Principal Data Scientist — AI for Energy Innovation (Hybrid)

James Fisher and Sons plc
Aberdeen
2 months ago
Applications closed

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A global engineering services company is seeking a Principal Data Scientist in Aberdeen with hybrid working options. This senior role will lead transformative data science initiatives and deliver enterprise-grade products for various energy sectors. The ideal candidate will possess strong expertise in Python and machine learning techniques, mentor teams, and effectively communicate insights to stakeholders. This opportunity offers a chance to drive operational efficiency and sustainability in innovative projects.
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