Data Analyst Job in Greater London

Salt
Greater London
1 year ago
Applications closed

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Data Analytics Manager

D2C | Software Development | App

£45,000 – £60,000

London | Hybrid

The Company:

This company has created a culinary community that transforms the everyday cooking experience into a vibrant and accessible adventure. With a focus on bringing people together through food, it offers a unique blend of creative recipes, budget-friendly meal ideas, and engaging content that inspires both novice and experienced cooks. The approach goes beyond traditional cooking shows, infusing each dish with a sense of fun, inclusivity, and practicality. This group turns the kitchen into a social hub where delicious meals are created and shared, making cooking a delightful part of everyday life.

As Data Analytics Manager you will:

Develop and optimise our data infrastructure to ensure scalable tools, architecture, and technical projects for analytics. Analyse customer data to deeply understand our audience and transform these insights into actionable outcomes that align with business objectives. Identify which content and product features drive user acquisition, monitising, and retention. Provide data to the Marketing team to clarify which marketing channels are most effective for acquiring, monetising, and retaining users. Translate complex analyses into understandable insights and conclusions. Manage and enhance existing dashboards and reporting systems, promoting data accessibility for stakeholders to improve data-driven decision-making. Collaborate with Product and Engineering teams to guide and shape product personalisation. Recommend updates to product and engineering roadmaps to enhance data quality in source systems and strengthen analytical workflows. Ensure data solutions are well-documented for consistent organisational use. Build strong relationships with stakeholders and become a trusted partner to promote a data-driven culture. Identify and validate opportunities to inform growth and product strategy, including new areas like B2B consumer insights.

Experience:

You have over 3 years of experience using analytics to address business questions and drive value toward business goals. Experience as a Data Analyst in a D2C business is preferred but not required. The ideal candidate has a proven track record of effectively solving business challenges and acting on dynamic insights promptly, with a curiosity for understanding and influencing consumer behiour on digital platforms. A creative thinker who excels at developing, presenting, and utilising data, with strong communication skills and the ability to present data in an effective, compelling, and concise manner that influences everyday business operations. Comfortable working cross-functionally, with an understanding of various functions and how they contribute to the business (, understanding the nuances of marketing and its interplay with product analytics). We are a fast-growing start-up, so you must be comfortable working in small, agile teams where everyone gets involved.

If you’re interested in theData Analytics Managerrole please apply below…

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