Power BI Developer (Remote)

Venturi
1 year ago
Applications closed

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Power BI Developer – Remote / SQL / DAX / ETL / Data Modelling


Aleading independent UK healthcare providerare looking to hire a permanent Power BI Developer to take ownership of their business intelligence landscape, with a view to growing the team in the future. With a dedicated team of 4000+ healthcare professionals across the UK, this company is committed to leveraging the potential of data for informed decision-making.


As the Power BI Developer, you will play a crucial role in shaping the data visualization and reporting capabilities. Your expertise will be instrumental in designing, creating, and maintaining interactive Power BI dashboards and reports. The Power BI Developer also will drive insights and facilitate data-driven decision-making throughout the organization.


The Power BI Developer role is offering abasic salary between up to £40,000 plus a generous list of benefits.The position isfully remotewith occasional travel to the primary hub in Central London, with travel expenses fully paid.


Power BI Developer Responsibilities:

  • Strategic Planning:Collaborate with stakeholders to comprehend business requirements and establish a strategic plan for data visualization and reporting.
  • Power BI Development:Create, design, and sustain Power BI dashboards and reports that provide actionable insights to various business units.
  • Data Integration:Supervise data integration from multiple sources into Power BI, ensuring data accuracy and consistency.
  • Performance Optimization:Continuously enhance existing Power BI solutions for improved performance and usability.
  • Quality Assurance:Implement rigorous quality assurance processes to ensure data accuracy and reliability in reports and dashboards.
  • Collaboration:Collaborate with cross-functional teams, including data engineers, data scientists, and business analysts, to ensure data solutions align and integrate seamlessly.
  • Documentation:Maintain comprehensive documentation of Power BI solutions, data sources, and processes.


What the Power BI Developer must have:

  • Previous experience working as a Power BI Developer (min 1 yr exp.) and can give examples of solutions that you have created
  • Proficiency in SQL, DAX, and data modelling.
  • Familiarity with data warehousing and ETL processes.
  • Exceptional communication and interpersonal abilities.


DISCLAIMER: Venturi is a staffing business dedicated to you, differentiating ourselves in the marketplace by quality of service and candidate delivery. Our highly skilled and experienced staff operate within dedicated markets to give you the best service possible. Venturi markets include Engineering (Software & Data), Analytics, Data Science and Cloud. Venturi operates as an employment agency and employment business. No terminology in this advert is intended to discriminate on the grounds of age, and we confirm that we are happy to accept applications from persons of any age for this role.

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