstream clinical and operational data sources.
- Apply multi-agent decision-making concepts where member household or population-level coordination is required.
Requirements:
- 8+ years of software engineering or quantitative research experience building and operating large-scale production systems, with emphasis on data-intensive platforms, recommendation systems, optimization engines, or simulation frameworks serving millions of users.
- 3+ years of hands-on experience implementing reinforcement learning, operations research methods, or simulation-driven decision systems in production.
- Relevant backgrounds include policy gradient and value-based RL (PPO, A3C, DQN, CQL), stochastic dynamic programming, discrete-event simulation, or large-scale combinatorial or constrained optimization.
- Deep familiarity with Markov Decision Processes, Bellman-equation-based value estimation, reward or objective shaping, exploration-exploitation tradeoffs, and constraint formulation in real-world decision systems.
- Demonstrated ability to diagnose failure modes in learned or optimized policies: instability, poor credit assignment across long horizons, and distributional shift across large populations.
- Proficiency in Python 3.x; experience with PyTorch or TensorFlow for policy network or learned model implementation.
- Experience with Ray RLlib or equivalent distributed computation frameworks for large-scale training or optimization.
- Experience with Databricks, PySpark, and Delta Lake for large-scale ML or data pipelines processing tens of millions of records.
- Experience with MLflow for experiment tracking, model registry, and artifact management.
- Experience with shipping systems that operate reliably under production load, not just research or prototype work.
Benefits:
- medical, dental and vision benefits
- 401(k) retirement savings plan
- time off (including paid time off, company and personal holidays, volunteer time off, paid parental and caregiver leave)
- short-term and long-term disability
- life insurance
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