Sr. Business Intelligence Analyst

ITAC Solutions
Birmingham
1 week ago
Create job alert

ITAC is helping a local client in their search for a Sr.Business Intelligence Analyst !Our ideal candidate has experience scripting SQL database queries, utilizing Power BI, and presenting actionable insights.


*C2C is not an option with this job opening and all applicants should be able to work for any US Employer without sponsorship.*


Compensation: $85k


What you’ll be doing (duties of this position):

  • Utilize leading analytics platforms and programming languages, such as Power BI, Planful, SQL, etc., to effectively manage, review, and extract valuable insights from financial data
  • Work closely with other departments to determine reporting and analysis requirements, project priorities, and define Key Performance Indicators (KPIs)
  • Take raw data and create visualizations using Power BI
  • Document processes and contribute to reporting template repository for future use
  • Work with the development team on product improvement initiatives

What you’ll need to be considered (requirements):

  • Bachelor’s degree in computer science, software engineering, or a related field
  • 3+ years of experience
  • Ability to work in a team environment
  • Have a working knowledge of using Microsoft Excel and Microsoft Power BI for report building and data analytics.
  • Ability to prioritize assignments and shift priorities as required
  • Experience and understanding of Excel, VBA, SQL and/or R preferred


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