Lead Data Analyst

Consortia
Birmingham
2 months ago
Applications closed

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Lead Data Analyst

Greater Birmingham | Hybrid

Are you an experienced data analyst looking for a leadership role where your insights directly impact commercial and operational decisions? Our client is seeking a Lead Data Analyst to manage a team of three analysts. This is a unique opportunity to lead a team, drive operational efficiencies, and influence key stakeholders across Finance, Commercial, Customer Service, and Operations.

This is not just a reporting role—it’s about turning data into meaningful business decisions, insights, and storytelling. By focusing on automating reporting inefficiencies, optimising planning, and driving operational insights, you will play a key role in shaping data-driven strategies.

What You’ll Do

You will lead a team of analysts, ensuring they develop into high-impact contributors who drive meaningful business improvements. Through a combination of hands-on analytics and leadership (roughly 50/50), you will work closely with senior stakeholders to identify inefficiencies, optimise processes, and translate complex data into actionable insights. Your role will involve balancing hands-on technical problem-solving with strategic leadership, ensuring the team stays focused on delivering value. You’ll also be key in automating and optimising reporting, transitioning from static reports to real-time, insight-driven analytics. Additionally, you will foster a data-driven culture within the business, championing best practices and promoting the adoption of modern analytics tools.

What You’ll Need to Succeed

  • Proven Leadership Experience – Comfortable managing and developing a team, providing guidance, and fostering a collaborative environment.
  • Strong Analytical Skills – Able to extract meaningful insights from complex datasets and demonstrate clear business impact.
  • Technical Expertise – Strong experience with SQL, Power BI, Python/PySpark; Databricks is a plus but not essential.
  • Stakeholder Management – Confident in engaging with senior stakeholders, translating data into compelling narratives that drive business decisions.
  • Commercial Mindset – A background in operational or commercial analytics (e.g., logistics, supply chain, marketing) within the private sector is highly desirable.
  • Problem-Solving Ability – More than just a dashboard expert—you know how to turn data into real-world solutions that optimise operations.

This is a fantastic opportunity for a data leader passionate about analytics, automation, and driving operational excellence through data. You will have the opportunity to shape a growing analytics function and make a tangible impact on the business.

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Engineering, Information Technology, and Product Management

Industries

Data Infrastructure and Analytics, IT System Data Services, and Software Development

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