Data Science Manager: Simulation & Digital Twin Leader

Tesco Technology
Welwyn Garden City
2 weeks ago
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A leading retail technology company is seeking a Data Science Manager in Welwyn Garden City to oversee the development of simulation and digital twin capabilities. You will line manage Data Scientists and support the implementation of reusable simulation components. A strong background in various simulation paradigms and programming skills in Python or Java are required. The company offers an annual bonus scheme, 25+ holiday days, and private medical insurance, fostering an inclusive workplace culture.
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