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Quantitative Developer – Core Data | Prime Brokerage – Digital Assets

Radley James
City of London
1 week ago
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Quantitative Developer – Core Data | Prime Brokerage – Digital Assets

Location: London OR New York


Company Overview:

A global prime brokerage platform, purpose-built to support both traditional and digital asset markets. Serving institutional clients, the firm provides integrated credit intermediation, trade execution, and clearing services - enabling counterparties to access global liquidity with minimal friction and no counterparty risk.


Role Overview:

As a QD within Core Data, you'd be responsible for building and maintaining the data infrastructure that underpins key services such as Entity Master, Pricing Service, and Position Service. Your work will ensure these systems are reliable, performant, and scalable - freeing up the wider Quant/DS team to focus on strategic platform development.


You'll lead efforts to improve data accuracy, integrate new reference sources, and develop robust pipelines for ingestion and processing. This is a hands-on role at the core of a high-performance trading infrastructure.


Key Qualifications:

  • 5+ years of experience in quantitative software development at a top-tier firm
  • Strong Python skills, with experience writing production-grade, maintainable code
  • Experience building and maintaining data pipelines
  • Familiarity with large-scale systems; streaming technology experience is a plus
  • Degree in Computer Science, Mathematics or a related field


This opportunity offers a highly competitive compensation package and hybrid working model.


*This opportunity is open in both London AND New York

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