Business Data Analyst Salesforce & Excel/VBA

Robert Half
Cambridge
19 hours ago
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Robert Half have partnered with a B2B SaaS organisation is seeking a Business Data Analyst for an initial 2-month contract to support a critical data and systems improvement initiative.

The primary objective of this role is to support data quality, commercial data structures, and system readiness, with a particular focus on Salesforce data migration and Excel-based pricebook development.

This role will involve hands-on data cleansing, restructuring, and validation, alongside the development of robust Excel tools to support SaaS commercial processes and pricing structures.

Role:

You will play a key role in supporting commercial and operational data initiatives, working closely with internal stakeholders to ensure data accuracy, consistency, and alignment across systems. The role requires strong Excel and data-handling capability, combined with a solid understanding of SaaS commercial metrics and Salesforce data structures.

Key responsibilities include:

  • Cleansing, mapping, restructuring, and preparing large datasets ahead of Salesforce import
  • Validating data against Salesforce schema, including Accounts, Contacts, Opportunities, Products, and Price Books
  • Supporting product and pricebook data alignment to ensure consistency across systems
  • Developing and refining a structured Excel-based pricebook
  • Implementing advanced Excel logic, automation, and calcul...

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