Commercial Data Analyst

Boston Hale
London
1 week ago
Applications closed

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Commercial Data Analyst We're seeking a highly analytical Commercial Data Analyst to join a dynamic Growth & Analytics team within a leading Global Organisation. This role offers the chance to work at the intersection of data analysis, strategy, and technology, driving revenue growth and innovation in a competitive market.About the Role As part of the Growth & Analytics team, you'll play a key role in shaping and optimizing revenue strategies. From analyzing digital marketing performance to supporting pricing and positioning strategies you'll contribute to cross-functional projects and develop cutting-edge solutions in a fast-paced, AI-driven environment.Key ResponsibilitiesUtilise Advanced Excel skills (anything up to Macros - which would be nice to have but not essential!)Basic SQL querying and PowerBI would be useful but can be learned on the jobBe extremely inquisitive, with the ability to extract impactful insight from the data and present it to the businessCollaborate with internal and external stakeholders to implement AI and analytics solutions.Support strategic initiatives to boost the organization's competitive edge.About You You're a strategic thinker with exceptional analytical skills, adept in Excel, and familiar with tools like SQL or Power BI. A self-starter with strong communication abilities, you're ready to engage stakeholders, tackle challenges creatively, and deliver actionable insights.If you're driven by results and ready to innovate in a vibrant, collaborative environment, this is your chance to make an impact.Diversity, equity and inclusion are at the heart of what we value as an organisation. Boston Hale is an equal opportunities employer, and all qualified applicants will receive consideration for employment without regard to race, religion, sex, sexual orientation, age, disability or any other status protected by law

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