Data Engineer - Systematic Trading

Referment
London
10 months ago
Applications closed

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Referment has partnered with a systematic hedge fund who have recently opened up a new role in their Data Engineering team.


Working directly with PM's, traders and quants, you will be responsible for building and maintaining the data infrastructure that fuels their research and trading strategies, presenting an exciting opportunity to work close to the investment process as the company grows and expands into new asset classes.


The role will involve building and maintaining data pipelines for their intraday and systematic trading desks as well as frameworks to guarantee accuracy and integrity of datasets which dictate efficacy of their quantitative strategies.


As such, the successful applicant must have strong Python development skills and at least 4 years of experience working as a Data Engineer within financial markets.


Key Requirements

  • 4+ years of experience building ETL/ELT pipeline using Python within financial markets (ideally for a systematic trading desk)
  • Strong knowledge of SQL and relational databases
  • In depth knowledge of data streaming technologies like Kafka, S3 and Airflow
  • Degree or higher in Computer Science or similar field
  • Willingness to do support and occasional on call work as and when required

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