Data Engineer

Aj Bell
Manchester
6 days ago
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Overview

This is an exciting opportunity to join a dynamic and experienced Data Engineering team at AJ Bell, contributing to the development of our state-of-the-art data platform using cutting-edge technology. As a Data Engineer, you will design, build, maintain, and evolve our data infrastructure to meet the growing needs of our business. You will engage in end-to-end development, collaborate with key stakeholders and internal customers, and empower the organisation by enabling informed, data-driven decision-making.

Responsibilities
  • Collaborate with stakeholders to identify and refine data requirements, ensuring data accessibility and alignment with business needs.
  • Develop Data Warehousing solutions.
  • Automate extract, load and transform (ELT) pipelines that follow modern CI/CD practices.
  • Data integration design to ensure development is scalable, efficient and future-proof.
  • Data modelling to produce clear data models where necessary.
  • Maintain and continuously enhance the data platform.
  • Provision data from various sources.
  • Create automated tests to ensure quality and integrity of data.
  • Ensure data compliance with AJ Bell's Data Governance and Data Classification policies.
  • Maintain data dictionary and business-level data model.
  • Recommend and introduce new technology where needed, including:
    • Cloud data platforms (e.g. Snowflake, BigQuery, Redshift)
    • Data transformation technology such as DBT
    • Visual Studio Code
    • Python
    • CI automation systems such as Jenkins
    • Git-based source control such as Bitbucket
    • Data Warehouse/Kimball methodology
    • Data replication technologies such as Fivetran, HVR
  • Demonstrate excellent problem-solving skills and effective communication with both technical and non-technical teams.
Qualifications
  • Good knowledge of IT products and systems; strong analytical and problem-solving skills; excellent verbal and written communication.
  • Able to communicate confidently with people at all levels and prioritise work effectively.
  • Customer-focused, flexible, team-oriented, and adaptable to changing environments.
  • Self-motivated and committed to continuous learning.
  • Experience in e-commerce and/or financial services is preferred.
  • Experience with Docker and container orchestration tools; AWS cloud infrastructure including AWS CDK; MS SQL; NoSQL databases such as Mongo.
  • Familiarity with AI tools such as Copilot and Snowflake Cortex is beneficial.
Benefits
  • Competitive starting salary
  • Starting holiday entitlement of 25 days, increasing up to 31 days with length of service; holiday buy/sell scheme
  • Choice of pension schemes with matched contributions up to 6%
  • Discretionary bonus scheme
  • Annual free share awards scheme; Buy As You Earn (BAYE) scheme
  • Health Cash Plan (SimplyHealth); Private healthcare and dental plans
  • Free gym membership; Employee Assistance Programme
  • Bike loan scheme; Sick pay+ pledge
  • Enhanced maternity, paternity, and parental leave
  • Loans for travel season tickets; Death in service scheme
  • Paid time off for volunteer work; Charitable giving opportunities
  • Calendar of social events; ongoing technical training and professional qualification support
  • Talent development programmes; peer recognition scheme
  • Hybrid working: minimum 50% time in the office; initial full-time in-office period for onboarding

AJ Bell is committed to providing an environment of mutual respect with equal employment opportunities for all applicants and employees to bring their whole self to work.


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