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Data Analyst (Apprentice)

Rathbones
Liverpool
21 hours ago
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Company Description:


A rewarding place to work. At Rathbones, we invest in everyone's tomorrow including our people. We are always looking for future talent, and we help you build a rewarding career with clear paths to progression and the opportunity to share in the success of our business.


Job Description

Role Title: Data Analyst (Apprentice)


Division: Investment Risk


Location: Liverpool


Contract: Permanent


Working Pattern: Hybrid


About The Role


To assist the Senior Data Analyst in the production of reporting / monitoring and BAU activities. Support continuous development, dataflows (extraction / transformation) and IR developed applications / reports.


What You’ll Be Responsible For

  • Support the Investment Risk team in delivering timely, accurate, and insightful data analysis to inform risk management decisions.
  • Assist in the extraction, transformation, and validation of investment-related data, ensuring consistency and reconciliation with source systems.
  • Contribute to the identification and resolution of data quality issues, escalating concerns and supporting root cause analysis to improve data integrity.
  • Help maintain and enhance internal databases, dataflows, and IR-developed applications (e.g., APR PowerApp), ensuring they remain fit for purpose and user-friendly.
  • Engage with team members and stakeholders to understand data requirements and translate them into meaningful reports and dashboards.
  • Participate in the development of single sources of truth to support consistent and reliable investment risk metrics.
  • Develop an understanding of key investment risk concepts and commercial drivers monitored by senior leadership, contributing to the team's strategic objectives.
  • Build a reputation as a responsive and reliable contributor to the Investment Risk function, demonstrating curiosity, accountability, and a commitment to continuous learning.

About You

  • 3 A-Levels (achieved or projected) or equivalent, preferably with at least one STEM subject.
  • GCSE Maths at Grade 5 or above, with additional 4 GCSEs at Grade 4 or above.
  • Strong willingness to learn and develop.
  • High attention to detail.
  • Analytical and lateral thinker.
  • Open and honest communicator.
  • Ability to assimilate information and filter results.
  • Able to manage multiple stakeholders and competing deadlines.
  • Commercial interest and awareness.
  • Ability to present technical information in a clear, understandable way to a non-technical audience.

Seniority Level

  • Internship

Employment Type

  • Full-time

Job Function

  • Science
  • IT System Data Services


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