Data Engineering Manager

Ignite Digital
Milton Keynes
1 month ago
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Job Title

Data Engineering Manager Financial Services | Cloud | Snowflake


Head of Data Engineering / Lead Data Engineer


Flexible Hybrid working | Competitive Salary & Benefits


Overview

Are you an experienced Data Engineering Leader looking for a strategic role in a high-growth, data-driven organization?


We are seeking a Senior Data Engineering Manager to lead a transformative data strategy within a well-established company in the financial services sector. Reporting to the Chief Data Officer, you will drive the design, development, and implementation of cutting‑edge cloud‑based data solutions, overseeing a team of skilled engineers.


Why Join Us?

  • Lead a greenfield Snowflake implementation, transforming on‑premises systems to a modern cloud‑based architecture.
  • Shape data strategy and best practices, influencing business‑critical decision‑making.
  • Work with the latest data engineering technologies in a dynamic and forward‑thinking environment.
  • Enjoy a highly competitive salary, up to 20% bonus, and a 10% pension.
  • Hybrid flexibility – only 2-3 days per month on‑site in Milton Keynes.

What You’ll Do

  • Lead and develop a team of data engineers while providing hands‑on technical leadership, fostering collaboration and innovation.
  • Oversee the end‑to‑end development of scalable, efficient, and secure data pipelines.
  • Manage and optimise the migration to a Snowflake data platform, ensuring high performance and data integrity.
  • Develop and enforce data governance and compliance best practices.
  • Drive cloud migration and data transformation initiatives, ensuring a seamless transition from legacy systems.

What We’re Looking For

  • Strong proven experience in a senior data engineering role, leading technical teams.
  • Strong expertise in Snowflake, Informatica, SQL, Python, and cloud‑based data solutions.
  • Background in data architecture, warehousing, and ETL processes.
  • Ability to translate business requirements into scalable technical solutions.
  • Financial services or regulated industry experience (desirable but not essential).

Benefits

  • Lead a greenfield Snowflake implementation, transforming on‑premises systems to a modern cloud‑based architecture.
  • Shape data strategy and best practices, influencing business‑critical decision‑making.
  • Work with the latest data engineering technologies in a dynamic and forward‑thinking environment.
  • Enjoy a highly competitive salary, up to 20% bonus, generous car allowance and a 10% pension.
  • Flexible hybrid flexibility.

How to Apply

If you are a forward‑thinking data leader looking for an exciting challenge, apply now and be part of a cutting‑edge data transformation journey!


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