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Quantitative Software/Data Engineer - Treasury.

Millennium Management
London
3 weeks ago
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Quantitative Software/Data Engineer - Treasury

Responsibilities

Take part in the development and enhancement of the back-end distributed system, providing high performance and high availability margin and stress cash calculations and simulations to Senior Management, Portfolio Managers and Treasurers. Work closely with Quant researchers and developers, tech teams, middle office and business management teams in London, New York, Tel Aviv & Miami. Design, develop and maintain data models, pipelines and warehouse and caching stores


Requirements

Must-have qualifications/skills:

Minimum 5+ years of experience developing systems in Python or other OOP background with Python knowledge. B.A. in computer science or another quantitative field. Experience with Cloud technologies Experience working with RDBMS (Postgres preferred) and other database technologies (data lakes, DuckDB, NoSQL) Good understanding of Design Patterns, Algorithms & Data structures Experience working with Git / GitHub and with CI/CD pipelines Ability to communicate effectively with senior stakeholders across the organization Able to work independently in a fast-paced environment. Detail oriented, organised, demonstrating thoroughness and strong ownership of work.


​Nice-to-have qualifications/skills:

Knowledge of Treasury cash management and margin methodologies Experience in the financial services

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National AI Awards 2025

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