Data Scientist (Commercial/Process Automation/GenAI)

Michael Page Technology
Birmingham
1 year ago
Applications closed

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Global Engineering Company are seeking a Data Scientist to support on operational and customer centric projects to deliver enhanced efficiencies, process optimisation and analytics for commercial growth

Client Details

Global Engineering Company

Description

Global Engineering Company are seeking a Data Scientist to support on operational and customer centric projects to deliver enhanced efficiencies, process optimisation and analytics for commercial growth. As a Data Scientist, you will combine your skills in statistical modelling and programming to generate business value from organisational data. The solutions that you develop will inform real, high-impact business decisions - driving top-line growth, optimising operational efficiency, and enhancing customer experience.

Key Responsibilities

  • Conduct in-depth exploratory data analysis (EDA) on datasets, translating findings into clear, actionable insights.
  • Develop and deploy cutting-edge AI web applications to drive decision-making in multiple areas of the business, including Sales, Finance, Manufacturing, Engineering and Marketing.
  • Communicate insights to technical and non- technical stakeholders in a coherent and actionable way.
  • In collaboration with Data Engineering colleagues, build cloud-based Extract Load Transform (ELT) pipelines that provide high-quality datasets for analysis and modelling.
  • Develop tools and co...

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