Senior Coordinator, Data Scientist
eHealth Africa
- Minimum Qualification :
- Experience Level : Senior level
- Experience Length : 7 years
Job Description/Requirements
Purpose of the position
We are looking for a Senior Data Scientist with the skills, experience, and mindset to drive innovation in applied analytics, modeling, and decision intelligence. The ideal candidate is expected to build and implement real-world data use cases in areas such as health campaigns, demographic forecasting, climate risk modeling, and food security assessment. You will be responsible for driving high-impact analytical projects across multiple domains, developing models and insights that support both operational and strategic goals.
Keywords : Data, Engineering, Analytics, Sprint Planning, Capacity building, ODK
What you’ll do
To perform this job successfully, an individual must be able to perform each essential duty satisfactorily. Other duties may be assigned:
Data Management
- Conduct spatial analysis and develop geospatial models to identify patterns, trends, and relationships within the data.
- Oversee data collection, storage, and retrieval processes to ensure accuracy, security, and availability.
- Develop and enforce data management policies, procedures, and standards.
- Manage data governance initiatives to ensure compliance with legal and regulatory requirements.
- Develop dashboards, reports, and data visualizations to present insights to stakeholders.
- Perform data mining, statistical analysis, and predictive modeling to address complex business questions. Collaborate with cross-functional teams to identify data-driven opportunities for improvement.
Data Engineering and Integration
- Work closely with data engineers to improve data pipelines, data quality, and feature engineering.
- Assist in the development of robust data architectures and MLOps pipelines. Implement data quality frameworks to monitor and enhance the reliability of datasets.
Domain-Specific Modeling Use Cases
- Senior Coordinator, Data Scientist: Develop models to identify underserved populations, forecast disease spread, and support vaccine or intervention microplanning.
- Demography: Build spatial demographic models using satellite imagery, census microdata, and administrative boundaries for population forecasting and resource targeting.
- Climate Analytics: Analyze weather, hydrological, and satellite-derived datasets (e.g., ERA5, CHIRPS, WRF output) to model environmental risks such as heatwaves, flooding, and droughts. Food Security: Integrate crop indices, remote sensing, market data, and socio-economic indicators to predict food insecurity trends and design resilience strategies.
Team Collaboration and Leadership
- Lead and mentor a team of data analysts and engineers, fostering a collaborative and innovative work environment
- Mentor junior data scientists and analysts, providing code reviews and guidance on best practices. Lead internal knowledge-sharing sessions and stay current with industry trends and tools
Who you are
The requirements listed below are representative of the knowledge, skill, and/or ability required to successfully perform this job.
- Master’s or PhD in , Statistics, Applied Mathematics, Data Science, Public Health, demography, GIS or a related field.
- Minimum of proven seven (7) years of experience in data science or applied analytics roles.
- Strong knowledge of machine learning frameworks (e.g., Scikit-learn, XGBoost, TensorFlow, PyTorch).
- Proficiency in Python and/or R for statistical modeling and analysis.
- Experience with cloud platforms (e.g., AWS, Azure, or GCP) and big data tools (e.g., Hadoop, Spark) including model deployment (e.g., SageMaker, Vertex AI)
- Strong understanding of data modeling, databricks, ETL processes, (Apache Spark or PySpark, Apache Beam, dbt (Data Build Tool),Ruffus / Bonobo / Luigi)
- Experience with demographic data sources (e.g., DHS, WorldPop, HRSL, GHS-POP) and climate datasets (ERA5, CHIRPS, MODIS, NASA POWER).
- Exposure to humanitarian or development contexts (e.g., WHO, UN, NGOs, or government agencies) is highly desirable.
- Domain experience in [e.g., public health, geospatial, research].
- Working knowledge of geospatial analytics or unstructured data (e.g., images, text). Experience with A/B testing, causal inference, or time-series forecasting.
Certifications and Licenses
- Data Science Certification
- PMI Agile Certified Practitioner (PMI-ACP), AgilePgM- Optional
- Certification in cloud services (e.g., AWS Certified Data Analytics, Azure Data Engineer Associate). Familiarity with big data platforms and real-time streaming.
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