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Senior Data Engineer

Harrington Starr
London
17 hours ago
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Senior Data Developer – Multi-Strategy Hedge Fund

We are seeking a Senior Data Developer to design, build, and operate a modern data platform that powers quantitative research, trading, and risk management across multiple asset classes. This is a hands-on role at the intersection of data engineering and software development, where you will own end-to-end data pipelines, enhance the security master, and ensure the front office has the data needed to drive investment returns.


Key Responsibilities:

  • Develop and maintain scalable Python-based ETL pipelines for market data ingestion and transformation.
  • Build and manage cloud data lake solutions (AWS/Databricks) for structured and unstructured data.
  • Implement data quality, validation, and cleansing routines to ensure accuracy of financial time-series data.
  • Optimise workflows for low latency and high throughput to support research, trading, and risk functions.
  • Collaborate with portfolio managers, researchers, and traders to deliver tailored data solutions.
  • Contribute to security master database design and implementation.
  • Analyse and extract insights from datasets to inform trading and risk decisions.
  • Document system architecture, data flows, and technical solutions.


Requirements:

  • Bachelor’s or higher in Computer Science, Engineering, Mathematics, Statistics, or a quantitative discipline.
  • 5+ years developing Python-based financial software, with strong Pandas experience.
  • Exposure to financial datasets across multiple asset classes.
  • Experience supporting quantitative research and modelling.
  • Proficiency in Linux environments.
  • Strong foundation in mathematics and statistics.
  • Detail-oriented, analytical, and able to thrive in a fast-paced environment.
  • Excellent problem-solving and communication skills.


This is an opportunity to shape the data backbone of a sophisticated, multi-strategy investment operation while working at the cutting edge of quantitative finance.

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