—
Position: Data Scientist (production grade ML) Location: Greater London Overview Processing thousands of energy data points per second from diverse operational sources, handling massive volumes of energy data while running sophisticated classification and anomaly detection models in real-time, maintaining comprehensive data lineage, and delivering insights through high-performance platforms used by energy operators globally requires exceptional engineering and scientific expertise. This processing demands models that can withstand the scrutiny of energy analysts and traders, operations teams, and regulatory bodies, with the performance, stability, and reliability that critical energy systems require. The Data Platform Team is responsible for all machine learning operations across our energy data ecosystem. We work with everything from raw sensor data from millions of energy assets to complex operational datasets, generating high-value predictions such as equipment failure detection, energy demand forecasting, operational anomaly identification, predictive maintenance scheduling, and system optimization recommendations. The team has built a comprehensive suite of statistical and machine learning models that enable us to provide the most accurate and actionable insights into energy operations. We take pride in applying cutting-edge research to real-world energy challenges in a robust, scalable, and maintainable way. The quality of our models is continuously validated by experienced in-house energy analysts and traders and domain experts to ensure reliability of our predictions. #J-18808-Ljbffr
| Skill | Source | Confidence |
|---|---|---|
| Classification Algorithms | llm_hard |
100%
|
| Supervised Learning | llm_hard |
80%
|
| Model Deployment | llm_hard |
80%
|
| MLOps | llm_hard |
80%
|
| Predictive Modeling | llm_hard |
80%
|
No soft skills extracted
| Publisher | Direct | Link |
|---|---|---|
| Learn4Good | No | Apply |
| Query | Country | Status | Response ms | Created |
|---|---|---|---|---|
| Data Scientist; production grade ML | extracted | 3490 | 2026-03-28 10:46 | |
| Data Scientist; production grade ML | classified | 402 | 2026-03-28 10:21 | |
| data scientist in London, UK | gb | processed | 11050 | 2026-03-28 10:07 |
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