Data Science & ML Engineer (Azure Data Pipelines)

YTL UK
Bath
1 week ago
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A leading UK-based company in Bath seeks an experienced Data Specialist to join a dynamic team. You will leverage your expertise in Data Science and Data Engineering to empower the business with data-driven insights. Responsibilities include designing machine learning algorithms, building scalable data pipelines, and performing statistical analyses. Strong proficiency in Python and Azure technologies is required. This role offers extensive perks, including a generous pension contribution and opportunities for career development.
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