Senior Data Analyst (12 Month Contract)

Data Freelance Hub
Slough
5 days ago
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Overview

Senior Data Analyst (12 month FTC) based in Stoke Poges with hybrid working. This role is for a Senior Data Analyst on a 12-month contract, based in Stoke Poges with hybrid working. Key skills required include SQL, Tableau, Power BI, and ETL/ELT experience. Financial Services industry experience is preferred.

About the Role

We are seeking an enthusiastic and detail-oriented Data Analyst on a 12-month contract to join our energetic Data Team within a successful Financial Services business. This is a pivotal role in shaping the digital future of our organisation. You will work closely with business users and take ownership of mining, organising, and analysing data from both existing and new sources to support strategic planning and decision-making. Working closely with a small team of UK-based Data Analysts and IT experts (both in-house and from our central functions in Germany). Your work will directly influence business operations, customer experience, and innovation across departments.

Key Responsibilities
  • Design, build, and maintain data sources for Business Intelligence (BI) solutions.
  • Translate business requirements into functional specifications and develop SQL scripts for data extraction.
  • Prepare and deliver accurate data to C-suite executives and Data Team members for analytical and operational use.
  • Develop and implement data solutions using techniques such as Data Modelling, ETL/ELT, Data Lakes, Data Warehousing, and system integration.
  • Resolve data access issues, including troubleshooting and corrective action.
  • Monitor and tune BI tools to ensure optimal performance.
  • Own the design and development of automated solutions for recurring reporting and in-depth analysis.
  • Collaborate with the HQ Data Team in Germany to resolve cross-border data issues.
  • Explore and apply new data sources and techniques to enhance our data lake and analytics capabilities.
  • Promote the use of data-driven insights across departments.
What we're looking for

Required:

  • Degree in Computer Science or equivalent professional experience.
  • Multi-project & varied commercial exposure of producing BI reporting using tools like Tableau and Power BI.
  • Multi-project & varied commercial exposure of troubleshooting in SQL.
  • Multi-project & varied commercial exposure of applying database modelling design principles and deploying ETL/ELT changes within both OLTP and data warehouse / data mart environments.
  • Strong communicator, detail-oriented, problem-solver, and able to work both independently and in a team.

Preferred:

  • Experience in the Financial Services industry.
  • Applied knowledge of JIRA with awareness of Agile methodology.
  • Awareness of the latest data science technologies and their practical applications.
  • Commercial exposure of Python.
What we offer
  • Performance-Based Bonus: annual bonus linked to the company's performance.
  • Flexible Working Hours: flexible working arrangements.
  • Pension Plan: generous pension scheme, with employer contributions up to 10%.
  • Time Off: 26 days of annual leave (plus bank holidays), with option to buy or sell an additional 5 days.
  • Private Healthcare – Free BUPA plan, plus subsidised healthcare for immediate family members.

We are fully committed to providing equal opportunities and building an inclusive workplace where a broad range of backgrounds and perspectives thrive. We embrace the many ways people think, learn, and experience the world—because we know that diverse minds drive innovation. If you have any specific requirements during the application and interview process, please let us know.

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