Data Analyst

Cellence Plus
London
10 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Join a data-savvy executive search firm shaping insight-led decisions.


We’re looking for a sharp, detail-drivenData/Research Analystto help deliver high-quality data and research that fuels our executive search work. This is a great opportunity for a recent graduate or early-career professional to buildhands-on experience in data governance, executive research, and operational deliveryin a collaborative, fast-paced environment.


You’ll work across teams to ensure our CRM data is accurate, well-structured, and compliant, supporting market insight, assignment delivery, and continuous improvement.


What you’ll do

  • Maintain clean, current, and GDPR-compliant CRM data (Invenias)
  • Conduct regular data audits and apply data governance standards across assignments
  • Format and structure data to support ease of use and insight generation
  • Assist with research outputs, including Market maps, Longlists, Industry and role-specific insights
  • Track industry trends and key moves (“movers & shakers”) to keep internal stakeholders informed
  • Use AI tools and automation to streamline data and research processes
  • Collaborate with Consultants, Researchers, and Operations team members to support high-quality delivery


What you’ll bring

  • Degree in Business, Economics, Data Science, AI or a related field
  • Strong Excel skills and an enthusiasm for tidy, accurate data
  • Highly organised and detail-orientated, with strong quality-checking habits
  • Curious mindset and willingness to learn new tools and approaches
  • Clear communication skills and a collaborative attitude
  • Bonus if you have experience with any of the following: Invenias or other CRM platforms, LinkedIn Recruiter or online business research tools, Power BI, Python, SQL, or similar, understanding of GDPR or prior experience in search/recruitment.


Why Cellence Plus?

  • Join a collaborative team where insight matters
  • Help connect data points across markets, roles, and clients to shape a joined-up view of the talent landscape
  • Contribute to a business where high-quality data and research enable strategic decisions
  • Develop core skills that support a future career in data, research, or executive search

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