Staff Data Analyst

Simply Business
London
1 month ago
Applications closed

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Here’s what you’ll be doing:

You’ll be an integral part of a team fostering a company-wide data-informed culture, and making sure that insight is aligned to our business outcomes and growing operations.

You’ll also be joining a much broader, award-winning international data team that is doing some really exciting things with the latest big data and analytics technologies.

Reporting into Amanda (our Manager of Product Analytics), who’s hands-on and interested in pretty much everything technology. You’ll be joining a team that is highly collaborative and not afraid to share exciting ideas that we then bring to life.

As one of our Staff Data Analysts, you’ll:

  • work closely with cross-functional development teams to test hypotheses and deliver innovative products.
  • enable self-service for business stakeholders through best-in-class tooling.
  • have an eagerness to improve analytical techniques through a variety of sources, including leveraging our data science and data engineering teams.
  • have the opportunity to work with stakeholders in a high-paced, agile environment which encourages autonomy and growth.
  • contribute to and drive forward changes to team strategy.

We’re looking for someone who is:

  • able to deliver high-quality analysis and recommendations to support the Product Teams and help them achieve their objectives.
  • a professional in data analysis.
  • an Analyst/Data Scientist or Management Consultant.
  • an expert in SQL.
  • able to prove their aptitude for problem-solving and experimentation (A/B tests).
  • a collaborator across cross-functional teams.
  • able to prove their aptitude for analyzing data and problem-solving.
  • degree qualified in STEM, economics, or similar.
  • able to question us! We want people who can come in and shape the future of this business and help us improve.

(We know it’s tough, but please try to avoid the confidence gap. You don’t have to match all the bullet points above to be considered for this role.)

We encourage people of all different backgrounds and identities to apply. We are committed to maintaining an inclusive, supportive place for you to be you and do your very best work.

Ready to build the future of Simply Business with our Data Analytics team? Apply today.

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