Data Science Apprentice Level 6: ML & Analytics

UKRI India
Warrington
4 days ago
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A prominent UK research organization in Warrington is seeking a Data Science Level 6 Apprentice to develop tools and applications with cutting-edge technologies. You will gain hands-on experience and mentorship in data analysis, machine learning, and ethics, while collaborating with industry partners. Ideal candidates will possess GCSEs in Maths and English as well as a strong interest in data science. This apprenticeship offers a comprehensive training experience with continuous support and growth opportunities.
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