Analytics Engineer

Hays Specialist Recruitment
Bournemouth
9 months ago
Applications closed

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Please note, this role requires the successful candidate to work in the office in central Bournemouth 3 times per week.

Your new company
Join a dynamic and innovative organisation that is the definition of a data-driven company, with data at the heart of everything they do. This company values creativity, collaboration, and continuous improvement, making it an exciting place to grow your career.

Your new role
As an Analytics Engineer, you will be central to unlocking value from data within the team. You'll be part of a collaborative, cross-functional group with strengths in Data Engineering, Data Analysis, Analytics Engineering, and Business Intelligence. You will serve as the bridge between raw data and meaningful insights, working closely with stakeholders to transform business needs into effective data-driven solutions. A key part of your role will be to own and lead the Cold Data Business Intelligence processes, ensuring high-quality, targeted data flows into core marketing channels. You will also collaborate with internal tech teams to ensure seamless integration of data solutions across the business.

What you'll need to succeed
To excel in this role, you should have:

  • Advanced SQL skills with strong performance awareness
  • Familiarity with Azure data tools (eg, Data Factory)
  • Python knowledge for data wrangling and automation tasks
  • Experi...

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