Enterprise Data Architect

TalentHawk
Portsmouth
4 months ago
Applications closed

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Overview

We are seeking a seasoned Enterprise Data Architect to join our clients team. This is a pivotal role responsible for implementing enterprise-level data frameworks, improving data maturity, and ensuring alignment with organizational standards. Reporting directly to the Lead Enterprise Transformation Architect, the role also involves a dotted-line relationship with the Data Governance team, enabling effective translation of business outcomes into technical solutions. The successful candidate will drive data strategies, facilitate cross-functional collaboration, and support critical programs, including Oracle EBS to Fusion migration.

Key Responsibilities

  • Strategic Leadership: Develop and implement data frameworks, roadmaps, and governance strategies to enhance organizational data maturity.
  • Gap Assessments: Conduct handovers, identify gaps, prioritize tasks, and define a clear action plan to address organizational data challenges.
  • Data Activities: Orchestrate and oversee production data activities, ensuring adherence to established frameworks and standards.
  • Collaboration: Work closely with the Data Governance team to align technical solutions with business needs and regulatory requirements.
  • Technology Oversight: Guide and assure the deployment of tools like Talend, Power BI, and MuleSoft, while supporting integration with Oracle systems.
  • Enterprise Data Silos: Lead initiatives to break down data silos, fostering a unified enterprise data approach.
  • Project Milestones: Define and track milestones to ensure alignment with organizational programs and objectives.
  • Compliance and Standards: Ensure all data architecture activities comply with regulatory standards and align with enterprise guidelines.

Qualifications and Experience

  • Proven experience in data architecture with a focus on enterprise-level frameworks and standards.
  • Proficiency in tools such as Talend, Power BI, MuleSoft, and Oracle EBS/Fusion.
  • Demonstrated ability to lead and execute gap analysis, define roadmaps, and implement strategic plans.
  • Strong understanding of data governance principles and regulatory compliance.
  • Ability to articulate strategies for breaking down data silos and fostering enterprise-level integration.
  • Familiarity with big data ecosystems and associated technologies.
  • Experience in the utilities or financial sectors.

Key Attributes

  • Exceptional leadership skills with a proven ability to lead strategic data initiatives.
  • Strong communication skills to engage with both technical and non-technical stakeholders.
  • Analytical mindset with the ability to assess complex data environments and propose actionable solutions.
  • A proactive and collaborative approach to cross-functional partnerships.
  • Strategic thinking with a focus on long-term organizational goals.

Role Dynamics

  • This role will act as a strategic partner to the Data Governance team, ensuring cohesive efforts across technical and business domains.
  • The successful candidate will report directly to the Lead Enterprise Transformation Architect, driving key data initiatives with organization-wide impact.

Seniority level

  • Seniority levelMid-Senior level

Employment type

  • Employment typeFull-time

Job function

  • Job functionInformation Technology
  • IndustriesIT Services and IT Consulting, Utilities, and Data Infrastructure and Analytics

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