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Data Analyst

Calyptus
Manchester
2 days ago
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Data Analyst

Key Responsibilities



  • Consolidate and cleanse customer and product-level data from all business units, enriching each account with key details such as employee numbers, geographic location, number of offices, and financial size.
  • Develop and maintain a unified data cube that supports multidimensional analysis, including customer-product mapping and white space opportunity reporting to highlight potential areas for commercial growth.
  • Work with sales and account managers across the organization to verify, align, and validate product usage and account enrichment data, ensuring accuracy and completeness.
  • Design and deliver dashboards and reports that visualize product penetration, highlight commercial gaps, and support cross‑selling opportunities. Integrate all insights and data into the CRM platform, creating a "single source of truth" for customer relationships and product adoption stacks.
  • Uphold the highest standards of data quality, governance, and security.
  • Collaborate with internal stakeholders across sales, operations, and technology to drive data‑driven decision making.

Candidate Profile



  • Experienced Data Analyst, ideally with a technology, IT services, or telecommunications background.
  • Technical proficiency in data modelling and business intelligence tools (Power BI, SQL, Excel).
  • Excellent attention to detail and a rigorous approach to data quality and documentation.
  • Effective communicator comfortable working across functional teams and engaging with both technical and non‑technical stakeholders.
  • Able to deliver results on a tight timeline in a dynamic, growth‑focused business.

Seniority level

  • Mid‑Senior level

Employment type

  • Full‑time

Job function

  • Information Technology and Engineering
  • Information Services

Sign up now at https://app.calyptus.co/auth/candidate/sign-up and let the opportunities come to you.


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