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Algorithm Developer/ Quantitative Researcher

Expert Executive Recruiters (EER Global)
London
3 days ago
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Our client is a global fintech firm whose algorithms power the functioning of modern capital markets. Their solutions process trillions of dollars annually, helping institutions manage risk, optimise portfolios, and improve market efficiency.

This is not a standard software engineering role. It combines coding, quantitative research with applied algorithm design. The successful professional will excel at mathematical modelling, operations research, and optimisation, and will be able to translate complex business challenges into rigorous models, then implement them in code at scale.


Responsibilities

  • Design, implement, and productionize optimisation and financial algorithms.
  • Translate mathematical and operations research models into enterprise-grade solutions.
  • Collaborate with developers and product teams to frame problems as solvable models.
  • Contribute to the architecture of distributed, high-throughput systems.
  • Conduct research to enhance optimisation frameworks and algorithm performance.


Required Experience

  • Strong foundation in mathematics, optimisation, or operations research.
  • Demonstrated Python engineering skills (OOP, algorithms, data structures).
  • Ability to transform theoretical models into practical solutions.
  • Strong communication and teamwork skills.


Preferred Experience

  • MSc/PhD in a quantitative discipline.
  • Experience with optimisation frameworks (Gurobi, OR-Tools).
  • Knowledge of financial markets, derivatives, or clearing/margin optimisation.
  • Hands-on experience with AWS, PostgreSQL, or distributed computing.


Why Join?

  • Solve complex mathematical challenges with global financial impact.
  • Work in a collaborative, research-driven team where curiosity and creativity are valued.
  • Benefit from a competitive salary, performance-based bonus, and hybrid flexibility.
  • Contribute to systems that directly improve the stability and efficiency of global markets.

Professionals must have, or be able to obtain, the legal right to work in the UK. Our client is an equal opportunity employer, committed to diversity and inclusion, and will provide reasonable adjustments throughout the hiring process.

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