Data Analytics Devi Technologies

Devitechs
Birmingham
3 weeks ago
Applications closed

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Join our data analytics team and gain practical experience in collecting, analyzing, and visualizing data to support data-driven decision-making across projects.

Responsibilities:
️ Collect and clean raw data from various sources
️ Use tools like Excel, Power BI, or Tableau for data visualization
️ Write basic SQL queries to extract and manipulate data
️ Analyze trends, patterns, and key metrics
️ Prepare reports and dashboards for internal use
️ Assist in forecasting and predictive analysis
️ Learn data handling using Python or R
️ Work with structured and unstructured data sets
️ Ensure data accuracy and consistency
️ Present findings to teams in a clear, concise format


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