Data Analyst

Experis - ManpowerGroup
Edinburgh
2 months ago
Applications closed

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Data Analyst

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Data Analyst

My Client are looking for a Data Analyst for an initial 3 Month Contract (Inside IR35) to work on a Major Transformation which focuses on the reduction of poor data quality and outdated information through improving Process Efficiency and standardisation.

Key Responsibilities of this role include:

  • Map and Document existing Data Flows end-to-end (inc. downstream systems and data warehouse integration's).
  • Validate current build stage management processes and design future state processes incorporating new tools.
  • Define and Document Data Structures and Flows to support re-designed processes.
  • Support Change Management Activities through the preparation of process documentation and training materials where required.

Required Skills and Experience:

  • Process Analysis and Mapping
  • Data Analysis Skills - Understanding of Data Structures and Flows
  • Experience working in Small-Medium Sized Organisations OR the ability to adapt to this type of environment.
  • The team are looking for an Extroverted individual who is not afraid to take hold of a Project and Situations to drive home actions and delivery. This is a key attribute that is a non-negotiable for the success of this position.


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