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Python Data Engineer

Stanford Black Limited
City of London
1 day ago
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Senior Data Engineer - Credit Technology

Global Multi-Strat Hedge Fund | London


I am partnered with one of the most successful multi-strat funds globally. This team operates on a fully centralized, in-house platform across all trading, pricing, and risk systems.


The Head of Quant Research is looking for Data Engineers to build next-gen, real-time, cloud-native data systems. This is a rare greenfield opportunity with no legacy constraints.


Responsibilities:

  • Build end-to-end data systems supporting alpha research
  • Develop streaming and batch pipelines (Kafka, Python)
  • Optimize datasets for quantitative researchers
  • Work on distributed, real-time, cloud-native architectures


Requirements:

  • Degree in Computer Science, Physics, Mathematics or similar field
  • 5+ years in data engineering
  • Strong experience with python, distributed systems
  • Deep knowledge of Kafka/stream processing
  • DBT experience alone won't cut it - they need true raw data engineering expertise
  • Worked in Financial Services - preferable


Location: 5 days onsite -London

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