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Technical Advisor, AI Engineer (2)
Clinton Health Access Initiative- Rwanda (CHAI) | Post type: jobs January 8, 2026 - Deadline 29/01/2026 | NumberOfPosition [2]
Clinton Health Access Initiative- Rwanda (CHAI) Overview

The Clinton Health Access Initiative, Inc. (CHAI) is a global health organization committed to saving lives and reducing the burden of disease in low-and middle-income countries.

Job Description:

The key functions and deliverables of this role will include:

1. AI Model Development and Optimization

  • Design, develop, train and optimize machine learning and deep learning models to strengthen the health system with AI capabilities.
  • Conduct data preprocessing, feature engineering, model training, validation, tuning and performance optimization.
  • Develop explainable AI pipelines to support clinical trust and regulatory transparency.
  • Apply best practices in version control, experiment tracking, and reproducible ML workflows.

2. Deployment, MLOps and post-deployment monitoring

  • Deploy AI models into secure, scalable production environments.
  • Establish and maintain model performance monitoring, data and concept drift detection, automated retaining pipelines, and incident and rollback mechanisms.
  • Optimize model inference speed, system reliability, and compute cost efficiency.
  • Maintain structured model versioning, release management, and retirement protocols.

3. System integration and interoperability

  • Integrate AI solutions with national digital health platforms, including EMRs, HMIS, LMIS, and other MoH systems
  • Implement standards-based interoperability using APIs, HL& FHIR, and MoH recommended architecture patterns
  • Develop real-time and batch data pipelines that enable secure AI inference in live workflows

4. Data Management, Quality and Security

  • Work with NHIC data teams to access, clean, label, and manage large structured and unstructured datasets.
  • Enforce data quality validation, bias detection, and representativeness checks.
  • Implement secure data handling, encryption, access controls, and audit logging in compliance with national data governance and privacy laws.
  • Maintain full dataset documentation and lineage tracking.

5. Model Evaluation, Testing, Clinical Validation and Regulatory support

  • Conduct rigorous testing of AI models to ensure accuracy, fairness, and clinical relevance.
  • Support clinical pilots, facility-level validation, and workflow integration testing.
  • Prepare technical documentation for ethics committees, regulatory reviews, and audit processes.
  • Perform error analysis and continuous refinement based on real-world clinical feedback.

6. Documentation, Reporting, and Knowledge Sharing

  • Produce clear documentation for model architecture, training processes, deployment pipelines and integration workflows
  • Provide inputs to technical reports, donor updates, concept notes and system design briefs.
  • Support the development of user guides, SOPs, and training materials for health workers and system administrators.

7. Collaboration and Technical advisory

  • Work closely with the other team members and departments within the health sector to improve and scale AI infrastructure
  • Engage in weekly AI review sprints, technical design sessions and AI TWGs.
  • Provide AI engineering support to Grant proposals, research collaborations, and public-private partnerships.

8. Continuous Learning and Innovation

  • Stay updated on advancements in AI and AI technology
  • Explore emerging tools and frameworks for national-scale deployments of AI solutions.
  • Proactively propose new high-impact use cases for the health sector.

Required Qualifications

Qualifications and Requirements

Education

  • Master’s degree (or higher) in AI, Computer Engineering, Data Science, Biomedical Engineering, Health Informatics or a closely related field.
  • 4 – 5 years’ experience in Applied Machine learning, AI system development and production-grade deployments

Technical Expertise

  • Strong experience in APIs, data pipelines, training workflows, deployment, maintenance and ML frameworks and systems integration.
  • Hands-on experience across the full LLM stack, including model pretraining, fine-tuning, evaluation, and serving.
  • Demonstrated ability to design and implement scalable model evaluation frameworks, including model-based assessment techniques.
  • Advanced knowledge of reinforcement learning, including algorithm design, environment interaction, and performance evaluation.
  • Strong engineering capabilities for rapid iteration on data pipelines, training workflows, deployment, and maintenance.
  • Proven experience deploying and sustaining healthcare IT systems or medical AI agents in real-world environments.

Application procedure

Interested candidates should apply through Technical Advisor, AI Engineer. Only shortlisted candidates will be contacted.

In compliance with the data protection law of Rwanda and by submitting your application and CV, you explicitly consent to the collection, processing, and storage of your personal data by Clinton Health Access Initiative for the sole purpose of managing and conducting the recruitment process for the position you have applied for.

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