Data Analyst Intern B2BG Services

B2b G Services
Birmingham
1 month ago
Applications closed

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We are offering a Data Analyst Internship for students passionate about data, analytics, and business intelligence.


Key Responsibilities

  • ✔️ Assist in data collection and cleaning
  • ✔️ Build dashboards using Power BI/Tableau
  • ✔️ Analyze datasets for trends and insights
  • ✔️ Work with SQL queries and databases
  • ✔️ Support predictive modeling tasks
  • ✔️ Visualize findings in reports and presentations
  • ✔️ Collaborate with data science and AI teams
  • ✔️ Learn data governance and security standards
  • ✔️ Document findings and data processes
  • ✔️ Assist in automation of reporting
  • ✔️ Participate in client meetings on analytics solutions
  • ✔️ Contribute to business performance analysis
  • ✔️ Explore advanced Excel functionalities
  • ✔️ Test and validate data models
  • ✔️ Research latest tools in data analytics


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