Senior Business Data Analyst

VIQU IT Recruitment
City of London
1 month ago
Applications closed

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Security Cleared Senior Data Business Analyst – 6 months Contract – Inside IR35.
Location: London

Security Cleared Required

VIQU IT are partnering with a large organisation, requiring a Senior Data Business Analyst who will be playing a key part in the success in fulfilling its strategic objectives, through accurate business analysis.

The Senior Data Business Analyst must have experience in eliciting, analysing and managing complex business requirements, working on large-scale transformation projects, using data and insight to influence decision-making and drive change.

Security Cleared Senior Data Business Analyst's Essential Skills & Experience:

  • Security Cleared required.
  • Must have experience in data management principles (including data mapping and analysis).
  • Proven background working as a Business Analyst on initiatives or programmes, with accountability for gathering, analysing, and managing business requirements.
  • Experience leading workshops and stakeholder discussions to capture requirements and confirm proposed solutions.
  • Has a clear understanding of data management principles.
  • Excellent communication and interpersonal skills, with the capability to collaborate effectively with both technical and non-technical audiences.
  • Proven ability to elicit, analyse, and document business and solution requirem...

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