Analytics Consultant

London
9 months ago
Applications closed

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Brio Digital is proud to be partnering with a leading consultancy to help them find a talented Analytics Consultant/Engineer to join their growing team.

📍 Hybrid - 3 days a week on-site in London

💰 Up to £80,000 per annum

🔍 The Role

As an Analytics Engineer, you'll work across a range of exciting client projects, designing and building scalable data pipelines to support analytics on large, complex datasets. This is a client-facing role, ideal for someone who thrives in a fast-paced consultancy environment and enjoys working closely with stakeholders. You'll also play a key role in mentoring junior team members and contributing to the wider data engineering strategy.

💼 What You'll Be Doing

Building robust, scalable data pipelines across multiple client projects
Presenting insights and technical solutions directly to clients
Supporting and mentoring junior engineers within the team
Collaborating with cross-functional teams to deliver end-to-end analytics solutions
Leveraging modern cloud platforms and visualisation tools to drive client value

🛠️ Tech & Experience We're Looking For

Strong SQL and Python skills
Experience with cloud platforms such as GCP or Azure
Hands-on with BigQuery, Synapse, or similar data warehouses
Familiarity with data visualisation tools - D3.js or similar
Proven client-facing experience
Previous consultancy experience is highly desirable

This is a fantastic opportunity to join a consultancy making real impact across data-driven projects. If you're ready to take on a varied, client-focused role and help shape cutting-edge analytics solutions - we'd love to hear from you.

Apply now or email

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