Senior Data Analytics Manager

London
1 year ago
Applications closed

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Senior Data Analytics Manager

£85,000 - £95,000 + Bonus + Car Allowance

Hertfordshire - Hybrid - 1-2 days per week

We are representing a market-leading UK Financial Services business who are looking for a Senior Data Analytics Manager to join their organisation. The role reports directly to the CDO and will work alongside counterparts in Data Engineering, Data Governance and Data Architecture. You will manage a team of circa 8 and will be integral in leveraging data to drive strategic decision-making and operational efficiency within the business.

Our client is early in their Data maturity so the role will require an individual who is confident in improving the end-to-end Data Analytics process, from requirements gathering to producing reports, dashboards and valuable insights. BI is currently run by different teams, in different business units, using a variety of tools and data sets - an early project will be to centralise or standardise these BI operations to improve consistency and data quality across the business. The long-term goal is for accurate, federated reporting.

We are looking for:

Proven experience in a Data Analytics, BI or Insights role at a senior level
Experience managing a team of data professionals
Strong proficiency with Data Analytics tools and technologies - particularly Power BI

It would be a bonus if you have:

Good understanding of statistical analysis, machine learning, or predictive modelling techniques
Exposure to the Financial Services industry

This is a highly confidential search so we cannot divulge client details until interview request, candidates will be asked to sign an NDA.

If this sounds of interest, please apply today

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