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Data Scientist, Portfolio Optimization
Compensation
Salary undisclosedDescription
About the Position
As a Data Scientist on the platform prediction team, you'll translate our probability of success predictions into measurable portfolio-level outcomes. You'll architect core systems — order management, execution simulation, portfolio construction, risk monitoring, and performance attribution — that let us rigorously evaluate signals from our AI-driven predictions in public and private equities and our internal portfolio.
This role sits at the intersection of quantitative finance, healthcare data, and AI-driven drug development. If you're excited about applying portfolio construction and risk management fundamentals to one of the most consequential prediction problems in healthcare, this is the role.No other company — hedge fund or pharma — has a technical data science position translating drug development experience into durable AI-native portfolio strategies. The skills you develop here — portfolio construction over assets with radically asymmetric risk profiles, clinical trial analytics, AI/ML in production, and risk management across multi-year horizons — can directly impact the delivery of new and effective therapeutics to patients by best aligning impactful medicines with economic incentives.
Responsibilities
- Work with the team to implement and maintain core portfolio engine: order management system, execution simulation layer, portfolio construction service, and performance tracking
- Design risk frameworks that quantify exposure across a portfolio of drug development bets with radically different risk profiles, timelines, and failure modes
- Run rigorous backtesting experiments with strict temporal constraints to evaluate Formation strategies against baseline approaches and measure marginal signal from new evidence sources
- Coordinate across the organization to integrate internal Formation data sources (clinical trial data, genomic evidence, real-world data) and proprietary tooling into portfolio analytics pipelines
- Work with product and engineering teams to build dashboards and reporting that communicate portfolio performance, risk metrics, and strategy comparisons to both technical and executive stakeholders
- Collaborate with the broader data science team to ensure portfolio-level evaluation feeds back into model improvement and evidence prioritization
About You
Required Qualifications
- MS or PhD in a quantitative field (statistics, finance, physics, computational science, engineering, or related)
- 1-3 years in a quantitative research, data science, or analytics role — finance, healthcare, academic research, or consulting all count; substantive internships qualify
- Strong Python programming skills with experience in data-intensive workflows (pandas, numpy, scipy)
- Solid grasp of core portfolio construction and risk concepts: position sizing, rebalancing, Sharpe ratio, drawdown, volatility, benchmark comparison
- Demonstrated ability to work with messy, real-world datasets — comfortable with data wrangling, deduplication, and quality assessment
- Clear communicator who can present quantitative results to both technical peers and business stakeholders
Preferred Qualifications
- Experience with backtesting frameworks or portfolio simulation (vectorbt, Backtrader, or custom implementations)
- Exposure to healthcare, pharma, or biotech data (clinical trials, claims data, -omics, real-world evidence)
- Familiarity with alternative data in a research or investment context
- Experience with probability-of-success modeling, drug development decision analysis, or health economics
- Comfort with LLMs or AI/ML pipelines in a production or research setting
- Familiarity with dashboard/visualization tools (Streamlit, Plotly, Dash) and pipeline orchestration (Dagster, Airflow)
Healthcare OR finance domain knowledge is valued; both are not required.
Total Compensation Range: $154,500 - $202,000
Stack
- Posted
- Mar 26, 2026
- Last seen
- Jun 25, 2026
- First seen
- Jun 25, 2026
- Status
- active