Market Research Data Scientist...

Harnham
London
9 months ago
Applications closed

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Job Description MARKET RESEARCH DATA SCIENTIST £50,000

  • £60,000 LONDON – 4 DAYS A WEEKPlease note, you must be a UK
    resident to apply with full right to work in the UK
    THE COMPANY
    This company is a fast-growing research and polling firm that
    started as a two-person venture and has expanded to a team of 40
    across the UK and US. Known for delivering the most accurate global
    political polling, they specialize in qualitative and quantitative
    research, offering deep insights into UK and US elections and
    political sentiment. This is a unique opportunity to join a leading
    team at the forefront of political research. THE ROLE You'll work
    across data science, consultancy, and market research, helping to
    shape the future of political and corporate insight. Key
    responsibilities include predictive modelling in R, creative
    methodological thinking, managing a custom function library, and
    running advanced quantitative analyses (regression, segmentation,
    SRP). You'll work with messy primary survey and census data, build
    election models, and consult directly with high-profile clients
    such as the UK Government, political parties, think tanks, and
    hedge funds. Ideal for someone who thrives in a fast-paced,
    insight-driven environment and is eager to lead and mentor others
    as the team grows. SKILLS + EXPERIENCE - Interest and experience in
    polling, politics, corporate affairs and reputation -
    Consulting/client facing experience – from a market research agency
  • Data science skills specifically in R – you will not be using
    SQL/Python HOW TO APPLY If this sounds like the role for you,
    swiftly send over your CV to Izzi at Harnham by using the link
    below.

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