Ph.D. Graduate Intern – Quantitative Portfolio Risk Analytics
Ph.D. Graduate Intern – Quantitative Portfolio Risk Analytics (Cross-Disciplinary)
Position Overview
We are seeking an exceptional Ph.D. graduate student to join our team as a Quantitative Portfolio Risk Analytics Intern. This role focuses on developing and applying advanced analytical methods to understand portfolio risk, market structure, and complex financial systems.
We are intentionally recruiting from cross-disciplinary, research-driven backgrounds. Doctoral candidates from fields such as physics, astrophysics, math, applied mathematics, statistics, engineering, economics, computer science, quantum computing, biotech, and other data-intensive sciences are strongly encouraged to apply—especially those interested in translating rigorous quantitative methods into real-world financial applications.
Key Responsibilities
Develop and enhance quantitative models for portfolio risk, including factor-based and statistical approaches
Analyze large, high-dimensional financial datasets to uncover structure, dependencies, and sources of risk
Design and implement analytical tools and pipelines using Python and SQL
Contribute to model validation, backtesting, and performance evaluation
Collaborate with risk, engineering, and data teams to improve model scalability and data infrastructure
Communicate complex quantitative insights through clear visualizations and technical summaries
Apply advanced methodologies from your discipline (e.g., stochastic modeling, optimization, machine learning, or geometric/topological approaches) to improve risk analytics
Required Qualifications
Currently enrolled in a graduate Ph.D. program in a highly quantitative field (e.g., Math, Applied Mathematics, Physics, Astrophysics, Statistics, Computer Science, Engineering, Financial Engineering, Economics, Biotech or other data-driven disciplines)
Strong foundation in probability, statistics, and numerical methods
Proficiency in Python (NumPy, pandas, or similar) and/or SQL
Experience working with large datasets and implementing quantitative models
Ability to think rigorously about complex systems and translate theory into practical solutions
Preferred Qualifications
Familiarity with quantitative finance concepts (e.g., portfolio theory, factor models, volatility modeling, Value-at-Risk)
Experience with scientific computing, optimization, or machine learning
Background or research in cross-disciplinary areas such as:
Statistical physics, complex systems, or network theory
Applied or computational mathematics
Machine learning or probabilistic modeling
Quantum computing or advanced optimization techniques
Topological data analysis or geometric data methods
Prior research, publications, or project work demonstrating advanced quantitative modeling
What You’ll Gain
Exposure to real-world portfolio risk problems at the intersection of finance and advanced analytics
Opportunity to apply cutting-edge academic methods in a production environment
Collaboration with a highly quantitative, cross-disciplinary team
Experience working with large-scale financial data and modern analytics infrastructure
Mentorship and potential pathway to full-time quantitative roles
Duration & Compensation
Internship: Summer 2026, with potential to extend
Paid internship (competitive, based on experience and location)