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Michael Page

Data Scientist - Ecommerce, Marketing & Commercial Operations

Michael Page Hinckley
45,000 to 50,000
32 - 40 hour
new


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    Michael Page

    Data Scientist - Ecommerce, Marketing & Commercial Operations

    Michael Page Hinckley
    45,000 to 50,000
    32 - 40 hour
    new
    Status Open
    Apply now

    Apply on the employer's website


    What we ask

    Education

    No minimum education required

    What we offer

    Salary
    £45,000 to £50,000
    Hours
    32 to 40 hours per week
    Employment type
    permanent

    Job description

    This leading international Manufacturing & Retail Company is seeking a commercially focused and technically capable Data Scientist to join their Finance team to support a high growth phase into new markets.

    Client Details

    Leading international Manufacturing & Retail Company

    Description

    This leading international Manufacturing & Retail Company is seeking a commercially focused and technically capable Data Scientist to join their Finance team to support a high growth phase into new markets.

    This is a cross-functional business role designed to support data-driven decision making across the entire organisation - including Finance, Merchandising, Creative, Licensing, Sales, Supply Chain, eCommerce, and Operations. The role will additionally support marketplace, eCommerce, and consumer insight initiatives to help drive commercial decision-making across retail and digital channels.

    The successful candidate will be responsible for transforming complex business data into actionable insights, building reporting frameworks, identifying trends and opportunities, and supporting leadership teams with strategic analysis and forecasting. The role will also play a key part in driving the company's adoption of AI technologies, automation, and modern analytics tools.

    Key Responsibilities:

    Analyse large and complex datasets across multiple platforms to identify trends, risks, opportunities, and operational improvements
    Develop and maintain dashboards, KPIs, and reporting suites using Power BI
    Support the Finance team with forecasting, budgeting, margin analysis, profitability reporting, and commercial insights
    Partner with Merchandising, Sales, Licensing, Creative, Supply Chain and Operations teams to provide analytical support and performance reporting
    Build predictive models and analytical tools to support strategic decision-making and business planning
    Drive the adoption of AI and automation solutions across the business to improve efficiency and insight generation
    Work with ERP and operational systems, including D365 Business Central, to extract, validate, and analyse data
    Improve data quality, governance, consistency, and reporting accuracy across departments to ensure one version of the truth
    Develop and maintain data pipelines and automated reporting processes where appropriate
    Present findings and recommendations clearly to senior leadership and operational stakeholders
    Support ongoing digital transformation initiatives across the business
    Ensure analytical work follows best practices around governance, security, and ethical AI usage
    Monitor and analyse eCommerce and marketplace KPIs including conversion rate, click-through rate (CTR), ACOS, TACOS, Buy Box performance, average selling price (ASP), keyword rankings, and inventory health metrics.
    Support eCommerce and marketplace advertising analysis, including Amazon Sponsored Ads performance, ROAS optimisation, campaign analysis, and budget efficiency reporting.
    Support data-driven optimisation of eCommerce product listings, keywords, digital content, and marketplace visibility to improve discoverability, conversion, and sales performance.
    Conduct competitor, pricing, and market analysis to identify trends, opportunities, and risks across eCommerce and retail channels.
    Apply predictive analytics and trend analysis to support demand forecasting, inventory planning, and commercial decision-making.
    Support testing and experimentation across pricing, advertising, promotions, and digital content strategies, using analytical insight to measure performance and recommend improvements.
    Work closely with merchandising, eCommerce, licensing, and marketing teams to provide commercially focused analytics and actionable insight.Profile

    Essential:

    Previous experience within a Data Scientist, Data Analyst, Business Intelligence, or Analytics role
    Strong analytical and problem-solving skills with commercial awareness
    Advanced Power BI capability, including dashboard creation, DAX, data modelling, and visualisation.
    Strong experience using SQL for querying and manipulating datasets
    Experience using AI tools, large language models (LLMs), and automation technologies to support analytics, reporting, and business insight generation.
    Experience working with ERP systems, preferably Microsoft Dynamics 365 Business Central (BC) and/or Syspro
    Understanding of AI, machine learning, automation tools, and modern analytics techniques
    Ability to interpret complex datasets and communicate findings clearly to non-technical stakeholders
    Excellent communication and stakeholder management skills
    Highly organised with the ability to manage multiple priorities in a fast-paced environment
    Experience working with eCommerce and marketplace analytics, preferably Amazon Seller Central and Amazon Advertising platforms.
    Understanding of eCommerce performance metrics including ROAS, ACOS, TACOS, conversion rate optimisation, keyword ranking, and digital traffic analysis.
    Experience translating commercial and marketplace data into actionable business insight.Desirable:

    Experience within a consumer products, retail, licensing, apparel, manufacturing, or distribution environment
    Experience with forecasting, demand planning, or supply chain analytics
    Experience developing AI-enabled business solutions or workflow automation
    Understanding of financial reporting and commercial finance concepts
    Degree qualified in Data Science, Computer Science, Mathematics, Statistics, Economics, or a related quantitative discipline
    Experience with Amazon marketplace optimisation tools such as Helium 10.
    Experience using social listening and consumer insight platforms such as Meltwater.
    Experience within licensed apparel, consumer products, retail, eCommerce, or marketplace-driven businesses.

    Job Offer
    Salary description

    £45000.00 - £50000.00 per year

    Apply now

    Apply on the employer's website

    Apply now

    Apply on the employer's website


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