Data Analyst - Power BI

Tailwind IT
Carmarthen
1 day ago
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My social housing client is looking to recruit an experienced Power BI Data Analyst for a permanent position based in their Head Office located in Carmarthen, West Wales. Reporting to the ICT Manager the key responsibilities for this role include the development of Power BI reports to facilitate business insights and support data driven decision making. Additionally, the role will support the development and administration of core performance measures, ensure KPI's are published, champion data integrity and identify automation opportunities to improve efficiency.


My client is looking for someone with a strong background creating reports using Power BI along with an excellent understanding of data analysis to identify trends and patterns. Experience working with MS-SQL databases/datawarehousing is required as is knowledge of cloud technologies such as Azure/AWS/GCP.

Excellent communication skills are required as well as a strong understanding of data protection legislation and subject access requests.

For additional information please forward your CV, in the first instance, to Stephen Harris at Tailwind IT. Please ensure you extensively demonstrate your Power BI, reporting, data analysis experience. My client does require regular office attendance so please only apply if you're able to attend the office in Carmarthen.



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