Sr Data Governance Analyst/ Power BI

Test Triangle
Warwick
2 weeks ago
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Responsibilities

Provide support and data assurance to IT workstreams for any data migration and deletion activities for multiple transactions.


Ensure data migration and deletion controls and underlying process are effective to meet internal and regulatory compliance requirements.


Collaborate with internal and external stakeholders to validate data requests.


Ensure the correct data classifications are applied to data objects.


Develop and maintain workstream reporting to monitor compliance and status tracking.


Experience Required

  • Data Governance / Assurance background
  • Awareness of legal and regulatory data management obligations
  • Process mapping
  • Stakeholder Management

Must Have – data governance


Good to have – data migration


Do

  1. Managing the technical scope of the project in line with the requirements at all stages
  2. Gather information from various sources (data warehouses, database, data integration and modelling) and interpret patterns and trends

    • Develop record management process and policies
    • Build and maintain relationships at all levels within the client base and understand their requirements.
    • Providing sales data, proposals, data insights and account reviews to the client base
    • Identify areas to increase efficiency and automation of processes
    • Set up and maintain automated data processes
    • Identify , evaluate and implement external services and tools to support data validation and cleansing.
    • Produce and track key performance indicators


  3. Analyze the data sets and provide adequate information

    • Liaise with internal and external clients to fully understand data content
    • Design and carry out surveys and analyze survey data as per the customer requirement
    • Analyze and interpret complex data sets relating to customer’s business and prepare reports for internal and external audiences using business analytics reporting tools
    • Create data dashboards, graphs and visualization to showcase business performance and also provide sector and competitor benchmarking
    • Mine and analyse large datasets, draw valid inferences and present them successfully to management using a reporting tool
    • Develop predictive models and share insights with the clients as per their requirement



Mandatory Skills

  • Data Governance
  • Power BI Visualization on cloud

Title: Power BI
Job Description

Skill : Power BI lead with 5-10 years of experience, Experience on Python Scripting, Back end data bases connectivity knowledge


Job Details

  • Location : Warwick, UK
  • Start date : 1-Mar-26
  • Duration : 6 months


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