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Senior Data Architect

Marx Enterprise Transformation Architecture
Nottingham
1 year ago
Applications closed

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Job Title:Senior Data Architect

Type:Remote, Full-time


About the Role

Marx Technology Consulting Ltd is looking for aSenior Data Architectto join our dynamic and innovative team. Based in London, we are a leading enterprise architecture consulting firm committed to helping clients harness the power of data for informed decision-making and strategic growth. In this impactful role, you’ll design and implement robust, scalable data architecture solutions tailored to the needs of our clients, guiding them toward a data-driven future.


Key Responsibilities

  • Data Architecture Strategy & Roadmap:Develop comprehensive data architecture strategies and roadmaps that align with clients' business objectives.
  • Collaborate with Stakeholders:Engage with stakeholders to gather and understand data requirements, ensuring data solutions are aligned with business needs.
  • Solution Design & Implementation:Lead the design and implementation of scalable, efficient data integration and storage solutions that support data-driven insights.
  • Data Governance & Compliance:Ensure data governance and regulatory compliance across solutions, incorporating best practices for data security and privacy.
  • Technical Leadership & Mentorship:Provide guidance and mentorship to data engineering teams, fostering best practices in data architecture and solution implementation.
  • Industry Trend Analysis:Stay informed on emerging data technologies and industry trends, identifying opportunities to enhance data architecture solutions.


Qualifications & Experience

  • Experience:Proven experience as a Senior Data Architect, with a track record of designing and implementing data architecture solutions in a corporate or consulting environment.
  • Technical Expertise:In-depth knowledge of data architecture principles, best practices, data modeling, integration, and storage technologies.
  • Soft Skills:Strong communication and collaboration skills, with the ability to convey complex data concepts to both technical and non-technical stakeholders.
  • Certifications:Relevant certifications such as CDMP (Certified Data Management Professional) are a plus.

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