Business Intelligence Developer - Utilities

TalentHawk
Leeds
1 year ago
Applications closed

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Our client, a leading commercial energy supplier in the UK, seeks a Business Intelligence Analyst to join their IT team near Leeds. The successful candidate will champion Power BI use across the business, delivering next-generation reports and insights with cross-functional teams. This role offers a chance to significantly impact business performance and strategic decision-making.



Is this your next job Read the full description below to find out, and do not hesitate to make an application.

Excellent company with a great name in the market, who are continuously evolving.


Data Integration and Transformation

  • Develop and manage advanced BI solutions using Power BI and Fabric.
  • Perform ETL processes to integrate data from various sources.


Report and Dashboard Development

  • Design and create interactive dashboards and reports in Power BI.
  • Translate business requirements into technical specifications.


Data Modeling and Analysis

  • Build efficient data models and schemas.
  • Conduct complex data analysis to uncover trends and insights.


Collaboration and Communication

  • Partner with business analysts and stakeholders to understand objectives.
  • Provide training and support to end-users on Power BI.


Performance Optimization

  • Optimize dashboards and reports for performance and scalability.
  • Implement data management and governance best practices.


Technical Documentation

  • Maintain comprehensive documentation for BI solutions.
  • Ensure accessibility of documentation for relevant stakeholders.


Troubleshooting and Support

  • Monitor and troubleshoot BI solutions for accuracy and reliability.
  • Resolve technical issues and user queries promptly.


Innovation and Improvement

  • Stay updated on the latest BI technologies and trends.
  • Continuously enhance BI processes and solutions.


The Individual Should Have Experience in the Following:

  • Proficiency in Power BI, DAX, and Power Query.
  • Experience with Fabric or similar platforms.
  • Strong SQL skills and familiarity with ETL processes.


Analytical Skills

  • Excellent analytical and problem-solving abilities.
  • Capable of deriving actionable insights from complex data sets.


Communication and Collaboration

  • Strong written and verbal communication skills.
  • Experience translating business requirements into technical solutions.


Project Management

  • Ability to manage workloads and prioritize tasks effectively.
  • Experience with Agile methodologies is a plus.


Educational Background

  • Bachelor's degree in Computer Science, IT, Data Science, or related field.
  • Relevant certifications in Power BI or data analytics are advantageous.


Professional Experience

  • Minimum of 5 years in a similar BI role.
  • Proven track record of deploying BI solutions.
  • Experience in the UK Energy Supply or Utilities industry is a plus.

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