Data Analytics Manager

St Paul's
1 month ago
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We're Recruiting! Data Analytics Manager - Be Part of the Future of Clean Energy

Are you passionate about data and looking to lead a high-impact team? The CWA (Civil Works Alliance) is recruiting for a Data Analytics Manager to join our mission of delivering Sizewell C, a revolutionary 3.2-gigawatt low-carbon power station that will supply clean electricity to over 6 million homes for the next 60 years.

This is your chance to play a key role in shaping the future of energy while working on a world-class project. As the Data Analytics Manager, you’ll take the reins of a talented team of data analysts and help design and build impactful data products for CWA and our supply chain.

What You’ll Do:

Lead a team of data professionals to deliver high-value data products that support critical business decisions.

Work with key stakeholders to understand their needs and ensure data is delivered efficiently and effectively.

Oversee the creation of enterprise-level Power BI models, optimizing performance and scalability.

Design advanced data models using the best practices in data architecture and medallion architecture principles.

Foster cross-team collaboration to deliver powerful insights, ensuring our data products are aligned with strategic goals.

Mentor and guide a dynamic team, fostering a culture of continuous improvement.

What You Bring:

A deep understanding of Kimball-style dimensional modelling and data warehousing.

Expertise in Power BI, SQL, and Azure Data Services, with the ability to optimize and tune performance.

Proven leadership experience in data analytics, with a track record of mentoring and developing teams.

Strong communication skills, able to translate complex technical concepts for non-technical stakeholders.

A passion for data and a drive to implement cutting-edge solutions to solve real-world challenges.

Why Join Us?

As part of CWA, you will be at the heart of delivering one of the UK's most ambitious and essential infrastructure projects. Sizewell C will play a pivotal role in the UK’s energy future, and you’ll have the opportunity to shape its data-driven journey from the inside. Plus, with the backing of global leaders in nuclear energy like EDF, you’ll work in a supportive, innovative, and growth-oriented environment.

Ready to make an impact? Apply now and take the next step in your career with the CWA and help build a sustainable future.

Apply and join us in shaping tomorrow's energy today

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