Data Analyst

Kingdom People
London
7 months ago
Applications closed

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Data Analyst with solid experience of MS Dynamics 365 F & O needed for my large client. Due to a major programme kicking off, my client is in need of an experienced Data Analyst with specific experience around Dynamics 365 F & O. You will be required the nexus between business, data, functional, and technical teams to resolve complex data issues. You MUST have at least 5 years Data Analysis experience with at least 3 years on MS Dynamics 365 F & O

Work with business analysts to define and document the scope and functional requirements for data and reporting needs, including the conceptual data model and data flow for the solution

  • Analyze, develop specifications, and execute data mapping and transformation processes and requirements within and between applications

  • Develop resource estimates/plans for data related configuration components of solution

  • Facilitate resolution of data and data integration design issues as and when necessary

  • Ensure data integrity by designing processes and controls around the flow of data

  • Produce and maintain documentation including design documents, data and process models and data dictionaries

    Facilitate management, technical staff, and subject matter advisors to understand business issues, troubleshoot problems, and develop and recommend cost-effective data solutions for data anomalies

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