Data Analyst (Marketing)

Swaffham
2 days ago
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Marketing & Sales Data Analyst required for a progressive manufacturing & retail business.

An exciting opportunity has arisen for a Data Analyst to join a small, friendly marketing team based near Swaffham. This role is ideal for a data-driven professional with a background in digital marketing or marketing analytics, looking to shape the future of measurement and insights within a progressive and dynamic local business.

The ideal candidate will have at least 12 months' experience in a similar analytical role, although entry-level graduate candidates with a strong aptitude for statistics, analytics or measurements & insights are also welcome to apply.

Key Responsibilities for this Marketing Data Analyst role:

  • Working closely with the Head of Marketing, design, collate and interpret datasets and performance reports, continually improving depth of insight to grow the business.

  • Manage the PPC account, undertaking daily budget and performance decisions based on keywords, ad copy and campaigns across Google and Meta (Bing and Programmatic)

  • Reviewing marketing channel and sales conversion performance by customer type, product, seasonality and cost dynamics

  • Provide daily, weekly and monthly dashboard updates for the marketing team and senior stakeholders

  • Champion the performance forecasting process by preparing datasets, based on historic performance and future ambitions

  • Monitor and review targets for the PPC channel to support the formulation of SEO and paid social targets

  • Highlight correlations, trends and insights based on a wide range of data sources using the in-house ERP system, Google Analytics and other digital tools (e.g. Screaming Frog, SE Ranking).

    Experience & Skills Required for this Performance Analyst role:

  • A bachelor’s degree or equivalent qualification in Data Analytics, Marketing, Business, or related subjects containing statistical training

  • Strong analytical mindset with the ability to gather and interpret data to generate insights

  • Familiarity with advertising and analytics platforms (e.g., Google Analytics, Google Ads, Meta Ads)

  • Excel proficiency: Advanced skills required, including macros, pivot tables, formulas, and data visualization.

  • Effective communication, writing, and teamwork skills to collaborate across teams

  • A positive attitude and eagerness to learn and grow in a fast-paced environment

    Rewards and Benefits being offered:

  • Salary up to £30,000

  • Contributory pension

  • Health Shield payment Scheme

  • Death in service payment (twice annual salary)

  • Holiday entitlement that increases with length of service

  • The opportunity to work for a company that is driven by it values and recognises that its people play a crucial role in its success

    If you are looking to grow your career in marketing and data analytics with a forward-thinking company, we would love to hear from you

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