Data Scientist

BG Automotive
Swindon
2 days ago
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ABOUT BG AUTOMOTIVE
BG Automotive (BGA) is a leader in the Automotive Aftermarket spares industry, catering to both UK and export markets. At BGA, you will join a dynamic environment where innovation and data-driven decision-making are at the core of our success.
As a Data Scientist, you will work on impactful projects that range from advanced analytics and predictive modelling to business intelligence and process optimization. Collaborate with cross-functional teams to extract insights from data and develop solutions that enhance efficiency and drive growth.
We are looking for a curious and creative individual with a strong analytical mindset, technological fluency, and a passion for solving complex problems. If you thrive on uncovering insights through data and developing actionable solutions, BGA is the ideal place to advance your career.
What you will do:
* Analyse large and complex datasets to uncover insights and inform decision-making.
* Design and implement machine learning models to address business challenges.
* Develop dashboards, reports, and visualizations to present data-driven insights.
* Collaborate with cross-functional teams to identify opportunities for data-driven improvements
* Assist with the implementation of Oracle ERP, contributing data expertise in replacing Legacy systems and helping shape data flows, reporting structures, and integrations from the ground up.
* Improve processes through predictive ana...

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