Senior Data Analyst - Excel/SQL/Snowflake - Remote - £55-65,000

Scalexperts
Altrincham
10 months ago
Applications closed

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Job Description

Senior Data & Insights Analyst -Excel/SQL/Snowflake- Remote - £55-65,000


Scalexperts are partnered with a SaaS business who have a platform that helps organisations optimise their spend. They do this by reviewing spend and procurement data, and making recommendations on how the business can spend money more effectively.


They are looking for a Senior Analyst to play a big part in shaping the future of their Data & Insights team. Experience of working with large and complex datasets in Excel is essential, and experience of working with procurement or spend data will be highly advantageous. Any experience with other tools such as python or similar will be useful as they are open to implementing new tools throughout this year.


Key Skills & Experience Required:

  • 3+ years in an analytical role, working with vast and complex data sets
  • Experience within procurement/supply chain, or ecommerce/retail would be advantageous
  • Has worked in a role that involved mentoring or managing more junior anaylsts day-to-day
  • Excellent at problem solving
  • Excellent Excel skills
  • Experience with other tools such as Python, Snowflake etc.
  • Possess good initiative, able to work with vague/ambiguous information
  • Ability to create analysis and reports for clients, and confident in presenting findings
...

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