Graduate Data Scientist

Bournemouth
3 months ago
Applications closed

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Location: Bournemouth(full time in office)

No Visa sponsorship available

About the Company
Our client is seeking a driven, analytically minded graduate ready to launch your career in data science. This role is ideal for a high-calibre graduate Data Scientist looking to start a commercial data science career in a supportive and hands-on environment.

Key Responsibilities:

  • Analyse datasets to identify patterns, trends, and actionable insights.

  • Support the development and evaluation of machine-learning models.

  • Assist with data cleaning, preparation, and feature engineering.

  • Conduct statistical analysis to support business decisions.

  • Build reports, dashboards, and visualisations for internal stakeholders.

  • Collaborate with technical and non-technical teams to translate data into impact.

  • Stay up to date with best practices in data science and analytics.

    Skills & Qualifications:

  • Degree educated with a 2:1 or above ideally from a Redbrick university (e.g., Russell Group or equivalent)

  • Strong programming skills in Python and R.

  • Solid understanding of statistical analysis and quantitative methods.

  • Foundational knowledge of machine learning techniques (classification, regression, clustering, etc.).

  • Strong analytical mindset and attention to detail.

  • Ability to present findings clearly to technical and non-technical audiences.

    Must have right to work in the UK. (no visa sponsorship offered)

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