Data Governance Analyst

JLR Search Ltd
Redhill
3 weeks ago
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A Leading financial services organisation has an urgent 12 month Contract (Inside IR35) requirement for a Data Governance Analyst.

Key Requirements

  • Working closely with the Head of Data Architecture to consistently maintain and promote the Digital & Data strategy and roadmap, ensuring that is fit for purpose and changes are clearly communicated to stakeholders.

  • Establish and govern an enterprise data governance implementation roadmap including strategic priorities for development of information-based capabilities.

  • Ability to manage change initiatives and direct the work of required departmental data stewards

  • Implement an enterprise wide data governance framework, with a focus on improvement of data quality and the protection of sensitive data through modifications to organisation behaviour policies and standards, principles, governance metrics, processes, related tools and data architecture.

  • Define roles and responsibilities related to data governance to ensure clear accountability for stewardship of the company’s principal information assets.

  • Act as a conduit between Business and Functional areas and technology to ensure that data related business requirements for protecting sensitive data are clearly defined, communicated and well understood as part of operational planning and prioritisation.

  • Develop and maintain inventory of the enterprise data flows, critical data elements, data dictionaries, owners, responsibilities including authoritative systems.

  • Facilitate the development and implementation of data quality standards, data consistency standards, data protection standards and adoption requirements across the enterprise

    Essential Experience

  • Strong experience as working in Data Governance / Quality domain

  • Exposure experience as working in Data Governance / Quality domain

  • Experience of working in Financial Services

  • Experience of developing Data Quality reporting process and supporting MI, knowledge of the key types of metrics and reporting KPI’s needed to build out measurement and reporting.

  • Strong understanding of data management principles and data flow process and practices.

  • Knowledge of of data governance practices, business and technology issues related to management of enterprise information assets and approaches related to data protection.

  • Knowledge of data related government regulatory requirements and emerging trends and issues.

  • Demonstrated consulting skills, with change management concepts and strategies, including communication, culture change and performance measurement system design.

  • Knowledge of Data Governance and Data Quality Tools and a recognised subject matter expert to influence the way things are undertaken

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