Junior Commercial Data Analyst

MSA Data Analytics Ltd
Leicester
2 days ago
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This exciting opportunity will provide key analytical support to a fast-paced commercial function, delivering forecast appraisals, insight and strategy to ensure the business remains competitive.

As a Commercial Analyst you will analyse multiple data sources and provide strategic insight to drive efficiency and optimisation, whilst supplying finance teams with commercial MI to support planning and growth initiatives.

Specifically, you will be responsible for performing the following tasks to the highest standards:

  • Optimising revenue streams through detailed analysis and forecasting potential revenue performance against targets
  • Analysing activity data (new and existing demand, repeat business and competitor activity) and presenting insights to senior stakeholders to drive positive commercial change
  • Delivering revenue analysis to support pricing strategy, maximise available inventory and identify new market opportunities
  • Providing broader market insight, including economic and external factors that may influence demand and trading conditions
  • Reviewing business plans, identifying performance gaps and supporting proactive strategies to maximise capacity and meet revenue targets
  • Monitoring competitor activity and making recommendations for the management team to respond effectively

Skills & Experience

  • Experience in a commercial analyst role with a prove...

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