Data Scientist — ML & Feature Engineering for Finance

Notjustlabcoats
Nottingham
2 days ago
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A leading technology company in Nottingham is seeking a Data Scientist - Statistician to develop machine learning models and generate insights from diverse data types. Key responsibilities include maintaining machine learning models, analyzing tabular and non-tabular data, and consulting on statistical test designs. Strong experience with Python, a solid understanding of statistics, and effective communication skills are essential. The role offers a hybrid working model with immediate access to benefits and career progression opportunities.
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