Data Analyst

Arsenault
Manchester
3 weeks ago
Create job alert
  • Data Analyst will assess data quality from several collection points across the wider business then manage the organisation of that data into presentations. The presentations will then be presented to Trade In manager in weekly and monthly meetings coordinated by the business analyst.
  • Collecting, analysing, and interpreting data, information, and statistics. Collating data from a variety of fields, including all retail channels and proposition. Data analysts must collaborate with sales and marketing teams to ensure the flow of data which enables the Trade In analyst to write reports & analyse trends for senior managers.
Key Responsibilities
  • Assessing data from various collection points Retail, CX and Finance, highlighting any information queries or gaps prior to sharing.
  • Present findings to management team through weekly or monthly meetings and detailed reporting. Must prepare both written reports and visual presentations to share their findings
Experience Needed
  • Analytical thinking Analysts successfully examine and assess data from a variety of sources, ranging from Channel data, pricing data to customer segment profiles and cost data
  • Strong skills in Microsoft Office mainly Excel (Power Query / Power Pivot)
  • Languages needed would be "M" code, Advantage DAX and SQL


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