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Big Data Engineer/ Modeler

Robert Walters
Glasgow
2 days ago
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Job Opportunity

Data Engineer – IT Asset & Configuration Management
Location: Glasgow (Hybrid 3 days a week in the office)
Tenure: 1 Year
Industry: Investment Banking

Key Responsibilities
  • Elicit, document, and actively manage data requirements across multiple business and technical functions
  • Perform cross‑functional analysis to identify synergies, inconsistencies, and gaps in data management processes
  • Collaborate closely with data architects and platform owners to identify and validate technical implementation options
  • Conduct data lineage and discrepancy analysis across systems, ensuring consistency and compliance with standards
  • Serve as a liaison between business stakeholders and technology teams
  • Develop and maintain data documentation and deliverables
  • Track milestones, raise risks/issues, and support change control processes
  • Support deployment and adoption of data architecture initiatives across programs
Skills & Experience Required
  • Hands‑on experience in data or business analysis roles
  • Strong hands‑on experience with SQL and relational databases
  • Some experience working with ServiceNow, especially CMDB/AMDB
  • Experience in data architecture, data lineage analysis, and IT inventory systems
  • Ability to interpret technical documentation, scripts, and configuration files
  • Familiarity with ITSM and ITIL frameworks
  • Strong communication, collaboration, and problem‑solving skills
  • Comfortable working in agile and waterfall environments
  • Highly organized with excellent time management and attention to detail
  • Self‑motivated and able to work independently across distributed teams
Desirable Qualifications (Not Mandatory)
  • Background in the financial services industry
  • Agile or program management certifications
  • ServiceNow Administrator or Developer certifications
  • ITIL certification
  • Familiarity with data visualization or analytics tools
Work Environment & Culture

Based in the centrally located Glasgow office, this role offers an exceptional working environment with access to an onsite gym, restaurant, and career progression opportunities. You'll join a diverse and inclusive culture that values integrity, excellence, and collaboration. Flexible working arrangements are available to support work‑life balance.

Inclusive Recruitment

We are committed to creating an inclusive recruitment experience. If you have a disability or long‑term health condition and require adjustments to the recruitment process, our Adjustment Concierge Service is here to support you. Please reach out to us at to discuss further.

Equal Opportunity

This position is being recruited on behalf of our client through our Outsourcing service line. Resource Solutions Limited, trading as Robert Walters, acts as an employment business and agency, partnering with top organizations to help them find the best talent. We welcome applications from all candidates and are committed to providing equal opportunities.


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