Head of AI & Platform Engineering needed at Kifiya Financial Technology
Job title : Head of AI & Platform Engineering
Job Location : Western Cape, Cape Town
Deadline : December 18, 2025
Quick Recommended Links
About the Role
- The Head of AI & Platform Engineering will lead the design, development, and scalability of Kifiya’s AI and data platforms, ensuring seamless integration of AI/ML capabilities, production-grade systems, and automated infrastructure.
- Overseeing two specialized teams—the Platform Engineering Team, responsible for infrastructure, automation, DevOps, and scalable data systems, and the AI/ML Engineering Team, responsible for AI model deployment, MLOps pipelines, and real-time intelligent systems—the role’s mission is to establish a high-performing, automated, and scalable AI platform ecosystem that drives business growth, operational resilience, and innovation across IDD and the wider enterprise.
What You’ll Do
- Define and execute the AI & Platform Engineering strategy aligned with IDD’s and CDO’s objectives.
- Build and lead a high-performing dual-team structure, fostering collaboration between Platform Engineers and AI/ML Engineers.
- Translate business goals into scalable technical architectures and actionable engineering roadmaps.
- Serve as a bridge between Data Science, Data Engineering, and Credit Risk streams to ensure seamless operationalization of analytics and models.
- Lead the development of cloud-native, containerized, and automated platforms (e.g., AWS, Kubernetes, EKS, Terraform, CI/CD pipelines).
- Drive the modernization of data and compute infrastructure to support advanced analytics, ML workloads, and large-scale data pipelines.
- Oversee platform reliability, performance, monitoring, and cost optimization.
- Ensure security, compliance, and governance are embedded into platform design and operations.
- Oversee the end-to-end AI/ML engineering lifecycle , from model packaging and deployment to monitoring, retraining, and scaling.
- Implement robust MLOps frameworks for model versioning, reproducibility, and real-time inference.
- Collaborate with Data Science teams to transition prototypes into production-grade intelligent systems.
- Drive automation of model retraining, performance tracking, and A/B testing (Champion–Challenger frameworks).
- Partner with Solutions Architecture and Data Engineering teams to ensure seamless interoperability between systems and tools.
- Design modular, API-driven architectures for model serving, feature stores, and AI services.
- Evaluate emerging tools and technologies to continuously evolve the AI and data platform stack.
- Define engineering standards, policies, and documentation practices for AI and platform functions.
- Promote DevSecOps, MLOps, and DataOps best practices across the IDD ecosystem.
- Ensure systems comply with enterprise data governance, security, and privacy frameworks.
- Work closely with the CDO, Chief of IDD, and departmental leads to align infrastructure capabilities with business needs.
- Provide technical advisory support to Data Science, Analytics, and Risk teams for scalable solution design.
- Drive collaboration with IT, InfoSec, and Cloud Infrastructure teams to ensure alignment on enterprise standards.
What You’ll Bring
- Bachelor’s or Master’s degree in Computer Science, Data Engineering, AI/ML, or related field.
- 10+ years of experience in software engineering, data platform management, or AI/ML engineering roles, with at least 5 years in leadership.
- Proven experience building AI platforms, MLOps environments, or cloud-based data ecosystems.
- Hands-on experience with Kubernetes (EKS/GKE), CI/CD, Spark, MLFlow, Airflow, Kafka, or equivalent tools.
- Deep expertise in cloud platforms (AWS, Azure, GCP), Kubernetes, Docker, and infrastructure as code (Terraform, CloudFormation).
- Advanced understanding of AI/ML systems, model deployment pipelines, feature stores, and real-time APIs.
- Excellent understanding of DevOps, MLOps, and automation frameworks.
- Strong architectural mindset with the ability to balance innovation and operational excellence.
- Exceptional communication and stakeholder management skills.
- Familiarity with modern data stacks (e.g., Snowflake, Databricks, StarRocks, Presto, ClickHouse) is a strong advantage.
- Experience in financial services or fintech environments preferred.
Deadline for submission: 18 December 2025.
How to Apply for this Offer
Interested and Qualified candidates should Click here to Apply Now
- Research / Data Analysis jobs
Disclaimer: MRjobs.co.za is not an employer and does not directly offer jobs. We share available opportunities from verified sources to help job seekers. Please do your due diligence before applying. We are not responsible for any transactions, interviews, or outcomes from third-party employers.