Lead Product Data Scientist - ML & Optimization for Airline

British Airways
Hounslow
1 day ago
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A renowned airline company is seeking a Lead Product Data Scientist to lead a team in developing machine learning and optimisation products that improve decision-making processes. The role involves managing the product lifecycle, communicating with stakeholders, and applying strong technical skills, particularly in data science and software engineering. Ideal candidates will have a Master’s degree and experience in production-quality systems. This position promises competitive benefits and a chance to grow within the company.
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