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Mandarin Speaking AVP Business Intelligence Analyst

People First
London
4 days ago
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Job Title - Mandarin speaking Assistant Vice President Business Intelligence Analyst

The Skills You'll Need: Fluent in Mandarin, Experienced in data analysis, BI, or a related area.

Your New Salary: Depending on experience

Hybrid, the role will require an initial period of full time work in office. After the initial period it will be 3 days in office as per current situation; but it could change to more days.

Perm

Start: ASAP

Working hours: 35 hours

What You'll be Doing:

  • Assist in data collection from various internal and external sources and perform initial analyses to identify trends and insights
  • Support the development and maintenance of Business Intelligence (BI) dashboards and automated reports using tools such as Tableau, Power BI, or similar platforms
  • Perform data cleansing and validation tasks to ensure the accuracy and reliability of datasets
  • Collaborate with team members and stakeholders to understand data requirements and contribute to meaningful reporting solutions
  • Support with the streamline of reporting processes and contribute to the automation of data workflows
  • Provide support for ad hoc...

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