Resolve to Save Lives (RTSL) is a global health organization that aims to save millions of lives by reducing preventable deaths from cardiovascular disease and preventing infectious disease epidemics. Since September 2017, the Prevent Epidemics team at RTSL has been working closely with governments, the World Health Organization, the World Bank, and academic and other partners to strengthen national capacity to prevent, detect and respond to epidemic threats. Some key initiatives include Program Management for Epidemic Preparedness (PMEP) to grow institutional leadership and management capabilities and 7-1-7 to establish a global goal for early detection and response.
We are recruiting to fill the position below:
Job Title: Applied AI Engineer, Public Health LLMs
Location: Nigeria
Length of Engagement: This is a two-year fixed-term appointment with the possibility of extension based on available funding and mutual interest.
Position Purpose
We are looking for a passionate Applied AI Engineer to join our innovative team, focusing on the exciting field of Large Language Models (LLMs) in the context of Public Health.
In this role, you will lead the design, fine-tuning, deployment, and evaluation of AI/ML systems based on pre-trained models (e.g., LLaMA, Mistral, GPT, Phi) that help ease the lives of healthcare workers and clinicians. You will work closely with back-end and mobile engineers to bring cutting-edge AI capabilities to life.
The ideal candidate will possess the expertise to leverage existing Large Language Models (LLMs) to train and evaluate models using program-specific clinical data (e.g., patient notes, SMS interactions, training materials or health worker feedback) and deploy within RTSL's digital health tools and global EHRs (e.g., Simple, BP Passport). Additionally, there is a strong likelihood of developing an open-source, locally runnable, adapted LLM to address cost and confidentiality concerns.
You'll Be Working At The Intersection Of Cutting-edge AI And Grassroots Public Health. This Is An Opportunity To Shape The Future Of Digital Health Tools That Are Open Source, Impactful, Real-world Solutions For Some Of The Most Underserved Populations Globally. Our Primary Use Cases For LLMs Are Anticipated To Include (not Limited To):
Generating patient summaries specifically tailored for healthcare workers.
A chatbot for appointment scheduling.
Develop a predictive model to enhance and automate existing workflows.
Optimized worklists for frontline workers.
On-the-job training and ready-reckoner tools for healthcare professionals.
Core Responsibilities
The ideal candidate will perform duties and responsibilities such as, but not limited to, the following:
Research, evaluate, and implement state-of-the-art LLMs.
Fine-tune pre-trained models for specific tasks and datasets.
Develop and deploy AI applications using Python.
Perform data manipulation and analysis using Pandas to prepare data for model training and evaluation.
Design and evaluate prompt engineering strategies for optimizing LLM outputs in specific public health contexts.
Collaborate with cross-functional teams to integrate AI solutions into existing products and workflows.
Stay up to date with the latest advancements in AI, particularly in the LLM space.
Apply responsible AI principles, including fairness, privacy, and transparency, especially in clinical and community health settings.
Manage and lead the AI pilots/projects at RTSL.
Train and upskill other engineers on the team.
Qualifications
Education:
Bachelor's or Master's degree in Computer Science, Engineering, Machine Learning or a related field
Experience:
8 years of software development experience
3-5 years of experience in training and using AI models.
Proven track record of using Large Language Models (LLMs) and building Predictive Models to meet user requirements
Experience collaborating with multi-disciplinary and cross-functional teams
Delivered LLM-based solutions in resource-constrained environments
Hands-on experience with pre-trained AI models.
Experience working in healthcare or public health settings (strong plus)
Contributed to or maintained open-source AI/ML projects (strong plus).
Familiarity with MLOps including model serving, performance monitoring, and lifecycle management, particularly in low-bandwidth or edge environments i(s a plus).
Skills & Abilities:
Strong proficiency in Python programming.
Strong experience in data manipulation using Pandas, NumPy, and data preprocessing techniques
Familiarity with pre-train models
Skilled in machine learning frameworks (e.g., TensorFlow, PyTorch).
Familiarity with AI Tools (Hugging Face, LangChain, ONNX, etc.)
Strong understanding of AI ethics, data privacy, and bias mitigation techniques
Excellent analytical and problem-solving skills
Ability to communicate complex technical ideas clearly to non-technical stakeholders
Ability to prototype and iterate quickly
Comfortable working in agile, interdisciplinary teams across geographies
Compensation And Benefits
The salary for this role is competitive and set according to national labor rates for the international NGO sector.
The exact offer will be determined by various factors, such as the candidate’s skills and experience relative to the requirements of the role.
In addition to a competitive salary, Resolve to Save Lives provides a generous package of benefits, including:
Health insurance for you and your dependents
Contributions toward retirement
Paid annual leave and sick leave, in addition to public holidays
Two paid, week-long organization-wide breaks at mid-year and end-of-year
Professional development and home office setup benefits