Graduate Data Scientist

Intellect Group
Leicester
3 months ago
Applications closed

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Graduate Data Scientist


Location : Leicester, UK. (Hybrid)


Salary : £35,000 - £40,000


Intellect Group is proudly supporting a global leader in advanced optimisation and supply-chain solutions. Our client specialises in delivering cutting‑edge software used by major manufacturers across industries such as packaging, plastics, paper, metals, and more. Due to expansion and continued investment in innovation, we are seeking a highly capable Graduate Data Scientist to join their research and analytics team.


This is an exceptional opportunity for a Master’s‑level graduate who thrives on solving complex problems, working with real‑world industrial datasets, and supporting the development of powerful optimisation and forecasting solutions deployed worldwide.


About the Role

As a Graduate Data Scientist, you will work closely with technical teams, product specialists, and senior stakeholders to analyse diverse datasets, support algorithm development, and uncover insights that drive product innovation and new solution capabilities. You will play a key role in shaping analytical models that enhance operational performance for global clients.


Key Responsibilities

  • Analyse complex industrial and operational datasets to identify patterns, inefficiencies, and optimisation opportunities.
  • Support the development and testing of mathematical models, optimisation algorithms, and forecasting tools.
  • Work collaboratively with product managers, engineers, and domain experts to translate data insights into product features.
  • Prepare clear, concise visualisations and reports for internal stakeholders and senior leadership.
  • Conduct research on emerging trends in optimisation, AI, and industrial analytics.
  • Assist with proof‑of‑concept projects for new analytical features or market solutions.
  • Ensure data accuracy, clear documentation, and reproducibility of analytical workflows.

Required Qualifications

  • Master’s degree in Mathematics, Data Science, Statistics, Operational Research, Computer Science, or a closely related field.
  • Strong proficiency in Python, R, or similar analytical programming languages.
  • Solid understanding of statistical modelling, data manipulation, and exploratory analysis.
  • Analytical mindset with strong problem‑solving capabilities.
  • Excellent communication skills with the ability to present technical insights to non‑technical stakeholders.
  • Ability to work both independently and as part of a collaborative technical team.

Desirable Skills

  • Familiarity with optimisation methods (e.g., linear programming, heuristics, metaheuristics).
  • Knowledge of machine learning frameworks and modelling techniques.
  • Experience working with large or complex datasets.
  • Exposure to industrial, manufacturing, or supply‑chain analytics.
  • Understanding of cloud platforms or version‑control tools.

What’s on Offer

  • The opportunity to work with a globally deployed, industry‑leading software suite.
  • Exposure to real‑world optimisation and advanced analytics challenges used by major manufacturers worldwide.
  • Mentorship from highly experienced data scientists and optimisation specialists.
  • A clear development pathway with significant technical learning opportunities.
  • Competitive salary and a supportive, innovation‑driven working environment.


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