Hybrid Data Scientist - Geospatial Analytics & Dashboards

National Energy System Operator Limited
Warwick
1 week ago
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A national energy company is seeking data professionals to join their RESP Digital and Data team. The successful candidates will play crucial roles in data analysis, visualization, and storytelling, enabling product development. Responsibilities include collaborating with teams to support data ingestion and providing insights through visualizations. Ideal candidates will have a strong background in data analytics, geospatial methods, and agile methodologies in data product environments. The position offers hybrid working arrangements and competitive salaries.
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