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Operational Research Analyst (Data Science) – SC cleared

LA International
10 months ago
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Football Data Scientist | Rangers FC

SFIA 2/3 needed to work alongside a senior colleague

- 3 YEAR CONTRACT

- Remote (occasional travel to London and/or Manchester when needed)

- Inside IR35

- Significant focus around data and operational research activities


A degree in Computer Science or Applied Mathematics, Data Science or Data Analytics, Software Engineering or Economics with a quantitative focus would be highly desired.


Programming experience in Python, R, C++, statistics, machine learning and data modelling are the practical skills this requirement will develop.


Up to 10 roles roles available.

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