#IkoKaziKE

Back to jobs
C

Data Architect – Ai Enablement

Co-Operative Bank

full time Nairobi Posted 2 days ago

Skills, Competencies and Experience

The successful candidate will be required to have the following skills and competencies:

  • A Bachelor’s degree in Computer Science, Information Systems, Data Management, Engineering, Statistics, or a related field.

  • Professional certification in Data Architecture, Cloud Data Platforms, Data Management, or Enterprise Architecture will be an added advantage.

  • Exposure or training in AI, machine learning, analytics, or data governance will be an added advantage.

  • A minimum of 5 years’ relevant experience in Data Architecture, Data Engineering, Enterprise Data Management, or Solution Architecture.

  • A strong understanding of enterprise data architecture, data modelling, integration architecture, and information management.

  • Experience designing data solutions across operational systems, APIs, data warehouses, and analytics environments.

  • A strong understanding of data quality, metadata, lineage, cataloguing, and governance practices.

  • The ability to translate complex technical data concepts into clear business language.

  • Experience working collaboratively across business, architecture, engineering, security, and governance teams.

  • Design and govern scalable, secure, and high-quality data architectures, models, integrations, and pipelines that support AI, analytics, automation, and enterprise data initiatives.

  • Drive data governance, quality, lineage, privacy, security, compliance, and audit readiness standards to ensure trusted and compliant AI-enabled decision-making.

  • Assess and enhance the Bank’s data landscape by identifying architecture gaps, defining reusable data assets, and supporting AI readiness and continuous improvement.

  • Translate business and AI requirements into practical data solutions, architecture standards, mappings, and implementation guidance.

  • Collaborate with cross-functional teams, vendors, and stakeholders to support AI solution delivery, architecture reviews, innovation initiatives, and enterprise data best practices.