The Role
The role involves developing MLOps frameworks, deploying machine learning models, monitoring performance, and collaborating across teams for continuous improvement in agricultural research contexts.
Summary Generated by Built In
1. MLOps Framework Development and
Pipeline Automation
- Design and implement CI/CD pipelines
and scalable MLOps frameworks.
- Develop and maintain data, training,
and deployment pipelines ensuring reproducibility and efficiency.
2. Model Deployment, Monitoring, and Performance
Optimization
- Deploy machine learning models into
production and ensure reliable performance.
- Implement monitoring, logging, and
alerting systems to track model accuracy and drift.
3. Image-Based AI and Digital Phenotyping Solutions
- Support development and deployment of
image recognition models using drone and mobile imagery.
- Utilize tools such as Roboflow and
Databricks for image-based workflows and scalable ML operations.
4. Collaboration and Cross-Institutional Integration
- Work with CGIAR partners (e.g.,
ICRISAT, IITA) and internal teams to harmonize MLOps practices.
- Facilitate knowledge sharing and
integration across multidisciplinary teams.
5. Governance, Capacity Building, and Continuous Improvement
- Ensure compliance with data
governance, security, and privacy standards.
- Provide training and promote adoption
of best practices while integrating emerging MLOps.
Requirements
- Bachelor’s degree in Computer Science,
Data Science, Artificial Intelligence, Software Engineering, Agricultural
Informatics, or a related quantitative field.
- Minimum 1–3 years of relevant
experience in machine learning, data science, or MLOps environments.
- Demonstrated understanding of machine
learning workflows, including data preprocessing, model training, evaluation,
deployment, and monitoring.
- Experience
working with machine learning models, deep learning frameworks, and Large
Language Models (LLMs) in research or production settings.
- Experience working within
international research organizations, CGIAR centers, or agricultural research
projects will be an added advantage.
Skills Required
- Bachelor's degree in Computer Science, Data Science, Artificial Intelligence, Software Engineering, Agricultural Informatics, or a related quantitative field
- Minimum 1-3 years of relevant experience in machine learning, data science, or MLOps environments
- Demonstrated understanding of machine learning workflows, including data preprocessing, model training, evaluation, deployment, and monitoring
- Experience working with machine learning models, deep learning frameworks, and Large Language Models (LLMs) in research or production settings
- Experience working within international research organizations, CGIAR centers, or agricultural research projects will be an added advantage
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The Company
What We Do
CIFOR-ICRAF is a collaborative research organization and a global leader in using trees, forests, and agroforestry to tackle global challenges such as climate change, biodiversity loss, food insecurity, and inequality, by enhancing landscape resilience.







