Lead Data Engineer

Frasers Group Financial Services
Clayton-le-Moors
1 month ago
Applications closed

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Job Description

The role of the Lead Data Engineer is to lead the design, development, and maintenance of the organisation's data infrastructure. The role involves overseeing the efficient, reliable, and secure collection, storage, and processing of data, which is critical for enabling data-driven decision-making across FGFS.

The Team Lead will help manage and mentor a team of data engineers, working collaboratively with cross-functional teams to implement data solutions, optimise data pipelines, and drive the overall data strategy, ensuring data integrity, security, and accessibility across FGFS. The Team Lead will also play a key role in strategic planning, process improvement, and aligning data initiatives with business goals.

  • Lead the design, development, and maintenance of scalable and efficient data pipelines for extracting, transforming, and loading data from multiple sources.
  • Oversee the team's efforts in building and optimising data pipelines, ensuring alignment with organisational goals and performance standards.
  • Manage and mentor a team of data engineers, providing guidance, support, and professional development opportunities.
  • Oversee the diagnosis and resolution of complex data-related issues within the platform, ensuring prompt and effective support and maintenance of data systems.
  • Implement best practices for monitoring and alerting to proactively address potential issues.
  • Act as a primary liaison between the data engineering team, spoke analysts, and other key stakeholders to align data solutions with business needs.
  • Ensure the team adheres to data governance policies, regulatory requirements, and data security best practices.
  • Oversee the creation and maintenance of comprehensive documentation of data engineering processes.
  • Regularly report on system performance, data quality, and pipeline health to senior management and other stakeholders.
  • Drive the continuous improvement of data engineering practices by staying current with industry trends, emerging technologies, and best practices.
  • Lead initiatives to implement innovative solutions and improvements, ensuring the data engineering team's approach remains efficient, scalable, and effective.


Qualifications

Required

  • Good knowledge of enterprise data warehousing, data integration and Business Intelligence (BI) reporting.
  • Well versed with cloud-based data warehouse solutions including Snowflake.
  • Knowledge of DBT and different ingest tools such as Stitch, Fivetran and Snowpipe.
  • Significant SQL experience.
  • Experience with leading and mentoring junior members of a team.
  • Comfortable with working in a high pressure environment and working to tight deadlines
  • Strong understanding of Data Governance best practice

Desirable

  • Working knowledge of Python.
  • Experience with modelling data for Microsoft PowerBI.
  • Knowledge of best practice for data modelling and architecture.
  • Prior Financial Services experience

Non-technical required:

  • Excellent critical thinking and solution creation skills
  • Ability to deliver in a fast-paced and dynamic environment.



Additional Information

As FGFS is within a regulated environment any offer is subject to satisfactory background checks including criminal record check, credit check, and employment references.

Along with your benefits package we also offer a wide range of perks for our colleagues:

Reward, Recognition and Opportunities

Frasers Champion- Our employees are at the heart of our business and we ensure individuals are recognised every single month for their hard work. Frasers Champion is a peer nominated scheme where 8 winners will receive double their pay for a month where they have thought without limits, owned it or been relevant.

Fearless 1000 – By October 2025, we want our share price to hit £10. If that happens for 30 or more consecutive trading days, all colleagues across the business will receive a bonus! The top 1000 performers in the company will receive unprecedented bonuses, worth from £50,000 to £1million! Senior leaders across the business nominate these performers twice a year for embodying our core values and delivering exceptional performance*.
 
*subject to terms and conditions

Frasers Festival – an event like no other! Our Frasers Festival is our celebration for Head Office and Retail Staff across the UK and Europe – hosting a MEGA brand village, guest speakers from the world's biggest brands, evening entertainment, the ultimate Frasers Fearless Fitness Challenge and much more.

CEO Sessions – Once a quarter we offer 20 employees the opportunity to attend our “CEO Sessions” ran by our CEO and leadership team. Employees have the chance to connect, network and submit questions around specific topics such as our Sports or Luxury business. 

Retail Reconnect – In order to build the planets most admired and compelling brand ecosystem, all employees must understand our business, product and customers. Each financial year, Head Office employees will gain insights by spending two days in one of our stores or the Warehouse. The goal is to learn how the work you do impacts our teams on the frontline, and to bring ideas back to the office which will improve how we work.

Employee Welfare 

Frasers Fit – Our Everlast Gyms Team are on a mission to make our workforce the best, and fittest on the planet! We run free gym classes for employees as well as discounted memberships to our clubs. Frasers Fit is our wellbeing programme which aims to support and improve colleagues Physical, Financial & Mental wellbeing. The app is accessible for every employee and includes training, nutrition and lifestyle advice- all completely free.

Retail Trust – We know that its not just about physical health, mental wellness is equally important which is why all of our employees get free access and support from the Retail Trust charity. This includes a 24 hour wellbeing helpline, wellness hub, counselling and financial/legal support.

What’s next?

Our Recruitment Team will be reviewing applications and all candidates will receive a response, whether you are successful or unsuccessful. Shortlisted applicants may be asked to confirm a few key details before being booked in for a first stage interview with the Recruiter- this will be behaviourally focussed and centred around how you align with our Culture and Values. If successful we anticipate two further interview stages with the Hiring Manager/wider team which will be more technically focussed and could include a presentation/task so we can see your skills in action.

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