Senior Data Scientist & Data Engineer — Hybrid Analytics

Ricardo
Didcot
1 month ago
Applications closed

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A global consulting company is looking for a Senior Data Scientist to design and deploy advanced analytics solutions in a hybrid work environment. Responsibilities include building predictive models, developing data pipelines, and collaborating on diverse analytical projects. Candidates should hold a degree in a quantitative field and have extensive experience in Python, machine learning, and data engineering practices. This role values diversity and offers flexible working arrangements, ensuring a supportive workplace for all employees.
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