Business Intelligence Manager

London
£50000 - £70000 per annum + bonus

Business Intelligence Manager
London
£50,000 - £70,000 + bonus

COMPANY

A fast-growing FMCG firm looking to push their data efforts by building out a best in class BI, Reporting & Data Infrastructure.

THE ROLE

The role will own the Data & BI transformation as well as leading the team through to becoming a modern and successful data function. Management responsibility will be for a small team, where you will be the lead when it comes to reporting, delivering insight to senior stakeholders (Power BI) and based on your success, hire an analyst in the future.

Main duties include:

  • Lead company wide Business Intelligence & Reporting
  • Own the BI stack & strategy (Power BI, Alteryx, SQL, Google Analytics etc.)
  • Work with Commercial & Financial

Analysis & Reporting - usage and insight:

  • Champion latest & mature BI, reporting, data service and interactive data visualisation technologies to make data and metrics available to the business user groups

SKILLS AND EXPERIENCE

If this sounds like an opportunity you would like to apply to, please review the necessary competencies below:

  • Strong analytical skills and the ability to interpret complex issues and generate insights.
  • Data and BI: Strong Data Warehousing implementation knowledge as well as a knowledge of multiple database environments as well as a range of analytical and BI/Visualisation tools highly desirable
  • SQL Server, Alteryx, Python, R, Tableau, Snowflake

HOW TO APPLY

If you are interested in this role please apply via this site.

KEYWORDS

SQL, Analytics, Business Intelligence, Analysis, Analyst, Alteryx, Tableau, Python, AWS, Cloud, SSIS

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1103LW
London
£50000 - £70000 per annum + bonus
  1. Permanent
  2. Business Intelligence

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