Data Analyst - German Speaking

Simpson Judge Ltd
Newcastle upon Tyne
1 year ago
Applications closed

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Data Analyst - German Speaking | Remote | UK based | £55,000


We have partnered with a UK leading supply chain/logistics client. They are looking for a German speaking Data Analyst to work remotely, travelling to London once a month.


You will lead the development and delivery of business insights, utilising prescriptive and predictive analytics to drive decision-making. You’ll collaborate with business leaders to improve processes, plug data gaps, and foster a culture of data-driven decision-making.


Key Responsibilities:

  • Provide proactive, data-driven insights to support business objectives.
  • Build and manage real-time performance dashboards and KPIs.
  • Act as the bridge between stakeholders and data, ensuring clear communication and understanding.
  • Ensure data quality and resolve issues at the source.
  • Lead and facilitate workshops, promote data literacy, and improve analyst processes.
  • Collaborate with teams to monitor technical debt and ensure effective sprints.


Required Skills & Experience:

  • Strong technical skills in data analysis, including PowerBI, SQL, Python, and Excel.
  • Experience with Office 365 tools (SharePoint, Teams) and finance use cases.
  • Excellent communication, presentation, and stakeholder management skills.
  • Experience with data-driven decision-making and business strategy.
  • Fluent in German


Please apply below for more information.

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