Data Engineer

Saragossa
Newcastle upon Tyne
5 days ago
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Join a newly established joint venture between a top hedge fund and a global leader in management consultancy, that brings together world-class expertise and a shared ambition to build an exceptional team delivering innovative, data-driven solutions that drive real business impact.


You can be the next Data Engineer to join their fast growing Data team. This role offers a unique opportunity to work at the intersection of finance and technology, engaging directly with front-office teams to develop and maintain high-performance data systems. You will be responsible for building and optimising their data platform, creating robust data pipelines, and implementing scalable solutions that meet the evolving needs of the business.


Utilise your strong background in data engineering, combined with your existing experience using SQL, Python and Apache Spark in production environments. The role will entail strong problem-solving skills, attention to detail, and the ability to work independently while collaborating closely with internal and external stakeholders.


At this firm, you will have the opportunity to contribute from day one, working alongside talented professionals on projects that are often closely linked to real-time financial markets and global events. You’ll be empowered to take ownership of your work, encouraged to challenge existing systems and processes, and supported in your continued development in a dynamic and intellectually stimulating environment.


This is an exciting time to join the firm as they shape the culture and capabilities of a new organisation built on the foundations of excellence, innovation, and collaboration. If you are passionate about data, eager to make a meaningful impact, and thrive in a fast-paced setting, we would love to hear from you.

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