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This role is posted on behalf of LambdAI Space, a startup supported by SGInnovate.
Background
LambdAI Space is a deep-tech company building scalable climate intelligence from satellite data. We work with insurers, financial institutions, governments, and infrastructure operators to detect, quantify, and prevent climate-related risks at scale. Our core technology combines multi-sensor Earth observation data with physics-informed machine-learning models to deliver cost-effective, high-precision insights across large geographies.
The Machine Learning function plays a central role in transforming raw satellite imagery into production-ready models that power our products. The team’s objective is not only to develop accurate models, but to ensure they are robust, testable, and deployable in real-world environments. This includes building end-to-end pipelines covering data preparation, training, validation, deployment, and monitoring.
As a Junior ML Scientist, you will join a small, highly technical team working closely with senior ML scientists, engineers, and product stakeholders. The goal of the team is to move fast while maintaining engineering discipline: shipping models into production, iterating based on feedback, and continuously improving performance and scalability. This role is hands-on and impact-driven, with direct exposure to production systems and real customer use cases.
Job scope
Key Responsibilities
- Implement, train, and validate ML models for optical and radar satellite imagery.
- Build clean, modular training and inference pipelines (PyTorch/TensorFlow).
- Work with engineering to deploy models into production (Docker, CI/CD).
- Support data preparation: tiling, preprocessing, augmentation, metadata cleaning.
- Write tests (unit + integration) and maintain model performance dashboards.
- Collaborate with senior scientists on R&D tasks such as model improvement, feature engineering, and synthetic data workflows.
- Run experiments, document results, and communicate findings clearly.
Minimum Qualifications
- MSc in Machine Learning, Computer Vision, Remote Sensing, Data Science, or related field – OR strong project/portfolio experience.
- Solid programming skills in Python, with experience using PyTorch or TensorFlow.
- Understanding of convolutional models, transformers/attention, or change-detection techniques.
- Some exposure to geospatial workflows (e.g., Rasterio, GDAL, QGIS) or willingness to learn quickly.
- Basic experience using Git, Docker, or cloud environments (AWS/GCP).
- Comfort working with large datasets and debugging data issues.
- Good written and spoken English.
Preferred (Nice-to-Have)
- Hands-on experience with satellite or aerial imagery projects.
- Familiarity with SAR data or multi-modal fusion.
- Experience pushing models to production (CI/CD, containers).
- Basic understanding of ONNX, model optimisation, or GPU workflows.
- Experience with synthetic data generation or augmentation strategies.
- Curiosity for climate resilience, environmental monitoring, insurance, or earth observation.
Interested applicants may apply directly to DTC at: https://central.sginnovate.com/hub/marketplace/openings/bf0b56c8-6c4e-4404-8718-cbf951a2e1d9
Key Skills
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