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Rima Martin

Analyst

Offices: Vereinigtes Königreich
Email: rima.martin@technopolis-group.com

Rima Martin is an Analyst based in Technopolis’ Brighton office. She has a focus in data analytics, with a robust knowledge of Python and data science methods. Rima has skills in natural language processing, machine learning, and data visualisation.

Prior to joining Technopolis Group, Rima worked as an Assistant Psychologist for a private clinical psychology practice, specialising in neurodevelopmental disorders.

Rima completed both an undergraduate degree in Psychology and a Master’s degree in Human and Social Data Science from the University of Sussex. Her dissertation focused on the analysis and forecasting of historical public health data using both classical and machine learning techniques.

Rima is fluent in English.

Rima Martin's article(s)