Data Analytics Internship Devi Technologies

Devitechs
Birmingham
2 days ago
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Overview

We are seeking Data Analytics Interns who are passionate about data, numbers, and insights. This role offers the opportunity to work with real business datasets, use analytics tools, and support decision-making processes.


Roles & Responsibilities

  • ✔️ Assist in collecting, cleaning, and validating data from multiple sources.
  • ✔️ Support data visualization efforts using tools like Power BI/Tableau.
  • ✔️ Help with statistical analysis and reporting.
  • ✔️ Collaborate with business analysts to provide data-driven insights.
  • ✔️ Learn and apply SQL for data extraction and manipulation.
  • ✔️ Assist in preparing dashboards and performance reports.
  • ✔️ Conduct data trend analysis for business improvements.
  • ✔️ Document findings and present insights to stakeholders.
  • ✔️ Support predictive modeling and machine learning initiatives.
  • ✔️ Participate in business intelligence (BI) projects.
  • ✔️ Assist with Excel-based reporting and automation.
  • ✔️ Research new data tools and visualization techniques.
  • ✔️ Support data governance and compliance initiatives.
  • ✔️ Learn about data security and privacy best practices.
  • ✔️ Shadow senior analysts in client-facing presentations.
  • ✔️ Contribute to ad-hoc data requests and reporting.


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