PhD Internship - Summer 2026
SKILLS
FULL DESCRIPTION
[Employer hidden — view at passion-project.co.uk] is offering Quantitative Research Internship opportunities for PhD students in their penultimate year of study in a quantitative discipline. These internships will take place during Summer 2026 and will run for 12 weeks. Roles are available across three key areas of the business: Quantitative Trading within [Employer hidden] Securities, Quantitative Research within the [Employer hidden] Options desk, and Quantitative Research within [Employer hidden] Funds. As an intern, you will be fully embedded within your team and contribute meaningfully to live research and trading initiatives.
About the Role:
[Employer hidden] is offering Quantitative Research Internship opportunities for PhD students in their penultimate year of study in a quantitative discipline. These internships will take place during Summer 2026 and will run for 12 weeks.
Roles are available across three key areas of the business:
- Quantitative Trading within [Employer hidden] Securities
- Quantitative Research within the [Employer hidden] Options desk
- Quantitative Research within [Employer hidden] Funds
[Employer hidden] is an innovative financial technology firm specialising in systematic and quantitative trading. No prior industry experience is required—only intellectual curiosity, strong analytical ability, and a genuine eagerness to learn.
As an intern, you will be fully embedded within your team and contribute meaningfully to live research and trading initiatives. The role is research-focused and involves applying advanced statistical and mathematical techniques to develop and evaluate quantitative signals and strategies.
Responsibilities:
You will work as part of a collaborative research team, tackling complex and intellectually challenging problems. Responsibilities may include:
- Assisting in the research and development of systematic investment strategies across multiple asset classes
- Analysing large and complex financial datasets to identify signals, patterns, and risk characteristics
- Designing, implementing, and testing quantitative models using Python and relevant numerical and statistical libraries
- Supporting the backtesting, performance analysis, and validation of trading strategies
- Helping to maintain and enhance research infrastructure, tools, and data pipelines
- Clearly documenting research methodologies and results, and presenting findings to senior researchers
- Collaborating closely with portfolio managers, quantitative researchers, and technologists
- Investigating enhancements to existing strategies, including improvements to risk management and execution assumptions
Qualifications
- PhD student in a quantitative field (e.g. Mathematics, Physics, Statistics, Computer Science), with expected completion in 2026 or 2027
- Strong foundation in statistics and probability theory, with familiarity with machine learning techniques
- Strong programming skills in Python (experience with libraries such as NumPy, Pandas, or similar is desirable)
- Experience working in a research-driven environment, including handling large datasets and developing algorithmic solutions to complex problems
- A strong interest in financial markets and systematic trading (prior finance experience is not required)
Personal Attributes
- Highly analytical, with a strong sense of ownership and accountability
- Enjoys tackling complex problems and working through challenging mathematical or statistical questions
- Collaborative and able to work effectively with researchers, technologists, and trading teams
- Clear and concise communicator, both verbally and in writing
- Comfortable working independently while knowing when to seek input from others
Key Objectives
- Developed a strong understanding of how quantitative research is conducted within a live trading environment
- Contributed tangible research outputs that inform or enhance existing trading strategies or research directions
- Demonstrated the ability to translate complex mathematical and statistical ideas into robust, well-tested code
- Gained hands-on experience working with large-scale financial data and research infrastructure
- Built an understanding of the full research lifecycle, from idea generation and data analysis through to validation and presentation
- Established effective working relationships within their team, contributing proactively and collaboratively to shared objectives
- Strengthened problem-solving, communication, and technical skills in a fast-paced, intellectually rigorous setting