Data Analyst / Consultant - Workiva Implementation - Freelance - Remote

Neko London
Liverpool
3 months ago
Applications closed

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Sustainability Data Analyst / Consultant with Workiva Implementation Experience

Freelance work

Remote


We’re working with a leading Sustainability Consulting & Reporting agency who are looking for a Freelance Sustainability Data Analyst or Consultant with strong Workiva Platform Experience. You'll have data analytics experience and ideally have basic SQL skills. You’ll support clients as they implement and optimise the Workiva Sustainability Module, helping transform their ESG reporting processes.


Key Responsibilities:

  • Configure Workiva for sustainability / ESG reporting, including working with the wider team and clients on data integration, templates, and workflows
  • Analyse, validate, and transform data; using SQL where needed
  • Support data migration and reconciliation from existing systems and processes
  • Help to resolve issues to enable high quality reporting outputs
  • Join client workshops to translate requirements into Workiva ready solutions
  • Support testing and client adoption activities


What We’re Looking For:

  • Strong data analytics background, including data modelling and validation
  • Hands on Workiva experience (Sustainability Module ideally)
  • Understanding or Proficiency in SQL
  • Good understanding of ESG reporting frameworks
  • Confident communicator and comfortable being on client calls


What’s on Offer:

  • Flexible, remote freelance role
  • Work with a respected sustainability consultancy
  • Potential for ongoing projects

This is a great opportunity to join a fantastic agency and team, producing interesting work for some of the worlds biggest brands. Please APPLY NOW or email for more info.

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