Business Intelligence Analyst

Michael Page
Liverpool
1 month ago
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Business Intelligence Analyst

Join to apply for the Business Intelligence Analyst role at Michael Page


Base pay range

The purpose of the Business Intelligence Analyst is to lead in the preparation and development of key business intelligence to enable efficient, effective and commercially focussed performance reporting within the business. The role will also ensure the data requirements of claims processing activity are met to ensure the business submits its claims in a timely and efficient manner.


Description

  • Develop and maintain reports and dashboards to support organisational goals.
  • Analyse complex datasets to provide actionable insights for decision-making.
  • Collaborate with stakeholders to identify and meet reporting requirements.
  • Ensure data accuracy and integrity across all analytics platforms.
  • Identify trends and patterns to support strategic initiatives.

Profile

  • Strong skills in PowerBI
  • Strong understanding of Data Modelling
  • Ability to interpret complex data and communicate findings effectively.
  • Proficiency in data visualisation and reporting tools.
  • Knowledge of data governance and best practices.
  • A degree in a related field, such as Computer Science, Mathematics, or Statistics.

Nice to have

  • Technical skills: Snowflake Scheme Design, Kimball Methodology, Star Schemas
  • Programmes: Snowflake

Job Offer

  • Hybrid working 1 day a week in the Liverpool office.
  • 25 days annual leave (pro-rata for part time) plus statutory bank holidays
  • Professional & Personal Development Funds
  • Bi-annual pay reviews

Seniority level

  • Mid-Senior level

Employment type

  • Full-time

Job function

  • Information Technology
  • Education Administration Programs

If you are looking for a permanent role in Liverpool which offers the above career opportunities and benefits, we encourage you to apply today.


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