Experience: Healthcare experience Database management system software, especially Microsoft SQL Server Databases such as ADABAS, NoSQL, and cloud computing Data mining and modelling tools, especially ERWin, Enterprise Architect, and Visio Programming languages, e.g. Natural (SAG), Python, and Java, as well as C/C++ and Perl Operating systems: UNIX, Linux, Solaris, Windows, ZOS AI and machine learning frameworks (e.g. TensorFlow, PyTorch, Scikit-learn) Knowledge of AI solution design and architecture (including NLP, computer vision, Skills: Applied math and statistics Data visualizatin and data migration Machine learning Attention to detail Technical and Professional skills Excellent problem-solving and analytical skills Strong communication and interpersonal skills AI model development and deployment (supervised, unsupervised, reinforcement learning) Experience integrating AI models into business applications and workflows Other requirements: Leadership qualities Ability to operate as part of a team to achieve a common goal Positive attitude with a focus on achieving success Take responsibility and accountability for assignments Open to and supportive of new ideas Qualifications : BSc Computer Science or equivalent degree At least 10 years of IT experience, with 8 years specifically in a data architect or data engineering role. Proven experience in designing and implementing AI/ML solutions in enterprise environments. Exposure to MLOps and AI model operationalization in either of the following platforms (e.g. Azure, AWS, or Google) Data Architecture Design and Implementation: Develop and maintain data models and database designs Implement data integration and data warehousing solutions. Ensure data architecture aligns with business and IT strategies. Design and implement comprehensive data architecture solutions, including data models, data flows, and database designs Lead the development and implementation of data integration, data warehousing, and big data solutions. Machine learning and AI Design and Implementation: Successfully deployed and maintained AI solutions aligned with business objective Operationalised AI models with monitored performance Established AI data pipelines and training workflows Compliance with data privacy, ethical AI, and regulatory requirements Data Quality and Security: Establish and enforce data standards and policies. Implement data quality and data governance practices. Ensure data security and compliance with regulations. Develop and maintain data standards, policies, and procedures to ensure data integrity, security, and compliance. Collaboration and Communication: Work closely with stakeholders to understand data requirements. Provide technical leadership and guidance to the team. Communicate effectively with business and IT teams. Collaborate with business and IT teams to understand data requirements and translate them into effective data solutions. Provide technical guidance and mentorship to junior data architects and other team members. Performance and Scalability: Ensure data systems are optimized for performance. Plan and implement scalable data solutions. Monitor and address performance issues. Ensure optimal performance, scalability, and reliability of data systems. Stay updated with the latest industry trends and technologies in data architecture and recommend improvements. Between 5 - 7 Years