Hybrid Geospatial Data Scientist - ML-Driven Pricing

Hastings Direct
Bexhill-on-Sea
1 month ago
Applications closed

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A digital insurance provider in the UK is seeking a Geospatial Data Scientist to join their innovative team. The role involves creating new data assets and predictive models to enhance pricing strategies. Candidates should have strong skills in predictive modelling and Python, along with an interest in geospatial data and machine learning techniques. This hybrid position offers flexible working arrangements, competitive benefits, and a commitment to inclusivity.
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