Senior Data Analyst - Marketing

City of London
16 hours ago
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Data Analyst

3 Month Rolling

Farringdon - Onsite 1 day per month

Inside IR35

Are you a data-driven professional with a passion for helping customers? Do you have a deep understanding of CRM and the data that enables execution and decision making in this space? If you're ready to make a difference through leveraging your experience in a fast-paced, impactful environment, we want you to join our team as a Senior Data Analyst.

Here's a taste of what you'll be doing:

Consultative Leadership: Spearhead initiatives with cross-functional stakeholders, employing a consultative approach to distill complex requirements into robust data / analytics approaches.
Data Mastery: Use your expertise in data to manage large, complex datasets while applying the best analytics techniques, from advanced segmentation to root cause analysis.
Impact-Driven Decision Making: Passionate about impact, whether unpacking the why, delivering optimal customer intelligence data products or delivering powerful insights empowering the organisation to be data driven.
Insightful Storytelling: Comfortable in "storytelling" and visualisation, delivering insights and recommendations in a clear, relevant and action-oriented manner to senior members of the organisation.
Technical Project Leadership: Oversee complex projects from inception to completion, ensuring they are delivered on time and to the highest standards. Apply best practices to ensure accuracy and efficiency in your results.
Talent Development: Mentor and coach junior data analysts, fostering a culture of innovation, continuous improvement, and collaboration.

Are we the perfect match?

Experience working with Marketing data
Extensive experience as a Senior Data Analyst, with advanced SQL and Python skills, along with expertise in advanced analytics techniques such as modelling, segmentation, and predictive analysis.
Strong analytical skills with a passion for problem-solving
Excellent communication skills and the ability to present to non-technical audiences, turning complex data into actionable insights.
Comfortable in fast-paced ambiguous environments and collaborative team settings.
Passionate about data impact.

It would be great if you had:

Experience in the energy retail industry
Advanced tools knowledge; proficiency in Tableau, cloud platforms (ideally DataBricks), Git, and other analytics tools that support collaborative development and efficient data pipelines.
Relevant degree or equivalent (e.g. statistics, mathematics etc).

Rullion celebrates and supports diversity and is committed to ensuring equal opportunities for both employees and applicants

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