Data Visualization Developer

First Recruitment Group
Stafford
1 day ago
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One of our top clients is looking for a Data Visualization Developer to join their team on a hybrid basis in Staffordshire


Our Client has a requirement for a Data Visualization Developer, who will be required to work on a contract basis in Staffordshire.


Role Purpose:

  • The Data Visualization Developer creates visually engaging and interactive dashboards and reports to communicate data insights effectively.

Job Role Responsibilities:

  • Design and develop data visualizations using tools like Tableau or Power BI.
  • Collaborate with stakeholders to understand data visualization requirements.
  • Optimize visualizations for performance and usability.
  • Troubleshoot and resolve issues in dashboards and reports.
  • Stay updated on trends and best practices in data visualization.

Experience / Skills / Knowledge / Qualifications:

  • Bachelor s degree in Data Science, Computer Science, or related field.
  • Proficiency in visualization tools like Tableau, Power BI, or D3.js.
  • Strong analytical and storytelling skills.
  • Knowledge of SQL and data querying.
  • Attention to detail and creativity.

Benefits:

  • Contract role
  • Competetive rate
  • Hybrid

Company information

At First Recruitment Group we understand just how important it is to secure the right people. That is why our Recruitment Consultants always take the time to understand requirements in detail and offer sound advice to both clients and candidates. We actively recruit at all levels and this is a superb opportunity for a Data Visualization Developer looking for new employment.


As part of putting people first, we strive to be an equal opportunities employer and we are always looking to increase the diversity of our workforce, working closely with our clients to ensure everyone is included.


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