Be at the heart of actionFly remote-controlled drones into enemy territory to gather vital information.

Apply Now

Data Engineer- Systematic Fund

Oxford Knight
London
1 day ago
Create job alert

This research-centric fund leverages quantitative analysis and cutting-edge technology to identify and capitalize on opportunities across global financial markets. Fostering a collaborative and intellectually stimulating environment, they bring together individuals with Mathematics, Physics and Computer Science backgrounds who are passionate about applying rigorous scientific methods to financial challenges. As a fundamentally data-driven business, their success is heavily linked to the acquisition, processing, and analysis of vast datasets. High-quality, well-managed data forms the critical foundation for quantitative research, strategy development, and automated trading systems.

As a Data Engineer within the Quantitative Platform team, you'll play a pivotal role in building and maintaining the data infrastructure that fuels research and trading strategies. You will be responsible for the end-to-end lifecycle of diverse datasets - including market, fundamental, and alternative sources - ensuring their timely acquisition, rigorous cleaning and validation, efficient storage, and reliable delivery through robust data pipelines.

Working closely with quantitative researchers and technologists, you will tackle complex challenges in data quality, normalization, and accessibility, ultimately providing the high-fidelity, readily available data essential for developing and executing sophisticated investment models in a fast-paced environment.

Responsibilities:

  • Evaluating, onboarding, and integrating complex data products from diverse vendors, serving as a key technical liaison to ensure data feeds meet the stringent requirements for research and live trading.
  • Designing, implementing, and optimizing robust, production-grade data pipelines to transform raw vendor data into analysis-ready datasets, adhering to software engineering best practices and ensuring seamless consumption by automated trading systems.
  • Engineering and maintaining sophisticated automated validation frameworks to guarantee the accuracy, timeliness, and integrity of all datasets, directly upholding the quality standards essential for the efficacy of quantitative strategies.
  • Providing expert operational support for the data pipelines, rapidly diagnosing and resolving critical issues to ensure the uninterrupted flow of high-availability data powering daily trading activities.
  • Participating actively in team rotations, including on-call schedules, to provide essential coverage and maintain the resilience of data systems outside of standard business hours.


Requirements:

  • 5+ years' experience building ETL/ELT pipelines using Python and pandas within a financial environment.
  • Strong knowledge of relational databases and SQL.
  • Familiarity with various technologies, such as S3, Kafka, Airflow, Iceberg.
  • Proficiency working with large financial datasets from various vendors.
  • A commitment to engineering excellence and pragmatic technology solutions.
  • A desire to work in an operational role at the heart of a dynamic data-centric enterprise.
  • Excellent communication and collaboration skills, and the ability to work in a team.


Nice to have:

  • Strong understanding of financial markets.
  • Experience working with hierarchical reference data models.
  • Proven expertise in handling high-throughput, real-time market data streams.
  • Familiarity with distributed computing frameworks such as Apache Spark.
  • Operational experience supporting real-time systems.



Whilst we carefully review all applications, to all jobs, due to the high volume of applications we receive it is not possible to respond to those who have not been successful.

Contact
If this sounds like you, or you'd like more information, please get in touch:

George Hutchinson-Binks

(+44)
linkedin.com/in/george-hutchinson-binks-a62a69252

Related Jobs

View all jobs

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Data Science Recruitment Trends 2025 (UK): What Job Seekers Need To Know About Today’s Hiring Process

Summary: UK data science hiring has shifted from title‑led CV screens to capability‑driven assessments that emphasise rigorous problem framing, high‑quality analytics & modelling, experiment/causality, production awareness (MLOps), governance/ethics, and measurable product or commercial impact. This guide explains what’s changed, what to expect in interviews & how to prepare—especially for product/data scientists, applied ML scientists, decision scientists, econometricians, growth/marketing analysts, and ML‑adjacent data scientists supporting LLM/AI products. Who this is for: Product/decision/data scientists, applied ML scientists, econometrics & causal inference specialists, experimentation leads, analytics engineers crossing into DS, ML generalists with strong statistics, and data scientists collaborating with platform/MLOps teams in the UK.

Why Data Science Careers in the UK Are Becoming More Multidisciplinary

Data science once meant advanced statistics, machine learning models and coding in Python or R. In the UK today, it has become one of the most in-demand professions across sectors — from healthcare to finance, retail to government. But as the field matures, employers now expect more than technical modelling skills. Modern data science is multidisciplinary. It requires not just coding and algorithms, but also legal knowledge, ethical reasoning, psychological insight, linguistic clarity and human-centred design. Data scientists are expected to interpret, communicate and apply data responsibly, with awareness of law, human behaviour and accessibility. In this article, we’ll explore why data science careers in the UK are becoming more multidisciplinary, how these five disciplines intersect with data science, and what job-seekers & employers need to know to succeed in this transformed field.

Data Science Team Structures Explained: Who Does What in a Modern Data Science Department

Data science is one of the most in-demand, dynamic, and multidisciplinary areas in the UK tech and business landscape. Organisations from finance, retail, health, government, and beyond are using data to drive decisions, automate processes, personalise services, predict trends, detect fraud, and more. To do that well, companies don’t just need good data scientists; they need teams with clearly defined roles, responsibilities, workflows, collaboration, and governance. If you're aiming for a role in data science or recruiting for one, understanding the structure of a data science department—and who does what—can make all the difference. This article breaks down the key roles, how they interact across the lifecycle of a data science project, what skills and qualifications are typical in the UK, expected salary ranges, challenges, trends, and how to build or grow an effective team.